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首页> 外文期刊>International journal of aerospace engineering >Decentralized State Estimation Algorithm of Centralized Equivalent Precision for Formation Flying Spacecrafts Based on Junction Tree
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Decentralized State Estimation Algorithm of Centralized Equivalent Precision for Formation Flying Spacecrafts Based on Junction Tree

机译:基于交会树的编队飞行器集中等效精度的分散状态估计算法

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As centralized state estimation algorithms for formation flying spacecraft would suffer from high computational burdens when the scale of the formation increases, it is necessary to develop decentralized algorithms. To the state of the art, most decentralized algorithms for formation flying are derived from centralized EKF by simplification and decoupling, rendering suboptimal estimations. In this paper, typical decentralized state estimation algorithms are reviewed, and a new scheme for decentralized algorithms is proposed. In the new solution, the system is modeled as a dynamic Bayesian network (DBN). A probabilistic graphical method named junction tree (JT) is used to analyze the hidden distributed structure of the DBNs. Inference on JT is a decentralized form of centralized Bayesian estimation (BE), which is a modularized three-step procedure of receiving messages, collecting evidences, and generating messages. As KF is a special case of BE, the new solution based on JT is equivalent in precision to centralized KF in theory. A cooperative navigation example of a three-satellite formation is used to test the decentralized algorithms. Simulation results indicate that JT has the best precision among all current decentralized algorithms.
机译:当编队规模增加时,编队飞行航天器的集中状态估计算法将承受较高的计算负担,因此有必要开发分散算法。对于现有技术,大多数编队飞行的分散算法是通过简化和解耦从集中式EKF派生而来的,因此估算不够理想。本文对典型的分散状态估计算法进行了综述,提出了一种新的分散算法方案。在新解决方案中,系统被建模为动态贝叶斯网络(DBN)。一种称为联结树(JT)的概率图形方法用于分析DBN的隐藏分布式结构。关于JT的推断是集中式贝叶斯估计(BE)的分散形式,它是接收消息,收集证据和生成消息的模块化三步过程。由于KF是BE的特例,因此在理论上,基于JT的新解决方案在精度上等同于集中式KF。使用三颗卫星编队的协同导航示例来测试分散算法。仿真结果表明,在所有当前的分散算法中,JT的精度最高。

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