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Adaptive and Sustainable Smart Environments Using Predictive Reasoning and Context-Aware Reinforcement Learning

Author

Listed:
  • Abderrahim Lakehal

    (Networks and Distributed Systems Laboratory, Computer Science Department, Faculty of Sciences, University Ferhat Abbas Sétif-1, Sétif P.O. Box 19000, Algeria)

  • Boubakeur Annane

    (Networks and Distributed Systems Laboratory, Computer Science Department, Faculty of Sciences, University Ferhat Abbas Sétif-1, Sétif P.O. Box 19000, Algeria)

  • Adel Alti

    (Networks and Distributed Systems Laboratory, Computer Science Department, Faculty of Sciences, University Ferhat Abbas Sétif-1, Sétif P.O. Box 19000, Algeria
    Department of Management Information Systems, College of Business and Economics, Qassim University, Buraydah 51452, Saudi Arabia)

  • Philippe Roose

    (LIUPPA-T2I/IUT of Bayonne E2S UPPA, University of Pau, 64600 Anglet, France)

  • Soliman Aljarboa

    (Department of Management Information Systems, College of Business and Economics, Qassim University, Buraydah 51452, Saudi Arabia)

Abstract

Smart environments play a key role in improving user comfort, energy efficiency, and sustainability through intelligent automation. Nevertheless, real-world deployments still face major challenges, including network instability, delayed responsiveness, inconsistent AI decisions, and limited adaptability under dynamic conditions. Many existing approaches lack advanced context-awareness, effective multi-agent coordination, and scalable learning, leading to high computational cost and reduced reliability. To address these limitations, this paper proposes MACxRL, a lightweight Multi-Agent Context-Aware Reinforcement Learning framework for autonomous smart-environment control. The system adopts a three-tier architecture consisting of real-time context acquisition, lightweight prediction, and centralized RL-based decision learning. Local agents act quickly at the edge using rule-based reasoning, while a shared CxRL engine refines actions for global coordination, combining fast responsiveness with continuous adaptive learning. Experiments show that MACxRL reduces energy consumption by 45–60%, converges faster, and achieves more stable performance than standard and deep RL baselines. Future work will explore self-adaptive reward tuning and extend deployment to multi-room environments toward practical real-world realization.

Suggested Citation

  • Abderrahim Lakehal & Boubakeur Annane & Adel Alti & Philippe Roose & Soliman Aljarboa, 2026. "Adaptive and Sustainable Smart Environments Using Predictive Reasoning and Context-Aware Reinforcement Learning," Future Internet, MDPI, vol. 18(1), pages 1-28, January.
  • Handle: RePEc:gam:jftint:v:18:y:2026:i:1:p:40-:d:1836449
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