基于机器学习方法的降压变换器电压预测

M. Kocaleva, Z. Zlatev, N. Hinov
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引用次数: 0

摘要

机器学习是人工智能的一部分,也是一种分析数据的方法,这种方法可以将分析模型的构建转换为自动操作。它的目的是建议系统可以自己从材料中学习,识别模式,并在很少或没有人类帮助的情况下建立决策。本文将机器学习视为一种基于预定义方程作为模型,教计算机从经验或直接从数据中学习的过程。我们使用PERTree、M5P、RandomTree和RandomForest四种决策树作为机器学习方法进行数据集分类。首先,我们给出buck变换器的方程作为模型,然后我们教计算机自己进行预测。Buck DC-DC变换器通过变压器降低电压,因此输出电压总是小于或等于输入电压。其次,介绍了数据库和WEKA软件的获取方法。WEKA与。Arff文件格式,因此我们首先将数据库转换为所需的格式。然后给出并讨论了使用不同类型的分类所得到的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Voltage Prediction of a Buck Converter Using Machine Learning Approaches
Machine learning is a part of artificial intelligence and a method of analyzing data that convert to automatic operations the building of analytical models. It is aimed on the proposal that systems can learn from materials on their own, identify patterns, and build decisions with little or no human assistance. The paper reviews the machine learning as a process for teaching computers to learn from experience or directly from data, based on a predefined equation as a model. We used four types of decision tree as machine learning methods for data set classification, such as PERTree, M5P, RandomTree and RandomForest. First, we give the equations for buck converter as a model, then we teach the computer to make predictions by his own. The Buck DC-DC converter decrease voltage by using a transformer, so the output voltage is always less than or equal to the input voltage. Second, the way we gain the database and WEKA software are described. WEKA operate with.arff file format, so we first convert our database in the required format. Then we present and discuss the results obtained using different types of classification.
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