Multi-Objective Genetic Algorithm for Optimizing an ELM-Based Driver Distraction Detection System

Multi-Objective Genetic Algorithm for Optimizing an ELM-Based Driver Distraction Detection System

Egileak:
Javier Echanobe;Koldo Basterretxea;Inés del Campo;Victoria Martínez;Naiara Vidal
Non argitaratua:
IEEE Transactions on Intelligent Transportation Systems
Liburukia:
(Early Access Article)
Hasierako orria - Amaierako orria:
11946 - 11959
ISBN/ISSN:
1524-9050
DOI:
10.1109/TITS.2021.3108851

"An eco-driving approach for ride comfort improvement"

An eco-driving approach for ride comfort improvement

Egileak:
O. Mata-Carballeira, I. del Campo, E. Asua
Urtea:
2022
Non argitaratua:
IET INTELLIGENT TRANSPORT SYSTEMS
Liburukia:
16(2)
Hasierako orria - Amaierako orria:
186 - 205

Argitalpenak

An Intelligent System-on-a-Chip for a Real-Time Assessment of Fuel Consumption to Promote Eco-Driving

Egileak:
Óscar Mata-Carballeira, Mikel Díaz-Rodríguez, Inés del Campo, Victoria Martínez
Urtea:
2020
Non argitaratua:
Applied Sciences
Eragin-faktorea:
2474
Kuartila:
Q2
Argitaratze hiria edo/eta Argitaletxea:
Basilea, Suiza
Liburukia:
10(18)
Hasierako orria - Amaierako orria:
6549 - 6549
DOI:
https://doi.org/10.3390/app10186549
Deskribapena:

Pollution that originates from automobiles is a concern in the current world, not only because of global warming, but also due to the harmful effects on people’s health and lives. Despite regulations on exhaust gas emissions being applied, minimizing unsuitable driving habits that cause elevated fuel consumption and emissions would achieve further reductions. For that reason, this work proposes a self-organized map (SOM)-based intelligent system in order to provide drivers with eco-driving-intended driving style (DS) recommendations. The development of the DS advisor uses driving data from the Uyanik instrumented car. The system classifies drivers regarding the underlying causes of non-optimal DSs from the eco-driving viewpoint. When compared with other solutions, the main advantage of this approach is the personalization of the recommendations that are provided to motorists, comprising the handling of the pedals and the gearbox, with potential improvements in both fuel consumption and emissions ranging from the 9.5% to the 31.5%, or even higher for drivers that are strongly engaged with the system. It was successfully implemented using a field-programmable gate array (FPGA) device of the Xilinx ZynQ programmable system-on-a-chip (PSoC) family. This SOM-based system allows for real-time implementation, state-of-the-art timing performances, and low power consumption, which are suitable for developing advanced driving assistance systems (ADASs).

Informazio gehigarria