Smart City Gnosys

Smart city article details

Title Nature-Inspired Optimization Algorithms And Soft Computing: Methods, Technology And Applications For Iots, Smart Cities, Healthcare And Industrial Automation
ID_Doc 38851
Authors Arya R.; Singh S.; Singh M.P.; Iyer B.R.; Gudivada V.N.
Year 2023
Published Nature-Inspired Optimization Algorithms and Soft Computing: Methods, Technology and Applications for IoTs, Smart Cities, Healthcare and Industrial Automation
DOI http://dx.doi.org/10.1049/PBPC053E
Abstract We have witnessed an explosion of research activity around nature-inspired computing and bio-inspired optimization techniques, which can provide powerful tools for solving learning problems and data analysis in very large data sets. To design and implement optimization algorithms, several methods are used that bring superior performance. However, in some applications, the search space increases exponentially with the problem size. To overcome these limitations and to solve efficiently large scale combinatorial and highly nonlinear optimization problems, more flexible and adaptable algorithms are necessary. Nature-inspired computing is oriented towards the application of outstanding information-processing aptitudes of the natural realm to the computational domain. The discipline of nature-inspired optimization algorithms is a major field of computational intelligence, soft computing and optimization. Metaheuristic search algorithms with population-based frameworks are capable of handling optimization in high-dimensional real-world problems for several domains including imaging, IoT, smart manufacturing, and healthcare. The integration of intelligence with smart technology enhances accuracy and efficiency. Smart devices and systems are revolutionizing the world by linking innovative thinking with innovative action and innovative implementation. The aim of this edited book is to review the intertwining disciplines of nature-inspired computing and bio-inspired soft-computing (BISC) and their applications to real world challenges. The contributors cover the interaction between metaheuristics, such as evolutionary algorithms and swarm intelligence, with complex systems. They explain how to better handle different kinds of uncertainties in real-life problems using state-of-art of machine learning algorithms. They also explore future research perspectives to bridge the gap between theory and real-life day-to-day challenges for diverse domains of engineering. The book will offer valuable insights to researchers and scientists from academia and industry in ICTs, IT and computer science, data science, AI and machine learning, swarm intelligence and complex systems. It is also a useful resource for professionals in related fields, and for advanced students with an interest in optimization and IoT applications. © The Institution of Engineering and Technology 2023. All rights reserved.
Author Keywords


Similar Articles


Id Similarity Authors Title Published
38852 View0.885Sajid M.; Shahid M.; Lapina M.; Babenko M.; Singh J.Nature-Inspired Optimization Algorithms For Cyber-Physical SystemsNature-Inspired Optimization Algorithms for Cyber-Physical Systems (2024)
38853 View0.88Krishnamurthy B.; Kumar P.Nature-Inspired Optimization Techniques Of Industry 4.0 For Sustainable ManufacturingHandbook of Intelligent and Sustainable Manufacturing: Tools, Principles, and Strategies (2024)
38850 View0.877Amirghafouri F.; Neghabi A.; Shakeri H.; Sola Y.Nature-Inspired Meta-Heuristic Algorithms For Resource Allocation In The Internet Of ThingsInternational Journal of Communication Systems, 38, 5 (2025)
52133 View0.874Wajid M.A.; Zafar A.; Wajid M.S.; Din Khanday A.M.U.; Bhattacharya P.Soft Computing And Machine Learning: A Fuzzy And Neutrosophic View Of RealitySoft Computing and Machine Learning: A Fuzzy and Neutrosophic View of Reality (2025)
25044 View0.864Li J.-Y.; Zhan Z.-H.; Zhang J.Evolutionary Computation For Expensive Optimization: A SurveyMachine Intelligence Research, 19, 1 (2022)
28685 View0.862Manshahia M.S.; Kharchenko V.; Munapo E.; Thomas J.J.; Vasant P.Handbook Of Intelligent Computing And Optimization For Sustainable DevelopmentHandbook of Intelligent Computing and Optimization for Sustainable Development (2022)
21400 View0.856Kazmi A.H.; Staffolani A.; Zhang T.; Cabrera C.; Clarke S.Dynamic Service Placement In Edge Computing: A Comparative Evaluation Of Nature-Inspired AlgorithmsIEEE Access, 13 (2025)
8932 View0.856Khan N.N.; Mahale Y.; Kulkarni K.; Pant S.; Kumar A.; Kotecha K.An Overview Of Nature-Inspired Optimization Techniques For Smart CitiesNature-Inspired Optimization Algorithms for Cyber-Physical Systems (2024)
55831 View0.852Dong-liang L.; Bei L.; Hai-hua W.The Importance Of Nature-Inspired Metaheuristic Algorithms In The Data Routing And Path Finding Problem In The Internet Of ThingsInternational Journal of Communication Systems, 36, 10 (2023)
20648 View0.852Morell, JA; Alba, EDistributed Genetic Algorithms On Portable Devices For Smart CitiesSMART CITIES, 10268 (2017)