Development of Crop-Weather Models Using Gaussian Process Regression for the Prediction of Paddy Yield in Sri Lanka

P. Ekanayake, L. Wickramasinghe, J. Jayasinghe
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Abstract

This research introduces machine learning models using the Gaussian Process Regression (GPR) depicting the association between paddy yield and weather in Sri Lanka. All major regions in the island with most contribution to the total paddy production were considered in this research. The climatic factors of rainfall, relative humidity, minimum temperature, maximum temperature, average wind speed, evaporation, and sunshine hours were considered as input (independent) variables, while the paddy yield was the output (dependent) variable. The collinearity within each pair of independent and dependent variables was determined using Spearman’s and Pearson’s correlation coefficients. Data sets corresponding to the two main annual paddy cultivation seasons since 2009 were trained in MATLAB to develop crop-weather models. The most appropriate Kernel function was chosen from among four types of Kernels viz. Rational Quadratic, Exponential, Squared Exponential, and Matern 5/2 based on their degree of coherence in modeling. This approach exploits the full potential of GPR in developing highly accurate crop-weather models. The performance of the crop-weather models was measured by the Correlation Coefficient, Mean Absolute Percentage Error, Mean Squared Error, Root Mean Squared Error Ratio, Nash Number and the BIAS. All the GPR-based models proposed in this paper are highly accurate in terms of the aforementioned evaluation metrics. Accordingly, when the climatic data are known or projected, the paddy yield and thereby the harvest of Sri Lanka can be predicted precisely by using the proposed crop-weather models.
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用高斯过程回归预测斯里兰卡水稻产量的作物-天气模型的建立
本研究引入了使用高斯过程回归(GPR)的机器学习模型,描述了斯里兰卡水稻产量与天气之间的关系。本研究考虑了岛上所有对水稻总产量贡献最大的主要地区。以降雨量、相对湿度、最低气温、最高气温、平均风速、蒸发量、日照时数等气候因子为输入(自变量),以水稻产量为输出(因变量)。使用Spearman和Pearson相关系数确定每对自变量和因变量的共线性。在MATLAB中训练2009年以来两个主要水稻种植季节对应的数据集,开发作物-天气模型。根据建模的一致性,从有理二次型、指数型、平方指数型和Matern 5/2型四种核函数中选择最合适的核函数。这种方法充分利用了探地雷达在开发高精度作物天气模型方面的潜力。通过相关系数、平均绝对百分比误差、均方误差、均方根误差比、纳什数和BIAS来衡量作物-天气模型的性能。本文提出的基于gpr的模型在上述评价指标方面都具有较高的准确性。因此,当气候数据已知或预测时,可以使用所提出的作物天气模型精确地预测斯里兰卡的水稻产量和收成。
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来源期刊
International Journal of Intelligent Systems and Applications in Engineering
International Journal of Intelligent Systems and Applications in Engineering Computer Science-Computer Graphics and Computer-Aided Design
CiteScore
1.30
自引率
0.00%
发文量
18
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