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Modeling and optimizing a vendor managed replenishment system using machine learning and genetic algorithms

机译:使用机器学习和遗传算法对供应商管理的补货系统进行建模和优化

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Using a supply chain network, we demonstrate the feasibility, viability, and robustness of applying machine learning and genetic algorithms to respectively model, understand, and optimize such data intensive environments. Deployment of these algorithms, which learn from and optimize data, can obviate the need to perform more complex, expensive, and time consuming design of experiments (DOE), which usually disrupt system operations. We apply and compare the behavior and performance of the proposed machine learning algorithms to that obtained via DOE in a simulated Vendor Managed Replenishment system, developed for an actual firm. The results show that the models resulting from the proposed algorithms had strong explanatory and predictive power, comparable to that of DOE. The optimal system settings and profit were also similar to that obtained from DOE. The virtues of using machine learning and evolutionary algorithms to model and optimize data rich environments thus seem promising because they are automatic, involving little human intervention and expertise. We believe and are exploring how they can be made adaptive to improve parameter estimates with increasing data, as well as seamlessly detecting system (and therefore model) changes, thus being capable of recursively updating and reoptimizing a modified or new model. (c) 2006 Published by Elsevier B.V.
机译:使用供应链网络,我们演示了应用机器学习和遗传算法分别建模,理解和优化此类数据密集型环境的可行性,可行性和鲁棒性。部署这些从数据中学习并优化数据的算法可以消除执行更复杂,昂贵且耗时的实验设计(DOE)的需求,而这种设计通常会中断系统的运行。我们将拟议的机器学习算法的行为和性能与通过DOE在针对实际公司开发的模拟的供应商管理的补货系统中获得的行为和性能进行比较。结果表明,所提算法产生的模型具有与DOE相当的解释和预测能力。最佳的系统设置和利润也与从DOE获得的相似。因此,使用机器学习和进化算法来建模和优化数据丰富的环境的优点似乎很有希望,因为它们是自动的,几乎不需要人工干预和专业知识。我们相信并且正在探索如何使它们适应性强,以随着数据的增加来改善参数估计,以及无缝检测系统(进而模型)的变化,从而能够递归更新和重新优化修改后的模型或新模型。 (c)2006年由Elsevier B.V.

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