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Efficient model choice and parameter estimation by using nested sampling applied in Eddy-Current Testing

机译:使用在涡流测试中应用的嵌套抽样进行有效的模型选择和参数估计

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In many applications, such as Eddy-Current Testing (ECT), we are often interested in the joint model choice and parameter estimation. Nested Sampling (NS) is one of the possible methods. The key step that reflects the efficiency of the NS algorithm is how to get samples with hard constraint on the likelihood value. This contribution is based on the classical idea where the new sample is drawn within a hyper-ellipsoid, the latter being located from Gaussian approximation. This sampling strategy can automatically guarantee the hard constraint on the likelihood. Meanwhile, it shows the best sampling efficiency for models which have Gaussian-like likelihood distributions. We apply this method in ECT. The simulation results show that this method has high model choice ability and good parameter estimation accuracy, and low computational cost meanwhile.
机译:在许多应用中,例如涡流测试(ECT),我们通常对联合模型选择和参数估计感兴趣。嵌套采样(NS)是可能的方法之一。反映NS算法效率的关键步骤是如何获得对似然值有严格约束的样本。此贡献基于经典思想,即在超椭圆体中绘制新样本,后者位于高斯近似值中。这种采样策略可以自动保证对可能性的严格限制。同时,对于具有类似高斯似然分布的模型,它显示出最佳的采样效率。我们在ECT中应用此方法。仿真结果表明,该方法具有较高的模型选择能力和良好的参数估计精度,同时具有较低的计算量。

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