论文标题
测试和模拟宇宙学量表的重力
Testing and Emulating Modified Gravity on Cosmological Scales
论文作者
论文摘要
本文介绍了一组使用星系簇测试修饰重力模型的方法。特别是,引入了一种用变色龙筛选来约束模型的技术。此外,概述的技术被扩展以测试更广泛的模型,例如新兴引力理论。最后,论文的第一部分是通过调整上述模型独立约束测试来结束的。获得的结果表明,可以使用星系簇来获得宇宙学量表上一些最强大的约束。 论文的第二部分致力于宇宙学模拟器的主题。更具体地说,引入了基于机器学习的宇宙学N体型仿真输出数据的技术。生成对抗网络(GAN)用于模拟仅暗物质以及流体动力学模拟数据。另外,还探索了N体修饰的重力模拟。对GAN算法的提出的研究表明,这种模拟器提供了一种具有不同宇宙学参数的模拟输出数据的强大,快速和有效的方法。功率谱分析表明,根据所使用的数据集以及是否应用高斯平滑,训练和生成的数据之间的差异为1-20%。
This thesis introduces a set of methods for testing models of modified gravity using galaxy clusters. In particular, a technique for constraining models with a chameleon screening is introduced. In addition, the outlined technique is expanded to test a wider class of models, such as the theory of emergent gravity. Finally, the first part of the thesis is concluded by adapting the mentioned tests for model independent constraints. The obtained results indicate that galaxy clusters can be used to obtain some of the most powerful constraints on cosmological scales. The second part of the thesis is dedicated to the topic of cosmological emulators. More specifically, a technique of emulating cosmological N-body simulation output data based on machine learning is introduced. Generative adversarial networks (GANs) are used to emulate dark matter-only as well as hydrodynamical simulation data. In addition, N-body modified gravity simulations are explored as well. The presented investigation of the GAN algorithm shows that such emulators offer a powerful, fast and efficient way of producing simulation output data with different cosmological parameters. The power spectrum analysis indicates a 1-20% difference between the training and the generated data depending on the dataset used and whether Gaussian smoothing is applied or not.