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On-line learning of a fuzzy controller for a precise vehicle cruise control system

机译:在线学习用于精确车辆巡航控制系统的模糊控制器

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摘要

Usually, vehicle applications need to use artificial intelligence techniques to implement control strategies able to deal with the noise in the signals provided by sensors, or with the impossibility of having full knowledge of the dynamics of a vehicle (engine state, wheel pressure, or occupants' weight). This work presents a cruise control system which is able to manage the pedals of a vehicle at low speeds. In this context, small changes in the vehicle or road conditions can occur unpredictably. To solve this problem, a method is proposed to allow the on-line evolution of a zero-order TSK fuzzy controller to adapt its behaviour to uncertain road or vehicle dynamics. Starting from a very simple or even empty configuration, the consequents of the rules are adapted in real time, while the membership functions used to codify the input variables are modified after a certain period of time. Extensive experimentation in both simulated and real vehicles showed the method to be both fast and precise, even when compared with a human driver. © 2012 Elsevier Ltd. All rights reserved.
机译:通常,车辆应用需要使用人工智能技术来实施控制策略,该策略能够处理传感器提供的信号中的噪声,或者不可能完全了解车辆的动力学特性(发动机状态,车轮压力或乘员)重量)。这项工作提出了一种巡航控制系统,该系统能够以低速管理车辆的踏板。在这种情况下,车辆或道路状况的微小变化可能会不可预测地发生。为了解决这个问题,提出了一种方法,允许零阶TSK模糊控制器在线演化,以使其行为适应不确定的道路或车辆动力学。从非常简单甚至空的配置开始,规则的结果会实时进行调整,而用于编入输入变量的隶属函数会在一段时间后进行修改。在模拟和真实车辆中进行的大量实验表明,该方法既快速又精确,即使与人类驾驶员相比也是如此。 ©2012 Elsevier Ltd.保留所有权利。

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