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K-State, John Deere remote sensing study could improve grain protein

The project uses remote sensor and crop data to build a future in-season decision tool for farmers.

February 23, 2022

3 Min Read
Woman with computer looking at a John Deere app
TECH TO BOOST PROTEIN: Kansas State University researchers have teamed with John Deere to test the accuracy of remote sensors on and off combines. The ultimate goal is to create an in-season decision-making tool for farmers to help them adjust crop management to boost the protein content of their crops, and thus capture more value.Courtesy of John Deere

Ignacio Ciampitti, a Kansas State University Research and Extension agronomist, said the university is working with partners at John Deere to analyze information from remote sensors on and off combines that will ultimately help farmers improve grain protein in crops. It’s a project that could “fundamentally change” how farmers manage and market their crops.

“Our customers tell us that maximizing grain yield and quality is very important,” says Yancy Wright, the business agronomy test lead with John Deere. “End users — including millers, livestock feeding operations and other processors — need high-quality grain crops, and market premiums are beginning to reflect this demand.

“We wanted to validate our current technology development, and discover new approaches to consider, as we develop solutions for helping customers maximize their yield and quality — especially grain protein.”

Model accuracy

In a paper published in late 2021 in the journal Remote Sensing, the researchers outline their analysis of 84 studies on the accuracy of models that predict grain content in a field crop based on current technology, such as satellite imagery.

Ciampitti says the team was able to compare areas of farm fields before harvest using hand-held sensors, drones or planes; then, after harvest, using sensors attached to the combine.

With that information, they compared areas of the field rated as low-quality or high-quality for grain protein concentration, and determined where there was variation in the quality of crops after harvest.

“This is an emerging area of research,” Ciampitti says. “Field crop quality differentiation is becoming important to understand, and can increase the competitiveness of U.S. crops entering both local and international supply chains and markets.”

Sensor accuracy

Ciampitti says the analysis showed that on-combine sensors are more accurate than remote sensors in predicting grain protein concentration, though off-combine sensors performed better for in-season management and segregated harvest planning, and cost less to implement.

“However,” he adds, “on-combine sensors may quickly become the gold standard for predicting in-season grain protein concentration.”

Market potential

According to the researcher’s recent journal article, a recent survey of 186 soybean farmers from multiple states indicated that more than 55% of them would invest in technology to assess grain protein concentration if they could earn a 50-cent premium per bushel. Because of that, the researchers say, “farmer interest is expected to increase as both the direct and indirect benefits of [grain protein concentration] become more evident.”

“As we introduce on-combine grain protein concentration data collection technologies, we will look to this work to understand how we might carry out some of the proposed uses for this new data layer with internal solutions and via partnerships, which will help us bring maximum value to customers who adopt these technologies,” Wright says.

“This work,” he adds, “will direct technology development that will fundamentally change the way growers manage their harvest and grain marketing, as well as how they manage their crop inputs.”

Decision tool coming

Ciampitti says the university is moving forward with developing a remote sensing “decision tool” to differentiate spatial variation in field crop quality before harvest that will help farmers make decisions prior to harvest and marketing their crop.

“In addition, we are working with crop commodity boards to start collecting field data in order to create one of the largest farmer-centric databases on field crop spatial variation related to the quality of U.S. crops,” Ciampitti says. “This is happening in collaboration with many other states and in close partnership with farmers across the country.”

K-State’s team included Ciampitti as principal investigator, agricultural engineer Ajay Sharda (co-principal investigator), Leonardo Bastos (now at the University of Georgia), and André Fróes De Borja Reis (now at Louisiana State University).

The researchers’ full study is avilable to view online.

Source: The Kansas State Research and Extension is solely responsible for the information provided and is wholly owned by the source. Informa Business Media and all its subsidiaries are not responsible for any of the content contained in this information asset.

                                                                                                                                       

 

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