닫기
216.73.216.214
216.73.216.214
close menu
KCI 등재
인공신경망을 이용한 가속도 센서 기반 타이어 트레드 마모도 판별 알고리즘
Classification of Tire Tread Wear Using Accelerometer Signals through an Artificial Neural Network
김영진 ( Young-jin Kim ) , 김형준 ( Hyeong-jun Kim ) , 한준영 ( Jun-young Han ) , 이석 ( Suk Lee )
UCI I410-ECN-0102-2021-500-000895022

The condition of tire tread is a key parameter closely related to the driving safety of a vehicle, which affects the contact force of the tire for braking, accelerating and cornering. The major factor influencing the contact force is tread wear, and the more tire tread wears out, the higher risk of losing control of a vehicle exits. The tire tread condition is generally checked by visual inspection that can be easily forgotten. In this paper, we propose the intelligent tire (iTire) system that consists of an acceleration sensor, a wireless signal transmission unit and a tread classifier. In addition, we also presents classification algorithm that transforms the acceleration signal into the frequency domain and extracts the features of several frequency bands as inputs to an artificial neural network. The artificial neural network for classifying tire wear was designed with an Multiple Layer Perceptron (MLP) model. Experiments showed that tread wear classification accuracy was over 80%.

1. 서 론
2. 지능형 타이어 시스템
3. 트레드 마모도 판별 알고리즘
4. 성능 평가
5. 결 론
사 사
참고문헌
[자료제공 : 네이버학술정보]
×