English

In-Network Processing Acoustic Data for Anomaly Detection in Smart Factory

Networking and Internet Architecture 2021-10-05 v1

Abstract

Modern manufacturing is now deeply integrating new technologies such as 5G, Internet-of-things (IoT), and cloud/edge computing to shape manufacturing to a new level -- Smart Factory. Autonomic anomaly detection (e.g., malfunctioning machines and hazard situations) in a factory hall is on the list and expects to be realized with massive IoT sensor deployments. In this paper, we consider acoustic data-based anomaly detection, which is widely used in factories because sound information reflects richer internal states while videos cannot; besides, the capital investment of an audio system is more economically friendly. However, a unique challenge of using audio data is that sounds are mixed when collecting thus source data separation is inevitable. A traditional way transfers audio data all to a centralized point for separation. Nevertheless, such a centralized manner (i.e., data transferring and then analyzing) may delay prompt reactions to critical anomalies. We demonstrate that this job can be transformed into an in-network processing scheme and thus further accelerated. Specifically, we propose a progressive processing scheme where data separation jobs are distributed as microservices on intermediate nodes in parallel with data forwarding. Therefore, collected audio data can be separated 43.75% faster with even less total computing resources. This solution is comprehensively evaluated with numerical simulations, compared with benchmark solutions, and results justify its advantages.

Keywords

Cite

@article{arxiv.2110.01381,
  title  = {In-Network Processing Acoustic Data for Anomaly Detection in Smart Factory},
  author = {Huanzhuo Wu and Yunbin Shen and Xun Xiao and Artur Hecker and Frank H. P. Fitzek},
  journal= {arXiv preprint arXiv:2110.01381},
  year   = {2021}
}
R2 v1 2026-06-24T06:36:14.153Z