基于模拟退火粒子群优化算法的测控通信网络生存性研究方法

Ding Ming-li, Ye Wei, Wang Cong, Yan Xi, H. Zhenning, Yu Jintao
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引用次数: 0

摘要

在深空探测任务中,深空跟踪、遥测与指挥(TT&C)网络处于核心地位。为了保证其工作的可靠性,网络中存在大量的冗余。但不必要的设备冗余非但没有提高网络的可靠性,反而使网络结构更加复杂,增加了维护成本,造成资源的浪费。提出了一种深空测控网络生存性的研究方法。为了降低韧性的计算时间复杂度,采用了模拟退火粒子群优化算法(SAPSO)。在两个基本网络和一个现实网络中进行的实验结果表明,该算法在计算网络韧性方面是有效和高性能的,并给出了本文网络结构设计的合理优化建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TT&C communication network survivability research methods based on simulated annealing particle swarm optimization algorithm
In deep-space exploration missions, deep space tracking, telemetry and command (TT&C) network in a core position. In order to guarantee its work reliability, there is a large amount of redundancy in the network. But unnecessary equipment redundancy instead of increasing the reliability of the network, which makes the network structure more complicated, increases the maintenance costs, and cause the waste of resources. In this paper, a research method for survivability of deep space tracking, telemetry and command(TT&C) network is proposed. To reduce computing time complexity of tenacity, using simulated annealing particle swarm optimization algorithm (SAPSO). Results of experiments conducted in two basic networks and one realistic network illustrate that the algorithm is impactful and high-performance to calculate network tenacity, and give the reasonable optimization suggestions of network structure design in this paper.
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