Evaluation of Power Grid Social Risk Early Warning System Based on Deep Learning

Daren Li, Jie Shen, Dali Lin, Yangshang Jiang
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Abstract

In the context of the continuous development of the power grid, the tasks of regulation, operation, and management are becoming increasingly complex, and the operation risks are also increasing dramatically. Sensor technology can deal with the impact of uncertain risk factors, such as extremely disastrous weather, equipment failure, and load fluctuation, on the power grid. Therefore, this article proposes a real-time risk analysis and early warning system for the power grid based on machine learning and combined with sensing technology—a stack self-coding (SSC) neural network prediction model—and introduces the functional composition of the system, clarifying the research content. The experiment compared the accuracy of power grid load forecasting between the SSC forecasting model and the fuzzy neural network (FNN) forecasting model and obtained the forecasting curves of a holiday, a workday, and a Sunday, as well as a comprehensive forecasting accuracy comparison. The experimental results showed that the SSC prediction model based on machine learning designed in this paper improved the prediction accuracy by 12.94% compared with the FNN model. The power grid risk can be assessed through load forecasting, and it is also of great significance for load dispatching and reducing generation costs.
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基于深度学习的电网社会风险预警系统评价
在电网不断发展的背景下,电网的调控、运行和管理任务日益复杂,运行风险也急剧增加。传感器技术可以应对极端灾害性天气、设备故障、负荷波动等不确定风险因素对电网的影响。为此,本文提出了一种基于机器学习并结合传感技术的电网实时风险分析预警系统——堆栈自编码(SSC)神经网络预测模型,并介绍了系统的功能组成,明确了研究内容。实验对比了SSC预测模型和模糊神经网络(FNN)预测模型对电网负荷的预测精度,得到了假日、工作日和周日的预测曲线,并对预测精度进行了综合比较。实验结果表明,本文设计的基于机器学习的SSC预测模型与FNN模型相比,预测精度提高了12.94%。通过负荷预测可以评估电网风险,对负荷调度和降低发电成本具有重要意义。
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