Volcanic Ash Classification Through Machine Learning

被引:1
|
作者
Benet, Damia [1 ,2 ,3 ]
Costa, Fidel [1 ]
Widiwijayanti, Christina [2 ]
机构
[1] Univ Paris Cite, CNRS, Inst Phys Globe Paris, Paris, France
[2] Nanyang Technol Univ, EOS, Earth Observ Singapore, Singapore, Singapore
[3] Nanyang Technol Univ, Asian Sch Environm, Singapore, Singapore
基金
新加坡国家研究基金会;
关键词
volcanic ash classification; machine learning; XGBoost; vision transformer; interpretable AI; SHAP; SAKURAJIMA VOLCANO; ERUPTION; INSIGHTS; EVOLUTION; TEXTURE;
D O I
10.1029/2023GC011224
中图分类号
P3 [地球物理学]; P59 [地球化学];
学科分类号
0708 ; 070902 ;
摘要
Volcanic ash provides information that can help understanding the evolution of volcanic activity during the early stages of a crisis and possible transitions toward different eruptive styles. Ash consists of particles from a range of origins within the volcanic system and its analysis can be indicative of the processes driving the eruptive activity. However, classifying ash particles into different types is not straightforward. Diagnostic observations for particle classification are not standardized and vary across samples. Here we explore the use of machine learning (ML) to improve the classification accuracy and reproducibility. We use a curated database of ash particles (VolcAshDB) to optimize and train two ML-based models: Extreme Gradient Boosting (XGBoost) that uses the measured physical attributes of the particles, from which predictions are interpreted by the SHapley Additive exPlanations (SHAP) method, and a Vision Transformer (ViT) that classifies binocular, multi-focused, particle images. We find that the XGBoost has an overall classification accuracy of 0.77 (macro F1-score), and specific features of color (hue_mean) and texture (correlation) are the most discriminant between particle types. Classification using the particle images and the ViT is more accurate (macro F1-score of 0.93), with performances varying from 0.85 for samples of dome explosions, to 0.95 for phreatic and subplinian events. Notwithstanding the success of the classification algorithms, the training dataset is limited in number of particles, ranges of eruptive styles, and volcanoes. Thus, the algorithms should be tested further with additional samples, and it is likely that classification for a given volcano is more accurate than between volcanoes. Volcanic ash particles are classified through machine learning algorithms into juvenile, lithic, free-crystal and altered material types Discriminant features per each particle type are revealed by the Shapley values of XGBoost's predictions Classification by a Vision Transformer model is very accurate and could be used by volcano observatories
引用
收藏
页数:24
相关论文
共 50 条
  • [41] Machine learning in soil classification
    Bhattacharya, B
    Solomatine, DP
    PROCEEDINGS OF THE INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), VOLS 1-5, 2005, : 2694 - 2699
  • [42] Assessing Driver Task Engagement Through Machine Learning Classification of Physiological Response
    Lochbihler, Aidan
    Wallace, Bruce
    Van Benthem, Kathleen
    Herdman, Chris
    Sloan, Will
    Brightman, Kirsten
    Goheen, Josh
    Knoefel, Frank
    Marshall, Shawn
    2023 IEEE SENSORS APPLICATIONS SYMPOSIUM, SAS, 2023,
  • [43] Assessment of feature selection for student academic performance through machine learning classification
    Suguna, R.
    Devi, M. Shyamala
    Bagate, Rupali Amit
    Joshi, Apama Shashikant
    JOURNAL OF STATISTICS & MANAGEMENT SYSTEMS, 2019, 22 (04): : 729 - 739
  • [44] Cloud classification through machine learning and global horizontal irradiance data analysis
    Lusi, Anabela Rocio
    Orte, Pablo Facundo
    Wolfram, Elian
    Orlando, Jose Ignacio
    QUARTERLY JOURNAL OF THE ROYAL METEOROLOGICAL SOCIETY, 2024, 150 (765) : 5435 - 5451
  • [45] Predictive Modeling and Sentiment Classification of Social Media Through Extreme Learning Machine
    Shafqat-Ul-Ahsaan
    Mourya, Ashish Kumar
    Singh, Parvinder
    PROCEEDINGS OF ICETIT 2019: EMERGING TRENDS IN INFORMATION TECHNOLOGY, 2020, 605 : 356 - 363
  • [46] Retrotransposons in Plant Genomes: Structure, Identification, and Classification through Bioinformatics and Machine Learning
    Orozco-Arias, Simon
    Isaza, Gustavo
    Guyot, Romain
    INTERNATIONAL JOURNAL OF MOLECULAR SCIENCES, 2019, 20 (15)
  • [47] Ion channel classification through machine learning and protein language model embeddings
    Ghazikhani, Hamed
    Butler, Gregory
    JOURNAL OF INTEGRATIVE BIOINFORMATICS, 2025, 21 (04)
  • [48] Predictive classification and understanding of weather impact on airport performance through machine learning
    Schultz, Michael
    Reitmann, Stefan
    Alam, Sameer
    TRANSPORTATION RESEARCH PART C-EMERGING TECHNOLOGIES, 2021, 131
  • [49] Developing a national black soil map of China through machine learning classification
    Sun, Zheng
    Liu, Feng
    Wu, Huayong
    Zhang, Gan-Lin
    CATENA, 2024, 240
  • [50] Diabetes Mellitus Affected Patients Classification and Diagnosis through Machine Learning Techniques
    Mercaldo, Francesco
    Nardone, Vittoria
    Santone, Antonella
    KNOWLEDGE-BASED AND INTELLIGENT INFORMATION & ENGINEERING SYSTEMS, 2017, 112 : 2519 - 2528