Markov Decision Processes and Reinforcement Learning for Timely UAV-IoT Data Collection Applications

Markov Decision Processes and Reinforcement Learning for Timely UAV-IoT Data Collection Applications book cover

Markov Decision Processes and Reinforcement Learning for Timely UAV-IoT Data Collection Applications

Author(s): Oluwatosin Ahmed Amodu (Author), Raja Azlina Raja Mahmood (Author), Huda Althumali (Author), Umar Ali Bukar (Author), Nor Fadzilah Abdullah (Author), Chedia Jarray (Author)

  • Publisher: Springer
  • Publication Date: October 8, 2025
  • Language: English
  • Print length: 156 pages
  • ISBN-10: 3031970101
  • ISBN-13: 9783031970108

Book Description

This book offers a structured exploration of how Markov Decision Processes (MDPs) and Deep Reinforcement Learning (DRL) can be used to model and optimize UAV-assisted Internet of Things (IoT) networks, with a focus on minimizing the Age of Information (AoI) during data collection. Adopting a tutorial-style approach, it bridges theoretical models and practical algorithms for real-time decision-making in tasks like UAV trajectory planning, sensor transmission scheduling, and energy-efficient data gathering. Applications span precision agriculture, environmental monitoring, smart cities, and emergency response, showcasing the adaptability of DRL in UAV-based IoT systems. Designed as a foundational reference, it is ideal for researchers and engineers aiming to deepen their understanding of adaptive UAV planning across diverse IoT applications.

Editorial Reviews

From the Back Cover

This book offers a structured exploration of how Markov Decision Processes (MDPs) and Deep Reinforcement Learning (DRL) can be used to model and optimize UAV-assisted Internet of Things (IoT) networks, with a focus on minimizing the Age of Information (AoI) during data collection. Adopting a tutorial-style approach, it bridges theoretical models and practical algorithms for real-time decision-making in tasks like UAV trajectory planning, sensor transmission scheduling, and energy-efficient data gathering. Applications span precision agriculture, environmental monitoring, smart cities, and emergency response, showcasing the adaptability of DRL in UAV-based IoT systems. Designed as a foundational reference, it is ideal for researchers and engineers aiming to deepen their understanding of adaptive UAV planning across diverse IoT applications.

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