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A study on modeling using big data and deep learning method for failure diagnosis of system

机译:大数据与深度学习建模在系统故障诊断中的研究

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Power data of the customers are generated in real time and in large quantities according to the activation of the low voltage meter reading service and accumulated and stored in the central FEP, NMS and SMS server. The power data has characteristics of big data and unlike big data of other types, it has the advantage of applying efficient and useful services by applying various analysis and prediction techniques without any additional data processing. Despite these advantages, the field of automated meter reading still focuses on the construction of the system, so data analysis and application aren't actively implemented. However, the auto metering infrastructure is being installed continuously and the amount of data is continuously increasing. Therefore, the importance of utilization of power data based on the auto metering infrastructure becomes an issue, and research on power big data analysis and data mining is actively being carried out. In this paper, we have performed a probabilistic analysis, diagnosis, and prediction of the fault condition of the system through application of the artificial intelligent deep learning algorithm using the system state data stored in real time in the low voltage meter reading system. In this paper, we propose an optimal method for designing and operating a reasonable automated meter reading system with stability and reliability.
机译:根据低压抄表服务的激活,实时,大量生成客户的电力数据,并将其存储并存储在中央FEP,NMS和SMS服务器中。功率数据具有大数据的特性,与其他类型的大数据不同,它具有通过应用各种分析和预测技术而无需任何额外数据处理即可应用有效和有用服务的优势。尽管有这些优点,但自动抄表领域仍然侧重于系统的构建,因此并未积极地进行数据分析和应用。但是,自动计量基础设施正在不断安装,数据量也在不断增加。因此,基于自动计量基础设施的电力数据利用的重要性成为一个问题,并且电力大数据分析和数据挖掘的研究正在积极地进行。在本文中,我们通过使用实时存储在低压抄表系统中的系统状态数据的人工智能深度学习算法,对系统的故障状况进行了概率分析,诊断和预测。在本文中,我们提出了一种用于设计和操作具有稳定性和可靠性的合理的自动抄表系统的最佳方法。

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