“All of this data is fed into RHEO, which then predicts the yield per unit area for each crop on a county-level basis,” Kumar said. “For example, it would forecast how many bushels of corn, soy, sorghum or cotton you could grow per acre in a given county. It would also forecast what your irrigation costs would be for each of those crops and, taking those things into account, predict which crop and irrigation strategy would be most profitable and environmentally sustainable.”
In their paper, the researchers demonstrated the utility of the model by applying it to 31 years’ worth of historical data from 21 counties in southwestern Georgia.
“We found that RHEO was able to predict variability in each of our four target crops, as well as identify irrigation strategies that would reduce related costs,” Kumar said. “Ultimately, this proof-of-concept work demonstrates that RHEO could be used to reduce energy consumption associated with pumping groundwater, improve water efficiency and boost crop yield.”
The researchers noted that the RHEO model is currently calibrated for the 21 counties that were used for the proof-of-concept demonstration. Applying the tool to other parts of the Southeast would require them to use data relevant to each region.
“However, we are open to working with water managers and agriculture industry groups to make RHEO available to stakeholders across the Southeast,” Kumar said. “We think the work is important, and would love to see people put this tool to use.
“Climate change increases the unpredictability associated with agriculture, but we’re optimistic that this tool will help growers and water resource managers deal with that increased uncertainty.”
Source : ncsu.edu