KLASIFIKASI KONDISI BAN KENDARAAN MENGGUNAKAN ARSITEKTUR VGG16

Ahmad Fudolizaenun Nazhirin, M. R. Muttaqin, Teguh Iman Hermanto
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Abstract

Tyres are the main component that a vehicle needs to work with reducing vibration due to uneven road surfaces, protecting the wheels from wear to provide stability between the vehicle and the ground helping to improve acceleration to facilitate travel while driving. Wear ensures stability between the vehicle and the ground helps improve acceleration for easy movement and driving. Caused including components that are often used, tires can experience damage such as the appearance of cracks in the tires. Cracks in tires can be triggered by factors such as age or the cause of the road that has been exceeded. Detection of tire cracks at this time is still carried out conventionally, where users see directly the state of the tire whether the tire is in good condition or cracked. Conventional methods are important because they maintain tire quality and rider safety. The Conventional Method certainly has weaknesses because vehicle users must have good vision and the ability to distinguish normal tires or cracked tires, but this method is considered less effective because it still uses human labor, causing the risk of human error (human negligence) which can hinder the process of identifying tire cracks. Based on this problem, this study will develop a deep learning model that can classify cracked tires using the VGG16 architecture. In this study, the model was created using 8 scenarios by changing the value of epochs, to get the best parameters in making the model. The results of the 8 scenarios carried out in this study are the best scenario obtained in scenarios 1,3,4 which get 98% accuracy in model testing
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使用VGG16架构对轮胎状态进行分类
轮胎是车辆需要工作的主要部件,它可以减少由于路面不平而产生的振动,保护车轮免受磨损,提供车辆和地面之间的稳定性,帮助提高加速度,以方便驾驶时的旅行。磨损确保车辆与地面之间的稳定性,有助于提高加速,便于移动和驾驶。包括经常使用的部件在内,轮胎可能会受到损坏,例如轮胎出现裂缝。轮胎的裂缝可能是由一些因素引发的,比如车龄或路面的原因。此时对轮胎裂纹的检测仍然是常规进行的,用户直接看到轮胎的状态,轮胎是完好还是有裂纹。传统的方法是重要的,因为他们保持轮胎质量和车手的安全。传统方法当然有弱点,因为车辆使用者必须有良好的视力和区分正常轮胎或裂纹轮胎的能力,但这种方法被认为效率较低,因为它仍然使用人力,造成人为错误(人为疏忽)的风险,这可能会阻碍识别轮胎裂纹的过程。基于这一问题,本研究将开发一种基于VGG16架构的轮胎裂纹分类深度学习模型。在本研究中,通过改变epoch的值,使用8种场景来创建模型,以获得制作模型的最佳参数。本研究所进行的8个场景的结果是在场景1、场景3、场景4中得到的最佳场景,在模型测试中准确率达到98%
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