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Constrained Gaussian Process Learning for Model Predictive Control ?

机译:用于模型预测控制的受限高斯进程学习

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Many control tasks can be formulated as tracking problems of a known or unknown reference signal. examples are motion compensation in collaborative robotics, the synchronisation of oscillations for power systems or the reference tracking of recipes in chemical process operation. Both the tracking performance and the stability of the closed-loop system depend strongly on two factors: Firstly, they depend on whether the future reference signal required for tracking is known, and secondly, whether the system can track the reference at all. This paper shows how to use machine learning, i.e. Gaussian processes, to learn a reference from (noisy) data while guaranteeing trackability of the modified desired reference predictions within the framework of model predictive control. Guarantees are provided by adjusting the hyperparameters via a constrained optimisation. Two specific scenarios, i.e. asymptotically constant and periodic REFERENCES, are discussed.
机译:可以将许多控制任务作为已知或未知参考信号的跟踪问题。实施例是协同机器人中的运动补偿,电力系统的振荡同步或化学过程操作中的配方的参考跟踪。闭环系统的跟踪性能和稳定性都依赖于两个因素:首先,它们取决于跟踪所需的未来参考信号是已知的,其次,系统是否可以跟踪引用。本文显示了如何使用机器学习,即高斯过程,学习(噪声)数据的参考,同时保证模型预测控制框架内修改所需的参考预测的可跟踪性。通过受约束优化调整封闭式计量来提供保证。讨论了两个特定场景,即渐近恒定和周期性的参考。

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