人工免疫系统驱动的群体化学进化

Nicola Capodieci, E. Hart, Giacomo Cabri
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引用次数: 7

摘要

形态发生工程代表了一个有趣的领域,在这个领域中,可以测试模型、框架和算法,以研究自我属性和紧急行为如何在潜在的复杂和分布式系统中出现。在这个领域,我们将提到的形态发生模型是群体化学,因为在这个动态过程中,一个众所周知的挑战是发现在粒子凝聚系统中提供进化的机制。这些系统由一组移动的粒子组成,这些粒子能够自组织,以创造出对外部扰动具有鲁棒性的形状或几何形状。我们提出了一种新的机制来提供群体化学的进化特征,该机制从人工免疫系统文献中获得灵感,更具体地说是关于独特型网络。从一组有限的化学配方开始,我们展示了系统进化到新的状态,使用一种自主的方法来检测新的形状和行为,而不受任何人类的影响。
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Artificial Immune System Driven Evolution in Swarm Chemistry
Morphogenetic engineering represents an interesting field in which models, frameworks and algorithms can be tested in order to study how self-* properties and emergent behaviours can arise in potentially complex and distributed systems. In this field, the morphogenetic model we will refer to is swarm chemistry, since a well known challenge in this dynamical process concerns discovering mechanisms for providing evolution within coalescing systems of particles. These systems consist in sets of moving particles able to self-organise in order to create shapes or geometrical formations that provide robustness towards external perturbations. We present a novel mechanism for providing evolutionary features in swarm chemistry that takes inspiration from artificial immune system literature, more specifically regarding idiotypic networks. Starting from a restricted set of chemical recipes, we show that the system evolves to new states, using an autonomous method of detecting new shapes and behaviours free from any human interaction.
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