伺服系统的多层神经网络控制器

E. Khan, T. Ogunfunmi
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引用次数: 0

摘要

研究了在现有伺服电机控制器上加入多层前馈神经网络控制器,使之成为智能自适应控制器的可能性。使用现有的控制器保证了粗学习,从而提供了更好的泛化和校正能力。在各种系统非线性、参数随时间变化和不确定性的情况下,提出了几种学习算法来正确校正电机输入。仿真结果令人鼓舞。将该控制器的性能与比例-积分-导数(PID)控制器和模型参考自适应(MRAC)控制器进行了比较。
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A multilayered neural net controller for servo systems
The authors investigate the possibility of adding a multilayered feedforward neural network controller to an existing servomotor controller to make it an intelligent adaptive controller. The use of the existing controller guarantees coarse learning and thus provides better generalization and correction capabilities. Several learning algorithms are proposed to properly correct the motor inputs under various system nonlinearities, parameter variations over time, and uncertainties. Simulations show very encouraging results. The performance of the proposed controller is compared with that of a proportional-integral-derivative (PID) controller and a model reference adaptive (MRAC) controller.<>
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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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