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Physics model based unexploded ordnance discrimination using wideband EMI data

机译:基于物理模型的宽带EMI数据未爆弹药识别

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Unexploded ordnance (UXO) discrimination is investigated using the wide band electromagnetic induction (EMI) data. The main focus of this paper is on the practical phenomenological modeling for the induced wideband EMI sensor response from different targets. Modeling for the sensor response provides feature vectors to UXO classification algorithms, and it has been proven to be very important for the improvement of the overall remediation performance. A parametric model is discussed with the emphsis on multiple offset dipole centers. The measured data from several actual targets are utilized to validate the model and to demonstrate the advantage of multiple offset dipole centers vs. single dipole center. We further illustrate the application of the model with multiple dipoles in target classifications by numerical examples. We show that the classification performance might be improved substantially. Finally, we state that the nonlinear EMI dipole model can be decomposed into a linear model. Thus it benefits from the rich literature of linear algebra and signal processing. To report one of our efforts, two methods are proposed to detect the number of dipoles blindly by the information theoretic criteria, namely the Akaike information criterion (AIC) and the minimum description length (MDL). The methods are testified using measured EMI data.
机译:使用宽带电磁感应(EMI)数据研究未爆炸弹药(UXO)的辨别力。本文的主要重点是针对来自不同目标的感应宽带EMI传感器响应的实用现象学建模。传感器响应的建模为UXO分类算法提供了特征向量,并且事实证明,这对于提高整体修复性能非常重要。讨论了参数模型,并在多个偏移偶极子中心上进行了累加运算。来自几个实际目标的测量数据用于验证模型并证明多个偏置偶极中心相对于单个偶极中心的优势。我们通过数值示例进一步说明了具有多个偶极子的模型在目标分类中的应用。我们表明分类性能可能会大大提高。最后,我们指出非线性EMI偶极子模型可以分解为线性模型。因此,它受益于线性代数和信号处理的丰富文献。为了报告我们的工作之一,提出了两种方法通过信息理论标准盲检测偶极子的数量,即Akaike信息标准(AIC)和最小描述长度(MDL)。使用测得的EMI数据验证了这些方法。

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