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首页> 外文期刊>LIPIcs : Leibniz International Proceedings in Informatics >A Local Stochastic Algorithm for Separation in Heterogeneous Self-Organizing Particle Systems
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A Local Stochastic Algorithm for Separation in Heterogeneous Self-Organizing Particle Systems

机译:异质自组织粒子系统中的局部随机分离算法

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We present and rigorously analyze the behavior of a distributed, stochastic algorithm for separation and integration in self-organizing particle systems, an abstraction of programmable matter. Such systems are composed of individual computational particles with limited memory, strictly local communication abilities, and modest computational power. We consider heterogeneous particle systems of two different colors and prove that these systems can collectively separate into different color classes or integrate, indifferent to color. We accomplish both behaviors with the same fully distributed, local, stochastic algorithm. Achieving separation or integration depends only on a single global parameter determining whether particles prefer to be next to other particles of the same color or not; this parameter is meant to represent external, environmental influences on the particle system. The algorithm is a generalization of a previous distributed, stochastic algorithm for compression (PODC '16) that can be viewed as a special case of separation where all particles have the same color. It is significantly more challenging to prove that the desired behavior is achieved in the heterogeneous setting, however, even in the bichromatic case we focus on. This requires combining several new techniques, including the cluster expansion from statistical physics, a new variant of the bridging argument of Miracle, Pascoe and Randall (RANDOM '11), the high-temperature expansion of the Ising model, and careful probabilistic arguments.
机译:我们提出并严格地分析了用于自组织粒子系统(一种可编程物质的抽象)中的分离和集成的一种分布式,随机算法的行为。这样的系统由具有有限内存,严格本地通信能力和适度计算能力的各个计算粒子组成。我们考虑了两种不同颜色的异质粒子系统,并证明了这些系统可以集体分离为不同的颜色类别或整合,而对颜色无所谓。我们使用相同的完全分布式,本地,随机算法来完成这两种行为。实现分离或积分仅取决于单个全局参数,该参数确定粒子是否更喜欢与相同颜色的其他粒子相邻。此参数旨在表示对粒子系统的外部,环境影响。该算法是对先前的分布式随机压缩算法(PODC '16)的概括,可以将其视为所有颗粒具有相同颜色的特殊分离情况。证明在异构环境中实现了所需的行为要更具挑战性,但是,即使在我们关注的双色情况下,也是如此。这需要结合多种新技术,包括统计物理学的聚类扩展,Miracle,Pascoe和Randall(RANDOM '11)的桥接论证的新变体,伊辛模型的高温扩展以及谨慎的概率论证。

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