<th id="5nh9l"></th><strike id="5nh9l"></strike><th id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"></th><strike id="5nh9l"></strike>
<progress id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"><noframes id="5nh9l">
<th id="5nh9l"></th> <strike id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"></span>
<progress id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"></span><strike id="5nh9l"><noframes id="5nh9l"><strike id="5nh9l"></strike>
<span id="5nh9l"><noframes id="5nh9l">
<span id="5nh9l"><noframes id="5nh9l">
<span id="5nh9l"></span><span id="5nh9l"><video id="5nh9l"></video></span>
<th id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"></th>
<progress id="5nh9l"><noframes id="5nh9l">

基于樹突神經網絡的低軌衛星智能感知路由算法

LEO satellite intelligent-sensing routing algorithm based on a dendrite network

  • 摘要: 在低軌衛星網絡中,衛星運行速度快、運行周期較短,星間鏈路動態變化。為了及時感知星間鏈路狀態并選擇正確的路由,提出一種基于樹突神經網絡的低軌衛星智能感知路由算法,通過衛星之間的可視性約束分析星間建鏈情況,實現星間鏈路態勢感知;通過實時構造訓練集,利用樹突神經網絡自動調整全局衛星網絡鏈路的權值,進而優化傳統迪杰斯特拉(Dijkstra)算法,實現星間鏈路質量感知,給出智能路由決策;通過周期性監測衛星網絡拓撲,實時修正初始路由路徑。仿真結果表明,基于樹突神經網絡的路由算法復雜度低,路徑時延、時延抖動及丟包率均低于傳統啟發式路由算法和Dijkstra路由算法。

     

    Abstract: In a low-Earth orbit (LEO) satellite network, the satellite operation speed is high, the operation cycle is short, and intersatellite links change dynamically. To sense the intersatellite link state in time and select the correct route for an intelligent routing decision, a dendritic network-based intelligent-aware routing algorithm for LEO satellites is proposed in this paper. This algorithm divides the intersatellite link routing of an LEO satellite network into situation-aware, quality-aware, and routing-decision stages and establishes a routing policy framework with real-time correction capability from the source node to the destination. This approach overcomes the problems of the limited selection of routing paths from fixed labels of existing deep learning-based routing algorithms and the long convergence time of reinforcement learning-based routing algorithms.In the intersatellite link situational awareness stage, the intersatellite visibility of the entire LEO satellite network is periodically obtained by analyzing the constraint conditions of the intersatellite link establishment. In the intersatellite link quality perception stage, the final output of the probabilistic forwarding matrix based on the ant colony algorithm is used as the label of the training set, and the corresponding intersatellite link quality is evaluated using the probability value of the current node by selecting the next hop node. By changing the weight coefficients in the path cost function under different load states, more effective training set label data can be collected, which can be consequently used to improve the performance of the trained dendritic network. Moreover, the training set can be optimized in real-time through semi-supervised learning. The trained dendritic network is used to analyze and process the link state parameters, perceive the comprehensive service quality of the link, and output the evaluation value matrix of the next hop routing. It is also used to automatically adjust the weight of the global satellite network link. Meanwhile, the traditional Dijkstra algorithm is optimized to realize the quality perception of the intersatellite link. In the routing decision stage, the reciprocal of the evaluation value matrix is used as the adjacency matrix to pass the shortest-path algorithm. Then, the initial routing path between the source and destination nodes is obtained. Finally, the initial path is corrected via periodic monitoring to cope with the failure of the satellite node. The simulation results show that the routing algorithm based on the dendritic network has low computational complexity and fast convergence. The algorithm can determine the status of the intersatellite link establishment in time, assess the quality of the intersatellite link in real-time, and automatically avoid congested satellite nodes. Accordingly, its end-to-end path delay, delay jitter, and packet loss rate are lower than those of the traditional heuristic routing algorithm and Dijkstra routing algorithm.

     

/

返回文章
返回
<th id="5nh9l"></th><strike id="5nh9l"></strike><th id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"></th><strike id="5nh9l"></strike>
<progress id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"><noframes id="5nh9l">
<th id="5nh9l"></th> <strike id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"></span>
<progress id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"><noframes id="5nh9l"><span id="5nh9l"></span><strike id="5nh9l"><noframes id="5nh9l"><strike id="5nh9l"></strike>
<span id="5nh9l"><noframes id="5nh9l">
<span id="5nh9l"><noframes id="5nh9l">
<span id="5nh9l"></span><span id="5nh9l"><video id="5nh9l"></video></span>
<th id="5nh9l"><noframes id="5nh9l"><th id="5nh9l"></th>
<progress id="5nh9l"><noframes id="5nh9l">
259luxu-164