基于Numba加速的二维扩散限制聚集:实现与分形表征 / Numba-Accelerated 2D Diffusion-Limited Aggregation: Implementation and Fractal Characterization
1️⃣ 一句话总结
本研究开发了一个高性能的Python框架来模拟二维扩散限制聚集过程,发现聚集体的分形结构会随着粒子浓度从疏松到密集而发生显著变化,从典型的分形生长转变为更致密的生长模式。
We present dla-ideal-solver, a high-performance framework for simulating two-dimensional Diffusion-Limited Aggregation (DLA) using Numba-accelerated Python. By leveraging just-in-time (JIT) compilation, we achieve computational throughput comparable to legacy static implementations while retaining high-level flexibility. We investigate the Laplacian growth instability across varying injection geometries and walker concentrations. Our analysis confirms the robustness of the standard fractal dimension $D_f \approx 1.71$ for dilute regimes, consistent with the Witten-Sander universality class. However, we report a distinct crossover to Eden-like compact growth ($D_f \approx 1.87$) in high-density environments, attributed to the saturation of the screening length. Beyond standard mass-radius scaling, we employ generalized Rényi dimensions and lacunarity metrics to quantify the monofractal character and spatial heterogeneity of the aggregates. This work establishes a reproducible, open-source testbed for exploring phase transitions in non-equilibrium statistical mechanics.
基于Numba加速的二维扩散限制聚集:实现与分形表征 / Numba-Accelerated 2D Diffusion-Limited Aggregation: Implementation and Fractal Characterization
本研究开发了一个高性能的Python框架来模拟二维扩散限制聚集过程,发现聚集体的分形结构会随着粒子浓度从疏松到密集而发生显著变化,从典型的分形生长转变为更致密的生长模式。
源自 arXiv: 2601.15440