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Microwave imaging of dielectric cylinders from experimental scattering data based on the genetic algorithms, neural networks and a hybrid micro genetic algorithm with conjugate gradient

机译:基于遗传算法,神经网络和共轭梯度混合微遗传算法的实验散射数据对电介质圆柱体进行微波成像

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The application of three techniques for the reconstruction of the permittivity profile of cylindrical objects from scattered field measurements is studied in the present paper. These approaches are applied to two-dimensional configurations. After an integral formulation, a discretization using the method of moments (MoM) is applied. Considering that the microwave imaging is recast as a nonlinear optimization problem, a cost functional is defined by the norm of a difference between the measured scattered electric field and that calculated for an estimated relative permittivity distribution. Thus, the permittivity profile can be obtained by minimizing the cost functional. In order to solve this inverse scattering problem, three techniques are employed. The first is based on a basic real coded genetic algorithms (GAs). The second is a hybrid technique (mGA-CG) which is based on a conjunction of a micro genetic algorithm (mGA) approach with the conjugate gradient based method (CG). The third is an application of an artificial neural network (ANN) having multilayered perceptrons architecture (MLPs). Three algorithms: conjugate gradient with PolakRibiere updates (CGP), LevenbergMarquardt (LM) and gradient descent (GD) are used to train the ANN. Computer simulations of these methods are performed for reconstruction of circular cylinders against laboratory-controlled microwave data.
机译:本文研究了三种技术在散射场测量中重建圆柱物体介电常数的应用。这些方法适用于二维配置。积分公式化之后,使用矩量法(MoM)进行离散化。考虑到将微波成像重铸为非线性优化问题,成本函数由测得的散射电场与为估算的相对介电常数分布计算的散射电场之间的差的范数定义。因此,可以通过使功能成本最小化来获得介电常数分布。为了解决该逆散射问题,采用了三种技术。第一种基于基本的实际编码遗传算法(GA)。第二种是混合技术(mGA-CG),该技术基于微遗传算法(mGA)方法与基于共轭梯度的方法(CG)的结合。第三是具有多层感知器体系结构(MLP)的人工神经网络(ANN)的应用。三种算法:带有PolakRibiere更新的共轭梯度(CGP),LevenbergMarquardt(LM)和梯度下降(GD)用于训练ANN。针对实验室控制的微波数据对圆柱进行了这些方法的计算机仿真。

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