Anomaly Detection in Electric Powertrain System Software Behaviour

dc.contributor.authorVyas, A.
dc.contributor.authorGhorpade, V.
dc.contributor.authorKamble, S.
dc.contributor.authorJohnson, P.S.
dc.contributor.authorKamath, A.
dc.contributor.authorRawat, K.
dc.date.accessioned2026-02-06T06:34:38Z
dc.date.issued2023
dc.description.abstractA software-in-loop (SIL) testing is a method of early testing of control software of a car in virtual environment. A system level testing is carried out on regular basis and it is important to see, if system is behaving as expected or unexpected. For unexpected behaviors, which test engineers not easily notice, modern techniques such as machine learning can give an advantage. This paper presents an application of machine learning algorithms that helps in identifying the abnormal patterns in time series data generated from electric powertrain system testing done in SIL environment for a Mercedes Benz Electric Car. Output of the SIL testing, results in time series data that is a collection of observations that are ordered chronologically and can be used to analyze trends, patterns, and changes over time. Anomaly detection in time series data is a process in machine learning that identifies data points, events, and observations that deviate from a dataset's normal behavior. By monitoring the expected and unexpected behavior of the electric powertrain system, anomaly detection can be a valuable tool for identifying potential issues. This study aims at coming up with an efficient process for anomaly detection in SIL. In order to get this process, various anomaly detection techniques are compared to detect a defined anomaly in time series data. Data pre-processing methods are also discussed before training the model. At the end, we conclude a best-fit method for identified anomaly. With finally identified method, a model was trained and used further in application. © 2023 IEEE.
dc.identifier.citation2023 14th International Conference on Computing Communication and Networking Technologies, ICCCNT 2023, 2023, Vol., , p. -
dc.identifier.urihttps://doi.org/10.1109/ICCCNT56998.2023.10306884
dc.identifier.urihttps://idr.nitk.ac.in/handle/123456789/29366
dc.publisherInstitute of Electrical and Electronics Engineers Inc.
dc.subjectAnomaly Detection
dc.subjectArtificial Intelligence
dc.subjectDTW Algorithm
dc.subjectElectric Powertrain
dc.subjectMachine Learning Algorithms
dc.subjectSoftware in Loop
dc.subjectTime Series Data
dc.titleAnomaly Detection in Electric Powertrain System Software Behaviour

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