利用机器学习进行小麦产量预测的遥感和地形气候数据集

IF 6.3 Q1 AGRICULTURAL ENGINEERING
Alireza Araghi , Andre Daccache
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引用次数: 0

摘要

确保不断增长的全球人口的粮食安全已成为当今人类面临的最重大挑战之一。气候变化和环境退化的影响进一步加剧了这一挑战,其中许多与人类活动有关。产量预测对于应对地方和区域层面的粮食安全挑战至关重要。通过预测作物产量,我们可以更好地管理粮食分配,减轻短缺风险,并支持可持续农业实践。使用生物物理作物模型来预测产量是费力的,并且需要各种各样的(通常不可用的)土壤气候、作物特异性和管理参数。本研究利用卫星图像和网格化气候数据集(TerraClima)以及机器学习(ML)来预测马什哈德县(伊朗东北部)的小麦产量。该分析跨越了从2001年到2022年的22年。开发并评估了不同的机器学习模型,包括多元线性回归(MLR)、人工神经网络(ANN)、随机森林(RF)和所有选定模型输出的平均集合(ENS)。结果表明,在收获前2个月,使用MLR和ENS模型可以在合理的精度下预测灌溉和旱作小麦产量。灌溉小麦和旱作小麦的NSE分别为0.74和0.62,相关系数(r)分别为0.93和0.80。输入数据集的全球覆盖及其易于访问使该方法适用于各种作物类型和其他地区,从而解除了传统产量预测模型缺乏现场数据可用性的限制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Remote sensing and TerraClimate datasets for wheat yield prediction using machine learning
Ensuring food security for the continuously growing global population has become one of the most significant challenges facing humanity today. This challenge is further exacerbated by the impacts of climate change and environmental degradation, much of which is associated with human activities. Yield prediction is vital for addressing food security challenges at local and regional levels. By anticipating crop production, we can better manage food distribution, mitigate the risks of shortages, and support sustainable agricultural practices. Using biophysical crop models to forecast yields is laborious and necessitates various, often unavailable, pedo-climatic, crop-specific, and management parameters. This study leverages satellite imagery and a gridded climate dataset (TerraClima) with machine learning (ML) to predict wheat yields in Mashhad County (Northeast Iran). The analysis spans over 22 years, from 2001 to 2022. Different ML models were developed and evaluated, including multiple linear regression (MLR), artificial neural network (ANN), random forest (RF), and a mean ensemble (ENS) of the outputs of all selected models. Findings showed that with reasonable accuracy, irrigated and rainfed wheat yields could be predicted using the MLR and ENS models up to 2 months before harvest. The Nash-Sutcliffe efficiency (NSE) values are 0.74 and 0.62, while correlation coefficients (r) are 0.93 and 0.80 for irrigated and rainfed wheat, respectively. The global coverage of the input dataset and its easy access make this approach applicable to various crop types and other regions, thus unlocking the limitation related to the lack of on-site data availability for traditional yield prediction models.
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