Gradient-free optimization of chaotic acoustics with reservoir computing
Francisco Huhn, Luca Magri

TL;DR
This paper introduces a gradient-free, data-driven reservoir computing method to optimize chaotic thermoacoustic systems efficiently, reducing computational costs and enabling non-intrusive design parameter exploration.
Contribution
The work develops a novel reservoir computing-based optimization framework that accurately predicts long-term chaotic dynamics and efficiently finds optimal parameters without gradient information.
Findings
Reservoir computing accurately predicts long-term chaotic acoustic dynamics.
Informed training improves prediction accuracy and robustness.
The method finds optimal flame parameters with significantly fewer evaluations than brute-force search.
Abstract
We develop a versatile optimization method, which finds the design parameters that minimize time-averaged acoustic cost functionals. The method is gradient-free, model-informed, and data-driven with reservoir computing based on echo state networks. First, we analyse the predictive capabilities of echo state networks both in the short- and long-time prediction of the dynamics. We find that both fully data-driven and model-informed architectures learn the chaotic acoustic dynamics, both time-accurately and statistically. Informing the training with a physical reduced-order model with one acoustic mode markedly improves the accuracy and robustness of the echo state networks, whilst keeping the computational cost low. Echo state networks offer accurate predictions of the long-time dynamics, which would be otherwise expensive by integrating the governing equations to evaluate the…
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Taxonomy
MethodsRandom Convolutional Kernel Transform
