EL Science: Unified Master Framework (Edition 3) is the canonical reference of the EL Science cosmological program. This edition consolidates the observational dark-energy sector, gravitational sector, falsification program, and autonomous cyclic-closure framework into a single unified record. It supersedes previous unified editions and collected-volume compilations while preserving the distinction between observationally tested results and exploratory cyclic cosmology. The framework is organized into two evidence tiers. Tier 1 develops a nonlinear dynamic-vacuum cosmology in which dark energy emerges from memory-bearing vacuum dynamics and is confronted with observational data including DESI DR2 BAO measurements, cosmic chronometers, redshift-space growth data, Planck CMB constraints, and Big-Bang nucleosynthesis consistency tests. Within its stated assumptions, this sector provides a quantitative and falsifiable late-time cosmology. Tier 2 explores a long-term cyclic picture of cosmic evolution involving vacuum deterioration, hierarchical reconvergence, runaway compression, confinement dynamics, and memory-bearing rebirth. This sector is presented as an effective dynamical demonstration of autonomous cyclic closure rather than a validated physical theory. Edition 3 integrates four companion works: the decisive Planck 2018 CMB likelihood result, the Big-Bang nucleosynthesis consistency analysis, the action-principle research program, and the DESI DR3 forecast framework. These additions close major observational tests while identifying the remaining open frontiers, including microphysical derivation, action-principle construction, and future observational discrimination. This work is released as an independent research contribution and serves as the definitive EL Science reference document as of Edition 3.
Building similarity graph...
Analyzing shared references across papers
Loading...
EL Tauk
Building similarity graph...
Analyzing shared references across papers
Loading...
EL Tauk (Thu,) studied this question.
synapsesocial.com/papers/6a23bbeb71a5da9775e7740b — DOI: https://doi.org/10.5281/zenodo.20543252