TL;DR
This paper develops a scalable, edge-based anomaly detection system for bridge health monitoring that significantly reduces data transmission and cloud resource use without sacrificing detection accuracy.
Contribution
It introduces a full-stack deployment of anomaly detection algorithms on low-power edge sensors, reducing network traffic and enabling scalable infrastructure.
Findings
Network traffic reduced by approximately 8×10^5 times
Edge computation maintains high anomaly detection accuracy
Cost and resource utilization are significantly minimized
Abstract
Modern real-time Structural Health Monitoring systems can generate a considerable amount of information that must be processed and evaluated for detecting early anomalies and generating prompt warnings and alarms about the civil infrastructure conditions. The current cloud-based solutions cannot scale if the raw data has to be collected from thousands of buildings. This paper presents a full-stack deployment of an efficient and scalable anomaly detection pipeline for SHM systems which does not require sending raw data to the cloud but relies on edge computation. First, we benchmark three algorithmic approaches of anomaly detection, i.e., Principal Component Analysis (PCA), Fully-Connected AutoEncoder (FC-AE), and Convolutional AutoEncoder (C-AE). Then, we deploy them on an edge-sensor, the STM32L4, with limited computing capabilities. Our approach decreases network traffic by…
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