A Big Data Framework for Electric Power Data Quality Assessment

He Liu, Fupeng Huang, Han Li, Weiwei Liu, Tongxun Wang
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引用次数: 18

Abstract

Since a low-quality data may influence the effectiveness and reliability of applications, data quality is required to be guaranteed. Data quality assessment is considered as the foundation of the promotion of data quality, so it is essential to access the data quality before any other data related activities. In the electric power industry, more and more electric power data is continuously accumulated, and many electric power applications have been developed based on these data. In China, the power grid has many special characteristic, traditional big data assessment frameworks cannot be directly applied. Therefore, a big data framework for electric power data quality assessment is proposed. Based on big data techniques, the framework can accumulate both the real-time data and the history data, provide an integrated computation environment for electric power big data assessment, and support the storage of different types of data.
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电力数据质量评估的大数据框架
由于低质量的数据可能会影响应用的有效性和可靠性,因此需要保证数据质量。数据质量评估被认为是提升数据质量的基础,因此,在开展任何与数据相关的活动之前,首先要了解数据质量。在电力工业中,不断积累的电力数据越来越多,基于这些数据开发了许多电力应用。在中国,电网有许多特殊的特点,传统的大数据评估框架不能直接应用。为此,提出了电力数据质量评估的大数据框架。该框架基于大数据技术,能够积累实时数据和历史数据,为电力大数据评估提供一体化计算环境,并支持不同类型数据的存储。
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