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All machining process are dependent on a number of inherent process
parameters. It is of the utmost importance to find suitable
combinations to all the process parameters so that the desired
output response is optimized. While doing so may be nearly
impossible or too expensive by carrying out experiments at all
possible combinations, it may be done quickly and efficiently by
using computational intelligence techniques. Due to the versatile
nature of computational intelligence techniques, they can be used
at different phases of the machining process design and
optimization process. While powerful machine-learning methods like
gene expression programming (GEP), artificial neural network (ANN),
support vector regression (SVM), and more can be used at an early
phase of the design and optimization process to act as predictive
models for the actual experiments, other metaheuristics-based
methods like cuckoo search, ant colony optimization, particle swarm
optimization, and others can be used to optimize these predictive
models to find the optimal process parameter combination. These
machining and optimization processes are the future of
manufacturing. Data-Driven Optimization of Manufacturing Processes
contains the latest research on the application of state-of-the-art
computational intelligence techniques from both predictive modeling
and optimization viewpoint in both soft computing approaches and
machining processes. The chapters provide solutions applicable to
machining or manufacturing process problems and for optimizing the
problems involved in other areas of mechanical, civil, and
electrical engineering, making it a valuable reference tool. This
book is addressed to engineers, scientists, practitioners,
stakeholders, researchers, academicians, and students interested in
the potential of recently developed powerful computational
intelligence techniques towards improving the performance of
machining processes.
This book comprises select proceedings of the international
conference ETAEERE 2020, and focuses on contemporary issues in
energy management and energy efficiency in the context of power
systems. The contents cover modeling, simulation and optimization
based studies on topics like medium voltage BTB system, cost
optimization of a ring frame unit in textile industry, rectenna for
RF energy harvesting, ecology and energy dimension in
infrastructural designs, study of AGC in two area hydro thermal
power system, energy-efficient and reliable depth-based routing
protocol for underwater wireless sensor network, and power line
communication. This book can be beneficial for students,
researchers as well as industry professionals.
This book comprises select proceedings of the international
conference ETAEERE 2020, and focuses on contemporary issues in
energy management and energy efficiency in the context of power
systems. The contents cover modeling, simulation and optimization
based studies on topics like medium voltage BTB system, cost
optimization of a ring frame unit in textile industry, rectenna for
RF energy harvesting, ecology and energy dimension in
infrastructural designs, study of AGC in two area hydro thermal
power system, energy-efficient and reliable depth-based routing
protocol for underwater wireless sensor network, and power line
communication. This book can be beneficial for students,
researchers as well as industry professionals.
All machining process are dependent on a number of inherent process
parameters. It is of the utmost importance to find suitable
combinations to all the process parameters so that the desired
output response is optimized. While doing so may be nearly
impossible or too expensive by carrying out experiments at all
possible combinations, it may be done quickly and efficiently by
using computational intelligence techniques. Due to the versatile
nature of computational intelligence techniques, they can be used
at different phases of the machining process design and
optimization process. While powerful machine-learning methods like
gene expression programming (GEP), artificial neural network (ANN),
support vector regression (SVM), and more can be used at an early
phase of the design and optimization process to act as predictive
models for the actual experiments, other metaheuristics-based
methods like cuckoo search, ant colony optimization, particle swarm
optimization, and others can be used to optimize these predictive
models to find the optimal process parameter combination. These
machining and optimization processes are the future of
manufacturing. Data-Driven Optimization of Manufacturing Processes
contains the latest research on the application of state-of-the-art
computational intelligence techniques from both predictive modeling
and optimization viewpoint in both soft computing approaches and
machining processes. The chapters provide solutions applicable to
machining or manufacturing process problems and for optimizing the
problems involved in other areas of mechanical, civil, and
electrical engineering, making it a valuable reference tool. This
book is addressed to engineers, scientists, practitioners,
stakeholders, researchers, academicians, and students interested in
the potential of recently developed powerful computational
intelligence techniques towards improving the performance of
machining processes.
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