We propose a novel theoretical framework in which energy is generalized to a bicomplex quantity, significantly extending previous formalisms that treated energy as a complex number. In this bicomplex approach, energy comprises two distinct imaginary components arranged orthogonally, providing a richer algebraic structure. By carefully defining arithmetic operations within this bicomplex space, we demonstrate that division naturally introduces a geometric scaling factor identified explicitly as the fine-structure constant α. The emergence of α within this algebraic structure provides new insights into its fundamental geometric interpretation and underscores its role as a universal scaling factor connecting quantum-scale interactions to larger-scale phenomena. We present rigorous algebraic derivations and systematically define the arithmetic rules governing bicomplex quantities. Additionally, we clarify how these algebraic properties facilitate novel connections across various domains, including quantum mechanics, holographic theories, and theoretical physics frameworks aimed at unification. Specifically, the introduction of bicomplex energy allows us to interpret quantum mechanical processes and holographic projections in a unified mathematical context, offering fresh perspectives on longstanding theoretical challenges. The proposed framework not only deepens theoretical understanding but also generates experimentally testable predictions. These include unique signatures that could manifest in high-precision quantum electrodynamics experiments, as well as potential observable effects in advanced holographic or quantum-gravity-inspired setups. The framework invites further exploration into how higher-dimensional algebraic structures might underlie physical constants and fundamental interactions, providing a robust mathematical foundation for future theoretical and experimental investigations.
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Bhushan Poojary
NIMS University
American Journal of Theoretical and Applied Statistics
NIMS University
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Bhushan Poojary (Mon,) studied this question.
synapsesocial.com/papers/68af50a1ad7bf08b1ead8a9e — DOI: https://doi.org/10.11648/j.ajtas.20251404.14