“Using truck sensors for road pavement performance investigation” is a research project within TRUSS, an innovative training network funded from the EU under the Horizon 2020 programme. The project aims at assessing the impact of the condition of the road pavement unevenness and macrotexture, on the fuel consumption of trucks to reduce uncertainty in the framework of life-cycle assessment of road pavements. In the past, several studies claimed that a road pavement in poor condition can affect the fuel consumption of road vehicles. However, these conclusions are based just on tests performed on a selection of road segments using a few vehicles and this may not be representative of real conditions. That leaves uncertainty in the topic and it...
The death and injuries of road users is one of the biggest problems that negatively affect the devel...
It is generally known that pavement structures, regardless of their main structural layer, start suf...
This paper presents the application of three Machine Learning techniques to fuel consumption modelli...
“Using truck sensors for road pavement performance investigation” is a research project within TRUSS...
Considering data from 260 articulated trucks, with ~12900 cc Euro 6 engines driving along a motorway...
In Europe, the road network is the most extensive and valuable infrastructure asset. In England, for...
The thesis presents a novel approach for estimating the impact of road roughness and macro-texture o...
Experimental studies have estimated the impact of road surface conditions on vehicle fuel consumptio...
There remains a level of uncertainty concerning the methodological assumptions and parameters to con...
The death and injuries of road users is one of the biggest problems that negatively affect the devel...
Life Cycle Assessment (LCA) is increasingly used to evaluate the impact of all lifecycle phases of r...
Funding Information: Funding: This research was funded by the Academy of Finland (AoF) through the “...
© 2017 Jing RenTruck traffic is a crucial factor that contributes to pavement damage. The urbanizati...
AbstractLong-term pavement performance (LTPP) monitoring has been conducted in Australia for over 20...
This paper presents an assessment of the accuracy of the HDM-4 fuel consumption model calibrated for...
The death and injuries of road users is one of the biggest problems that negatively affect the devel...
It is generally known that pavement structures, regardless of their main structural layer, start suf...
This paper presents the application of three Machine Learning techniques to fuel consumption modelli...
“Using truck sensors for road pavement performance investigation” is a research project within TRUSS...
Considering data from 260 articulated trucks, with ~12900 cc Euro 6 engines driving along a motorway...
In Europe, the road network is the most extensive and valuable infrastructure asset. In England, for...
The thesis presents a novel approach for estimating the impact of road roughness and macro-texture o...
Experimental studies have estimated the impact of road surface conditions on vehicle fuel consumptio...
There remains a level of uncertainty concerning the methodological assumptions and parameters to con...
The death and injuries of road users is one of the biggest problems that negatively affect the devel...
Life Cycle Assessment (LCA) is increasingly used to evaluate the impact of all lifecycle phases of r...
Funding Information: Funding: This research was funded by the Academy of Finland (AoF) through the “...
© 2017 Jing RenTruck traffic is a crucial factor that contributes to pavement damage. The urbanizati...
AbstractLong-term pavement performance (LTPP) monitoring has been conducted in Australia for over 20...
This paper presents an assessment of the accuracy of the HDM-4 fuel consumption model calibrated for...
The death and injuries of road users is one of the biggest problems that negatively affect the devel...
It is generally known that pavement structures, regardless of their main structural layer, start suf...
This paper presents the application of three Machine Learning techniques to fuel consumption modelli...