Cole-Cole model parameter estimation from multi-frequency complex resistivity spectrum based on the artificial neural network
In near surface electrical exploration, it is often necessary to estimate the Cole-Cole model
parameters according to the measured multi-frequency complex resistivity spectrum of ore
and rock samples in advance. Parameter estimation is a nonlinear optimization problem,
and the common method is least square fitting. The disadvantage of this method is that it
relies on initial value and the result is unstable when data is confronted with noise
interference. To further improve the accuracy of parameter estimation, this paper applied …
parameters according to the measured multi-frequency complex resistivity spectrum of ore
and rock samples in advance. Parameter estimation is a nonlinear optimization problem,
and the common method is least square fitting. The disadvantage of this method is that it
relies on initial value and the result is unstable when data is confronted with noise
interference. To further improve the accuracy of parameter estimation, this paper applied …
Abstract
In near surface electrical exploration, it is often necessary to estimate the Cole-Cole model parameters according to the measured multi-frequency complex resistivity spectrum of ore and rock samples in advance. Parameter estimation is a nonlinear optimization problem, and the common method is least square fitting. The disadvantage of this method is that it relies on initial value and the result is unstable when data is confronted with noise interference. To further improve the accuracy of parameter estimation, this paper applied artificial neural network (ANN) method to the Cole-Cole model estimation. Firstly, a large number of forward models are generated as samples to train the neural network and when the data fitting error is lower than the error threshold, the training ends. The trained neural network is directly used to efficiently estimate the parameters of vast amounts of new data. The efficiency of the artificial neural network is analyzed by using simulated and measured spectral induced polarization data. The results show that artificial neural network method has a faster computing speed and higher accuracy in Cole-Cole model parameter estimation.
SEG Library
以上显示的是最相近的搜索结果。 查看全部搜索结果