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Structured Vacuum Field Theory: The Constitutive Map

2026-07-08 · Zenodo (CERN European Organization for Nuclear Research)

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An AI research paper on Structured Vacuum Field Theory: The Constitutive Map.

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Chinese explanation / 中文解读

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Original abstract

A constitutive census of Structured Vacuum Field Theory. Working within SVFT's own kernel/operator mathematics and importing no general-relativistic or quantum-field-theoretic machinery, the paper audits node by node which of the framework's constants are fixed by its relations and which are genuinely free. It finds the coherence length derived (the Compton wavelength of the effective mass) conditional on one posited constitutive identification; relocates the residual freedom to exactly three dimensionless dials; demotes the long-carried closure relation to an identity; re-derives the inception threshold around the broken condensate; and grades the corpus's asserted order of determination. The result is a contingent landscape with a hard order: the admissible region and the sequence of determination are locked, the position within the region is not. The audit method is separable from the framework it audits; its portability to conventional physics is noted as a question for future work. Two corrections of record to prior papers are carried. The paper establishes what the framework's mathematics does and does not fix; it does not establish that the framework is correct. Adversarial review was conducted by two independent AI systems (Gemini, ChatGPT); Claude assisted derivation and verification. A reproducibility script accompanies the appendices.

5.0Engineering value
7.0Research novelty
4.0Business relevance

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