用神经网络估计航天器主动容错控制器的成功率

R. Moradi, Jamila Hamzeyee
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引用次数: 0

摘要

确定控制器的成功率是航天器主动容错控制中的一个重要问题。这门学科的重要性主要与故障的随机性和不可预测性有关。另一方面,由于存在各种各样的故障,各种模拟和评估控制器成功率将需要大量的时间。为了解决这一问题,本文利用神经网络来确定控制器在各种故障条件下的成功率。首先对神经网络进行训练,验证其预测控制器效率的性能。然后,考虑到训练网络的高速度,基于广泛的故障范围进行彻底的调查。结果表明,随着故障的增加,控制器成功的概率减小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using Neural Network to Estimate the Success Percent of Spacecraft Active Fault-Tolerant Controller
Determining the controller success percent is one of the important issues in spacecraft active fault-tolerant control. The importance of this subject is mainly related to the random and unpredictable nature of faults. On the other hand, since there exists a wide range of faults, various simulations and evaluating controller success percent will require a large amount of time. To resolve this problem, the present paper uses neural network to determine the controller success percent in various fault conditions. First, the neural network is trained and its performance in predicting controller efficiency is verified. Then, considering the high speed of the trained network, a thorough investigation is performed based on a wide range of faults. The obtained results are physically sensible and show that as the fault increases, the probability of controller success will decrease.
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