Cosmological field-level inference requires differentiable forward models that solve the challenging dynamics of gas and dark matter under hydrodynamics and gravity. We propose a hybrid approach where gravitational forces are computed using a differentiable particle-mesh solver, while the hydrodynamics are parametrized by a neural network that maps local quantities to an effective pressure field. We demonstrate that our method improves upon alternative approaches, such as an Enthalpy Gradient Descent baseline, both at the field and summary-statistic level. The approach is furthermore highly data efficient, with a single reference simulation of cosmological structure formation being sufficient to constrain the neural pressure model. This opens the door for future applications where the model is fit directly to observational data, rather than a training set of simulations.
翻译:宇宙学场级推断需要可微分的正向模型,以求解在流体动力学和引力作用下气体与暗物质的复杂动力学行为。我们提出一种混合方法:引力通过可微分粒子网格求解器计算,而流体动力学则由一个神经网络参数化,该网络将局部物理量映射至有效压力场。我们证明,该方法在场级和统计摘要层面均优于替代方案(如焓梯度下降基准)。此外,该方法具有极高的数据效率,仅需单个宇宙学结构形成的参考模拟即可约束神经压力模型。这为未来直接基于观测数据(而非模拟训练集)拟合模型的应用开辟了道路。