智能电网中电气数据矩阵的分解

Qian Dang, Huafeng Zhang, Bo Zhao, Yanwen He, Shiming He, Hye-jin Kim
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引用次数: 7

摘要

随着智能电网和能源互联网的发展,实时传输的数据量显著增加。由于通信网络不适合承载高速和实时数据,因此可能会不断发生数据丢失和数据质量下降。针对这一问题,根据人的行为和感觉产生的电力数据具有较强的时空相关性,构建了以时间为行、用户为列的低秩电力数据矩阵。受矩阵分解的启发,我们将低秩电力数据矩阵分解为两个小矩阵的乘积,利用已知数据近似低秩电力数据矩阵,恢复缺失的电力数据。基于实际电力数据,分析了电力数据矩阵的低秩性,并对实际数据进行了基于矩阵分解的方法。实验结果验证了该方案的有效性和有效性。
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Electrical Data Matrix Decomposition in Smart Grid
As the development of smart grid and energy internet, this leads to a significant increase in the amount of data transmitted in real time. Due to the mismatch with communication networks that were not designed to carry high-speed and real time data, data losses and data quality degradation may happen constantly. For this problem, according to the strong spatial and temporal correlation of electricity data which is generated by human’s actions and feelings, we build a low-rank electricity data matrix where the row is time and the column is user. Inspired by matrix decomposition, we divide the low-rank electricity data matrix into the multiply of two small matrices and use the known data to approximate the low-rank electricity data matrix and recover the missed electrical data. Based on the real electricity data, we analyze the low-rankness of the electricity data matrix and perform the Matrix Decomposition-based method on the real data. The experimental results verify the efficiency and efficiency of the proposed scheme.
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