INVENTORY PREDICTION SYSTEM USING THE LEAST SQUARE METHOD AT THE SERBA SERBI ONLINE SHOP TANJUNGPINANG

Hendi Setiawan, Nanny Raras Setyoningrum, Danandjaya Saputra, Merry Merry
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Abstract

In this era of Industry 4.0, technology is advancing rapidly, and various applications are emerging to help traders optimize their product procurement. One such application is the forecasting or prediction system. Serba Serbi Online Shop Tanjungpinang is a shop that requires this system to manage its inventory successfully. As the shop offers a wide variety of goods, managing inventory has become challenging. The capital spent on inventory has increased, and unsold goods are piling up in the warehouse. To overcome this issue, the shop needs to calculate the amount of inventory required to reduce the stock build-up in the warehouse. The prediction method used for this purpose is the least square method. This method uses periodic or time-series data, which requires past sales data to predict future sales. Historical sales data is necessary to develop an inventory prediction system. The sales data for a single item from July 2022 to May 2023 was analyzed using the Least Square method. Based on this analysis, the predicted sales for June is 144.64, rounded to 145. The accuracy of the prediction results were tested, and the best accuracy was obtained from the prediction using 3 months of data, with an error rate of 5.47%. The prediction with the highest error rate was obtained from using 9 months of data, with an error rate of 10.65%. On average, the prediction accuracy is 0.02154%, which is considered very good.
使用最小平方法的库存预测系统在 SERBA SERBI 网上商店丹戎皮南使用
在工业 4.0 时代,技术发展日新月异,各种帮助贸易商优化产品采购的应用程序层出不穷。预测系统就是其中之一。丹戎比南 Serba Serbi 网上商店就是一家需要该系统来成功管理库存的商店。由于该商店提供的商品种类繁多,管理库存变得具有挑战性。花在库存上的资金增加了,未售出的商品堆积在仓库里。为了解决这个问题,商店需要计算出所需的库存量,以减少仓库中的库存堆积。为此采用的预测方法是最小平方法。这种方法使用周期或时间序列数据,需要用过去的销售数据来预测未来的销售情况。历史销售数据是开发库存预测系统的必要条件。我们使用最小平方法分析了 2022 年 7 月至 2023 年 5 月的单一商品销售数据。根据分析结果,6 月份的预测销售额为 144.64,四舍五入为 145。对预测结果的准确性进行了测试,使用 3 个月数据进行预测的准确性最好,误差率为 5.47%。使用 9 个月数据的预测误差率最高,为 10.65%。平均预测准确率为 0.02154%,这被认为是非常好的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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