Insights on Source Lithology and Pressure‐Temperature Conditions of Basalt Generation Using Machine Learning
Lilu Cheng,
Zongfeng Yang,
Fidel Costa
Abstract:Identifying the origin and conditions of basalt generation is a crucial yet formidable task. To tackle this challenge, we introduce an innovative approach leveraging machine learning. Our methodology relies on a comprehensive database of approximately one thousand major element concentrations derived from glass samples generated through experiments encompassing a wide range of source lithologies, pressure (from 0.28 to 20 GPa) and temperature (850–2100°C). We first applied the XGBoost classification models to … Show more
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