Nature-inspired Metaheuristics Algorithms
Solving Real-World Engineering Problems
Herausgeber: Tripathi, Aprna; Bansal, Sulabh; Srivastava, Shilpa; Vuppuluri, Prem Prakash
Nature-inspired Metaheuristics Algorithms
Solving Real-World Engineering Problems
Herausgeber: Tripathi, Aprna; Bansal, Sulabh; Srivastava, Shilpa; Vuppuluri, Prem Prakash
- Gebundenes Buch
- Merkliste
- Auf die Merkliste
- Bewerten Bewerten
- Teilen
- Produkt teilen
- Produkterinnerung
- Produkterinnerung
The text provides practical guidance to implement nature-inspired algorithms and metaheuristics in real-life scenarios to solve complex optimization problems. It further demonstrates how nature-inspired metaheuristic algorithms have the potential to contribute to multiple UN SDG such as climate action, clean energy, and sustainable cities.
Andere Kunden interessierten sich auch für
- Nature-Inspired Optimization Algorithms and Soft Computing156,99 €
- Biologically Inspired Cooperative Computing74,99 €
- Yi Pan / Franz J. Rammig / Hartmut Schmeck / Mauricio Solar (eds.)Biologically Inspired Cooperative Computing125,99 €
- Exploring Critical Approaches of Evolutionary Computation232,99 €
- Andrew Carpenter WheelerA Journey to Nature39,99 €
- New Trends in Computational Vision and Bio-inspired Computing166,99 €
- Spaces, Spatiality and Technology110,99 €
-
-
-
The text provides practical guidance to implement nature-inspired algorithms and metaheuristics in real-life scenarios to solve complex optimization problems. It further demonstrates how nature-inspired metaheuristic algorithms have the potential to contribute to multiple UN SDG such as climate action, clean energy, and sustainable cities.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Produktdetails
- Produktdetails
- Verlag: Taylor & Francis Ltd
- Seitenzahl: 488
- Erscheinungstermin: 10. Juni 2025
- Englisch
- Abmessung: 234mm x 156mm
- ISBN-13: 9781032770871
- ISBN-10: 1032770872
- Artikelnr.: 72211778
- Herstellerkennzeichnung
- Produktsicherheitsverantwortliche/r
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
- Verlag: Taylor & Francis Ltd
- Seitenzahl: 488
- Erscheinungstermin: 10. Juni 2025
- Englisch
- Abmessung: 234mm x 156mm
- ISBN-13: 9781032770871
- ISBN-10: 1032770872
- Artikelnr.: 72211778
- Herstellerkennzeichnung
- Produktsicherheitsverantwortliche/r
- Europaallee 1
- 36244 Bad Hersfeld
- gpsr@libri.de
Sulabh Bansal received the BE in Computer Science and Engineering from Shivaji University Kolhapur in 2000, and M.Tech and PhD degrees from Dayalbagh Educational Institute, Agra in the year 2012 and 2017 respectively. He is a senior member of IEEE, a member of ACM, and a permanent member of the Indian Society for Technical Education. He has a comprehensive experience of around 22 years in Information Technology, including working as an Industry professional, research fellow, and academician. His primary research areas include designing Algorithms for Optimization problems, Quantum Inspired Computing, High-Performance Computing, and Artificial Intelligence. He teaches several courses such as Artificial Intelligence, Machine Learning, Advanced Data Structures, Advanced Algorithms and Complexity, Design and Analysis of Algorithms, Soft Computing, Operating Systems, Pattern Recognition to both undergraduate and postgraduate students. He has published several research papers in high quality peer reviewed journals many of which are indexed in SCI and Scopus Q1. He has also presented his research work in several scopus indexed International Conferences. A couple of patents and copyrights have also been granted in his name. He has published chapters in a couple of books published by Elsevier and IGI Global. He is an active reviewer of various reputed International Journals in his research areas. Shilpa Srivastava is an Associate Professor at the School of Sciences in Christ University, Delhi NCR. She possesses a degree in B.Sc(H) Mathematics from Delhi University ,Post Graduate Degree MCA from MCRP University and PhD Computer Science & Engineering from Uttarakhand Technical University, Dehradun. She has also Qualified UGC NET exam in Computer Science Applications in 2015. She has a vast teaching and research experience of more than 20 years. She has publications in journals and conferences of national and international repute(SCI/Scopus/ESCI). She is a reviewer of many reputed journals. She has also worked as CO Principal investigator in a research project in collaboration with IIT Roorkee, which was funded by Liverpool Hope University UK. She has published one Patent also. Her areas of interest include Application of Soft Computing in medical domain, Theory of Computation, Algorithms, and e-health services. Aprna Tripathi is an assistant professor in the department of data science and engineering, Manipal University Jaipur. She received her bachelor's degree in sciences from Kanpur University (1998), master's in computer applications from HBTI (2002), Kanpur, Master of Technology from Banasthali University (2007), Rajasthan and PhD from National Institute of Technology Allahabad, Prayagraj (2015). With over 15 years of teaching and research experience, she has established a strong foundation in academia. Her scholarly contributions can be found in prestigious national and international journals and conferences, including those recognized by SCI and Scopus. Furthermore, she actively contributes as a reviewer for prestigious academic journals. Her areas of specialization include Software Engineering, Software Testing, Data Visualization, and Data Structures & Algorithms. Notably, she has authored a book titled "Component-Based Systems: Estimating Efforts Using Soft Computing Techniques." She also holds membership in the Association for Computing Machinery (ACM). Prem Prakash Vuppuluri is an Assistant Professor in the Department of Electrical Engineering and Coordinator, B.Voc. (Robotics and AI) Program at the Faculty of Engineering, Dayalbagh Educational Institute (Deemed to be University), Agra, India. He obtained his B.Tech. (Hons.) in Computer Science and Engineering from the Indian institute of Technology, Kharagpur, Masters in Engineering Systems from Dayalbagh Educational Institute (Deemed University), Agra and PhD in Electrical Engineering from D.E.I. in collaboration with Kiel University, Germany. He has eighteen years of work experience in academia and has taught undergraduate and graduate level courses such as Operating Systems, Systems Optimization using Evolutionary Algorithms, Introduction to Programming using C, Data Structures and Computer Architecture. His research interests include heuristic optimization, machine learning and nature-inspired computation. He has published several research papers in various reputed journals and conferences, and is recipient of several awards in various national and international avenues. He is a life member of the Systems Society of India, Indian Society of Technical Education and the Computer Society of India.
1. Introduction to Optimization: Techniques and Application in Engineering.
2. Quantum-Inspired Evolutionary Algorithms: Bridging Quantum Computing
Concepts with Evolutionary Optimization. 3. Harnessing Metaheuristic
Algorithms for Advanced Optimization and Design Solutions in Complex
Real-World Applications. 4. A GA-Based Virtual Machine Migration Technique
to Optimize Data Privacy and Integrity. 5. Hyperparameter Tuning of
Convolutional Neural Networks using Nature-Inspired Metaheuristic
Algorithms for Image Classification. 6. Applications of Nature-Inspired
Metaheuristics Algorithms for Medical Image Analysis. 7. Particle Swarm
Optimization for Protein Structure Prediction and Refinement. 8. Quantum
Computing Based Metaheuristics for Medical Image Segmentation. 9. Hybrid
Meta-heuristic Approach for Community Detection. 10. Exploring Additive
Manufacturing Parameters for Improved Tensile Strength and Functional
Electrode Fabrication: A Soft Computing Approach. 11. Application of Real
Coded Genetic Algorithm for Optimal Ordering, Pricing and Discounting
Policies in the presence of Partial Advance Payment and Trade Credit in a
Segmented Market with Freshness and Price Dependent Demand. 12. An
Intelligent Simulated Annealing Model for Restraining Driver Speed on
Highways with Law Enforcement in Real-Time. 13. Balancing Optimization and
Emissions in Heuristics and Metaheuristics for Hard Combinatorial Problems.
14. Particle Swarm ptimization-Based Support Vector Regression for
Predictions: Approach and Applications. 15. Optimizing Financial Fraud
Detection Models Using Genetic Algorithms.
2. Quantum-Inspired Evolutionary Algorithms: Bridging Quantum Computing
Concepts with Evolutionary Optimization. 3. Harnessing Metaheuristic
Algorithms for Advanced Optimization and Design Solutions in Complex
Real-World Applications. 4. A GA-Based Virtual Machine Migration Technique
to Optimize Data Privacy and Integrity. 5. Hyperparameter Tuning of
Convolutional Neural Networks using Nature-Inspired Metaheuristic
Algorithms for Image Classification. 6. Applications of Nature-Inspired
Metaheuristics Algorithms for Medical Image Analysis. 7. Particle Swarm
Optimization for Protein Structure Prediction and Refinement. 8. Quantum
Computing Based Metaheuristics for Medical Image Segmentation. 9. Hybrid
Meta-heuristic Approach for Community Detection. 10. Exploring Additive
Manufacturing Parameters for Improved Tensile Strength and Functional
Electrode Fabrication: A Soft Computing Approach. 11. Application of Real
Coded Genetic Algorithm for Optimal Ordering, Pricing and Discounting
Policies in the presence of Partial Advance Payment and Trade Credit in a
Segmented Market with Freshness and Price Dependent Demand. 12. An
Intelligent Simulated Annealing Model for Restraining Driver Speed on
Highways with Law Enforcement in Real-Time. 13. Balancing Optimization and
Emissions in Heuristics and Metaheuristics for Hard Combinatorial Problems.
14. Particle Swarm ptimization-Based Support Vector Regression for
Predictions: Approach and Applications. 15. Optimizing Financial Fraud
Detection Models Using Genetic Algorithms.
1. Introduction to Optimization: Techniques and Application in Engineering.
2. Quantum-Inspired Evolutionary Algorithms: Bridging Quantum Computing
Concepts with Evolutionary Optimization. 3. Harnessing Metaheuristic
Algorithms for Advanced Optimization and Design Solutions in Complex
Real-World Applications. 4. A GA-Based Virtual Machine Migration Technique
to Optimize Data Privacy and Integrity. 5. Hyperparameter Tuning of
Convolutional Neural Networks using Nature-Inspired Metaheuristic
Algorithms for Image Classification. 6. Applications of Nature-Inspired
Metaheuristics Algorithms for Medical Image Analysis. 7. Particle Swarm
Optimization for Protein Structure Prediction and Refinement. 8. Quantum
Computing Based Metaheuristics for Medical Image Segmentation. 9. Hybrid
Meta-heuristic Approach for Community Detection. 10. Exploring Additive
Manufacturing Parameters for Improved Tensile Strength and Functional
Electrode Fabrication: A Soft Computing Approach. 11. Application of Real
Coded Genetic Algorithm for Optimal Ordering, Pricing and Discounting
Policies in the presence of Partial Advance Payment and Trade Credit in a
Segmented Market with Freshness and Price Dependent Demand. 12. An
Intelligent Simulated Annealing Model for Restraining Driver Speed on
Highways with Law Enforcement in Real-Time. 13. Balancing Optimization and
Emissions in Heuristics and Metaheuristics for Hard Combinatorial Problems.
14. Particle Swarm ptimization-Based Support Vector Regression for
Predictions: Approach and Applications. 15. Optimizing Financial Fraud
Detection Models Using Genetic Algorithms.
2. Quantum-Inspired Evolutionary Algorithms: Bridging Quantum Computing
Concepts with Evolutionary Optimization. 3. Harnessing Metaheuristic
Algorithms for Advanced Optimization and Design Solutions in Complex
Real-World Applications. 4. A GA-Based Virtual Machine Migration Technique
to Optimize Data Privacy and Integrity. 5. Hyperparameter Tuning of
Convolutional Neural Networks using Nature-Inspired Metaheuristic
Algorithms for Image Classification. 6. Applications of Nature-Inspired
Metaheuristics Algorithms for Medical Image Analysis. 7. Particle Swarm
Optimization for Protein Structure Prediction and Refinement. 8. Quantum
Computing Based Metaheuristics for Medical Image Segmentation. 9. Hybrid
Meta-heuristic Approach for Community Detection. 10. Exploring Additive
Manufacturing Parameters for Improved Tensile Strength and Functional
Electrode Fabrication: A Soft Computing Approach. 11. Application of Real
Coded Genetic Algorithm for Optimal Ordering, Pricing and Discounting
Policies in the presence of Partial Advance Payment and Trade Credit in a
Segmented Market with Freshness and Price Dependent Demand. 12. An
Intelligent Simulated Annealing Model for Restraining Driver Speed on
Highways with Law Enforcement in Real-Time. 13. Balancing Optimization and
Emissions in Heuristics and Metaheuristics for Hard Combinatorial Problems.
14. Particle Swarm ptimization-Based Support Vector Regression for
Predictions: Approach and Applications. 15. Optimizing Financial Fraud
Detection Models Using Genetic Algorithms.