Authors
Chee Yau Kee, Li-Pei Wong, Ahamad Tajudin Khader, Fadratul Hafinaz Hassan
Publication date
2017/9/1
Conference
2017 2nd IEEE International Conference on Intelligent Transportation Engineering (ICITE)
Pages
150-154
Publisher
IEEE
Description
The arrival times of buses are often hard to predict due to variation of real time traffic conditions, deployment schedules and traffic incidents. The provision of timely arrival time information is thus vital for passengers to minimize their waiting time and improve riders' confidence in the public transportation system, directly promoting more ridership. Multiple buses are commonly observed to arrive at a bus stop every hour. In this research, the prediction of estimated time of arrival (ETA) of buses is translated into a multi-label classification problem. Using buses historical global positioning system (GPS) arrival time, neural network models (ANN) are shown to be reliable solutions for the problem, and ensemble of neural networks are explored for more relevant output. The experimental results demonstrate that 77-78% of the time, ANN models are able to accurately predict arrival time of buses. The neural network models …
Total citations
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Scholar articles
CY Kee, LP Wong, AT Khader, FH Hassan - 2017 2nd IEEE International Conference on Intelligent …, 2017