LGGNApr 29, 2025

A Hamiltonian Higher-Order Elasticity Framework for Dynamic Diagnostics(2HOED)

arXiv:2504.21062v1h-index: 2
Originality Incremental advance
AI Analysis

This provides a new causal energetic channel for economists, physicians, and scientists to analyze adaptation and shocks in complex systems, though it appears incremental as it builds on existing concepts like Hamiltonians and elasticity.

The paper tackles the problem of analyzing complex systems by developing the Hamiltonian Higher Order Elasticity Dynamics (2HOED) framework, which integrates classical mechanics with economic elasticity terms to model systems as energy-based Hamiltonians, enabling diagnostics of resilience, tipping points, and feedback loops across disciplines like economics and climate science.

Machine learning detects patterns, block chain guarantees trust and immutability, and modern causal inference identifies directional linkages, yet none alone exposes the full energetic anatomy of complex systems; the Hamiltonian Higher Order Elasticity Dynamics(2HOED) framework bridges these gaps. Grounded in classical mechanics but extended to Economics order elasticity terms, 2HOED represents economic, social, and physical systems as energy-based Hamiltonians whose position, velocity, acceleration, and jerk of elasticity jointly determine systemic power, Inertia, policy sensitivity, and marginal responses. Because the formalism is scaling free and coordinate agnostic, it transfers seamlessly from financial markets to climate science, from supply chain logistics to epidemiology, thus any discipline in which adaptation and shocks coexist. By embedding standard econometric variables inside a Hamiltonian, 2HOED enriches conventional economic analysis with rigorous diagnostics of resilience, tipping points, and feedback loops, revealing failure modes invisible to linear models. Wavelet spectra, phase space attractors, and topological persistence diagrams derived from 2HOED expose multistage policy leverage that machine learning detects only empirically and block chain secures only after the fact. For economists, physicians and other scientists, the method opens a new causal energetic channel linking biological or mechanical elasticity to macro level outcomes. Portable, interpretable, and computationally light, 2HOED turns data streams into dynamical energy maps, empowering decision makers to anticipate crises, design adaptive policies, and engineer robust systems delivering the predictive punch of AI with the explanatory clarity of physics.

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