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Adaptive tuning of fuzzy membership functions for non-linear optimization using gradient descent method

机译:梯度下降法非线性优化的模糊隶属函数自适应调整

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摘要

This paper presents an adaptive fuzzy tuner for the optimization of non-linear, multi-variable problems. The gradient-descent method is used to adaptively tune the bases of the membership functions used in the fuzzy logic optimization. Theperformance of the optimization with adaptive tuning is tested in comparison with fuzzy optimization without adaptive tuning of membership functions. It is shown that the adaptive fuzzy optimization provides better performance by converging to the optimal value in lesser time and fewer iterations. A multi-variable, non-linear optimization problem is shown as an illustrative example to demonstrate improved performance. This adaptive tuning scheme has also been incorporated into the Generalized IntelligentGrinding Advisory System (GIGAS II) and results show that even for very complex problems such as manufacturing processes, improved performance can be obtained.
机译:本文提出了一种自适应模糊调谐器,用于优化非线性多变量问题。梯度下降法用于自适应地调整模糊逻辑优化中使用的隶属函数的基数。与没有对隶属函数进行自适应调整的模糊优化相比较,测试了采用自适应调整的优化性能。结果表明,自适应模糊优化通过在更少的时间和更少的迭代中收敛到最优值而提供了更好的性能。多变量非线性优化问题作为说明性示例显示,以演示改进的性能。此自适应调整方案也已合并到通用智能研磨咨询系统(GIGAS II)中,结果表明,即使对于非常复杂的问题(例如制造过程),也可以获得改进的性能。

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