TY - JOUR T1 - On the comparison of LES data-driven reduced order approaches for hydroacoustic analysis JF - Computers & Fluids Y1 - 2021 A1 - Mahmoud Gadalla A1 - Marta Cianferra A1 - Marco Tezzele A1 - Giovanni Stabile A1 - Andrea Mola A1 - Gianluigi Rozza KW - Dynamic mode decomposition KW - Ffowcs Williams and Hawkings KW - Hydroacoustics KW - Large eddy simulation KW - Model reduction KW - Proper orthogonal decomposition AB -

In this work, Dynamic Mode Decomposition (DMD) and Proper Orthogonal Decomposition (POD) methodologies are applied to hydroacoustic dataset computed using Large Eddy Simulation (LES) coupled with Ffowcs Williams and Hawkings (FWH) analogy. First, a low-dimensional description of the flow fields is presented with modal decomposition analysis. Sensitivity towards the DMD and POD bases truncation rank is discussed, and extensive dataset is provided to demonstrate the ability of both algorithms to reconstruct the flow fields with all the spatial and temporal frequencies necessary to support accurate noise evaluation. Results show that while DMD is capable to capture finer coherent structures in the wake region for the same amount of employed modes, reconstructed flow fields using POD exhibit smaller magnitudes of global spatiotemporal errors compared with DMD counterparts. Second, a separate set of DMD and POD modes generated using half the snapshots is employed into two data-driven reduced models respectively, based on DMD mid cast and POD with Interpolation (PODI). In that regard, results confirm that the predictive character of both reduced approaches on the flow fields is sufficiently accurate, with a relative superiority of PODI results over DMD ones. This infers that, discrepancies induced due to interpolation errors in PODI is relatively low compared with errors induced by integration and linear regression operations in DMD, for the present setup. Finally, a post processing analysis on the evaluation of FWH acoustic signals utilizing reduced fluid dynamic fields as input demonstrates that both DMD and PODI data-driven reduced models are efficient and sufficiently accurate in predicting acoustic noises.

VL - 216 UR - https://www.sciencedirect.com/science/article/pii/S0045793020303893 ER -