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A soft self-repairing for FBG sensor network in SHM system based on PSO-SVR model reconstruction

机译:基于PSO-SVR模型重构的SHM系统FBG传感器网络的软自修复

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Structural health monitoring (SHM) system takes advantage of an array of sensors to continuously monitor a structure and provide an early prediction such as the damage position and damage degree etc. Such a system requires monitoring the structure in any conditions including bad condition. Therefore, it must be robust and survivable, even has the self-repairing ability. In this study, a model reconstruction predicting algorithm based on particle swarm optimization-support vector regression (PSO-SVR) is proposed to achieve the self-repairing of the Fiber Bragg Grating (FBG) sensor network in SHM system. Furthermore, an eight-point FBG sensor SHM system is experimented in an aircraft wing box. For the damage loading position prediction on the aircraft wing box, six kinds of disabled modes are experimentally studied to verify the self-repairing ability of the FBG sensor network in the SHM system, and the predicting performance are compared with non-reconstruction based on PSO-SVR model. The research results indicate that the model reconstruction algorithm has more excellence than that of non-reconstruction model, if partial sensors are invalid in the FBG-based SHM system, the predicting performance of the model reconstruction algorithm is almost consistent with that no sensor is invalid in the SHM system. In this way, the self-repairing ability of the FBG sensor is achieved for the SHM system, such the reliability and survivability of the FBG-based SHM system is enhanced if partial FBG sensors are invalid. (C) 2015 Elsevier B.V. All rights reserved.
机译:结构健康监视(SHM)系统利用传感器阵列来连续监视结构并提供诸如损坏位置和损坏程度等的早期预测。这种系统需要在包括恶劣条件在内的任何条件下监视结构。因此,它必须健壮和可生存,甚至具有自我修复能力。本文提出了一种基于粒子群优化-支持向量回归(PSO-SVR)的模型重构预测算法,以实现SHM系统中光纤光栅(FBG)传感器网络的自修复。此外,在飞机机翼盒中对八点FBG传感器SHM系统进行了实验。为了对机翼盒上的损伤载荷位置进行预测,通过实验研究了六种失效模式,以验证SHM系统中FBG传感器网络的自修复能力,并将预测性能与基于PSO的非重构进行比较。 -SVR模型。研究结果表明,模型重建算法比非重建模型具有更好的性能,如果部分传感器在基于FBG的SHM系统中无效,则模型重建算法的预测性能几乎与没有传感器失效的情况一致。在SHM系统中。通过这种方式,可以为SHM系统实现FBG传感器的自我修复能力,如果部分FBG传感器无效,则可以提高基于FBG的SHM系统的可靠性和生存能力。 (C)2015 Elsevier B.V.保留所有权利。

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