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Flex Sensor Compensator via Hammerstein–Wiener Modeling Approach for Improved Dynamic Goniometry and Constrained Control of a Bionic Hand

机译:通过Hammerstein-Wiener建模方法的柔性传感器补偿器用于改善动态测角和仿生手的约束控制

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摘要

In this paper, a new control-centric approach is introduced to model the characteristics of flex sensors on a goniometric glove, which is designed to capture the user hand gesture that can be used to wirelessly control a bionic hand. The main technique employs the inverse dynamic model strategy along with a black-box identification for the compensator design, which is aimed to provide an approximate linear mapping between the raw sensor output and the dynamic finger goniometry. To smoothly recover the goniometry on the bionic hand’s side during the wireless transmission, the compensator is restructured into a Hammerstein–Wiener model, which consists of a linear dynamic system and two static nonlinearities. A series of real-time experiments involving several hand gestures have been conducted to analyze the performance of the proposed method. The associated temporal and spatial gesture data from both the glove and the bionic hand are recorded, and the performance is evaluated in terms of the integral of absolute error between the glove’s and the bionic hand’s dynamic goniometry. The proposed method is also compared with the raw sensor data, which has been preliminarily calibrated with the finger goniometry, and the Wiener model, which is based on the initial inverse dynamic design strategy. Experimental results with several trials for each gesture show that a great improvement is obtained via the Hammerstein–Wiener compensator approach where the resulting average errors are significantly smaller than the other two methods. This concludes that the proposed strategy can remarkably improve the dynamic goniometry of the glove, and thus provides a smooth human–robot collaboration with the bionic hand.
机译:在本文中,引入了一种新的以控制为中心的方法来对测角手套上的挠性传感器的特征进行建模,该方法旨在捕获可用于无线控制仿生手的用户手势。主要技术采用逆动态模型策略以及用于补偿器设计的黑匣子识别,旨在提供原始传感器输出和动态手指测角仪之间的近似线性映射。为了在无线传输过程中顺利恢复仿生手侧面的测角法,补偿器被重组为Hammerstein-Wiener模型,该模型由线性动态系统和两个静态非线性组成。已经进行了一系列涉及几个手势的实时实验,以分析该方法的性能。记录手套和仿生手的相关时间和空间手势数据,并根据手套和仿生手的动态测角法之间的绝对误差的积分来评估性能。还将所提出的方法与已通过手指测角法进行了初步校准的原始传感器数据以及基于初始逆动态设计策略的维纳模型进行了比较。针对每个手势进行的多次试验的实验结果表明,通过Hammerstein-Wiener补偿器方法可以取得很大的改进,该方法所产生的平均误差明显小于其他两种方法。结论是,提出的策略可以显着改善手套的动态测角,从而提供与仿生手的平滑的人机协作。

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