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Improving the Quality of Load Forecasts Using Smart Meter Data

机译:使用智能仪表数据提高负载预测质量

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For the operator of a power system, having an accurate forecast of the day-ahead load is imperative in order to guaranty the reliability of supply and also to minimize generation costs and pollution. Furthermore, in a restructured power system, other parties, like utility companies, large consumers and in some cases even ordinary consumers, can benefit from a higher quality demand forecast. In this paper, the application of smart meter data for producing more accurate load forecasts has been discussed. First an ordinary neural network model is used to generate a forecast for the total load of a number of consumers. The results of this step are used as a benchmark for comparison with the forecast results of a more sophisticated method. In this new method, using wavelet decomposition and a clustering technique called interactive k-means, the consumers are divided into a number of clusters. Then for each cluster an individual neural network is trained. Consequently, by adding the outputs of all of the neural networks, a forecast for the total load is generated. A comparison between the forecast using a single model and the forecast generated by the proposed method, proves that smart meter data can be used to significantly improve the quality of load forecast.
机译:对于电力系统的操作员来说,具有最新负载的准确预测是必要的,以便能够保证供应的可靠性以及最小化生成成本和污染。此外,在重组的电力系统中,其他各方,如公用事业公司,大型消费者,以及在某些情况下甚至是普通消费者,可以受益于更高质量的需求预测。在本文中,讨论了智能仪表数据的应用,以产生更准确的负载预测。首先,普通的神经网络模型用于为许多消费者的总负载产生预测。该步骤的结果用作与更复杂方法的预测结果进行比较的基准。在这种新方法中,使用小波分解和称为交互式k均值的聚类技术,消费者分为多个群集。然后,对于每个集群,训练各个神经网络。因此,通过添加所有神经网络的输出,生成总负载的预测。使用单个模型的预测与所提出的方法产生的预测的比较证明了智能仪表数据可用于显着提高负载预测的质量。

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