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A novel composite adaptive flap controller design by a high-efficient modified differential evolution identification approach

机译:一种新型复合自适应襟翼控制器设计,通过高效改良的差分进化识别方法设计

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摘要

The optimal tuning of adaptive flap controller can improve adaptive flap control performance on uncertain operating environments, but the optimization process is usually time-consuming and it is difficult to design proper optimal tuning strategy for the flap control system (FCS). To solve this problem, a novel adaptive flap controller is designed based on a high-efficient differential evolution (DE) identification technique and composite adaptive internal model control (CAIMC) strategy. The optimal tuning can be easily obtained by DE identified inverse of the FCS via CAIMC structure. To achieve fast tuning, a high-efficient modified adaptive DE algorithm is proposed with new mutant operator and varying range adaptive mechanism for the FCS identification. A tradeoff between optimized adaptive flap control and low computation cost is successfully achieved by proposed controller. Simulation results show the robustness of proposed method and its superiority to conventional adaptive IMC (AIMC) flap controller and the CAIMC flap controllers using other DE algorithms on various uncertain operating conditions. The high computation efficiency of proposed controller is also verified based on the computation time on those operating cases. (C) 2018 ISA. Published by Elsevier Ltd. All rights reserved.
机译:自适应襟翼控制器的最佳调整可以在不确定的操作环境中提高自适应襟翼控制性能,但优化过程通常是耗时的,并且难以为襟翼控制系统(FCS)设计适当的最佳调谐策略。为了解决这个问题,基于高效的差分演进(DE)识别技术和复合自适应内部模型控制(CAIMC)策略而设计了一种新颖的自适应襟翼控制器。通过Caimc结构通过DE识别FCS的逆逆转,可以容易地获得最佳调谐。为了实现快速调谐,提出了一种高效的改进的自适应DE算法,具有新的突变算子和FCS识别的不同范围自适应机制。通过提出的控制器成功实现了优化的自适应襟翼控制和低计算成本之间的权衡。仿真结果表明,在各种不确定操作条件下,所提出的方法及其对传统自适应IMC(AMIMC)襟翼控制器和CAIMC襟翼控制器的优越性的鲁棒性。建议控制器的高计算效率基于这些操作箱的计算时间验证。 (c)2018 ISA。 elsevier有限公司出版。保留所有权利。

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