基于神经网络方法的混凝土结构地下成像

Satyajit Panda, Z. Akhter, M. Akhtar
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引用次数: 1

摘要

提出了一种基于人工神经网络的钢筋混凝土结构微波地下成像方法。所提出的技术有助于检测测试结构的内部结构,并且基于使用ka波段波导(WR-28)和网络分析仪测量反射数据。波导直接与测试结构接触,通过沿其表面移动波导支架对整个样品进行扫描,以测量不同位置的反射数据。人工神经网络的训练数据是通过在CST Microwave Studio中模拟典型混凝土试件的完整测量设置来生成的。然后将实际测量的反射数据馈送到先前训练的人工神经网络,以产生测试结构的地下图像。通过模拟和实验数据对不同的混凝土样品进行成像,验证了该系统的有效性。
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Subsurface imaging of concrete structures using neural network approach
A novel artificial neural network (ANN) based approach for the microwave subsurface imaging of reinforced concrete structures is proposed. The proposed technique facilitates the detection of the inner configuration of test structures, and is based on measurement of reflection data using a Ka-band waveguide (WR-28) along with the network analyzer. The waveguide is directly placed in contact with the test structure, and the whole sample is scanned by moving the waveguide holder along its surface in order to measure the reflection data at various positions. The training data for the ANN is generated by simulating the complete measurement setup in the CST Microwave Studio with a typical concrete specimen. The actual measured reflection data is then fed to the previously trained ANN to produce the subsurface image of the test structure. The proposed system is validated by imaging different concrete samples using both simulated and experimental data.
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