This work introduces global relaxation as a distinct dynamical layer governing the finite-time closure of global coherence into a single realized physical world. While standard physical theories accurately describe local dynamics within an already realized spacetime, they implicitly assume global coherence as a given. The present framework addresses this missing level by treating global realization itself as a physical process with measurable timescales. Using independent evidence from terrestrial atomic clock networks, the paper identifies a persistent ultra–low–frequency residual corresponding to a characteristic timescale of approximately 373.36 days. This timescale cannot be eliminated by local clock corrections or ensemble averaging and is interpreted as an elementary global relaxation cycle rather than a periodic signal. A corresponding global coherence length of approximately 1.022 light-years is defined as a causal, not geometric, scale. A minimal first-order relaxation law is formulated to describe the monotonic decay of realizational incoherence, introducing a global closure rate without modifying local gravitational or quantum dynamics. For extended systems, effective coherence lengths arise from the accumulation of many elementary cycles. The framework is applied to dissociative galaxy cluster mergers, where persistent offsets between baryonic matter and gravitational lensing structures are interpreted as projections of delayed global closure. The resulting effective coherence lengths, of order 100–1000 megaparsecs, are consistent with observations without invoking additional matter components or modified local gravity. Global relaxation thus provides a minimal, empirically motivated organizational principle operating above local dynamics and below purely kinematical assumptions, while preserving established physical theories.
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Luka Gluvić (Sat,) studied this question.
www.synapsesocial.com/papers/699ba07072792ae9fd8700fa — DOI: https://doi.org/10.5281/zenodo.18723871
Luka Gluvić
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