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Predictive ability of machine learning methods for massive crop yield prediction.

机译:机器学习方法对大量作物产量预测的预测能力。

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An important issue for agricultural planning purposes is the accurate yield estimation for the numerous crops involved in the planning. Machine learning (ML) is an essential approach for achieving practical and effective solutions for this problem. Many comparisons of ML methods for yield prediction have been made, seeking for the most accurate technique. Generally, the number of evaluated crops and techniques is too low and does not provide enough information for agricultural planning purposes. This paper compares the predictive accuracy of ML and linear regression techniques for crop yield prediction in ten crop datasets. Multiple linear regression, M5-Prime regression trees, perceptron multilayer neural networks, support vector regression and k-nearest neighbor methods were ranked. Four accuracy metrics were used to validate the models: the root mean square error (RMS), root relative square error (RRSE), normalized mean absolute error (MAE), and correlation factor (R). Real data of an irrigation zone of Mexico were used for building the models. Models were tested with samples of two consecutive years. The results show that M5-Prime and k-nearest neighbor techniques obtain the lowest average RMSE errors (5.14 and 4.91), the lowest RRSE errors (79.46% and 79.78%), the lowest average MAE errors (18.12% and 19.42%), and the highest average correlation factors (0.41 and 0.42). Since M5-Prime achieves the largest number of crop yield models with the lowest errors, it is a very suitable tool for massive crop yield prediction in agricultural planning.
机译:农业计划目的一个重要问题是计划中涉及的多种作物的准确产量估算。机器学习(ML)是实现此问题的实用有效解决方案的基本方法。为了获得最准确的技术,已经对机器学习方法的产量预测进行了许多比较。通常,被评估的作物和技术数量太少,不能为农业计划目的提供足够的信息。本文比较了ML和线性回归技术在十个作物数据集中预测作物产量的预测准确性。对多元线性回归,M5-Prime回归树,感知器多层神经网络,支持向量回归和k最近邻法进行了排名。四个准确性度量用于验证模型:均方根误差(RMS),均方根误差(RRSE),归一化均值绝对误差(MAE)和相关因子(R)。墨西哥灌溉区的真实数据用于构建模型。使用连续两年的样本对模型进行了测试。结果表明,M5-Prime和k最近邻技术获得了最低的平均RMSE误差(5.14和4.91),最低的RRSE误差(79.46%和79.78%),最低的平均MAE误差(18.12%和19.42%),平均相关系数最高(0.41和0.42)。由于M5-Prime实现了最多的农作物产量模型且具有最小的误差,因此它是用于农业计划中大规模农作物产量预测的非常合适的工具。

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