Abstract

SUMMARY Self-consistent modelling of magmatic systems is challenging as the melt continuously changes its chemical composition upon crystallization, which may affect the mechanical behaviour of the system. Melt extraction and subsequent crystallization create new rocks while depleting the source region. As the chemistry of the source rocks changes locally due to melt extraction, new calculations of the stable phase assemblages are required to track the rock evolution and the accompanied change in density. As a consequence, a large number of isochemical sections of stable phase assemblages are required to study the evolution of magmatic systems in detail. As the state-of-the-art melting diagrams may depend on nine oxides as well as pressure and temperature, this is a 10-D computational problem. Since computing a single isochemical section (as a function of pressure and temperature) may take several hours, computing new sections of stable phase assemblages during an ongoing geodynamic simulation is currently computationally intractable. One strategy to avoid this problem is to pre-compute these stable phase assemblages and to create a comprehensive database as a hyperdimensional phase diagram, which contains all bulk compositions that may emerge during petro-thermomechanical simulations. Establishing such a database would require repeating geodynamic simulations many times while collecting all requested compositions that may occur during a typical simulation and continuously updating the database until no additional compositions are required. Here, we describe an alternative method that is better suited for implementation on large-scale parallel computers. Our method uses the entries of an existing preliminary database to estimate future required chemical compositions. Bulk compositions are determined within boundaries that are defined manually or through principal component analysis in a parameter space consisting of clustered database entries. We have implemented both methods within a massively parallel computational framework while utilizing the Gibbs free energy minimization program Perple_X. Results show that our autonomous approach increases the resolution of the thermodynamic database in compositional regions that are most likely required for geodynamic models of magmatic systems.

Highlights

  • The chemical evolution of magmatic systems within the continental crust is complex as their compositions change locally upon melt extraction

  • The sampling can be done by applying the different sampling techniques (M-CS or principal component analysis (PCA)-CS) either to the non-clustered initial bulk compositions (BCs) or to the clustered initial BC data set

  • An efficient method to generate a database of stable phase assemblages is crucial to investigate the chemical evolution of magmatic systems in petro-thermomechanical models

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Summary

Introduction

The chemical evolution of magmatic systems within the continental crust is complex as their compositions change locally upon melt extraction. Phase transitions caused by a change in pressure and/or temperature can be tracked by computing the stable phase assemblages for specific bulk compositions (BCs) over the entire possible P–T range. The effect of melt extraction on the local rock chemistry is more difficult to handle. Depending on the amount of extracted melt, the remaining residuum has different chemical and mineralogical compositions. For each of the modified chemical systems, new rock properties (density, solid and liquid fractions and their compositions) must be calculated by minimizing the Gibbs free energy. Thermodynamic melting models have evolved massively in recent years such that it has become feasible to realistically simulate melting and crystallization processes Thermodynamic melting models have evolved massively in recent years such that it has become feasible to realistically simulate melting and crystallization processes (e.g. Ghiorso & Sack 1995; Ghiorso et al 2002; Gualda et al 2012; White et al 2014; Jennings & Holland 2015; Green et al 2016; Holland et al 2018)

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