自组织系统的建模与应用

R. Holzer, H. Meer
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引用次数: 3

摘要

本教程概述了复杂和自组织系统的数学建模方法。建模可以用于现有系统的分析和优化以及新系统的设计和工程。在本教程中,我们将建模方法分为宏观级建模和微观级建模。通过使用微观级模型,必须指定系统中所有实体的行为以及这些实体之间的交互。这种模型的状态空间是每个实体的状态空间的笛卡尔积。对于宏观级,许多微观级状态聚合为单个宏观级状态。宏观级模型只描述感兴趣的变量的行为。建模方法的另一种分类是时间空间:时间的推进可以是离散的,也可以是连续的。本教程简要介绍了一些建模方法(如马尔可夫链、元胞自动机、递归方程、微分方程),并讨论了它们在自组织系统的分析、优化、设计和工程中的可能性。在一些用例中演示了建模方法的适用性。
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Modeling and Application of Self-Organizing Systems
This tutorial gives an overview about mathematical modeling methods for complex and self-organizing systems. Modeling can be used for the analysis and optimization of existing systems and for the design and engineering of new systems. In this tutorial we classify modeling methods into macro-level modeling and micro-level modeling. By using a micro-level model, the behaviors of all entities of the system and the interactions between these entities have to be specified. The state space of such a model is the Cartesian product of the state spaces of each entity. For a macro level, many micro-level states are aggregated into a single macro-level state. The macro level model describes only the behavior of the variables of interest. Another classification for modeling methods is the time space: The advance of time can either be modeled discrete or continuous. This tutorial contains short introductions to some modeling methods (e.g. Markov chains, cellular automata, recurrence equations, differential equations) and a discussion about their possibilities for analysis, optimization, design and engineering of self-organizing systems. The applicability of the modeling methods are demonstrated in some use cases.
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