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ELM-based adaptive neural estimation for actuator faults detection and diagnosis of nonlinear uncertain systems

机译:基于ELM的自适应神经估计用于执行器故障的非线性不确定系统诊断和诊断。

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Actuator, as a key component of control system, whose faults detection and diagnosis (FDD) is a complex problem due to system modeling uncertainty, so it is essential to propose advanced FDD scheme that accurately detects the faults. In this paper, we develop an actuator FDD scheme for a class of uncertain nonlinear systems based on extreme learning machine (ELM). In ELM, all parameters of hidden layer nodes need not be adjusted during learning, which may simply be assigned with random values, and the output weights only need to be adjusted. Within this scheme, two ELMs are employed to learn the unknown system function and unknown fault function. Firstly, a stable adaptive observer is designed to monitor faults in an online manner. Secondly, adaptive threshold is designed to make the fault detection, and deviation between the actual and the estimated system is known as residual. If the residual exceeds threshold at finite time denotes a fault occurrence. Different from the existing schemes, online computational efficiency and learning speed are improved considerably because ELM is introduced in this FDD scheme. Finally, a single-link robotic arm will be employed in simulation to illustrate the effectiveness of the proposed FDD scheme.
机译:执行器作为控制系统的关键部件,由于系统建模的不确定性,其故障检测与诊断(FDD)是一个复杂的问题,因此,提出一种能够精确检测故障的高级FDD方案至关重要。在本文中,我们针对一类基于极限学习机(ELM)的不确定非线性系统开发了一种执行器FDD方案。在ELM中,隐藏层节点的所有参数不需要在学习期间进行调整,只需将其分配随机值即可,并且只需要调整输出权重即可。在该方案中,使用两个ELM来学习未知的系统功能和未知的故障功能。首先,设计了一个稳定的自适应观察器,以在线方式监视故障。其次,设计自适应阈值以进行故障检测,而实际系统与估计系统之间的偏差称为残差。如果残留在限定时间超过阈值,则表示发生了故障。与现有方案不同,由于在此FDD方案中引入了ELM,因此在线计算效率和学习速度得到了显着提高。最后,在仿真中将使用单链接机械臂来说明所提出的FDD方案的有效性。

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