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Monthly Rainfall Categorization Based on Optimized Features and Neural Network

机译:基于优化特征和神经网络的每月降雨分类

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Rainfall is a complex process that result from different atmospheric interactions. Rainfall forecasting is highly effective for various industries including the sugarcane industry. In this study, we propose a neural network based approach for classifying monthly rainfall. Rainfall classification is defined as determining the category of rainfall amount based on a certain threshold. Five distinct locations were selected to perform the study: Innisfail, Planecreek, Bingera, Maryborough in Queensland, Australia and Yamba in New South Wales, Australia. Multiple local and global climate indices have been linked to formation of rain. Hence, different local and global climate indices are proposed as possible predictors of rain. A Particle Swarm Optimization (PSO) algorithm was incorporated to select best features for each month in each location. An average accuracy of 87.65% was recorded with the proposed approach over the five selected locations. The developed models were compared against other neural network models where all features were used as input features. An average difference of 25.00%, 23.89%, 24.02%, 20.00%, 20.59% was recorded for Innisfail, Planecreek, Bingera, Maryborough and Yamba respectively. The analysis of statistical results suggests that the artificial neural networks can be used as a promising alternative approach for rainfall categorization over multiple weather zones and over Australia. In addition, selection of input features should be carefully considered when designing rainfall forecasting models.
机译:降雨是一种复杂的过程,来自不同的大气相互作用。降雨预测对于包括甘蔗产业的各种行业非常有效。在这项研究中,我们提出了一种基于神经网络的每月降雨的方法。降雨分类被定义为基于特定阈值确定降雨量的类别。选择了五个不同的地方来执行该研究:昆士兰州,澳大利亚和澳大利亚新南威尔士州昆士兰州,澳大利亚和yamba的Maryborough。多个本地和全球气候指数已与雨层的形成有关。因此,提出了不同的本地和全球气候指标作为雨的可能预测因子。填充了粒子群优化(PSO)算法,以选择每个位置每个月的最佳功能。在五个选定地点的建议方法中记录了87.65%的平均准确性。将开发的模型与其他神经网络模型进行比较,其中所有功能都被用作输入特征。 Innisfail,Plancreek,Bingera,Maryborough和Yamba分别记录了25.00%,23.89%,24.02%,20.5%,20.59%的平均差异为25.00%,23.89%,20.59%。统计结果的分析表明,人工神经网络可以用作多个气象区和澳大利亚降雨分类的有前途的替代方法。此外,在设计降雨预测模型时,应仔细考虑输入功能的选择。

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