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Spare parts consumption rolling forecasting model based on grey LSSVM

机译:基于灰色LSSVM的备件消耗量滚动预测模型

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Considering the limited data of spare parts consumption and the stochastic and uncontrollable of the inducing factors, a new rolling forecasting model of grey least square support vector machine (LSSVM) is proposed through analyzing disadvantages of current spare parts consumption forecasting models. The new model not only develops the advantages of accumulation generation of the grey forecasting method, weakens the effect of stochastic-disturbing factors in original sequence and strengthened the regularity of data, but also uses the quickly solving speed and the excellent characteristics of least square support vector machines for nonlinear relationship and avoids the theoretical defects existing in the grey forecasting model. Through continuous interaction between predictive value and statistical value to update the training samples, the model realizes the rolling forecasts of the spare parts consumption. At last, one example is given to testify the effectiveness of the model.
机译:考虑到零备件消耗数据有限以及诱发因素的随机性和不可控性,通过分析现有零备件消耗预测模型的不足,提出了一种新的灰色最小二乘支持向量机滚动预测模型。新模型不仅发挥了灰色预测方法累积生成的优势,减弱了随机干扰因素对原始序列的影响,增强了数据的规律性,而且还利用了快速求解的速度和最小二乘支持的优良特性。向量机的非线性关系,避免了灰色预测模型中存在的理论缺陷。通过预测值和统计值之间的持续交互以更新训练样本,该模型实现了备件消耗的滚动预测。最后,通过一个例子证明了该模型的有效性。

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