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Kernel Controllers: A Systems-Theoretic Approach for Data-Driven Modeling and Control of Spatiotemporally Evolving Processes

机译:内核控制器:一种系统 - 用于数据驱动建模的系统方法和时尚不断发展的过程

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We consider the problem of modeling, estimating, and controlling the latent state of a spatiotemporally evolving continuous function using very few sensor measurements and actuator locations. Our solution to the problem consists of two parts: a predictive model of functional evolution, and feedback based estimator and controllers that can robustly recover the state of the model and drive it to a desired function. We show that layering a dynamical systems prior over temporal evolution of weights of a kernel model is a valid approach to spatiotemporal modeling that leads to systems theoretic, control-usable, predictive models. We provide sufficient conditions on the number of sensors and actuators required to guarantee observability and controllability. The approach is validated on a large real dataset, and in simulation for the control of spatiotemporally evolving function.
机译:我们考虑使用极少数传感器测量和执行器位置来考虑建模,估计和控制时代不断发展的连续功能的潜在的问题。我们解决问题的解决方案包括两部分:功能性演化的预测模型,以及可以鲁布布地恢复模型状态并将其驱动到所需功能的反馈估算器和控制器。我们表明,在核模型的权重的时间逐时演化之前分层是一种有效的时空建模方法,导致系统理论,可控制可用的预测模型。我们为保证可观察性和可控性所需的传感器和执行器的数量提供足够的条件。该方法在大型实时数据集上验证,并在用于控制时空不断变化的功能的仿真中。

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