A machine learning-based approach for mapping leachate contamination using geoelectrical methods

被引:12
|
作者
Piegari, Ester [1 ]
De Donno, Giorgio [2 ]
Melegari, Davide [2 ]
Paoletti, Valeria [1 ]
机构
[1] Univ Napoli Federico II, Dipartimento Sci Terra Ambiente & Risorse, Naples, Italy
[2] Sapienza Univ Roma, Dipartimento Ingn Civile Edile & Ambientale, Rome, Italy
关键词
Leachate contamination detection; Machine learning; K -means clustering geophysical imaging; Electrical resistivity tomography; Induced polarization tomography; CLUSTER-ANALYSIS; RESISTIVITY; INVERSION; LANDFILLS; DUMPSITES; TOOL; ERT; IP;
D O I
10.1016/j.wasman.2022.12.015
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Leachate is the main source of pollution in landfills and its negative impacts continue for several years even after landfill closure. In recent years, geophysical methods are recognized as effective tools for providing an imaging of the leachate plume. However, they produce subsurface cross-sections in terms of individual physical quantities, leaving room for ambiguities on interpretation of geophysical models and uncertainties in the definition of contaminated zones. In this work, we propose a machine learning-based approach for mapping leachate contamination through an effective integration of geoelectrical tomographic data. We apply the proposed approach for the characterization of two urban landfills. For both cases, we perform a multivariate analysis on datasets consisting of electrical resistivity, chargeability and normalized chargeability (chargeability-to -re-sistivity ratio) data extracted from previously inverted model sections. By executing a K-Means cluster analysis, we find that the best partition of the two datasets contains ten and eleven classes, respectively. From such classes and also introducing a distance-based colour code, we get updated cross-sections and provide an easy and less ambiguous identification of the leachate accumulation zones. The latter turn out to be characterized by coor-dinate values of cluster centroids<3 omega m and >27 mV/V and 11 mS/m. Our findings, also supported by borehole data for one of the investigation sites, show that the combined use of geophysical imaging and unsupervised machine learning is promising and can yield new perspectives for the characterization of leachate distribution and pollution assessment in landfills.
引用
收藏
页码:121 / 129
页数:9
相关论文
共 50 条
  • [31] Predicting mergers & acquisitions: A machine learning-based approach
    Zhao, Yuchen
    Bi, Xiaogang
    Ma, Qing-Ping
    INTERNATIONAL REVIEW OF FINANCIAL ANALYSIS, 2025, 99
  • [32] Machine learning-based models for the qualitative classification of potassium ferrocyanide using electrochemical methods
    Kayali, Devrim
    Abu Shama, Nemah
    Asir, Suleyman
    Dimililer, Kamil
    JOURNAL OF SUPERCOMPUTING, 2023, 79 (11) : 12472 - 12491
  • [33] Classification of 270 classes of vector vortex beams using Machine learning-based methods
    Bai X.
    Wang Y.
    Dai K.
    Optik, 2023, 291
  • [34] Machine learning-based models for the qualitative classification of potassium ferrocyanide using electrochemical methods
    Devrim Kayali
    Nemah Abu Shama
    Suleyman Asir
    Kamil Dimililer
    The Journal of Supercomputing, 2023, 79 : 12472 - 12491
  • [35] A Machine Learning-Based Approach for Wildfire Susceptibility Mapping. The Case Study of the Liguria Region in Italy
    Tonini, Marj
    D'Andrea, Mirko
    Biondi, Guido
    Degli Esposti, Silvia
    Trucchia, Andrea
    Fiorucci, Paolo
    GEOSCIENCES, 2020, 10 (03)
  • [36] Prediction of software quality with Machine Learning-Based ensemble methods
    Ceran A.A.
    Ar Y.
    Tanrıöver Ö.Ö.
    Seyrek Ceran S.
    Materials Today: Proceedings, 2023, 81 : 18 - 25
  • [37] Metrics for Characterizing Machine Learning-Based Hotspot Detection Methods
    Wuu, Jen-Yi
    Pikus, Fedor G.
    Marek-Sadowska, Malgorzata
    2011 12TH INTERNATIONAL SYMPOSIUM ON QUALITY ELECTRONIC DESIGN (ISQED), 2011, : 116 - 121
  • [38] Machine Learning-Based Prediction Methods for Home Burglary Crimes
    Wen, Shuo
    Li, Xiaomin
    Zhao, Lixuan
    Wu, Qi
    Du, Wei
    Jiang, Shangxuan
    JOURNAL OF ELECTRICAL SYSTEMS, 2024, 20 (02) : 123 - 130
  • [39] Review on machine learning-based traffic flow prediction methods
    Yao J.-F.
    He R.
    Shi T.-T.
    Wang P.
    Zhao X.-M.
    Jiaotong Yunshu Gongcheng Xuebao/Journal of Traffic and Transportation Engineering, 2023, 23 (03): : 44 - 67
  • [40] Machine Learning-Based Methods for Materials Inverse Design: A Review
    Liu, Yingli
    Cui, Yuting
    Zhou, Haihe
    Lei, Sheng
    Yuan, Haibin
    Shen, Tao
    Yin, Jiancheng
    CMC-COMPUTERS MATERIALS & CONTINUA, 2025, 82 (02): : 1463 - 1492