基于随机森林方法的相对湿度预测维护

Aji Teguh Prihatno, Himawan Nurcahyanto, Y. Jang
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引用次数: 9

摘要

工业4.0的大规模发展离不开机器学习的进步。为了保护制造业免受高湿度导致的电气故障等意外事件的影响,应该准确地开发基于机器学习的预测性维护。本文描述了利用随机森林方法作为机器学习的一部分,在智能工厂环境中预测相对湿度(RH)的实现工作。为了支持智能工厂环境下数据的可靠性和互操作性,采用基于oneM2M标准平台的工业物联网设备进行数据采集。该方法预测相对湿度的结果为82.49%,具有较好的精度。这一研究目标将有助于制造领域降低维修成本,提高维修效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Maintenance of Relative Humidity Using Random Forest Method
The massive development of Industry 4.0 inseparable with improvement of Machine Learning. In order to protect manufacturing sector from unwanted events such as electrical failures due to high level of humidity, the predictive maintenance based on Machine Learning should be developed accurately. This paper describes the implementation work of predicting Relative Humidity (RH) in the smart factory’s environment by using Random Forest method as a part of Machine Learning. In order to support data reliability and interoperability in smart factory environment, IIoT devices based oneM2M standard platform was used to collect the data. The result of this Random Forest method for predict relative humidity shows 82.49% which considered as an excellent accuracy. This research goal may contribute to the manufacturing fields to be able to lower the cost and increase efficiency in maintenance.
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