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Last Post 23 Oct 2018 10:51 PM by  Patrick Ng
Common Framework - Machine Learning and Geoscience
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Patrick Ng
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05 Aug 2018 02:22 PM
    During recent events, machine-learning focused Hackathon and Workshop, on July 19 and 26 respectively, it becomes apparent a common framework making ML relevant to geoscience will be very useful.

    Here a first-iteration tabulated template* is intended for further discussion.

    1) Data Prep and Processing -

    AVO - say a simple two-term reflection amplitudes, R(𝜭) = P + G * sin2(𝜭), AVZ(𝜙) = AVO vs azimuth, where 𝜭 denotes angle of reflection (in subsurface, associated with offset in non-linear way, i.e., square of the sine of reflection angle), P zero-offset amplitude, G the gradient or slope, and 𝜙 azimuth (orientation at the surface)

    PSDM - Kirchhoff / Beam / Wave Equation / Reverse-Time / Full Waveform Inversion

    ML - Normalization / Standardization

    2) Features Engineering -

    Attributes - Amp, P, G, coherence, dip, density, velocity, porosity, Young's moduli, brittleness, etc.

    PSDM - Anisotropy / attenuation Q, Velocity / moveout, Salt geometry as defined by top / base

    ML - Dimensions reduction, Cluster analysis, Principal components, Eigenvectors

    3) Model Fit

    AVO / Earth model - Least squares, Sparse-spike, Max-likelihood

    PSDM - Velocity-depth / Earth model / Inversion

    ML - Logistic Regression / Support Vector Machine / Deep Neural Network / Convolutional Neural Network / Recurrent Neural Network

    4) Predict

    AVO / Earth model - Regression / Classification Type I to IV / Rock properties

    PSDM - Reservoir shape and volume / Depth image / Illumination quality

    ML - Regression / Classification / Probabilities (Facies, Flow Rate, Discrete Fracture Network)

    Call for Action - share experience from recent projects, as well as perspective, after the virtual course "Applications of AI and machine learning for seismic reservoir characterization".


    *abbreviations:

    AVO - amplitude versus offset
    ML - machine learning
    PSDM - prestack depth migration






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    Patrick Ng
    Basic Member
    Basic Member
    Posts:148


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    23 Oct 2018 10:51 PM
    Use case - AAPG Explorer October, 2018 issue has a nice example of applying pre-configured convolutional neural network (CNN) trained on random images, to facies identification from cores. For detail, see

    Link: https://explorer.aapg.org...onal-neural-networks
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    Extension for tokens of type file is not installed!
    Extension for tokens of type file is not installed!
    Extension for tokens of type file is not installed!
    Extension for tokens of type file is not installed!