Litcius/Paper detail

Exploiting Propagation Delay in Underwater Acoustic Communication Networks via Deep Reinforcement Learning

Xuan Geng, Yahong Rosa Zheng

2022IEEE Transactions on Neural Networks and Learning Systems48 citationsDOI

Abstract

This article proposes a novel deep-reinforcement learning-based medium access control (DL-MAC) protocol for underwater acoustic networks (UANs) where one agent node employing the proposed DL-MAC protocol coexists with other nodes employing traditional protocols, such as time division multiple access (TDMA) or q -Aloha. The DL-MAC agent learns to exploit the large propagation delays inherent in underwater acoustic communications to improve system throughput by either a synchronous or an asynchronous transmission mode. In the sync-DL-MAC protocol, the agent action space is transmission or no transmission, while in the async-DL-MAC, the agent can also vary the start time in each transmission time slot to further exploit the spatiotemporal uncertainty of the UANs. The deep Q -learning algorithm is applied to both sync-DL-MAC and async-DL-MAC agents to learn the optimal policies. A theoretical analysis and computer simulations demonstrate the performance gain obtained by both DL-MAC protocols. The async-DL-MAC protocol outperforms the sync-DL-MAC protocol significantly in sum throughput and packet success rate by adjusting the transmission start time and reducing the length of time slot.

Topics & Concepts

Computer scienceTime division multiple accessAsynchronous communicationAlohaTransmission (telecommunications)ThroughputPropagation delayComputer networkNetwork packetReinforcement learningTransmission delayNode (physics)ExploitProtocol (science)Real-time computingWirelessTelecommunicationsArtificial intelligenceEngineeringAlternative medicineMedicineStructural engineeringComputer securityPathologyUnderwater Vehicles and Communication SystemsEnergy Harvesting in Wireless NetworksIndoor and Outdoor Localization Technologies