基于TDOA-AOA测量处理的无人机被动地理定位

G. Fokin
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引用次数: 14

摘要

当前被动地理定位系统发展的实际趋势是基于无人机接收站的飞行段与包括固定地面接收站在内的地面段的合作。在乐观瞄准线(LOS)条件下,现有的精度结果达到了数十米和数百米的数量级,然而,无人机的射电发射源定位问题与异质地形的搜索和救援行动特别相关,当获得单独的主要测量时,例如,经过反射,可能导致显着误差。在这种情况下,提高定位精度的一种可能方法是采用基于无人机的航空被动地理定位,联合处理到达时间差(TDOA)和到达角(AOA)初级测量值。本研究的贡献在于建立了利用TDOA-AOA测量处理的无人机定位射电发射源的数学模型,并对处理AOA噪声的混合测量处理进行了性能评价。
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Passive Geolocation with Unmanned Aerial Vehicles using TDOA-AOA Measurement Processing
Actual trends in current passive geolocation system development includes cooperation of flying segment based on receiver stations aboard Unmanned Aerial Vehicles (UAVs) with terrestrial segment including stationary ground receiver stations. Existing accuracy results achieves the order of tens and hundreds of meters in optimistic Line of Sight (LOS) conditions, however the problem of radio emission sources positioning with UAVs is especially relevant for search and rescue operations in heterogeneous terrain, when separate primary measurements obtained, for example, after reflections, could lead to a significant error. One possible way to improve the accuracy of positioning in such conditions is to use aerial passive geolocation based on UAVs with joint processing of Time Difference of Arrival (TDOA) and Angle of Arrival (AOA) primary measurements. The contribution of the current investigation is the development of mathematical model for positioning of radio emission sources with UAVs using TDOA-AOA measurement processing and performance evaluation of hybrid measurement processing with handling AOA noise.
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