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Optimization-Based Sensor Fusion of GNSS and IMU Using a Moving Horizon Approach

机译:基于运动视野的基于优化的GNSS和IMU传感器融合

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摘要

The rise of autonomous systems operating close to humans imposes new challenges in terms of robustness and precision on the estimation and control algorithms. Approaches based on nonlinear optimization, such as moving horizon estimation, have been shown to improve the accuracy of the estimated solution compared to traditional filter techniques. This paper introduces an optimization-based framework for multi-sensor fusion following a moving horizon scheme. The framework is applied to the often occurring estimation problem of motion tracking by fusing measurements of a global navigation satellite system receiver and an inertial measurement unit. The resulting algorithm is used to estimate position, velocity, and orientation of a maneuvering airplane and is evaluated against an accurate reference trajectory. A detailed study of the influence of the horizon length on the quality of the solution is presented and evaluated against filter-like and batch solutions of the problem. The versatile configuration possibilities of the framework are finally used to analyze the estimated solutions at different evaluation times exposing a nearly linear behavior of the sensor fusion problem.
机译:在人类附近运行的自治系统的兴起在估计和控制算法的鲁棒性和精度方面提出了新的挑战。与传统的滤波技术相比,已经证明了基于非线性优化的方法,例如移动视界估计,可以提高估计解决方案的准确性。本文介绍了基于移动视野方案的基于优化的多传感器融合框架。通过融合全球导航卫星系统接收器和惯性测量单元的测量,该框架可应用于经常发生的运动跟踪估计问题。生成的算法用于估计机动飞机的位置,速度和方向,并针对准确的参考轨迹进行评估。提出了对视距长度对解决方案质量影响的详细研究,并针对该问题的类似过滤器和批处理的解决方案进行了评估。框架的通用配置可能性最终用于在不同评估时间分析估计的解决方案,从而暴露出传感器融合问题的近乎线性的行为。

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