使用聚类遗传算法识别工业4.0定制的智能设计属性

A. Saldivar, C. Goh, Yun Li, Yi Chen, Hongnian Yu
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引用次数: 15

摘要

工业4.0旨在以大量生产成本实现大规模定制。实现这一目标的关键是准确预测客户需求,然而,由于缺乏智能分析工具,这是一个具有挑战性的问题。本文对这一问题进行了深入的研究,然后开发了一个集成云计算、大数据分析、商业信息学、通信技术和数字工业生产系统的预测分析框架。以聚类k-均值方法形式的计算智能用于管理相关的大数据,以满足潜在客户的需求,并希望为目标生产力和定制量产进行智能设计。从大数据中识别模式是通过聚类k-均值和使用遗传算法选择最优属性实现的。一个汽车定制案例研究展示了如何应用它,以及随着对客户需求和愿望的不断了解,在哪里分配新的集群。这种方法在实现工业4.0时提供了许多适合智能设计的功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identifying smart design attributes for Industry 4.0 customization using a clustering Genetic Algorithm
Industry 4.0 aims at achieving mass customization at a mass production cost. A key component to realizing this is accurate prediction of customer needs and wants, which is however a challenging issue due to the lack of smart analytics tools. This paper investigates this issue in depth and then develops a predictive analytic framework for integrating cloud computing, big data analysis, business informatics, communication technologies, and digital industrial production systems. Computational intelligence in the form of a cluster k-means approach is used to manage relevant big data for feeding potential customer needs and wants to smart designs for targeted productivity and customized mass production. The identification of patterns from big data is achieved with cluster k-means and with the selection of optimal attributes using genetic algorithms. A car customization case study shows how it may be applied and where to assign new clusters with growing knowledge of customer needs and wants. This approach offer a number of features suitable to smart design in realizing Industry 4.0.
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