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A Gaussian Process Regression Approach to Model Aircraft Engine Fuel Flow Rate

机译:高斯过程回归方法模拟飞机发动机燃油流量

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The problem of building statistical models of cyber-physical systems using operational data is addressed in this paper, using thecase study of aircraft engines. These models serve as a complementto physics-based models, which may not accurately reflect the operational performance of systems. The accurate modeling of fuelflow rate is an essential aspect of analyzing aircraft engine performance. In this paper, operational data from Flight Data Recordersare used to model the fuel flow rate. The independent variablesare restricted to those which are obtainable from trajectory data.Treating the engine as a statistical system, an algorithm based onGaussian Process Regression (GPR) is developed to estimate thefuel flow rate during the airborne phases of flight. The algorithmpropagates the uncertainty in the estimates in order to determineprediction intervals. The proposed GPR models are evaluated fortheir predictive performance on an independent set of flights. Theresulting estimates are also compared with those given by the Baseof Aircraft Data (BADA) model, which is widely used in aircraftperformance studies. The GPR models are shown to perform statistically significantly better than the BADA model. The GPR modelsalso provide interval estimates for the fuel flow rate which reflectthe variability seen in the data, presenting a promising approachfor data-driven modeling of cyber-physical systems.
机译:本文通过飞机发动机的案例研究,解决了使用运行数据建立网络物理系统统计模型的问题。这些模型是对基于物理的模型的补充,这些模型可能无法准确反映系统的运行性能。燃油流量的准确建模是分析飞机发动机性能的重要方面。在本文中,来自飞行数据记录器的运行数据用于对燃油流速进行建模。将自变量限制为可从轨迹数据获得的变量。将发动机作为统计系统进行处理,开发了一种基于高斯过程回归(GPR)的算法来估计机载飞行阶段的燃油流量。该算法在估计中传播不确定性,以便确定预测间隔。建议的GPR模型在一组独立的航班上评估其预测性能。还将结果估算值与飞机数据基础(BADA)模型给出的估算值进行了比较,该模型已广泛用于飞机性能研究中。 GPR模型在统计上显示出比BADA模型显着更好的性能。 GPR模型还提供了燃料流速的区间估计值,反映了在数据中看到的可变性,为网络物理系统的数据驱动建模提供了一种有前途的方法。

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