IIoT Based Anomaly Detection and Maintenance Management of an Industrial Rotary System

Q3 Agricultural and Biological Sciences
K. Velmurugan, S. Saravanasankar, P. Venkumar, R. Sudhakarapandian
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引用次数: 0

Abstract

Numerous challenges are being faced by implementing the Industrial Internet of Things (IIoT), which enables anomaly detection and optimal maintenance management of industrial production systems and their critical machines. Industries have started adopting this revolutionary technology along with other allied technologies to reap the full benefits out of Industry 4.0 environment. The objectives of this research work were to use the IIoT to develop a continuous monitoring system of the behavior of bottleneck facilities in a production system, to predict and avoid all possible failures, and to improve the overall productivity of the manufacturing system. The proposed prognostic health monitoring system employs IIoT sensors to measure the current values of the operating parameters of a machine, using built-in intelligent decision support mechanism to compare with optimal ranges of values, and to message the appropriate alarming signals as per the severity of the deviation. The system developed was tested with a prototype model comprising the Internet of Things, internet communication technology, and a machine learning algorithm, MEMS with standard input, output, storage and display of components, which was developed in a laboratory but implemented in a case study in a real industrial production plant. After the successful implementation of the developed system, the performance of the critical machine was evaluated in terms of metrics such as the average number of failures, average downtime and average service time spent. It was found that after the implementation, the downtime has decreased by nearly 22% and for the performance in terms of its output, the flow rate exhibited a steady increase with the passage of time.
基于工业物联网的工业旋转系统异常检测与维护管理
实施工业物联网(IIoT)面临着许多挑战,这使得工业生产系统及其关键机器的异常检测和最佳维护管理成为可能。工业已经开始采用这种革命性的技术以及其他相关技术,以充分利用工业4.0环境的优势。本研究工作的目标是利用工业物联网开发生产系统中瓶颈设施行为的连续监测系统,预测和避免所有可能的故障,并提高制造系统的整体生产力。所提出的预测健康监测系统采用IIoT传感器测量机器运行参数的电流值,使用内置的智能决策支持机制与最佳值范围进行比较,并根据偏差的严重程度发送适当的报警信号。开发的系统通过一个原型模型进行了测试,该原型模型包括物联网,互联网通信技术和机器学习算法,具有标准输入,输出,存储和显示组件的MEMS,该模型是在实验室开发的,但在实际工业生产工厂的案例研究中实施。在成功实施开发的系统后,根据诸如平均故障次数、平均停机时间和平均服务时间等指标评估关键机器的性能。研究发现,在实施后,停机时间减少了近22%,而在产量方面,随着时间的推移,流量呈现出稳步增长的趋势。
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来源期刊
Current Applied Science and Technology
Current Applied Science and Technology Agricultural and Biological Sciences-Agricultural and Biological Sciences (miscellaneous)
CiteScore
1.50
自引率
0.00%
发文量
51
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