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A demand forecast model using a combination of surrogate data analysis and optimal neural network approach

机译:结合替代数据分析和最优神经网络方法的需求预测模型

摘要

As rough or inaccurate estimation of demands is one of the main causes of the bullwhip effect harming the entire supply chain, we have developed a mathematical approach, the minimum description length (MDL), to determine the optimal artificial neural network (ANN) that can provide accurate demand forecasts. Two types of simulated customer and one practical demand are employed to validate the capability of the MDL method. Since stochastic factors hidden in the demand data disturb the prediction, the surrogate data method is proposed for identifying the characteristics of the demand data. This method excludes demands that are totally stochastic when forecasting. We demonstrate how optimal models estimated by MDL are consistent with the dynamics of demand data identified by the surrogate data method. The complementary approach of the surrogate data method and neural network constitutes a comprehensive framework for making various demand predictions. This framework is applicable to a wide variety of real-world data.
机译:由于对需求的粗略或不正确的估算是牛鞭效应损害整个供应链的主要原因之一,因此,我们已经开发出一种数学方法,即最小描述长度(MDL),以确定可以满足需求的最佳人工神经网络(ANN)。提供准确的需求预测。两种类型的模拟客户和一种实际需求用于验证MDL方法的功能。由于需求数据中隐藏的随机因素干扰了预测,因此提出了一种替代数据方法来识别需求数据的特征。此方法排除了预测时完全随机的需求。我们演示了MDL估计的最佳模型如何与替代数据方法识别的需求数据的动态一致。替代数据方法和神经网络的互补方法构成了进行各种需求预测的综合框架。该框架适用于各种实际数据。

著录项

  • 作者

    Lau HCW; Ho GTS; Zhao Y;

  • 作者单位
  • 年度 2013
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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