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Conductor Temperature Estimation Using the Hadoop MapReduce Framework for Smart Grid Applications

机译:使用Hadoop MapReduce框架进行智能电网应用的导体温度估算

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摘要

Smart grid has become a popular issue on power system applications in recent years. By using the information and communication technology (ICT), the concept of smart grid aims to make power systems more intelligent. In smart grid, conductor temperature is an important variable for power line transmission. It dominates the limitation of the maximum current, called "ampere capacity". In this paper, we estimate all of the conductor temperatures on extra-high-voltage (EHV) transmission grids to monitor the ampere capacity in Taiwan. Following the IEEE 738-2007 standard and using a great amount of information from the national central weather bureau, we estimate some weather parameters in the nearest grid using a k-d tree algorithm and apply them to a Hadoop MapReduce framework to establish a conductor temperature estimation system. The proposed system is found to efficiently estimate the conductor temperature. By using the Hadoop MapReduce framework, this system can create new models by using a large amount of data related to a smart grid, and new functions can also be easily added to the system. For the future research, this system will be extended to the electricity dispatch.
机译:近年来,智能电网已成为电力系统应用中的热门问题。通过使用信息和通信技术(ICT),智能电网的概念旨在使电力系统更加智能。在智能电网中,导体温度是电力线传输的重要变量。它支配了最大电流的限制,称为“安培容量”。在本文中,我们估算了超高压(EHV)输电网上的所有导体温度,以监控台湾的安培容量。遵循IEEE 738-2007标准并使用来自国家中央气象局的大量信息,我们使用kd树算法估算最近的网格中的一些天气参数,并将其应用于Hadoop MapReduce框架以建立导体温度估算系统。发现所提出的系统可以有效地估计导体温度。通过使用Hadoop MapReduce框架,该系统可以通过使用与智能网格相关的大量数据来创建新模型,并且还可以轻松地向系统中添加新功能。为了将来的研究,该系统将扩展到电力调度。

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