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Estimating instant fuel consumption by machine learning and improving fuel consumption
Abstract
Modern cars are very technologically advanced and rely on sensors and actuators which communicate with control units, therefore it becomes possible to obtain data by using the vehicle sensor data from the controller area network (CAN) bus. Due to its bus structure, it is possible to reach real-time detailed data from sensors inside the vehicle such as O2 sensor voltage, fuel pressure, catalyst temperature etc. This study aims to predict the instantaneous fuel consumption by collecting a large-scale vehicle sensors' data and create a model with machine learning algorithms with the goal of better understand how the multiple variables influence the instantaneous fuel consumption.With this predictive model, it is better understood how the variables obtained from the sensors affect the instantaneous fuel consumption and it is proposed to reduce the fuel consumption between 1% and 2% by interfering with the intake air temperature information. This approach and the experiments can also support original equipment manufacturers in developing and marketing this technology in the future. This work may lead the way to a cleaner environment due to more economical and less polluting vehicles.
Keywords
References
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Details
Primary Language
English
Subjects
Engineering
Journal Section
Research Article
Publication Date
December 30, 2021
Submission Date
July 16, 2020
Acceptance Date
August 12, 2020
Published in Issue
Year 2021 Volume: 4 Number: 3
APA
Naskali, A. T., & Şen, B. (2021). Estimating instant fuel consumption by machine learning and improving fuel consumption. Veri Bilimi, 4(3), 54-60. https://izlik.org/JA47LK63ZK
AMA
1.Naskali AT, Şen B. Estimating instant fuel consumption by machine learning and improving fuel consumption. Data Sci. J. 2021;4(3):54-60. https://izlik.org/JA47LK63ZK
Chicago
Naskali, Ahmet Teoman, and Buğra Şen. 2021. “Estimating Instant Fuel Consumption by Machine Learning and Improving Fuel Consumption”. Veri Bilimi 4 (3): 54-60. https://izlik.org/JA47LK63ZK.
EndNote
Naskali AT, Şen B (December 1, 2021) Estimating instant fuel consumption by machine learning and improving fuel consumption. Veri Bilimi 4 3 54–60.
IEEE
[1]A. T. Naskali and B. Şen, “Estimating instant fuel consumption by machine learning and improving fuel consumption”, Data Sci. J., vol. 4, no. 3, pp. 54–60, Dec. 2021, [Online]. Available: https://izlik.org/JA47LK63ZK
ISNAD
Naskali, Ahmet Teoman - Şen, Buğra. “Estimating Instant Fuel Consumption by Machine Learning and Improving Fuel Consumption”. Veri Bilimi 4/3 (December 1, 2021): 54-60. https://izlik.org/JA47LK63ZK.
JAMA
1.Naskali AT, Şen B. Estimating instant fuel consumption by machine learning and improving fuel consumption. Data Sci. J. 2021;4:54–60.
MLA
Naskali, Ahmet Teoman, and Buğra Şen. “Estimating Instant Fuel Consumption by Machine Learning and Improving Fuel Consumption”. Veri Bilimi, vol. 4, no. 3, Dec. 2021, pp. 54-60, https://izlik.org/JA47LK63ZK.
Vancouver
1.Ahmet Teoman Naskali, Buğra Şen. Estimating instant fuel consumption by machine learning and improving fuel consumption. Data Sci. J. [Internet]. 2021 Dec. 1;4(3):54-60. Available from: https://izlik.org/JA47LK63ZK