Robust Automated Driving in Extreme Weather

Acronym

ROADVIEW

Description of the granted funding

Complex environment and traffic conditions have major impact on the safety and operations of Connected and Automated Vehicles (CAVs). Weather affects not only the vehicle performance but also the roadway infrastructure, thereby increases the risk of collision and traffic scenarios variations. So far, most automated vehicles have been primarily trained and tested under optimal weather and road conditions with clear visibility. However, the systems will have to prove that they are equally reliable and accurate under any weather and road condition before they can see widespread acceptance and adoption. ROADVIEW integrates a complex in-vehicle system-of-systems able to perform advanced environment and traffic recognition and prediction and determine the appropriate course of action of a CAV in a real-world environment, including harsh weather conditions. ROADVIEW develops an embedded in-vehicle perception and decision-making system based on enhanced sensing, localisation, and improved object/person classification (including vulnerable road users). ROADVIEW ground-breaking innovations are grounded on a cost-effective multisensory setup, sensor noise modelling and filtering, collaborative perception, testing by simulation-assisted methods and integration and demonstration under different scenarios and weather conditions, reaching TRL 7 by the end of the project. ROADVIEW implements the co-programmed European Partnership “Connected, Cooperative and Automated Mobility” (CCAM) partnership by contributing to the development of a more powerful, fail-safe, resilient and weather-aware technologies. The consortium is a perfect combination of leading universities in the field and research institutes, high-tech SMEs, and strong industry leaders. Beyond their research excellence, the consortium members bring a unique portfolio of testing sites and testing infrastructure, ranging from hardware-testing facilities and rain and wind tunnels to test tracks north of the Arctic Circle.
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Starting year

2022

End year

2026

Granted funding

553 287.5 €
Participant
KONRAD GMBH (DE)
172 134.11 €
Participant
REPLI5 AB (SE)
157 500 €
Participant
FORD OTOMOTIV SANAYI ANONIM SIRKETI (TR)
533 846.25 €
Participant
CANON RESEARCH CENTRE FRANCE (FR)
405 800.25 €
Participant
CENTRE D ETUDES ET D EXPERTISE SUR LES RISQUES L ENVIRONNEMENT LA MOBILITE ET L AMENAGEMENT (FR)
488 461.25 €
Participant
TECHNISCHE HOCHSCHULE INGOLSTADT (DE)
901 250 €
Participant
AVL SOFTWARE AND FUNCTIONS GMBH (DE)
570 077.25 €
Participant
HOGSKOLAN I HALMSTAD (SE)
895 625 €
Coordinator
ACCELOPMENT SCHWEIZ AG (CH)
Participant
STATENS VAG- OCH TRANSPORTFORSKNINGSINSTITUT (SE)
159 125 €
Participant
RISE RESEARCH INSTITUTES OF SWEDEN AB (SE)
430 181.25 €
Participant
THE UNIVERSITY OF WARWICK (UK)
Participant

Amount granted

6 652 916 €

Funder

European Union

Funding instrument

HORIZON Innovation Actions

Framework programme

Horizon Europe (HORIZON)

Call

Programme part
Climate, Energy and Mobility (11715)
Clean, Safe and Accessible Transport and Mobility (11722)
Smart Mobility (11723)
Topic
More powerful and reliable on-board perception and decision-making technologies addressing complex environmental conditions (CCAM Partnership) (HORIZON-CL5-2021-D6-01-01)
Call ID
HORIZON-CL5-2021-D6-01

Other information

Funding decision number

101069576

Identified topics

autonomous systems, automated driving