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A hybrid statistical genetic-based demand forecasting expert system

机译:混合统计基于遗传的需求预测专家系统

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摘要

Demand forecasting is considered a key factor for balancing risk of over-stocking and out-of-stock. It is the main input to supply chain processes affecting their performance. Even with much effort and funds spent to improve supply chain processes, they still lack reliability and efficiency if the demand forecast accuracy is poor. This paper presents a proposal of an integrated model of statistical methods and improved genetic algorithm to generate better demand forecast accuracy. An improved genetic algorithm is used to choose the best weights among the statistical methods and to optimize the forecasted activities combinations that maximize profit. A case study is presented using different product types. And, a comparison is conducted between results obtained from the proposed model and from traditional statistical methods, which demonstrates improved forecast accuracy using the proposed model for all time series types.
机译:需求预测被认为是平衡过剩和缺货风险的关键因素。它是影响其绩效的供应链流程的主要输入。即使需要大量精力和资金来改善供应链流程,但如果需求预测的准确性很差,它们仍然缺乏可靠性和效率。本文提出了一种综合统计方法和改进遗传算法的模型的建议,以产生更好的需求预测准确性。改进的遗传算法用于在统计方法中选择最佳权重,并优化使利润最大化的预测活动组合。案例研究使用了不同的产品类型。并且,从提议的模型和传统统计方法获得的结果之间进行了比较,这表明使用提议的模型针对所有时间序列类型提高了预测准确性。

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