Archives - Page 2

  • Advances on Machine Learning and Artificial Intelligence in Computer Technology
    Vol. 11 No. 8s (2023)

    Introduction:

    Machine Learning (ML) and Artificial Intelligence (AI) have revolutionized numerous domains, including computer technology. The seamless integration of ML and AI techniques into computer technology has significantly enhanced its capabilities, leading to breakthroughs in various fields such as natural language processing, computer vision, data analytics, and robotics, among others. This special issue aims to present the latest advances, applications, and challenges in the intersection of ML, AI, and computer technology.

    Scope:

    The scope of this special issue encompasses a wide range of topics related to the advances in ML and AI techniques within the context of computer technology. The objective is to gather high-quality research contributions that demonstrate innovative approaches, novel algorithms, and practical applications that harness the power of ML and AI in enhancing computer technology.

    The potential areas of interest for this special issue include, but are not limited to:

    1. Machine learning algorithms and models for computer technology:
    - Supervised, unsupervised, and reinforcement learning algorithms.
    - Deep learning architectures and neural networks for computer technology applications.
    - Transfer learning and domain adaptation techniques in computer technology.

    2. Artificial intelligence applications in computer technology:
    - Natural language processing and understanding in computer systems.
    - Computer vision, image recognition, and object detection in computer technology.
    - AI-driven data analytics, decision-making, and pattern recognition in computer systems.
    - Robotics and autonomous systems in computer technology.

    3. Advances in computer technology enabled by ML and AI:
    - ML and AI techniques for cybersecurity, threat detection, and intrusion detection.
    - Intelligent systems for network management, optimization, and anomaly detection.
    - ML-based software engineering tools, including code generation and bug detection.
    - AI-enabled computer hardware designs and architectures.

    4. Challenges and future directions:
    - Ethical considerations and fairness in ML and AI for computer technology.
    - Addressing bias and interpretability challenges in ML and AI systems.
    - Scalability and efficiency issues in deploying ML and AI in computer technology.
    - Emerging trends, novel applications, and future research directions in the field.

    Researchers, academicians, industry professionals, and practitioners are encouraged to submit original research papers, reviews, and case studies that explore the advances, applications, and challenges of ML and AI in computer technology. The special issue aims to foster knowledge exchange, collaboration, and innovation in this rapidly evolving field, ultimately contributing to the advancement of computer technology through ML and AI.

  • Advancements in Machine Learning for Computer Science and Decision Support Systems
    Vol. 11 No. 7s (2023)

    Introduction:
    The rapid development of machine learning techniques has revolutionized various domains, including computer science and decision support systems. Machine learning algorithms have demonstrated their effectiveness in solving complex problems, enabling intelligent decision-making, and enhancing system performance. This special issue aims to explore the latest advancements, methodologies, and applications of machine learning in the fields of computer science and decision support systems. The collection of papers in this special issue aims to provide a comprehensive understanding of the current state-of-the-art and future directions in this exciting area.

    Topics of Interest:
    - Machine learning algorithms and models for computer science applications
    - Deep learning techniques for computer science and decision support systems
    - Supervised, unsupervised, and semi-supervised learning in decision support systems
    - Reinforcement learning for optimizing computer science processes
    - Transfer learning and domain adaptation in computer science applications
    - Ensemble learning methods for computer science and decision support systems
    - Explainability and interpretability of machine learning models in decision support systems
    - Integration of machine learning with computer science theories and methodologies
    - Natural language processing and machine learning for decision support systems
    - Big data analytics and machine learning for computer science applications
    - Case studies and applications of machine learning in computer science and decision support .

  • Vol. 11 No. 6s (2023)

    Intelligent systems have revolutionized various engineering domains by incorporating cutting-edge technologies such as artificial intelligence, machine learning, data analytics, and robotics. The International Journal of Intelligent Systems and Applications in Engineering (IJISAE) is pleased to announce a Special Issue focusing on the latest advancements in intelligent systems theory, their diverse applications, and the emerging trends that shape the future of engineering.

    Scope and Topics: The Special Issue seeks original contributions in the broad area of intelligent systems and their application in engineering. Potential topics include, but are not limited to:

    1. Artificial Intelligence and Machine Learning applications in engineering domains.
    2. Deep learning techniques for pattern recognition and prediction in engineering tasks.
    3. Data-driven approaches for intelligent decision-making and optimization in complex systems.
    4. Intelligent control systems and automation for manufacturing, robotics, and process industries.
    5. Evolutionary computation and genetic algorithms for engineering optimization.
    6. Cognitive computing and applications in smart systems and IoT.
    7. Natural language processing and sentiment analysis for engineering applications.
    8. Fuzzy logic and uncertainty management in engineering systems.
    9. Swarm intelligence and bio-inspired algorithms for solving engineering problems.
    10. Intelligent sensing and sensor fusion techniques for real-time applications.
    11. Autonomous vehicles and intelligent transportation systems.
    12. Applications of intelligent systems in energy, sustainability, and environmental engineering.
    13. Human-machine interaction and collaboration in intelligent engineering systems.
    14. Intelligent assistive technologies and healthcare applications.
    15. Ethical considerations and trustworthiness in deploying intelligent systems.
  • Special Issue on Applications of Advanced Engineering Technologies
    Vol. 11 No. 5s (2023)

    Introduction: The field of engineering is constantly evolving with advancements in technology, research, and innovation. This special issue aims to explore the latest developments and breakthroughs in various disciplines of advanced engineering. It provides a platform for researchers, engineers, and practitioners to share their knowledge, expertise, and findings in cutting-edge engineering applications.

    Scope and Topics: The special issue invites submissions related to advanced engineering across a broad range of disciplines, including, but not limited to:
    • Materials science and engineering
    • Nanotechnology and nanomaterials
    • Biomedical engineering
    • Renewable energy and sustainable engineering
    • Civil and structural engineering
    • Mechanical engineering
    • Electrical and electronics engineering
    • Chemical engineering
    • Aerospace and aeronautical engineering
    • Environmental engineering
    • Robotics and automation
    • Computational modeling and simulation
    • Data-driven engineering and decision support systems
    • Emerging technologies in engineering

  • Vol. 11 No. 4s (2023)

    The field of engineering is undergoing a significant transformation with the rapid advancements in intelligent systems and artificial intelligence (AI) technologies. These innovative approaches have the potential to revolutionize various engineering domains, enabling more efficient, accurate, and optimized solutions to complex problems. The International Journal of Intelligent Systems and Applications in Engineering is pleased to announce a special issue focused on "Advancements in Intelligent Systems for Engineering Applications." This special issue aims to showcase cutting-edge research and developments in the integration of intelligent systems into engineering practices.

    Topics of Interest: We invite authors to submit original research articles, reviews, and case studies related to the use of intelligent systems in various engineering applications. Topics of interest for this special issue include, but are not limited to:

    1. Intelligent Control Systems for Engineering Processes
    2. AI-Enabled Optimization Techniques in Engineering Design and Analysis
    3. Machine Learning and Deep Learning Applications in Industrial Automation
    4. Intelligent Robotics and Automation in Manufacturing
    5. Application of AI in Structural Engineering and Civil Infrastructure
    6. Smart Sensing and Data Analytics for Condition Monitoring
    7. AI-Driven Predictive Maintenance in Industrial Settings
    8. Advanced Image and Signal Processing in Biomedical Engineering
    9. Computational Intelligence in Environmental Engineering
    10. Intelligent Systems for Energy Management and Sustainability
    11. AI Applications in Transportation and Traffic Engineering
    12. Innovative Applications of Swarm Intelligence in Engineering
    13. Evolutionary Computation for Engineering Problem Solving
    14. Integration of IoT and AI for Smart Engineering Solutions
    15. AI-Assisted Decision Support Systems in Engineering Operations
    16. Challenges and Opportunities in the Adoption of AI in Engineering
  • Vol. 11 No. 3s (2023)

    The field of intelligent systems has witnessed rapid advancements in recent years, significantly impacting various domains of engineering. The International Journal of Intelligent Systems and Applications in Engineering aims to showcase the latest research and innovations in this exciting area. This proposed special issue, "Advances in Intelligent Systems for Engineering Applications," seeks to bring together researchers and practitioners to present their cutting-edge work and share insights into how intelligent systems are transforming engineering practices across diverse disciplines.

    Scope and Topics:

    The special issue will encompass a broad range of topics related to intelligent systems applied in engineering applications. The focus will be on exploring novel methodologies, algorithms, and applications that integrate intelligent techniques into engineering practices, fostering innovative solutions and enhanced performance in real-world scenarios. Topics of interest for this special issue include but are not limited to:

    1. Machine learning and deep learning in engineering systems
    2. Intelligent control systems and automation
    3. Evolutionary computation and optimization techniques for engineering problems
    4. Artificial intelligence for predictive maintenance and fault diagnosis
    5. Knowledge-based systems and expert systems for engineering applications
    6. Intelligent decision support systems in engineering domains
    7. Swarm intelligence and collective behavior in engineering systems
    8. Cognitive computing and brain-inspired engineering approaches
    9. Natural language processing and intelligent human-computer interaction in engineering tasks
    10. IoT-enabled intelligent systems in engineering applications
    11. Big data analytics and intelligent data processing for engineering insights
    12. Multi-agent systems and their applications in engineering domains
  • Vol. 11 No. 2s (2023)

    The field of engineering is continually evolving, and intelligent systems and applications have emerged as vital components of various engineering disciplines. Intelligent systems leverage advanced technologies like artificial intelligence, machine learning, data analytics, and optimization techniques to enhance efficiency, effectiveness, and decision-making processes in engineering domains. This special issue aims to showcase cutting-edge research and developments in the application of intelligent systems in engineering, providing a platform for researchers and practitioners to share their findings and insights.

    Topics of Interest: The special issue invites original research articles, reviews, and case studies in various aspects of intelligent systems and their applications in engineering. Topics of interest include, but are not limited to:

    1. Intelligent control systems in engineering processes and automation.
    2. Machine learning and data-driven approaches for predictive maintenance in industrial settings.
    3. AI-based optimization techniques in engineering design and resource allocation.
    4. Applications of computer vision and image processing in engineering analysis and monitoring.
    5. Intelligent decision support systems for complex engineering problems.
    6. IoT-enabled intelligent systems for smart manufacturing and industrial IoT applications.
    7. Big data analytics for engineering data and operations.
    8. AI applications in civil engineering for infrastructure design, monitoring, and maintenance.
    9. Intelligent systems in renewable energy and sustainable engineering practices.
    10. Robotics and autonomous systems for industrial applications and hazardous environments.
    11. Intelligent transportation systems and traffic management.
    12. AI-driven innovations in healthcare engineering and biomedical applications.
    13. AI and machine learning in process optimization and quality control.
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