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Rainfall Predictive Approach for La Trinidad, Benguet using Machine Learning Classification

机译:基于机器学习分类的本格特省特立尼达(La Trinidad)降雨预测方法

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Use of rain as a source of irrigation water presents an effective use of natural water resources. Predicting the occurrence of rainfall plays a major role especially in an agricultural area with untimely rainfall like La Trinidad, Benguet. For a more efficient irrigation scheduling, a reliable method for rainfall prediction is needed. This entails the adaptation and utilization of suitable prediction approaches and techniques. Various analytical approaches and methods are made available to develop new techniques to predict future possibilities. This study aimed to propose an approach in predicting the occurrence and non-occurrence of rainfall in La Trinidad, Benguet based on various historical weather parameters. Five machine learning classification algorithms were used to build the predictive models for the weather dataset namely: Fine Decision Tree, Linear Discriminant, Course K-Nearest Neighbors, Gaussian Support Vector Machines, and Neural Network. A poor choice of model cannot further improve the predictions. To choose between models, focus must be put on the appropriate evaluation metrics. Among the 5 models, results suggest that Course K-Nearest Neighbor gives the highest performance in all the evaluation metrics. Course KNN, with a good accuracy of 81.1% proves to be the best model to use in predicting rainfall in La Trinidad, Benguet. Course KNN model evaluation reveals that Machine Learning Classification can be adopted to predict the occurrence and non-occurrence of rainfall.
机译:利用雨水作为灌溉水可有效利用自然水资源。预测降雨的发生特别重要,尤其是在降雨不及时的农业地区,例如本格特省的拉特立尼达(La Trinidad)。为了更有效地安排灌溉,需要一种可靠的降雨预测方法。这需要适应和利用合适的预测方法和技术。提供了各种分析方法和方法来开发新技术以预测未来的可能性。这项研究旨在根据各种历史天气参数,提出一种预测本格拉特立尼达(La Trinidad)降雨的发生和不发生的方法。五种机器学习分类算法用于建立天气数据集的预测模型,分别是:精细决策树,线性判别,K近邻课程,高斯支持向量机和神经网络。较差的模型选择无法进一步改善预测。要在模型之间进行选择,必须将重点放在适当的评估指标上。在这5个模型中,结果表明“课程K最近邻”在所有评估指标中给出了最高的性能。路线KNN的准确度高达81.1%,被证明是用于预测本格拉特立尼达(La Trinidad,Benguet)降雨量的最佳模型。课程KNN模型评估表明,可以采用机器学习分类来预测降雨的发生和不发生。

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