Time series anomaly detection for heavy-duty vehicles

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Title Time series anomaly detection for heavy-duty vehicles
Summary Detecting anomalies in multivariate time series data collected from vehicle operations
Keywords
TimeFrame Fall 2023
References Ruiz, C., Menasalvas, E., & Spiliopoulou, M. (2009). C-denstream: Using domain knowledge on a data stream. In Discovery Science: 12th International Conference, DS 2009, Porto, Portugal, October 3-5, 2009 12 (pp. 287-301). Springer Berlin Heidelberg.

Cao, F., Estert, M., Qian, W., & Zhou, A. (2006, April). Density-based clustering over an evolving data stream with noise. In Proceedings of the 2006 SIAM international conference on data mining (pp. 328-339). Society for industrial and applied mathematics.

Prerequisites
Author
Supervisor Yuantao Fan
Level
Status Internal Draft


This project will explore and develop algorithms to detect anomalies in multi-variate time series data, collected from heavy-duty vehicles. The idea is to identify different operating modes using stream clustering algorithms and discover anomalies in each cluster, i.e. combing DenStream and COSMO. The goal is to discover anomalous events in advance to enhance vehicle operation safety.