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首页> 外文期刊>Water Resources Management >A Comparative Assessment of Metaheuristic Optimized Extreme Learning Machine and Deep Neural Network in Multi-Step-Ahead Long-term Rainfall Prediction for All-Indian Regions
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A Comparative Assessment of Metaheuristic Optimized Extreme Learning Machine and Deep Neural Network in Multi-Step-Ahead Long-term Rainfall Prediction for All-Indian Regions

机译:全印度地区多阶长期降雨预测中的成群质优化极端学习机和深神经网络的比较评估

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摘要

Prediction of long-term rainfall patterns is a highly challenging task in the hydrological field due to random nature of rainfall events. The contribution of monthly rainfall is important in agriculture and hydrological tasks. This paper proposes two data-driven models, namely biogeography-based extreme learning machine (BBO-ELM) and deep neural network (DNN), to predict one, two, and three month-ahead rainfall over India (All-India and six other homogeneous regions). Three other data-driven models called ELM, genetic algorithm (GA)-based ELM, and particle swarm optimization (PSO)-based ELM are used to compare the performance of the proposed models. Firstly, partial autocorrelation function (PACF) is applied in all datasets to select the optimal number of lags for input to the models. Secondly, the wavelet-based data pre-processing technique is applied in selected optimal lags and feed to the proposed models for achieving higher prediction performance. To investigate the performance of proposed models, a non-parametric statistical test, Anderson-Darling' Normality test, is performed in all India dataset. The wavelet-based proposed hybrid models show better prediction capability compared to optimal lag-based proposed models. This study shows the successful application of time-series data using proposed techniques (optimal lags-based BBO-ELM and wavelet-based DNN) in the hydrological field which may be used for risk mitigation from dreadful natural events.
机译:由于降雨事件的随机性,长期降雨模式的预测是水文领域的一个高度挑战性的任务。每月降雨的贡献在农业和水文任务中是重要的。本文提出了两个数据驱动的模型,即基于生物地基的极限基础机(Bbo-Elm)和深神经网络(DNN),以预测印度(全印度和六个其他人)的一个,两个和三个月的降雨同质区域)。基于ELM,基于遗传算法(GA)的ELM和基于粒子群优化(PSO)的其他三种其他数据驱动模型用于比较所提出的模型的性能。首先,将部分自相关函数(PACF)应用于所有数据集中,以选择用于输入模型的最佳滞后滞后数。其次,基于小波的数据预处理技术应用于所选择的最佳滞后,并馈送到所提出的模型,以实现更高的预测性能。为了调查拟议模型的表现,在所有印度数据集中执行非参数统计测试,Anderson-Darling'正常测试。与基于最佳滞后的提出模型相比,基于小波的提出的混合模型显示出更好的预测能力。该研究表明,使用所提出的技术(基于基于滞后的Bbo-Elm和基于小波的DNN)在水文领域中的成功应用,该水文领域可用于可怕的自然事件的风险缓解。

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