基于决斗双深度Q网络的自适应多目标切换优化方法,用于低轨卫星网络 / Dueling DDQN-Based Adaptive Multi-Objective Handover Optimization for LEO Satellite Networks
1️⃣ 一句话总结
这篇论文提出了一种利用决斗双深度Q网络(Dueling DDQN)智能算法,让低轨卫星网络在不同网络状况下自动平衡吞吐量、连接中断率和切换开销这三个关键性能指标,从而大幅提升网络效率、并基本避免用户连接中断。
In this paper, we propose a dueling double deep Q-network (DDQN)-based adaptive multi-objective handover framework for LEO satellite networks. The proposed method enables dynamic trade-off learning among throughput, blocking probability, and switching cost under time-varying network conditions. Simulation results demonstrate that the proposed approach consistently outperforms conventional baselines, achieving up to 10.3% throughput improvement and near-zero blocking under typical operating conditions.
基于决斗双深度Q网络的自适应多目标切换优化方法,用于低轨卫星网络 / Dueling DDQN-Based Adaptive Multi-Objective Handover Optimization for LEO Satellite Networks
这篇论文提出了一种利用决斗双深度Q网络(Dueling DDQN)智能算法,让低轨卫星网络在不同网络状况下自动平衡吞吐量、连接中断率和切换开销这三个关键性能指标,从而大幅提升网络效率、并基本避免用户连接中断。
源自 arXiv: 2605.02416