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首页> 外文期刊>Smart Materials & Structures >Hysteresis modeling and identification of a dielectric electro-active polymer actuator using an APSO-based nonlinear Preisach NARX fuzzy model
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Hysteresis modeling and identification of a dielectric electro-active polymer actuator using an APSO-based nonlinear Preisach NARX fuzzy model

机译:使用基于APSO的非线性Preisach NARX模糊模型对电活性聚合物致动器进行磁滞建模和识别

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摘要

Dielectric electro-active polymer (DEAP) materials are attractive since they are low cost, lightweight and have a large deformation capability. They have no operating noise, very low electric power consumption and higher performance and efficiency than competing technologies. However, DEAP materials generally have strong hysteresis as well as uncertain and nonlinear characteristics. These disadvantages can limit the efficiency in the use of DEAP materials. To address these limitations, this research will present the combination of the Preisach model and the dynamic nonlinear autoregressive exogenous (NARX) fuzzy model-based adaptive particle swarm optimization (APSO) identification algorithm for modeling and identification of the nonlinear behavior of one typical type of DEAP actuator. Firstly, open loop input signals are applied to obtain nonlinear features and to investigate the responses of the DEAP actuator system. Then, a Preisach model can be combined with a dynamic NARX fuzzy structure to estimate the tip displacement of a DEAP actuator. To optimize all unknown parameters of the designed combination, an identification scheme based on a least squares method and an APSO algorithm is carried out. Finally, experimental validation research is carefully completed, and the effectiveness of the proposed model is evaluated by employing various input signals.
机译:介电电活性聚合物(DEAP)材料具有成本低,重量轻且变形能力大的特点,因此具有吸引力。与竞争技术相比,它们没有操作噪音,非常低的功耗以及更高的性能和效率。但是,DEAP材料通常具有很强的磁滞以及不确定和非线性的特性。这些缺点会限制DEAP材料的使用效率。为了解决这些局限性,本研究将结合Preisach模型和基于动态非线性自回归外生(NARX)模糊模型的自适应粒子群优化(APSO)识别算法,以对一种典型类型的非线性行为进行建模和识别。 DEAP执行器。首先,使用开环输入信号获得非线性特征并研究DEAP执行器系统的响应。然后,可以将Preisach模型与动态NARX模糊结构结合起来,以估计DEAP执行器的尖端位移。为了优化设计组合的所有未知参数,执行了基于最小二乘法和APSO算法的识别方案。最后,认真完成了实验验证研究,并通过采用各种输入信号来评估所提出模型的有效性。

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