• 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.

Convolutions on graphs for learning vehicle crash behaviour

Abstract
Convolutional Neural Networks (CNN) have shown successful results in the recent years, especially within the area of image analysis. The idea of learning to predict the result of a crash simulation using machine learning rose from the analogy between images and Finite Element models (FE-models) used in crash simulations. However, the data used when training a machine learning model using CNN needs to be structured in a consistent way, as images are. FE-models however are represented as graphs and do not have the grid-like structure that images have and can therefore not be directly processed using CNN. The purpose of this project was to investigate the possibility to transform FE-models into image-like embeddings and to use CNN to explore these embeddings. Two graph convolutional methods were investigated for the creation of the embedding. The first one was the Neural Graph Fingerprint (NGF) method suggested in the literature for the original purpose of parsing molecular graphs. The second one was developed during this project, called the FEMBEDDING method, and was to parts inspired by NGF and the Graph Neural Network model that also has been suggested in literature. Three datasets of crash simulations with varying geometrical complexity were developed during the project. It is shown here that embeddings created by using both methods can successfully be used to train a CNN and predict the outcome of the test sets with a good level of accuracy already with only randomly initialized embedding weights. The FEMBEDDING method made the embeddings richer in information and performed consistently better than the NGF method. For the more geometrical complex dataset it is shown that the value of the FEMBEDDING embeddings increases with an increased neighbourhood depth taken into account while parsing the the FE-graphs.
Degree
Student essay
URI
http://hdl.handle.net/2077/69984
Collections
  • Masteruppsatser
View/Open
gupea_2077_69984_1.pdf (3.557Mb)
Date
2021-11-09
Author
Adin, Daniel
Keywords
Computer
science
computer science
engineering
graph
convolutions
inite element method
project
thesis
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