Road Surface Estimation Using Machine Learning

dc.contributor.authorMao, Brian
dc.date.accessioned2023-01-19T16:02:07Z
dc.date.available2023-01-19T16:02:07Z
dc.date.issued2023-01-19
dc.date.submitted2023-01-18
dc.description.abstractVehicle motion control systems are present on commercial vehicles to improve safety and driving comfort. Many of these control systems could be further improved given accurate online information about the road condition to accommodate for driving under poor weather conditions such as icy roads or heavy rain. However, sensors for direct friction measurement are not present on commercial vehicles due to production costs. Hence, it is beneficial to incorporate an online estimation scheme for road surface classification. This thesis focuses on investigating two fundamentally different machine learning-based methods for road surface classification. The first is an artificial neural network that provides a global function approximation of the underlying dynamics. In particular, Long Short-Term Memory (LSTM) units are used to capture temporal relationships within the training data and to mitigate the vanishing gradient problem. The second is an instance-based learning method referred to as Nadaraya-Watson Kernel Regression, where local function approximations are generated around the input data. Results indicated that both machine learning-based methods were able to classify road conditions to a reasonable degree of accuracy after tuning associated hyperparameters. However, each method has different benefits and drawbacks. The LSTM network model was capable of making accurate predictions on inputs drastically different from data points within the training data set, was generally more accurate on predictions associated with new driving maneuvers, required less storage for implementation, and had relatively short prediction times. Conversely, the Nadaraya-Watson Kernel Regression model was generally more accurate at making predictions on inputs that were very similar to data points within the training data set, did not require any training time to incorporate newly collected data into the model, and generated predictions that were more easily explainable.en
dc.identifier.urihttp://hdl.handle.net/10012/19079
dc.language.isoenen
dc.pendingfalse
dc.publisherUniversity of Waterlooen
dc.subjectmachine learningen
dc.subjectestimationen
dc.subjectclassificationen
dc.titleRoad Surface Estimation Using Machine Learningen
dc.typeMaster Thesisen
uws-etd.degreeMaster of Mathematicsen
uws-etd.degree.departmentApplied Mathematicsen
uws-etd.degree.disciplineApplied Mathematicsen
uws-etd.degree.grantorUniversity of Waterlooen
uws-etd.embargo.terms0en
uws.contributor.advisorMorris, Kirsten
uws.contributor.advisorKhajepour, Amir
uws.contributor.affiliation1Faculty of Mathematicsen
uws.peerReviewStatusUnrevieweden
uws.published.cityWaterlooen
uws.published.countryCanadaen
uws.published.provinceOntarioen
uws.scholarLevelGraduateen
uws.typeOfResourceTexten

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