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This book offers comprehensive information on the theory, models
and algorithms involved in state-of-the-art multivariate time
series analysis and highlights several of the latest research
advances in climate and environmental science. The main topics
addressed include Multivariate Time-Frequency Analysis, Artificial
Neural Networks, Stochastic Modeling and Optimization, Spectral
Analysis, Global Climate Change, Regional Climate Change, Ecosystem
and Carbon Cycle, Paleoclimate, and Strategies for Climate Change
Mitigation. The self-contained guide will be of great value to
researchers and advanced students from a wide range of disciplines:
those from Meteorology, Climatology, Oceanography, the Earth
Sciences and Environmental Science will be introduced to various
advanced tools for analyzing multivariate data, greatly
facilitating their research, while those from Applied Mathematics,
Statistics, Physics, and the Computer Sciences will learn how to
use these multivariate time series analysis tools to approach
climate and environmental topics.
Most environmental data involve a large degree of complexity and
uncertainty. Environmental Data Analysis is created to provide
modern quantitative tools and techniques designed specifically to
meet the needs of environmental sciences and related fields. This
book has an impressive coverage of the scope. Main techniques
described in this book are models for linear and nonlinear
environmental systems, statistical & numerical methods, data
envelopment analysis, risk assessments and life cycle assessments.
These state-of-the-art techniques have attracted significant
attention over the past decades in environmental monitoring,
modeling and decision making. Environmental Data Analysis explains
carefully various data analysis procedures and techniques in a
clear, concise, and straightforward language and is written in a
self-contained way that is accessible to researchers and advanced
students in science and engineering. This is an excellent reference
for scientists and engineers who wish to analyze, interpret and
model data from various sources, and is also an ideal
graduate-level textbook for courses in environmental sciences and
related fields. Contents: Preface Time series analysis Chaos and
dynamical systems Approximation Interpolation Statistical methods
Numerical methods Optimization Data envelopment analysis Risk
assessments Life cycle assessments Index
Mathematical and Physical Fundamentals of Climate Change is the
first book to provide an overview of the math and physics necessary
for scientists to understand and apply atmospheric and oceanic
models to climate research. The book begins with basic mathematics
then leads on to specific applications in atmospheric and ocean
dynamics, such as fluid dynamics, atmospheric dynamics, oceanic
dynamics, and glaciers and sea level rise. Mathematical and
Physical Fundamentals of Climate Change provides a solid foundation
in math and physics with which to understand global warming,
natural climate variations, and climate models. This book informs
the future users of climate models and the decision-makers of
tomorrow by providing the depth they need. Developed from a course
that the authors teach at Beijing Normal University, the material
has been extensively class-tested and contains online resources,
such as presentation files, lecture notes, solutions to problems
and MATLab codes.
Climate change mechanisms, impacts, risks, mitigation, adaption,
and governance are widely recognized as the biggest, most
interconnected problem facing humanity. Big Data Mining for Climate
Change addresses one of the fundamental issues facing scientists of
climate or the environment: how to manage the vast amount of
information available and analyse it. The resulting integrated and
interdisciplinary big data mining approaches are emerging,
partially with the help of the United Nation's big data climate
challenge, some of which are recommended widely as new approaches
for climate change research. Big Data Mining for Climate Change
delivers a rich understanding of climate-related big data
techniques and highlights how to navigate huge amount of climate
data and resources available using big data applications. It guides
future directions and will boom big-data-driven researches on
modeling, diagnosing and predicting climate change and mitigating
related impacts. This book mainly focuses on climate network
models, deep learning techniques for climate dynamics, automated
feature extraction of climate variability, and sparsification of
big climate data. It also includes a revelatory exploration of
big-data-driven low-carbon economy and management. Its content
provides cutting-edge knowledge for scientists and advanced
students studying climate change from various disciplines,
including atmospheric, oceanic and environmental sciences;
geography, ecology, energy, economics, management, engineering, and
public policy.
This edited book gives a general overview on current research,
focusing on geoenvironmental issues and challenges in
hydrogeosciences in model regions in Asia, Europe, and America,
with a focus on the Middle East and Mediterranean region and
surrounding areas. This proceedings book is based on the accepted
papers for oral/poster presentations at the 2nd Springer Conference
of the Arabian Journal of Geosciences (CAJG-2), Tunisia 2019. It
offers a broad range of recent studies that discuss the latest
advances in geoenvironmental and hydrogeosciences from diverse
backgrounds including climate change, geoecology, biogeochemistry,
water resources management, and environmental monitoring and
assessment. It shares insights on how the understanding of
ecological, climatological, oceanic and hydrological processes is
the key for improving practices in environment management,
including the eco-responsibility, scientific integrity, and social
and ethical dimensions. It is of interest to scientists, engineers,
practitioners, and policymakers in the field of environmental
sciences including climatology, oceanography, ecology,
biogeochemistry, environmental management, hydrology, hydrogeology,
and geosciences in general. In particular, this book is of great
value to students and environment-related professionals for further
investigations on the state of Earth systems.
Boolean control networks (BCNs) are a kind of parameter-free model,
which can be used to approximate the qualitative behavior of
biological systems. After converting into a model similar to the
standard discrete-time state-space model, control-theoretic
problems of BCNs can be studied. In control theory, state observers
can provide state estimation for any other applications.
Reconstructibility condition is necessary for the existence of
state observers. In this thesis explicit and recursive methods have
been developed for reconstructibility analysis. Then, an approach
to design Luenberger-like observer has been proposed, which works
in a two-step process (i.e. predict and update). If a BCN is
reconstructible, then an accurate state estimate can be provided by
the observer no later than the minimal reconstructibility index.
For a wide range of applications the approach has been extended to
enable design of unknown input observer, distributed observers and
reduced-order observer. The performance of the observers has been
evaluated thoroughly. Furthermore, methods for output tracking
control and fault diagnosis of BCNs have been developed. Finally,
the developed schemes are tested with numerical examples.
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