Robust Optimization of an Imperfect Process when the Mean and Variance are Jointly Monitored under Dependent Multiple Assignable Causes

Q3 Mathematics Stochastics and Quality Control Pub Date : 2022-10-28 DOI:10.1515/eqc-2022-0018
A. Salmasnia, samrad Jafarian-Namin, Behnam Abdzadeh
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引用次数: 1

Abstract

Abstract Imperfect processes experience fault productions over time due to specific causes. Integrating the statistical process control, maintenance policy, and economic production quantity has led to more favorable results for the imperfect processes in literature. When monitoring a process, multiple assignable causes (ACs) may shift it to an out-of-control state. As indicated recently, if the interdependency of ACs is neglected, the total cost will be underestimated. Moreover, the mean and variance can simultaneously be affected by the occurrence of ACs. A non-central chi-square (NCS) chart was suggested for its decent performance against X-R chart in detecting the process disturbances and lowering quality loss cost. Besides, the increased occurrence rate of ACs over time leads to higher quality and maintenance costs. Employing a non-uniform sampling (NUS) scheme can significantly reduce costs. In the literature of modeling for imperfect processes under multiple ACs, all input parameters have always been fixed. The effectiveness of the models depends somewhat on the accurate estimates of these parameters. In reality, the estimation of parameters may be associated with uncertainty. For the first time, a robust design approach is proposed for designing NCS chart by considering the interval estimation of uncertain parameters. A particle swarm optimization (PSO) algorithm is used to present solutions. The proposed model is investigated through a real numerical example.
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多可分配原因下均值和方差联合监测不完美过程的鲁棒优化
由于特定的原因,不完美的过程随着时间的推移会产生故障。将统计过程控制、维护政策和经济生产数量相结合,为文献中不完善的过程带来了更有利的结果。当监控一个过程时,多个可分配原因(ac)可能会将其转移到失控状态。正如最近所指出的,如果忽略了ac的相互依赖性,总费用将被低估。此外,平均值和方差可能同时受到ACs发生的影响。非中心卡方(NCS)图在检测过程干扰和降低质量损失成本方面优于X-R图。此外,随着时间的推移,空调的发生率增加,导致更高的质量和维护成本。采用非均匀采样(NUS)方案可以显著降低成本。在多ac条件下的不完善过程建模文献中,所有输入参数都是固定的。模型的有效性在某种程度上取决于对这些参数的准确估计。在现实中,参数的估计可能与不确定性有关。首次提出了一种考虑不确定参数区间估计的网络控制系统图的鲁棒设计方法。采用粒子群优化(PSO)算法求解。通过一个实际的数值算例对该模型进行了验证。
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来源期刊
Stochastics and Quality Control
Stochastics and Quality Control Mathematics-Discrete Mathematics and Combinatorics
CiteScore
1.10
自引率
0.00%
发文量
12
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