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Weld line degradation assessment using chaotic attractor property analysis

机译:焊接线利用混沌吸引子属性分析进行劣化评估

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This paper describes results from an investigation into weld line unzipping. The experiments use a series of steel plates (762 x 408 x 3.17 mm) instrumented with five fiber Bragg grating strain gauges. We rely on tuned chaotic excitation using a Lorenz oscillator to maintain a low dimension system suitable for chaotic attractor property analysis. Weld unzipping is simulated by leaving gaps in a weld line which start at one edge of the plate and extend for 34 or 74 mm (8 or 18% of the plate width). Two speeds of the Lorenz oscillator are used for excitation. These correspond to positive Lyapunov exponents of 5 and 10 and provide insight into our ability to control the dimensionality of the system. Strain data from the sensors are cast into attractors and analyzed for changes using a feature called nonlinear prediction error. The nonlinear prediction error results demonstrate that the LE=5 excitation barely excites any structure dynamics while the LE=10 excitation clearly excites the first LE of the structure. At the 95% confidence limit with LE=10 excitation three of the five sensors can distinguish all three damage cases with the other two sensors able to separate damaged from undamaged. At the 95% confidence limit with LE= 5, only one sensor was able to distinguish damaged from undamaged and no sensors could distinguish the two damage cases.
机译:本文介绍了对焊接线解压缩的调查的结果。实验使用一系列钢板(762 x 408 x 3.17 mm)用五个纤维布拉格光栅应变仪。我们使用Lorenz振荡器依靠调谐混沌励磁,以维持适用于混沌吸引子属性分析的低尺寸系统。通过在焊接线中留下间隙来模拟焊接解压缩,该焊接线在板的一个边缘开始并延伸34或74mm(占板宽的8或18%)。 Lorenz振荡器的两种速度用于激发。这些对应于5和10的正利兆欧夫指数,并对我们控制系统的维度的能力提供了解。来自传感器的应变数据被投入吸引子并使用称为非线性预测误差的特征进行分析以进行更改。非线性预测误差结果表明,Le = 5次激发只需激励任何结构动态,而Le = 10激发明确激发结构的第一个le。在95%的置信度限制与Le = 10次激发器中的三个传感器中的三个可以将所有三个损坏的情况区分开,其他两个传感器能够分开从未损坏的损坏。在Le = 5的95%置信区分中,只有一个传感器能够区分从未损坏的损坏,并且没有传感器可以区分两个损坏的情况。

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