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基于S-粗集的遗传控制 被引量:2

Heredity-control based on S-rough sets
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摘要 S-粗集具有动态特征、遗传特征、记忆特征,基于S-粗集的这些特征与控制科学进行学科渗透,给出遗传控制的讨论,利用属性预测模型给出遗传控制的预测分析,并给出一个实际的例子,通过仿真与真实数据对比,结果与实际相符。遗传控制是S-粗集与传统控制理论相结合的产物,是一个全新的研究方向。 S-rough sets has dynamic characteristic,heredity characteristic and memory characteristic.Pervading these characteristics of S-rough sets to control science,the discussion about heredity-control is given,and the forecast analysis of heredity-control is given by using the attribute forecast model.By employing an actual example,comparing emulational data to real data,the result is unanimous with the fact.Heredity-control is an outcome gotten by the combining of S-rough sets and traditional control theory, and it's a new research direction.
出处 《计算机工程与应用》 CSCD 北大核心 2009年第15期216-218,共3页 Computer Engineering and Applications
基金 福建省教育厅A类科技项目No.JA07176 福建省教育厅B类科技项目No.JB06170~~
关键词 S-粗集 系统控制属性 遗传控制 控制属性预测模型 S-rough sets system control attribute heredity-control attribute forecast model
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参考文献6

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