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Fast Re-Trainable Attention Autoencoder for Liquid Sensor Anomaly Detection at the Edge

Fast Re-Trainable Attention Autoencoder for Liquid Sensor Anomaly Detection at the Edge

来源:Arxiv_logoArxiv
英文摘要

A lightweight, edge-deployable pipeline is proposed for detecting sensor anomalies in chemistry and biology laboratories. A custom PCB captures seven sensor channels and streams them over the local network. An Attention-based One-Class Autoencoder reaches a usable state after training on only thirty minutes of normal data. Despite the small data set, the model already attains an F1 score of 0.72, a precision of 0.89, and a recall of 0.61 when tested on synthetic micro-anomalies. The trained network is converted into a TensorFlow-Lite binary of about 31 kB and runs on an Advantech ARK-1221L, a fan-less x86 edge device without AVX instructions; end-to-end inference latency stays below two seconds. The entire collect-train-deploy workflow finishes within one hour, which demonstrates that the pipeline adapts quickly whenever a new liquid or sensor is introduced.

Seongyun Choi

电子元件、电子组件电子电路电子技术应用

Seongyun Choi.Fast Re-Trainable Attention Autoencoder for Liquid Sensor Anomaly Detection at the Edge[EB/OL].(2025-07-05)[2025-07-16].https://arxiv.org/abs/2507.03995.点此复制

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