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Numerical method for Weibull generalized renewal process and its applications in reliability analysis of NC machine tools

机译:Weibull广义更新过程的数值方法及其在数控机床可靠性分析中的应用

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摘要

In generalized renewal process (GRP) reliability analysis for repairable systems, Monte Carlo (MC) simulation method instead of numerical method is often used to estimate model parameters because of the complexity and the difficulty of developing a mathematically tractable probabilistic model. In this paper, based on the conditional Weibull distribution for repairable systems, using negative log-likelihood as an objective function and adding inequality constraints to model parameters, a nonlinear programming approach is proposed to estimate restoration factor for the Kijima type GRP model Ⅰ, as well as the model Ⅱ. This method minimizes the negative log-likelihood directly, and avoids solving the complex system of equations. Three real and different types of field failure data sets with time truncation for NC machine tools are analyzed by the proposed numerical method. The sampling formulas of failure times for the GRP models Ⅰ and Ⅱ are derived and the effectiveness of the proposed method is validated with MC simulation method. The results show that the GRP model is superior to the ordinary renewal process (ORP) and the power law non-homogeneous Poisson process (PL-NHPP) model.
机译:在可修复系统的广义更新过程(GRP)可靠性分析中,由于建立数学上易处理的概率模型的复杂性和困难性,通常使用Monte Carlo(MC)仿真方法代替数值方法来估计模型参数。本文基于可修复系统的条件威布尔分布,以负对数似然为目标函数,并在模型参数中加入不等式约束,提出了一种非线性规划方法来估计Kijima型GRP模型Ⅰ的恢复因子,即以及模型Ⅱ。该方法直接将负对数可能性最小化,并且避免求解复杂的方程组。通过所提出的数值方法,分析了三种具有时间截断的实际和不同类型的数控机床现场故障数据集。推导了GRP模型Ⅰ和Ⅱ的失效时间采样公式,并通过MC仿真方法验证了该方法的有效性。结果表明,GRP模型优于普通更新过程(ORP)和幂律非均匀泊松过程(PL-NHPP)模型。

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