TY - JOUR
T1 - Economics of strip cropping with autonomous machines
AU - Al-Amin, A. K.M.Abdullah
AU - Lowenberg‑DeBoer, James
AU - Erickson, Bruce J.
AU - Evans, John T.
AU - Langemeier, Michael R.
AU - Franklin, Kit
AU - Behrendt, Karl
N1 - Publisher Copyright:
© 2024 The Authors. Agronomy Journal published by Wiley Periodicals LLC on behalf of American Society of Agronomy.
PY - 2024/3/1
Y1 - 2024/3/1
N2 - Autonomous machines have the potential to maintain food production and agroecological farming resilience. However, autonomous complex mixed cropping is proving to be an engineering challenge because of differences in plant height and growth pattern. Strip cropping is technically the simplest mixed cropping system, but widespread use is constrained by higher labor requirements in conventional mechanized farms. Researchers have long hypothesized that autonomous machines (i.e., crop robots) might make strip cropping profitable, thereby allowing farmers to gain additional agroecological benefits. To examine this hypothesis, this study modeled ex-ante scenarios for the Corn Belt of central Indiana, using the experience of the Hands Free Hectare-Linear Programming (HFH-LP) optimization model. Results show that per annum return to operator labor, management, and risk-taking (ROLMRT) was $568/ha and $163/ha higher for the autonomous corn (Zea mays L.) and soybean [Glycine max (L.) Merr.] strip crop farm compared to the whole field sole crop and the conventional strip crop farms, respectively, that were operated by human drivers. The conventional strip cropping practice was found challenging as this cropping system required four times more temporary hired labor than autonomous strip cropping and three times more than whole field sole cropping. Even if autonomous machines need 100% human supervision, the ROLMRT was higher compared to whole field sole cropping. Profitable autonomous strip cropping could restore and improve in-field biodiversity and ecosystem services through a sustainable techno-economic and environmental approach that will address the demand for healthier food and promote environmental sustainability.
AB - Autonomous machines have the potential to maintain food production and agroecological farming resilience. However, autonomous complex mixed cropping is proving to be an engineering challenge because of differences in plant height and growth pattern. Strip cropping is technically the simplest mixed cropping system, but widespread use is constrained by higher labor requirements in conventional mechanized farms. Researchers have long hypothesized that autonomous machines (i.e., crop robots) might make strip cropping profitable, thereby allowing farmers to gain additional agroecological benefits. To examine this hypothesis, this study modeled ex-ante scenarios for the Corn Belt of central Indiana, using the experience of the Hands Free Hectare-Linear Programming (HFH-LP) optimization model. Results show that per annum return to operator labor, management, and risk-taking (ROLMRT) was $568/ha and $163/ha higher for the autonomous corn (Zea mays L.) and soybean [Glycine max (L.) Merr.] strip crop farm compared to the whole field sole crop and the conventional strip crop farms, respectively, that were operated by human drivers. The conventional strip cropping practice was found challenging as this cropping system required four times more temporary hired labor than autonomous strip cropping and three times more than whole field sole cropping. Even if autonomous machines need 100% human supervision, the ROLMRT was higher compared to whole field sole cropping. Profitable autonomous strip cropping could restore and improve in-field biodiversity and ecosystem services through a sustainable techno-economic and environmental approach that will address the demand for healthier food and promote environmental sustainability.
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U2 - 10.1002/agj2.21536
DO - 10.1002/agj2.21536
M3 - Article
AN - SCOPUS:85184934310
SN - 0002-1962
VL - 116
SP - 572
EP - 589
JO - Agronomy Journal
JF - Agronomy Journal
IS - 2
ER -