自适应神经模糊推理系统在识别、建模和控制中的应用

Tehnika Pub Date : 2022-01-01 DOI:10.5937/tehnika2204439v
Mitra Vesović, Radisa Z. Jovanovic
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引用次数: 1

摘要

自适应神经模糊推理系统在科学研究和实际应用中得到越来越多的应用。生产的数字化和工业4.0的出现推动了这一趋势的发展,主要是由于通过集成人工神经网络和模糊逻辑来适应任务的能力,这可以在独特的框架中潜在地利用这两种技术的优势。这种方法便于建模、数据分析、分类和控制过程。与传统方法相比,ANFIS的优势体现在能够根据一组输入和规则库预测输出。此外,这些系统是合适的,因为它们提供了调整控制系统参数的可能性。本文介绍了ANFIS系统的结构,并通过比较分析对迄今为止取得的成果进行了详细的回顾,并强调了一些可能的跨学科应用领域。讨论了算法的变化、改进和创新的可能性,以及降低网络体系结构本身的复杂性。提出了一些新的,尚未使用的组合与元启发式优化方法。最后,对于何时何地应用ANFIS系统是有用的提供了重要的指导方针。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adaptive neuro fuzzy Inference systems in identification, modeling and control: The state-of-the-art
Adaptive Neural Fuzzy Inference Systems ANFIS have an increasing tendency to be used in scientific research and practical applications. The digitization of production and the emergence of Industry 4.0 enabled the development of this trend, primarily due to the ability to adapt to the task by integrating artificial neural networks and fuzzy logic, which can potentially use the advantages of both techniques in unique frameworks. This approach facilitated the modeling, data analysis, classification and control processes. The advantage of the ANFIS, compared to conventional methods, is reflected in the ability to predict the output based on a set of inputs and on the rule base. Also, these systems are suitable, because they provide the possibility to adjust the parameters of the control system. This paper presents the structure of the ANFIS system and gives a detailed review of the achievements so far, through a comparative analysis, where some possible spheres of interdisciplinary application are highlighted. Possibilities for variations, improvements and innovations of the algorithm, as well as reducing the complexity of the network architecture itself, are discussed. Proposals for some new, as yet unused combinations with metaheuristic optimization methods are presented. Finally, important guidelines are provided on when and where it is useful to apply ANFIS systems.
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