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Deep Reinforcement Learning for irrigation optimization: Advantages, opportunities, and challenges

Author

Listed:
  • Liu, Jiamei
  • Chang, Fangle
  • Yang, Jiahong
  • Jie, Xinyi
  • Lu, Caiyun
  • Wang, Chao
  • Xie, Lei
  • Ma, Longhua
  • Su, Hongye

Abstract

Irrigation decision-making using Reinforcement Learning (RL) performs well in changing environment, but easily falls into sub-optimal solutions with high-dimensional data. Deep Reinforcement Learning (DRL) has fused RL with Deep Learning (DL) and excels at learning adaptive and long-term irrigation strategies directly from high-dimensional environment data. This paper systematically reviews the applications of DRL in irrigation optimization, covering both pre-trained environments based on crop growth simulators and dynamic environments driven by real-time sensors. We discussed the strengths of classic DRL algorithms, including their ability to handle dynamic and non-linear environments, and reviewed their performance in irrigation multi-objective optimization and decision-making. In addition, we identified constraints in applying DRL in irrigation decision making, which include data scarcity, poor model interpretability, and difficulties in field deployment. It shows DRL can provide a powerful framework for adaptive irrigation, but is constrained by the gap between simulation and real-world complexity. To address these limitations, we discussed approaches in future work, such as developing multi-objective DRL algorithms. These approaches will improve DRL modeling outcomes and provide a technological foundation for smart agriculture and sustainable resource management.

Suggested Citation

  • Liu, Jiamei & Chang, Fangle & Yang, Jiahong & Jie, Xinyi & Lu, Caiyun & Wang, Chao & Xie, Lei & Ma, Longhua & Su, Hongye, 2025. "Deep Reinforcement Learning for irrigation optimization: Advantages, opportunities, and challenges," Agricultural Water Management, Elsevier, vol. 322(C).
  • Handle: RePEc:eee:agiwat:v:322:y:2025:i:c:s0378377425007449
    DOI: 10.1016/j.agwat.2025.110030
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