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Träfflista för sökning "WFRF:(Candeo Stefano) "

Search: WFRF:(Candeo Stefano)

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1.
  • Rahimi, Mostafa, et al. (author)
  • A novel approach for brake emission estimation based on traffic microsimulation, vehicle system dynamics, and machine learning modeling
  • 2023
  • In: Atmospheric Pollution Research. - 1309-1042. ; 14:10
  • Journal article (peer-reviewed)abstract
    • Brake wear is known as the primary source of traffic-related non-exhaust particle generation. Its generation rate is influenced by parameters at different levels: subsystem (type of brakes, pads, materials, etc.), system (vehicles' dynamics, driving style etc.) and suprasystem (road geometries, traffic parameters, etc.). At the subsystem level, we proposed a neural network brake emission modeling, trained and validated through emission data collected from a reduced-scale dynamometer. At the system level, a model of a car dynamics was developed to calculate the wheels’ brake torques and angular velocities. At the suprasystem level, the traffic behavior in a sensitive urban area was characterized experimentally and simulated in a traffic microsimulation software. The vehicle traffic-based records were used to calculate the vehicle dynamic quantities, converted into brake emission through the neural network. To examine the overall traffic impacts on brake emission, the total particle number (PN) and total particle mass were estimated regarding the route choice in the sensitive area and in the whole transportation network. The findings of this study showed significant generation rate of brake emissions (in terms of mass and number) around congested areas (in the order of 10e9 #/s). The brake emission estimation in a real area provides fundamental information to the decision-makers to better insight into the rate of non-exhaust emissions generation.
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2.
  • Varriale, Francesco, et al. (author)
  • A Brake System Coefficient of Friction Estimation Using 3D Friction Maps
  • 2022
  • In: Lubricants. - : MDPI AG. - 2075-4442. ; 10:7
  • Journal article (peer-reviewed)abstract
    • The coefficient of friction (COF) is one of the core factors in the evaluation of brake system performance. It is challenging to predict the COF, since it is strongly influenced by several parameters such as contact pressure (p), slip rate (v) and temperature (T) that depend on the driving conditions. There is a need for better models to describe how the brake friction varies under different driving conditions. The purpose of this research is to study the possibility of using 3D friction pvTmaps to estimate the COF of a disc brake system under different driving conditions. The 3D friction pvT-maps are created by filtering results of material tests conducted in a mini-dyno inertia bench. The COF measured under different driving cycles in an inertia dyno bench with the full brake system are compared with the COF estimated by the friction maps coming from the reduced scale dyno bench to investigate the validity of the simulation approach. This study shows that mini dyno bench is suitable to obtain a tribological characterization of the friction pad–disc rotor contact pair and is able to replace the full inertia dyno bench to investigate the brake system performance.
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  • Result 1-2 of 2
Type of publication
journal article (2)
Type of content
peer-reviewed (2)
Author/Editor
Wahlström, Jens (2)
Candeo, Stefano (2)
Da Lio, Mauro (1)
Biral, Francesco (1)
Lyu, Yezhe (1)
Rahimi, Mostafa (1)
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Bortoluzzi, Daniele (1)
Riva, Gabriele (1)
Varriale, Francesco (1)
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University
Lund University (2)
Language
English (2)
Research subject (UKÄ/SCB)
Engineering and Technology (2)

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