Skip to main content
To KTH's start page To KTH's start page

Uncertainty quantification for time varying quantities in turbulent flows

Time: Fri 2024-02-23 14.00

Location: Kollegiesalen, Brinellvägen 8, Stockholm

Language: English

Subject area: Engineering Mechanics

Doctoral student: Donnatella Xavier , Strömningsmekanik och Teknisk Akustik, FLOW, Department of Engineering Mechanics, KTH Royal Institute of Technology, SE-100 44 Stockholm, Sweden.

Opponent: Professor David Moxey, Department of Engineering Faculty of Natural, Mathematical & Engineering Sciences, King's College London, UK.

Supervisor: Professor Philipp Schlatter, Linné Flow Center, FLOW, SeRC - Swedish e-Science Research Centre, Turbulent simulations laboratory, Institute of Fluid Mechanics (LSTM), Friedrich--Alexander--Universität Erlangen--Nürnberg, DE-91058 Erlangen, Germany.; Dr. Saleh Rezaeiravesh, Department of Fluids and Environment, The University of Manchester, M139PL Manchester, UK; Dr. Ricardo Vinuesa, Linné Flow Center, FLOW, SeRC - Swedish e-Science Research Centre, Strömningsmekanik och Teknisk Akustik

Export to calendar

QC 240202

Abstract

Quantification of uncertainty in results is crucial in both experiments and simulations of turbulence, yet this practice is notably underutilized. This thesis project delves into statistical tools within the framework of uncertainty quantification to systematically quantify uncertainties that occur in the time varying quantities of turbulence. Two main categories of variance estimators for quantifying time averaging uncertainties in turbulent flow time series are examined in detail – the batch-means based methods and autoregressive model-based methods. The batch size is critical to estimation of uncertainty by the batch methods. We discuss reasons for biased estimates and provide guidance on the selection of batch sizes for the non-overlapping, overlapping and batch means-batch correlations estimators, to obtain consistent estimates of uncertainty when dealing with turbulence time samples. The autoregressive model (ARM)-based estimator was found to be more efficient than the batch methods, in terms of computational efficiency and sample requirements. A novel insight into the operating principle of the ARM, enabled fast quantification of uncertainty with few samples and with batch means series. The extension of univariate autoregressive processes to model entire 2D space-time fields of turbulence, through vector autoregression has been discussed and its potential as a turbulent inflow boundary condition has been illustrated. A crucial flow case that questioned the reliability of Computational Fluid Dynamics (CFD), namely flow through Food and Drug Administration benchmark nozzle device was also simulated in this doctoral thesis project, with a well-defined turbulent inflow boundary condition. Novel insights on the flow physics due to geometrical effects were obtained through statistical analysis, anisotropy invariant maps and proper orthogonal decomposition. These insights provide answers to many open questions in this domain. This work provides analyses and methods to increase the reliability of simulations, expanding the scope of CFD to applications where safety and precision are paramount.

urn.kb.se/resolve?urn=urn:nbn:se:kth:diva-342785