IIT Mandi researchers develop algorithms to predict functioning of internal combustion engines in vehicles

IIT Mandi researchers develop algorithms to predict functioning of internal combustion engines in vehicles

2 mins read25 Views Comment FOLLOW US
Anupama
Anupama Mehra
Assistant Manager – Content
New Delhi, Updated on Apr 5, 2021 16:25 IST

The application of the algorithm can be extended to determine other variables such as the state-of-charge (SoC) in battery-operated vehicles in real-time as well.

A team of researchers at the Indian Institute of Technology (IIT) Mandi has come up with algorithms to predict the functioning of internal combustion (IC) engines in vehicles so their operation can be optimised for maximum fuel efficiency and minimum emissions.

The research in collaboration with Robert Bosch Engineering and Business Solutions Private Limited, Bengaluru, has also been published in the International Journal of Systems Science, Taylor & Francis. The researchers at IIT Mandi have claimed that the team will help in on-board monitoring and control for IC engines.

The application of the algorithm can be extended to determine other variables such as the state-of-charge (SoC) in battery-operated vehicles in real-time as well. According to the team, IC engines power about 99.8 of global transport. In doing so, it is responsible for about 10 per cent of the world's greenhouse gas emissions. While alternatives, including battery electric vehicles and other fuels like biofuels and hydrogen, are slowly gaining ground, as of now they are often used in conjunction with conventional IC engines.

"At any point in time, the working condition of the engine and other devices and systems inside the vehicle should be precisely known. For this, we need information on several important engine parameters," said Tushar Jain, Assistant Professor, School of Computing and Electrical Engineering. "If information of all relevant parameters were known, then by continuous monitoring and computation, the driver could use the usual manoeuvres such as changing the gear appropriately to improve the vehicle's performance," he added. Jain explained that while new vehicles out of the assembly line meet many of the requirements, as they age the operational parameters change and the vehicle’s operation becomes less than optimal. "Due to high-frequency moving parts and operating conditions of the engine, it is difficult to place or install the sensors that are available in the market to measure all the key parameters continuously. We have developed a new algorithm for their online estimation, which will be used to develop advanced, sophisticated controllers for better engine performance," he said.

"The proposed algorithm is based on the unscented Kalman filter and recursive least-squares mathematical techniques to accurately estimate engine dynamics and parameters. The team has benchmarked the performance of their methodology by comparing it with that of the state-of-the-art estimation methods," he added. The researchers have estimated spark-ignition engine dynamics, namely the intake manifold pressure, engine speed, and the airflow rate past the throttle, along with the estimation of the engine parameters that determine the said dynamics accurately. "The developed algorithm can be programmed and be a part of the electronic control unit installed in vehicles," he said. 

Videos you may like

Follow Shiksha.com for latest education news in detail on Exam Results, Dates, Admit Cards, & Schedules, Colleges & Universities news related to Admissions & Courses, Board exams, Scholarships, Careers, Education Events, New education policies & Regulations.
To get in touch with Shiksha news team, please write to us at news@shiksha.com

About the Author
author-image
Anupama Mehra
Assistant Manager – Content
"The pen is mightier than the sword". Anupama totally believes in this and respects what she conveys through it. She is a vivid writer, who loves to write about education, lifestyle, and governance. She is a hardcor Read Full Bio
qna

Comments

Next Story