Research on Neural Network Construction Method Based on Approximate Computational Test Data

Lutao Wang, Lisha Wu, Jinlong Hao, Zhenyu Chen, Cui-Lan Jia
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Abstract

In some applications of the power grid, there are problems that the volume of real data is small and the security of real data is difficult to guarantee, which poses a challenge to the data governance model. This paper proposes a parallel convolutional neural network structure based on approximate calculation of test data, constructs test data through approximate calculation, and uses parallel convolutional neural network structure to learn the corresponding data model, which can solve the problems of data resources, computing resources and problems in data governance. Calculate the cost problem. Experiments based on existing data sets show the unique advantages of this network structure for approximately computing test data.
基于近似计算试验数据的神经网络构建方法研究
在电网的一些应用中,存在着真实数据量小、真实数据安全性难以保证的问题,这对数据治理模型提出了挑战。本文提出了一种基于测试数据近似计算的并行卷积神经网络结构,通过近似计算构建测试数据,并利用并行卷积神经网络结构学习相应的数据模型,可以解决数据资源、计算资源和数据治理问题。计算成本问题。基于现有数据集的实验表明,该网络结构在近似计算测试数据方面具有独特的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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