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hyphy: Deep Generative Conditional Posterior Mapping of Hydrodynamical Physics

Benjamin Horowitz, Max Dornfest, Zarija Lukić, Peter Harrington

2022The Astrophysical Journal14 citationsDOIOpen Access PDF

Abstract

Abstract Generating large-volume hydrodynamical simulations for cosmological observables is a computationally demanding task necessary for next-generation observations. In this work, we construct a novel fully convolutional variational autoencoder (VAE) to synthesize hydrodynamic fields conditioned on dark matter fields from N -body simulations. After training the model on a single hydrodynamical simulation, we are able to probabilistically map new dark-matter-only simulations to corresponding full hydrodynamical outputs. By sampling over the latent space of our VAE, we can generate posterior samples and study the variance of the mapping. We find that our reconstructed field provides an accurate representation of the target hydrodynamical fields as well as reasonable variance estimates. This approach has promise for the rapid generation of mocks as well as for implementation in a full inverse model of observed data.

Topics & Concepts

PhysicsAutoencoderObservableRepresentation (politics)Statistical physicsPosterior probabilityVariance (accounting)Field (mathematics)Sampling (signal processing)AlgorithmComputer scienceDeep learningArtificial intelligenceBayesian probabilityMathematicsQuantum mechanicsOpticsPure mathematicsLawAccountingBusinessDetectorPoliticsPolitical scienceGalaxies: Formation, Evolution, PhenomenaComputational Physics and Python ApplicationsGaussian Processes and Bayesian Inference
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