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Parameter Identification for Multiple-Machine Bernoulli Lines using Statistical Learning Methods

机译:基于统计学习方法的多机伯努利线参数辨识

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A manufacturing process is typically modeled as a stochastic process in production systems research. A challenge commonly met in practical applications is the identification of the parameters for such stochastic process models. The conventional approach focuses on collecting data from each individual work-station’s operation and relies on the modeler’s training and experience to convert the raw data into model parameters. A new modeling approach has recently been proposed that uses system performance metrics (e.g., throughput, work-in-process) as inputs to reversely calculate the model parameters. In this paper, we investigate the efficacy of statistical learning methods in solving the problem of production system model parameter identification. Specifically, three commonly used methods, multivariate regression, random forest, and artificial neural network, are applied to parameter identification in Bernoulli serial line models. Numerical experiments demonstrate the performance of these methods and show that the machine parameters can be identified with high accuracy.
机译:在生产系统研究中,通常将制造过程建模为随机过程。在实际应用中通常遇到的挑战是识别这种随机过程模型的参数。传统方法着重于从每个工作站的操作中收集数据,并依靠建模者的训练和经验将原始数据转换为模型参数。最近已经提出了一种新的建模方法,该方法使用系统性能度量(例如,吞吐量,在制品)作为输入来反向计算模型参数。在本文中,我们研究了统计学习方法在解决生产系统模型参数辨识问题中的功效。具体而言,将三种常用的方法(多元回归,随机森林和人工神经网络)应用于Bernoulli串行线模型中的参数识别。数值实验证明了这些方法的性能,并表明可以高精度地识别机器参数。

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