Deep reinforcement learning for irrigation scheduling using high-dimensional sensor feedback
Yuji Saikai, Allan Peake, Karine Chenu

TL;DR
This paper introduces a deep reinforcement learning framework for irrigation scheduling that uses high-dimensional sensor data to optimize water application, demonstrated through a wheat crop case study in Australia.
Contribution
It presents a novel, generalizable framework for formulating and solving irrigation optimization problems with deep reinforcement learning, validated with a real-world case study.
Findings
Learned decision rule improved profits over conventional methods in all test years.
Maximum profit increase reached 17% in 2018.
Framework is adaptable to various cropping systems.
Abstract
Deep reinforcement learning has considerable potential to improve irrigation scheduling in many cropping systems by applying adaptive amounts of water based on various measurements over time. The goal is to discover an intelligent decision rule that processes information available to growers and prescribes sensible irrigation amounts for the time steps considered. Due to the technical novelty, however, the research on the technique remains sparse and impractical. To accelerate the progress, the paper proposes a principled framework and actionable procedure that allow researchers to formulate their own optimisation problems and implement solution algorithms based on deep reinforcement learning. The effectiveness of the framework was demonstrated using a case study of irrigated wheat grown in a productive region of Australia where profits were maximised. Specifically, the decision rule…
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Taxonomy
TopicsIrrigation Practices and Water Management · Greenhouse Technology and Climate Control · Smart Agriculture and AI
