Power data integrity verification method based on chameleon authentication tree algorithm and missing tendency value

Q2 Engineering Energy Harvesting and Systems Pub Date : 2023-09-04 DOI:10.1515/ehs-2023-0067
Xin Liu, Yingxian Chang, Haotong Zhang, Fang Zhang, Lili Sun
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Abstract

Abstract The power system operation and control data are from a wide range of sources. The relevant data acquisition equipment is disturbed by the complex electromagnetic environment on the power system operation and control lines, resulting in data errors and affecting the application and analysis of data. Therefore, a power data integrity verification method based on chameleon authentication tree algorithm and missing trend value is proposed. Get 2D data from different sensors and place it in the space environment. After data conversion, convert heterogeneous data into the same structure, expand the scope of power data acquisition, and conduct power system operation and control node layout and integrity data acquisition; The chameleon authentication tree algorithm is used to deal with the heterogeneous information of the power data, and the true value of the data is determined in the heterogeneous conflict of the power data at the same site; Query the integrity data based on the power system operation and control positioning node, creatively calculate the missing trend value of power data, evaluate the importance of data integrity, obtain the priority of power data integrity verification, and complete the integrity verification of power data. The experimental results show that the optimal clustering number is 9.05, the distribution coefficient is 16.30, the absolute error of validity analysis is 2.80, all test indicators are close to the preset standard, and the trend of the validation curve is close to the trend of the set demand covariance curve. Ensuring the integrity of power data and determining the important indicators of power lines are more conducive to the safe and stable operation of the power data center.
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基于变色龙认证树算法和缺失趋势值的电力数据完整性验证方法
摘要电力系统的运行和控制数据来源广泛。电力系统运行和控制线上复杂的电磁环境对相关数据采集设备造成干扰,造成数据误差,影响数据的应用和分析。为此,提出了一种基于变色龙认证树算法和缺失趋势值的电力数据完整性验证方法。从不同的传感器获取二维数据,并将其放置在空间环境中。数据转换后,将异构数据转换为同一结构,扩大电力数据采集范围,进行电力系统运控节点布局和完整性数据采集;采用变色龙认证树算法处理电力数据的异构信息,在同一站点电力数据的异构冲突中确定数据的真实值;基于电力系统运行控制定位节点查询完整性数据,创造性地计算电力数据缺失趋势值,评估数据完整性的重要性,获得电力数据完整性验证的优先级,完成电力数据完整性验证。实验结果表明,最优聚类数为9.05,分布系数为16.30,效度分析的绝对误差为2.80,所有测试指标接近预设标准,验证曲线趋势接近设定的需求协方差曲线趋势。保证电力数据的完整性,确定电力线路的重要指标,更有利于电力数据中心的安全稳定运行。
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来源期刊
Energy Harvesting and Systems
Energy Harvesting and Systems Energy-Energy Engineering and Power Technology
CiteScore
2.00
自引率
0.00%
发文量
31
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