Advancing ecosystem ecology through innovative research methods and techniques
Dafeng HUI , Shiqiang WAN , Tao ZHOU , Jianyang XIA , Feng TAO , Yuanyuan HUANG , Ji CHEN , Xingjie LU , Cuijuan LIAO , Zhenggang DU , Xuhui ZHOU , Shuili NIU , Yiqi LUO
Front. Earth Sci. ›› 2026, Vol. 20 ›› Issue (1) : 1 -20.
Terrestrial ecosystems are experiencing rapid and unprecedented changes driven by global warming, precipitation changes, increasing atmospheric CO2, nitrogen enrichment, and land-use change. Understanding and predicting ecosystem responses to these interacting factors requires integrative approaches that combine empirical observations with advanced analytical and modeling frameworks. Over the past several decades, Luo Ecolab and its collaborators have pioneered a suite of innovative research methodologies, including long-term manipulative field experiments, global-scale meta-analyses, data assimilation, matrix-based modeling, and artificial intelligence (AI)-enabled data–model integration. In this review, we synthesize key advances across six thematic areas and demonstrate how these complementary approaches enhance mechanistic understanding and predictive capacity in ecosystem ecology. Specifically, experimental warming studies reveal that ecosystem responses are dynamic and frequently constrained by water and nutrient availability, and subject to acclimation over time. Meta-analyses provide robust quantitative syntheses across ecosystems, identifying consistent yet context-dependent effects of global change on ecosystem productivity, soil carbon cycling, and greenhouse gas emissions. Data assimilation bridges observations and process-based models, reducing uncertainty and improving predictions at site, regional, and global scales. The matrix modeling framework offers a unifying mathematical structure for carbon cycle models, enabling efficient computation, traceability analysis, and systematic diagnosis of model uncertainty. Emerging AI approaches, particularly knowledge-guided machine learning, further advance the integration of big data with ecological theory, unlocking new pathways for scientific discovery. Collectively, these advances demonstrate that ecosystem responses to global change are governed by complex interactions among climate, nutrient availability, and microbial processes. By integrating empirical data, theoretical frameworks, and computational innovations, this body of work provides a robust foundation for next-generation ecosystem modeling and ecological forecasting in an era of accelerating environmental change.
Ecolab / global change / carbon cycling / field experiments / meta-analyses / data assimilation / matrix-based modeling / artificial intelligence
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Higher Education Press
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