Chang Yeong-Hwa, Chai Yu-Hsiang, Li Bo-Lin, Lin Hung-Wei
Department of Electrical Engineering, Chang Gung University, Taoyuan City 333, Taiwan.
Department of Electrical Engineering, Ming Chi University of Technology, New Taipei City 243, Taiwan.
Sensors (Basel). 2023 Oct 15;23(20):8480. doi: 10.3390/s23208480.
Predictive maintenance is a proactive approach to maintenance in which equipment and machinery are monitored and analyzed to predict when maintenance is needed. Instead of relying on fixed schedules or reacting to breakdowns, predictive maintenance uses data and analytics to determine the appropriate time to perform maintenance activities. In industrial applications, machine boxes can be used to collect and transmit the feature information of manufacturing machines. The collected data are essential to identify the status of working machines. This paper investigates the design and implementation of a machine box based on the ROS framework. Several types of communication interfaces are included that can be adopted to different sensor modules for data sensing. The collected data are used for the application on predictive maintenance. The key concepts of predictive maintenance include data collection, a feature analysis, and predictive models. A correlation analysis is crucial in a feature analysis, where the dominant features can be determined. In this work, linear regression, a neural network, and a decision tree are adopted for model learning. Experimental results illustrate the feasibility of the proposed smart machine box. Also, the remaining useful life can be effectively predicted according to the trained models.
预测性维护是一种主动式维护方法,通过对设备和机械进行监测与分析,来预测何时需要进行维护。预测性维护并非依赖固定的时间表或对故障做出反应,而是利用数据和分析来确定进行维护活动的合适时间。在工业应用中,机器盒可用于收集和传输制造机器的特征信息。所收集的数据对于识别工作机器的状态至关重要。本文研究了基于ROS框架的机器盒的设计与实现。它包含多种通信接口,可适配不同的传感器模块进行数据传感。收集到的数据用于预测性维护应用。预测性维护的关键概念包括数据收集、特征分析和预测模型。相关性分析在特征分析中至关重要,通过它可以确定主导特征。在这项工作中,采用线性回归、神经网络和决策树进行模型学习。实验结果说明了所提出的智能机器盒的可行性。此外,根据训练好的模型可以有效预测剩余使用寿命。