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A software framework for embedded nonlinear model predictive control using a gradient-based augmented Lagrangian approach (GRAMPC)

机译:一种使用基于梯度的扩大拉格朗日方法的嵌入式非线性模型预测控制软件框架(Grampc)

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摘要

A nonlinear MPC framework is presented that is suitable for dynamical systems with sampling times in the (sub)millisecond range and that allows for an efficient implementation on embedded hardware. The algorithm is based on an augmented Lagrangian formulation with a tailored gradient method for the inner minimization problem. The algorithm is implemented in the software framework GRAMPC and is a fundamental revision of an earlier version. Detailed performance results are presented for a test set of benchmark problems and in comparison to other nonlinear MPC packages. In addition, runtime results and memory requirements for GRAMPC on ECU level demonstrate its applicability on embedded hardware.
机译:提出了非线性MPC框架,其适用于具有(子)毫秒范围内采样时间的动态系统,并且允许在嵌入式硬件上有效实现。该算法基于增强拉格朗日配方,具有针对内部最小化问题的定制梯度方法。该算法在软件框架Grampc中实现,是早期版本的基本修订版本。提供了详细的性能结果,用于测试基准问题的测试集,与其他非线性MPC封装相比。此外,Grampc对ECU级别的运行时果结果和内存要求展示了其对嵌入式硬件的适用性。

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