Global Feature Enhancing and Fusion Framework for Strain Gauge Time Series Classification
Xu Zhang, Peng Wang, Chen Wang, Zhe Xu, Xiaohua Nie, Wei Wang

TL;DR
This paper introduces a hypergraph-based framework that enhances and fuses global and local features for improved strain gauge time series classification, addressing limitations of CNNs in capturing global information.
Contribution
It proposes a novel global feature learning and fusion framework using hypergraphs to improve time series classification accuracy in SGS data.
Findings
Outperforms existing methods on SGS and UCR datasets.
Shows better generalization for unseen data.
Enhances recognition accuracy through global feature fusion.
Abstract
Strain Gauge Status (SGS) time series recognition is crucial in the field of intelligent manufacturing based on the Internet of Things, as accurate identification helps timely detection of failed mechanical components, avoiding accidents. The loading and unloading sequences generated by strain gauges can be identified through time series classification (TSC) algorithms. Recently, deep learning models, e.g., convolutional neural networks (CNNs) have shown remarkable success in the TSC task, as they can extract discriminative local features from the subsequences to identify the time series. However, we observe that only the local features may not be sufficient for expressing the time series, especially when the local sub-sequences between different time series are very similar, e.g., SGS data of aircraft wings in static strength experiments. Nevertheless, CNNs suffer from the limitation…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Machine Fault Diagnosis Techniques · Anomaly Detection Techniques and Applications
