Research Article

Improving the Performance of the YOLOv8 Algorithm for Air Conditioner Detection in Urban Areas: Data Augmentation Techniques and Model Optimization

Volume: 5 Number: 2 October 1, 2025

Improving the Performance of the YOLOv8 Algorithm for Air Conditioner Detection in Urban Areas: Data Augmentation Techniques and Model Optimization

Abstract

The aim of this study is to evaluate the performance of the YOLOv8 algorithm in the task of climate detection and optimize it for urban environments. Currently, YOLOv8 is a state-of-the-art deep learning model designed by an architecture that gives superior performance results in object detection tasks simultaneously with speed and accuracy. YOLOv8s have been characterized to be a deep learning model that will do well in object detection in complex urban environments. Performance characteristics of a deep learning model will include the influence of background intensity and the effect of different camera illumination while detecting climate. It implements several data augmentation techniques, model architecture variations, and training strategies that enable the model to perform even better. Experimental results identified that data augmentation techniques make YOLOv8 perform much better, while model architecture variations present a trade-off between speed and accuracy. In particular, the complicated data augmentation methods, such as Mosaic and perspective switching, greatly improve the generalization capability of the model. It would mean that YOLOv8 performs quite well in recognizing air-conditioners and similar objects in an urban context; hence, until now, everything looks very encouraging to support the consideration of YOLOv8 in applications having to do with energy efficiency, heat island effect monitoring, and other environmental analyses.

Keywords

References

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Details

Primary Language

English

Subjects

Deep Learning

Journal Section

Research Article

Publication Date

October 1, 2025

Submission Date

June 3, 2025

Acceptance Date

September 7, 2025

Published in Issue

Year 2025 Volume: 5 Number: 2

APA
Aydın, C. (2025). Improving the Performance of the YOLOv8 Algorithm for Air Conditioner Detection in Urban Areas: Data Augmentation Techniques and Model Optimization. Artificial Intelligence Theory and Applications, 5(2), 49-66. https://izlik.org/JA22GN82AS
AMA
1.Aydın C. Improving the Performance of the YOLOv8 Algorithm for Air Conditioner Detection in Urban Areas: Data Augmentation Techniques and Model Optimization. AITA. 2025;5(2):49-66. https://izlik.org/JA22GN82AS
Chicago
Aydın, Can. 2025. “Improving the Performance of the YOLOv8 Algorithm for Air Conditioner Detection in Urban Areas: Data Augmentation Techniques and Model Optimization”. Artificial Intelligence Theory and Applications 5 (2): 49-66. https://izlik.org/JA22GN82AS.
EndNote
Aydın C (October 1, 2025) Improving the Performance of the YOLOv8 Algorithm for Air Conditioner Detection in Urban Areas: Data Augmentation Techniques and Model Optimization. Artificial Intelligence Theory and Applications 5 2 49–66.
IEEE
[1]C. Aydın, “Improving the Performance of the YOLOv8 Algorithm for Air Conditioner Detection in Urban Areas: Data Augmentation Techniques and Model Optimization”, AITA, vol. 5, no. 2, pp. 49–66, Oct. 2025, [Online]. Available: https://izlik.org/JA22GN82AS
ISNAD
Aydın, Can. “Improving the Performance of the YOLOv8 Algorithm for Air Conditioner Detection in Urban Areas: Data Augmentation Techniques and Model Optimization”. Artificial Intelligence Theory and Applications 5/2 (October 1, 2025): 49-66. https://izlik.org/JA22GN82AS.
JAMA
1.Aydın C. Improving the Performance of the YOLOv8 Algorithm for Air Conditioner Detection in Urban Areas: Data Augmentation Techniques and Model Optimization. AITA. 2025;5:49–66.
MLA
Aydın, Can. “Improving the Performance of the YOLOv8 Algorithm for Air Conditioner Detection in Urban Areas: Data Augmentation Techniques and Model Optimization”. Artificial Intelligence Theory and Applications, vol. 5, no. 2, Oct. 2025, pp. 49-66, https://izlik.org/JA22GN82AS.
Vancouver
1.Can Aydın. Improving the Performance of the YOLOv8 Algorithm for Air Conditioner Detection in Urban Areas: Data Augmentation Techniques and Model Optimization. AITA [Internet]. 2025 Oct. 1;5(2):49-66. Available from: https://izlik.org/JA22GN82AS