Implementation of Lenia as a Reaction-Diffusion System

Hiroki Kojima, Takashi Ikegami
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Abstract

The relationship between reaction-diffusion (RD) systems, characterized by continuous spatiotemporal states, and cellular automata (CA), marked by discrete spatiotemporal states, remains poorly understood. This paper delves into this relationship through an examination of a recently developed CA known as Lenia. We demonstrate that asymptotic Lenia, a variant of Lenia, can be comprehensively described by differential equations, and, unlike the original Lenia, it is independent of time-step ticks. Further, we establish that this formulation is mathematically equivalent to a generalization of the kernel-based Turing model (KT model). Stemming from these insights, we establish that asymptotic Lenia can be replicated by an RD system composed solely of diffusion and spatially local reaction terms, resulting in the simulated asymptotic Lenia based on an RD system, or "RD Lenia". However, our RD Lenia cannot be construed as a chemical system since the reaction term fails to satisfy mass-action kinetics.
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Lenia作为反应扩散系统的实现
以连续时空状态为特征的反应扩散系统(RD)与以离散时空状态为特征的元胞自动机(CA)之间的关系仍然知之甚少。本文通过对最近开发的称为Lenia的CA的检查来深入研究这种关系。我们证明了渐近的Lenia, Lenia的一个变体,可以用微分方程全面地描述,并且与原始的Lenia不同,它与时间步跳无关。此外,我们建立了该公式在数学上等同于基于核的图灵模型(KT模型)的推广。基于这些见解,我们建立了渐近Lenia可以被仅由扩散和空间局部反应项组成的RD系统复制,从而产生基于RD系统的模拟渐近Lenia,或“RD Lenia”。然而,我们的rd Lenia不能被解释为一个化学系统,因为反应项不满足质量作用动力学。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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