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Evolutionary calibration of fractional fuzzy controllers

机译:分数模糊控制器的进化校准

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Fuzzy controllers (FCs) that are based on integer schemes have demonstrated their performance in an extensive variety of applications. However, several dynamic systems can be more accurately controlled by fractional controllers yielding an increased interest in generalizing the design of FCs with fractional operators. In the design stage of fractional FCs, the parameter calibration process is transformed into a multidimensional optimization problem where fractional orders, as well as the controller parameters of the fuzzy system, are considered as decision variables. Under this approach, the complexity of the optimization problem tends to produce multimodal error surfaces for which their respective cost functions are significantly difficult to minimize. Several algorithms based on evolutionary computation principles have been successfully applied to identify the optimal parameters of fractional FCs. However, most of them still exhibit serious limitation since they frequently obtain sub-optimal solutions after an improper equilibrium between exploitation and exploration in their search strategies. This paper presents an algorithm for the optimal parameter calibration of fractional FCs. In order to determine the best parameters, the proposed method uses a new evolutionary method called Social Spider Optimization (SSO), which is inspired on the emulation of the collaborative behavior of social-spiders. In SSO, solutions imitate a set of spiders, which cooperate to each other by following the natural laws of a cooperative colony. Unlike most of the existing evolutionary algorithms, the method explicitly evades the concentration of individuals in the best positions, avoiding critical flaws such as the premature convergence to sub-optimal solutions and the limited balance of exploration-exploitation. Numerical simulations have been conducted on several plants to show the effectiveness of the proposed scheme.
机译:基于整数方案的模糊控制器(FCS)已经在广泛的应用中展示了它们的性能。然而,通过分数控制器可以更准确地控制若干动态系统,从而增加了通过分数运算符概括FCS设计的兴趣增加。在分数FCS的设计阶段,参数校准过程被转换为多维优化问题,其中分数订单以及模糊系统的控制器参数被视为决策变量。在这种方法下,优化问题的复杂性倾向于产生多模式误差表面,其各自的成本函数显着难以最小化。已经成功地应用了基于进化计算原理的几种算法来识别分数FC的最佳参数。然而,大多数大多数仍然表现出严重的限制,因为它们经常在搜索策略中剥削和勘探之间的不当均衡后获得次优溶液。本文介绍了分数FCS最佳参数校准的算法。为了确定最佳参数,所提出的方法使用称为社交蜘蛛优化(SSO)的新进化方法,这是在仿真社交蜘蛛的协作行为的启发。在SSO中,通过遵循合作殖民地的自然定律,解决方案模仿一组蜘蛛。与大多数现有的进化算法不同,该方法明确地避免了最佳位置中个体的浓度,避免了诸如过早收敛的临界缺陷以及勘探 - 剥削的有限平衡。已经在几种植物上进行了数值模拟以表明提出方案的有效性。

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