Machine Learning based Analytical Framework for Automatic Hyperspectral Raman Analysis of Lithium-ion Battery Electrodes.

Sci Rep

NISSAN ARC, LTD., 1, Natsushima-cho, Yokosuka, Kanagawa, 237-0061, Japan.

Published: December 2019

AI Article Synopsis

  • The study introduces an automated analytical framework (AF) that can quickly identify multiple spectral signatures in lithium-ion battery electrodes using hyperspectral Raman data, enhancing quality control and product development.
  • This AF processes the data by removing noise, extracting reliable spectral signatures, labeling them, and training a neural network for accurate classification, requiring little to no human input.
  • The framework also evaluates lithium-ion battery capacity degradation by comparing extracted signatures, making it applicable for real-time analysis in various industrial settings, such as chemical reactions and environmental monitoring.

Article Abstract

The intelligence to synchronously identify multiple spectral signatures in a lithium-ion battery electrode (LIB) would facilitate the usage of analytical technique for inline quality control and product development. Here, we present an analytical framework (AF) to automatically identify the existing spectral signatures in the hyperspectral Raman dataset of LIB electrodes. The AF is entirely automated and requires fewer or almost no human assistance. The end-to-end pipeline of AF own the following features; (i) intelligently pre-processing the hyperspectral Raman dataset to eliminate the cosmic noise and baseline, (ii) extract all the reliable spectral signatures from the hyperspectral dataset and assign the class labels, (iii) training a neural network (NN) on to the precisely "labelled" spectral signature, and finally, examined the interoperability/reusability of already trained NN on to the newly measured dataset taken from the same LIB specimen or completely different LIB specimen for inline real-time analytics. Furthermore, we demonstrate that it is possible to quantitatively assess the capacity degradation of LIB via a capacity retention coefficient that can be calculated by comparing the LMO signatures extracted by the analytical framework (AF). The present approach is suited for real-time vibrational spectroscopy based industrial applications; multicomponent chemical reactions, chromatographic, spectroscopic mixtures, and environmental monitoring.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC6890635PMC
http://dx.doi.org/10.1038/s41598-019-54770-2DOI Listing

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