Stable Acoustic Relay Assignment with High Throughput via Lase Chaos-based Reinforcement Learning
Stable Acoustic Relay Assignment with High Throughput via Lase Chaos-based Reinforcement Learning
This study addresses the problem of stable acoustic relay assignment in an underwater acoustic network. Unlike the objectives of most existing literature, two distinct objectives, namely classical stable arrangement and ambiguous stable arrangement, are considered. To achieve these stable arrangements, a laser chaos-based multi-processing learning (LC-ML) method is introduced to efficiently obtain high throughput and rapidly attain stability. In order to sufficiently explore the relay's decision-making, this method uses random numbers generated by laser chaos to learn the assignment of relays to multiple source nodes. This study finds that the laser chaos-based random number and multi-processing in the exchange process have a positive effect on higher throughput and strong adaptability with environmental changing over time. Meanwhile, ambiguous cognitions result in the stable configuration with less volatility compared to accurate ones. This provides a practical and useful method and can be the basis for relay selection in complex underwater environments.
Zengjing Chen、Lu Wang、Chengzhi Xing
无线电设备、电信设备通信无线通信
Zengjing Chen,Lu Wang,Chengzhi Xing.Stable Acoustic Relay Assignment with High Throughput via Lase Chaos-based Reinforcement Learning[EB/OL].(2025-07-08)[2025-07-22].https://arxiv.org/abs/2507.05900.点此复制
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