The Lumina Project: CMB Optical Depth Fluctuations from Patchy Reionization
Aaron Smith (1), Oliver Zier (2), Rahul Kannan (3), Xuejian Shen (4), Rongrong Liu (2), Mark Vogelsberger (4), Volker Springel (5), Ruediger Pakmor (5), Sonja M. Koehler (2), Lars Hernquist (2), Meredith Neyer (4) ((1) UT Dallas, (2) CfA, (3) York, (4) MIT, (5) MPA)

TL;DR
This study uses advanced simulations to analyze how patchy reionization affects CMB optical depth fluctuations, emphasizing the importance of light-cone integration and mass-weighted fractions for accurate modeling.
Contribution
It demonstrates that light-cone integration and mass-weighted electron fractions are crucial for precise CMB optical depth predictions during reionization.
Findings
Sightline-averaged optical depth exceeds global volume-weighted estimates by about 7%.
Optical depth fluctuations are non-Gaussian with over 5% sightline-to-sightline scatter.
Smoothing ionization fields on large scales biases optical depth estimates low.
Abstract
Patchy reionization couples the ionized-bubble morphology to the underlying density field, making the CMB Thomson optical depth sensitive to both the global ionization history and anisotropic fluctuations on the sky. Using the large-volume radiation-hydrodynamical Lumina simulation, we compute in two ways: (i) from global volume- and mass-weighted ionization histories, and (ii) from explicit line-of-sight integrations through on-the-fly light cones. We find that the sightline-averaged optical depth in the light cone, , exceeds the value inferred from a global volume-weighted history, , by . This enhancement is largely captured by the global mass-weighted prediction, , indicating that precision comparisons to CMB optical-depth constraints should use…
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