• English
    • svenska
  • English 
    • English
    • svenska
  • Login
View Item 
  •   Home
  • Student essays / Studentuppsatser
  • Department of Computer Science and Engineering / Institutionen för data- och informationsteknik
  • Masteruppsatser
  • View Item
  •   Home
  • Student essays / Studentuppsatser
  • Department of Computer Science and Engineering / Institutionen för data- och informationsteknik
  • Masteruppsatser
  • View Item
JavaScript is disabled for your browser. Some features of this site may not work without it.

Driver Behavior Classification in Electric Vehicles

Abstract
Studies have shown that driving style affects the energy consumption of electric vehicles, with aggressive driving consuming up to 30% more energy than moderate driving. Therefore, modeling of aggressive driving can provide a more precise estimation of the energy consumption and the remaining range of a vehicle. This study proposes driver behavior classification on vehicle-based measurements through several deep learning models: convolutional neural networks, long short-term memory recurrent neural networks, and self-attention models. The networks have been trained on two naturalistic driving datasets: a labeled dataset generated from a test vehicle on-site at Volvo Cars and unlabeled data collected from co-development Volvo Cars vehicles. The latter dataset has been annotated following rules and driving parameters quantifying the aggressiveness of driving style. The implemented models achieve promising results on both datasets, with the one-dimensional convolutional neural network yielding the highest test accuracy throughout experiments. One of our contributions is to use self-attention and deep convolutional neural networks with joint recurrence plots, which are appropriate for longer sequences because they bypass sequential training. The study also explores several active learning techniques such as uncertainty sampling, query by committee, active deep dropout, gradual pseudo labeling, and active learning for time-series data. These techniques showed variable results, with uncertainty sampling performing consistently better than random sampling. This study confirms the effectiveness of machine learning models in classifying driver behavior. It also shows that active learning can considerably decrease the need for training data.
Degree
Student essay
URI
http://hdl.handle.net/2077/69081
Collections
  • Masteruppsatser
View/Open
gupea_2077_69081_1.pdf (3.185Mb)
Date
2021-07-06
Author
COMUNI, FEDERICA
MÉSZÁROS, CHRISTOPHER
Keywords
Aggressive driver behavior
Driver behavior classification
Self-attention
Recurrence plots
active learning
Active deep dropout
Gradual pseudo labeling
Language
eng
Metadata
Show full item record

DSpace software copyright © 2002-2016  DuraSpace
Contact Us | Send Feedback
Theme by 
Atmire NV
 

 

Browse

All of DSpaceCommunities & CollectionsBy Issue DateAuthorsTitlesSubjectsThis CollectionBy Issue DateAuthorsTitlesSubjects

My Account

LoginRegister

DSpace software copyright © 2002-2016  DuraSpace
Contact Us | Send Feedback
Theme by 
Atmire NV