Anomaly Detection on Truck Histograms

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Title Anomaly Detection on Truck Histograms
Summary Anomaly Detection on Truck Histograms
Keywords
TimeFrame Winter 2018, Spring 2019
References Learning Low-Dimensional Representation of Bivariate Histogram Data

https://ieeexplore.ieee.org/abstract/document/8464276

Prerequisites Artificial Intelligence and Learning Systems courses; good knowledge of machine learning and neural networks; python programming skills for implementing machine learning algorithms
Author
Supervisor Sepideh Pashami, Peter Berck
Level Master
Status Open


There are many bivariate histograms collected on-board of Volvo Trucks which accumulate information about the operation of the vehicles through time. Measuring the number of hours that a vehicle has a certain speed versus torque could be one example of these histograms.

Early detection of anomalous behaviour could be important for improving safety and uptime. Anomalies behaviour can be caused by wear, failure or malfunctions of components in a vehicle. It can also be caused by usage pattern through life time of a vehicle.

This thesis will investigate if a vehicle has been used as usual or in anomalous way by analysing bivariate histogram data. The comparison can be done based on history of an individual vehicle or group of vehicles.