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Analysis of Network Loss Energy Measurement Based on Machine Learning

机译:基于机器学习的网络损耗能量测量分析

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The real-time network loss calculation of the power system has particularly important significance for the optimal scheduling and economic operation of the power system. With the development of artificial intelligence, the real-time data collected by the power system is more and more accurate and efficient. It is convenient for the artificial intelligence computer to calculate network loss in real time and make scheduling instructions in a short time, which makes it possible to implement scheduling optimization instantaneously. This paper analyzes the traditional network loss calculation methods, proposes a new method to calculate network loss using machine learning algorithms, and studies the application of machine learning algorithms in load image classification. This paper combines the machine learning algorithm with the new method of calculating network loss proposed in this paper to calculate and classify the network loss and obtain the optimal load distribution map under the target network loss. This method is simulated and verified in Matlab. The results show that the inductive learning algorithm can better realize the classification and prediction of network loss. Through this new method, we can achieve the classification and prediction of the load corresponding to a certain network loss value, so as to achieve the purpose of real-time monitoring and prediction of network loss and load, and provide a reliable basis for economic dispatch. This article has obtained the "deep research project based on three-state grid data fusion and verification technology" and technical support for power system dispatch and cloud platform.
机译:电力系统的实时网络损失计算对电力系统的优化调度和经济运行特别重要的意义。随着人工智能的发展,电力系统采集的实时数据越来越精确和高效。它方便了人工智能计算机实时,使调度指令计算网络损耗在很短的时间,这使得它能够瞬间实现调度优化。本文分析了传统的网络损失的计算方法,使用机器学习算法提出了一种新的方法来计算网络损耗,研究的机器学习算法在负载图像分类应用程序。本文结合以计算在本文中,以计算建议的网络损失的新方法的机器学习算法和分类网络损失和获得所述目标网络损失下的最优负载分布图。这种方法是模拟和在Matlab验证。结果表明,归纳学习算法能更好地实现网络损失的分类和预测。通过这种新方法,我们就可以实现对应于特定网络损耗值负载的分类和预测,从而达到实时监控和网络损耗和负载的预测的目的,并为经济调度提供可靠的依据。本文已获得和电力系统调度和云平台技术支持的“基于三个国家电网数据融合与验证技术的深入研究项目”。

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