Hybrid Electric Vehicle Emissions Monitoring and Estimation using Artificial Neural Networks: Technical Note

Sujatha, K. and Karthikeyan, V. and Balaji, V. and Bhavani, N.P.G. and Srividhya, V. and Krishnakumar, R. and Sridhar, R. (2019) Hybrid Electric Vehicle Emissions Monitoring and Estimation using Artificial Neural Networks: Technical Note. International Journal of Vehicle Structures and Systems, 11 (3). ISSN 0975-3060

Full text not available from this repository.

Abstract

Hybrid Electric Vehicle Emissions Monitoring and Estimation using Artificial Neural Networks: Technical Note K. Sujatha V. Karthikeyan V. Balaji N.P.G. Bhavani V. Srividhya R. Krishnakumar R. Sridhar

Power is utilized as the prime fuel for hybrid and module electric vehicles in order to build the productivity of commercial vehicles. This paper forecasts the emission factors utilizing discrete Fourier transform, artificial neural networks and hybridization of back propagation algorithm. The DFT facilitates the extraction of the performance indicators which are otherwise called the features. The coefficients of the power spectrum denote the performance indicators. The ANN learns the pattern for emissions from HEVs using these performance indicators. This ANN based strategy offers an optimal control action to detect and reduce the exhaust gas emissions which are hazardous. These vehicles are provided with automated highway traffic Jam assist. Hence the forecast of these emissions offers increased efficiency of 90% to 100% thereby ensuring optimal operating condition for the hybrid vehicles.
12 03 2019 10.4273/ijvss.11.3.06 https://yanthrika.com/eja/index.php/ijvss/article/view/1265 https://yanthrika.com/eja/index.php/ijvss/article/download/1265/614 https://yanthrika.com/eja/index.php/ijvss/article/download/1265/614

Item Type: Article
Subjects: Electrical and Electronics Engineering > Electrical Power and Machines
Divisions: Electrical and Electronics Engineering
Depositing User: Mr IR Admin
Date Deposited: 06 Oct 2024 06:46
Last Modified: 06 Oct 2024 06:46
URI: https://ir.vistas.ac.in/id/eprint/8837

Actions (login required)

View Item
View Item