基于增量学习框架的状态监测在机电系统新故障识别中的应用

J. J. Dorantes, Miguel Delgado Prieto, Jesus Adolfo Carino-Corrales, R. Osornio-Ríos, L. Romeral, R. Romero-Troncoso
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引用次数: 2

摘要

为了有效实施工业4.0新范式,正在进行大量的调查。事实上,工业过程中涉及的大多数机械都打算数字化,目的是获得增强的信息,用于整个制造过程的优化操作。在这方面,也正在重新考虑状态监测策略,以包括改进的性能和功能。因此,本研究的贡献在于提出了一种应用于机电系统状态监测的增量学习框架方法。该策略分为三个主要步骤:首先,通过计算一组基于统计时间的特征来表征不同的可用物理震级;其次,通过自组织映射对考虑的条件进行建模,以保持数据的拓扑结构;最后,通过比较各考虑条件下数据建模得到的量化误差值进行新颖性检测。通过对机电系统连续工作状态下获得的完整实验数据库的评估,验证了所提出的新型故障识别状态监测方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Incremental Learning Framework-based Condition Monitoring for Novelty Fault Identification Applied to Electromechanical Systems
A great deal of investigations are being carried out towards the effective implementation of the 4.0 Industry new paradigm. Indeed, most of the machinery involved in industrial processes are intended to be digitalized aiming to obtain enhanced information to be used for an optimized operation of the whole manufacturing process. In this regard, condition monitoring strategies are being also reconsidered to include improved performances and functionalities. Thus, the contribution of this research work lies in the proposal of an incremental learning framework approach applied to the condition monitoring of electromechanical systems. The proposed strategy is divided in three main steps, first, different available physical magnitudes are characterized through the calculation of a set of statistical-time based features. Second, a modelling of the considered conditions is performed by means of self-organizing maps in order to preserve the topology of the data; and finally, a novelty detection is carried out by a comparison among the quantization error value achieved in the data modelling for each of the considered conditions. The effectiveness of the proposed novelty fault identification condition monitoring methodology is proved by means of the evaluation of a complete experimental database acquired during the continuous working conditions of an electromechanical system.
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