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Machine Learning ?Modelling of the Relationship between Weather and Paddy Yield in Sri Lanka

机译:机器学习?斯里兰卡天气与水稻产量的建模

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This paper presents the development of crop-weather models for the paddy yield in Sri Lanka based on nine weather indices, namely, rainfall, relative humidity (minimum and maximum), temperature (minimum and maximum), wind speed (morning and evening), evaporation, and sunshine hours. The statistics of seven geographical regions, which contribute to about two-thirds of the country’s total paddy production, were used for this study. The significance of the weather indices on the paddy yield was explored by employing Random Forest (RF) and the variable importance of each of them was determined. Pearson’s correlation and Spearman’s correlation were used to identify the behavior of correlation in a positive or negative direction. Further, the pairwise correlation among the weather indices was examined. The results indicate that the minimum relative humidity and the maximum temperature during the paddy cultivation period are the most influential weather indices. Moreover, RF was used to develop a paddy yield prediction model and four more techniques, namely, Power Regression (PR), Multiple Linear Regression (MLR) with stepwise selection, forward (step-up) selection, and backward (step-down) elimination, were used to benchmark the performance of the machine learning technique. Their performances were compared in terms of the Root Mean Squared Error (RMSE), Correlation Coefficient ( R ), Mean Absolute Error (MAE), and the Mean Absolute Percentage Error (MAPE). As per the results, RF is a reliable and accurate model for the prediction of paddy yield in Sri Lanka, demonstrating a very high R of 0.99 and the least MAPE of 1.4%.
机译:本文基于九个天气索引,即降雨,相对湿度(最小和最大值),风速(早晚),风速(早上和晚上),提出了斯里兰卡水稻产量的作物天气模型的发展蒸发和阳光小时。七个地理区域的统计数据为该国总稻田生产的大约三分之二贡献,用于本研究。通过使用随机森林(RF)来探讨天气指数对水稻产量的重要性,并确定了每个人的可变重要性。 Pearson的相关性和Spearman的相关性用于识别正面或负方向上的相关性。此外,检查了天气索引之间的成对相关性。结果表明,稻草栽培期间的最小相对湿度和最高温度是最有影响力的天气指标。此外,RF用于开发稻草产量预测模型和四种更多技术,即电力回归(PR),具有逐步选择,前进(升压)选择,向后(降压)的多个线性回归(MLR)消除,用于基准机器学习技术的性能。在根均方误差(RMSE),相关系数(R),平均绝对误差(MAE)和平均绝对百分比误差(MAPE)方面进行了比较它们的表演。根据结果​​,RF是斯里兰卡稻草产量预测的可靠和准确的模型,展示了0.99的非常高的r,最小的mape为1.4%。

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