Title
Multi-Sensor Information Fusion for Optimizing Electric Bicycle Routes Using a Swarm Intelligence Algorithm.
Abstract
The use of electric bikes (e-bikes) has grown in popularity, especially in large cities where overcrowding and traffic congestion are common. This paper proposes an intelligent engine management system for e-bikes which uses the information collected from sensors to optimize battery energy and time. The intelligent engine management system consists of a built-in network of sensors in the e-bike, which is used for multi-sensor data fusion; the collected data is analysed and fused and on the basis of this information the system can provide the user with optimal and personalized assistance. The user is given recommendations related to battery consumption, sensors, and other parameters associated with the route travelled, such as duration, speed, or variation in altitude. To provide a user with these recommendations, artificial neural networks are used to estimate speed and consumption for each of the segments of a route. These estimates are incorporated into evolutionary algorithms in order to make the optimizations. A comparative analysis of the results obtained has been conducted for when routes were travelled with and without the optimization system. From the experiments, it is evident that the use of an engine management system results in significant energy and time savings. Moreover, user satisfaction increases as the level of assistance adapts to user behavior and the characteristics of the route.
Year
DOI
Venue
2017
10.3390/s17112501
SENSORS
Keywords
Field
DocType
intelligent transport systems,information fusion,vehicular sensor network,energy efficiency
Evolutionary algorithm,Simulation,Efficient energy use,Swarm intelligence,Real-time computing,Electronic engineering,Sensor fusion,Intelligent transportation system,Engineering,Engine control unit,Artificial neural network,Traffic congestion
Journal
Volume
Issue
Citations 
17
11.0
5
PageRank 
References 
Authors
0.66
9
4
Name
Order
Citations
PageRank
Daniel Hernández de La Iglesia191.88
Gabriel Villarrubia218324.85
Juan Francisco de Paz339552.24
Javier Bajo41451118.96