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Takagi-sugeno fuzzy model identification using coevolution particle swarm optimization with multi-strategy

机译:基于多策略协同进化粒子群算法的Takagi-Sugeno模糊模型辨识

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摘要

The particle swarm optimization (PSO) algorithm is widely used in identifying Takagi-Sugeno (T-S) fuzzy system models. However, PSO suffers from premature convergence and is easily trapped into local optima, which affects the accuracy of T-S model identification. An immune coevolution particle swarm optimization with multi-strategy (ICPSO-MS) is proposed for modeling T-S fuzzy systems. The proposed ICPSO-MS consists of one elite subswarm and several normal subswarms. Each normal subswarm adopts a different strategy for adjusting the acceleration coefficients. A Cauchy learning operator is used to accelerate the convergence of the normal subswarm. During the iteration step, the best individual in each normal subswarm is added to the elite subswarm. Using adaptive hyper-mutation, the immune clonal selection operator is used to optimize the elite subswarm while the individuals in the elite subswarm migrate to the normal subswarms. This shared migration mechanism allows full exchange of information and coevolution. The performance of the proposed algorithm is evaluated on a suite of numerical optimization functions. The results show good performance of ICPSO-MS in solving numerical problems when compared with other recent variants of PSO. The performance of ICPSO-MS is further evaluated when identifying the T-S model, with simulation results on several typical nonlinear systems showing that the proposed method generates a good T-S fuzzy model with high accuracy and strong generalizability.
机译:粒子群优化算法(PSO)被广泛用于识别高木-Sugeno(T-S)模糊系统模型。但是,PSO会过早收敛,容易陷入局部最优状态,这会影响T-S模型识别的准确性。提出了一种基于免疫多策略的免疫进化粒子群算法(ICPSO-MS),用于T-S模糊系统的建模。拟议的ICPSO-MS由一个精英亚群和几个正常亚群组成。每个正常子群采用不同的策略来调整加速度系数。 Cauchy学习算子用于加速正常亚群的收敛。在迭代步骤中,将每个正常子群中的最佳个体添加到精英子群中。使用自适应超突变,免疫克隆选择算子被用于优化精英亚群,而精英亚群中的个体迁移到正常亚群。这种共享的迁移机制允许信息的全面交换和协同进化。提出的算法的性能在一组数值优化函数上进行了评估。与其他最新的PSO变体相比,结果表明ICPSO-MS在解决数值问题方面具有良好的性能。识别T-S模型时,将进一步评估ICPSO-MS的性能,在几个典型的非线性系统上的仿真结果表明,该方法可生成具有高精度和强通用性的良好T-S模糊模型。

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