Data Driven Modeling & Optimization of Industrial Processes
Title | Data Driven Modeling & Optimization of Industrial Processes PDF eBook |
Author | |
Publisher | |
Pages | 158 |
Release | 2018 |
Genre | |
ISBN |
Data-Driven Optimization of Manufacturing Processes
Title | Data-Driven Optimization of Manufacturing Processes PDF eBook |
Author | Kalita, Kanak |
Publisher | IGI Global |
Pages | 298 |
Release | 2020-12-25 |
Genre | Technology & Engineering |
ISBN | 1799872084 |
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.
Data-Driven Prediction for Industrial Processes and Their Applications
Title | Data-Driven Prediction for Industrial Processes and Their Applications PDF eBook |
Author | Jun Zhao |
Publisher | Springer |
Pages | 453 |
Release | 2018-08-20 |
Genre | Computers |
ISBN | 3319940511 |
This book presents modeling methods and algorithms for data-driven prediction and forecasting of practical industrial process by employing machine learning and statistics methodologies. Related case studies, especially on energy systems in the steel industry are also addressed and analyzed. The case studies in this volume are entirely rooted in both classical data-driven prediction problems and industrial practice requirements. Detailed figures and tables demonstrate the effectiveness and generalization of the methods addressed, and the classifications of the addressed prediction problems come from practical industrial demands, rather than from academic categories. As such, readers will learn the corresponding approaches for resolving their industrial technical problems. Although the contents of this book and its case studies come from the steel industry, these techniques can be also used for other process industries. This book appeals to students, researchers, and professionals within the machine learning and data analysis and mining communities.
Data-Driven Optimization of Manufacturing Processes
Title | Data-Driven Optimization of Manufacturing Processes PDF eBook |
Author | Kanak Kalita |
Publisher | |
Pages | 298 |
Release | 2020 |
Genre | Electronic books |
ISBN | 9781799872092 |
"This book is a compilation of chapters on the application of state-of-the-art computational intelligence techniques from both predictive modeling and optimization, offering both soft computing approaches and machining processes"--
Probably Approximately Correct
Title | Probably Approximately Correct PDF eBook |
Author | Leslie Valiant |
Publisher | Basic Books (AZ) |
Pages | 210 |
Release | 2013-06-04 |
Genre | Science |
ISBN | 0465032710 |
Presenting a theory of the theoryless, a computer scientist provides a model of how effective behavior can be learned even in a world as complex as our own, shedding new light on human nature.
Dynamic Modeling of Complex Industrial Processes: Data-driven Methods and Application Research
Title | Dynamic Modeling of Complex Industrial Processes: Data-driven Methods and Application Research PDF eBook |
Author | Chao Shang |
Publisher | Springer |
Pages | 154 |
Release | 2018-02-22 |
Genre | Technology & Engineering |
ISBN | 9811066779 |
This thesis develops a systematic, data-based dynamic modeling framework for industrial processes in keeping with the slowness principle. Using said framework as a point of departure, it then proposes novel strategies for dealing with control monitoring and quality prediction problems in industrial production contexts. The thesis reveals the slowly varying nature of industrial production processes under feedback control, and integrates it with process data analytics to offer powerful prior knowledge that gives rise to statistical methods tailored to industrial data. It addresses several issues of immediate interest in industrial practice, including process monitoring, control performance assessment and diagnosis, monitoring system design, and product quality prediction. In particular, it proposes a holistic and pragmatic design framework for industrial monitoring systems, which delivers effective elimination of false alarms, as well as intelligent self-running by fully utilizing the information underlying the data. One of the strengths of this thesis is its integration of insights from statistics, machine learning, control theory and engineering to provide a new scheme for industrial process modeling in the era of big data.
Data-Driven Evolutionary Optimization
Title | Data-Driven Evolutionary Optimization PDF eBook |
Author | Yaochu Jin |
Publisher | Springer Nature |
Pages | 393 |
Release | 2021-06-28 |
Genre | Computers |
ISBN | 3030746402 |
Intended for researchers and practitioners alike, this book covers carefully selected yet broad topics in optimization, machine learning, and metaheuristics. Written by world-leading academic researchers who are extremely experienced in industrial applications, this self-contained book is the first of its kind that provides comprehensive background knowledge, particularly practical guidelines, and state-of-the-art techniques. New algorithms are carefully explained, further elaborated with pseudocode or flowcharts, and full working source code is made freely available. This is followed by a presentation of a variety of data-driven single- and multi-objective optimization algorithms that seamlessly integrate modern machine learning such as deep learning and transfer learning with evolutionary and swarm optimization algorithms. Applications of data-driven optimization ranging from aerodynamic design, optimization of industrial processes, to deep neural architecture search are included.