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Unsupervised Autoencoder-Based Feature Ranking and Anomaly Detection for Porphyry Copper Prospectivity Mapping from Multi-Source Geospatial Datasets

Saremi, Mobin; Hoseinzade, Zohre; Shirazy, Adel 1; Shirazi, Aref; Beiranvand Pour, Amin
1 Karlsruher Institut für Technologie (KIT)

Abstract:

The mineral system model formalizes the critical geological processes and mappable parameters that control ore formation, which can then be translated into spatial predictors used as input features in machine learning (ML)-based mineral prospectivity mapping (MPM). In most MPM studies, exploration evidence features are indeed derived from the mineral system model of the targeted deposit type. However, not all features produced in this way are necessarily informative or favorable for prospectivity analysis. This challenge can be addressed by using feature selection frameworks to identify the most relevant features before applying ML and deep learning (DL) algorithms for mathematical integration. To address this need, this study employs an unsupervised variational autoencoder (VAE) framework to evaluate and rank exploration evidence layers. The VAE quantifies feature importance through a systematic strategy that measures the sensitivity of reconstruction-error components, mean squared error (MSE), mean absolute error (MAE), and Kullback–Leibler (KL) divergence, to individual feature variations. In this way, the VAE ranks the exploration features and helps to identify those that are the most useful for prospectivity mapping. ... mehr


Verlagsausgabe §
DOI: 10.5445/IR/1000195049
Veröffentlicht am 07.07.2026
Cover der Publikation
Zugehörige Institution(en) am KIT Karlsruher Institut für Technologie (KIT)
Publikationstyp Zeitschriftenaufsatz
Publikationsjahr 2026
Sprache Englisch
Identifikator ISSN: 2075-163X
KITopen-ID: 1000195049
Erschienen in Minerals
Verlag MDPI
Band 16
Heft 6
Seiten Art.Nr: 660
Vorab online veröffentlicht am 22.06.2026
Schlagwörter porphyry copper prospectivity mapping; machine learning; variational autoencoder (VAE); unsupervised feature selection; deep learning; reconstruction error
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