基于物联网的服装机械生产线感知系统

Erfu Guo
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引用次数: 0

摘要

- 物联网和信息技术的蓬勃发展,推动了制造业从传统管理向智能信息化转型。为探讨智能生产线监控与传感系统,本文选取服装机械配件加工生产线为研究对象。首先,在生产线数据采集上,分析了服装机械零件加工生产线的特点和存在的问题。然后,总结了生产线的感知监控需求。其次,讨论了生产线的数据源和采集方法。基于可配置的思想,提出了服装机械零件加工生产线的实时数据采集系统。此外,在质量预测方面,基于后向传播神经网络(BPNN),引入多群体遗传算法(MPGA),构建了 MPGA-BPNNNN 质量预测算法。最后,基于仿真实验对系统和算法的性能进行了测试。结果表明,系统的数据采集和并发客户端压力分别为 1.86ms 和 650 个用户,满足要求。与传统的 BPNN 相比,MPGA-BPNNN 算法的预测结果更为准确,均方根误差为 0.0645,也相对较小。服装机械零件加工生产线感知数据采集系统的设计和质量预测算法的构建,为传统制造业生产线向智能化数字感知系统转型提供了路径。
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PERCEPTION SYSTEM OF GARMENT MACHINERY PRODUCTION LINE BASED ON THE INTERNET OF THINGS
- The vigorous development of the Internet of Things and information technology promotes the transformation of the manufacturing industry from traditional management to intelligent informatization. In order to discuss the intelligent production line monitoring and sensing system, this paper selects the garment mechanical parts processing production line as the object. Firstly, on the production line data collection, the characteristics and existing problems of the garment mechanical parts processing production line are analyzed. Then, the production line's awareness monitoring demand is summarized. Secondly, the production line's data sources and acquisition methods are discussed. Based on the configurable idea, a real-time data acquisition system for the garment mechanical parts processing production line is proposed. In addition, in terms of quality prediction, based on the Back Propagation Neural Network (BPNN), the Multiple Population Genetic Algorithm (MPGA) is introduced to build the MPGA-BPNNNN quality prediction algorithm. Finally, the performance of the system and algorithm is tested based on simulation experiments. The results show that the system's data acquisition and concurrent client pressures are 1.86ms and 650 users, respectively, meeting the requirements. Compared with the traditional BPNN, the MPGA-BPNNNN algorithm has a more accurate prediction result, with a root mean square error of 0.0645, which is also relatively small. The design of a perceptual data acquisition system and the construction of a quality prediction algorithm for garment mechanical parts processing production lines can provide a path for transforming traditional manufacturing production lines into intelligent digital perceptual systems.
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来源期刊
International Journal of Mechatronics and Applied Mechanics
International Journal of Mechatronics and Applied Mechanics Materials Science-Materials Science (all)
CiteScore
0.80
自引率
0.00%
发文量
43
期刊介绍: International Journal of Mechatronics and Applied Mechanics is a publication dedicated to the global advancements of mechatronics and applied mechanics research, development and innovation, providing researchers and practitioners with the occasion to publish papers of excellent theoretical value on applied research. It provides rapid publishing deadlines and it constitutes a place for academics and scholars where they can exchange meaningful information and productive ideas associated with these domains.
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