Artificial neural network for high-throughput spectral data processing in LIBS imaging: application to archaeological mortar

被引:10
|
作者
Herreyre, N. [1 ,2 ]
Cormier, A. [1 ]
Hermelin, S. [1 ]
Oberlin, C. [2 ]
Schmitt, A. [2 ]
Thirion-Merle, V. [2 ]
Borlenghi, A. [2 ]
Prigent, D. [3 ]
Coquide, C. [2 ,4 ]
Valois, A. [4 ]
Dujardin, C. [1 ]
Dugourd, P. [1 ]
Duponchel, L. [5 ]
Comby-Zerbino, C. [1 ]
Motto-Ros, V. [1 ]
机构
[1] Univ Lyon, Univ Lyon 1, Inst Lumiere Matiere,CNRS, UMR5306, F-69622 Villeurbanne, France
[2] Univ Lyon 1, Univ Lyon 2, Archeol & Archeometrie,CNRS, UMR5138, Maison Orient & Mediterranee,7 rue Raulin, F-69007 Lyon, France
[3] Serv Dept Patrimoine Maine et Loire, Pole Archeol,108 Rue Fremur, F-49000 Angers, France
[4] Ctr Rech Archeol Bron, Inrap, 12 Rue Louis Maggiorini, F-69675 Bron, France
[5] Univ Lille, Fac Sci & Technol, CNRS,UMR 8516, Lab Spect Interact React & Environm LASIRE, F-59655 Villeneuve Dascq, France
关键词
INDUCED BREAKDOWN SPECTROSCOPY; METHODOLOGY;
D O I
10.1039/d2ja00389a
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
With the development of micro-LIBS imaging, the ever-increasing size of datasets (sometimes >1 million spectra) makes the processing of spectral data difficult and time consuming. Advanced statistical methods have become necessary to process these data, but most of them still require strong expertise and are not adapted to fast data treatment or a high throughput analysis. To address these issues, we evaluate, in the present work, the use of an artificial neural network (ANN) for LIBS imaging spectral data processing for the identification of different mineral phases in archaeological lime mortar. Common in ancient architecture, this building material is a complex mixture of lime with one or more aggregates, some components of which are of the same chemical nature (e.g. calcium carbonates). In this study, we trained an artificial neural network (ANN) for automatic detection of different phases in these complex samples. The training of such a predictive model was made possible by building a LIBS dataset of more than 1300 reference spectra, obtained from various selected materials that may be present in mortars. The ANN parameters (pre-treatment of data, number of neurons and of iterations) were optimized to ensure the best recognition of mortar components, while avoiding overtraining. The results demonstrate a fast and accurate identification of each component. The use of an ANN appears to be a strong means to provide an efficient, fast and automated LIBS characterization of archaeological mortar, a concept that could later be generalized to other samples and other scientific fields and methods.
引用
收藏
页码:730 / 741
页数:12
相关论文
共 50 条
  • [41] Using Artificial Neural Networks to boost high-throughput discovery in heterogeneous catalysis
    Baumes, L
    Farrusseng, D
    Lengliz, M
    Mirodatos, C
    QSAR & COMBINATORIAL SCIENCE, 2004, 23 (09): : 767 - 778
  • [42] myVCF: a desktop application for high-throughput mutations data management
    Pietrelli, Alessandro
    Valenti, Luca
    BIOINFORMATICS, 2017, 33 (22) : 3676 - 3678
  • [43] Application of probability neural network to high power microwave exploration data processing
    Peng, Kai
    Wang, Shan
    Fang, Jinyong
    Huang, Puming
    Qiangjiguang Yu Lizishu/High Power Laser and Particle Beams, 2014, 26 (08):
  • [44] Sampling accessories for the high-throughput analysis of combinatorial libraries using spectral imaging
    Snively, CM
    Lauterbach, J
    SPECTROSCOPY, 2002, 17 (04) : 26 - +
  • [45] A case study of high-throughput biological data processing on parallel platforms
    Pekurovsky, D
    Shindyalov, IN
    Bourne, PE
    BIOINFORMATICS, 2004, 20 (12) : 1940 - 1947
  • [46] UmetaFlow: an untargeted metabolomics workflow for high-throughput data processing and analysis
    Kontou, Eftychia E.
    Walter, Axel
    Alka, Oliver
    Pfeuffer, Julianus
    Sachsenberg, Timo
    Mohite, Omkar S.
    Nuhamunada, Matin
    Kohlbacher, Oliver
    Weber, Tilmann
    JOURNAL OF CHEMINFORMATICS, 2023, 15 (01)
  • [47] PhyloHerb: A high-throughput phylogenomic pipeline for processing genome skimming data
    Cai, Liming
    Zhang, Hongrui
    Davis, Charles C.
    APPLICATIONS IN PLANT SCIENCES, 2022, 10 (03):
  • [48] UmetaFlow: an untargeted metabolomics workflow for high-throughput data processing and analysis
    Eftychia E. Kontou
    Axel Walter
    Oliver Alka
    Julianus Pfeuffer
    Timo Sachsenberg
    Omkar S. Mohite
    Matin Nuhamunada
    Oliver Kohlbacher
    Tilmann Weber
    Journal of Cheminformatics, 15
  • [49] GPU-Accelerated High-Throughput Online Stream Data Processing
    Chen, Zhenhua
    Xu, Jielong
    Tang, Jian
    Kwiat, Kevin A.
    Kamhoua, Charles Alexandre
    Wang, Chonggang
    IEEE TRANSACTIONS ON BIG DATA, 2018, 4 (02) : 191 - 202
  • [50] Spectral imaging for the discovery of novel catalytic materials using high-throughput screening
    Hattrick-Simpers, Jason
    Bedenbaugh, John
    Kim, Sungtak
    Salim, Shahriar
    Ashok, Jangam
    Lauterbach, Jochen
    ABSTRACTS OF PAPERS OF THE AMERICAN CHEMICAL SOCIETY, 2012, 243