基于logistic回归的配电变压器中期重负荷过载预警

Ming Li, Qinsheng Zhou
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引用次数: 4

摘要

在经济快速增长的地区,配电变压器重载、过载的情况经常发生,可能会损坏设备,甚至导致停电。因此,为了便于配电网的资产管理,了解哪些配电变压器在未来一年内更有可能出现重负荷/过载情况,对于电力公司来说至关重要。然而,现有的负荷预测方法并不适用于负荷模式多变、数量庞大的配电变压器。利用某公用事业公司的实际数据,建立了一个中期预警分析模型,为某地区的每台配电变压器提供了下一年的重负荷和过载概率。中期预警模型已在国内某大型公用事业公司实施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distribution transformer mid-term heavy load and overload pre-warning based on logistic regression
in areas with rapid economic growth, distribution transformer heavy load and overload occur frequently, which may damage the equipment and even lead to power outages. Therefore, it is critical for the utilities to know which distribution transformers are more likely to have the heavy load /overload conditions in the next year in order to facilitate asset management in distribution network. However, current load forecasting methods are not suitable for handling the large amount of distribution transformers with a high variety of load patterns. Utilizing real data from a utility, a mid-term pre-warning analytics model has been developed to provide the heavy load and overload probabilities in the next year for each distribution transformer in an area. The mid-term pre-warning models have been implemented in a major utility in China.
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