基于。net技术的电力设备异常运行远程数据采集模型

Ze Li, Linlang Guo, H. Xue, Lin Ji, Yuewei Qin
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摘要

为了解决传统远程数据采集模型无法实现高精度数据重构,导致数据采集成功率低的问题,基于。net技术构建了电力设备异常运行远程数据采集模型。根据多状态参数预测残差结果,提取电力设备运行状态监测指标,利用。net技术访问电力设备运行数据,识别异常运行数据。根据异常数据识别结果,从稀疏压缩采样和异常数据重构两个方面构建远程数据采集模型,保证数据重构的高精度和采集结果的可靠性。实验结果表明,远程异常数据采集模型的采集成功率分别比传统采集模型高8.28%和10.62%,具有良好的远程采集性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Remote data acquisition model for abnormal operation of power equipment based on .NET technology
In order to solve the problem that the traditional remote data acquisition model can not achieve high-precision data reconstruction, which leads to low success rate of data acquisition, a remote data acquisition model for abnormal operation of power equipment is constructed based on .NET technology. According to the prediction residual results of multiple state parameters, the monitoring indexes of power equipment operation state are extracted, and the operation data of power equipment is accessed by using .NET technology, and the abnormal operation data is identified. According to the recognition results of abnormal data, the remote data acquisition model is constructed from two aspects of sparse compression sampling and reconstruction of abnormal data to ensure high-precision data reconstruction and the reliability of the acquisition results. The experimental results show that the collection success rate of the remote abnormal data collection model is 8.28% and 10.62% higher than that of the traditional collection model, which has good remote collection performance.
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