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Linear approximation of Karnik-Mendel type reduction algorithm

机译:Karnik-Mendel类型归约算法的线性逼近

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Karnik-Mendel (KM) algorithm is the most used and researched type reduction (TR) algorithm in literature. This algorithm is iterative in nature and despite consistent long term effort, no general closed form formula has been found to replace this computationally expensive algorithm. In this research work, we demonstrate that the outcome of KM algorithm can be approximated by simple linear regression techniques. Since most of the applications will have a fixed range of inputs with small scale variations, it is possible to handle those complexities in design phase and build a fuzzy logic system (FLS) with low run time computational burden. This objective can be well served by the application of regression techniques. This work presents an overview of feasibility of regression techniques for design of data-driven type reducers while keeping the uncertainty bound in FLS intact Simulation results demonstrates the approximation error is less than 2%. Thus our work preserve the essence of Karnik-Mendel algorithm and serves the requirement of low computational complexities.
机译:Karnik-Mendel(KM)算法是文献中使用最多的研究类型缩减(TR)算法。该算法本质上是迭代的,尽管长期坚持不懈地进行努力,但尚未找到通用的封闭形式公式来代替此计算上昂贵的算法。在这项研究工作中,我们证明了KM算法的结果可以通过简单的线性回归技术来近似。由于大多数应用程序的输入范围是固定的,并且比例变化很小,因此有可能在设计阶段处理这些复杂性,并以较低的运行时间计算负担来构建模糊逻辑系统(FLS)。通过应用回归技术可以很好地实现这一目标。这项工作概述了回归技术在设计数据驱动型减速器时的可行性,同时使FLS的不确定性保持完整。仿真结果表明,近似误差小于2%。因此,我们的工作保留了Karnik-Mendel算法的本质,并满足了低计算复杂性的要求。

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