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arxiv: 2003.02859 · v3 · pith:SIB2X3XSnew · submitted 2020-03-05 · ✦ hep-ph

PhaseTracer: tracing cosmological phases and calculating transition properties

classification ✦ hep-ph
keywords phasetracercosmologicalgenerateminimaphasespotentialtheytransitions
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We present a C++ software package called PhaseTracer for mapping out cosmological phases, and potential transitions between them, for Standard Model extensions with any number of scalar fields. PhaseTracer traces the minima of effective potential as the temperature changes, and then calculates the critical temperatures, at which the minima are degenerate. PhaseTracer is constructed with modularity, flexibility and practicality in mind. It is fast and stable, and can receive potentials provided by other packages such as FlexibleSUSY. PhaseTracer can be useful analysing cosmological phase transitions which played an important role in the very early evolution of the Universe. If they were first order they could generate detectable gravitational waves and/or trigger electroweak baryogenesis to generate the observed matter anti-matter asymmetry of the Universe. The code can be obtained from https://github.com/PhaseTracer/PhaseTracer.

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