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Particle filter for aircraft mass estimation and uncertainty modeling

机译:飞机质量估计和不确定性建模的粒子滤波器

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This article investigates the estimation of aircraft mass and thrust settings of departing aircraft using a recursive Bayesian method called particle filtering. The method is based on a nonlinear state-space system derived from aircraft point-mass performance models. Using only aircraft surveillance data, flight states such as position, velocity, wind speed, and air temperature are collected and used for the estimations. With the regularized Sample Importance Re-sampling particle filter, we are able to estimate the aircraft mass within 30 seconds once an aircraft is airborne. Using this short flight segment allows the assumption of constant mass and thrust setting. The segment at the start of the climb also represents the time when maximum thrust setting is most likely to occur. This study emphasizes an important aspect of the estimation problem, the observation noise modeling. Four observation noise models are proposed, which are all based on the native navigation accuracy parameters that have been obtained automatically from the surveillance data. Simulations and experiments are conducted to test the theoretical model. The results show that the particle filter is able to quantify uncertainties, as well as determine the noise limit for an accurate estimation. The method of this study is tested with a dataset consisting of 50 Cessna Citation II flights where true masses were recorded.
机译:本文调查使用称为粒子滤波的递归贝叶斯方法来估算飞机的飞机质量和推力环境。该方法基于来自飞机点质量模型的非线性状态空间系统。仅使用飞机监控数据,收集诸如位置,速度,风速和空气温度的飞行状态并用于估计。通过正常的示例重新采样粒子过滤器,一旦飞机空气传播,我们就可以在30秒内估计飞机质量。使用此短路段允许假设恒定质量和推力设置。爬升开始时的段也代表最有可能发生最大推力设置的时间。本研究强调了估计问题的一个重要方面,观察噪声建模。提出了四种观察噪声模型,这一切都基于从监视数据自动获得的本机导航精度参数。进行模拟和实验以测试理论模型。结果表明,粒子过滤器能够量化不确定性,以及确定准确估计的噪声限制。该研究的方法是用一个由50个Cessna Citation II航班组成的数据集进行了测试,其中记录了真实质量。

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