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Decoupling Research of a Novel Three-Dimensional Force Flexible Tactile Sensor Based on an Improved BP Algorithm

机译:基于改进BP算法的新型三维力柔性触觉传感器解耦研究

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Decoupling research on flexible tactile sensors play a very important role in the intelligent robot skin and tactile-sensing fields. In this paper, an efficient machine learning method based on the improved back-propagation (BP) algorithm is proposed to decouple the mapping relationship between the resistances of force-sensitive conductive pillars and three-dimensional forces for the 6 × 6 novel flexible tactile sensor array. Tactile-sensing principles and numerical experiments are analyzed. The tactile sensor array model accomplishes the decomposition of the force components by its delicate structure, and avoids direct interference among the electrodes of the sensor array. The force components loaded on the tactile sensor are decoupled with a very high precision from the resistance signal by the improved BP algorithm. The decoupling results show that the k -cross validation ( k -CV) algorithm is a highly effective method to improve the decoupling precision of force components for the novel tactile sensor. The large dataset with the k -CV method obtains a better decoupling accuracy of the force components than the small dataset. All of the decoupling results are fairly good, and they indicate that the improved BP model with a strong non-linear approaching ability has an efficient and valid performance in decoupling force components for the tactile sensor.
机译:柔性触觉传感器的去耦研究在智能机器人皮肤和触觉领域中起着非常重要的作用。本文提出了一种基于改进的反向传播(BP)算法的高效机器学习方法,以解耦6×6新型柔性触觉传感器的力敏导电柱的电阻与三维力之间的映射关系数组。分析了触觉原理和数值实验。触觉传感器阵列模型通过其精细的结构完成了力分量的分解,并避免了传感器阵列电极之间的直接干扰。通过改进的BP算法,加载在触觉传感器上的力分量可以非常高精度地与阻力信号分离。解耦结果表明,k交叉验证(k -CV)算法是一种提高新型触觉传感器力分量解耦精度的高效方法。使用k -CV方法的大型数据集比小型数据集具有更好的力分量解耦精度。所有的去耦结果都相当好,它们表明具有强大的非线性逼近能力的改进的BP模型在触觉传感器的去耦力分量方面具有有效和有效的性能。

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