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STABILITY ANALYSIS OF THE SUPPLY CHAIN BY USING NEURAL NETWORKS AND GENETIC ALGORITHMS

机译:利用神经网络和遗传算法供应链的稳定性分析

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Effectively managing a supply chain requires visibility to detect unexpected variations in the dynamics of the supply chain environment at an early stage. This paper proposes a methodology that captures the dynamics of the supply chain, predicts and analyzes future behavior modes, and indicates potentials for modifications in the supply chain parameters in order to avoid or mitigate possible oscillatory behaviors. Neural networks are used to capture the dynamics from the system dynamic models and analyze simulation results in order to predict changes before they take place. Optimization techniques based on genetic algorithms are applied to find the best setting of the supply chain parameters that minimize the oscillations. A case study in the electronics manufacturing industry is used to illustrate the methodology.
机译:有效管理供应链需要了解在早期阶段的供应链环境动态的意外变化。本文提出了一种捕获供应链的动态的方法,预测和分析未来的行为模式,并表示供应链参数进行修改的电位,以避免或减轻可能的振荡行为。神经网络用于捕获系统动态模型的动态,并分析模拟结果,以便在发生之前预测变化。基于遗传算法的优化技术应用于找到最小化振荡的供应链参数的最佳设置。用于电子制造业的案例研究用于说明方法。

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