Data Analytics for Drilling Engineering Data Analytics for Drilling Engineering
Information Fusion and Data Science

Data Analytics for Drilling Engineering

Theory, Algorithms, Experiments, Software

    • £119.99
    • £119.99

Publisher Description

This book presents the signal processing and data mining challenges encountered in drilling engineering, and describes the methods used to overcome them. In drilling engineering, many signal processing technologies are required to solve practical problems, such as downhole information transmission, spatial attitude of drillstring, drillstring dynamics, seismic activity while drilling, among others. This title attempts to bridge the gap between the signal processing and data mining and oil and gas drilling engineering communities. There is an urgent need to summarize signal processing and data mining issues in drilling engineering so that practitioners in these fields can understand each other in order to enhance oil and gas drilling functions. In summary, this book shows the importance of signal processing and data mining to researchers and professional drilling engineers and open up a new area of application for signal processing and data mining scientists.

GENRE
Professional & Technical
RELEASED
2019
30 December
LANGUAGE
EN
English
LENGTH
325
Pages
PUBLISHER
Springer International Publishing
SIZE
55.8
MB

More Books Like This

Measurement While Drilling Measurement While Drilling
2018
Electromagnetic Time Reversal Electromagnetic Time Reversal
2017
Mechanical Vibrations Mechanical Vibrations
2017
Electrical Systems 1 Electrical Systems 1
2020
Dynamical Systems: Theoretical and Experimental Analysis Dynamical Systems: Theoretical and Experimental Analysis
2016
Ultra-Wideband Short-Pulse Electromagnetics 8 Ultra-Wideband Short-Pulse Electromagnetics 8
2007

Other Books in This Series

Relational Calculus for Actionable Knowledge Relational Calculus for Actionable Knowledge
2022
Predictive Maintenance in Smart Factories Predictive Maintenance in Smart Factories
2021
Feature Learning and Understanding Feature Learning and Understanding
2020
Possibility Theory for the Design of Information Fusion Systems Possibility Theory for the Design of Information Fusion Systems
2019
Mobile Data Mining and Applications Mobile Data Mining and Applications
2019
Information Quality in Information Fusion and Decision Making Information Quality in Information Fusion and Decision Making
2019