Assessment of the potential impacts of plant traits across environments by combining global sensitivity analysis and dynamic modeling in wheat
Pierre Casadebaig, Bangyou Zheng, Scott Chapman, Neil Huth, Robert, Faivre, Karine Chenu

TL;DR
This study uses global sensitivity analysis and dynamic modeling to identify key plant traits affecting wheat yield across diverse environments, aiding crop improvement and adaptation strategies.
Contribution
It combines large-scale simulation with sensitivity analysis to pinpoint influential traits for wheat yield under variable conditions, enhancing understanding of trait-environment interactions.
Findings
Identified 42 influential parameters affecting wheat yield.
Traits related to phenology, resource efficiency, and biomass allocation are key.
Most influential traits vary across environments and management practices.
Abstract
A crop can be viewed as a complex system with outputs (e.g. yield) that are affected by inputs of genetic, physiology, pedo-climatic and management information. Application of numerical methods for model exploration assist in evaluating the major most influential inputs, providing the simulation model is a credible description of the biological system. A sensitivity analysis was used to assess the simulated impact on yield of a suite of traits involved in major processes of crop growth and development, and to evaluate how the simulated value of such traits varies across environments and in relation to other traits (which can be interpreted as a virtual change in genetic background). The study focused on wheat in Australia, with an emphasis on adaptation to low rainfall conditions. A large set of traits (90) was evaluated in a wide target population of environments (4 sites x 125 years),…
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