Balancing Centralized Learning and Distributed Self-Organization: A Hybrid Model for Embodied Morphogenesis
Abstract
We investigate how to couple a learnable brain-like'' controller to a cell-like'' Gray--Scott substrate to steer pattern formation with minimal effort. A compact convolutional policy is embedded in a differentiable PyTorch reaction--diffusion simulator, producing spatially smooth, bounded modulations of the feed and kill parameters (, ) under a warm--hold--decay gain schedule. Training optimizes Turing-band spectral targets (FFT-based) while penalizing control effort () and instability. We compare three regimes: pure reaction--diffusion, NN-dominant, and a hybrid coupling. The hybrid achieves reliable, fast formation of target textures: 100% strict convergence in steps, matching cell-only spectral selectivity (0.436 vs.\ 0.434) while using less effort and less power than NN-dominant control. An amplitude sweep reveals a non-monotonic Goldilocks'' zone (--) that yields 100\% quasi convergence in 94--96 steps, whereas weaker or stronger gains fail to converge or degrade selectivity. These results quantify morphological computation: the controller seeds then cedes,'' providing brief, sparse nudges that place the system in the correct basin of attraction, after which local physics maintains the pattern. The study offers a practical recipe for building steerable, robust, and energy-efficient embodied systems that exploit an optimal division of labor between centralized learning and distributed self-organization.
Cite
@article{arxiv.2511.10101,
title = {Balancing Centralized Learning and Distributed Self-Organization: A Hybrid Model for Embodied Morphogenesis},
author = {Takehiro Ishikawa},
journal= {arXiv preprint arXiv:2511.10101},
year = {2025}
}