Inverse modeling of dynamical system-network architecture with identification network and adaptation network

T. Kimoto, Y. Yaginuma, S. Nagata, K. Asakawa
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引用次数: 1

Abstract

The authors describe a neural network architecture enabling inverse modeling of a nonlinear dynamical system. It consists of two neural networks, a system identification network and an adaptation network. The effectiveness of the proposed network architecture is examined by applying it to a digital mobile communication adaptive equalizer. In digital mobile communication, the problem of multipath fading caused by vehicular movement becomes a nonlinear dynamical system. The proposed network architecture is able to obtain an inverse model of such transmission channels and attain equalization of signal distortions. The performance of the proposed adaptive equalizer was evaluated by computer simulation. The bit error rate was found to decrease by one-third compared to that without an equalizer.<>
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基于辨识网络和自适应网络的动态系统网络体系结构逆建模
作者描述了一种能够对非线性动力系统进行逆建模的神经网络结构。它由两个神经网络组成,一个是系统辨识网络,一个是自适应网络。通过将所提出的网络结构应用于数字移动通信自适应均衡器,验证了其有效性。在数字移动通信中,车辆运动引起的多径衰落问题成为一个非线性的动态系统。所提出的网络结构能够获得这种传输信道的逆模型,并实现信号畸变的均衡。通过计算机仿真对所提出的自适应均衡器的性能进行了评价。与没有均衡器相比,误码率降低了三分之一。
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Control of a robotic manipulating arm by a neural network simulation of the human cerebral and cerebellar cortical processes Neural network training using homotopy continuation methods A learning scheme of neural networks which improves accuracy and speed of convergence using redundant and diversified network structures The abilities of neural networks to abstract and to use abstractions Backpropagation based on the logarithmic error function and elimination of local minima
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