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Model of Automobile Parts Sale Prediction Based on Nonlinear Periodic Gray GM(1,1) and Empirical Research

机译:基于非线性周期灰色通用(1,1)和实证研究的汽车零件销售预测模型及实证研究

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摘要

The traditional predictive method cannot fully reflect the complex nonlinear characteristics and regularities of automobile and parts sales data, so the prediction precision is not high. The purpose of this paper is to propose the gray GM(1,1) nonlinear periodic predictive model by introducing the seasonal variation index to improve predictive accuracy of the single GM(1,1) model. Firstly, the paper analyzes concept of GM(1,1) and then proposes the gray GM(1,1) nonlinear periodic predictive model to forecast automobile parts sales. The model algorithm used gray theory and accumulated technology to generate new data and set up unified differential equations to find the fitting curve of automobile parts sales prediction by the seasonal variation index to remove random elements. Lastly, the gray GM(1,1) nonlinear periodic predictive model is used for empirical analysis; the result of example shows that the model proposed in the paper is feasible. The superiority of the proposed predictive model compared with the single gray GM(1,1) model is demonstrated. The reliability of this model is experienced by the accuracy test, which provides a theoretical guidance for the prediction of automobile part sales. And the average relative error is reduced by 8.52% compared with the single GM(1,1) model.
机译:传统的预测方法无法充分反映汽车和零件销售数据的复杂非线性特性和规律,因此预测精度不高。本文的目的是通过引入季节性变化指数来提高季节性变化指数来提出灰色GM(1,1)非线性定期预测模型,以提高单个GM(1,1)模型的预测精度。首先,本文分析了通用(1,1)的概念,然后提出了灰色通用(1,1)非线性周期性预测模型,以预测汽车零件销售。模型算法使用灰色理论和累积技术来生成新数据,并建立统一的微分方程,找到汽车零件销售预测的拟合曲线对季节变化指数去除随机元素。最后,灰色gm(1,1)非线性周期性预测模型用于实证分析;实施例结果表明,纸上提出的模型是可行的。展示了与单灰色GM(1,1)模型相比所提出的预测模型的优越性。精度测试经历了该模型的可靠性,这为汽车部件销售的预测提供了理论指导。与单通用汽车(1,1)模型相比,平均相对误差减少了8.52%。

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