New Hybrid Wavelet and CNN-Based Indirect Tire-Pressure Monitoring System for Autonomous Vehicles

Zoltán Márton, D. Fodor
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引用次数: 3

Abstract

Since the tire pressure has a significant influence on driving safety, even self-driving vehicles need to be aware of their current tire pressures. Two major types of methods for estimating tire pressures exist: direct and indirect methods. In spite of recent advancements in direct Tire Pressure Monitoring Systems (TPMSs), indirect pressure monitoring systems still play a significant role due to their low costs. Indirect systems rely on the processing of signals from wheel speed sensors. In most cases, a transformation is applied to generate a frequency spectrum from which the tire pressure-dependent eigenfrequency can be extracted. The most accurate methods apply the Fourier transform, but these require the highest computational power. After the spectrum of signals from the wheel speed sensor is created, the eigenfrequency must be extracted. Several methods are available to extract significant frequency components. One of the easiest methods is peak searching, however, it is susceptible to noise. On the other hand, more accurate methods that are less sensitive to noise require more computational power. If a transform that consumes less computational power can be applied, then the freed resources can be used by a better eigenfrequency identification method. In this paper, a Hybrid Wavelet-Fourier Transform and Convolutional Neural Network-based method is presented, which exhibits a promising level of noise tolerance.
基于小波和cnn的自动驾驶汽车胎压间接监测新系统
由于轮胎压力对驾驶安全有重大影响,因此即使是自动驾驶汽车也需要了解当前的轮胎压力。估计轮胎压力的方法主要有两种:直接法和间接法。尽管最近在直接胎压监测系统(tpms)方面取得了进展,但由于成本低,间接压力监测系统仍然发挥着重要作用。间接系统依赖于处理来自车轮速度传感器的信号。在大多数情况下,应用变换来生成一个频谱,从中可以提取轮胎压力相关的特征频率。最精确的方法是应用傅里叶变换,但这需要最高的计算能力。车轮转速传感器信号的频谱生成后,必须提取特征频率。有几种方法可以提取重要的频率成分。最简单的方法之一是峰值搜索,但它容易受到噪声的影响。另一方面,对噪声不太敏感的更精确的方法需要更多的计算能力。如果可以采用消耗较少计算能力的变换,则可以将释放的资源用于更好的特征频率识别方法。本文提出了一种基于小波-傅里叶变换和卷积神经网络的混合方法,该方法具有良好的抗噪能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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