Neural networks in feedback for flow analysis, sensor placement and control
Tarc\'isio D\'eda, William Wolf, Scott Dawson

TL;DR
This paper introduces a neural network-based methodology for analyzing, controlling, and optimizing sensor placement in nonlinear fluid systems, demonstrated on diverse fluid dynamics models, enhancing stability and reducing sensor requirements.
Contribution
The work develops a novel iterative training approach for neural network surrogate models and controllers, improving accuracy near equilibrium points and enabling sensor optimization and stability analysis.
Findings
Neural networks accurately model complex fluid dynamics.
The approach stabilizes nonlinear fluid systems effectively.
Sensor placement is optimized using L1 regularization.
Abstract
This work presents a novel methodology for analysis and control of nonlinear fluid systems using neural networks. The approach is demonstrated on four different study cases being the Lorenz system, a modified version of the Kuramoto-Sivashinsky equation, a streamwise-periodic 2D channel flow, and a confined cylinder flow. Neural networks are trained as models to capture the complex system dynamics and estimate equilibrium points through a Newton method, enabled by backpropagation. These neural network surrogate models (NNSMs) are leveraged to train a second neural network, which is designed to act as a stabilizing closed-loop controller. The training process employs a recurrent approach, whereby the NNSM and the neural network controller (NNC) are chained in closed loop along a finite time horizon. By cycling through phases of combined random open-loop actuation and closed-loop control,…
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Taxonomy
TopicsModel Reduction and Neural Networks · Fluid Dynamics and Turbulent Flows · Lattice Boltzmann Simulation Studies
