FORECASTING THE FUTURE: A COMPARATIVE ANALYSIS OF ML AND DL MODELS IN SUPPLY CHAIN DEMAND PREDICTION

Rishi Varsha Poranki, Kalyani Pattima, Meghana Yalagala, Namitha Suraboina, K. Thrilochana Devi
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Abstract

Supply chain demand forecasting is a strategic process aimed at predicting future customer demand for products within the broader framework of a supply chain. This involves forecasting the anticipated quantity of goods or services that customers will purchase and seamlessly integrating this insight into the overall supply chain management. The primary goal is to synchronize production, procurement, and distribution activities with expected demand, thereby optimizing inventory costs, minimizing instances of under stocking or overstocking, reducing waste, and ultimately enhancing overall supply chain efficiency. The emphasis is on leveraging advanced technologies, including deep learning techniques such as CNN, LSTM, CNN+LSTM, GRU, and machine learning techniques like Linear Regression and XGBoost, to achieve accurate predictions. By implementing these algorithms, businesses can construct a robust forecasting system capable of monitoring changes in demand and aligning supply accordingly. This proactive approach empowers retailers to enhance their inventory and planning efficiency, ultimately contributing to increased customer satisfaction. KEY WORDS: Machine Learning, Deep Learning, XG Boost, Linear Regression, CNN, LSTM, CNN+LSTM, GRU
预测未来:供应链需求预测中 ml 和 dl 模型的比较分析
供应链需求预测是一个战略过程,旨在预测未来客户对供应链大框架内产品的需求。这包括预测客户将购买的商品或服务的预期数量,并将这一洞察力无缝整合到整体供应链管理中。其主要目标是使生产、采购和分销活动与预期需求同步,从而优化库存成本,最大限度地减少库存不足或库存过多的情况,减少浪费,并最终提高供应链的整体效率。重点是利用先进技术,包括 CNN、LSTM、CNN+LSTM、GRU 等深度学习技术,以及线性回归和 XGBoost 等机器学习技术,实现准确预测。通过实施这些算法,企业可以构建一个强大的预测系统,能够监测需求变化并相应地调整供应。这种积极主动的方法使零售商能够提高库存和计划效率,最终有助于提高客户满意度。关键字:机器学习、深度学习、XG Boost、线性回归、CNN、LSTM、CNN+LSTM、GRU
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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