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A comparison of models for forecasting the residential natural gas demand of an urban area

机译:城市居民天然气需求预测模型的比较

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Forecasting the residential natural gas demand for large groups of buildings is extremely important for efficient logistics in the energy sector. In this paper different forecast models for residential natural gas demand of an urban area were implemented and compared. The models forecast gas demand with hourly resolution up to 60 h into the future. The model forecasts are based on past temperatures, forecasted temperatures and time variables, which include markers for holidays and other occasional events. The models were trained and tested on gas-consumption data gathered in the city of Ljubljana, Slovenia. Machine-learning models were considered, such as linear regression, kernel machine and artificial neural network. Additionally, empirical models were developed based on data analysis. Two most accurate models were found to be recurrent neural network and linear regression model. In realistic setting such trained models can be used in conjunction with a weather-forecasting service to generate forecasts for future gas demand. (C) 2018 The Authors. Published by Elsevier Ltd.
机译:预测大型建筑群的居民天然气需求对能源行业的高效物流至关重要。本文采用并比较了城市居民天然气需求的不同预测模型。这些模型以每小时60小时的分辨率预测未来的天然气需求。模型预测基于过去的温度,预测的温度和时间变量,其中包括假期和其他偶发事件的标记。对模型进行了训练,并根据在斯洛文尼亚卢布尔雅那市收集的天然气消耗数据进行了测试。考虑了机器学习模型,例如线性回归,核机器和人工神经网络。此外,基于数据分析开发了经验模型。发现两个最准确的模型是递归神经网络和线性回归模型。在实际环境中,可以将此类训练有素的模型与天气预报服务结合使用,以生成对未来天然气需求的预测。 (C)2018作者。由Elsevier Ltd.发布

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