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This book covers in detail the entire workflow for quantitative
seismic interpretation of subsurface modeling and characterization.
It focusses on each step of the geo-modeling workflow starting from
data preconditioning and wavelet extraction, which is the basis for
the reservoir geophysics described and introduced in the following
chapters. This book allows the reader to get a comprehensive
insight of the most common and advanced workflows. It aims at
graduate students related to energy (hydrocarbons), CO2 geological
storage, and near surface characterization as well as professionals
in these industries. The reader benefits from the strong and
coherent theoretical background of the book, which is accompanied
with real case examples.
This book presents a geostatistical framework for data integration
into subsurface Earth modeling. It offers extensive geostatistical
background information, including detailed descriptions of the main
geostatistical tools traditionally used in Earth related sciences
to infer the spatial distribution of a given property of interest.
This framework is then directly linked with applications in the oil
and gas industry and how it can be used as the basis to
simultaneously integrate geophysical data (e.g. seismic reflection
data) and well-log data into reservoir modeling and
characterization. All of the cutting-edge methodologies presented
here are first approached from a theoretical point of view and then
supplemented by sample applications from real case studies
involving different geological scenarios and different challenges.
The book offers a valuable resource for students who are interested
in learning more about the fascinating world of geostatistics and
reservoir modeling and characterization. It offers them a deeper
understanding of the main geostatistical concepts and how
geostatistics can be used to achieve better data integration and
reservoir modeling.
This book meant for those who seek to apply evolutionary algorithms
to problems in engineering and science. To this end, it provides
the theoretical background necessary to the understanding of the
presented evolutionary algorithms and their shortcomings, while
also discussing themes that are pivotal to the successful
application of evolutionary algorithms to real-world problems. The
theoretical descriptions are illustrated with didactical Python
implementations of the algorithms, which not only allow readers to
consolidate their understanding, but also provide a sound starting
point for those intending to apply evolutionary algorithms to
optimization problems in their working fields. Python has been
chosen due to its widespread adoption in the Artificial
Intelligence community. Those familiar with high level languages
such as MATLAB (TM) will not have any difficulty in reading the
Python implementations of the evolutionary algorithms provided in
the book. Instead of attempting to encompass most of the existing
evolutionary algorithms, past and present, the book focuses on
those algorithms that researchers have recently applied to
difficult optimization problems, such as control problems with
continuous action spaces and the training of high-dimensional
convolutional neural-networks. The basic characteristics of
real-world optimization problems are presented, together with
recommendations on its proper application to evolutionary
algorithms. The applied nature of the book is reinforced by the
presentation of successful cases of the application of evolutionary
algorithms to optimization problems. This is complemented by Python
source codes, giving users an insight into the idiosyncrasies of
the practical application of evolutionary algorithms.
This book presents a geostatistical framework for data integration
into subsurface Earth modeling. It offers extensive geostatistical
background information, including detailed descriptions of the main
geostatistical tools traditionally used in Earth related sciences
to infer the spatial distribution of a given property of interest.
This framework is then directly linked with applications in the oil
and gas industry and how it can be used as the basis to
simultaneously integrate geophysical data (e.g. seismic reflection
data) and well-log data into reservoir modeling and
characterization. All of the cutting-edge methodologies presented
here are first approached from a theoretical point of view and then
supplemented by sample applications from real case studies
involving different geological scenarios and different challenges.
The book offers a valuable resource for students who are interested
in learning more about the fascinating world of geostatistics and
reservoir modeling and characterization. It offers them a deeper
understanding of the main geostatistical concepts and how
geostatistics can be used to achieve better data integration and
reservoir modeling.
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