NEW! Use of an enhanced cultivar calibration framework for #DSSAT to examine effects of ecotype and time-series data
from Luis Vargas-Rojas, Matthew Reynolds, and Diane R Wang
https://doi.org/10.1093/insilicoplants/diag001 #PlantSci #drought #wheat
Optimizing nitrogen topdressing for winter wheat by coupling remote sensing data with the #DSSAT model
https://doi.org/10.3389/fpls.2025.1658254 via Frontiers in Plant Science #PlantScience
The Decision Support System for Agrotechnology Transfer (DSSAT) crop modeling ecosystem: evolution and advances

This chapter The Decision Support System for Agrotechnology Transfer (DSSAT) crop modeling ecosystem: evolution and advances is an Open Access publication available for download under the terms of the Creative Commons Attribution 4.0 License (CC BY) from bdspublising.com

2 open scientist positions with Mitti labs in Bengaluru, India :
Crop Modeler - Climate & GHG Emissions
Machine Learning Engineer - Geospatial AI
https://apply.workable.com/mitti-labs/ #PlantSciJobs #DSSAT #APSIM
The postdoctoral scholars will: (1) investigate factors affecting cover #crop mixture performance and their impact on subsequent crops using a new intercrop module in #DSSAT, (2) evaluate and improve DSSAT-CROPGRO model performance for simulation of crop nitrogen dynamics, biological nitrogen fixation, and seed composition.

National Workshop on #DSSAT Software Applications in #Agriculture
Attend via Zoom
7th February 2025

More info: https://forms.gle/9PPxkWT7Z1Rg74pS9

Scientists working with functional-structural plant models

Scientists working with functional-structural plant models

Enhancing #crop #model parameter estimation across computing environments
from Thiago Berton Ferreira, Vakhtang Shelia, Cheryl Porter, Patricia Moreno Cadena, Montserrat Salmeron Cortasa, Muhammad Sohail Khan, Willingthon Pavan, Gerrit Hoogenboom

https://buff.ly/4eM5CaJ via Computers and Electronics in Agriculture #DSSAT #PlantScience 🧪

Evaluating a #Cassava Crop Growth #Model by Optimizing Genotypic-Specific Parameters Using Multi-environment Trial Breeding Data
by Pamelas M. Okoma, Siraj S. Kayondo, Ismail Y. Rabbi, Patricia L. Moreno-Cadena, Gerrit Hoogenboom, Jean-Luc Jannink

https://doi.org/10.1101/2024.10.29.620843 via @biorxiv_plants #model #PlantScience 🧪 #DSSAT

🌽💻 The Estimation of #Maize Grain Protein Content and #Yield by Assimilating #LAI and LNA, Retrieved from #Canopy #RemoteSensing Data, into the #DSSAT Model
by Bingxue Zhu, Shengbo Chen, Zhengyuan Xu, Yinghui Ye, Cheng Han, Peng Lu and Kaishan Song
https://buff.ly/3Z5jjN3 via Remote Sensing
#PlantScience 🧪
The Estimation of Maize Grain Protein Content and Yield by Assimilating LAI and LNA, Retrieved from Canopy Remote Sensing Data, into the DSSAT Model

The assimilation of remote sensing data into mechanistic models of crop growth has become an available method for estimating yield. The objective of this study was to explore an effective assimilation approach for estimating maize grain protein content and yield using a canopy remote sensing data and crop growth model. Based on two years of field experiment data, the remote sensing inversion model using assimilation intermediate variables, namely leaf area index (LAI) and leaf nitrogen accumulation (LNA), was constructed with an R2 greater than 0.80 and a low root-mean-square error (RMSE). The different data assimilation approaches showed that when the LAI and LNA variables were used together in the assimilation process (VLAI+LNA), better accuracy was achieved for LNA estimations than the assimilation process using single variables of LAI or LNA (VLAI or VLNA). Similar differences in estimation accuracy were found in the maize yield and grain protein content (GPC) simulations. When the LAI and LNA were both intermediate variables in the assimilation process, the estimation accuracy of the yield and GPC were better than that of the assimilation process with only one variable. In summary, these results indicate that two physiological and biochemical parameters of maize retrieved from hyperspectral data can be combined with the crop growth model through the assimilation method, which provides a feasible method for improving the estimation accuracy of maize LAI, LNA, GPC and yield.

MDPI