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首页> 外文期刊>Neural Networks and Learning Systems, IEEE Transactions on >Adaptive Critic Learning for Constrained Optimal Event-Triggered Control With Discounted Cost
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Adaptive Critic Learning for Constrained Optimal Event-Triggered Control With Discounted Cost

机译:采用折扣成本的受限制最佳事件触发控制的适应性批评评论

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This article studies an optimal event-triggered control (ETC) problem of nonlinear continuous-time systems subject to asymmetric control constraints. The present nonlinear plant differs from many studied systems in that its equilibrium point is nonzero. First, we introduce a discounted cost for such a system in order to obtain the optimal ETC without making coordinate transformations. Then, we present an event-triggered Hamilton–Jacobi–Bellman equation (ET-HJBE) arising in the discounted-cost constrained optimal ETC problem. After that, we propose an event-triggering condition guaranteeing a positive lower bound for the minimal intersample time. To solve the ET-HJBE, we construct a critic network under the framework of adaptive critic learning. The critic network weight vector is tuned through a modified gradient descent method, which simultaneously uses historical and instantaneous state data. By employing the Lyapunov method, we prove that the uniform ultimate boundedness of all signals in the closed-loop system is guaranteed. Finally, we provide simulations of a pendulum system and an oscillator system to validate the obtained optimal ETC strategy.
机译:本文研究了不对称控制约束的非线性连续时间系统的最佳事件触发控制(ETC)问题。本发明的非线性设备与许多研究系统不同,因为其平衡点是非零。首先,我们为这种系统介绍了折扣成本,以便在不进行坐标转换的情况下获得最佳等。然后,我们在折扣成本约束的最佳状态下出现了一个事件触发的汉密尔顿 - jacobi-bellman方程(et-hjbe)。之后,我们提出了一种事件触发条件,保证了最小的界面时间的正下限。为了解决ET-HJBE,我们在适应评论家学习框架下构建批评网络。批评网络权重向量通过修改的梯度滴定方法调整,该方法同时使用历史和瞬时状态数据。通过采用Lyapunov方法,我们证明了闭环系统中所有信号的均匀终极界限是保证的。最后,我们提供了摆动系统和振荡器系统的模拟,以验证获得的最佳等策略。

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