GSTDTAP  > 气候变化
DOI10.1111/gcb.16087
A trait-based model ensemble approach to design rice plant types for future climate
Livia Paleari; Tao Li; Yubin Yang; Lloyd T. Wilson; Toshihiro Hasegawa; Kenneth J. Boote; Samuel Buis; Gerrit Hoogenboom; Yujing Gao; Ermes Movedi; Franç; oise Ruget; Upendra Singh; Claudio O. Stö; ckle; Liang Tang; Daniel Wallach; Yan Zhu; Roberto Confalonieri
2022-01-30
发表期刊Global Change Biology
出版年2022
英文摘要

Crop models are powerful tools to support breeding because of their capability to explore genotype × environment×management interactions that can help design promising plant types under climate change. However, relationships between plant traits and model parameters are often model specific and not necessarily direct, depending on how models formulate plant morphological and physiological features. This hinders model application in plant breeding. We developed a novel trait-based multi-model ensemble approach to improve the design of rice plant types for future climate projections. We conducted multi-model simulations targeting enhanced productivity, and aggregated results into model-ensemble sets of phenotypic traits as defined by breeders rather than by model parameters. This allowed to overcome the limitations due to ambiguities in trait-parameter mapping from single modelling approaches. Breeders' knowledge and perspective were integrated to provide clear mapping from designed plant types to breeding traits. Nine crop models from the AgMIP-Rice Project and sensitivity analysis techniques were used to explore trait responses under different climate and management scenarios at four sites. The method demonstrated the potential of yield improvement that ranged from 15.8% to 41.5% compared to the current cultivars under mid-century climate projections. These results highlight the primary role of phenological traits to improve crop adaptation to climate change, as well as traits involved with canopy development and structure. The variability of plant types derived with different models supported model ensembles to handle related uncertainty. Nevertheless, the models agreed in capturing the effect of the heterogeneity in climate conditions across sites on key traits, highlighting the need for context-specific breeding programmes to improve crop adaptation to climate change. Although further improvement is needed for crop models to fully support breeding programmes, a trait-based ensemble approach represents a major step towards the integration of crop modelling and breeding to address climate change challenges and develop adaptation options.

领域气候变化 ; 资源环境
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文献类型期刊论文
条目标识符http://119.78.100.173/C666/handle/2XK7JSWQ/346114
专题气候变化
资源环境科学
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GB/T 7714
Livia Paleari,Tao Li,Yubin Yang,et al. A trait-based model ensemble approach to design rice plant types for future climate[J]. Global Change Biology,2022.
APA Livia Paleari.,Tao Li.,Yubin Yang.,Lloyd T. Wilson.,Toshihiro Hasegawa.,...&Roberto Confalonieri.(2022).A trait-based model ensemble approach to design rice plant types for future climate.Global Change Biology.
MLA Livia Paleari,et al."A trait-based model ensemble approach to design rice plant types for future climate".Global Change Biology (2022).
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