用神经网络生成的模糊推理对复杂系统建模

A. Ikonomopoulos, R. Uhrig, L. Tsoukalas
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引用次数: 1

摘要

提出了一种利用人工神经网络(ann)作为语言值生成器对复杂系统建模的新方法。复杂性被认为是与系统交互的不同方式以及描述这些交互所需的独立模式的数量的函数。在目前的方法中,人工神经网络是在预期范式的框架中使用的。在预期系统中,不仅根据系统的当前状况作出决策;但也取决于对系统在不久的将来可能会做什么的估计。预测机构是系统和/或系统内部环境的模型。一个人工神经网络库用于提供计算模糊值所需的预测模型。模糊值以一种适合于在模糊环境中进行决策的方式描述系统行为。该方法是利用实验核反应堆启动期间获得的实际数据来证明的
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Modeling complex systems with neural network generated fuzzy reasoning
A novel methodology is presented for the purpose of modeling complex systems through the utilization of artificial neural networks (ANNs) as linguistic value generators. Complexity is considered as a function of the distinct ways one may interact with a system and the number of separate modes required to describe these interactions. In the present approach ANN's are employed in the framework of the anticipatory paradigm. In an anticipatory system a decision is taken based not only on the current condition of the system; but also on an estimate of what the system may be doing in the near future. The prediction agency is a model of the system and/or its environment which is internal to the system. A library of ANNs is used to provide the predictive models required for computing fuzzy values. The fuzzy values describe the system behavior in a manner suitable for decision making purposes in a fuzzy environment. The methodology is demonstrated utilizing actual data obtained during a start-up period of an experimental nuclear reactor.<>
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