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实用的基于 AMR 传感器微处理器嵌入式系统的车辆速度估计方法。

Practical Methods for Vehicle Speed Estimation Using a Microprocessor-Embedded System with AMR Sensors.

机构信息

Department of Electronics Engineering, Kaunas University of Technology, Studentu Street 50⁻418, LT-51368 Kaunas, Lithuania.

Faculty of Electrical Engineering, Bialystok University of Technology; Wiejska Street 45D, PL-15351 Bialystok, Poland.

出版信息

Sensors (Basel). 2018 Jul 10;18(7):2225. doi: 10.3390/s18072225.

Abstract

The proper operation of computing resources in a microprocessor-embedded system plays a key role in reducing computing time. Processing the variable amount of collected data in real-time improves the performance of a microprocessor-embedded system. In this regard, a vehicle’s speed measurement system is no exception. The computing time for evaluating any speed value is expected to be reduced as much as possible. Four computational methods, including cross-correlation, are discussed. An exemplary pair of recorded signals presenting the change in magnetic field magnitude is analyzed. The sample delay values are compared. The results of the evaluated speed and the execution time of the program code are presented for each method based on a dataset of 200 randomly driven vehicles. The results of the performed tests confirm that the cross-correlation-based methods are not always reliable in situations when the sample size is small, i.e., it is a segment of the impulse response caused by a driving vehicle.

摘要

在微处理器嵌入式系统中,计算资源的正确操作对于减少计算时间起着关键作用。实时处理收集到的大量数据可以提高微处理器嵌入式系统的性能。在这方面,车辆的速度测量系统也不例外。评估任何速度值的计算时间都期望尽可能地减少。本文讨论了包括互相关在内的四种计算方法。分析了一对记录信号,它们呈现出磁场幅度的变化。比较了样本延迟值。基于 200 辆随机驱动车辆的数据集,给出了每种方法的评估速度和程序代码执行时间的结果。所进行的测试结果证实,在样本量较小的情况下,基于互相关的方法并不总是可靠的,即它是由行驶车辆引起的脉冲响应的一部分。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dd22/6069105/47dad94f7327/sensors-18-02225-g001.jpg

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