首页> 外文会议>Mexican International Conference on Artificial Intelligence(MICAI 2007); 20071104-10; Aguascalientes(MX) >A Genetic Representation for Dynamic System Qualitative Models on Genetic Programming: A Gene Expression Programming Approach
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A Genetic Representation for Dynamic System Qualitative Models on Genetic Programming: A Gene Expression Programming Approach

机译:遗传规划中动态系统定性模型的遗传表示:一种基因表达编程方法

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In this work we design a genetic representation and its genetic operators to encode individuals for evolving Dynamic System Models in a Qualitative Differential Equation form, for System Identification. The representation proposed, can be implemented in almost every programming language without the need of complex data structures, this representation gives us the possibility to encode an individual whose phenotype is a Qualitative Differential Equation in QSIM representation. The Evolutionary Computation paradigm we propose for evolving structures like those found in the QSIM representation, is a variation of Genetic Programming called Gene Expression Programming. Our proposal represents an important variation in the multi-gene chromosome structure of Gene Expression Programming at the level of the gene codification structure. This gives us an efficient way of evolving QSIM Qualitative Differential Equations and the basis of an Evolutionary Computation approach to Qualitative System Identification.
机译:在这项工作中,我们设计了一个遗传表示及其遗传算子,以定性的微分方程形式对进化的动态系统模型进行编码,以进行系统识别。所提出的表示形式,几乎可以在每种编程语言中实现,而无需复杂的数据结构,这种表示形式使我们有可能在QSIM表示形式中对表型为定性微分方程的个人进行编码。我们为诸如QSIM表示中发现的结构之类的进化结构提出的进化计算范例是遗传编程的一种变体,称为基因表达编程。我们的建议代表了在基因编码结构水平上基因表达编程的多基因染色体结构的重要变化。这为我们提供了一种发展QSIM定性微分方程的有效方法,并且为定性系统识别的进化计算方法奠定了基础。

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