AILGNIJan 3, 2021

Enhanced Pub/Sub Communications for Massive IoT Traffic with SARSA Reinforcement Learning

arXiv:2101.00687v1
Originality Incremental advance
AI Analysis

This work addresses the problem of efficient IoT data distribution for applications like smart cities and e-health, which is an incremental improvement to existing cloud, edge, and fog computing strategies.

This paper tackles the problem of efficiently distributing massive IoT data over networks with limited bandwidth. The proposed PSIoTRL system, which uses a Publish/Subscribe architecture and SARSA reinforcement learning for bandwidth allocation, enhances IoT aggregator buffer occupation and network link utilization by dynamically adapting traffic flushing based on topic priority and network constraints.

Sensors are being extensively deployed and are expected to expand at significant rates in the coming years. They typically generate a large volume of data on the internet of things (IoT) application areas like smart cities, intelligent traffic systems, smart grid, and e-health. Cloud, edge and fog computing are potential and competitive strategies for collecting, processing, and distributing IoT data. However, cloud, edge, and fog-based solutions need to tackle the distribution of a high volume of IoT data efficiently through constrained and limited resource network infrastructures. This paper addresses the issue of conveying a massive volume of IoT data through a network with limited communications resources (bandwidth) using a cognitive communications resource allocation based on Reinforcement Learning (RL) with SARSA algorithm. The proposed network infrastructure (PSIoTRL) uses a Publish/ Subscribe architecture to access massive and highly distributed IoT data. It is demonstrated that the PSIoTRL bandwidth allocation for buffer flushing based on SARSA enhances the IoT aggregator buffer occupation and network link utilization. The PSIoTRL dynamically adapts the IoT aggregator traffic flushing according to the Pub/Sub topic's priority and network constraint requirements.

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