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Low-cost RPAS navigation and guidance system using Square Root Unscented Kalman Filter

机译:使用平方根Unscented卡尔曼滤波器的低成本Rpas导航和制导系统

摘要

Multi-Sensor Data Fusion (MSDF) techniques involving satellite and inertial-based sensors are widely adopted to improve the navigation solution of a number of mission- and safety-critical tasks. Such integrated Navigation and Guidance Systems (NGS) currently do not meet the required level of performance in all flight phases of small Remotely Piloted Aircraft Systems (RPAS). In this paper an innovative Square Root-Unscented Kalman Filter (SR-UKF) based NGS is presented and compared with a conventional UKF governed design. The presented system architectures adopt state-of-the-art information fusion approach based on a number of low-cost sensors including; Global Navigation Satellite Systems (GNSS), Micro-Electro-Mechanical System (MEMS) based Inertial Measurement Unit (IMU) and Vision Based Navigation (VBN) sensors. Additionally, an Aircraft Dynamics Model (ADM), which is essentially a knowledge based module, is employed to compensate for the MEMS-IMU sensor shortcomings in high-dynamics attitude determination tasks. The ADM acts as a virtual sensor and its measurements are processed with non-linear estimation in order to increase the operational validity time. An improvement in the ADM navigation state vector (i.e., position, velocity and attitude) measurements is obtained, thanks to the accurate modeling of aircraft dynamics and advanced processing techniques. An innovative SR-UKF based VBN-IMU-GNSS-ADM (SR-U-VIGA) architecture design was implemented and compared with a typical UKF design (U-VIGA) in a small RPAS (AEROSONDE) integration arrangement exploring a representative cross-section of the operational flight envelope. The comparison of position and attitude data shows that the SR-U-VIGA and U-VIGA NGS fulfill the relevant RNP criteria, including precision approach tasks.
机译:涉及基于卫星和惯性的传感器的多传感器数据融合(MSDF)技术被广泛采用,以改善许多任务和安全关键任务的导航解决方案。这样的集成导航和制导系统(NGS)当前无法满足小型遥控飞机系统(RPAS)在所有飞行阶段的性能要求。本文提出了一种创新的基于平方根无味卡尔曼滤波器(SR-UKF)的NGS,并将其与常规UKF支配的设计进行了比较。提出的系统架构采用了基于许多低成本传感器的最新信息融合方法。全球导航卫星系统(GNSS),基于微机电系统(MEMS)的惯性测量单元(IMU)和基于视觉的导航(VBN)传感器。此外,飞机动力学模型(ADM)本质上是一个基于知识的模块,用于弥补高动力学姿态确定任务中MEMS-IMU传感器的缺点。 ADM充当虚拟传感器,其测量值经过非线性估计处理,以增加操作有效时间。由于飞机动力学的精确建模和先进的处理技术,ADM导航状态向量(即位置,速度和姿态)测量得到了改进。实施了创新的基于SR-UKF的VBN-IMU-GNSS-ADM(SR-U-VIGA)架构设计,并将其与典型的UKF设计(U-VIGA)在小型RPAS(AEROSONDE)集成方案中进行了对比,探索了具有代表性的交叉飞行包线部分。位置和姿态数据的比较表明,SR-U-VIGA和U-VIGA NGS符合相关的RNP标准,包括精确进近任务。

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