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Neural network identification, predictive modeling and control with a sliding mode learning mechanism: an application to the robotic manipulators

机译:具有滑模学习机制的神经网络识别,预测建模和控制:机器人操纵器的应用

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The features of a novel adaptive PID-like neuro-control scheme for nonlinear plants are presented. The controller tuning is based on an estimate of the commanderror determined via one-step-ahead neural predictive model of the plant. An on-line learning sliding mode algorithm is applied to the model and to the controller as well. The control architecture developed has been simulated and its effect on the trajectory tracking performance of a simple two-degree-of-freedom robot manipulator has been evaluated. The results show that both learning structures, the neural predictive model and the controller, inherit some of the advantages of SMC: high speed of learning and robustness.
机译:提出了一种用于非线性工厂的新型适应性PID样神经控制方案的特征。控制器调谐基于通过工厂的一步内神经预测模型确定的CommanderRor的估计。在线学习滑模算法也应用于模型和控制器。已经进行了模拟所开发的控制架构,并且已经评估了对简单的两度自由度机器人操纵器的轨迹跟踪性能的影响。结果表明,学习结构,神经预测模型和控制器,继承了SMC的一些优点:高学习和鲁棒性。

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