Evolutionary Artificial Intelligence -

Evolutionary Artificial Intelligence

Proceedings of ICEAI 2023
Buch | Softcover
2025 | 1st ed. 2024
Springer Verlag, Singapore
978-981-99-8596-8 (ISBN)
299,59 inkl. MwSt
  • Titel nicht im Sortiment
  • Artikel merken
This book gathers a collection of selected works and new research results of scholars and graduate students presented at International Conference on Evolutionary Artificial Intelligence (ICEAI 2023) held in Malaysia during 13-14 September 2023. The focus of the book is interdisciplinary in nature and includes research on all aspects of evolutionary computation to find effective solutions to a wide range of computationally difficult problems. The book covers topics such as particle swarm optimization, evolutionary programming, genetic programming, hybrid evolutionary algorithms, ant colony optimization, evolutionary neural networks, evolutionary reinforcement learning, genetic algorithms, memetic algorithms, novel bio-inspired algorithms, evolving multi-agent systems, agent-based evolutionary approaches, and evolutionary game theory.

David Asirvatham is currently the Executive Dean for the Faculty of Build Environment, Engineering, Technology and Design, Taylor's University, Malaysia. He has held numerous posts such the Associate Dean for Faculty of Information Technology (Multimedia University), Project Manager for the Multimedia and IT Infrastructure Development for a university campus, Secretary for the Artificial Intelligence Society Malaysia and Country Representative for the Asia E-learning Network (AEN). Dr. David completed his Ph.D. from Multimedia University, M.Sc. (Digital System) from Brunel University (U.K.), and B.Sc. (Hons) Ed. and Post-grad Diploma in Computer Science from University of Malaya. He has been lecturing in the area of ICT for the past 20 years. He has been responsible for the development and implementation of various ICT projects such as E-learning Systems, Smart Card Systems, Interactive Voice Response Systems, E-Procurement Systems and Document Management System. At International level, he worked on various ICT Projects and Workshop in South Africa, Sudan, Iran, Ghana, Vietnam, Maldives, Bangladesh, UAE, India and Brunei. Francisco M. Gonzalez-Longatt is currently a full professor in electrical power engineering at the Department of Electrical Engineering, IT and Cybernetics, University of Southeast Norway, Norway. His academic qualifications include first Class Electrical Engineering of Instituto Universitario Politécnico de la Fuerza Armada Nacional , Venezuela (1994), Master of Business Administration ( Honors ) of Universidad Bicentenaria de Aragua , Venezuela (1999), PhD in Electrical Power Engineering from the Universidad Central de Venezuela (2008) and Postgraduate Certificate in Higher Education Professional Practice from Coventry University (2013) and Diploma in Leadership and Management (ILM Level 3), Loughborough University (2018). He is the author or editor of several books (Spanish and English) including: “Power Factory Applications for Power System Analysis'', Springer; “Advanced Smart Grid Functionalities based on PowerFactory” Springer, and “Dynamic Vulnerability Assessment and Intelligent Control for Sustainable Power Systems”, Wiley. Przemyslaw Falkowski-Gilski is a graduate of the Faculty of Electronics, Telecommunications and Informatics (ETI), Gdansk University of Technology. He graduated 1st degree B.Sc. studies (in Polish) and 2nd degree M.Sc. studies (in English) in 2012 and 2013, respectively. Between 2013-2017, during Ph.D. studies, he pursues his interests in the field of electronic media, particularly digital broadcasting systems and quality of networks and services. In 2018 he receives the title of Doctor of Technical Sciences with distinction, discipline Telecommunications, specialty Radio communication. Currently he works as an Assistant Professor. Member of a number of organizational, scientific, technical and program committees of national and international conferences, indexed in DBLP, IEEE Xplore, Scopus, Springer, Web of Science, as well as a reviewer in numerous Polish and foreign English-language journals, from publishing houses including Elsevier, Inderscience, IPPT-PAN, MDPI, Wiley, etc. R. Kanthavel is presently working as a Full Professor, Dept. of Computer Engineering, King Khalid University, Abha, Kingdom of Saudi Arabia. He Completed his M.E (Communication Systems Engineering) in 1999 and Ph.D from Anna University, Chennai under the faculty of Information and Communication Engineering. He has been over 21 Years teaching and research experiences in both Government and reputed Engineering Colleges. As an administrative part, He has taken up positions effectively as Overall in-charge for Part-time B.E program, Regular P.G program, Head of the Department, Vice Principal and Principal in institutions, NITS-Chennai, Government Engg. College- Tirunelveli, Velammal Engg. College -Chennai, Rajalakshmi Engineering College-Chennai. As an academic side, he has been an expert member in the areas of Wireless Communication, Advanced Embedded Systems, Image Classification, Big data and Computing Techniques. He has published more than hundred and fifty Research articles in reputed Journals and International Conferences which includes 40 Scopus indexed and 14 SCI indexed publications. He delivered a Keynote address and also Chaired for a technical session in the International Conference held in India and Abroad. In addition to the above, he has already produced 12 Ph.D Scholars under Anna University. Also, he has completed many funded research projects from Funding Agencies of Government of India and Ministry of Education, Saudi Arabia. He is a lifetime member in professional societies like IEEE, CSI, IETE and ISTE. As a proof of his academic achievement, he was the recipient of the National Citizenship Gold Medal Award for Outstanding Research in Engineering Field in 2015 and also received an Outstanding Faculty award in the field of Wireless Networks in 2016.

Empowering Multilingual Abstractive Text Summarization: A Comparative Study of Word Embedding Techniques.- A more effective ensemble ML method for detecting breast cancer.- Model Accuracy Test for Early Stage of Diabetes Risk Prediction with Data Science Approach.- Financial Statement Fraud Detection using Optimized Deep Neural Network.- Managing Operations in Chaotic Environments with Evolutionary Software Agents.- Identification of Plant Leaf Disease using Synthetic Data Augmentation ProGAN to Improve the Performance of Deep Learning Models.- IoT and Satellite Image Driven Water Quality Monitoring and Assessment Method in Coastal Region.- Machine Learning-powered Cloud-based Text Summarization.- Image Classification Using Few Shot Learning.- A Survey on Thyroid Nodule Detection and Classification.- XGBoost tuned by hybridized SCA metaheuristics for intrusion detection in healthcare 4.0 IoT systems.- Chaotic Biogeography Based Optimization using Deep Stacked Auto Encoder for Big Data Classification.- CigaretteCNN: A Convolutional neural network for detecting cigarette smoking activity.- Predicting Customer Churn in Subscriptio n-Based Enterprises Using Machine Learning.- Improved Edge Detection for Brain Tumor using Multi-Threading and Advanced Parallelism.- Impact of Artificial Intelligence on Investment: A Narrative Review.- Power Quality Conditioner with Hybrid Ant Colony Optimization.- Diagnosis of Early Cardiac Disease by Applying Machine Learning Algorithms.- Fault-Tolerant Mobile Agent System using eXtensible Volunteer Algorithm enabled Dynamic Role Based Access Control in a Conclave Environment.- Hyperparameter Tuning by Evolutionary Algorithm for Object Detection on Multimodal Satellite Imagery.- Comparative Examination of Credit Card Fraud Detection Using Machine Learning Algorithms.- Wagging Based Whale Optimization Algorithm To Enhance The Prediction of Intrusions In IoT Network.- Redefining Leadership in the Age of AI: Tools, Applications, and Limitations.- Happiness Index: Prediction with Machine Learning.- Malicious Domain Detection using Random Indexing and Machine Learning.- Multi Objective Neuro Evolution Based Xception For Fault Detection In Edge System.- Deep Neuro Evaluation With Stacked Auto Encoders Opimization For Biomedical Cancer Text Classification.

Erscheint lt. Verlag 3.3.2025
Reihe/Serie Algorithms for Intelligent Systems
Zusatzinfo 80 Illustrations, black and white; Approx. 500 p. 80 illus.
Verlagsort Singapore
Sprache englisch
Maße 155 x 235 mm
Themenwelt Informatik Grafik / Design Digitale Bildverarbeitung
Informatik Theorie / Studium Künstliche Intelligenz / Robotik
Technik Elektrotechnik / Energietechnik
Schlagworte Evolutionary Robotics • Novel Bio-Inspired Algorithms • Proceedings of ICEAI 2023 • supervised learning • Swarm/Collective Intelligence
ISBN-10 981-99-8596-X / 981998596X
ISBN-13 978-981-99-8596-8 / 9789819985968
Zustand Neuware
Haben Sie eine Frage zum Produkt?
Mehr entdecken
aus dem Bereich
Flugsimulation mit Microsoft Flight Simulator, X-Plane, AeroflyFS und …

von Mario Donick

Buch | Softcover (2023)
Springer Fachmedien (Verlag)
34,99
Modelle für 3D-Druck und CNC entwerfen

von Lydia Sloan Cline

Buch | Softcover (2022)
dpunkt (Verlag)
34,90