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Hardware implementation of soft computing approaches for an intelligent wall-following vehicle.

机译:智能壁挂式车辆的软计算方法的硬件实现。

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摘要

Soft computing techniques are generally well-suited for vehicular control systems that are usually modeled by highly nonlinear differential equations and working in unstructured environment. To demonstrate their applicability, two intelligent controllers based upon fuzzy logic theories and neural network paradigms are designed for performing a wall-following task and an autonomous parking task. Based on performance and flexibility considerations, the two controllers are implemented onto a reconfigurable hardware platform, namely a Field Programmable Gate Array (FPGA). As the number of comparative studies of these two embedded controllers designed for the same application is limited in the literature, one of the main goals of this research work has been to evaluate and compare the two controllers in terms of hardware resource requirements, operational speeds and trajectory tracking errors in following different pre-defined trajectories. The main advantages and disadvantages of each of the controllers are presented and discussed in details. Challenging issues for implementation of the controllers on the FPGA platform are also highlighted. As the two controllers exhibit benefits and drawbacks under different circumstances, this research suggests as well a hybrid controller scheme as an attempt to integrate the benefits of both control units. To evaluate its performance, the hybrid controller is tested on the same pre-defined trajectories and the corresponding results are compared to that of the fuzzy logic and the neural network based controllers. For further demonstration of the capabilities of the wall-following controllers in other applications, the fuzzy logic and the neural network controllers are used in a parallel parking system. We see this work to be a stepping stone for further research work aiming at real world implementation of the controllers on Application Specified Integrated Circuit (ASIC) type of environment.
机译:软计算技术通常非常适合通常通过高度非线性微分方程建模并在非结构化环境中工作的车辆控制系统。为了证明其适用性,设计了两个基于模糊逻辑理论和神经网络范式的智能控制器,以执行跟踪墙任务和自主停车任务。基于性能和灵活性的考虑,这两个控制器被实现在一个可重新配置的硬件平台上,即现场可编程门阵列(FPGA)。由于针对同一应用而设计的这两种嵌入式控制器的比较研究数量有限,因此本研究工作的主要目标之一是就硬件资源要求,运行速度和性能方面评估和比较这两种控制器。遵循不同预定义轨迹的轨迹跟踪错误。详细介绍了每个控制器的主要优点和缺点。还强调了在FPGA平台上实现控制器所面临的挑战性问题。由于这两种控制器在不同情况下都具有优点和缺点,因此本研究还提出了一种混合控制器方案,以试图将两个控制单元的优点整合在一起。为了评估其性能,混合控制器在相同的预定义轨迹上进行了测试,并将相应的结果与模糊逻辑和基于神经网络的控制器进行了比较。为了进一步说明跟随墙的控制器在其他应用中的功能,在并行停车系统中使用了模糊逻辑和神经网络控制器。我们认为这项工作是进一步研究工作的垫脚石,旨在针对专用集成电路(ASIC)类型的环境在现实世界中实现控制器。

著录项

  • 作者

    Tsui, Willie.;

  • 作者单位

    University of Waterloo (Canada).;

  • 授予单位 University of Waterloo (Canada).;
  • 学科 Engineering Electronics and Electrical.; Computer Science.
  • 学位 M.A.Sc.
  • 年度 2007
  • 页码 106 p.
  • 总页数 106
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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