Longest path estimation from inherently fuzzy data acquired with GPS using genetic algorithms

A. Otero, J. Otero, L. Sanchez, J. Villar
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引用次数: 12

Abstract

Measuring the length of a path that a taxi must fare for is not an obvious task. When driving lower than certain threshold the fare is time dependent, but at higher speeds the length of the path is measured, and the fare depends on such measure. When passing an indoor MOT test, the taximeter is calibrated simulating a cab run, while the taxi is placed on a device equipped with four rotating steel cylinders in touch with the drive wheels. This indoor measure might be inaccurate, as information given by the cylinders is affected by tires inflating pressure, and only straight trajectories are tested. Moreover, modern vehicles with driving aids such as ABS, ESP or TCS might have their electronics damaged in the test, since two wheels are spinning while the others are not. To overcome these problems, we have designed a small, portable GPS sensor that periodically logs the coordinates of the vehicle and computes the length of a discretionary circuit. We show that all the legal issues with the tolerance of such a procedure (GPS data are inherently imprecise) can be overcome if genetic and fuzzy techniques are used to preprocess and analyze the raw data
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利用遗传算法对GPS固有模糊数据进行最长路径估计
测量出租车必须行驶的路径长度并不是一项显而易见的任务。当车速低于某一阈值时,车费与时间有关,但在车速较高时,则测量路径长度,车费取决于该长度。当通过室内MOT测试时,出租车计程表会模拟出租车运行进行校准,而出租车则被放置在一个装有四个旋转钢瓶的装置上,这些钢瓶与驱动轮相连。这种室内测量可能不准确,因为气缸提供的信息受到轮胎充气压力的影响,而且只测试直线轨迹。此外,装有ABS、ESP、TCS等驾驶辅助装置的现代车辆,由于两个轮子在旋转,而另一个轮子不旋转,因此在测试中可能会损坏电子设备。为了克服这些问题,我们设计了一种小型便携式GPS传感器,它可以定期记录车辆的坐标并计算任意电路的长度。我们表明,如果使用遗传和模糊技术对原始数据进行预处理和分析,可以克服所有具有这种程序容错性的法律问题(GPS数据本质上是不精确的)
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