Enhancing the performance of the Primary Surveillance Radar using Multilateration

Q2 Engineering
N. Constantinescu, Emil Constantinescu, A. Chira
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引用次数: 0

Abstract

One way to improve the measurements of the PSR (Primary Surveillance Radar) is to utilize the cinematic model of the aircraft (A/C) in a Kalman filter. Another newly developed method would be to implement multilateration using a large number of ground-based ADS-B (Automatic Dependent Surveillance-Broadcast) receivers. Originating in airport surveillance, multilateration grew to become the primary system for ATM (Air Traffic Management) in airspaces without PSR coverage. Given that each of the systems has its own advantages and limitations, we propose an evaluation of an alternative approach that uses data from multiple ADS-B receivers to implement a data fusion algorithm between PSR acquired position and MLAT (Multilateration) estimated position. Among the many ways to implement data fusion, have chosen to analyze two possible solutions: the direct fusion of the two available positions provided by the two systems using a traditional Kalman Filter and a linearization approach for the multilateration solution that does not require position computation. In both cases, these will improve the Kalman filter and lower the position estimation errors. The evaluation takes into consideration the possible sources of inaccuracies and provides sensibility analyses in regards to the number and positioning of ADS-B receivers involved in multilateration. This paper will conclude with a discussion of the computational power required for the two implementations.
利用多重定位技术提高主监视雷达的性能
改进PSR(主监视雷达)测量的一种方法是在卡尔曼滤波器中利用飞机的电影模型(A/C)。另一种新开发的方法是使用大量基于地面的ADS-B(自动相关监视广播)接收机来实现多点定位。多点定位起源于机场监控,后来发展成为没有PSR覆盖的空域中ATM(空中交通管理)的主要系统。考虑到每个系统都有自己的优势和局限性,我们提出了一种替代方法的评估,该方法使用来自多个ADS-B接收器的数据来实现PSR获取位置和MLAT(多点定位)估计位置之间的数据融合算法。在实现数据融合的许多方法中,我们选择了分析两种可能的解决方案:使用传统卡尔曼滤波器直接融合两个系统提供的两个可用位置,以及不需要位置计算的多点定位解决方案的线性化方法。在这两种情况下,这将改进卡尔曼滤波器并降低位置估计误差。评估考虑了可能的不准确来源,并提供了关于多点定位中涉及的ADS-B接收器的数量和定位的敏感性分析。本文最后将讨论这两种实现所需的计算能力。
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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来源期刊
INCAS Bulletin
INCAS Bulletin Engineering-Aerospace Engineering
自引率
0.00%
发文量
50
审稿时长
8 weeks
期刊介绍: INCAS BULLETIN is a scientific quartely journal published by INCAS – National Institute for Aerospace Research “Elie Carafoli” (under the aegis of The Romanian Academy) Its current focus is the aerospace field, covering fluid mechanics, aerodynamics, flight theory, aeroelasticity, structures, applied control, mechatronics, experimental aerodynamics, computational methods. All submitted papers are peer-reviewed. The journal will publish reports and short research original papers of substance. Unique features distinguishing this journal: R & D reports in aerospace sciences in Romania The INCAS BULLETIN of the National Institute for Aerospace Research "Elie Carafoli" includes the following sections: 1) FULL PAPERS. -Strength of materials, elasticity, plasticity, aeroelasticity, static and dynamic analysis of structures, vibrations and impact. -Systems, mechatronics and control in aerospace. -Materials and tribology. -Kinematics and dynamics of mechanisms, friction, lubrication. -Measurement technique. -Aeroacoustics, ventilation, wind motors. -Management in Aerospace Activities. 2) TECHNICAL-SCIENTIFIC NOTES and REPORTS. Includes: case studies, technical-scientific notes and reports on published areas. 3) INCAS NEWS. Promote and emphasise INCAS technical base and achievements. 4) BOOK REVIEWS.
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