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An equilibrium-based learning approach with application to robotic fish

机译:一种基于均衡的学习方法,应用于机器人鱼类

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In this work, we extend the concept of integral control to equilibrium-based learning control. As far as the plant reaches an equilibrium that deviates from the reference, a learning mechanism will update the control action. The new control action will drive the plant output to reach a new equilibrium that is closer the reference set-point. By applying fixed point theorem, we can prove the convergence of the controlled equilibrium to the reference set-point exponentially, where the plant dynamics can be generically nonlinear and non-affine. The only prior information required is a non-singular input-output gradient of the stabilized plant. As a real-time application, the proposed control method is applied to motion control of a tail-actuated robotic fish. To facilitate the controller design, the dynamical model of the robotic fish is established based on Newton's second law and Lighthill's small amplitude model. In the end, both simulations and experiments are conducted to illustrate the effectiveness of the proposed learning approach.
机译:在这项工作中,我们将积分控制的概念扩展到基于均衡的学习控制。就工厂达到偏离参考的均衡,学习机制将更新控制动作。新的控制动作将推动工厂输出以达到更接近参考设定点的新均衡。通过应用定期定理,我们可以以指数为指数证明受控均衡对参考设定点的收敛性,其中植物动力学可以是普遍的非线性和非仿射。所需的唯一先前信息是稳定植物的非单数输入输出梯度。作为实时应用,所提出的控制方法应用于尾部致动的机器人鱼类的运动控制。为方便控制器设计,基于牛顿的第二法和灯灰的小幅度模型建立了机器人鱼的动态模型。最后,进行模拟和实验,以说明所提出的学习方法的有效性。

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