Inventory Management Based on Moving Average

نویسندگان

چکیده

Overstock is a problem that often occurs in inventory management, the factor are number of sales and expired date. CV.A distributor company for goods. In case control at CV.A, this study compared two kind forecasting system; Weighted Moving Average (WMA) Exponential Smoothing (ES) methods. Research results showed forecast SNACK X using WMA method July 2021 1662, while ES 1697. After performed forecasting, error value methods was calculated. As results, Mean Absolute Deviation (MAD) Squared Error (MSE) 630 767304, respectively. For MAD MSE 626 806949, Based on has smaller value, it can be concluded better than method.
 Permasalahan yang sering terjadi pada manajemen persediaan adalah terjadinya kelebihan stok (overstock), faktor penyebabnya banyaknya penjualan dan terbatas masa kadaluarsa. sebuah perusahaan bergerak dibidang barang. Untuk pengendalian barang peneliti mengimplementasikan peramalan menggunakan metode (ES). Dari hasil penelitian, produk dengan untuk bulan juli sebanyak sedangkan diramalkan Setelah melakukan peramalan, kemudian dihitung nilai dari kedua tersebut, sehingga didapatkan masing-masing 806949. Jika dibandingkan tersebut memiliki lebih kecil dapat disimpulkan bahwa baik dibanding ES.

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ژورنال

عنوان ژورنال: Motivection

سال: 2022

ISSN: ['2655-7215', '2685-2098']

DOI: https://doi.org/10.46574/motivection.v4i1.110