Parameter Identification for Synchronous Two-Machine Exponential Production Line Model

Yuting Sun, Liang Zhang
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引用次数: 4

Abstract

Production system modeling refers to the process of constructing valid and high-fidelity mathematical models that are capable of capturing the behavior of job flow in the manufacturing systems. During the modeling process, model parameter identification is the most critical step. This step, however, often involves a significant amount of complex and nonstandardized work. To tackle this problem, we propose to reversely compute the production system model parameters based on standard manufacturing system performance metrics. In this paper, we consider a two-machine production line model, in which the machines follow the exponential reliability model and have identical processing speed, and formulate a constrained optimization problem with the objective of finding the optimal machine parameters which can fit the system performance metrics the best. To solve this problem, barrier method with BFGS quasi-Newton algorithm and cyclic coordinate descent method with proximal point update are developed. The accuracy of these two methods in estimating machine parameters and performance metrics are computed and compared through extensive numerical experiments. Although barrier method is much more efficient in terms of computation time, the risk of getting trapped in local optima exists due to the lack of convexity. On the other hand, the numerical experiments demonstrate that the coordinate descent method reaches the global optimal solution for all the cases. Therefore, an ensemble strategy is recommended to ensure a high accuracy in parameter estimation with acceptable computation time.
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同步双机指数生产线模型的参数辨识
生产系统建模是指构建有效的高保真数学模型的过程,该数学模型能够捕捉制造系统中工作流的行为。在建模过程中,模型参数辨识是最关键的一步。然而,这一步通常涉及大量复杂和非标准化的工作。为了解决这一问题,我们提出了基于标准制造系统性能指标反向计算生产系统模型参数的方法。本文考虑了具有相同加工速度且服从指数可靠性模型的双机生产线模型,并构造了一个约束优化问题,其目标是找到最适合系统性能指标的最优机器参数。针对这一问题,提出了基于BFGS准牛顿算法的障碍法和基于近点更新的循环坐标下降法。通过大量的数值实验,计算和比较了这两种方法在估计机器参数和性能指标方面的精度。虽然屏障法在计算时间上要高效得多,但由于缺乏凸性,存在陷入局部最优的风险。另一方面,数值实验表明,坐标下降法在所有情况下都能得到全局最优解。因此,建议采用集成策略在可接受的计算时间内保证参数估计的高精度。
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