Powerful evidences for supporting the claim that gamma-ray burst redshifts are gravity-generated
Fu-Gao Song

TL;DR
This paper presents nine strong evidences supporting the idea that gamma-ray burst redshifts are caused by gravity, specifically from neutron star mergers, challenging the conventional cosmological interpretation.
Contribution
It provides direct observational evidence that gamma-ray burst redshifts are gravitational in origin, not cosmological, based on spectral analysis and statistical distribution laws.
Findings
114 GRB redshifts follow the same distribution law with less than 1.5% error.
74 spectral lines show a precise relation between gravitational and Doppler redshifts.
Nine decisive evidences support gravity as the redshift source in GRBs.
Abstract
At present, it is widely believed that the phenomenon of the gamma-ray burst redshift is cosmological origin. From a theoretical point of view, this redshift has either a cosmological or a cause that is related to gravity. However, the question of whether the gamma-ray burst redshift has a cosmological origin or not should be answerable in no uncertain terms because both the spectrum characteristics and the count distribution law arising from the two distinct settings are completely different. If the redshift of GRB is generated by gravity, then the afterglow spectrum will certainly contain both the gravitational redshits (containing emission and absorption feature) and Doppler absorption redshift, and hold a definite relation between the two redshifts. In this paper, we present nine direct and decisive evidences to show that the gamma-ray burst redshift is indeed generated by gravity…
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Taxonomy
TopicsGamma-ray bursts and supernovae · Astro and Planetary Science · Statistical and numerical algorithms
