Source: UNIVERSITY OF ILLINOIS submitted to
OPTIMIZING SOYBEAN CANOPY ARCHITECTURE FOR EFFICIENT LIGHT AND WATER USE UNDER CLIMATE CHANGE
Sponsoring Institution
National Institute of Food and Agriculture
Project Status
NEW
Funding Source
Reporting Frequency
Annual
Accession No.
1032382
Grant No.
2024-67013-42449
Project No.
ILLU-000-734
Proposal No.
2023-08563
Multistate No.
(N/A)
Program Code
A1152
Project Start Date
Jul 1, 2024
Project End Date
Jun 30, 2027
Grant Year
2024
Project Director
Marshall-Colon, A.
Recipient Organization
UNIVERSITY OF ILLINOIS
2001 S. Lincoln Ave.
URBANA,IL 61801
Performing Department
(N/A)
Non Technical Summary
Increases in global mean temperatures, CO2 concentrations, variable precipitation and humidity are affecting crop water use efficiency (WUE). Recent studies have shown that soybean WUE decreases with increasing seasonal temperatures, despite gains from elevated CO2. It was also shown that soybean leaf shape and canopy architecture could influence light and water use efficiency. However, the complex interactions among [CO2], temperature, and soil moisture with variable canopy architectures have not been studied. We propose to address A1152 Program Area Priorities A and B by investigating the relationship among plant architecture, carbon assimilation, and WUE as they inherently relate to soybean productivity. The overall goal of this project is to predict optimal soybean canopy architecture for maximum light capture and WUE under future climate scenarios. Specific objectives include: 1. Create a digital soybean canopy with detailed 3D-geometry, illumination, and microclimate data. 2. Apply algorithms for the fast calculation of light distribution throughout the canopy under varying architectures and seeding strategies. 3. Perform integrative modeling to estimate the photosynthetic and WUE of soy canopies optimized for light capture under variable climate conditions. These objectives will be accomplished by developing, testing, and optimizing a digital twin that extends the idea of plant ideotypes into interactive, AI-based, 3D computer simulations using procedural modeling with an advanced light transportation model. Model outputs will inform short-term recommendations involving selection and management strategies, as well as long-term recommendations for targeting structural traits with genetic modification.
Animal Health Component
0%
Research Effort Categories
Basic
50%
Applied
50%
Developmental
0%
Classification

Knowledge Area (KA)Subject of Investigation (SOI)Field of Science (FOS)Percent
20618201060100%
Knowledge Area
206 - Basic Plant Biology;

Subject Of Investigation
1820 - Soybean;

Field Of Science
1060 - Biology (whole systems);
Goals / Objectives
The long-term goal of the project is to predict optimal soybean canopy architecture for maximum light capture and water use efficiency under future climate scenarios, and the optimal distribution of resources within that canopy.Supporting Objectives:Collect detailed 3D geometry and illumination data to reconstruct a soybean canopy digital twin.Reconstruct and enable the digital twin to be simulation ready and to respond to varying environmental conditions.Apply algorithms for the fast calculation of light distribution throughout the canopy under varying architectures and seeding strategies.Perform integrative modeling to estimate the photosynthetic and water use efficiency of soy canopies optimized for light capture.Develop an interactive application with an intuitive GUI that will allow the creation and testing of "what-if" scenarios by modifying the environment and distribution of resources determining photosynthesis at the leaf level.
Project Methods
1. Create a soybean canopy digital twin with detailed 3D geometry and illumination data.2. Reconstruct and enable the digital twin to be simulation ready, have a controllable shape, and be responsive to time (development).3. Apply algorithms for the fast calculation and optimization of light distribution throughout the canopy under varying architectures, environments, and seeding strategies.4. Perform integrative modeling to estimate the photosynthetic and water use efficiency of soy canopies optimized for light capture. ?5. Create an interactive application with a simple and intuitive GUI that will allow the creation and testing of "what-if" scenarios by modifying the environment and running simulations.