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A novel self-organizing fuzzy rule-based system for modelling traffic flow behaviour

机译:一种新颖的基于自组织模糊规则的交通流行为建模系统

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摘要

The study and development of transportation systems have been a focus of attention in recent years, with many research efforts directed in particular at modelling traffic behaviour from both macroscopic and microscopic points of views. Although many statistical regression models of road traffic relationships have been formulated, they have proven to be unsuitable due to multiple and ill-defined traffic characteristics. Alternative methods such as neural networks have thus been sought but, despite some promising results, their design remains problematic and implementation is equally difficult. Another salient issue is that the opaqueness of trained networks prevents understanding the underlying models. Hybrid neuro-fuzzy rule-based systems, which combine the complementary capabilities of both neural networks and fuzzy logic, constitute a more promising technique for modelling traffic flow. This paper describes the application of a specific class of neuro-fuzzy system known as the Pseudo Outer-Product Fuzzy-Neural Network using Truth-Value-Restriction method (POPFNN-TVR) for modelling traffic behaviour. This approach has been shown to perform better on such problems than similar architectures. The results obtained highlight the capability of POPFNN-TVR in fuzzy knowledge extraction for modelling inter-lane relationships in a highway traffic stream, as well as in generalizing from sample data, as compared to traditional feed-forward neural networks using back-propagation learning. The model thus obtained automatically can be understood, analysed, and readily applied for transportation planning.
机译:近年来,交通运输系统的研究和开发一直是人们关注的焦点,许多研究工作特别针对从宏观和微观两个角度对交通行为进行建模。尽管已经建立了许多道路交通关系的统计回归模型,但由于多种交通特征不明确,它们被证明是不合适的。因此已经寻求了诸如神经网络的替代方法,但是尽管取得了一些有希望的结果,但是它们的设计仍然存在问题,并且实现同样困难。另一个突出的问题是受过训练的网络的不透明性阻止了对基本模型的理解。基于混合神经模糊规则的系统,结合了神经网络和模糊逻辑的互补功能,构成了一种更为有前途的交通流建模技术。本文介绍了使用真值限制方法(POPFNN-TVR)的一类特定的神经模糊系统,即伪外部产品模糊神经网络,对交通行为进行建模。与类似的体系结构相比,该方法在此类问题上的性能更好。与使用反向传播学习的传统前馈神经网络相比,POPFNN-TVR在模糊知识提取中能够为高速公路交通流中的车道间关系建模,以及从样本数据中进行泛化,具有突出的功能。这样自动获得的模型可以被理解,分析并易于应用于运输计划。

著录项

  • 来源
    《Expert systems with applications》 |2009年第10期|12167-12178|共12页
  • 作者

    C. Quek; M. Pasquier; B. Lim;

  • 作者单位

    Centre for Computational Intelligence (C~2I). Nanyang Technological University, School of Computer Engineering, Block N4, #2A-32, Nanyang Avenue, Singapore 639798, Singapore;

    Centre for Computational Intelligence (C~2I). Nanyang Technological University, School of Computer Engineering, Block N4, #2A-32, Nanyang Avenue, Singapore 639798, Singapore;

    Centre for Computational Intelligence (C~2I). Nanyang Technological University, School of Computer Engineering, Block N4, #2A-32, Nanyang Avenue, Singapore 639798, Singapore;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    traffic flow modelling; fuzzy rule-based system; self-organizing network; automatic knowledge extraction;

    机译:交通流建模;基于模糊规则的系统;自组织网络;自动知识提取;

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