Enhancing cotton irrigation with distributional actor–critic reinforcement learning

Accurate predictions of irrigation’s impact on crop yield are crucial for effective decision-making. However, current research predominantly focuses on the relationship between irrigation events and soil moisture, often neglecting the physiological state of the crops themselves. This study introduce...

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Main Authors: Yi Chen, Meiwei Lin, Zhuo Yu, Weihong Sun, Weiguo Fu, Liang He
Format: Article
Language:English
Published: Elsevier 2025-02-01
Series:Agricultural Water Management
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Online Access:http://www.sciencedirect.com/science/article/pii/S0378377424005304
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author Yi Chen
Meiwei Lin
Zhuo Yu
Weihong Sun
Weiguo Fu
Liang He
author_facet Yi Chen
Meiwei Lin
Zhuo Yu
Weihong Sun
Weiguo Fu
Liang He
author_sort Yi Chen
collection DOAJ
description Accurate predictions of irrigation’s impact on crop yield are crucial for effective decision-making. However, current research predominantly focuses on the relationship between irrigation events and soil moisture, often neglecting the physiological state of the crops themselves. This study introduces a novel intelligent irrigation approach based on distributional reinforcement learning, ensuring that the algorithm simultaneously considers weather, soil, and crop conditions to make optimal irrigation decisions for long-term benefits. To achieve this, we collected climate data from 1980 to 2024 and conducted a two-year cotton planting experiment in 2023 and 2024. We used soil and plant state indicators from 5 experimental groups with varying irrigation treatments to calibrate and validate the DSSAT model. Subsequently, we innovatively integrated a distributional reinforcement learning method—an effective machine learning technique for continuous control problems. Our algorithm focuses on 17 indicators, including crop leaf area, stem leaf count, and soil evapotranspiration, among others. Through a well-designed network structure and cumulative rewards, our approach effectively captures the relationships between irrigation events and these states. Additionally, we validated the robustness and generalizability of the model using three years of extreme weather data and two consecutive years of cross-site observations. This method surpasses previous irrigation strategies managed by standard reinforcement learning techniques (e.g., DQN). Empirical results indicate that our approach significantly outperforms traditional agronomic decision-making, enhancing cotton yield by 13.6% and improving water use efficiency per kilogram of crop by 6.7%. In 2024, our method was validated in actual field experiments, achieving the highest yield among all approaches, with a 12.9% increase compared to traditional practices. Our research provides a robust framework for intelligent cotton irrigation in the region and offers promising new directions for implementing smart agricultural decision systems across diverse areas.
format Article
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institution Kabale University
issn 1873-2283
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publishDate 2025-02-01
publisher Elsevier
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spelling doaj-art-65ebddfc0b0043269922c0610a417a082025-01-07T04:16:41ZengElsevierAgricultural Water Management1873-22832025-02-01307109194Enhancing cotton irrigation with distributional actor–critic reinforcement learningYi Chen0Meiwei Lin1Zhuo Yu2Weihong Sun3Weiguo Fu4Liang He5School of Computer Science and Technology, Xinjiang University, Urumqi, 830017, ChinaSchool of Agricultural Engineering, Jiangsu University, Zhenjiang, 212013, ChinaSchool of Agricultural Engineering, Jiangsu University, Zhenjiang, 212013, ChinaSchool of Agricultural Engineering, Jiangsu University, Zhenjiang, 212013, ChinaSchool of Agricultural Engineering, Jiangsu University, Zhenjiang, 212013, ChinaSchool of Computer Science and Technology, Xinjiang University, Urumqi, 830017, China; Department of Electronic Engineering, and Beijing National Research Center for Information Science and Technology, Tsinghua University, Beijing, 100084, China; Corresponding author at: Department of Electronic Engineering, and Beijing National Research Center for Information Science and Technology, Tsinghua University, Beijing, 100084, China.Accurate predictions of irrigation’s impact on crop yield are crucial for effective decision-making. However, current research predominantly focuses on the relationship between irrigation events and soil moisture, often neglecting the physiological state of the crops themselves. This study introduces a novel intelligent irrigation approach based on distributional reinforcement learning, ensuring that the algorithm simultaneously considers weather, soil, and crop conditions to make optimal irrigation decisions for long-term benefits. To achieve this, we collected climate data from 1980 to 2024 and conducted a two-year cotton planting experiment in 2023 and 2024. We used soil and plant state indicators from 5 experimental groups with varying irrigation treatments to calibrate and validate the DSSAT model. Subsequently, we innovatively integrated a distributional reinforcement learning method—an effective machine learning technique for continuous control problems. Our algorithm focuses on 17 indicators, including crop leaf area, stem leaf count, and soil evapotranspiration, among others. Through a well-designed network structure and cumulative rewards, our approach effectively captures the relationships between irrigation events and these states. Additionally, we validated the robustness and generalizability of the model using three years of extreme weather data and two consecutive years of cross-site observations. This method surpasses previous irrigation strategies managed by standard reinforcement learning techniques (e.g., DQN). Empirical results indicate that our approach significantly outperforms traditional agronomic decision-making, enhancing cotton yield by 13.6% and improving water use efficiency per kilogram of crop by 6.7%. In 2024, our method was validated in actual field experiments, achieving the highest yield among all approaches, with a 12.9% increase compared to traditional practices. Our research provides a robust framework for intelligent cotton irrigation in the region and offers promising new directions for implementing smart agricultural decision systems across diverse areas.http://www.sciencedirect.com/science/article/pii/S0378377424005304Distributional reinforcement learningIrrigation decisionDSSAT modelAgricultural managementCotton irrigation
spellingShingle Yi Chen
Meiwei Lin
Zhuo Yu
Weihong Sun
Weiguo Fu
Liang He
Enhancing cotton irrigation with distributional actor–critic reinforcement learning
Agricultural Water Management
Distributional reinforcement learning
Irrigation decision
DSSAT model
Agricultural management
Cotton irrigation
title Enhancing cotton irrigation with distributional actor–critic reinforcement learning
title_full Enhancing cotton irrigation with distributional actor–critic reinforcement learning
title_fullStr Enhancing cotton irrigation with distributional actor–critic reinforcement learning
title_full_unstemmed Enhancing cotton irrigation with distributional actor–critic reinforcement learning
title_short Enhancing cotton irrigation with distributional actor–critic reinforcement learning
title_sort enhancing cotton irrigation with distributional actor critic reinforcement learning
topic Distributional reinforcement learning
Irrigation decision
DSSAT model
Agricultural management
Cotton irrigation
url http://www.sciencedirect.com/science/article/pii/S0378377424005304
work_keys_str_mv AT yichen enhancingcottonirrigationwithdistributionalactorcriticreinforcementlearning
AT meiweilin enhancingcottonirrigationwithdistributionalactorcriticreinforcementlearning
AT zhuoyu enhancingcottonirrigationwithdistributionalactorcriticreinforcementlearning
AT weihongsun enhancingcottonirrigationwithdistributionalactorcriticreinforcementlearning
AT weiguofu enhancingcottonirrigationwithdistributionalactorcriticreinforcementlearning
AT lianghe enhancingcottonirrigationwithdistributionalactorcriticreinforcementlearning