Research Article

Robustness Classification by Machine Learning from Vehicle Tire Surface Abrasions

Volume: 9 Number: 4 December 31, 2023
TR EN

Robustness Classification by Machine Learning from Vehicle Tire Surface Abrasions

Abstract

The safety and durability of vehicle tires is an important variable in terms of driving safety and cost effectiveness. Different methods such as visual inspection, tire air pressure control, pattern depth measurements, rotation and balancing can be used to evaluate these factors. In this study, different machine learning algorithms such as ResNET50, DenseNET121, AlexNET, CNN, which are image-based, are used to analyse the images of the tire surface to determine the surface wear of the vehicle tires and to perform robustness classification. For the training of the models, 1447 vehicle tire surface images of different categories (very good, good, bad, very bad) were used. The dataset containing the images belongs to the authors of this study and is unique. In the future, it is aimed to make the dataset available for copyrighted use on an open platform. The results obtained from the trained models are compared. The CNN algorithm, which showed the most successful results, was selected as the final algorithm. In conclusion, this paper represents an important step towards solving safety and efficiency issues in the automotive industry by introducing a machine learning approach to detect surface wear and robustness classification of vehicle tires. This technology has the potential to optimize tire management and maintenance.

Keywords

References

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Details

Primary Language

English

Subjects

Computer Software

Journal Section

Research Article

Publication Date

December 31, 2023

Submission Date

November 17, 2023

Acceptance Date

November 29, 2023

Published in Issue

Year 2023 Volume: 9 Number: 4

APA
Gürfidan, R., Kilim, O., Yiğit, T., & Aksoy, B. (2023). Robustness Classification by Machine Learning from Vehicle Tire Surface Abrasions. Gazi Journal of Engineering Sciences, 9(4), 151-157. https://izlik.org/JA84JW52GK
AMA
1.Gürfidan R, Kilim O, Yiğit T, Aksoy B. Robustness Classification by Machine Learning from Vehicle Tire Surface Abrasions. GJES. 2023;9(4):151-157. https://izlik.org/JA84JW52GK
Chicago
Gürfidan, Remzi, Oğuzhan Kilim, Tuncay Yiğit, and Bekir Aksoy. 2023. “Robustness Classification by Machine Learning from Vehicle Tire Surface Abrasions”. Gazi Journal of Engineering Sciences 9 (4): 151-57. https://izlik.org/JA84JW52GK.
EndNote
Gürfidan R, Kilim O, Yiğit T, Aksoy B (December 1, 2023) Robustness Classification by Machine Learning from Vehicle Tire Surface Abrasions. Gazi Journal of Engineering Sciences 9 4 151–157.
IEEE
[1]R. Gürfidan, O. Kilim, T. Yiğit, and B. Aksoy, “Robustness Classification by Machine Learning from Vehicle Tire Surface Abrasions”, GJES, vol. 9, no. 4, pp. 151–157, Dec. 2023, [Online]. Available: https://izlik.org/JA84JW52GK
ISNAD
Gürfidan, Remzi - Kilim, Oğuzhan - Yiğit, Tuncay - Aksoy, Bekir. “Robustness Classification by Machine Learning from Vehicle Tire Surface Abrasions”. Gazi Journal of Engineering Sciences 9/4 (December 1, 2023): 151-157. https://izlik.org/JA84JW52GK.
JAMA
1.Gürfidan R, Kilim O, Yiğit T, Aksoy B. Robustness Classification by Machine Learning from Vehicle Tire Surface Abrasions. GJES. 2023;9:151–157.
MLA
Gürfidan, Remzi, et al. “Robustness Classification by Machine Learning from Vehicle Tire Surface Abrasions”. Gazi Journal of Engineering Sciences, vol. 9, no. 4, Dec. 2023, pp. 151-7, https://izlik.org/JA84JW52GK.
Vancouver
1.Remzi Gürfidan, Oğuzhan Kilim, Tuncay Yiğit, Bekir Aksoy. Robustness Classification by Machine Learning from Vehicle Tire Surface Abrasions. GJES [Internet]. 2023 Dec. 1;9(4):151-7. Available from: https://izlik.org/JA84JW52GK

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