The Extended Fifth Law of Thermodynamics: Establishing Information as a Fundamental Physical Quantity

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Barack Ndenga

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Abstract

The classical laws of thermodynamics describe the evolution of energy, entropy, and equilibrium in physical systems, yet they do not explicitly treat information as a physical quantity with thermodynamic status. In this work, I propose the Extended Fifth Law of Thermodynamics, asserting that information acts as a fundamental physical variable governing organization, stability, and the direction of evolution in complex systems. I formalize this principle and introduce a quantity—organizational efficiency, denoted R—defined by the balance between information and entropy. I demonstrate how thisframework unifies phenomena across physics, biology, computation, and artificial intelligence. I develop the mathematical formulation of the law, analyze its implications for non-equilibrium systems, and show how it directly enables the construction of new computational models, including the R-Law AI framework. Examples from machine learning illustrate how information-entropy dynamics shape learning trajectories and structural coherence. I conclude by discussing the broader relevance of the Extended Fifth Law for understanding order formation, self-organization, and intelligence in natural and artificial systems.

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This work presents The Extended Fifth Law of Thermodynamics, a theoretical framework proposing information as a fundamental physical quantity governing organization, stability, and evolution in natural and artificial systems. The article develops the conceptual foundations of the law, its implications for non-equilibrium systems, and its relevance across physics, biology, complexity science, and artificial intelligence. I introduce the concept of organizational efficiency and demonstrate how the information–entropy balance explains the emergence of structure in both physical and computational models. This publication provides a unifiedperspective connecting thermodynamics, information theory, and modern machine learning.

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