基于机器学习的农业库存管理系统预测分析

N. Kumar, Shreyas Bhaskar, S.P Srinidhi, D. Shashank, Srivatsa G Karanam
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引用次数: 0

摘要

当全球遭受Covid - 19大流行的恶性袭击时,多个行业都面临着病毒的愤怒,其中包括农业仓储业。因此,许多储存了大量农产品的仓库由于已到保质期而再也不能使用。这给农业仓库造成了重大损失,也给农民和大规模农场主造成了作物损失。本文的主要目的是建立一个模型,该模型利用3种权重算法(季节性自回归综合移动平均- SARIMA,长短期记忆- LSTM和Holt Winters),并根据来自不同仓库的先前数据预测零售商和消费者的农业需求。部署这一系统将无助于仓库货物的监管,但也有助于仓库的利润最大化和损失最小化。在预测上述产品的销售时,将考虑MAE(Mean Absolute Error)值最小的算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Based Predictive Analytics For Agriculture Inventory Management System
When the globe was hit by the vicious Covid 19 pandemic, multiple industries faced the virus's wrath and that included the agricultural warehouse industry. Consequently, many warehouses which had received large shipment stocks of agricultural products were never to be used again as it had reached its expiration date. This led to major losses for the agricultural warehouses as well as losses in crops for farmers and large scale agriculturists. The main objective of this paper is to build a model which utilises 3 heavy-weight algorithms (Seasonal Autoregressive Integrated Moving Average - SARIMA, Long short term memory - LSTM and Holt Winters) and predicts the agricultural needs of retailers and consumers based on previous data from different warehouses. Deploying this system will not help in the regulation of goods in warehouses but will also aid in maximizing the profits and minimizing the losses for warehouses. The algorithm with the least MAE(Mean Absolute Error) value will be considered for forecasting the sales of the aforementioned product.
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