2019_EJRNL_PP_ROSA_DI_MAIO_1.pdf
Terbatas  
» Gedung UPT Perpustakaan
Terbatas  
» Gedung UPT Perpustakaan
Multiple self-potential (SP) anomalies are analyzed by using a Genetic-Price Algorithm (GPA),
which has been recently introduced for the inversion of SP data. The proposed approach is tested
on multiple synthetic anomalies, which are modeled by horizontal cylinders. First, a forward
modeling is used to analyze the resolution of such anomalies by varying all model parameters.
Then, GPA is applied to invert synthetic multiple SP anomalies. The numerical analyses show
that the proposed approach is able to fully characterize the anomaly sources by providing the
correct values of the model parameters as well as the number of sources, even if Gaussian
random noise is added to the synthetic data. Furthermore, to show the computational efficiency
of GPA, the results of a comparative analysis with the Very Fast Simulated Annealing algorithm
are given. The validity of the GPA approach is confirmed by its application to three examples of
self-potential field data from mineral exploration and groundwater investigations, which are
presented and discussed in relation to other inversion approaches. Finally, the quantitative interpretation of multiple anomalies along a SP profile crossing the Mt. Somma-Vesuvius
volcano caldera (southern Italy) is provided.
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