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Health monitoring of mooring lines in floating structures using artificial neural networks

机译:使用人工神经网络对漂浮结构中的系泊缆进行健康监测

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摘要

Health monitoring of mooring lines is essential to ensure the safe performance of floating structures during the service life. In the literature and offshore industries, damage diagnosis of mooring lines is based on fatigue analysis by considering rope behavior. Mostly, this type of diagnosis is accomplished by the results, obtained from the simulation model of mooring system. Further, one of the important factors in modeling is applying uncertainties in the simulation model. In this paper, due to the complex behavior of mooring lines, a new design of Radial Basis Function (RBF) neural network is proposed for damage diagnosis. Also, the modeling method is based on Rod theory and Finite Element Method (FEM). In the proposed modeling process, for improving the accuracy of the modeling, boundary conditions uncertainty are applied using Submatrix Solution Procedure (SSP). Additionally, round-off error is removed by SSP. Finally, the proposed modeling and diagnosis are investigated experimentally. The obtained results showed that proposed RBF has better performance compared with conventional one and other well-known methods in the literature.
机译:系泊缆线的健康监测对于确保使用寿命内浮动结构的安全性能至关重要。在文献和海上工业中,系泊绳的损坏诊断是基于疲劳分析并考虑了绳索的行为。通常,这种诊断是通过从系泊系统的仿真模型获得的结果来完成的。此外,建模的重要因素之一是在仿真模型中应用不确定性。鉴于系泊缆的复杂行为,提出了一种新的径向基函数神经网络设计用于损伤诊断。此外,建模方法基于Rod理论和有限元方法(FEM)。在提出的建模过程中,为了提高建模的准确性,使用子矩阵求解过程(SSP)应用边界条件不确定性。此外,SSP消除了舍入错误。最后,对提出的建模和诊断进行了实验研究。获得的结果表明,与传统的一种和其他文献中熟知的方法相比,提出的RBF具有更好的性能。

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