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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Nonlinear system identification based on ANFIS-Hammerstein model using Gravitational search algorithm
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Nonlinear system identification based on ANFIS-Hammerstein model using Gravitational search algorithm

机译:基于ANFIS-HAMPerstein模型的非线性系统识别使用引力搜索算法

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摘要

The identification of real-world plants and processes, which are nonlinear in nature, represents a challenging problem. Currently, the Hammerstein model is one of the most popular nonlinear models. A Hammerstein model involves the combination of a nonlinear element and a linear dynamic system. On the other hand, the Adaptive-network-based fuzzy inference system (ANFIS) represents a powerful adaptive nonlinear network whose architecture can be divided into a nonlinear block and a linear system. In this paper, a nonlinear system identification method based on the Hammerstein model is introduced. In the proposed scheme, the system is modeled through the adaptation of an ANFIS scheme, taking advantage of the similarity between it and the Hammerstein model. To identify the parameters of the modeled system, the proposed approach uses a recent nature-inspired method called the Gravitational Search Algorithm (GSA). Compared to most existing optimization algorithms, GSA delivers a better performance in complex multimodal problems, avoiding critical flaws such as a premature convergence to sub-optimal solutions. To show the effectiveness of the proposed scheme, its modeling accuracy has been compared with other popular evolutionary computing algorithms through numerical simulations on different complex models.
机译:鉴定是非线性本质上的现实植物和过程,代表了一个具有挑战性的问题。目前,Hammerstein模型是最受欢迎的非线性模型之一。 Hammerstein模型涉及非线性元件和线性动态系统的组合。另一方面,基于自适应网络的模糊推理系统(ANFIS)代表了一种强大的自适应非线性网络,其体系结构可以被分成非线性块和线性系统。本文介绍了基于Hammerstein模型的非线性系统识别方法。在所提出的方案中,该系统通过适应ANFIS方案进行建模,利用IT与HammerSein模型之间的相似性。为了识别所建模系统的参数,所提出的方法使用最近称为重力搜索算法(GSA)的自然启发方法。与大多数现有的优化算法相比,GSA在复杂的多模式问题中提供了更好的性能,避免了临界缺陷,例如过早融合到次优溶液。为了展示所提出的方案的有效性,通过不同复杂模型的数值模拟将其建模精度与其他流行的进化计算算法进行了比较。

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