One of the primal challenges faced by utility companies is ensuring efficient supply with minimal greenhouse gas emissions. The advent of smart meters and smart grids provide an unprecedented advantage in realizing an optimised supply of thermal energies through proactive techniques such as load forecasting. In this paper, we propose a forecasting framework for heat demand based on neural networks where the time series are encoded as scalograms equipped with the capacity of embedding exogenous variables such as weather, and holiday/non-holiday. Subsequently, CNNs are utilized to predict the heat load multi-step ahead. Finally, the proposed framework is compared with other state-of-the-art methods, such as SARIMAX and LSTM. The quantitative results from retrospective experiments show that the proposed framework consistently outperforms the state-of-the-art baseline method with real-world data acquired from Denmark. A minimal mean error of 7.54% for MAPE and 417kW for RMSE is achieved with the proposed framework in comparison to all other methods.
翻译:公用事业公司面临的最初步挑战之一是确保低温室气体排放的高效供应。智能仪表和智能电网的出现为通过载荷预测等积极技术实现最佳热能供应提供了前所未有的优势。在本文件中,我们提出了一个基于神经网络的热需求预测框架,将时间序列编码成具有嵌入天气和节假日/非周日等外源变量能力的天平图。随后,CNN被用来预测未来的热负荷多步。最后,拟议框架与其他最新方法如SAIMAX和LSTM相比,提供了前所未有的优势。回顾性实验的量化结果表明,拟议的框架始终比丹麦获得的实世数据高出最新基线方法。相对于所有其他方法而言,MAPE和RMEE的最小平均误差为7.54%, RMSE为417千瓦。