Edge Computing and AI Integration for Low-Latency Decision-Making in Smart Cities and Industrial IoT

Authors

  • Subhash Chand Agrawal Department of Computer Engineering & Applications, GLA University, Mathura.
  • Avinash Gudimetla Associate Professor, Department of Mechanical Engineering, Pragati Engineering College, ADB Road, Surampalem, Near Peddapuram, Kakinada District, Andhra Pradesh, India – 533437.
  • Samundeeswari K Assistant Professor, Department of Commerce, Meenakshi College of Arts and Science, Meenakshi Academy of Higher Education and Research.
  • Sameera Khan Assistant Professor, Departmentof Information Technology, Vardhaman College of Engineering, Shamshabad, Hyderabad, India - 501 218.
  • Dr. Ravi Thangjam Professor, School of Business, Aditya University, Surampalem, Andhra Pradesh, Pin 533437.
  • Gajanan Chavan Assistant Professor, E&TC Engineering, Vishwakarma Institute of Technology, Pune, Maharashtra, 411037.
  • Kumari Shipra School of Engineering &Technology,Noida international University, Uttar Pradesh 203201, India.
  • Dr.N. Neelima Associate professor, Dept of CSE, KL University ,Kolanukonda, Andhra Pradesh, India.

Keywords:

Edge Computing, Artificial Intelligence, Smart Cities, Industrial IoT, Low-Latency Systems, Edge AI, Deep Learning, Real-Time Analytics

Abstract

The growing pace of smart cities and Industrial Internet of Things (IIoT) systems has amplified the need of smart low-latency decision-making systems with the capacity to handle extensive heterogeneous data volumes in real time. Traditional cloud-based systems typically experience communication latency problems, bandwidth constraints, and scaling issues, which adversely impact time-constrained applications like smart traffic management, industrial control, environmental sensors, as well as predictive maintenance. To overcome such drawbacks, this paper offers a combined Edge Computing and Artificial Intelligence (AI)-driven architecture to make low-latency decisions in small cities and industrial Internet of Things (IoT). The design presented is a hybrid of distributed edge nodes, localized AI inference engines, and cloud-assisted coordination aimed at assisting quick data processing on the proximity of the source device. The model of real-time anomaly detection and predictive analytics is a hybrid deep learning model consisting of Convolutional Neural Networks (CNN) and Long Short-Term Memory (LSTM) networks. Simulated smart city and industrial IoT data was experimentally evaluated with different network conditions. The proscribed framework was found to have 97.1% decision accuracy, latency of 61.8, and 34.5% better energy efficiency than the traditional cloud systems. The strongness and steadiness of the proposed framework was statistically approved on the 10-fold cross-validation. The findings reveal that edge-AI integration is an effective and scalable solution to next-generation intelligent infrastructures.

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Published

2026-05-12

How to Cite

Agrawal, S. C., Gudimetla, A., K, S., Khan, S., Thangjam, D. R., Chavan, G., … Neelima, D. (2026). Edge Computing and AI Integration for Low-Latency Decision-Making in Smart Cities and Industrial IoT. International Journal of Artificial Intelligence and Machine Learning, 6(2s), 390–399. Retrieved from https://www.svedbergopen.com/index.php/ijaiml/article/view/216

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