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Data Fusion for Combining Techniques to In Situ Detect Defects of Turbine Blade

机译:用于将技术与原位检测涡轮叶片缺陷的数据融合

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In non-destructive testing (NDT) it is important to have a high probability of detection (POD) and reliable characterization of each defect. This can be gained by using several techniques, which leads to an increase in cost and time for testing. Another option is to use several techniques combined into a single probe, in which case data fusion for the techniques is possible. A dual probe containing an eddy current probe and a borescope is presented. These two techniques are complementary, and no detrimental interference is observed. This dual probe can in situ detect defects of complicated object such as aeroengine, which can reduce the need for costly teardown. Turbine blade is one of crucial parts in aeroengine. Defects of turbine blade would endanger flight security. Cracks and corrosion are primary defects of turbine blade. Cracks and corrosion are detected in situ using eddy current and borescope simultaneity. Based on the Dempster-Shafer (D-S) theory of evidence, a decision level data fusion was used to combine probability mass values from borescope and eddy current. The final classification results were obtained by making decisions based on the maximum belief of the fused results. The experimental results show that the high reliable characterization of defect is gained using the data fusion.
机译:在非破坏性测试(NDT)中,重要的是具有高概率的检测(POD)和每个缺陷的可靠性。这可以通过使用多种技术来获得,这导致测试成本和时间的增加。另一种选择是使用多种技术组合成单个探针,在这种情况下,可以进行技术的数据融合。提出了一种含有涡流探针和侧孔孔的双重探针。这两种技术是互补的,并且没有观察到有害的干扰。这种双重探头可以原位检测复杂物体的缺陷,例如航空发动机,这可以减少对昂贵的拆卸的需求。涡轮叶片是航空发动机的关键零件之一。涡轮刀片的缺陷将危及飞行安全性。裂缝和腐蚀是涡轮叶片的主要缺陷。使用涡流和朝鲜孔孔同时地原位检测裂缝和腐蚀。基于Dempster-Shafer(D-S)的证据理论,使用决策水平数据融合来组合Borescope和涡流的概率质量值。最终分类结果是通过基于融合结果的最大信念来做出决定获得的。实验结果表明,利用数据融合获得了高可靠性的缺陷表征。

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