Digitally Evolving Models for Dynamically Adaptive Systems

H. Goldsby, David B. Knoester, B. Cheng, P. McKinley, C. Ofria
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引用次数: 24

Abstract

Developing a Dynamically Adaptive System (DAS) requires a developer to identify viable target systems that can be adopted by the DAS at runtime in response to specific environmental conditions, while satisfying critical properties. This paper describes a preliminary investigation into using digital evolution to automatically generate models of viable target systems. In digital evolution, a population of self-replicating computer programs exists in a user-defined computational environment and is subject to instruction-level mutations and natural selection. These "digital organisms" have no built-in ability to generate a model - each population begins with a single organism that only has the ability to self-replicate. In a case study, we demonstrate that digital evolution can be used to evolve known state diagrams and to further evolve these diagrams to satisfy system critical properties. This result shows that digital evolution can be used to aid in the discovery of the viable target systems of a DAS.
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动态适应系统的数字进化模型
开发动态自适应系统(DAS)需要开发人员确定可行的目标系统,这些目标系统可以在运行时被DAS采用,以响应特定的环境条件,同时满足关键属性。本文介绍了利用数字进化自动生成可行目标系统模型的初步研究。在数字进化中,一群自我复制的计算机程序存在于用户定义的计算环境中,并受到指令级突变和自然选择的影响。这些“数字生物”没有产生模型的内在能力——每个种群都是从一个只有自我复制能力的单一生物开始的。在一个案例研究中,我们证明了数字进化可以用来进化已知的状态图,并进一步进化这些图以满足系统的关键属性。这一结果表明,数字进化可以用来帮助发现DAS的可行目标系统。
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