Framework for correlating two or more well logs using feature vectors generated from CNN's in Pytorch
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Updated
Aug 16, 2019 - Python
Framework for correlating two or more well logs using feature vectors generated from CNN's in Pytorch
The first realistic and public dataset with rare undesirable real events in oil wells.
TotalDepth is capable of processing and analysing petrophysical wireline logs.
Offshore drilling platforms near the coast of Nigeria. Accessible at https://doubleoffshore.org/
A Python Module for Outliers Detection, Visualization and Treatment in Oil Well Datasets
Multivariate oil production time series analysis with XGBoost and neural networks
Oil and gas production has skyrocketed in Pennsylvania in the past decade as a result of improved techniques with horizontal drilling and hydraulic fracturing. This analysis will look at the waste produced by these wells and how that waste is handled.
This repository contains the necessary scripts for oil production flow prediction models that make use of spark's MLlib
Conducting a well-test analysis on the volve dataset to test our reservoir for better understanding of some useful reservoir properties
I worked with OilyGiant, a petroleum mining firm, to find new oil well locations. I created a model to identify high-profit zones and assessed potential earnings and risks using bootstrapping techniques.
Web application to store P.S.I records of PDVSA Oil Wells (C.R.U.D + charts)
Projects relevant to the oil & gas industry built by Microsoft
Proof of Private Mineral Assets
Exploratory analysis of seismic data using R and RStudio
Ajude a OilyGiant a encontrar os melhores locais para novos poços de petróleo. Use análise de dados e regressão linear para prever reservas e tomar decisões de investimento, mantendo o risco de prejuízo abaixo de 2,5%.
Identifying outliers in well logs with machine learning.
This Repository will be destinated to the study of Offshore Well Modeling. The model that will be implemented is called Fast Offshore Wells Model (FOWM) from the paper: Fast Offshore Wells Model (FOWM): A practical dynamic model formultiphase oil production systems in deepwater and ultra-deepwaterscenarios
A data prediction algorithm implemented in Python to infer depth and casing size data of California oil wells missing data using surrounding wells in the same oil field. Python libraries such as pandas for manipulating dataframes and geopy were utilized.
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