Title
Fuel Efficient Routes Using Vehicular Sensor Data.
Abstract
This paper presents an application of Deep Neural Networks to vehicular sensor data. The first goal of this work is to produce artificial readings for two sensors that have missing values: CO2 and fuel consumption. A neural network was trained to produce these values, and it is able to capture the rough behavior of these two sensors, although it misses minor variations. To train a Multilayer Perceptron (MLP), we used data from the enviroCar project, which collects sensor readings from volunteers around the world. With the dataset containing values generated by the MLP, we investigated the effect of these observations in tracing routes focused on fuel efficiency over a graph based on the traffic network of Monchengladbach. Results show that the imputed values increase the estimated fuel consumption in an average of 15% and CO2 in 17& for all routes.
Year
DOI
Venue
2018
10.1145/3265863.3265872
MobiCom: Mobile Computing and Networking
Keywords
Field
DocType
Virtual Sensors, Vehicular Sensors, Deep Learning
Graph,Computer science,Real-time computing,Multilayer perceptron,Traffic network,Artificial intelligence,Missing data,Deep learning,Fuel efficiency,Artificial neural network,Tracing,Distributed computing
Conference
ISBN
Citations 
PageRank 
978-1-4503-5962-7
1
0.35
References 
Authors
5
4
Name
Order
Citations
PageRank
Andre B. Campolina151.20
Azzedine Boukerche24301418.60
Max do Val Machado3414.08
Antonio Loureiro42406197.77