TY - GEN
T1 - A Novel Model Driven Approach for Trajectory-Based Technique of Autonomous Vehicle Route Prediction
AU - Nawaz, Ali
AU - Rehman, Attique Ur
AU - Mohammad Ali, Tahir
AU - Azam, Farooque
AU - Rasheed, Yawar
AU - Anwar, Muhammad Waseem
N1 - Publisher Copyright:
© 2021 IEEE.
PY - 2021
Y1 - 2021
N2 - The autonomous vehicle is one of the significant efforts toward the luxurious life. The process involves several technical difficulties like synchronized communication between different sensors, efficient response time etc. In this regard, route prediction is one of the critical tasks which requires the extensive knowledge of complex concepts due to its real time nature. Although there exist several studies in this area, most of them are focusing on accuracy while ignoring the importance of simplicity. Therefore, the research community is likely to be benefited through a route prediction approach that focuses on simplicity while preserving good level of accuracy. For this purpose, a model-driven approach is proposed in this paper for automating the complex process of trajectory-based route prediction of a fully autonomous vehicle. Particularly, a metamodel which is M2 level Ecore Model of standard meta-object facility is proposed for trajectory- based route prediction. Subsequently, a complete modeling tool is developed using Sirius platform. Finally, Model-to-Text transformations are applied to generate low level Java implementations with simplicity. The validation is performed through real world case study where autonomous vehicle gain data from different sensors and store that data in the cloud for route prediction by applying an autonomous multiple model algorithm. The results are highly encouraging for the efficient route prediction in autonomous vehicle with simplicity.
AB - The autonomous vehicle is one of the significant efforts toward the luxurious life. The process involves several technical difficulties like synchronized communication between different sensors, efficient response time etc. In this regard, route prediction is one of the critical tasks which requires the extensive knowledge of complex concepts due to its real time nature. Although there exist several studies in this area, most of them are focusing on accuracy while ignoring the importance of simplicity. Therefore, the research community is likely to be benefited through a route prediction approach that focuses on simplicity while preserving good level of accuracy. For this purpose, a model-driven approach is proposed in this paper for automating the complex process of trajectory-based route prediction of a fully autonomous vehicle. Particularly, a metamodel which is M2 level Ecore Model of standard meta-object facility is proposed for trajectory- based route prediction. Subsequently, a complete modeling tool is developed using Sirius platform. Finally, Model-to-Text transformations are applied to generate low level Java implementations with simplicity. The validation is performed through real world case study where autonomous vehicle gain data from different sensors and store that data in the cloud for route prediction by applying an autonomous multiple model algorithm. The results are highly encouraging for the efficient route prediction in autonomous vehicle with simplicity.
KW - Autonomous Vehicle
KW - Intelligent Transportation
KW - Metamodel
KW - Model-Driven Software Engineering
KW - Route Prediction
KW - component
UR - http://www.scopus.com/inward/record.url?scp=85126738325&partnerID=8YFLogxK
U2 - 10.1109/ICET54505.2021.9689848
DO - 10.1109/ICET54505.2021.9689848
M3 - Conference contribution
AN - SCOPUS:85126738325
T3 - ICET 2021 - 16th International Conference on Emerging Technologies 2021, Proceedings
BT - ICET 2021 - 16th International Conference on Emerging Technologies 2021, Proceedings
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 16th International Conference on Emerging Technologies, ICET 2021
Y2 - 22 December 2021 through 23 December 2021
ER -