用人工神经网络方法实现产品销售预测

C. Fauzi, Aly Dzulfikar
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引用次数: 2

摘要

产品销售预测是公司使用前一年的销售数据来估计或预测未来的销售水平。人工神经网络反向传播算法可以预测公司每一项商品下一时期的销售情况。预测过程首先确定网络模式所需的变量,然后使用反向传播算法将已建立的网络模式继续进行网络训练过程。在进行网络训练过程后,研究人员对形成的几种网络模式进行了比较。本研究对螺旋弹簧和钢板弹簧的PT XYZ产品进行预测分析。采用人工神经网络反向传播方法对丰田48210-25290 R3型钢板弹簧进行预测,其学习率权重值为0.1,隐含层数为4,误差为0.01。从所进行的数据处理分析表明,根据所选取的权重参数,预测4月份的销量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Product Sales Forecast Using Artificial Neural Network Method
Product sales forecasting is used by companies to estimate or predict future sales levels using sales data in the previous year. The Artificial Neural Network Backpropagation Algorithm can forecast the sales of goods for the next period for each item in the company. The forecasting process begins by determining the variables needed in the network pattern, and then the established network pattern continued in the network training process using the backpropagation algorithm. After carrying out the network training process, the researcher comparisons with several network patterns formed. This research was conducted to discuss the forecasting analysis of PT XYZ products on spiral and leaf springs. Forecasting carried out on Toyota 48210-25290 R3 type leaf springs using the Artificial Neural Network Backpropagation method with a learning rate weight value of 0.1 hidden layers four and an error of 0.01. From the data processing analysis that has been carried out based on the weight parameters selected, the prediction of sales in April.
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