This course offers a hands-on introduction to the Neural Network Inversion (NNI) workflow in Integrated Canvas. NNI is a technique used to predict rock and elastic properties from seismic attributes and log data. In this training, you will follow the four steps of the workflow to generate rock property volumes using angle stack volumes and well logs (density, P-impedance, S-impedance and Poisson's ratio). You will use QC tools within the workflow to fine-tune parameter settings and improve results. Additionally, the course offers a detailed overview of the theory behind NNI, along with guidance on defining and optimizing parameters. |
Geophysicist Interpreters Geologists |
QSI106
0.5 day(s)
0.4
Intermediate
Instruction on basic and advanced topics Discussion about the general approach Instructor-guided demonstrations of features Hands-on workshops that apply learned concepts Detailed course notes |
Some experience with Aspen SeisEarth or completion of one of these training courses: SEI101 Multi-Survey (2D/3D) Seismic Interpretation using Aspen SeisEarth QSI101 Fluid and Rock Property Estimation using AVO and Inversion |
The course covers the following topics: 1- Selecting the input data for the Neural Network Inversion (NNI) workflow 2- Creating the training set 3- Training the neural network and fine-tuning parameters 4- Validating and optimizing input data for NNI 5- Propagation: Generating rock and elastic property volumes using NNI |
Aspen Technology, Inc. awards Continuing Education Units (CEUs) for training classes conducted by our organization. One CEU is granted for every 10 hours of class participation.