Constraints on Lema\^{\i}tre-Tolman-Bondi models from Observational Hubble Parameter data
Hao Wang, Tong-Jie Zhang

TL;DR
This paper uses observational Hubble parameter data to constrain Lemaître-Tolman-Bondi void models, highlighting the need for consistency checks and exploring future data's potential to distinguish models despite current limitations.
Contribution
It introduces a comprehensive analysis of LTB models using current and simulated OHD, emphasizing the importance of data consistency and future observational strategies.
Findings
Current OHD constraints are inconclusive due to small dataset size.
Future OHD data can significantly improve model constraints with sufficient quantity and precision.
Different datasets may favor different void models, potentially leading to observable inconsistencies.
Abstract
We use the observational Hubble parameter data (OHD), both the latest observational dataset (Stern et al. 2010, referred to as SJVKS) and the simulated datasets, to constrain Lema\^{\i}tre-Tolman-Bondi (LTB) void models. The necessity of the consistency check on OHD itself in the LTB cosmology is stressed. Three voids are chosen as test models and are constrained using the Union2 dataset of SN Ia as well as OHD. Despite their different parametrization, the results from our test models show some indicating similarities, e.g., the best-fit voids obtained from OHD are all considerably broader than those from SN Ia. Due to the small size of the SJVKS dataset, the constraints are not conclusive. The constraining power of the future OHD observations are therefore investigated, through a Figure of Merit (FoM) analysis based on the Monte Carlo simulated data. We found that, in the case that the…
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