具有扰动补偿的飞机多层神经控制

Guichao Yang, Zhiying Shi
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引用次数: 0

摘要

在这项工作中,针对具有未知建模不确定性的无人机系统(UASs)集成了高性能多层神经控制器。特别地,大的内源干扰和外源干扰可以在线前向补偿。值得注意的是,多层神经网络的在线学习能力通过由不同误差组成的权值更新规律得到增强。通过引入基于二阶滤波器的反推过程,既避免了繁琐的推导迭代带来的不利影响,又具有简单的实现方案。此外,通过对比应用结果,验证了综合控制算法在可能存在大量未知内源不确定性和外源干扰的无人飞行器上的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multilayer Neural Control of Aircrafts With Disturbance Compensation
In this work, a high-performance multilayer neurocontroller is integrated for unmanned aircraft systems (UASs) with unknown modeling uncertainties. Specially, large endogenous disturbances and exogenous disturbances can be online compensated feed forwardly. Notably, the online learning ability of the multilayer neural networks is strengthened via the weight updating laws composed of different errors. By introducing the second-order filter based backstepping procedure, the integrated algorithm not only protects from the adverse influences generated by tedious derivation iteration, but also possesses a simple scheme for implementation. Additionally, the practicability of the integrated control algorithm is validated on UASs which may suffer from largely unknown endogenous uncertainties and exogenous disturbances via comparative application results.
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