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Trim of rotorcraft multibody models using a neural-augmented model-predictive auto-pilot

机译:使用神经增强模型预测自动驾驶仪对旋翼飞机多体模型进行修剪

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摘要

The aeromechanical analysis of rotorcraft using comprehensive multibody vehicle models is crucially dependent on the ability to accurately compute the model trim settings. Among the various techniques proposed in the literature, the auto-pilot approach, being independent of the complexity of the model, has the potential to solve trim problems efficiently even for the highly detailed aero-servo-elastic vehicle models that are developed using modern finite-element-based multibody analysis codes. Published proportional auto-pilots show to work well in many practical instances. However, their robustness with respect to the flight condition is often poor, so that they must be accurately tuned. In this paper, an auto-pilot based on adaptive non-linear model-predictive control is proposed. The formulation uses a non-linear reference model of the rotorcraft, which is augmented with an adaptive neural element. The adaptive element identifies and corrects the mismatch between reduced and comprehensive models, thereby improving the predictive capabilities of the controller. The methodology is tested on the wind-tunnel trim of a rotor multibody model and compared to an existing implementation of a classical auto-pilot for comprehensive rotorcraft analysis applications. The proposed controller shows improved stability over the conventional approach without the need for calibration.
机译:使用全面的多体飞行器模型进行的旋翼飞机的航空力学分析至关重要地取决于能否准确计算出模型调整设置。在文献中提出的各种技术中,自动驾驶方法不依赖于模型的复杂性,即使对于使用现代有限元开发的高度详细的航空-弹性车辆模型,也有可能有效地解决配平问题。基于元素的多体分析代码。已发布的比例自动驾驶仪在许多实际情况下均显示良好的效果。但是,它们在飞行状态方面的鲁棒性通常很差,因此必须对其进行精确调整。提出了一种基于自适应非线性模型预测控制的自动驾驶仪。该公式使用了旋翼飞机的非线性参考模型,并添加了自适应神经元。自适应元件可以识别和纠正简化模型与综合模型之间的不匹配,从而提高控制器的预测能力。该方法在旋翼多体模型的风洞饰板上进行了测试,并与用于综合旋翼飞机分析应用的经典自动驾驶仪的现有实现方案进行了比较。所提出的控制器显示出比常规方法更高的稳定性,而无需校准。

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