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Adaptive rapid neural observer-based sensors fault diagnosis and reconstruction of quadrotor unmanned aerial vehicle

机译:基于自适应快速神经观察者的传感器故障诊断和重建四轮车无人机

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PurposeThe objective of this research is to investigate various neural network (NN) observer techniques for sensors fault identification and diagnosis of nonlinear system in consideration of numerous faults, failures, uncertainties and disturbances. For the importunity of increasing the faults diagnosis and reconstruction preciseness, a new technique is used for modifying the weight parameters of NNs without enhancement of computational complexities.Design/methodology/approachVarious techniques such as adaptive radial basis functions (ARBF), conventional radial basis functions, adaptive multi-layer perceptron, conventional multi-layer perceptron and extended state observer are presented. For increasing the fault detection preciseness, a new technique is used for updating the weight parameters of radial basis functions and multi-layer perceptron (MLP) without enhancement of computational complexities. Lyapunov stability theory and sliding-mode surface concepts are used for the weight-updating parameters. Based on the combination of these two concepts, the weight parameters of NNs are updated adaptively. The key purpose of utilization of adaptive weight is to enhance the detection of faults with high accuracy. Because of the online adaptation, the ARBF can detect various kinds of faults and failures such as simultaneous, incipient, intermittent and abrupt faults effectively. Results depict that the suggested algorithm (ARBF) demonstrates more confrontation to unknown disturbances, faults and system dynamics compared with other investigated techniques and techniques used in the literature. The proposed algorithms are investigated by the utilization of quadrotor unmanned aerial vehicle dynamics, which authenticate the efficiency of the suggested algorithm.FindingsThe proposed Lyapunov function theory and sliding-mode surface-based strategy are studied, which shows more efficiency to unknown faults, failures, uncertainties and disturbances compared with conventional approaches as well as techniques used in the literature.Practical implicationsFor improvement of the system safety and for avoiding failure and damage, the rapid fault detection and isolation has a great significance; the proposed approaches in this research work guarantee the detection and reconstruction of unknown faults, which has a great significance for practical life.Originality/valueIn this research, two strategies such Lyapunov function theory and sliding-mode surface concept are used in combination for tuning the weight parameters of NNs adaptively. The main purpose of these strategies is the fault diagnosis and reconstruction with high accuracy in terms of shape as well as the magnitude of unknown faults. Results depict that the proposed strategy is more effective compared with techniques used in the literature.
机译:本研究的目的是考虑到许多故障,故障,不确定性和干扰,调查传感器故障识别和诊断非线性系统的各种神经网络(NN)观察者技术。对于增加故障诊断和重建精确性的重要性,一种新技术用于修改NNS的重量参数,而不提高计算复杂性.Design/Methodology / Proprachocology / Proprachifious技术,例如自适应径向基函数(ARBF),传统的径向基函数,给出了自适应多层的影响,传统的多层Perceptron和扩展状态观察者。为了提高故障检测精确度,新技术用于更新径向基函数的权重参数和多层Perceptron(MLP)而不提高计算复杂性。 Lyapunov稳定性理论和滑模表面概念用于重量更新参数。基于这两个概念的组合,NNS的权重参数适自适应。利用自适应重量的关键目的是提高高精度的故障检测。由于在线适应,ARBF可以有效地检测各种故障和故障,例如同时,初始,间歇性和突然的故障。结果描述,建议的算法(ARBF)与文献中使用的其他研究和技术相比,对未知干扰,故障和系统动力学的更大对抗。通过利用四轮机器无人驾驶飞行车动态来研究所提出的算法,该算法验证了建议算法的效率。研究了Lyapunov函数理论和滑模基于表面的策略,这表明了对未知故障,故障的效率更高,与常规方法相比的不确定性和扰动以及在文献中使用的技术。为改进系统安全性和避免失败和损坏,快速故障检测和隔离具有重要意义;本研究工作中的拟议方法保证了未知故障的检测和重建,对实际寿命具有重要意义。历史/价值本研究,这两个策略如Lyapunov函数理论和滑模表面概念用于调整自适应地NNS的重量参数。这些策略的主要目的是在形状方面具有高精度的故障诊断和重建以及未知故障的严重程度。结果描述,与文献中使用的技术相比,该策略更有效。

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