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A non-cooperative neuro-fuzzy system for integrating ATIS and ATMS decisions

机译:集成ATIS和ATMS决策的非合作神经模糊系统

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This paper addresses the problem of integrating successful existing implementations of Advanced Traveler Information Systems (ATIS) and Advanced Traffic Management Systems (ATMS). The methodologies and challenges to integrate ATIS and ATMS are addressed in details. This paper discusses in details the development of a rule-based neuro-fuzzy logic to integrate existing ATIS and ATMS when they operate in a non-cooperative manner. The individual existing logics are initially upgraded to the so-called ATIS and ATMS stand-alone systems, which may be regarded as bi-level optimization systems. The upper level (of the bi-level optimization system) represents an augmented process for guessing the counter system's decisions, and the lower level represents the existing logic (of ATIS or ATMS). The stand-alone systems are then replicated by simulation-based optimization algorithms, which are used to generate the training data necessary to calibrate the neuro-fuzzy logic. The role of the neural nets and the methodology of fuzzy-logic calibration are discussed in details. The effectiveness and robustness (of the neuro-fuzzy integrated ATIS/ATMS system) are assessed using simulation-based experiments with two different hypothetical networks.
机译:本文解决了将高级旅行者信息系统(ATIS)和高级交通管理系统(ATMS)的现有成功实现集成在一起的问题。详细介绍了集成ATIS和ATMS的方法和挑战。本文详细讨论了基于规则的神经模糊逻辑的开发,以在现有ATIS和ATMS以非合作方式运行时将它们集成在一起。单个现有逻辑最初被升级为所谓的ATIS和ATMS独立系统,可以将其视为双层优化系统。 (双层优化系统的)上层表示猜测计数器系统的决策的增强过程,下层表示(ATIS或ATMS的)现有逻辑。然后,通过基于仿真的优化算法复制独立系统,该算法用于生成校准神经模糊逻辑所需的训练数据。详细讨论了神经网络的作用和模糊逻辑校准的方法。有效性和鲁棒性(神经模糊集成的ATIS / ATMS系统的)是使用基于仿真的实验通过两个不同的假设网络进行评估的。

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