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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >Adaptive actor-critic learning for the control of mobile robots by applying predictive models
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Adaptive actor-critic learning for the control of mobile robots by applying predictive models

机译:通过应用预测模型对移动机器人进行控制的自适应行为者批判学习

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摘要

In this paper, we propose two methods of adaptive actor-critic architectures to solve control problems of nonlinear systems. One method uses two actual states at time k and time k + 1 to update the learning algorithm. The basic idea of this method is that the agent can directly take some knowledge from the environment to improve its knowledge. The other method only uses the state at time k to update the algorithm. This method is called, learning from prediction (or simulated experience). Both methods include one or two predictive models, which are assumed to be applied to construct predictive states and a model-based actor (MBA). Here, the MBA as an actor can be viewed as a network where the connection weights are the elements of the feedback gain matrix. In the critic part, two value-functions are realized as a pure static mapping, which can be reduced to a nonlinear current estimator by using the radial basis function neural networks (RBFNNs). Simulation results obtained for a dynamical model of nonholonomic mobile robots with two independent driving wheels are presented. They show the effectiveness of the proposed approaches for the trajectory tracking control problem.
机译:在本文中,我们提出了两种自适应行动者批评体系结构的方法来解决非线性系统的控制问题。一种方法使用时间k和时间k + 1的两个实际状态来更新学习算法。这种方法的基本思想是代理可以直接从环境中获取一些知识以改善其知识。另一种方法仅使用时间k处的状态来更新算法。这种方法称为从预测(或模拟经验)中学习。两种方法都包括一个或两个预测模型和一个基于模型的参与者(MBA),这两个模型被假定用于构建预测状态。在这里,作为参与者的MBA可以看作是一个网络,其中连接权重是反馈增益矩阵的元素。在批评者部分,两个值函数被实现为纯静态映射,可以通过使用径向基函数神经网络(RBFNN)简化为非线性电流估计器。给出了具有两个独立驱动轮的非完整移动机器人动力学模型的仿真结果。他们显示了所提出的方法对轨迹跟踪控制问题的有效性。

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