Neural network architecture optimization using automated machine learning for borehole resistivity measurements

被引:0
|
作者
Shahriari, M. [1 ,2 ]
Pardo, D. [3 ,4 ,5 ]
Kargaran, S. [2 ]
Teijeiro, T. [3 ,4 ]
机构
[1] GE Healthcare Austria GmbH, Tiefenbach 15, A-4871 Zipf, Austria
[2] Software Competence Ctr Hagenberg GmbH SCCH, Softwarepark 32a, A-4232 Hagenberg, Austria
[3] Univ Basque Country UPV EHU, Dept Math, Leioa 48940, Spain
[4] Basque Ctr Appl Math BCAM, Bilbao 48009, Spain
[5] Basque Fdn Sci, Ikerbasque, Bilbao 48009, Spain
关键词
Inverse theory; Machine learning; Neural networks; fuzzy logic; Downhole method; Wave propagation; INVERSION; MODEL;
D O I
10.1093/gji/ggad249
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
Deep neural networks (DNNs) offer a real-time solution for the inversion of borehole resistivity measurements to approximate forward and inverse operators. Using extremely large DNNs to approximate the operators is possible, but it demands considerable training time. Moreover, evaluating the network after training also requires a significant amount of memory and processing power. In addition, we may overfit the model. In this work, we propose a scoring function that accounts for the accuracy and size of the DNNs compared to a reference DNNs that provides good approximations for the operators. Using this scoring function, we use DNN architecture search algorithms to obtain a quasi-optimal DNN smaller than the reference network; hence, it requires less computational effort during training and evaluation. The quasi-optimal DNN delivers comparable accuracy to the original large DNN.
引用
收藏
页码:2488 / 2501
页数:14
相关论文
共 50 条
  • [41] Machine Learning and Neural Network for Maintenance Management
    Arcos Jimenez, Alfredo
    Gomez Munoz, Carlos Quiterio
    Garcia Marquez, Fausto Pedro
    PROCEEDINGS OF THE ELEVENTH INTERNATIONAL CONFERENCE ON MANAGEMENT SCIENCE AND ENGINEERING MANAGEMENT, 2018, : 1377 - 1388
  • [42] Automated machine learning approach for time series classification pipelines using evolutionary optimization
    Revin, Ilia
    Potemkin, Vadim A.
    Balabanov, Nikita R.
    Nikitin, Nikolay O.
    KNOWLEDGE-BASED SYSTEMS, 2023, 268
  • [43] Research on the improvement effect of machine learning and neural network algorithms on the prediction of learning achievement
    Su, Yingying
    Wang, Shengxu
    Li, Yi
    NEURAL COMPUTING & APPLICATIONS, 2022, 34 (12) : 9369 - 9383
  • [44] REVIEW OF ONLINE FRAUD DETECTION BY MACHINE LEARNING USING ARTIFICIAL NEURAL NETWORK
    Hrishita, M.
    Tulasi, K. Sri Satya Sai
    Tejasri, K.
    ADVANCES AND APPLICATIONS IN MATHEMATICAL SCIENCES, 2021, 20 (11): : 2701 - 2705
  • [45] APPLICATION OF MACHINE LEARNING: AN ANALYSIS OF ASIAN OPTIONS PRICING USING NEURAL NETWORK
    Fang, Zhou
    George, K. M.
    2017 IEEE 14TH INTERNATIONAL CONFERENCE ON E-BUSINESS ENGINEERING (ICEBE 2017), 2017, : 142 - 149
  • [46] A NEURAL-NETWORK-BASED MACHINE LEARNING APPROACH FOR SUPPORTING SYNTHESIS
    IVEZIC, N
    GARRETT, JH
    AI EDAM-ARTIFICIAL INTELLIGENCE FOR ENGINEERING DESIGN ANALYSIS AND MANUFACTURING, 1994, 8 (02): : 143 - 161
  • [47] Neural Network, Machine Learning, and Evolutionary Approaches for Concrete Material Characterization
    Rafiei, Mohammad H.
    Khushefati, Waleed H.
    Demirboga, Ramazan
    Adeli, Hojjat
    ACI MATERIALS JOURNAL, 2016, 113 (06) : 781 - 789
  • [48] Forest Fire Prediction: A Spatial Machine Learning and Neural Network Approach
    Sharma, Sanjeev
    Khanal, Puskar
    FIRE-SWITZERLAND, 2024, 7 (06):
  • [49] Optimization of Machine Learning Process Using Parallel Computing
    Grzeszczyk, Michal K.
    ADVANCES IN SCIENCE AND TECHNOLOGY-RESEARCH JOURNAL, 2018, 12 (04): : 81 - 87
  • [50] Aerodynamic optimization of aircraft wings using machine learning
    Hasan, M.
    Redonnet, S.
    Zhongmin, D.
    ADVANCES IN ENGINEERING SOFTWARE, 2025, 200