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DATA DIMENSIONALITY REDUCTION BY GENETIC ALGORITHMS DATA MINING

机译:遗传算法减少数据维度

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Power quality monitors handle and store several gigabytes of data within a week and hence automatic detection, recognition and analysis of power disturbances require robust data mining techniques. Literature reveals that much work has been done to evolve several feature extraction and subsequent classification techniques for accurate power disturbance pattern recognition. However, the features extracted have been rarely evaluated for their usefulness. Classification fusion combines multiple classifications of data into a single classification solution of greater accuracy. Feature extraction aims to reduce the computational cost of feature measurement, increase classifier efficiency, and allow greater classification accuracy based on the process of deriving new features from the original features.
机译:电能质量监控器在一周内处理和存储数GB的数据,因此,自动检测,识别和分析电能干扰需要强大的数据挖掘技术。文献表明,已经进行了许多工作来发展几种特征提取和随后的分类技术,以进行准确的电源干扰模式识别。但是,很少对提取出的特征进行有用性评估。分类融合将数据的多个分类组合到一个具有更高准确性的单个分类解决方案中。特征提取旨在降低特征量度的计算成本,提高分类器效率,并基于从原始特征中派生新特征的过程来提高分类精度。

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