The LM is an intermediate stage, where refined period values are computed using equispaced high resolution grids of trial frequencies around period estimates obtained from the first stage. The purpose of the LM is to provide best initial values and correct value bracketing (search range for periods) for the final refinement.
The third stage (NLM) is in essence a nonlinear minimization
procedure where the best estimates for linear model parameters
(amplitudes of harmonic functions of different orders in the model)
and nonlinear model parameters (periods) are
obtained. It is now assumed that the initial period values
for minimization and corresponding search brackets are already
so well known that the convergence to a unique minimum
is guaranteed.
In our case of single period analysis
there is only one nonlinear parameter and we can use
the classical Brent minimization algorithm (Brent 1973)
combined with
a linear fit of the amplitudes for every particular period.
The error estimate of the final value of the period can be computed
from the curvature of the
hypersurface or by using other
standard methods.
The purpose of this paper is to demonstrate the usefulness of our three stage weighted multichannel period analysis (MPA) where all the available information in the input data sets are used fully and uniformly. The paper is organized as folllows. First we describe the MPA method in full mathematical detail in Sect. 2. Then, in Sect. 3, we apply the MPA to two groups of artificially generated data and show how all the three period searching stages help to recover the correct period. The test cases reveal the principal advantages of the new method. The results are briefly summarized in Sect. 4.
Copyright The European Southern Observatory (ESO)