Grey box identification approach for longitudinal and lateral dynamics of UAV

Abdur Rasheed
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引用次数: 5

Abstract

The modeling of aerospace vehicles using system identification technique is a very effective and significant approach in today's industry. The different analytical methods cannot accurately model the dynamics of unmanned aerial vehicle (UAV). The model obtained using system identification technique represents the UAV in different flight envelopes which lead to development of effective flight control systems. The models for longitudinal and lateral dynamics of UAV is obtained using first principle approach. The recorded flight test data is processed using system identification toolbox of Matlab which result in obtaining grey box models for UAV dynamics using Prediction Error Method (PEM). Validation of both longitudinal and lateral models is carried out along with performance of error analysis. Also the different aerodynamic parameters are obtained for these models. The accuracy of validation results show that these models can be used for flight simulator, autopilot design and other different controller design. UAV model used as reference is SmartOne.
无人机纵向和横向动力学的灰盒识别方法
利用系统识别技术对航天飞行器进行建模是当今航天工业中一种非常有效和重要的方法。不同的分析方法不能准确地模拟无人机的动力学特性。利用系统辨识技术得到的模型代表了不同飞行包线下的无人机,为开发有效的飞行控制系统提供了依据。采用第一性原理法建立了无人机的纵向和横向动力学模型。利用Matlab系统识别工具箱对记录的飞行试验数据进行处理,利用预测误差法(PEM)获得无人机动力学灰盒模型。对纵向模型和横向模型进行了验证,并进行了误差分析。并得到了不同型号的气动参数。验证结果表明,该模型可用于飞行模拟器、自动驾驶仪设计和其他不同控制器的设计。参考的无人机型号为SmartOne。
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