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LombScargle.jl
is a Julia package for a fast
multi-threaded estimation of
the frequency spectrum of a
periodic signal
with
the Lomb–Scargle periodogram.
Another Julia package that provides tools to perform spectral analysis of
signals is DSP.jl
, but its methods
require that the signal has been sampled at equally spaced times. Instead, the
Lomb–Scargle periodogram enables you to analyze unevenly sampled data as well,
which is a fairly common case in astronomy, a field where this periodogram is
widely used.
The algorithms used in this package are reported in the following papers:
- Press, W. H., Rybicki, G. B. 1989, ApJ, 338, 277 (URL: http://dx.doi.org/10.1086/167197, Bibcode: http://adsabs.harvard.edu/abs/1989ApJ...338..277P)
- Townsend, R. H. D. 2010, ApJS, 191, 247 (URL: http://dx.doi.org/10.1088/0067-0049/191/2/247, Bibcode: http://adsabs.harvard.edu/abs/2010ApJS..191..247T)
- Zechmeister, M., Kürster, M. 2009, A&A, 496, 577 (URL: http://dx.doi.org/10.1051/0004-6361:200811296, Bibcode: http://adsabs.harvard.edu/abs/2009A%26A...496..577Z)
The package provides facilities to:
- compute the periodogram using different methods (with different speeds) and different normalizations. This is one of the fastest implementations of these methods available as free software. If Julia is run with more than one thread, computation is automatically multi-threaded, further speeding up calculations;
- access the frequency and period grid of the resulting periodogram, together with the power spectrum;
- find the maximum power in the periodogram and the frequency and period corresponding to the peak. All these queries can be restricted to a specified region, in order to search a local maximum, instead of the global one;
- calculate the probability that a peak arises from noise only (false-alarm probability) using analytic formulas, in order to assess the significance of the peak;
- perform bootstrap resamplings in order to compute the false-alarm probability with a statistical method;
- determine the best-fitting Lomb–Scargle model for the given data set at the given frequency.
All these features are thoroughly described in the full documentation, see below. Here we only give basic information.
The complete manual of LombScargle.jl
is available at
https://giordano.github.io/LombScargle.jl/stable/. It has detailed explanation of all
functions provided by the package and more examples than what you will find
here, also with some plots.
The latest version of LombScargle.jl
is available for Julia 1.0 and later
versions, and can be installed with Julia built-in package
manager. In a Julia
session, aftering the package manager mode with ]
, run the command
pkg> add LombScargle
Older versions are also available for Julia 0.4-0.7.
After installing the package, you can start using it with
julia> using LombScargle
The module defines a new LombScargle.Periodogram
data type, which, however, is
not exported because you will most probably not need to directly manipulate such
objects. This data type holds both the frequency and the power vectors of the
periodogram.
The main function provided by the package is lombscargle
:
lombscargle(times, signal[, errors])
which returns a LombScargle.Periodogram
. The only mandatory arguments are:
times
: the vector of observation timessignal
: the vector of observations associated withtimes
All these vectors must have the same length. The only optional argument is:
errors
: the uncertainties associated to eachsignal
point. This vector must have the same length astimes
andsignal
.
Besides the two arguments introduced above, lombscargle
has a number of other
optional keywords in order to choose the right algorithm to use and tweak the
periodogram. For the description of all these arguments see the complete
manual.
If the signal has uncertainties, the signal
vector can also be a vector of
Measurement
objects (from
Measurements.jl
package), in
which case you need not to pass a separate errors
vector for the uncertainties
of the signal. You can create arrays of Measurement
objects with the
measurement
function, see Measurements.jl
manual at
https://juliaphysics.github.io/Measurements.jl/latest/ for more details.
With the LombScargle.plan
function you can pre-plan a periodogram and save
time and memory for the actual computation of the periodogram. See
the manual for
details.
Here is an example of a noisy periodic signal (sin(π*t) + 1.5*cos(2π*t)
)
sampled at unevenly spaced times.
julia> using LombScargle
julia> ntimes = 1001
1001
# Observation times
julia> t = range(0.01, stop=10pi, length=ntimes)
0.01:0.03140592653589793:31.41592653589793
# Randomize times
julia> t += step(t)*rand(ntimes);
# The signal
julia> s = sinpi.(t) .+ 1.5 .* cospi.(2t) .+ rand(ntimes);
# Pre-plan the periodogram (see the documentation)
julia> plan = LombScargle.plan(t, s);
# Compute the periodogram
julia> pgram = lombscargle(plan)
You can plot the result, for example with
Plots
package. Use freqpower
function to get the frequency grid and the power of the periodogram as a
2-tuple.
using Plots
plot(freqpower(pgram)...)
The generalised Lomb–Scargle periodogram (used when the fit_mean
optional
keyword is true
) is able to handle a signal with uncertainties, and they will
be used as weights in the algorithm. The uncertainties can be passed either as
the third optional argument errors
to lombscargle
or by providing this
function with a signal
vector of type Measurement
(from
Measurements.jl
package).
using Measurements, Plots
ntimes = 1001
t = range(0.01, stop=10pi, length=ntimes)
s = sinpi.(2t)
errors = rand(0.1:1e-3:4.0, ntimes)
plot(freqpower(lombscargle(t, s, errors, maximum_frequency=1.5))...)
plot(freqpower(lombscargle(t, measurement(s, errors), maximum_frequency=1.5))...)
A pre-planned periodogram in LombScargle.jl
computed in single thread mode
with the fast method is more than 2.9 times faster than the implementation of
the same algorithm provided by Astropy, and more than 4.5 times faster if 4 FFTW
threads are used (on machines with at least 4 physical CPUs).
The following plot shows a comparison between the times needed to compute a
periodogram for a signal with N datapoints using LombScargle.jl
, with 1 or 4
threads (with flags = FFTW.MEASURE
for better performance), and the
single-threaded Astropy implementation. (Julia version: 0.7.0-DEV.2309,
commit 7ae9955c93; LombScargle.jl
version: 0.3.1; Python version: 3.5.4; Astropy
version: 2.0.2. CPU: Intel(R) Core(TM) i7-4700MQ.)
Note that this comparison is unfair, as Astropy doesn’t support pre-planning a
periodogram nor exploiting multi-threading. A non-planned periodogram in single
thread mode in LombScargle.jl
is still twice faster than Astropy.
The package is developed at https://github.com/JuliaAstro/LombScargle.jl. There you can submit bug reports, make suggestions, and propose pull requests.
The ChangeLog of the package is available in NEWS.md file in top directory.
The LombScargle.jl
package is licensed under the BSD 3-clause "New" or
"Revised" License. The original author is Mosè Giordano.
This package adapts the implementation in Astropy of the the fast Lomb–Scargle method by Press & Rybicki (1989). We claim no endorsement nor promotion by the Astropy Team.