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Predictive Modeling for Energy Management and Power Systems
Engineering introduces readers to the cutting-edge use of big data
and large computational infrastructures in energy demand estimation
and power management systems. The book supports engineers and
scientists who seek to become familiar with advanced optimization
techniques for power systems designs, optimization techniques and
algorithms for consumer power management, and potential
applications of machine learning and artificial intelligence in
this field. The book provides modeling theory in an easy-to-read
format, verified with on-site models and case studies for specific
geographic regions and complex consumer markets.
The disciplines of science and engineering rely heavily on the
forecasting of prospective constraints for concepts that have not
yet been proven to exist, especially in areas such as artificial
intelligence. Obtaining quality solutions to the problems presented
becomes increasingly difficult due to the number of steps required
to sift through the possible solutions, and the ability to solve
such problems relies on the recognition of patterns and the
categorization of data into specific sets. Predictive modeling and
optimization methods allow unknown events to be categorized based
on statistics and classifiers input by researchers. The Handbook of
Research on Predictive Modeling and Optimization Methods in Science
and Engineering is a critical reference source that provides
comprehensive information on the use of optimization techniques and
predictive models to solve real-life engineering and science
problems. Through discussions on techniques such as robust design
optimization, water level prediction, and the prediction of human
actions, this publication identifies solutions to developing
problems and new solutions for existing problems, making this
publication a valuable resource for engineers, researchers,
graduate students, and other professionals.
This book presents the current trends, technologies, and challenges
in Big Data in the diversified field of engineering and sciences.
It covers the applications of Big Data ranging from conventional
fields of mechanical engineering, civil engineering to electronics,
electrical, and computer science to areas in pharmaceutical and
biological sciences. This book consists of contributions from
various authors from all sectors of academia and industries,
demonstrating the imperative application of Big Data for the
decision-making process in sectors where the volume, variety, and
velocity of information keep increasing. The book is a useful
reference for graduate students, researchers and scientists
interested in exploring the potential of Big Data in the
application of engineering areas.
Water Engineering Modeling and Mathematic Tools provides an
informative resource for practitioners who want to learn more about
different techniques and models in water engineering and their
practical applications and case studies. The book provides
modelling theories in an easy-to-read format verified with on-site
models for specific regions and scenarios. Users will find this to
be a significant contribution to the development of mathematical
tools, experimental techniques, and data-driven models that support
modern-day water engineering applications. Civil engineers,
industrialists, and water management experts should be familiar
with advanced techniques that can be used to improve existing
systems in water engineering. This book provides key ideas on
recently developed machine learning methods and AI modelling. It
will serve as a common platform for practitioners who need to
become familiar with the latest developments of computational
techniques in water engineering.
Handbook of Probabilistic Models carefully examines the application
of advanced probabilistic models in conventional engineering
fields. In this comprehensive handbook, practitioners, researchers
and scientists will find detailed explanations of technical
concepts, applications of the proposed methods, and the respective
scientific approaches needed to solve the problem. This book
provides an interdisciplinary approach that creates advanced
probabilistic models for engineering fields, ranging from
conventional fields of mechanical engineering and civil
engineering, to electronics, electrical, earth sciences, climate,
agriculture, water resource, mathematical sciences and computer
sciences. Specific topics covered include minimax probability
machine regression, stochastic finite element method, relevance
vector machine, logistic regression, Monte Carlo simulations,
random matrix, Gaussian process regression, Kalman filter,
stochastic optimization, maximum likelihood, Bayesian inference,
Bayesian update, kriging, copula-statistical models, and more.
This book presents the current trends, technologies, and challenges
in Big Data in the diversified field of engineering and sciences.
It covers the applications of Big Data ranging from conventional
fields of mechanical engineering, civil engineering to electronics,
electrical, and computer science to areas in pharmaceutical and
biological sciences. This book consists of contributions from
various authors from all sectors of academia and industries,
demonstrating the imperative application of Big Data for the
decision-making process in sectors where the volume, variety, and
velocity of information keep increasing. The book is a useful
reference for graduate students, researchers and scientists
interested in exploring the potential of Big Data in the
application of engineering areas.
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