Title of article :
Comparison of the Third- order moving average and least square methods for estimating of shape and depth residual magnetic anomalies
Author/Authors :
Fouladi, Mohammad Department of Earth Sciences - Islamic Azad University, Tehran , Meshinchi Asl, Mirsattar Department of Earth Sciences - Islamic Azad University, Tehran , Mehramuz, Mahmoud Department of Earth Sciences - Islamic Azad University, Tehran , Nezafati, Nima Department of Earth Sciences - Islamic Azad University, Tehran
Abstract :
In the current study, we have developed a new method called the third- order moving average method to estimate the shape and
depth of residual magnetic anomalies. This method, calculates a nonlinear relationship between depth and shape factor, at seven points
with successive window length. It is based on the computing standard deviation at depths that are determined from all residual magnetic
anomalies for each value of the shape factor. The method was applied to the synthetic model by geometrical shapes both as horizontal
cylinder and combination of horizontal cylinder, sphere and thin sheet approaches, with and without noise. It was tested by real data in
Geological Survey of Iran (GSI). In this study, least square methods were applied to interpret the magnetic field so that we can compare
the results of this methods with the third- order moving average method. This method is applied to estimate the depth using second
horizontal derivative anomalies obtained numerically from magnetic data with successive window lengths. This method utilizes the
variance of the depths as a scale for calculation of the shape and depth. The results showed that the third- order moving average method
is a powerful tool for estimating shape and depth of the synthetic models in the presence and absence of noise compared to least square
method. Moreover, the results showed that this method is very accurate for real data while the least square method did not lead to
feasible results.
Keywords :
Residual magnetic anomalies , Third- order moving average , Least square method , Standard deviation , Variance
Journal title :
Iranian Journal of Earth Sciences(IJES)