BP and RBF neural network in decoupling research on flexible tactile sensors

Junxiang Ding, Fang Gao, Xuan Wei, Yongping Wang, H. Pan, Yubing Wang, Yujian Ge
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引用次数: 1

Abstract

This paper proposes two decoupling methods for a flexible tactile sensor, improved back propagation neural network (BPNN) and radical basis function neural network (RBFNN). In the numerical experiments, the number of hidden layer nodes of the BPNN is optimized and k-fold-cross-validation (k-CV) method is also applied to construct the dataset. Information of the tactile sensor array at different scales is also used to construct the BPNN. RBFNN is applied to approach the nonlinear relationship between the deformation and the three-dimensional force of the tactile sensor numerical model built through finite element analysis. The decoupling results show that the RBFNN with high nonlinear approximation ability has good performance in decoupling three-dimensional force and satisfies both the decoupling accuracy and real-time requirements of the tactile sensor. Different white Gaussian noises (WGN) are added into the ideal model of the flexible tactile sensors. Then the modified RBFNN is applied to approximate and decouple the mapping relationship between row-column resistance with WGNs and the three-dimensional deformation. Numerical experiments demonstrate that the improved RBFNN doesn't rely on the mathematical model of the system and has good anti-noise ability and robustness.
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柔性触觉传感器解耦研究中的BP和RBF神经网络
针对柔性触觉传感器,提出了改进的反向传播神经网络(BPNN)和径向基函数神经网络(RBFNN)两种解耦方法。在数值实验中,优化了BPNN的隐层节点数,并采用k-fold交叉验证(k-CV)方法构建数据集。同时利用不同尺度下的触觉传感器阵列信息来构建bp神经网络。利用RBFNN对通过有限元分析建立的触觉传感器数值模型的变形与三维力之间的非线性关系进行求解。解耦结果表明,该神经网络具有较高的非线性逼近能力,在三维力解耦方面具有良好的性能,满足了触觉传感器的解耦精度和实时性要求。在柔性触觉传感器的理想模型中加入不同的高斯白噪声。然后利用改进的RBFNN逼近并解耦了带WGNs的行-列电阻与三维变形之间的映射关系。数值实验表明,改进的RBFNN不依赖于系统的数学模型,具有良好的抗噪能力和鲁棒性。
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