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Gradient-Descent based Nonlinear Model Predictive Control for Input-Affine Systems

机译:基于渐变基于血管的非线性模型预测控制 - 用于输入仿射系统

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This paper addresses the Nonlinear Model Predictive Control of Input-Affine Systems. The Two Point Boundary Value Problem resulting from the associated Optimal Control Problem is reformulated as an optimization problem, which is locally convex under assumptions coherent with the application. This optimization problem is solved on-line using the gradient descent method, where the gradients are approximated based on geometrical information of the dynamic system differential equations. The resulting control method is summarized in three algorithms. The proposed controller is easy to implement and requires no iterations. As a consequence, the suboptimal control input can be computed in a short time interval, making it ideal for fast highly nonlinear systems. As an example the attitude control of a quadrotor is presented. Simulation results show excellent performance in a wide range of state values, well beyond linear regimes.
机译:本文解决了输入仿射系统的非线性模型预测控制。由相关的最优控制问题产生的两个点边值问题被重新重新设计为优化问题,其在与应用程序相干的假设下局部凸起。使用梯度下降方法在线解决该优化问题,其中基于动态系统微分方程的几何信息来近似梯度。得到的控制方法总结了三种算法。所提出的控制器易于实施,不需要迭代。结果,次优控制输入可以在短时间内计算,使其成为快速高度非线性系统的理想选择。作为示例,呈现了四元电机的姿态控制。仿真结果在广泛的状态值中显示出优异的性能,超出线性制度。

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