Data-Driven Mori-Zwanzig: Reduced Order Modeling of Sparse Sensors Measurements for Boundary Layer Transition
Michael Woodward, Yifeng Tian, Yen Ting Lin, Arvind Mohan, Christoph, Hader, Hermann Fasel, Michael Chertkov, Daniel Livescu

TL;DR
This paper develops data-driven reduced-order models using Mori-Zwanzig formalism to predict boundary layer flows from sparse sensor data, comparing various methods including EDMD, LSTM, and neural network-based regressions.
Contribution
It introduces a novel application of Mori-Zwanzig models with delay embedding for boundary layer flow prediction from sparse measurements, outperforming existing methods.
Findings
Delay embedding improves model generalization.
Regression-based Mori-Zwanzig models yield best prediction accuracy.
Memory effects are crucial for accurate reduced-order modeling.
Abstract
Understanding, predicting and controlling laminar-turbulent boundary-layer transition is crucial for the next generation aircraft design. However, in real flight experiments, or wind tunnel tests, often only sparse sensor measurements can be collected at fixed locations. Thus, in developing reduced models for predicting and controlling the flow at the sensor locations, the main challenge is in accounting for how the surrounding field of unobserved variables interacts with the observed variables at the fixed sensor locations. This makes the Mori-Zwanzig (MZ) formalism a natural choice, as it results in the Generalized Langevin Equations which provides a framework for constructing non-Markovian reduced-order models that includes the effects the unresolved variables have on the resolved variables. These effects are captured in the so called memory kernel and orthogonal dynamics. In this…
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