基于长短期记忆的异构数据特征提取技术

Jiye Wang, Yundan Liang, Lingchao Gao, Zhixian Pi, Xiao Yang, Huaixun Zhang, Jiasong Sun
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引用次数: 0

摘要

电力数据资源具有异构、多源分散、高维、形式多样等复杂问题。本文提出了一种基于长短期记忆图卷积神经网络的异构数据特征提取框架,实现了数字、图像和文本信息混合的分布式异构数据特征提取和融合。实验表明,该方法比其他的图卷积网络或长短期记忆神经网络更适合网格业务中异构数据的特征提取。为电力数据业务提供进一步的监测预警、状态分析和专业管理等技术支持。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heterogeneous Data Feature Extraction Technology based on Long-Short Term Memory
Power data resources have complex problems such as heterogeneous, multi-source dispersion, high dimensionality, and diverse forms. This paper proposes one heterogeneous data feature extraction framework based on long-short term memory graph convolutional neural network, which realizes feature extraction and fusion of distributed heterogeneous data with numerical, image and text information's mixture. Experiments show that this method is more suitable for feature extraction of heterogeneous data in grid business than other graph convolutional networks or long-short term memory neural networks. It provides further monitoring and early warning, state analysis and professional management for the power data business technical support.
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