SOM | Statistical modeling for Optimization Mobility

Summary
This project will commercialize software and internet services for improving mobility-related online services such a ride sharing, navigation systems and crowdsourcing. In particular, we will commercialize an app for mobile devices which makes predictions on the future travel intentions of the user based on the rich data available on the device through the use of highly efficient predictive modeling techniques. Based on these predictions, the mobile device can communicate in the background on ride sharing, crowdsourcing and congestion avoidance. Three key competitive advantages are (1) the privacy one gets in contrast with most cloud-based platforms where all data is centrally collected, (2) the saving of computational costs by distributing computations to devices having much more detailed information than what one can centrally collect, and (3) the fact that most services work with current traffic information, while we work with future travel intentions, allowing for planning better ahead.
The commercialization of this technology will be realized by improving the existing network of potential industrial partners and end-users, demonstrating the technology for key services, exploring alternative commercialization strategies, and preparing a team to carry on the exploitation.
When successful, this project will have lead to significant economic and societal benefits in improving the efficiency of crowdsourcing and ride sharing, increasing the popularity of ride sharing and reducing congestions.
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More information & hyperlinks
Web resources: https://cordis.europa.eu/project/id/713626
Start date: 01-10-2016
End date: 31-03-2018
Total budget - Public funding: 149 109,00 Euro - 149 109,00 Euro
Cordis data

Original description

This project will commercialize software and internet services for improving mobility-related online services such a ride sharing, navigation systems and crowdsourcing. In particular, we will commercialize an app for mobile devices which makes predictions on the future travel intentions of the user based on the rich data available on the device through the use of highly efficient predictive modeling techniques. Based on these predictions, the mobile device can communicate in the background on ride sharing, crowdsourcing and congestion avoidance. Three key competitive advantages are (1) the privacy one gets in contrast with most cloud-based platforms where all data is centrally collected, (2) the saving of computational costs by distributing computations to devices having much more detailed information than what one can centrally collect, and (3) the fact that most services work with current traffic information, while we work with future travel intentions, allowing for planning better ahead.
The commercialization of this technology will be realized by improving the existing network of potential industrial partners and end-users, demonstrating the technology for key services, exploring alternative commercialization strategies, and preparing a team to carry on the exploitation.
When successful, this project will have lead to significant economic and societal benefits in improving the efficiency of crowdsourcing and ride sharing, increasing the popularity of ride sharing and reducing congestions.

Status

CLOSED

Call topic

ERC-PoC-2015

Update Date

27-04-2024
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Horizon 2020
H2020-EU.1. EXCELLENT SCIENCE
H2020-EU.1.1. EXCELLENT SCIENCE - European Research Council (ERC)
ERC-2015
ERC-2015-PoC
ERC-PoC-2015 ERC Proof of Concept Grant