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Optimizing crop management with reinforcement learning and lmitation learning

preprint
posted on 2023-05-23, 15:31 authored by Toa, R, Zhao, P, Wu, J, Martin, NF, Matthew HarrisonMatthew Harrison, Ferreira, C, Kalantari, Z, Hovakimyan, N
Crop management, including nitrogen (N) fertilization and irrigation management, has a significant impact on the crop yield, economic profit, and the environment. Although management guidelines exist, it is challenging to find the optimal management practices given a specific planting environment and a crop. Previous work used reinforcement learning (RL) and crop simulators to solve the problem, but the trained policies either have limited performance or are not deployable in the real world. In this paper, we present an intelligent crop management system which optimizes the N fertilization and irrigation simultaneously via RL, imitation learning (IL), and crop simulations using the Decision Support System for Agrotechnology Transfer (DSSAT). We first use deep RL, in particular, deep Q-network, to train management policies that require all state information from the simulator as observations (denoted as full observation). We then invoke IL to train management policies that only need a limited amount of state information that can be easily obtained or measured in the real world (denoted as partial observation) by mimicking the actions of the previously RL-trained policies under full observation. We conduct experiments on a case study using maize in Florida and compare trained policies with a maize management guideline in simulations. Our trained policies under both full and partial observations achieve better outcomes, resulting in a higher profit or a similar profit with a smaller environmental impact. Moreover, the partial-observation management policies are directly deployable in the real world as they use readily available information.

Funding

Grains Research & Development Corporation

History

ISSN

2331-8422

Department/School

Tasmanian Institute of Agriculture (TIA)

Publisher

Cornell University

Place of publication

online

Date of Event (Start Date)

1996-01-01

Date of Event (End Date)

1996-01-01

Preprint server

ArXiv

Repository Status

  • Restricted

Socio-economic Objectives

Applied computing; Artificial intelligence; Management of water consumption by plant production