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基于机器学习集成、神经网络、混合和稀疏回归方法的天气预测雨养棉花产量。

Machine learning ensembles, neural network, hybrid and sparse regression approaches for weather based rainfed cotton yield forecast.

机构信息

Centre for Climate Resilient Agriculture, Keladi Shivappa Nayaka University of Agricultural and Horticultural Sciences, Shivamogga, Karnataka, 577204, India.

ICAR-Central Coastal Agricultural Research Institute, Old Goa, Goa, 403402, India.

出版信息

Int J Biometeorol. 2024 Jun;68(6):1179-1197. doi: 10.1007/s00484-024-02661-1. Epub 2024 Apr 27.

Abstract

Cotton is a major economic crop predominantly cultivated under rainfed situations. The accurate prediction of cotton yield invariably helps farmers, industries, and policy makers. The final cotton yield is mostly determined by the weather patterns that prevail during the crop growing phase. Crop yield prediction with greater accuracy is possible due to the development of innovative technologies which analyses the bigdata with its high-performance computing abilities. Machine learning technologies can make yield prediction reasonable and faster and with greater flexibility than process based complex crop simulation models. The present study demonstrates the usability of ML algorithms for yield forecasting and facilitates the comparison of different models. The cotton yield was simulated by employing the weekly weather indices as inputs and the model performance was assessed by nRMSE, MAPE and EF values. Results show that stacked generalised ensemble model and artificial neural networks predicted the cotton yield with lower nRMSE, MAPE and higher efficiency compared to other models. Variable importance studies in LASSO and ENET model found minimum temperature and relative humidity as the main determinates of cotton yield in all districts. The models were ranked based these performance metrics in the order of Stacked generalised ensemble > ANN > PCA ANN > SMLR ANN > LASSO> ENET > SVM > PCA SMLR > SMLR SVM > SMLR. This study shows that stacked generalised ensembling and ANN method can be used for reliable yield forecasting at district or county level and helps stakeholders in timely decision-making.

摘要

棉花是一种主要的经济作物,主要在旱作条件下种植。棉花产量的准确预测通常有助于农民、工业界和决策者。最终的棉花产量主要取决于作物生长期间盛行的天气模式。由于开发了创新技术,利用其高性能计算能力分析大数据,因此可以更准确地进行作物产量预测。与基于过程的复杂作物模拟模型相比,机器学习技术可以更合理、更快且更灵活地进行产量预测。本研究展示了 ML 算法在产量预测中的可用性,并促进了不同模型的比较。每周的天气指数被用作输入来模拟棉花产量,通过 nRMSE、MAPE 和 EF 值来评估模型性能。结果表明,与其他模型相比,堆叠广义集成模型和人工神经网络在预测棉花产量时具有更低的 nRMSE、MAPE 和更高的效率。LASSO 和 ENET 模型中的变量重要性研究发现,在所有地区,最低温度和相对湿度是棉花产量的主要决定因素。根据这些性能指标,模型的排名顺序为:堆叠广义集成>人工神经网络>主成分分析人工神经网络>最小二乘回归人工神经网络>LASSO>支持向量机>主成分分析最小二乘回归>最小二乘回归支持向量机>最小二乘回归。本研究表明,堆叠广义集成和人工神经网络方法可用于在县或县级进行可靠的产量预测,并有助于利益相关者做出及时决策。

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