Participatory Evolving Fuzzy Modeling

E. Lima, F. Gomide, R. Ballini
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引用次数: 38

Abstract

This paper introduces an approach to develop evolving fuzzy rule-based models based on the idea of participatory learning. Participatory learning is a means to learn and revise beliefs based on what is already known or believed. Participatory learning naturally induces unsupervised dynamic fuzzy clustering algorithms and provides an effective alternative construct evolving functional fuzzy models and adaptive fuzzy systems. Evolving participatory learning is used to forecast average weekly inflows for hydroelectric generation purposes and compared with eTS, an evolving modeling technique that uses the notion of potential to dynamically cluster data
参与式演化模糊模型
参与式学习是一种基于已知或相信的知识来学习和修正信念的方法。参与式学习自然地诱导出无监督动态模糊聚类算法,为构建演化功能模糊模型和自适应模糊系统提供了有效的替代方案。不断发展的参与式学习用于预测水力发电目的的平均每周流入,并与eTS进行比较,eTS是一种不断发展的建模技术,使用潜力的概念来动态聚类数据
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