摘要
In the quest to enhance IoT device performance and expand cross-domain system functionalities, pinpointing anomalies in multi-source time series data becomes crucial. Traditional deep learning approaches often overlook the complex patterns in data. Our innovative method integrates time series decomposition into anomaly detection, thus revealing intrinsic periodicities vital for advanced engine and powertrain modeling. By employing a joint loss function, our approach not only improves anomaly detection accuracy and stability but also aligns with essential aspects of interconnected and automated vehicle control. Our method, proven superior through extensive comparison across datasets and algorithms, significantly advances engine and powertrain supervision, management, diagnostics, and modeling, showcasing a notable contribution to these fields.
| 源语言 | 英语 |
|---|---|
| 页(从-至) | 356-360 |
| 页数 | 5 |
| 期刊 | IFAC-PapersOnLine |
| 卷 | 58 |
| 期 | 29 |
| DOI | |
| 出版状态 | 已出版 - 1 11月 2024 |
| 活动 | 7th IFAC Conference on Engine and Powertrain Control, Simulation and Modeling, E-COSM 2024 - Dalian, 中国 期限: 30 10月 2024 → 1 11月 2024 |
学术指纹
探究 'Autocorrelation-based Signal Reconstruction for Multi-source time series Anomaly Detection' 的科研主题。它们共同构成独一无二的指纹。引用此
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