资源受限边缘设备中电机异常检测的高性价比自编码器设计

Yeonghyeon Park, M. Kim
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引用次数: 2

摘要

在工业、交通等各个领域,电动机故障引起系统瘫痪。因此,持续管理是必要的。最近,为了减少人力消耗,采用了自动化异常检测系统。此外,为了提高成本效益和监控稳定性,在系统构建中考虑了边缘设备计算。为了实现边缘计算,考虑到有限的资源,我们需要用低复杂度的异常检测模型实现高性能。在本文中,我们从两个角度对各种异常检测体系结构进行了实证评估,以设计一个具有成本效益的模型。一个观点是特征聚合方法,另一个观点是是否采用瓶颈结构来构建自编码器。采用线性特征聚合和无瓶颈结构化自编码器,提高了算法的有效性和效率。结合以上两种方法,计算成本在10k中降低2倍,而异常检测性能的平均损失仅为1.972%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Design of Cost-Effective Auto-Encoder for Electric Motor Anomaly Detection in Resource Constrained Edge Device
The electric motor failure triggers the system paralyzation for various fields such as industry or transportation. Thus, continuous management is necessary. Recently, the automated anomaly detection system is adopted for reducing human exhaustion. Moreover, for improving the cost-effectiveness and monitoring stability, edge device computing is considered on system construction. For enabling edge computing, we need to achieve high performance with a low-complex anomaly detection model, considering the constrained resource. In this paper, we empirically evaluate various anomaly detection architectures from two perspectives for designing a cost-effective model. One of the perspectives is the feature aggregation method and the other one is whether to adopt the bottleneck structure or not for constructing autoencoder. The effectiveness and efficiency are improved by adopting linear feature aggregation and non-bottleneck structured auto-encoder. By combining the above two methods, the computational cost is reduced by 2 in 10k, while losing only 1.972% of the averaged anomaly detection performance.
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