University of Tasmania
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Optimizing crop management with reinforcement learning and imitation learning

conference contribution
posted on 2023-05-24, 21:58 authored by Toa, R, Zhao, P, Martin, NF, Harrison, MT, Kalantari, Z, Hovakimyan, N
To increase crop yield while minimizing environmental impact, we present an intelligent crop management system that optimizes nitrogen fertilization and irrigation simultaneously via reinforcement learning (RL), imitation learning (IL), and crop simulations using DSSAT. We first use deep RL to train management policies that require a large number of state variables from the simulator as observations (denoted as full observation). We then invoke IL to train management policies that only need a limited number of variables that are measurable in the real world (denoted as partial observation) by mimicking the actions of the RL-trained policies under full observation. Simulation experiments using maize in Florida demonstrate that our trained policies under both full and partial observations achieve better outcomes than a baseline policy. Most importantly, the IL-trained management policies are directly deployable in the real world as they use readily available inform

Funding

Department of Agriculture Water and the Environment

History

Publication title

Proceedings of the 22nd International Conference on Autonomous Agents and Multiagent Systems

Publisher

International Foundation for Autonomous Agents and Multiagent Systems

Event title

22nd International Conference on Autonomous Agents and Multiagent Systems

Event Venue

London, United Kingdom

Repository Status

  • Restricted

Socio-economic Objectives

Applied computing; Artificial intelligence; Computer systems