Machine Learning News Hubb
Advertisement Banner
  • Home
  • Machine Learning
  • Artificial Intelligence
  • Big Data
  • Deep Learning
  • Edge AI
  • Neural Network
  • Contact Us
  • Home
  • Machine Learning
  • Artificial Intelligence
  • Big Data
  • Deep Learning
  • Edge AI
  • Neural Network
  • Contact Us
Machine Learning News Hubb
No Result
View All Result
Home Artificial Intelligence

Well Log Measurement Prediction Using Neural Networks with Keras | by Andy McDonald | Oct, 2023

admin by admin
October 27, 2023
in Artificial Intelligence


An example of predicting bulk density (RHOB) with Keras and illustrating impacts of normalisation on prediction results

Towards Data Science

11 min read

·

16 hours ago

Image representing neural networks combined with natural landscapes. Image generated by DALL-E 3.

Large amounts of data are acquired daily from wells around the world. However, the quality of that data can vary significantly from missing data to data impacted by sensor failure and borehole conditions. This can have knock-on consequences on other parts of a subsurface project, such as delays and inaccurate assumptions and conclusions.

As missing data is one of the most common issues we face with well log data quality, numerous methods and techniques have been developed to estimate values and fill in the gaps. This includes the application of machine learning technology — which has increased in popularity over the past few decades with libraries such as TensorFlow and PyTorch.

In this tutorial, we will be using Keras, which is a high-level neural networks API that runs on top of TensorFlow. We will use it to illustrate the process of building a machine-learning model to allow predictions of bulk density (RHOB). This is a commonly acquired logging measurement, however, it can be significantly impacted by bad hole conditions or, in some cases, tools can fail, resulting in no measurements over key intervals.

We will start with a very simple model, that does not account for normalising the inputs, a common step in the machine learning workflow. Then, we will then build a second model with normalised inputs and illustrate its impact on the final prediction result.

The first step in this tutorial is to import the libraries we will be working with.

For this tutorial, we need 4 libraries:

These are imported as follows:

import pandas as pd
from…



Source link

Previous Post

Automated Data Labeling and Human Expertise: What’s the Right Approach? | by Tagxvikas | Oct, 2023

Next Post

Optimizing Virtual Machines With Next-Generation AI

Next Post

Optimizing Virtual Machines With Next-Generation AI

Choose your candy

Service Robots - Our New and Efficient Coworkers

Related Post

Artificial Intelligence

Avoid Overfitting in Neural Networks: a Deep Dive | by Riccardo Andreoni | Nov, 2023

by admin
November 30, 2023
Machine Learning

Machine Learning in Cybersecurity: A Proactive Approach | by PECB | Nov, 2023

by admin
November 30, 2023
Machine Learning

Document Approval : A Complete Guide

by admin
November 30, 2023
Artificial Intelligence

Accelerate data preparation for ML in Amazon SageMaker Canvas

by admin
November 30, 2023
Edge AI

Deep Learning Models Which Pay Attention (Part II): Attention (Special Focus) in Computer Vision

by admin
November 30, 2023
Artificial Intelligence

Sam Altman returns as CEO, OpenAI has a new initial board

by admin
November 30, 2023

© Machine Learning News Hubb All rights reserved.

Use of these names, logos, and brands does not imply endorsement unless specified. By using this site, you agree to the Privacy Policy and Terms & Conditions.

Navigate Site

  • Home
  • Machine Learning
  • Artificial Intelligence
  • Big Data
  • Deep Learning
  • Edge AI
  • Neural Network
  • Contact Us

Newsletter Sign Up.

No Result
View All Result
  • Home
  • Machine Learning
  • Artificial Intelligence
  • Big Data
  • Deep Learning
  • Edge AI
  • Neural Network
  • Contact Us

© 2023 JNews - Premium WordPress news & magazine theme by Jegtheme.