PREDICTING MEDICINE DEMAND USING DEEP LEARNING TECHNIQUES

Bashaer Abdurahman Mousa, Belal Al-Khateeb
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Abstract

Medication supply and storage are essential components of the medical industry and distribution. Most medications have a predetermined expiration date. When the demand is met in large quantities that exceed the actual need, this leads to the accumulation of medicines in the stores, and this leads to the expiration of the materials. If demand is too low, this will have an impact on consumer happiness and drug marketing.Therefore, it is necessary to find a way to predict the actual quantity required for the organization's needs to avoid material spoilage and storage problems. A mathematical prediction model is required to assist any management in achieving the required availability of medicines for customers and safe storage of medicines. The research question is to design a system based on deep learning that can predict the amount of drugs required with high efficiency and accuracy based on the chronology of previous years.Recurrent Neural Networks (RNN), Long Short-Term Memory (LSTM), Bidirectional LSTM, and Gated Recurrent Unit (GRU) are used to build prediction models. Those models allow for the optimization of inventory levels, thus reducing costs and potentially increasing sales. Various measures such as mean squared error (MSE), mean absolute squared error (MASE), root mean squared error (RMSE), and others are used to evaluate the prediction models. RNN model achieved the best result with MSE: 0.019 MAE: 0.102, RMSE: 0.0.
使用深度学习技术预测药品需求
药品供应和储存是医疗行业和分销的重要组成部分。大多数药物都有预定的有效期。当需求被大量满足而超过实际需要时,就会导致药品在仓库中堆积,从而导致物资过期。如果需求过低,这将对消费者的幸福感和药品营销产生影响。因此,有必要找到一种方法来预测组织需要的实际数量,以避免材料损坏和储存问题。需要一个数学预测模型来协助任何管理人员实现客户所需的药品供应和药品的安全储存。研究问题是设计一个基于深度学习的系统,根据前几年的年表,高效准确地预测所需药物的数量。利用循环神经网络(RNN)、长短期记忆(LSTM)、双向LSTM和门控循环单元(GRU)建立预测模型。这些模型允许优化库存水平,从而降低成本并潜在地增加销售。各种测量,如均方误差(MSE),平均绝对平方误差(MASE),均方根误差(RMSE)等,用于评估预测模型。RNN模型以MSE: 0.019 MAE: 0.102, RMSE: 0.0获得最佳结果。
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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