通过 CNN 和 BiLSTM 优化供应链,提高效率和可持续性

IF 12.9 1区 管理学 Q1 BUSINESS Technological Forecasting and Social Change Pub Date : 2024-10-25 DOI:10.1016/j.techfore.2024.123841
Surjeet Dalal , Umesh Kumar Lilhore , Sarita Simaiya , Magdalena Radulescu , Lucian Belascu
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引用次数: 0

摘要

由于复杂性不断增加、需求不确定以及对可持续方法的要求,供应链管理正在发生迅速变化。双向长短期记忆网络(BiLSTM)和卷积神经网络(CNNs)等先进技术可以改善供应链流程。本文建议整合 CNN 和 BiLSTM 模型,以提高供应链效率和可持续性。建议的模型采用 CNN 来优化资源分配、发现趋势并评估供应链的空间联系。利用 BiLSTM 模型捕捉时间相关性,可实现准确的需求预测和前瞻性决策。结合这些模型可以解释供应链动态。CNN 和 BiLSTM 模型的自适应学习和实时监控可对不断变化的情况做出快速反应,从而提高效率。预测分析可优化库存、降低缺货率并缩短交货时间。可持续发展因素包括运输路线优化、碳足迹最小化和智能绿色采购决策辅助。所提出的混合模型达到了 94.65 % 的特异性、96.57 % 的准确性、95.67 % 的灵敏度和 0.85 % 的 MCC。结果分析表明,所提出的模型大大提高了准确度。这项研究从各个方面揭示了供应链的困难。CNN 和 BiLSTM 模型可以提高运营效率,并将供应链实践与可持续发展目标联系起来,从而建立一个更具可持续性的全球供应网络。
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Improving efficiency and sustainability via supply chain optimization through CNNs and BiLSTM
Supply chain management is changing rapidly due to increasing complexity, uncertain demand, and the requirement for sustainable methods. Advanced technologies like Bidirectional Long Short-Term Memory networks (BiLSTM) and Convolutional Neural Networks (CNNs) can enhance supply chain processes. This paper proposes integrating CNNs and BiLSTM models to improve supply chain efficiency and sustainability. The proposed model employs CNNs to optimize resource allocation, uncover trends, and evaluate supply chain spatial linkages. Using BiLSTM models to capture temporal correlations allows accurate demand forecasting and proactive decision-making. Combining these models explains supply chain dynamics. CNNs and BiLSTM models' adaptive learning and real-time monitoring boost efficiency by responding quickly to changing situations. Predictive analytics optimizes inventory, lowers stock outs, and cuts lead times. Sustainability factors include transportation route optimization, carbon footprint minimization, and intelligent green-sourcing decision assistance. The proposed Hybrid Model achieved 94.65 % Specificity, 96.57 % Accuracy, 95.67 % Sensitivity and 0.85 % MCC. The result analysis demonstrates that the proposed model significantly improved the accuracy level. This research sheds light on supply chain difficulties from all sides. CNNs and BiLSTM models can boost operational efficiency and link supply chain practices with sustainability goals to produce a more sustainable global supply network.
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来源期刊
CiteScore
21.30
自引率
10.80%
发文量
813
期刊介绍: Technological Forecasting and Social Change is a prominent platform for individuals engaged in the methodology and application of technological forecasting and future studies as planning tools, exploring the interconnectedness of social, environmental, and technological factors. In addition to serving as a key forum for these discussions, we offer numerous benefits for authors, including complimentary PDFs, a generous copyright policy, exclusive discounts on Elsevier publications, and more.
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