Observer-based neural networks for flow estimation and control
Tarc\'isio C. D\'eda, William R. Wolf, Scott T. M. Dawson, Brener L. O. Ramos

TL;DR
This paper introduces neural network observers for real-time fluid flow estimation from sparse, noisy sensor data, enabling effective flow control in complex nonlinear systems.
Contribution
It generalizes the classical Luenberger observer by integrating neural networks for flow state estimation from limited sensor data.
Findings
NNO accurately tracks flow states with noisy, sparse data
NNO enables successful closed-loop flow control
CNN-based models improve estimation accuracy in turbulent boundary layers
Abstract
Neural network observers (NNOs) are proposed for real-time estimation of fluid flows, addressing a key challenge in flow control: obtaining real-time flow states from a limited set of sparse and noisy sensor data. For this task, we propose a generalization of the classical Luenberger observer. In the present framework, the estimation loop is composed of subsystems modeled as neural networks (NNs). By combining flow information from selected probes and an NN surrogate model (NNSM) of the flow system, we train NNOs capable of fusing information to provide the best estimation of the states, that can in turn be fed back to an NN controller (NNC). The NNO capabilities are demonstrated for three nonlinear dynamical systems. First, a variation of the Kuramoto-Sivashinsky (KS) equation with control inputs is studied, where variables are sparsely probed. We show that the NNO is able to track…
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Taxonomy
TopicsModel Reduction and Neural Networks · Fluid Dynamics and Turbulent Flows · Stability and Controllability of Differential Equations
