Scalable Spectrum Availability Prediction using a Markov Chain Framework and ITU-R Propagation Models
Abir Ray

TL;DR
This paper introduces a scalable spectrum availability prediction framework that combines a Markov chain model of primary user activity with ITU-R propagation models to accurately identify spectrum opportunities in real-time.
Contribution
It presents a novel integration of Markov chains and ITU-R propagation models for scalable, accurate spectrum prediction applicable to dynamic spectrum sharing.
Findings
Effective spectrum opportunity prediction with low computational cost
Framework adaptable to various frequency bands and scenarios
Suitable for real-time spectrum management in cognitive radio networks
Abstract
Spectrum resources are often underutilized across time and space, motivating dynamic spectrum access strategies that allow secondary users to exploit unused frequencies. A key challenge is predicting when and where spectrum will be available (i.e., unused by primary licensed users) in order to enable proactive and interference-free access. This paper proposes a scalable framework for spectrum availability prediction that combines a two-state Markov chain model of primary user activity with high-fidelity propagation models from the ITU-R (specifically Recommendations P.528 and P.2108). The Markov chain captures temporal occupancy patterns, while the propagation models incorporate path loss and clutter effects to determine if primary signals exceed interference thresholds at secondary user locations. By integrating these components, the proposed method can predict spectrum opportunities…
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Taxonomy
TopicsCognitive Radio Networks and Spectrum Sensing · Wireless Communication Networks Research · Telecommunications and Broadcasting Technologies
