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首页> 外文期刊>IFAC PapersOnLine >A Novel Approach to T-S Fuzzy Modeling of Nonlinear Dynamic Systems with Uncertainties using Symbolic Interval-Valued Outputs
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A Novel Approach to T-S Fuzzy Modeling of Nonlinear Dynamic Systems with Uncertainties using Symbolic Interval-Valued Outputs

机译:具有符号间隔值输出的不确定性非线性动力系统T-S模糊建模的新方法

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A novel approach to Takagi-Sugeno (T-S) fuzzy modeling of a class of nonlineardynamic systems having variability in their outputs for the Nonlinear Output Error (NOE)case is addressed in this article. Multiple input-output datasets were obtained by repeating the identification experiment. The variability in the output time series is captured by defining the envelops of response at each time instant. These envelops actually provide the confidence interval based upper and lower bounds of the output time series using the extended Chebyshev’s Inequality. Different from the previous approach, in which two independent T-S fuzzy models were used for identifying each bound, a single T-S fuzzy model is identified in this work, which resulted in interval parameters for the antecedent and consequent variables. This is accomplished by first transforming the bounds into the symbolic interval-valued data and then using this data for identification. In order to get the expected value of the response, the estimated lower and upper bound time series of the identified T-S fuzzy model were averaged out at each time instant, as permitted by the extended Chebyshev’s Inequality. The proposed approach is demonstrated on an industrial diesel-engine electro-mechanical throttle valve.
机译:本文针对非线性输出误差(NOE)情况,其输出具有可变性的一类非线性动力学系统的Takagi-Sugeno(T-S)模糊建模提出了一种新颖的方法。通过重复识别实验获得了多个输入输出数据集。通过定义每个时刻的响应包络,可以捕获输出时间序列的可变性。这些信封实际上使用扩展的Chebyshev不等式提供了基于置信区间的输出时间序列的上下限。与以前的方法不同,在以前的方法中,使用两个独立的T-S模糊模型来识别每个边界,而在此工作中则只识别了一个T-S模糊模型,从而产生了前因变量和后因变量的区间参数。首先通过将边界转换为符号间隔值数据,然后使用此数据进行标识来实现此目的。为了获得期望的响应值,在扩展的切比雪夫不等式允许的情况下,在每个时刻均对所识别的T-S模糊模型的估计的上下限时间序列进行平均。在工业柴油发动机机电节气门上演示了该方法。

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