Enterprise Collaboration Optimization in China Based on Supply Chain Resilience Enhancement

Minyan Jin
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Abstract

With the promotion of the new round of industrial revolution, the development environment of enterprises has undergone tremendous changes. Collaboration among enterprises has become crucial for enhancing core competitiveness, with the concept of the supply chain playing a key role. However, the complex and vulnerable nature of the supply chain operation environment poses various risks, hampering effective cooperative relationships between enterprises. This article proposed integrating the partial least-squares-artificial neural network (PLS-ANN) method to address this issue and optimize collaborative enterprise practices. The study examined enterprise collaboration optimization. This article uses used artificial neural network (ANN) to classify various complex data, implement an intelligent algorithm model for synchronous processing, and combine partial least squares (PLS) to classify and process the data information generated by collaborative networks to find the best match, minimizing the negative impact of multiple correlations of variables on enterprise collaboration. An empirical analysis was conducted in 2022, focusing on a manufacturing enterprise's supply chain and external cooperation management. The analysis examined two aspects: the supply chain's risk resistance level and the effectiveness of enterprise cooperation. Results showed that after implementing the PLS-ANN model, the average trust index between the enterprise and eight cooperative partners increased to approximately 0.652, compared to the initial average trust index of only 0.528. Detailed data analysis indicated that the PLS-ANN method effectively improved the supply chain's risk resistance capability while optimizing the cooperative relationships among all participating enterprises.
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基于供应链弹性增强的中国企业协同优化
随着新一轮产业革命的推动,企业的发展环境发生了巨大的变化。企业之间的协作对于提升核心竞争力至关重要,而供应链的概念在其中发挥着关键作用。然而,供应链运行环境的复杂性和脆弱性带来了各种风险,阻碍了企业之间有效的合作关系。本文提出结合偏最小二乘-人工神经网络(PLS-ANN)方法来解决这一问题,优化协同企业实践。该研究考察了企业协作优化。本文利用人工神经网络(ANN)对各种复杂数据进行分类,实现智能算法模型进行同步处理,并结合偏最小二乘法(PLS)对协作网络生成的数据信息进行分类处理,寻找最佳匹配,最大限度地减少变量的多重相关性对企业协作的负面影响。实证分析于2022年进行,研究对象为某制造企业的供应链与外部合作管理。分析考察了两个方面:供应链的抗风险水平和企业合作的有效性。结果表明,实施PLS-ANN模型后,企业与8个合作伙伴之间的平均信任指数从初始的平均信任指数仅为0.528增加到约0.652。详细的数据分析表明,PLS-ANN方法有效地提高了供应链的抗风险能力,同时优化了各参与企业之间的合作关系。
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12.50%
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