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Deep Learning-based Approximate Nonlinear Model Predictive Control with Offset-free Tracking for Embedded Applications

机译:基于深度学习的近似非线性模型预测控制,嵌入式应用程序无偏移跟踪

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The implementation of nonlinear model predictive control (NMPC) in applications with fast dynamics remains an open challenge due to the need to solve a potentially non-convex optimization problem in real-time. The offline approximation of NMPC laws using deep learning has emerged as a powerful framework for overcoming these challenges in terms of speed and resource requirements. Deep neural networks (DNNs) are particularly attractive for embedded applications due to their small memory footprint. This work introduces a strategy for achieving offset-free tracking despite the presence of error in DNN-based approximate NMPC. The proposed approach involves a correction factor defined via a small-scale target tracking optimization problem, which is easier to approximate than the tracking NMPC law itself. As such, the overall control strategy is amenable to efficient implementations on low-cost embedded hardware. The effectiveness of the proposed offset-free DNN-based NMPC is demonstrated on a benchmark problem in which the control strategy is deployed onto a field programmable gate array (FPGA) architecture that is verified using hardware-in-the-loop simulations.
机译:由于需要在实时解决潜在的非凸优化问题,在具有快速动态的应用中的非线性模型预测控制(NMPC)的实施仍然是开放挑战。利用深度学习的NMPC法律的离线近似是在速度和资源要求方面克服了这些挑战的强大框架。由于其小的内存占地面积,深度神经网络(DNN)对嵌入式应用特别有吸引力。这项工作介绍了实现无偏移跟踪的策略,尽管基于DNN的近似NMPC存在错误。该方法涉及通过小规模的目标跟踪优化问题定义的校正因子,这比跟踪NMPC法本身更容易近似。因此,整体控制策略适用于低成本嵌入式硬件的有效实现。在基准基于DNN的NMPC的基准问题上证明了所提出的无偏移DNN的NMPC的有效性,其中控制策略部署到使用硬件循环仿真验证的现场可编程门阵列(FPGA)架构上。

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