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A comparative analysis between the multilayer perceptron 'neural network'and multiple regression analysis for predicting construction plant maintenance costs

机译:多层感知器“神经网络”与多元回归分析的比较分析,以预测建筑维护成本

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Notes that the real test of maintenance stratagem success (or failure in financial terms) can only be resolved when a comparison of machine maintenance costs can be made to some benchmark standard. Presents a comparative study between two models developed to predict the average hourly maintenance cost of tracked hydraulic excavators operating in the UK opencast mining industry. The models use the conventional statistical technique muliple regression, and artificial neural networks. Performance analysis using mean percentage error, mean absolute percentage error and percentage cost accuracy intervals was conducted.Results reveal that both models performed well, having low mean absolute percentage error values(less than 5 percent) indicating that predictor variables were reliable inputs for modelling average hourly maintenance cost. Overall, the neural network model performed slightly better as it was able to predict up to 95 percent of cost observations to within <= &5.Moreover, summary statistical analysis of residual values highlighted that predicted values using the neural network model are less subject to variance than the multiple regression model.
机译:请注意,只有在可以将机器维护成本与某些基准标准进行比较的情况下,才能解决对维护策略成功(或财务上的失败)的真实测试。提供了两种模型之间的比较研究,该模型用于预测英国露天采矿业中使用的履带液压挖掘机的平均每小时维护成本。这些模型使用常规的统计技术,多元回归和人工神经网络。使用平均百分比误差,平均绝对百分比误差和百分比成本准确度间隔进行性能分析,结果表明两个模型均表现良好,平均绝对百分比误差值低(小于5%),表明预测变量是建模平均值的可靠输入每小时的维护费用。总体而言,神经网络模型的性能要好一些,因为它可以预测95%的成本观察值在<=&5之内。此外,对残差值的汇总统计分析突出表明,使用神经网络模型的预测值受方差较小比多元回归模型

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