This manuscript establishes the microscopic dynamics (Phase B) of the Information-Topological Register Model. Building upon the macroscopic derivation of gravity, mass-energy equivalence, and the Schwarzschild metric (Works 1-3), this paper resolves the conceptual conflict between continuous classical kinematic forces and the discrete quantum probability current. By formalizing physical matter as an objective, phase-encoded information amplitude within a 1D topological lattice, this framework moves beyond the epistemic limitations of the Copenhagen interpretation, aligning with an advanced, deterministically derivable formulation of pilot-wave dynamics. Key Derivations and Theoretical Milestones: • Phase-Encoded Kinematics: We demonstrate that the topological register does not operate via classical Newtonian forces (F=ma), but executes spatial address updates via phase-gradient descent: ∇ Im (ln Ψ). • The Topological Guidance Equation: We derive the exact dynamical law for multiparticle states. The quantum mechanical momentum is redefined as an emergent, guided vector field, deterministically regulated by a topological correlation scalar. • The Decoherence Limit: The model smoothly recovers classical, local field theory. As topological entanglement collapses (η → 0), the guidance momentum decays exponentially beyond the system's intrinsic coherence length. • Deterministic Resolution of the EPR Paradox: The framework provides a rigorous geometric solution to quantum non-locality. We analytically prove that at extreme entanglement (η → 1), the geometric distance parameter (dgeo) is mathematically annihilated from the dynamic equation. The "spooky action at a distance" is thus explained not as a physical anomaly, but as a systematic geometric requirement of the 1D information-topological background manifold. This paper formally concludes the synthesis of Information Topology and modern physics, providing an analytic bridge between local macroscopic isolation and non-local microscopic entanglement.
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Nicolas Köllmer
University of Applied Sciences Erfurt
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Nicolas Köllmer (Wed,) studied this question.
www.synapsesocial.com/papers/69fd7fa1bfa21ec5bbf081d6 — DOI: https://doi.org/10.5281/zenodo.20052941
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