使用模糊聚类和遗传搜索的工业4.0环境属性识别和预测性定制

A. Saldivar, C. Goh, Yun Li, Hongnian Yu, Yi Chen
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引用次数: 8

摘要

今天的工厂涉及更多的服务和定制。一种范式转变是向“工业4.0”(i4)转变,旨在以大规模生产成本实现大规模定制。然而,缺乏客户信息学的工具。本文解决了这个问题,并利用计算智能(CI)开发了一个集成大数据分析和商业信息学的预测分析框架。特别是,模糊c-means用于模式识别,以及管理相关的大数据,以满足潜在客户的需求,并在定制批量生产的设计阶段提高生产率。从大数据中选择模式使用带有模糊c均值的遗传算法,这有助于聚类和选择最优属性。案例研究表明,模糊c-means能够随着客户需求和需求知识的增长而分配新的聚类。数据集有三种类型的实体:各种特征的规范,指定的保险风险评级,以及与其他汽车相比使用时的规范化损失。模糊c-means工具提供了许多适合i4环境的智能设计的功能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attribute identification and predictive customisation using fuzzy clustering and genetic search for Industry 4.0 environments
Today s factory involves more services and customisation. A paradigm shift is towards “Industry 4.0” (i4) aiming at realising mass customisation at a mass production cost. However, there is a lack of tools for customer informatics. This paper addresses this issue and develops a predictive analytics framework integrating big data analysis and business informatics, using Computational Intelligence (CI). In particular, a fuzzy c-means is used for pattern recognition, as well as managing relevant big data for feeding potential customer needs and wants for improved productivity at the design stage for customised mass production. The selection of patterns from big data is performed using a genetic algorithm with fuzzy c-means, which helps with clustering and selection of optimal attributes. The case study shows that fuzzy c-means are able to assign new clusters with growing knowledge of customer needs and wants. The dataset has three types of entities: specification of various characteristics, assigned insurance risk rating, and normalised losses in use compared with other cars. The fuzzy c-means tool offers a number of features suitable for smart designs for an i4 environment.
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