Author:
Li Xuebin,Pan Lantian,Yang Luchun,Jin Zhao
Abstract
Abstract
To find a global optimal solution and obtain further insight
into the parameters of the peak shape fitting function,
metaheuristic optimization algorithms, and multivariate analysis
techniques are employed to study the deconvolution of alpha-particle
spectra. An improved peak shape model composed of the
Bortels-Collaers function and Lévy distribution function, which
aims to handle the high-energy tailing, is proposed. A newly
developed metaheuristic optimization method, Bonobo Optimizer (BO)
is adopted to seek optimal parameters in the peak shape
function. Multivariate analysis (MVA) techniques are used to find
hidden information in the shape model. Pearson's correlation tells
the mutual variation relationship among parameters, while
Multidimensional scaling (MDS) shows similarities of parameters
through a 2D plot. Effects of parameters upon the regression
accuracy are obtained via the Student t-test. Self-organizing
Mapping (SOM) is utilized to mine intrinsic relations among these
parameters through visual images. AM243-1 test alpha spectra example
is selected to examine the proposed methodology. The improved model
is more accurate when handling the high-energy tailing
features. Compared with traditional gradient-based optimization
algorithms, BO can find global solutions without tedious work in
initial solution setting and constraint handling. More information
is mined through MVA and further understanding of the peak shape
function is obtained.