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A fuzzy pattern recognition approach for dynamic systems diagnosis. Application to a model of the French telephone network

机译:动态系统诊断的模糊模式识别方法。在法国电话网络模型中的应用

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Diagnostic methods for the functional state of a static system are well-known. However, the diagnosis of a dynamic process is more difficult to manage because the system state evolves in time. In this paper, a complex system is assumed to evolve from one functional state to another by passing through intermediate states distributed according to a specific path in a multidimensional space. This space is defined from the relevant parameters observed in the system. In order not to create a copious number of intermediate functional states, a two-step decision process based upon fuzzy pattern recognition is proposed. It consists of building membership functions along the path according to which the system state evolves from one known functional state to another. These multidimensional membership functions are used to diagnose the system state. As an example, an application of this method to a model of the French long distance telephone network is illustrated.
机译:静态系统功能状态的诊断方法是众所周知的。但是,由于系统状态会随时间变化,因此动态过程的诊断更加难以管理。在本文中,假定一个复杂的系统通过经过根据多维空间中特定路径分配的中间状态而从一种功能状态演变为另一种功能状态。该空间是根据系统中观察到的相关参数定义的。为了不产生大量的中间功能状态,提出了一种基于模糊模式识别的两步决策过程。它由沿路径建立隶属函数组成,系统状态根据该隶属函数从一种已知的功能状态演变为另一种。这些多维隶属度函数用于诊断系统状态。例如,说明了该方法在法国长途电话网络模型中的应用。

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