Data-driven simulation-based decision support system for resource allocation in industry 4.0 and smart manufacturing

瓶颈 聚类分析 计算机科学 吞吐量 资源配置 决策支持系统 资源(消歧) 数学优化 数据挖掘 机器学习 数学 嵌入式系统 电信 计算机网络 无线
作者
Ehsan Mahmoodi,Masood Fathi,Madjid Tavana,Morteza Ghobakhloo,Amos H.C. Ng
出处
期刊:Journal of Manufacturing Systems [Elsevier BV]
卷期号:72: 287-307 被引量:13
标识
DOI:10.1016/j.jmsy.2023.11.019
摘要

Data-driven simulation (DDS) is fundamental to analytical and decision-support technologies in Industry 4.0 and smart manufacturing. This study investigates the potential of DDS for resource allocation (RA) in high-mix, low-volume smart manufacturing systems with mixed automation levels. A DDS-based decision support system (DDS-DSS) is developed by incorporating two RA strategies: simulation-based bottleneck analysis (SB-BA) and simulation-based multi-objective optimization (SB-MOO). To enhance the performance of SB-MOO, a unique meta-learning mechanism featuring memory, dynamic orthogonal array, and learning rate is integrated into the NSGA-II, resulting in a modified version of the NSGA-II with meta-learning (i.e., NSGA-II-ML). The proposed DSS also benefits from a post-optimality analysis that leverages a clustering algorithm to derive actionable insights. A real-life marine engine manufacturing application study is presented to demonstrate the applicability and exhibit efficacy of the proposed DSS and NSGA-II-ML. To this aim, NSGA-II-ML was tested against the original NSGA-II and differential evolution (DE) algorithm across a set of test problems. The results revealed that NSGA-II-ML surpassed the other two in terms of the number of non-dominated solutions and hypervolume, particularly in medium and large-sized problems. Furthermore, NSGA-II-ML achieved a 24% improvement in the best throughput found in the real case problem, outperforming SB-BA, NSGA-II, and DE. The post-optimality analysis led to the extraction of valuable knowledge about the key, influencing decision variables on the throughput.

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