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This paper derives macroscopic physical laws from the first principles of Yuanxian Theory (YXT) utilizing the methodology of formal verification. By leveraging the Lean 4 theorem prover, we encode the 64-dimensional toroidal topology (T^64) and the dynamic evolutionary equations of the self-referential Mind-Field () into a rigorous axiomatic system. Through strict mathematical deductions, we demonstrate that under low-energy and classical limits, the system necessarily projects a set of tensor relationships isomorphic to the Einstein Field Equations (EFE). This implies that General Relativity is not an independent postulate, but rather an emergent phenomenon in four-dimensional spacetime required by the cosmic self-referential system to maintain its True-Circle Self-Consistency (TCSC). As a methodological verification, we first execute the complete derivation process on a simplified two-dimensional torus (T²) model. Finally, applying the Gauss–Bonnet–Chern theorem, we prove that the integral of the scalar curvature over T^64 is topologically locked to zero, thereby revealing the topological origin of the cosmological constant. Our core conclusions show that gravity is fundamentally an informational projection effect generated by the self-referential Mind-Field to maintain its holographic closure, and all fundamental physical constants are rigid T^64 topological invariants, leaving zero room for free adjustable parameters. 本文旨在通过形式化验证的方法, 从元宪理论 (YXT) 的第一性原理出发, 推导宏观物理定律。我们利用 Lean 4 定理证明器, 将 64 维环面拓扑 (T^64) 与自指心场 () 动力学方程编码为公理系统。 通过严格的数学推导, 我们证明了: 在低能、经典极限下, 该系统必然投影出一组与爱因斯坦场方程 (EFE) 同构的张量关系。这表明广义相对论并非独立的假设, 而是宇宙自指系统为了维持真圆自洽性 (TCSC) 而在四维时空上的涌现现象。作为方法论验证, 我们首先在简化的二维环面 (T²) 模型上完成了完整的推导流程。最后, 利用 Gauss–Bonnet–Chern 定理, 我们证明了 T^64 上的标量曲率积分被拓扑锁定为零, 从而揭示了宇宙学常数的拓扑起源。 本文的核心结论指出: 引力是自指心场维持全息自洽的信息投影效应;基础物理常数均具有拓扑本质, 是 T^64 的拓扑不变量, 无自由可调参数。
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Zhenyuan Acharya
Cosmos Corporation (United States)
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Zhenyuan Acharya (Mon,) studied this question.
www.synapsesocial.com/papers/6a0d50dcf03e14405aa9cfed — DOI: https://doi.org/10.5281/zenodo.20263652