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Publication detail
PETRLÍK, J. FUČÍK, O. SEKANINA, L.
Original Title
Multiobjective Selection of Input Sensors for SVR Applied to Road Traffic Prediction
Type
conference paper
Language
English
Original Abstract
Modern traffic sensors can measure various road traffic variables such as the traffic flow and average speed. However, some measurements can lead to incorrect data which cannot further be used in subsequent processing tasks such as traffic prediction or intelligent control. In this paper, we propose a method selecting a subset of input sensors for a support vector regression (SVR) model which is used for traffic prediction. The method is based on a multimodal and multiobjective NSGA-II algorithm. The multiobjective approach allowed us to find a good trade off between the prediction error and the number of sensors in real-world situations when many traffic data measurements are unavailable.
Keywords
road traffic forecasting, multiobjective feature selection, multiobjective genetic algorithms
Authors
PETRLÍK, J.; FUČÍK, O.; SEKANINA, L.
RIV year
2014
Released
13. 9. 2014
Publisher
Springer Verlag
Location
Heidelberg
ISBN
978-3-319-10761-5
Book
Parallel Problem Solving from Nature - PPSN XIII
Edition
Lecture Notes in Computer Science
Pages from
802
Pages to
811
Pages count
10
BibTex
@inproceedings{BUT111559, author="Jiří {Petrlík} and Otto {Fučík} and Lukáš {Sekanina}", title="Multiobjective Selection of Input Sensors for SVR Applied to Road Traffic Prediction", booktitle="Parallel Problem Solving from Nature - PPSN XIII", year="2014", series="Lecture Notes in Computer Science", volume="8672", pages="802--811", publisher="Springer Verlag", address="Heidelberg", doi="10.1007/978-3-319-10762-2\{_}79", isbn="978-3-319-10761-5" }