基于多元回归的供热需求预测:模型建立与案例研究

K. Baltputnis, R. Petrichenko, D. Sobolevsky
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引用次数: 8

摘要

准确的需求预测是区域供热网络和供热能源供应商日常运行中必不可少的任务。多元回归是解决预测问题的可能方法之一,具有足够的精度和较少的计算量。本文提出了一个多项式回归模型,并对其进行了改进。研究发现,将模型残差按小时分组可以显著降低预测误差。其他修改的值和训练集的最佳大小可以随时间变化,因此建议在每次新预测之前自动选择模型参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Heating Demand Forecasting with Multiple Regression: Model Setup and Case Study
Accurate demand forecasting in district heating networks is an essential and imperative task in the everyday operation of both, the network itself and the heating energy suppliers. Multiple regression is one of the possible approaches to solving the forecasting problem with sufficient accuracy and little computational effort. This paper presents a polynomial regression model and offers several additions for its further improvement. It is found that grouping the model residuals by hour-of-day allows notably reducing the forecast error. The value of other modifications and the optimum size of the training set can vary over time, thus an automatic model parameter selection before each new forecast is advised.
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