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Methods in Ecology and Evolution

Volume 11, Issue 1
RESEARCH ARTICLE
Open Access

The handbook for standardized field and laboratory measurements in terrestrial climate change experiments and observational studies (ClimEx)

Aud H. Halbritter

Corresponding Author

E-mail address: aud.halbritter@uib.no

Department of Biological Sciences and Bjerknes Centre for Climate Research, University of Bergen, Bergen, Norway

Correspondence

Aud H. Halbritter

Email: aud.halbritter@uib.no

Vigdis Vandvik

Email: vigdis.vandvik@uib.no

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Hans J. De Boeck

Department of Biology, Centre of Excellence PLECO (Plants and Ecosystems), Universiteit Antwerpen, Wilrijk, Belgium

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Amy E. Eycott

Department of Biological Sciences, University of Bergen, Bergen, Norway

Faculty of Biosciences and Aquaculture, Nord University, Steinkjer, Norway

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Sabine Reinsch

Centre for Ecology & Hydrology, Environment Centre Wales, Bangor, UK

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David A. Robinson

Centre for Ecology & Hydrology, Environment Centre Wales, Bangor, UK

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Sara Vicca

Department of Biology, Centre of Excellence PLECO (Plants and Ecosystems), Universiteit Antwerpen, Wilrijk, Belgium

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Bernd Berauer

Department of Disturbance Ecology, University of Bayreuth, Bayreuth, Germany

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Casper T. Christiansen

NORCE Norwegian Research Centre and Bjerknes Centre for Climate Research, Bergen, Norway

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Marc Estiarte

CSIC, Global Ecology Unit CREAF‐CSIC‐UAB, Bellaterra, Spain

CREAF, Vallès, Spain

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José M. Grünzweig

Institute of Plant Sciences and Genetics in Agriculture, The Hebrew University of Jerusalem, Rehovot, Israel

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Ragnhild Gya

Department of Biological Sciences and Bjerknes Centre for Climate Research, University of Bergen, Bergen, Norway

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Karin Hansen

Swedish Environmental Protection Agency, Stockholm, Sweden

Swedish Environmental Research Institute IVL, Stockholm, Sweden

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Anke Jentsch

Department of Disturbance Ecology, University of Bayreuth, Bayreuth, Germany

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Hanna Lee

NORCE Norwegian Research Centre and Bjerknes Centre for Climate Research, Bergen, Norway

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Sune Linder

Southern Swedish Forest Research Centre, Swedish University of Agricultural Sciences, Alnarp, Sweden

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John Marshall

Department of Forest Ecology and Management, Swedish University of Agricultural Sciences, Umeå, Sweden

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Josep Peñuelas

CSIC, Global Ecology Unit CREAF‐CSIC‐UAB, Bellaterra, Spain

CREAF, Vallès, Spain

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Inger Kappel Schmidt

Department of Geosciences and Natural Resource Management, University of Copenhagen, Frederiksberg, Denmark

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Ellen Stuart‐Haëntjens

Department of Biology, Virginia Commonwealth University, Richmond, VA, USA

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Peter Wilfahrt

Department of Disturbance Ecology, University of Bayreuth, Bayreuth, Germany

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the ClimMani Working Group
ClimMani Working Group authors and their affiliations are listed in the appendix.Search for more papers by this author
Vigdis Vandvik

Corresponding Author

E-mail address: vigdis.vandvik@uib.no

Department of Biological Sciences and Bjerknes Centre for Climate Research, University of Bergen, Bergen, Norway

Correspondence

Aud H. Halbritter

Email: aud.halbritter@uib.no

Vigdis Vandvik

Email: vigdis.vandvik@uib.no

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First published: 05 November 2019

Abstract

en

  1. Climate change is a world‐wide threat to biodiversity and ecosystem structure, functioning and services. To understand the underlying drivers and mechanisms, and to predict the consequences for nature and people, we urgently need better understanding of the direction and magnitude of climate change impacts across the soil–plant–atmosphere continuum. An increasing number of climate change studies are creating new opportunities for meaningful and high‐quality generalizations and improved process understanding. However, significant challenges exist related to data availability and/or compatibility across studies, compromising opportunities for data re‐use, synthesis and upscaling. Many of these challenges relate to a lack of an established ‘best practice’ for measuring key impacts and responses. This restrains our current understanding of complex processes and mechanisms in terrestrial ecosystems related to climate change.
  2. To overcome these challenges, we collected best‐practice methods emerging from major ecological research networks and experiments, as synthesized by 115 experts from across a wide range of scientific disciplines. Our handbook contains guidance on the selection of response variables for different purposes, protocols for standardized measurements of 66 such response variables and advice on data management. Specifically, we recommend a minimum subset of variables that should be collected in all climate change studies to allow data re‐use and synthesis, and give guidance on additional variables critical for different types of synthesis and upscaling. The goal of this community effort is to facilitate awareness of the importance and broader application of standardized methods to promote data re‐use, availability, compatibility and transparency. We envision improved research practices that will increase returns on investments in individual research projects, facilitate second‐order research outputs and create opportunities for collaboration across scientific communities. Ultimately, this should significantly improve the quality and impact of the science, which is required to fulfil society's needs in a changing world.

RESUMEN

es

  1. El cambio climático es una amenaza global para la biodiversidad, la estructura y funcionamiento de los ecosistemas y la habilidad de éstos para generar servicios ecosistémicos. Para poder comprender las causas y los mecanismos subyacentes, y poder predecir las consecuencias del cambio climático tanto para la naturaleza como para los seres humanos, debemos entender la magnitud y dirección de estos cambios a través del continuo suelo‐planta‐atmósfera. El creciente número de estudios sobre cambio climático brinda nuevas oportunidades para poder generalizar de forma más robusta y entender mejor los procesos implicados. Sin embargo, todavía hay grandes obstáculos en cuanto a la disponibilidad de datos y cómo de compatibles son los distintos estudios, que ponen en riesgo las oportunidades para reutilizar y sintetizar datos y comparar a distintas escalas. Estos obstáculos limitan nuesta habilidad para comprender los complejos procesos y mecanismos relacionados con el cambio climático en ecosistemas terrestres.
  2. Para superar estos obstáculos, hemos recopilado recomendaciones metodológicas basadas en las mejores prácticas propuestas por las principales redes de investigación en ecología, avalados por 115 expertos de un amplio rango de disciplinas científicas. Nuestro manual contiene recomendaciones para la selección de variables respuesta para diferentes propósitos, y protocolos para realizar medidas estandarizadas de 66 posibles variables respuesta, así como sugerencias para la gestión de los datos obtenidos. Recomendamos específicamente un mínimo de variables que deben medirse en todos los estudios sobre cambio climático para permitir la reutilización y síntesis de datos. Además, sugerimos una serie de variables adicionales que pueden ser relevantes para distintos tipos de síntesis y para la comparación a distintas escalas. El objetivo de este esfuerzo comunitario es concienciar sobre la importancia de la aplicación de métodos estandarizados para facilitar la reutilización, disponibilidad, compatibilidad y transparencia de los datos. Mejorar las prácticas de investigación aumentará la eficiencia de proyectos de investigación individuales, facilitará resultados de investigación de segundo orden y creará oportunidades para la colaboración entre comunidades científicas. Por último, estas prácticas mejorarán considerablemente la calidad y el impacto de la ciencia, que se requiere para satisfacer las necesidades de la sociedad en un mundo cambiante.

摘要

zh

  1. 气候变化正在对全球生物多样性, 生态系统结构, 功能和服务造成严重的威胁。为了理解这一过程的潜在驱动和机制, 以及预测这一过程对自然和人类社会的影响, 我们迫切的需要更好的了解气候变化对土壤‐植物‐大气系统影响的方向和强度。不断增加的相关方向的研究正在使对该研究领域的数据进行广泛而有意义的概括和总结成为可能, 从而进一步提高我们对这一重要过程的理解。然而, 显著的挑战依然存在, 特别是不同的生态研究产生的数据的可获得性和兼容性有着巨大差异, 这在一定程度上限制了研究数据的再度利用, 概括总结以及进一步推广应用。这个挑战与我们在观测气候变化和生态系统的关键影响及响应时缺乏良好的“最佳实践”有关。这个问题在很大程度上限制了我们对气候变化背景下陆地生态系统的复杂过程和机制的理解。
  2. 为了克服这些挑战, 我们收集了基于115个不同陆地生态研究领域的专家总结的主要生态研究网络和试验中的“最佳实践”方法。我们建立的“最佳实践”手册包括了对不同研究目的下选择测量的生态响应变量的建议, 测量66个生态响应变量的标准化流程, 以及如何进行数据管理的建议。特别地, 为了达到研究数据的可再度利用和融合, 我们推荐了一个在所有相关陆地生态研究中必须收集的最小数据集。同时针对不同类型的数据融合和推广应用, 我们给出了额外的关键数据和变量的收集建议。我们的工作希望能够有助于提高该研究领域的研究者对数据标准化的重要性和广泛应用的认识, 从而促进数据的再度利用, 数据的可获得性, 兼容性和透明度。我们期望改进的研究实践将能够增加每一个研究项目的投资回报率, 促进科研数据的二度产出, 以及创造更多的跨研究领域, 跨学科的合作机会。并最终, 显著提高我们的科学研究的质量和影响力, 以满足全球变化下社会对相关科学成果的需求。

1 INTRODUCTION

Climate change is an increasing threat to biodiversity and ecosystem functions and services world‐wide (IPBES, 2019; Pacifici et al., 2015; Schuur et al., 2015). Numerous studies, including experiments, long‐term monitoring, resampling of historic data and various kinds of space‐for‐time approaches, have been and are being conducted. Such studies address climate and other global change‐related questions for various players and processes in ecosystems across the soil–plant–atmosphere continuum. Plants are key players in our ecosystems: they make up the majority of biomass globally, are the main source of photosynthetically fixed carbon and serve as habitat, food sources and hosts for other organismal groups, while also competing with them for resources (Bar‐On, Phillips, & Milo, 2018; Fanin et al., 2019). Plants interact with other plants, microbes, invertebrates and other organisms in multiple ways and on different trophic levels (e.g. decomposers, mutualists, pathogens, herbivores, predators). Together, they play a major role in controlling important terrestrial ecosystem processes such as carbon and nutrient cycling (Clemmensen et al., 2013). Improved understanding of the magnitude of climate change impacts, the underlying drivers and mechanisms and the ecological consequences at the individual, population, community and ecosystem scales across the soil–plant–continuum, with a focus on first‐order plant–animal interactions in detritivore and herbivore food web is urgently needed.

In climate change research, the most common empirical approaches include manipulative experiments sensu stricto (Elmendorf et al., 2012; Emmett et al., 2004; Guittar, Goldberg, Klanderud, Telford, & Vandvik, 2016; Wu, Dijkstra, Koch, Penuelas, & Hungate, 2011) and natural experiments that explicitly contrast or compare different climates through space (i.e. climate gradient studies; Halbritter, Alexander, Edwards, & Billeter, 2013; Olsen, Töpper, Skarpaas, Vandvik, & Klanderud, 2016) and time (i.e. monitoring or resampling; Fitter & Fitter, 2002; Steinbauer et al., 2018). Climate change experiments sensu stricto are particularly useful in establishing cause‐and‐effect relationships, disentangling the effects of and interactions between different drivers and understanding underlying processes (De Boeck et al., 2015; Fraser et al., 2013). Natural experiments are useful to detect processes on large spatial and temporal scales, related to evolutionary processes and equilibria, and they also avoid experimental limitations and side effects. Hereafter, we refer to these collectively as ‘climate change studies’ sensu lato (if not otherwise specified).

As the number of such climate change studies is quickly increasing, new opportunities for meta‐analyses and syntheses are emerging to explore broad‐scale patterns and context dependencies in effects, responses and processes, as well as for model development and evaluation. However, there are major challenges for meaningful and high‐quality syntheses, including geographic and climatic biases in the available studies (Beier et al., 2012; Vicca et al., 2014), a lack of coordinated measurements and standardized protocols (Denny et al., 2014; Firbank et al., 2017; Vicca, Gilgen, et al., 2012) and a lack of basic and well‐structured study information (i.e. covariates, metadata) needed for comparisons (Gerstner et al., 2017; Haddaway & Verhoeven, 2015). Similarly, model–experiment interactions are hampered by methodological inconsistencies across experiments, and by the lack of specific ancillary data to characterize sites and experimental treatments (Medlyn et al., 2015).

The majority of climate change studies are local or regional, and single‐ to multiple‐site studies that are designed to address specific research questions. As a consequence, these studies often have unique experimental and sampling designs (e.g. Countryside survey, Emmett et al., 2010; ExpeEr, Bertora et al., 2013; INCREASE, Schmidt et al., 2014). Individual research projects and networks invest considerable resources in collecting data for a number of environmental and biotic variables and in developing protocols for field measurements. This leads to a diversity of similar but not quite identical protocols, and hence to a diversity of ways to measure and quantify the same underlying effects and responses. While some of this variability may be due to good scientific reasons, protocol selection is often based on traditions and habits. This methodological diversity can hinder backward compatibility, and thus, syntheses across studies, for example due to incompatible quantification of treatment effects, lack of necessary covariates or response variables, and/or incompatible scale or units of measurements (Estiarte et al., 2016; Lu et al., 2013; Vicca, Gilgen, et al., 2012). These issues largely stem from using a diversity of protocols, and we refer to this as the ‘data compatibility filter’ (Figure 1). Another issue that may hinder syntheses and meta‐analyses is when key information is not available from the original studies. Data, covariates, metadata and detailed methodological information that are critical for the synthesis step may not be necessary for first‐order publications and are hence not reported, structured well or stored in an accessible location and format. We refer to this issue as the ‘data availability filter’ (Figure 1), which is increasingly recognized in the scientific community and is, in part, addressed in recent guidelines on data management and open science practices (e.g. British Ecological Society, 2017; Nosek et al., 2015; and see protocol 1.5). Together, the data compatibility filter and the data availability filter significantly compromise second‐order research outputs such as data re‐use, synthesis and upscaling (Figure 1).

image
Challenges and solutions to the integration of information from first‐order outputs of individual experiments or observational studies (i.e. the original data and publications) to second‐order research outputs resulting from, for example meta‐analyses, reviews and modelling (i.e. data re‐use, synthesis and upscaling). The figure illustrates the major challenges to achieve such second‐order outputs, summarized as two filters (dashed lines) relating to data availability and data compatibility across studies. Two general approaches to solve these challenges exist; either using formally coordinated and distributed experiments or using standardized methods, sampling protocols and reporting across individual and independent studies. The aim of this paper is to contribute to the latter approach by offering guidance on selection of response variables, protocols for standardized measurements of these variables and advice on data reporting and management in climate change studies

One way to address these challenges is through ‘coordinated and distributed experiments’ (Fraser et al., 2013; Luo et al., 2011; Figure 1), exemplified by the DroughtNet (Knapp et al., 2017), ITEX (Arft et al., 1999), NutNet (Borer et al., 2014), INCREASE (Schmidt et al., 2014) and Tea Bag Index network (Keuskamp, Dingemans, Lehtinen, Sarneel, & Hefting, 2013). Similarly, broad‐scale, long‐term or repeated observational monitoring can be used, such as resampling studies (Steinbauer et al., 2018; Verheyen et al., 2016) or national phenological networks (Defila & Clot, 2001; Denny et al., 2014). An alternative to such formalized networks is to facilitate coordination and standardization of methods and sampling protocols across studies more generally (Figure 1). The handbook for plant trait measurements is an excellent example of the latter approach; a collection of standardized, documented, state‐of‐the‐art protocols for trait‐based plant ecological research, providing general methodological advice on how to select and measure traits, independent of the particularities of the individual experiments or study (Cornelissen et al., 2003; Pérez‐Harguindeguy et al., 2013). This handbook has become a key resource for trait‐based research as it has been hugely important in stimulating the use of standardized methods while at the same time providing an easily available resource for new researchers in the field. Its potential is evident from its high impact world‐wide (the two editions of the handbook have been cited over 1,700 times in Web of Science to date, September 2019). Other similar efforts exist like the web resource PrometheusWiki, a handbook for standardized physiological protocols (Sack et al., 2010), or the International Biological Program Handbooks (e.g. Milner & Elfyn Hughes, 1968), as well as national or community standards such as the UK Countryside survey (Emmett et al., 2010) or the UK Environmental Change Network (Sier & Monteith, 2016).

The aim of this paper was to provide a handbook (ClimEx) of standardized field and laboratory methods across the soil–plant–atmosphere continuum applicable to a broad range of terrestrial ecosystem climate change studies (including both experiments and plot‐based temporal and spatial gradient studies) world‐wide. Because of their dominance in terrestrial ecosystems (Bar‐On et al., 2018), we focus mainly on plant communities and the other organisms with which they interact. We discuss a variety of organisms (i.e. microbes, fungi, invertebrates and first‐order plant–animal interactions) where the connection to vegetation and ecosystem functioning is apparent. Through a community effort by experts across scientific disciplines (Box 1), we provide a comprehensive collection of state‐of‐the‐art methods and sampling protocols on key variables of relevance for terrestrial climate change research (Table 1).

BOX 1. ClimMani and the protocol writing team

The EU Cost Action ClimMani (2014–2018) focussed on building and strengthening the experimental climate change research community. Key goals of this Action were to provide guidelines for best experimental practices, and to advance experiment–data–model interactions. ClimMani therefore set out to develop and promote common protocols as a community effort to guide future measurements and experiments, and to improve future inter‐site comparisons, meta‐analyses and model–experiment interactions.

In March 2017, 26 ClimMani members met for a workshop and initiated the collection of measurement protocols in climate change studies. The structure and outline for the project was developed, and leaders for the five chapters appointed. Researchers were identified that could lead protocols based on their scientific expertise. In total, the protocol writing team consisted of 85 authors, who wrote the protocols based on their expert knowledge and existing protocols in the literature. In a second round, 50 experts reviewed the protocols, after which the authors finalized the protocols by the end of 2017. A second workshop was organized in January 2018 to finalize and harmonize all protocols and agree on data presentation. In total, 115 scientists from 21 countries on four continents were involved.

The protocols are grouped into five chapters: site characteristics and data management, carbon and nutrient cycling, water cycling, species and interactions, and stress physiology. In each protocol, we describe which response variables should be measured broadly across studies to facilitate data re‐use, synthesis and upscaling, using a Gold standard (if possible) and, if applicable, we offer minimal requirement Bronze standards. We discuss Special cases, emerging issues and challenges that address adaptations needed for specific systems or situations and new methods under development. Finally, we give guidance on additional variables that should be measured more widely to improve inter‐site and inter‐study comparisons and model–experiment interactions.

Our intention is that the ClimEx handbook will be widely used and will stimulate standardized data collection and collaboration between projects within and across sub‐disciplines. We acknowledge that different projects may have different specific needs and resources available, and therefore propose a ‘minimal set’ of variables and practices that, if more widely applied, would significantly increase each individual study's potential contribution to second‐order outputs. Many of the methods described in this handbook are also applicable more generally in ecosystem ecology and for other global‐change drivers (e.g. nitrogen deposition, invasion, pollution, land‐use change). Where relevant, this is indicated in the protocols.

2 MATERIALS AND METHODS – A USER'S GUIDE

2.1 How were the protocols produced and assessed?

We collected a large number of protocols from major terrestrial climate change experiments; ITEX, DroughtNet and NutNet to name a few, and complemented these with literature on methodology, method descriptions from publications and protocols from our own projects (see the appendix for full reference lists). From these sources, we extracted a list of response variables that are relevant and commonly used in terrestrial climate change research (Table 1). A core group outlined the writing process, the relevant response variables, the protocol structure and the final editing, while expert teams on each topic wrote the protocols (Box 1).

We focussed on variables that are relevant for understanding climate change impacts on the biodiversity and functioning of the soil–plant–atmosphere continuum, and/or which are particularly useful for data re‐use, synthesis and upscaling. We do not comprehensively cover plant functional traits as these are already extensively covered in the New handbook for standardised measurement of plant functional traits worldwide by Pérez‐Harguindeguy et al. (2013), but provide a motivation and overview of relevant traits (see Chapter S4), and otherwise refer to this source.

2.2 Content and structure of the protocols

For each protocol, we provide a short overview of the equipment and running costs, installation and maintenance effort, knowledge‐needs and the type of measurements conducted (Table 1). Note that this overview is to a certain extent country‐, habitat‐ and project‐dependent (i.e. costs differ between countries, knowledge‐needs for species identification might differ between a rainforest and a temperate bog). We give a short summary of the ecological background and its relevance to terrestrial climate change studies. We succinctly describe What and how to measure, providing sufficient detail to ensure reproducibility, and provide a reference list with more extensive literature on each method. We describe a Gold standard, that is the optimal measurement irrespective of economic, technical and practical constraints, and (if applicable) a Bronze standard, that is the minimal requirement for data of adequate quality, which can be advisable in specific situations. In the section on Special cases, emerging issues and challenges, we explain how the method can be adapted in specific cases and provide guidance on relevant challenges and opportunities. We further provide an extensive list of key references on the underlying theories, assumptions and applications of each method in the section on Theory, significance and large datasets, as well as under More on methods and existing protocols. These references may be especially useful for students, early‐career scientists or research teams getting started in setting up new studies, and more generally for readers interested in exploring the wider literature related to a specific ecological response variable. Each chapter is available as a separate supplement for easier handling, but we encourage the climate change research community to be aware of aspects of other chapters outside their own scientific expertise.

3 RESULTS – OVERVIEW OF THE HANDBOOK CONTENT

We produced a collection of 66 protocols, describing response variables ranging from elements and organisms to the ecosystem scale, organized into five supporting information chapters (Table 1). All protocols can be found in the online Supporting Information to this paper. In addition, the protocols are also available online on the ClimEx handbook webpage (climexhandbook.w.uib.no). To ensure that the handbook will also be a useful resource for the community in the future, comments and suggestions for updating the protocols can be made via the webpage. These comments and suggestions will be assessed by the authors of this paper and every update will be tracked. The protocols should be cited as appendices to this paper, see individual protocols for details. In the following, we present a summary of these chapters, guidance on their use and examples of their relevance to climate change research.

Table 1. List of all protocols in the five chapters: 1) Site characteristics and data management, 2) Carbon and nutrient cycling, 3) Water cycling, 4) Species and interactions and 5) Stress physiology. For each protocol, ranges of equipment costs and running costs (specified in euros, € = <100€, €€ = 100–1,000€, €€€ ≥ 1,000€), installation effort (installing or applying on–off measurements), maintenance effort (maintaining instrumentation or repeated measurements), knowledge‐need specified in three categories low (L), medium (M) and high (H), and measurement mode as manual measurement (MM) and/or data logger (DL) are specified
      Equipment costs Running costs per exp. unit Installation Effort Maintenance Effort Knowledge‐need Measurement mode
1. Site characteristics and data management 1.1 Optimizing the study design L
1.2 Geographic location and basic site description L
1.3 Soil type and physical characteristics L L–M MM, DL
1.4 Soil chemistry and nutrient availability L M MM
1.5 Meteorological measurements M L M MM, DL
1.6 Open science practice, reproducible workflow, and data management L
2. Carbon and nutrient cycling 2.1.1 Above‐ground plant biomass €–€€ L–M L L–M MM
2.1.2 Below‐ground plant biomass €–€€€ None–€ M L–M M MM
2.1.3 Leaf‐scale photosynthesis €€€ €€ M M H MM
2.1.4 Plant respiration €€€ M–H H MM, DL
2.1.5 Root exudation (in situ) €–€€€ €–€€€ H L–H M–H MM
2.1.6 Foliar stoichiometry and nutrient resorption €–€€ L–M L MM
2.2.1 Soil microbial biomass – C, N, and P L M M MM
2.2.2 Root and soil colonization by mycorrhizal fungi M–H M–H MM
2.2.3 Soil CO2 (and other trace gas) fluxes €€–€€€ €–€€ M–H M M–H MM, DL
2.2.4 Soil carbon and nutrient stocks M M MM
2.2.5 Nutrient mineralization None–€ €–€€ L–M M M MM
2.2.6 Foliar litter decomposition L L L MM
2.2.7 Root decomposition M–H L L MM (DL)
2.2.8 SOM decomposition €€ €€–€€€ M M M–H MM
2.2.9 Soil leaching €€ €€ M L M MM
2.2.10 Soil water erosion €€ M M M MM
2.2.11 Biological nitrogen fixation €€–€€€ M M M MM
2.3.1 Ecosystem CO2 and trace gas fluxes €€–€€€ €–€€ M–H L–H M–H MM, DL
2.3.2 Total below‐ground carbon flux €€€ €€€ H M H MM, DL
2.3.3 Upscaling from the plot scale to the ecosystem and beyond €–€€€ NA M M M MM, DL
3. Water cycling 3.1 Soil moisture €€ M M M DL
3.2 Soil hydraulic conductivity €€ L L M MM
3.3 Soil water retention €€€ M M M MM
3.4 Soil water potential €€€ M L M DL
3.5 Soil temperature (thermal regime) €€ M M M DL
3.6 Soil wettability or water repellency L MM
3.7 Sap flux €–€€ €–€€ M M–H H DL
3.8 Ecosystem water stress €€ M M M–H DL
4. Species and interactions 4.1 Sexual plant reproduction L L M MM
4.2 Seed viability, germinability and dormancy L L L–H MM
4.3 Plant demography €€ L L M MM
4.4 Bud dormancy depth L M–H L MM
4.5 Above‐ground plant phenology €–€€ L–M H M MM, DL
4.6 The soil seed bank (buried seed pool) M H H MM
4.7 Propagule rain L–M L–M H MM
4.8 Plant community composition L–M H MM
4.9 Soil microbial community composition €€–€€€ M M–H MM
4.10 Soil micro‐ and mesofauna community composition L–H L–M M–H MM
4.11 Macroinvertebrate community composition L–M M–H H MM
4.12 Pollinator composition €€€ L L H MM
4.13 Pollinator visitation €€€ L L M MM
4.14 Plant pathogen and invertebrate herbivory L L M MM
4.15 Vertebrate herbivory €–€€ L L M MM
4.16 Functional traits
5. Stress physiology 5.1 Chlorophyll fluorescence €€–€€€ L M M–H MM
5.2 Chlorophyll and carotenoid content €–€€ M L M MM
5.3 Non‐structural carbohydrates €€€ M M M MM
5.4 Lethal dose (LD50) to quantify stress tolerance exemplified by frost tolerance €€€ M L M MM
5.5 Leaf temperature €€–€€€ €–€€€ M M M MM, DL
5.6 Leaf thermal traits €€–€€€ €–€€€ M–H M MM
5.7 Stomatal conductance €€–€€€ L L M MM, DL
5.8 Psychrometry for water potential measurements €€ M M M DL
5.9 Pressure‐volume curves – TLP, ε, Ψo €€ M L M MM
5.10 Maximum leaf hydraulic conductance €€€ L L M DL
5.11 Metabolomic profiling in plants using mass‐spectrometry €€€ €€ H M H MM
5.12 Reflectance assessment of plant physiological status €€–€€€ L L M MM, DL
5.13 Stable isotopes of water for inferring plant function €€€ M M H MM, DL
5.14 BVOCs emissions from plants and soils €€€ €€€ H H H MM
5.15 Water‐use efficiency €€ L L–M L–M MM, DL
5.16 Leaf hydraulic vulnerability to dehydration €€€ L L M DL

3.1 Chapter 1: Site characteristics and data management

Systematic reporting of background information of the studied system, data analysis and results is necessary to ensure that studies are reproducible and to enable data syntheses and analyses across studies, meta‐analyses, modelling and upscaling (Gerstner et al., 2017; Haddaway & Verhoeven, 2015). Such information includes a basic site description, such as geographic location and abiotic and biotic properties, pre‐experimental baseline conditions (e.g. climate, soil properties), basic methodological descriptions (e.g. sample size, timing, duration), a proper characterization of treatments and results (e.g. units, effect sizes), and well structured and documented data management. Surprisingly, this necessary basic information is often incomplete or missing in scientific publications (Hillebrand & Gurevitch, 2013).

The site characteristics and data management chapter (Supporting Information S1) therefore describes which key site, study system, and study design variables and information should be collected, and how this information is best reported. We first give practical guidance on how to design and set up a climate change study that may serve multiple uses beyond the needs of the particular project. Then, we describe basic site description parameters (e.g. coordinates, elevation, land‐use history, vegetation) and physical (e.g. soil horizon, pH), chemical (e.g. nutrient availability) and meteorological variables. Although some of this information may not directly relate to the particular research question or hypothesis of the original project, reporting all relevant information is essential as it puts studies in a larger context and is key to making data and results useful beyond the particular research for which they were designed.

Arguably, improved collection and reporting of background information about the sites and study systems are probably the largest benefit of this handbook in terms of opportunities for second‐order outputs (Figure 1). At the same time, these data are non‐focus variables in most studies and therefore typically have low priority. To stimulate systematic and standardized collection and reporting of key background variables, we therefore provide an overview of the most critical variables, both overall and specifically for different kinds of data re‐use, synthesis and upscaling (Table 2). Here, we also indicate the spatial scale (plot/treatment/site) at which the different variables should preferably be collected for different opportunities of data re‐use. The first ‘minimum requirement’ column in Table 2 lists variables that all climate change studies – regardless of research question and focus – should measure and report. Background data of particular relevance for specific kinds of second‐order outputs (i.e. meta‐analyses, community modelling, ecosystem modelling, spatial and temporal upscaling) are indicated in the other columns (also see discussion below).

Table 2. Guidance on the selection of variables to optimize different types of data re‐use, synthesis and upscaling. The minimum requirement column lists variables that should be measured and reported in all climate change studies. The meta‐analysis, community models, ecosystem models, and temporal and spatial upscaling columns list variables required for these specific kinds of data re‐use. The critically important variables are in grey cells, whereas advised variables are in white cells. The letters indicate at which level the variables should be measured: S = site, T = treatment and P = individual plot. The last column gives the relevant specific protocols in the Supporting Information
  Variable Minimum requirement Meta‐analyses Community models Ecosystem models Temporal and spatial upscaling Protocol reference
Site description History: Soil and land management/ Disturbance/ Nutrient input/ Contamination S S       1.1.1
Location: Coordinates/ Name/ Country S S S S S 1.1.2
Elevation/ Slope/ Aspect S/P S/P S S S 1.1.3
Climate dataa From nearby meteorological station; >30 years of data are needed for meaningful means. : Mean annual temperature/ Precipitation/ Seasonality/ Length of growing season S S S S S 1.1.4
Dominant vegetation/ Life strategy (density, volume, cover, or biomass)/ Plant functional type S S/T/P S/T/P S/T/P S 1.1.5
Abiotic and biotic properties of the ecosystem Soil type S S S S S 1.2.1
Soil horizons (layers) S     S   1.2.1
Plant rooting depth S S S S S/T/P 1.2.2
Stone content       S   1.2.3
Bulk density S S   S   1.2.4
Soil texture/ Particle size analysis   S   S   1.2.5
Soil pH S S/T/P S S/T/P S/T/P 1.3.1
Soil organic matter (SOM)b Gold standard is via CN analyser; Silver standard Walkley–Black method; Bronze standard is loss‐on‐ignition (LOI). S S/T/P S   S/T/P 1.3.2
Soil C, N and Pc Organic C and N are essential; P is not always measured and is variable, so only continuous measurements are useful; for calcareous soils, inorganic C is important; gold standard is organic and inorganic C, N and P; bronze standard is LOI measurement converted to soil C by dividing by 2. S S/T/P   S/T/P   1.3.2
Cations (exchangeable base cations and cation exchange capacity)   S   S   1.3.2
Plant community composition and abundance S T/P T/P     4.8
Leaf area index S S S T/P   4.15
Plant traits, e.g. leaf mass per area (LMA)   T/P T/P T/P T/P 4.15
Weatherh Continuous measurements. Air temperatured Included in standard automated meteorological station. S S S S S 1.4.2
Soil temperatured Included in standard automated meteorological station. S/T S/T/P S S/T/P S/T/P 1.4.3, 3.5
Fraction of absorbed photosynthetically active radiation (FAPAR)/ Photosynthetically active radiation (PAR)e Usually easily measured as part of automated weather station; necessary if plant growth responses are studied. S S S S S 1.4.4
Relative humidity S S       1.4.5
Precipitation (+ Snow depth and duration)d, f Included in standard automated meteorological station. Snow cover duration in alpine systems, where snow is important. S S     S 1.4.6
Soil moistured Included in standard automated meteorological station. S/T S/T/P S/T/P S/T/P S/T/P 1.4.7
Rain through‐fallg Important in forests and in rainfall experiments. T S   P   1.4.8
  • a From nearby meteorological station; >30 years of data are needed for meaningful means.
  • b Gold standard is via CN analyser; Silver standard Walkley–Black method; Bronze standard is loss‐on‐ignition (LOI).
  • c Organic C and N are essential; P is not always measured and is variable, so only continuous measurements are useful; for calcareous soils, inorganic C is important; gold standard is organic and inorganic C, N and P; bronze standard is LOI measurement converted to soil C by dividing by 2.
  • d Included in standard automated meteorological station.
  • e Usually easily measured as part of automated weather station; necessary if plant growth responses are studied.
  • f Snow cover duration in alpine systems, where snow is important.
  • g Important in forests and in rainfall experiments.
  • h Continuous measurements.

Alongside the planning of the study design and data collection, the ‘data cycle’ in a research project – creating, processing, documenting, sharing, storing and re‐using data – should also be planned, follow standardized practice and be well structured and documented (British Ecological Society, 2018; Poisot, Bruneau, Gonzalez, Gravel, & Peres‐Neto, 2019). Good data management practice is a key element of ‘preproducible’ research practice, a term describing a holistic approach to reproducible science (Stark, 2018). We argue that good data management practice is a key step in overcoming the challenges related to the ‘data availability filter’ (Figure 1) and thus in creating opportunities for data re‐use, synthesis and upscaling. Funding bodies and publishers are increasingly recognizing this, and now often require data management plans and open science practice (British Ecological Society, 2018). We therefore include guidance on open science practice, reproducible workflow and data management in this chapter.

3.2 Chapter 2: Carbon and nutrient cycling

The cycles of carbon and nutrients involve many ecological processes that are all sensitive to climate change (Bai et al., 2013; Yue et al., 2017), including photosynthesis, above‐ and below‐ground plant growth, autotrophic and heterotrophic respiration, organic matter decomposition and nutrient mineralization. Even minor changes in any of these processes, or in the balance between them, can have implications for biodiversity and ecosystems, which again can impact strongly on ecosystem goods and services such as provisioning of food and fibre, water regulation and carbon sequestration (Trumbore, Brando, & Hartmann, 2015).

In the carbon and nutrient cycling chapter (Supporting Information S2), we focus on the main components of the terrestrial carbon cycle, including above‐ and below‐ground processes, pools and fluxes. Nutrients are also included, but limited to pools and processes that are linked to carbon cycling and ecosystem feedbacks to climate. We stratify measurements into three thematic protocols (plants, soil and ecosystems) that are particularly relevant when considering carbon and nutrient cycling processes within terrestrial ecosystems.

3.3 Chapter 3: Water cycling

Ecosystems play key roles in water and energy cycles, with feedbacks to climate. The understanding of the water and energy exchange between the soil, plants and the atmosphere is still a major research challenge in climate change research because of difficulties in some of the measurements, which are needed to complete the water and energy balances. Water that enters the ecosystem via precipitation will be separated into evaporation, infiltration, transpiration by plants, drainage to groundwater and (temporary) storage in the soil. All these water fluxes need to be determined to fully understand the water and energy exchange between the ecosystem and the atmosphere.

In the water cycling chapter (Supporting Information S3), we start with soil hydraulic measurements, which include soil moisture, hydraulic conductivity, water retention and water potential. The methods included are key to determining parameters that link to, or are used in, modelling the soil–plant–atmosphere continuum. We also provide guidelines to quantify the ecosystem water stress aiming to facilitate comparison and syntheses across studies. We further include measurements used to track the progress of water through the plant and back to the atmosphere.

3.4 Chapter 4: Species and interactions

As discussed above, plants and the interactions in which they participate play key roles in terrestrial ecosystems. Impacts of climate change on ecosystems and their functioning are therefore to a large extent, mediated through the plantsoil food web, both through changes in the abundance and diversity of organisms, and through changes in their interactions (competition, mutualism, grazing, predation, decomposition, etc.).

In the species and interactions chapter (Supporting Information S4), we provide guidance on quantifying the consequences of climate change for key organisms, biodiversity components and ecological processes across the plant–soil food web. At the level of populations, we cover vital rates such as reproduction, recruitment, growth, mortality and phenology, as well as the overall impacts on the dynamics and growth rates of populations. At the community level, we provide guidance on the assessment of impacts on plant‐, invertebrate‐ and microbial‐species composition, abundance and diversity. For plants, we consider both above‐ and below‐ground diversity, as well as community‐level dynamics in the form of propagule rain. With regard to species interactions, we cover pollination, vertebrate and invertebrate herbivory, plant predation and pathogens, and decomposition. We also provide a short motivation for, and link to, the plant traits protocol (Pérez‐Harguindeguy et al., 2013). This chapter does not cover organism responses at the individual level, which are dealt with in chapter 5 on stress physiology (see below).

3.5 Chapter 5: Stress physiology

In uncovering how climate change will affect plants and ecosystems, ecophysiology provides the means to mechanistically predict when tolerance limits are exceeded, and therefore when changes in the functioning of individual plants, species and entire ecosystems should occur. However, generalizations drawn from ecophysiological measurements have specific methodological challenges related to factors such as microclimate versus tissue temperature (De Boeck, Velde, Groote, & Nijs, 2016; Michaletz et al., 2016), acclimation (Neuner & Buchner, 2012) and scaling up from leaves to whole organisms or even ecosystems.

In the stress physiology chapter (Supporting Information S5), we describe a series of physiological or related measurements that are useful in climate change research. We focus mostly on their use as indicators of stress, attained through determination of compounds (e.g. chlorophyll and carotenoid content, non‐structural carbohydrates), plant functional traits (e.g. reflectance, leaf hydraulic conductivity, leaf thermal properties, stable isotopes of carbon and water) and measurements that directly characterize or assess stress and tolerance.

4 DISCUSSION – ADDING VALUE THROUGH BETTER COORDINATION OF CLIMATE CHANGE ECOLOGY

4.1 The case for standardized data collection and reporting

Variation in the reporting of basic site and experimental characteristics or in measurement methodologies substantially reduces the potential data (re‐)use for analyses and comparisons across studies. Comprehensive comparisons across studies are therefore often hampered by (a) unrecorded factors increasing the unexplained variance in the data, (b) incompatible reporting leading to loss of information in the data (e.g. necessitate a simplification from quantitative to factor or qualitative variables) and (c) failure to report key (co)variates reducing the sample size (e.g. if studies have to be excluded from a synthesis) (Gerstner et al., 2017; Haddaway & Verhoeven, 2015). Using standardized protocols and reporting – to the extent that these are appropriate for the individual study – will therefore substantially increase the potential downstream use of data and added value of individual studies (affecting both filters; Figure 1).

Another challenge relates to specific parameters that are important for syntheses and meta‐analyses, but which are often not measured or reported in stand‐alone studies (affecting the data availability filter; Figure 1). For example, nutrient availability and nutrient dynamics may not be important in all individual studies but are increasingly being recognized as key drivers of across‐site variation in ecosystem properties, dynamics and responses to climate and global changes (De Graaff, Van Groeningen, Six, Hungate, & Van Kessel, 2006; Janssens et al., 2010; Ren et al., 2017; Stevens et al., 2015; Terrer, Vicca, Hungate, Phillips, & Prentice, 2016; Vicca, Luyssaert, et al., 2012). Carbon‐cycle models have traditionally overlooked the role of nutrient availability, but the overwhelming evidence of its dominant role is now encouraging the modelling community to address the roles of nitrogen and, more recently, phosphorus (Goll et al., 2012; Peñuelas et al., 2013; Wang, Law, & Pak, 2010). While the scientific community is increasingly acknowledging the importance of nitrogen, phosphorus and other nutrients for understanding and projecting the carbon cycle, there is still a significant lack of informative and comparable datasets at regional and global scales (Vicca et al., 2018). In the Site characteristics and data management chapter, we therefore provide a section on what variables to measure to enable disentangling the role of nutrients in carbon synthesis studies (summarized in Table 2).

4.2 The case for using standardized and relevant units and scales

Several of the key variables and covariates for inter‐study comparisons (Table 2) include data and parameters that may be measured in different units or scales, depending on the research tradition in the specific fields. Such variables are, or can easily be made, comparable across studies, as long as the necessary information needed for conversions are also reported along with the original variables (these may relate to area/volume, climatic data, vegetation characterization, soil properties, nutrients; Table 2; affecting the compatibility filter, Figure 1). For example, changes in soil organic carbon in response to a manipulation are typically reported either per unit area or as a weight percentage. These metrics are both valid, but they are not comparable unless the data necessary for conversion (bulk density and sampling depth) are provided. The necessary information for recalculation or conversion across reporting traditions should therefore be recorded and reported.

A second challenge relates to the need to quantify the treatments as experienced by the biota. For example, precipitation manipulation experiments typically report the amount of water added or removed, but the manipulation as experienced by the biota may deviate substantially from what is reflected in the absolute or percentage change in precipitation. Specifically, soil water availability is influenced by many factors, including soil water‐holding capacity, run‐off, hydrological legacy, rooting depth and drainage (Vicca, Luyssaert, et al., 2012). Hence, assessing water availability in a standardized way will substantially improve our understanding of the sensitivity of ecosystems to the manipulations and facilitate cross‐experimental comparisons (see protocol 3.8 on Ecosystem water stress).

4.3 The case for upscaling through models

Various types of mechanistic models can be used to generalize and extrapolate the data collected from in situ climate change studies in space and time. The potential of model‐data interaction and its potential high impact, however, is often forgotten during experimental planning. Here, we want to illustrate the importance of early project planning for future data use (Table 2). For example, soil pH as an easy and low‐cost measure may have been traditionally measured at the site level (lowest resolution), but in order to be a useful variable in meta‐analyses, ecosystem models and temporal and spatial upscaling, soil pH data are more valuable if measured at a higher resolution (e.g. treatment or plot level). Thus, investing time in considering the aspired impact of the data‐to‐be‐collected already in the project planning phase can direct budget investments and will be beneficial for the wider experimental and modelling community.

Purely statistical models attempt to describe cause‐and‐effect based on independent measurements of key processes. On the other hand, process‐based models are built on a theoretical understanding of relevant ecological processes and provide understanding about specific responses to various environmental conditions. Here, we suggest three strategies for stimulating information flow between models and experiments and/or observational studies. First, data‐model comparisons can be used as a tool to directly test hypotheses, where observations are compared directly against model output. Second, experimental and/or observational data can be used as for model calibration tool, where parameters and predictor variables measured at a site or within a treatment are used to calibrate the model. In this case, the uncalibrated response variables can be compared to the model output; flexible parameterization can be considered a hypothesis (i.e. a form of sensitivity analysis) and can be used to inform the final model selection. Finally, the model parameters can be used in process‐based models to ‘tune’ or ‘benchmark’ the model, which means that the model is simply fitted to the model‐derived data. In this latter case, the model provides no hypothesis test, but simply synthesizes the data within the logical structure provided by the model (Luo et al., 2012). Each of these strategies has its place, but the difference in objectives and data requirements needs to be recognized.

To give an example, sensitivity analyses often identify similar variables as important for similar models. The BIOME‐BGC model, which describes biogeochemical processes, is especially sensitive to leaf area index, cumulative soil water‐holding capacity, leaf mass to area ratio, temperature and some measure of nutrient status (White, Thornton, Running, & Nemani, 2000). Similarly, Yang et al. (2016) described a sensitivity test of a model predicting the distribution of plant functional types. They found that leaf area index, leaf nitrogen per mass and leaf mass per area provided a particularly powerful combination of predictions. When exercised with changes in temperature and precipitation, the model predicted, for example, that boreal forest, boreal steppe and tundra would lose significant area. By measuring and reporting the variables needed to meet the data requirements of different types of models (Table 2), the information flow between empirical studies and modelling will be increased.

4.4 The case for considering new mechanisms and drivers under future climates

As the climate warms and rainfall patterns intensify in many regions across the globe, mechanisms and driving factors that are currently of minor importance could become more dominant in the future. Thus, new variables might need to be considered for measurement protocols to adequately track modifications in ecosystems under a changed climate. In particular, drought events are expected to occur more often, to last longer or to be more severe in many regions (Prudhomme et al., 2014; Touma, Ashfaq, Nayak, Kao, & Diffenbaugh, 2015). Conversely, increased rainfall intensities and flash flooding during the growing season are also predicted (Kendon et al., 2014), leading to a short‐term rise in the availability of water. Drier conditions could have consequences for the drivers and mechanisms operating in biogeochemical cycles. For example, rain might periodically be absent, thus driving the ecosystem to pass a threshold and start relying on non‐rainfall water inputs (occult precipitation, such as dew and fog) for plant, litter and soil processes (Gliksman et al., 2017; Hill, Dawson, Shelef, & Rachmilevitch, 2015; McHugh, Morrissey, Reed, Hungate, & Schwartz, 2015). Moreover, abiotic processes, such as photochemical and thermal processes, start to kick in after passing heat and drought thresholds (Austin & Vivanco, 2006; McCalley & Sparks, 2009). Methodologies need to be adapted to capture such changes in drivers and mechanisms. For example, litterbags to study decomposition should transmit UV radiation and should only minimally affect the energy balance of litter to prevent interfering with dew formation. In addition to the need of measurement devices to consider these mechanisms and allow their quantification, the relevant drivers have to be measured with affordable equipment, such as UV irradiance by UV sensors and duration of dew by leaf wetness sensors. In general, this illustrates how novel future climates and conditions will necessitate the consideration of new drivers and mechanisms.

5 CONCLUSIONS

Climate change experiments and observational studies are increasingly being conducted across a broad range of habitats and regions. Experiments are generally designed to disentangle complex and interactive drivers, causal relationships, response surfaces and underlying mechanisms, whereas observational studies document large‐scale temporal and spatial patterns. The growing interest in data re‐use, synthesis and upscaling within and across experiments and observations highlights challenges and pitfalls regarding the downstream use of knowledge from these studies, especially regarding data availability and data compatibility across studies (Denny et al., 2014; Firbank et al., 2017; Vicca, Gilgen, et al., 2012) and the lack of basic study information or covariates necessary for comparison (Gerstner et al., 2017; Haddaway & Verhoeven, 2015; Halbritter et al., 2018).

To overcome these challenges, we provide a handbook with guidance on the selection of response variables, protocols for standardized measurements of these variables and advice on data reporting and management. The ClimEx handbook summarizes best‐practice methodologies emerging from major ecological research networks and studies, as synthesized by 115 experts from across relevant research fields. Our ambition is that this community effort will facilitate awareness by the next generation (and the older generation) climate‐ and global‐change scientists of standardized methods to promote data availability, compatibility and transparency. We envision improved research practices that will not only result in better returns on the time and money invested in individual research projects, but will especially facilitate second‐order research outputs across projects and scientific disciplines. More general, this should lead to a better connection of scientific communities and disciplines. The ultimate goal is to optimize the quality and impact of our science to fulfil society's needs in a changing world.

ACKNOWLEDGEMENTS

We thank the ClimMani core group for the opportunity to realize this handbook, Linn Vassvik, Christine Pötsch, William Erazo Garcia and Siri V. Haugum for assisting in the collection of existing protocols, and Cathy Jenks for reading all the protocols thrice, checking the language, flow, logic and all references. The authors were funded by different national and international research agencies while contributing to this work, but in the interest of the word count we are not mentioning these individually. This study was funded by the ClimMani COST Action ES1308 (2014‐2018).

    AUTHORS’ CONTRIBUTIONS

    H.J.D.B. and V.V. conceived the idea and initiated the project. A.H.H. and V.V. led the project, which included developing the original idea, elaborating on the structure, content and workflow of the paper, organizing meetings to discuss ideas, methodology, data collection, organizing the writing and reviewing of the protocols, and leading the writing of the manuscript. H.J.D.B., A.E.E., A.J., S.R., D.A.R., S.V. and P.W. led the collection and writing of the five protocol chapters and were involved in conceiving the ideas, designing methodology and contributing critically to the drafts of the manuscript. B.B., C.T.C., M.E., J.M.G., R.G., K.H., I.K.S., H.L., S.L., J.M. and J.P. contributed to developing ideas, selecting and describing methodologies, and writing drafts of the protocols and manuscript. The ClimMani working group contributed to writing and reviewing individual protocols (see each individual protocol for author and reviewer contributions). All authors gave final approval for publication.

    DATA AVAILABILITY STATEMENT

    This manuscript does not use data.

    APPENDIX A

    ClimMani Working Group: Nelson Abrantes1, María Almagro2, Inge H. J. Althuizen3, Isabel C. Barrio4, Mariska te Beest5,6, Claus Beier7, Ilka Beil8, Z. Carter Berry9, Tone Birkemoe10, Jarle W. Bjerke11, Benjamin Blonder12,13, Gesche Blume‐Werry8, Gil Bohrer14, Isabel Campos1, Lucas A. Cernusak15, Bogdan H. Chojnicki16, Bernhard J. Cosby17, Lee T. Dickman18, Ika Djukic19, Iolanda Filella20,21, Lucia Fuchslueger22, Albert Gargallo‐Garriga21, Mark A. K. Gillespie23, Gregory R. Goldsmith9, Christopher Gough24, Fletcher W. Halliday25, Stein Joar Hegland23, Günter Hoch26, Petr Holub27, Francesca Jaroszynska3, Daniel M. Johnson28, Scott B. Jones29, Paul Kardol30, Jan J. Keizer1, Karel Klem31, Heidi S. Konestabo32, Jürgen Kreyling8, György Kröel‐Dulay33, Simon M. Landhäusser34, Klaus S. Larsen7, Niki Leblans22,35, Inma Lebron17, Marco M. Lehmann36, Jonas J. Lembrechts22, Armando Lenz37, Anja Linstädter38,39, Joan Llusià21, Marc Macias‐Fauria40, Andrey V. Malyshev8, Pille Mänd41, Miles Marshall42, Ashley M. Matheny43, Nate McDowell44, Ina C. Meier45, Frederick C. Meinzer46, Sean T. Michaletz47,48,18, Megan L. Miller49, Lena Muffler8,45, Michal Oravec27, Ivika Ostonen41, Albert Porcar‐Castell50, Catherine Preece20,21, Iain C. Prentice51, Dajana Radujković22, Virve Ravolainen52, Relena Ribbons53, Jan C. Ruppert54, Lawren Sack55, Jordi Sardans20,21, Andreas Schindlbacher56, Christine Scoffoni57, Bjarni D. Sigurdsson4, Simon Smart58, Stuart W. Smith59,60, Fiona Soper61, James D. M. Speed62, Anne Sverdrup‐Thygeson10, Markus A. K. Sydenham63, Arezoo Taghizadeh‐Toosi64, Richard J. Telford3, Katja Tielbörger54, Joachim P. Töpper65,66, Otmar Urban27, Martine van der Ploeg67, Leandro Van Langenhove22, Kristýna Večeřová27, Arne Ven22, Erik Verbruggen22, Unni Vik68, Robert Weigel45, Thomas Wohlgemuth36, Lauren K. Wood24, Julie Zinnert24, Kamal Zurba69

    Affiliations: 1Centre for Environmental and Marine Studies (CESAM), Department of Environment and Planning, University of Aveiro, Aveiro, Portugal; 2BC3‐Basque Centre for Climate Change, University of the Basque Country, Leioa, Spain; 3Department of Biological Sciences and Bjerknes Centre for Climate Research, University of Bergen, Bergen, Norway; 4Department of Natural Resources and Environmental Sciences, Agricultural University of Iceland, Reykjavík, Iceland; 5Centre for African Conservation Ecology, Nelson Mandela University, Port Elizabeth, South Africa; 6Environmental Sciences, Copernicus Institute of Sustainable Development, Utrecht University, Utrecht, the Netherlands; 7Department of Geosciences and Natural Resource Management, University of Copenhagen, Frederiksberg, Denmark; 8Experimental Plant Ecology, Institute of Botany and Landscape Ecology, University of Greifswald, Greifswald, Germany; 9Schmid College of Science and Technology, Chapman University, Orange, USA; 10Faculty of Environmental Sciences and Natural Resource Management, Norwegian University of Life Sciences, Ås, Norway; 11Norwegian Institute for Nature Research – NINA and FRAM – High North Research Centre for Climate and the Environment, Tromsø, Norway; 12Environmental Change Institute, School of Geography and the Environment, University of Oxford, Oxford, UK; 13School of Life Sciences, Arizona State University, Tempe, USA; 14Department of Civil, Environmental, and Geodetic Engineering, Ohio State University, USA; 15College of Science and Engineering, James Cook University, Cairns, Queensland, Australia; 16Meteorology Department, Poznań University of Life Sciences, Poznań, Poland; 17Centre for Ecology & Hydrology, Environment Centre Wales, Bangor, UK; 18Earth and Environmental Sciences Division, Los Alamos National Laboratory, Los Alamos, USA; 19Swiss Federal Institute for Forest, Snow and Landscape Research (WSL), Birmensdorf, Switzerland; 20CREAF, Cerdanyola del Vallès, Spain; 21CSIC, Global Ecology Unit CREAF‐CSIC‐UAB, Bellaterra, Spain; 22Centre of Excellence PLECO (Plants and Ecosystems), Biology Department, University of Antwerp, Wilrijk, Belgium; 23Department of Environmental Sciences, Western Norway University of Applied Sciences, Sogndal, Norway; 24Department of Biology, Virginia Commonwealth University, Richmond, USA; 25Department of Biology, University of North Carolina, Chapel Hill, USA; 26Department of Environmental Sciences – Botany, University of Basel, Basel, Switzerland; 27Global Change Research Institute, The Czech Academy of Sciences, Brno, Czech Republic; 28Warnell School of Forestry and Natural Resources, University of Georgia, Athens, USA; 29Department of Plants, Soils and Climate, Utah State University, Logan, USA; 30Department of Forest Ecology and Management, Swedish University of Agricultural Sciences, Umeå, Sweden; 31Faculty of AgriSciences, Mendel University in Brno, Brno, Czech Republic; 32The Science Library, University of Oslo, Norway; 33Institute of Ecology and Botany, MTA Centre for Ecological Research, Vácrátót, Hungary; 34Department of Renewable Resources, University of Alberta, Edmonton, Canada; 35Climate Impacts Research Centre, Department of Ecology and Environmental Science, Umeå University, Abisko, Sweden; 36Forest Dynamics, Swiss Federal Institute for Forest, Snow and Landscape Research WSL, Birmensdorf, Switzerland; 37Clinical Trial Unit Bern, Department of Clinical Research, University of Bern, Bern, Switzerland; 38Institute of Crop Science and Resource Conservation (INRES), University of Bonn, Bonn, Germany; 39Range Ecology and Management Group, Botanical Institute, University of Cologne, Cologne, Germany; 40School of Geography and the Environment, University of Oxford, Oxford, UK; 41Institute of Ecology and Earth Sciences, University of Tartu, Tartu, Estonia; 42Bangor University School of Natural Sciences, Bangor, UK; 43Department of Geological Sciences, Jackson School of Geosciences, The University of Texas at Austin, Austin, USA; 44Pacific Northwest National Laboratory, Richland, USA; 45Plant Ecology, Albrecht‐von‐Haller Institute for Plant Sciences, University of Goettingen, Goettingen, Germany; 46Pacific Northwest Research Station, USDA Forest Service, Corvallis, USA; 47Biosphere 2 and Department of Ecology & Evolutionary Biology, University of Arizona, Tucson, USA; 48Department of Botany and Biodiversity Research Centre, University of British Columbia, Vancouver, Canada; 49College of Natural Resources, University of Idaho, Moscow, USA; 50Optics of Photosynthesis Laboratory, Institute for Atmospheric and Earth System Research/Forest Sciences, University of Helsinki, Helsinki, Finland; 51AXA Chair Programme in Biosphere and Climate Impacts, Department of Life Sciences, Imperial College London, Ascot, UK; 52Norwegian Polar Institute, Fram Centre, Tromsø, Norway; 53Biology and Geology Departments, Lawrence University, Appleton, USA; 54Institute of Evolution and Ecology, Plant Ecology Group, University of Tübingen, Tübingen, Germany; 55Department of Ecology and Evolutionary Biology, University of California Los Angeles, Los Angeles, USA; 56Department of Forest Ecology and Soils, Federal Research and Training Centre for Forests, Natural Hazards and Landscape, Vienna, Austria; 57Department of Biological Sciences, California State University, Los Angeles, Los Angeles, USA; 58Centre for Ecology & Hydrology, Environment Centre Lancaster, Lancaster University, Lancaster, UK; 59Asian School of the Environment, Nanyang Technological University of Singapore, Singapore; 60Department of Biology, Norwegian University of Science and Technology, Trondheim, Norway; 61Department of Ecology and Evolutionary Biology, Cornell University, Ithaca, USA; 62Department of Natural History, NTNU University Museum, Norwegian University of Science and Technology, Trondheim, Norway; 63Norwegian Institute for Nature Research, Oslo, Norway; 64Department of Agroecology, Aarhus University, Tjele, Denmark; 65Department of Biological Sciences, University of Bergen, Bergen, Norway; 66Norwegian Institute for Nature Research, Bergen, Norway; 67Soil Physics and Land Management, Wageningen University, Wageningen, the Netherlands; 68Section for Genetics and Evolutionary Biology (EVOGENE), Department of Biosciences, University of Oslo, Oslo, Norway; 69Interdisciplinary Environmental Research Centre, Technische Universität Bergakademie Freiberg, Germany.