Fr. 198.00

Computational Tools for Sustainable Industrial Transformation

English · Hardback

Will be released 18.09.2025

Description

Read more

This book discusses how computational tools are revolutionizing sustainable industrial transformation. By integrating advanced technologies such as big data analytics, machine learning, digital twins, and IoT, this volume provides a comprehensive guide to optimizing industrial processes for enhanced efficiency and reduced environmental impact. The chapters cover critical topics including the principles of industrial efficiency, the application of digital twins in manufacturing, and the application of machine learning and AI for process optimization and predictive maintenance. Readers will also explore the benefits of big data analytics in monitoring sustainability metrics and the role of IoT in smart sensor networks. Through real-world case studies and expert contributions, this book offers actionable insights into how computational tools can revolutionize industrial practices. The material presented significantly advances sustainability science by addressing key challenges and opportunities in the transition towards smart and sustainable societies. Through the integration of computational methods with industrial transformation, the book offers innovative solutions to pressing sustainability issues such as resource depletion, environmental degradation, and social inequality.
Designed for industrial engineers, managers, and academics across disciplines such as engineering, environmental science, and business management, this book offers practical guidance on implementing computational techniques to optimize processes and reduce environmental impact. It invites readers to think through critical questions about sustainable practices and provides actionable insights that can be directly applied within industrial settings. By bridging theoretical knowledge with practical application, this book serves as an essential resource for professionals seeking to drive sustainable change in industry.

List of contents

Chapter 1. Advanced AI and Digital Twin Solutions: WOA, BERT, ST-GCN, PSO- Enhanced IoT Cybersecurity and Transformation.- Chapter 2. AI-Powered Blockchain and IoT Frameworks: Integrating DAG, LPWAN, SPNs, PSNR, and ECC for Smart Environmental Solutions.- Chapter 3. AI-Powered Multi-Scale Analysis of Urban Green Spaces Using OBIA, LULC Mapping, and Ecosystem Valuation for Human Settlement Sustainability.- Chapter 4. Industrial Robotics in Smart Manufacturing: Integrating PLM, AMRs, GNNs, CPS, and Energy-Efficient Systems.- Chapter 5. Revolutionizing Industrial Automation: Blockchain-IoT Convergence with Secure Data Sharing and Real-Time Monitoring for Smart Systems.- Chapter 6. Revolutionizing Urban Development in Smart Cities with Advanced Digital Twins: Integrating IoT, Multi-Model Simulations, and Geospatial Analytics.- Chapter 7. Running Industrial Workflow Applications in a Software-Defined Multi-Cloud Environment Using Neural Networks, MAS, PSO, MILP, and Game-Theoretic Models for Green Energy-Aware Scheduling.- Chapter 8. Transforming Urban Landscapes with AI: Utilizing Reforestation Drones, Ocean Cleanup Robotics, Predictive Climate Modelling, and Green Infrastructure to Build Resilient and Sustainable Cities of Tomorrow.

About the author

Ahmad H. Sabry was born in Baghdad, Iraq. He received the B.Sc. and M.Sc. degrees in electrical and electronics, control and automation, engineering from the University of Technology-Baghdad, Iraq, in 1994 and 2001, respectively. He received the Ph.D. degree in DC Based PV-Powered Home Energy System from Department of Electrical and Electronic Engineering, control and automation at UPM, Malaysia in 2017. He is the author of more than 35 articles, and more than 5 inventions, and holds one patent. His research interests include Integrated Solar Powered Smart Home System Based on Voltage Matching, DC distribution, industrial robotic systems, wireless energy management systems.
Nasri Sulaiman (Member, IEEE) received the bachelor’s degree in electronics and computer engineering from Universiti Putra Malaysia (UPM), Malaysia, in 1994, the master’s degree in microelectronics system design from the University of Southampton, U.K., in 1999, and the Ph.D. degree in adaptive hardware from The University of Edinburgh, U.K., in 2007. He is currently an Associate Professor at the Department of Electrical and Electronic Engineering, Faculty of Engineering, UPM. He is currently working on a variety of research projects such as “High Performance Hardware Implementation of a Multi-Objective Genetic Algorithm” which is funded through the Research University Grant Scheme (RUGS) of Universiti Putra Malaysia (UPM), as well as, “Crest Factor Reduction and Digital Pre-distortion Implementation in Orthogonal Frequency Division Multiplexing (OFDM) Systems, funded by the Ministry of Science, Technology and Innovation (MOSTI). His research interests include evolutionary algorithms, digital signal processing, digital communications, and low power VLSI designs.
Bashra Kadhim was born in Baghdad. Currently, she is working as an Assistant Professor in the department of Control and System Engineering at University of Technology, Iraq. She completed her Master degree in Mechatronics Engineering at University of Technology (UOT) Bagdad-Iraq. She obtained her PhD at Control Engineering Department (RST), Siegen University, Germany. She also served as a lecturer in control and systems Engineering Department at UOT 2005. She also served as a Reviewer and Editor in many reputed journals notably IEEE Access, MTAP, Journal of Intelligent Systems and so on. She also had a proven experience in the International Journal of Intelligent Engineering Informatics as an Editor. Her research interests are mobile robot, path planning, multi objective optimization and intelligent algorithm.

Summary

This book discusses how computational tools are revolutionizing sustainable industrial transformation. By integrating advanced technologies such as big data analytics, machine learning, digital twins, and IoT, this volume provides a comprehensive guide to optimizing industrial processes for enhanced efficiency and reduced environmental impact. The chapters cover critical topics including the principles of industrial efficiency, the application of digital twins in manufacturing, and the application of machine learning and AI for process optimization and predictive maintenance. Readers will also explore the benefits of big data analytics in monitoring sustainability metrics and the role of IoT in smart sensor networks. Through real-world case studies and expert contributions, this book offers actionable insights into how computational tools can revolutionize industrial practices. The material presented significantly advances sustainability science by addressing key challenges and opportunities in the transition towards smart and sustainable societies. Through the integration of computational methods with industrial transformation, the book offers innovative solutions to pressing sustainability issues such as resource depletion, environmental degradation, and social inequality.
Designed for industrial engineers, managers, and academics across disciplines such as engineering, environmental science, and business management, this book offers practical guidance on implementing computational techniques to optimize processes and reduce environmental impact. It invites readers to think through critical questions about sustainable practices and provides actionable insights that can be directly applied within industrial settings. By bridging theoretical knowledge with practical application, this book serves as an essential resource for professionals seeking to drive sustainable change in industry.

Product details

Assisted by Bashra Kadhim (Editor), Ahmad H. Sabry (Editor), Nasri Sulaiman (Editor)
Publisher Springer EN
 
Languages English
Product format Hardback
Release 18.09.2025
 
EAN 9789819504992
ISBN 978-981-9504-99-2
No. of pages 228
Illustrations X, 228 p. 54 illus., 50 illus. in color., schwarz-weiss Illustrationen, farbige Illustrationen
Series Science for Sustainable Societies
Subjects Natural sciences, medicine, IT, technology > Geosciences

Industrial Design, Unternehmen und Umwelt, Grüne Unternehmensansätze, Sustainability, Strategisches Management, machine learning, Wirtschaftsmathematik und -informatik, IT-Management, Unternehmensanwendungen, Digital Twin, IT in Business, Industry 4.0, Design, industrielle und kommerzielle Kunst, Illustration, Business Strategy and Leadership, Corporate Environmental Management, Green Computing, Distributed learning

Customer reviews

No reviews have been written for this item yet. Write the first review and be helpful to other users when they decide on a purchase.

Write a review

Thumbs up or thumbs down? Write your own review.

For messages to CeDe.ch please use the contact form.

The input fields marked * are obligatory

By submitting this form you agree to our data privacy statement.