飞行力学快速仿真的神经网络方法

G. Valmórbida, Wen-Chi Lu, F. Mora-Camino
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引用次数: 8

摘要

飞行模拟器从一开始就是航空史的一部分。随着现代航空工业的发展,飞行模拟器占有了重要的地位,其制造产业也随之蓬勃发展。以运输飞机为例,制造商在大量实验数据的基础上建立了精确的数学模型,以优化其气动和推进特性,并设计有效的飞行控制系统。然而,在小型通用航空飞机的情况下,这种知识是不常见的,精确的飞行模拟器的设计可能会导致一个繁琐的尝试和修改过程,直到模拟器呈现出接近真实飞机的定性行为。本文通过使用神经网络提出了一种直接估计作用在飞机上的空气动力的方法。人工神经网络似乎是一种合适的数值技术来实现这些连续关系的映射,详细的空气动力学和推力模型不应该再成为生产精确飞行仿真软件的强制性要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A neural approach for fast simulation of flight mechanics
Flight simulators have been part of aviation history since its beginning. With the development of modern aeronautics industry, flight simulators have gained an important place and the industry devoted to their manufacture has become significant. In the case of transportation aircraft, accurate mathematical models based on extensive experimental data have been developed by their manufacturers to optimize their aerodynamic and propulsive characteristics and to design efficient flight control systems. However, in the case of small general aviation aircraft this kind of knowledge is not commonly available and the design of accurate flight simulators can result in a tedious try and modify process until the simulator presents a qualitative behaviour close to the one of the real aircraft. This communication proposes through the use of neural networks a method to perform a direct estimation of the aerodynamic forces acting on aircraft. Artificial neural networks appear to be an appropriate numerical technique to achieve the mapping of these continuous relationships and detailed aerodynamics and thrust models should become no more mandatory to produce accurate flight simulation software.
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