Neural Network Based Vehicular Location Prediction Model for Cooperative Active Safety Systems
Author(s) -
Murat Dörterler,
Ömer Faruk Bay
Publication year - 2018
Publication title -
promet - trafficandtransportation
Language(s) - English
Resource type - Journals
eISSN - 1848-4069
pISSN - 0353-5320
DOI - 10.7307/ptt.v30i2.2500
Subject(s) - testbed , computation , computer science , artificial neural network , real time computing , active safety , simulation , artificial intelligence , engineering , computer network , automotive engineering , algorithm
Safety systems detect unsafe conditions and provide warnings for travellers to take action and avoid crashes. Estimation of the geographical location of a moving vehicle as to where it will be positioned next with high precision and short computation time is crucial for identifying dangers. To this end, navigational and dynamic data of a vehicle are processed in connection with the data received from neighbouring vehicles and infrastructure in the same vicinity. In this study, a vehicular location prediction model was developed using an artificial neural network for cooperative active safety systems. The model is intended to have a constant, shorter computation time as well as higher accuracy features. The performance of the proposed model was measured with a real-time testbed developed in this study. The results are compared with the performance of similar studies and the proposed model is shown to deliver a better performance than other models.
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