使用来自6000个爱尔兰家庭的基于物联网的智能电表数据进行配电变压器负荷预测

Mantinder Jit Singh, Prakhar Agarwal, K. Padmanabh
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引用次数: 6

摘要

一个社区的能源消耗取决于其社会经济参数。印度社区的人口多样性要求在配电变压器(DT)而不是公用事业水平上进行负荷预测。本文提出了两种有趣的负荷预测技术,这两种技术至今尚未被研究过。在这两种技术中,使用参数估计和随后的回归来破译一天的独特消费模式,使用神经网络和支持向量回归来找到当天的总消费量,随后根据当天的模式重新分配以推断最终负载模式。在第一种技术中,已经为一周中的每一天创建了一个独特的模型。虽然结果非常令人鼓舞,平均误差为12%,但对于许多应用来说还不够。在第二种方法中,根据之前的模式为全年创建一组模型。从这些模型中选择相关性大于95%且总消耗量相近的特定模型。在这种情况下,报告的平均误差约为7%。神经网络考虑了影响消费的所有因素,因此其相应的预测更为准确。
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Load forecasting at distribution transformer using IoT based smart meter data from 6000 Irish homes
Energy Consumption in a neighborhood depends upon its socioeconomic parameters. Demographical diversities in a neighborhood in India warrants load prediction at distribution transformer (DT) rather than at utility level. In this paper two interesting techniques of load forecasting have been proposed which have not be explored till date. In both these technique a unique pattern of consumption has been deciphered for a day using parametric estimation and subsequently regression, neural network and support vector regression have been used to find the total consumption of the day which is subsequently redistributed according to pattern of the day to deduce final load pattern. In the first technique a unique model has been created for each day of the week. Though the results have been very encouraging with average error of 12% however it is not sufficient for many applications. In the second approach a set of model is created for the entire year and depending upon the previous pattern. A particular model having correlation more than 95% and similar total consumption is selected out of these models. In this case mean error has been reported as approximately 7%. Neural network considers all factors affecting the consumption and hence its corresponding predictions have been found more accurate.
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