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example_1.m
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example_1.m
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%% EXAMPLE 1: Inspect data and plot SPOD spectrum.
% The large-eddy simulation data provided along with this example is a
% subset of the database of a Mach 0.9 turbulent jet described in [1] and
% was calculated using the unstructured flow solver Charles developed at
% Cascade Technologies. If you are using the database in your research or
% teaching, please include explicit mention of Brès et al. [1]. The test
% database consists of 5000 snapshots of the symmetric component (m=0) of
% a round turbulent jet. A physical interpretaion of the SPOD results is
% given in [2], and a comprehensive discussion and derivation of SPOD and
% many of its properties can be found in [3].
%
% References:
% [1] G. A. Brès, P. Jordan, M. Le Rallic, V. Jaunet, A. V. G.
% Cavalieri, A. Towne, S. K. Lele, T. Colonius, O. T. Schmidt,
% Importance of the nozzle-exit boundary-layer state in subsonic
% turbulent jets, J. of Fluid Mech. 851, 83-124, 2018
% [2] Schmidt, O. T. and Towne, A. and Rigas, G. and Colonius, T. and
% Bres, G. A., Spectral analysis of jet turbulence, J. of Fluid Mech. 855, 953–982, 2018
% [3] Towne, A. and Schmidt, O. T. and Colonius, T., Spectral proper
% orthogonal decomposition and its relationship to dynamic mode
% decomposition and resolvent analysis, J. of Fluid Mech. 847, 821–867, 2018
%
% O. T. Schmidt ([email protected]), A. Towne, T. Colonius
% Last revision: 20-May-2020
% Clean up the worspace.
clc, clear variables
%% Load the test database.
% 'p' is the data matrix, 'x' and 'r' are the axial and radial
% coordinates, respectively.
load(fullfile('jet_data','jetLES.mat'),'p','x','r');
%% Inspect the database.
% The jet is resolvend by 39 points in the radial and by 175 points in
% the axial direction. To use the SPOD(_) function, it is important that
% the first dimension of the data is time, i.e. 5000 snapshots in this
% example. If your data is sorted differently, please use PERMUTE() to
% swap indices.
size(p)
%% Animate the first 100 snapshots of the pressure field.
figure('name','Pressure of the symmetric component of a turbulent jet')
for ti=1:100
pcolor(x,r,squeeze(p(ti,:,:)))
axis equal tight, shading interp, caxis([4.43 4.48])
xlabel('x'), ylabel('r')
pause(0.05)
drawnow
end
%% Calculate the SPOD spectrum of the data.
% Check the output of SPOD(_) in the Command Window after execution: the
% routine has segmented the data into 38 blocks of 256 snapshots each.
% The segments, or blocks, overlap bei 50%, i.e. 128 snaphots overlap.
[L] = spod(p);
figure
loglog(L)
xlabel('frequency index'), ylabel('SPOD mode energy')