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Simulated Annealing Based Hybrid Forecast for Improving Daily Municipal Solid Waste Generation Prediction

机译:基于模拟退火的混合预测技术可改善城市生活垃圾的每日预测

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摘要

A simulated annealing (SA) based variable weighted forecast model is proposed to combine and weigh local chaotic model, artificial neural network (ANN), and partial least square support vector machine (PLS-SVM) to build a more accurate forecast model. The hybrid model was built and multistep ahead prediction ability was tested based on daily MSW generation data from Seattle, Washington, the United States. The hybrid forecast model was proved to produce more accurate and reliable results and to degrade less in longer predictions than three individual models. The average one-week step ahead prediction has been raised from 11.21% (chaotic model), 12.93% (ANN), and 12.94% (PLS-SVM) to 9.38%. Five-week average has been raised from 13.02% (chaotic model), 15.69% (ANN), and 15.92% (PLS-SVM) to 11.27%.
机译:提出了一种基于模拟退火(SA)的可变加权预测模型,对局部混沌模型,人工神经网络(ANN)和偏最小二乘支持向量机(PLS-SVM)进行组合和加权,以建立更准确的预测模型。基于来自美国华盛顿州西雅图的每日MSW生成数据,构建了混合模型并测试了多步超前预测能力。事实证明,与三个单独的模型相比,混合预测模型可以产生更准确和可靠的结果,并且在较长的预测中降级程度较小。提前一周的平均预测值已从11.21%(混沌模型),12.93%(ANN)和12.94%(PLS-SVM)提高到9.38%。五周的平均值从13.02%(混沌模型),15.69%(人工神经网络)和15.92%(PLS-SVM)提高到11.27%。

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