收藏设为首页 广告服务联系我们在线留言

干旱区地理 ›› 2025, Vol. 48 ›› Issue (12): 2087-2098.doi: 10.12118/j.issn.1000-6060.2024.756 cstr: 32274.14.ALG2024756

• 生态与环境 • 上一篇    下一篇

基于XGBoost的干旱区典型绿洲主要作物需水量预测模型研究

王伟杰1,2,3(), 于洋1,2,3(), 孙凌霄1,3, 何婧1,3, 张凌云1,2,3   

  1. 1 中国科学院新疆生态与地理研究所干旱区生态安全与可持续发展重点实验室新疆 乌鲁木齐 830011
    2 中国科学院大学北京 100049
    3 新疆策勒荒漠草地生态系统国家野外科学观测研究站新疆 策勒 848300
  • 收稿日期:2024-12-10 修回日期:2025-03-13 出版日期:2025-12-25 发布日期:2025-12-30
  • 通讯作者: 于洋(1986-),男,研究员,主要从事干旱区生态水文与环境演变. E-mail: yuyang@ms.xjb.ac.cn
  • 作者简介:王伟杰(2000-),女,硕士研究生,主要从事农业干旱方面研究. E-mail: wangweijie2022@163.com
  • 基金资助:
    国家自然科学基金青年基金资助项目(E1120103);中国科学院基础与交叉前沿科研B类先导专项(XDB0720200);新疆维吾尔自治区重点研发计划项目(2022B01032-4)

Prediction model of water requirements for main crops in typical oases in arid areas based on XGBoost

WANG Weijie1,2,3(), YU Yang1,2,3(), SUN Lingxiao1,3, HE Jing1,3, ZHANG Lingyun1,2,3   

  1. 1 Key Laboratory of Ecological Security and Sustainable Development in Arid Zones, Xinjiang Institute of Ecology and Geography, Chinese Academy of Sciences, Urumqi 830011, Xinjiang, China
    2 University of Chinese Academy of Sciences, Beijing 100049, China
    3 National Field Scientific Observatory of Desert Grassland Ecosystems in Cele, Cele 848300, Xinjiang, China
  • Received:2024-12-10 Revised:2025-03-13 Published:2025-12-25 Online:2025-12-30

摘要:

通过探索策勒绿洲主要作物需水量的预测模型,直接建立气象因素与作物生长特性同作物需水量之间的复杂联系,有效克服了应用彭曼公式时所面临的数据获取难题,从而为干旱区域绿洲内作物需水量的估算提供了科学依据。研究结合使用了彭曼公式及作物系数法,以每日作物需水量作为目标变量,并根据归因分析结果选取特定气象参数来构建极限梯度提升树(XGBoost)需水量预测模型,同时确定了最佳的基础学习器类型。结果表明:(1) 基于XGBoost回归算法的分析显示,相对湿度、日照时间和最高温度是影响需水量的关键气象因子,重要性合计占比达到了75.81%。(2) 相较于gblinear-XGBoost模型而言,采用gbtree-XGBoost方法构建的模型表现出更高的准确性,决定系数提升了大约84.35%,而均方根误差则降低了约0.625,表明需水量预测值与实际作物需水量之间存在显著相关性。该预测模型能有效反映作物需水规律,gbtree-XGBoost模型可作为策勒绿洲灌溉指导和水资源调配的有力工具,为干旱区绿洲农业水资源高效管理提供了重要支撑。

关键词: 作物需水量, 彭曼公式, XGBoost回归, 需水量预测模型, 策勒绿洲

Abstract:

Climate change and water scarcity significantly threaten agriculture in arid regions. The Cele Oasis, located at the southern margin of the Taklimakan Desert in Xinjiang, China, is a typical arid-area oasis with a fragile ecology. An accurate prediction of the water requirements for cultivating crops in this area is crucial for the rational allocation of water resources and the development of sustainable agricultural practices. This study is dedicated to designing a prediction model applicable to the water requirements of the major crops in the Cele Oasis, revealing the intricate relationships among meteorological factors, crop growth characteristics, and water requirements, and circumventing the data-acquisition challenges associated with the Penman formula. This research integrated the Penman formula with the crop coefficient method. The daily water requirement was designated as the target variable. Based on the attribution analysis results, relevant meteorological parameters such as relative humidity, sunshine hours, and maximum temperature were selected to construct “XGBoost”, a water requirement prediction model. Moreover, different base learner types of XGBoost, including gbtree, gblinear, and dart, were explored to identify which among them was most suitable for the model.The results of this study were remarkable. XGBoost-based regression analysis revealed that relative humidity, sunshine hours, and maximum temperature were the dominant meteorological factors influencing crop water requirements, with a cumulative importance ratio reaching 75.81%. Among them, relative humidity demonstrated the highest impact, with an average feature importance of 39.84%, followed by sunshine hours (20.25%) and maximum temperature (15.72%). In terms of performance, the gbtree-XGBoost model demonstrated superior accuracy compared to the gblinear-XGBoost model. The R2 value of the former increased by ~84.35% relative to the latter, with the root mean square error decreasing by ~0.625. The gbtree-XGBoost model could capture the complex nonlinear relationships between variables more effectively, and its predictions correlated markedly with the actual crop water requirements. In conclusion, this study successfully established a crop water requirement prediction model for the Cele Oasis. It could effectively capture the complex relationships among meteorological factors, crop growth characteristics, and water requirements. Among them, the gbtree-XGBoost model showed excellent performance and can be a reliable tool for guiding irrigation and allocating water resources in the Cele Oasis. It provides a scientific basis for the rational management of agricultural water resources in arid oases, which is conducive to improving water use efficiency, ensuring better crop yields, and promoting the sustainable development of agriculture in arid regions. This research also provides valuable references for similar studies in other arid areas, contributing to global efforts in designing water-saving agriculture methods and sustainable water resource management.

Key words: crop water requirement, Penman-Monteith equation, XGBoost regression, water requirement prediction model, Cele Oasis