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Model of Adaptive System of Neuro-Fuzzy Inference Based on Pi- and Pi- Fuzzy-Controllers

机译:基于Pi和Pi-模糊控制器的神经模糊推理自适应系统模型

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摘要

The aim of the work is to develop a model of adaptive system of neuro-fuzzy inference based on PI- and PI-FUZZY-controllers, allowing to simplify, automate and unify the design process of modern automated control systems. To achieve a specific goal, a method for managing a technical object has been developed based on the construction of an adaptive system of neuro-fuzzy inference. As controllers in the system of neuro-fuzzy inference, the classical PI-controller and fuzzy PI-FUZZY-controller were chosen. Interaction between controllers is provided with the help of the hybrid control system developed. The result of interaction of the two models is automatic formation of the basis of fuzzy controller rules based on knowledge of the control object obtained with its control using the classical controller. In the developed adaptive system of neuro-fuzzy inference, error and control signals in the classical model are used as data for building a hybrid network. Error and control signals in the fuzzy model with automatically generated fuzzy inference rules are used as data to verify the hybrid network built in order to detect a fact of its retraining Thus, during the control of a technical object by means of a hybrid system, the knowledge of an expert in subject domain for adjusting the parameters of the fuzzy controller is completely eliminated, which makes it possible to control difficultly formalizable objects in conditions of uncertainty. To obtain reliable research results, a hybrid control system was developed, consisting of classical and fuzzy models. Numeric values of the error and control signals are obtained at discrete instants of time as a result of interaction of the two models. Special files have been created to build and test a hybrid network in the form of numerical matrices.
机译:这项工作的目的是开发一种基于PI和PI-FUZZY控制器的神经模糊推理自适应系统模型,从而可以简化,自动化和统一现代自动化控制系统的设计过程。为了实现特定目标,基于神经模糊推理的自适应系统的构建,已经开发了用于管理技术对象的方法。作为神经模糊推理系统的控制器,选择了经典的PI控制器和模糊PI-FUZZY控制器。借助已开发的混合控制系统,可以在控制器之间进行交互。两种模型相互作用的结果是,基于对控制对象的知识(基于使用经典控制器进行控制获得的知识),自动形成模糊控制器规则的基础。在已开发的神经模糊推理自适应系统中,经典模型中的错误和控制信号被用作构建混合网络的数据。具有自动生成的模糊推理规则的模糊模型中的错误和控制信号被用作数据,以验证所构建的混合网络,以便检测其重新训练的事实。因此,在通过混合系统控制技术对象的过程中,完全消除了学科领域专家对模糊控制器的参数进行调整的知识,这使得在不确定性条件下控制难以形式化的对象成为可能。为了获得可靠的研究结果,开发了一种由经典模型和模糊模型组成的混合控制系统。由于两个模型的相互作用,在离散的时间点获得了误差和控制信号的数值。已经创建了特殊文件以数字矩阵的形式构建和测试混合网络。

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