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Effects of Increasing the Footprints of Uncertainty on Analytical Structure of the Classes of Interval Type-2 Mamdani and TS Fuzzy Controllers

机译:不确定性足迹的增加对区间2型Mamdani和TS模糊控制器类别分析结构的影响

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The fundamental difference between an interval type-2 (IT2) fuzzy controller and a type-1 fuzzy controller is the footprint of uncertainty (FOU) of an IT2 fuzzy set. In this paper, we study how FOUs affect the analytical structure (i.e., the input-output mathematical relationship) of a broad class of IT2 Mamdani and takagi-sugeno (TS) controllers. The controllers employ arbitrary fuzzy rules, the Karnik-Mendel (KM) or Enhanced KM type-reducer, the minimum AND operator, and the centroid defuzzifier. The controllers utilize commonly used IT2 fuzzy sets for their input variables and any kind of type-2 fuzzy sets for their output variable. We prove that, with increase of FOUs of the input fuzzy sets, the Mamdani controllers approach constant controllers, and the TS controllers approach piecewise linear controllers. The resemblance to the constant or pricewise linear controllers increases as the FOUs increase. When all the FOUs are at their maximum (to reflect the highest level of uncertainties), the Mamdani and TS controllers become the constant controllers and piecewise linear controllers, respectively. We investigate how change in the resemblance takes place progressively as FOUs increase. We also show that an increase in the resemblance narrows control gain variations for part of the IT2 controllers, which can worsen control performance. These findings implicit controller design-too large FOUs are generally undesirable for the input fuzzy sets because they can make an IT2 controller behave like a constant or piecewise linear controller. Real-time control experiment results are provided to illustrate the theoretical analysis.
机译:区间类型2(IT2)模糊控制器和类型1模糊控制器之间的根本区别是IT2模糊集的不确定性(FOU)占用量。在本文中,我们研究了FOU如何影响广泛的IT2 Mamdani和takagi-sugeno(TS)控制器的分析结构(即输入-输出数学关系)。控制器采用任意模糊规则,Karnik-Mendel(KM)或增强型KM类型减少器,最小AND运算符和质心解模糊器。控制器将常用的IT2模糊集用于其输入变量,并将任何类型的2型模糊集用于其输出变量。我们证明,随着输入模糊集的FOU的增加,Mamdani控制器逼近恒定控制器,TS控制器逼近分段线性控制器。随着FOU的增加,与常数或价格线性控制器的相似性也会增加。当所有FOU都达到最大值(以反映最大程度的不确定性)时,Mamdani和TS控制器分别成为常数控制器和分段线性控制器。我们研究了随着FOU的增加,相似性如何发生变化。我们还表明,相似度的增加会缩小部分IT2控制器的控制增益变化,这可能会使控制性能恶化。这些发现隐含的控制器设计-过大的FOU通常对于输入模糊集是不可取的,因为它们会使IT2控制器的行为类似于恒定或分段线性控制器。提供了实时控制实验结果以说明理论分析。

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