Unveiling
the Chemical Composition of Halide Perovskite Films Using Multivariate
Statistical Analyses
Posted on 2018-11-26 - 00:00
The
local chemical composition of halide perovskites is a crucial factor
in determining their macroscopic properties and their stability. While
the combination of scanning transmission electron microscopy (STEM)
and energy-dispersive X-ray spectroscopy (EDX) is a powerful and widely
used tool for accessing such information, electron-beam-induced damage
and complex formulation of the films make this investigation challenging.
Here we demonstrate how multivariate analysis, including statistical
routines derived from “big data” research, such as principal
component analysis (PCA), can be used to dramatically improve the
signal recovery from fragile materials. We also show how a similar
decomposition algorithm (non-negative matrix factorisation (NMF))
can unravel elemental composition at the nanoscale in perovskite films,
highlighting the presence of segregated species and identifying the
local stoichiometry at the nanoscale.
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Cacovich, Stefania; Matteocci, Fabio; Abdi-Jalebi, Mojtaba; Stranks, Samuel D.; Carlo, Aldo Di; Ducati, Caterina; et al. (2018). Unveiling
the Chemical Composition of Halide Perovskite Films Using Multivariate
Statistical Analyses. ACS Publications. Collection. https://doi.org/10.1021/acsaem.8b01622