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Adaptive neuro-fuzzy inference system-based controllers for smart material actuator modelling

机译:基于自适应神经模糊推理系统的控制器,用于智能材料执行器建模

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摘要

An intelligent approach for smart material actuator modelling of the actuation lines in a morphing wing system is presented, based on adaptive neuro-fuzzy inference systems. Four independent neuro-fuzzy controllers are created from the experimental data using a hybrid method - a combination of back propagation and least-mean-square methods - to train the fuzzy inference systems. The controllers' objective is to correlate each set of forces and electrical currents applied on the smart material actuator to the actuator's elongation. The actuator experimental testing is performed for five force cases, using a variable electrical current. An integrated controller is created from four neuro-fuzzy controllers, developed with Matlab/Simulink software for electrical current increases, constant electrical current, electrical current decreases, and for null electrical current in the cooling phase of the actuator, and is then validated by comparison with the experimentally obtained data.
机译:提出了一种基于自适应神经模糊推理系统的智能翼致动翼致动线建模方法。使用混合方法(反向传播和最小均方方法的组合)从实验数据中创建四个独立的神经模糊控制器,以训练模糊推理系统。控制器的目的是将施加在智能材料执行器上的每组力和电流与执行器的伸长率相关联。执行器实验测试是在五个受力情况下使用可变电流进行的。由四个神经模糊控制器创建一个集成控制器,并使用Matlab / Simulink软件进行开发,以实现电流增加,恒定电流,电流减小以及致动器冷却阶段的零电流,然后通过比较进行验证与实验获得的数据。

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