Modeling, Simulation and Analysis of Automotive Radar Signal Using Wavelet Transform Technique

N. Nathaniel, E. Ashigwuike, Abubkar U. Sadiq, N. A. Obadiah
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引用次数: 3

Abstract

An application of radar sensor in self-driven vehicles, to be used in detecting obstacles and providing accurate information about the vehicle’s ambient environment to activate appropriate control commands. There is need for the sensor to have a computing platform that can ensure real-time processing of the received signals. From previous works, appropriate algorithm, chip-set, memory, etc. capable of performing these tasks sufficiently, are the main challenges. This work model and simulate Radar Sensor signals; Radar signal for automated driving using Fast Fourier Transform (FFT) Technique. Analysis on the FFT Technique is carried out; in terms of its merits and demerits in this application. Applicability of Wavelet Transform (WT) technique for processing of Automotive Radar Signal (ARS) is demonstrated by offering WT Technique Solutions to FFT Problems for ARS by modeling and simulating the following: (a) 1-D Multi-signal WT Operations; (b) Solution to the Noise Problems – Wavelet Denoising; (c) Use of WT for Time-Frequency Reassignment and Mode Extraction with Synchrosqueezing; (d) Discrete Wavelet Transform (DWT) and Continuous Wavelet Transform (CWT) of an ARS with a Frequency Break. All simulations are done using the MATLAB R2017b software. The focused of this work is in the area of appropriate algorithm: to show how the WT technique and which of its tools, and how those tools could be used in developing appropriate algorithm for Automotive Radar Signal Processing (ARSP) as applied in self-driven vehicles.
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基于小波变换技术的汽车雷达信号建模、仿真与分析
雷达传感器在自动驾驶车辆中的应用,用于探测障碍物并提供有关车辆周围环境的准确信息,以激活适当的控制命令。传感器需要有一个计算平台来保证对接收到的信号进行实时处理。从以往的工作来看,适当的算法、芯片组、存储器等能够充分执行这些任务是主要的挑战。对雷达传感器信号进行建模和仿真;基于快速傅里叶变换(FFT)技术的自动驾驶雷达信号。对FFT技术进行了分析;在其优点和缺点方面,在这方面的应用。通过对汽车雷达信号的FFT问题进行建模和仿真,给出了小波变换技术解决方案,证明了小波变换技术在汽车雷达信号处理中的适用性:(a)一维多信号小波变换操作;(b)噪音问题的解决方法-小波去噪;(c)使用小波变换进行时频重分配和同步压缩模式提取;(d)具有频率中断的ARS的离散小波变换(DWT)和连续小波变换(CWT)。所有仿真均使用MATLAB R2017b软件完成。这项工作的重点是在适当的算法领域:展示WT技术及其工具,以及如何将这些工具用于开发适用于自动驾驶汽车的汽车雷达信号处理(ARSP)的适当算法。
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