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Towards Hybrid Energy Consumption Prediction in Smart Grids with Machine Learning

机译:朝着机器学习中智能电网的混合能耗预测

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This paper addresses the problem of prediction accuracy of multivariate models. We propose a hybrid system to analyze the energy consumption data along with associated weather data at different time periods and address the limitations of learning techniques. Our model addresses a rather practical problem that applies to real-world scenarios where energy consumption data is influenced by multiple variables and vary according to the utility's cyber infrastructure. Such variations affect the accuracy of the model as time changes from day to day and during shoulder seasons. The proposed system combines both the long-term and the short-term learning mechanisms to achieve improved performance and accuracies. The performance and accuracy of the proposed model is evaluated experimentally using real-life data from Thunder Bay electric grid system. The results show the significance of the proposed system for practical implementations.
机译:本文解决了多元模型的预测准确性问题。我们提出了一个混合系统,以在不同的时间段和相关的天气数据分析能量消耗数据,并解决学习技术的局限性。我们的模型解决了一个相当实际的问题,适用于现实世界场景,其中能量消耗数据受到多个变量的影响,并根据公用事业的网络基础架构而变化。这种变化影响模型的准确性随着时间的变化从日常到一天和肩部季节。所提出的系统结合了长期和短期学习机制,以实现改善的性能和准确性。所提出的模型的性能和准确性通过来自雷湾电网系统的真实数据进行实验评估。结果表明了拟议的实际实施系统的意义。

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