论文标题
在使用神经网的尺度缩放霍尔效应推进器上
On Scaling of Hall-Effect Thrusters Using Neural Nets
论文作者
论文摘要
霍尔效应推进器(HET)广泛用于现代地球航天器推进,对于将来的深空任务至关重要。建模HET的方法正在迅速发展。但是,此类方法尚未足够精确,无法可靠地预测新设计的推进器的参数,这主要是由于HET血浆模拟的巨大计算成本。另一种方法是根据可用的实验数据使用缩放技术。本文提出了一种使用神经网络和其他现代机器学习方法扩展HET的方法。新的扩展模型是由从已发表论文收集的大量HET参数数据库中构建的。新缩放模型的预测对于数据库涵盖的操作参数域有效。在设计过程中,该模型可以帮助HET开发人员估计新设计的推进器的性能。在实验研究的阶段,该模型可用于比较研究推进器的达到的特征与其他开发人员获得的水平。还提供了与最先进的HET缩放模型的比较。
Hall-effect thrusters (HETs) are widely used for modern near-earth spacecraft propulsion and are vital for future deep-space missions. Methods of modeling HETs are developing rapidly. However, such methods are not yet precise enough and cannot reliably predict the parameters of a newly designed thruster, mostly due to the enormous computational cost of a HET plasma simulation. Another approach is to use scaling techniques based on available experimental data. This paper proposes an approach for scaling HETs using neural networks and other modern machine learning methods. The new scaling model was built with information from an extensive database of HET parameters collected from published papers. Predictions of the new scaling model are valid for the operating parameters domain covered by the database. During the design, this model can help HET developers estimate the performance of a newly-designed thruster. At the stage of experimental research, the model can be used to compare the achieved characteristics of the studied thruster with the level obtained by other developers. A comparison with the state-of-the-art HET scaling model is also presented.