有限状态机辨识的遗传模拟

Lamine Ngom, C. Baron, J. Geffroy
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引用次数: 9

摘要

识别方法(形式化的或基于仿真的)用于逻辑设计、测试或顺序学习。粗略地说,我们可以说,它们包括从给定顺序系统的行为的功能描述中推导出一个自动机模型。提出了一种基于遗传模拟的新型识别方法。第一部分根据从分析中提取的三个标准,对不同的已知识别方法进行综合统一分类。然后,分析了遗传模拟用于鉴定的潜力和兴趣,并提出了一种新的功能鉴定的遗传方法。最后,我们描述了一个计算实验来验证我们的想法和我们得到的结果。新的观点现在是广泛开放的,特别是关于设计,模拟和行为预测的增量和自适应系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Genetic simulation for finite state machine identification
Identification methods (formal or simulation based), are used for logical design, test or sequential learning. Roughly, we can say that they consist of deriving an automaton model of a given sequential system from a functional description of its behavior. We present a novel identification approach based on genetic simulation. The first section offers a synthetic unified classification of the different known identification methods according to three criteria that have been extracted from their analysis. Then, the potentiality and interest of genetic simulation for identification is analyzed and a new genetic approach for functional identification is presented. Lastly we describe a computational experiment we made to validate our idea and the results we obtained. New perspectives are wide open now, particularly concerning the design, simulation and behavioral prediction of incremental and adaptive systems.
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