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Neuromorphic Learning of Continuous-Valued Mappings in the Presence of Noise: Application to Real-Time Adaptive Control

机译:噪声环境下连续值映射的神经形态学习:在实时自适应控制中的应用

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The ability of feed-forward neural net architectures to learn continuous-valued mappings in the presence of noise is demonstrated in relation to parameter identification and real-time adaptive control applications. Factors and parameters influencing the learning performance of such nets in the presence of noise are identified. Their effects are discussed through a computer simulation of the Back-Error-Propagation algorithm by taking the example of the cart-pole system controlled by a nonlinear control law. Adequate sampling of the state space is found to be essential for canceling the effect of the statistical fluctuations and allowing learning to take place.

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