Robust satellite formation flying using Dynamic Inversion with modified state observer

Girish Joshi, R. Padhi
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引用次数: 3

Abstract

Utilizing the well-established Dynamic Inversion(DI) theory and augmenting it with online trained neural networks in the philosophy of `modified state observer', a robust nonlinear controller catering to the actual plant model is presented in this paper. The neural network (NN) is used to capture the unmodelled dynamics due to uncertainty in the eccentricity, uncertain semi-major axis of the chief satellite and also slowly-varying external disturbance term. Neural network is trained online using `closed form expressions' and do not require any iterative process. The overall structure leads to robust control synthesis and works well despite the presence of unmodelled dynamics. This technique is applied to the challenging problem of satellite formation flying. Simulation studies show that the presented control synthesis approach is able to ensure close formation flying catering for large initial separation, high eccentricity orbits, uncertain semi-major axis of chief satellite and J2 gravitational effects, which is usually considered as an exogenous perturbation.
基于修正状态观测器的动态反演鲁棒卫星编队飞行
本文利用已建立的动态反演(DI)理论,并以“修正状态观测器”的思想对在线训练的神经网络进行扩充,提出了一种适应实际植物模型的鲁棒非线性控制器。利用神经网络(NN)捕获由于偏心距不确定、主卫星半长轴不确定以及外部扰动项缓慢变化等原因造成的未建模动力学。神经网络使用“封闭形式表达式”在线训练,不需要任何迭代过程。整体结构导致鲁棒控制综合和工作良好,尽管存在未建模的动力学。该技术应用于卫星编队飞行的挑战性问题。仿真研究表明,所提出的控制综合方法能够满足大初始距离、高偏心轨道、主卫星半长轴不确定以及J2引力等通常被认为是外源扰动的条件下的紧密编队飞行。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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