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Operational Demand Forecasting In District Heating Systems Using Ensembles Of Online Machine Learning Algorithms

机译:集成在线机器学习算法的区域供热系统运行需求预测

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摘要

Heat demand forecasting is in one form or another an integrated part of most optimisation solutions for district heating and cooling (DHC). Since DHC systems are demand driven, the ability to forecast this behaviour becomes an important part of most overall energy efficiency efforts. This paper presents the current status and results from extensive work in the development, implementation and operational service of online machine learning algorithms for demand forecasting. Recent results and experiences are compared to results predicted by previous work done by the authors. The prior work, based mainly on certain decision tree based regression algorithms, is expanded to include other forms of decision tree solutions as well as neural network based approaches. These algorithms are analysed both individually and combined in an ensemble solution. Furthermore, the paper also describes the practical implementation and commissioning of the system in two different operational settings where the data streams are analysed online in real-time. It is shown that the results are in line with expectations based on prior work, and that the demand predictions have a robust behaviour within acceptable error margins. Applications of such predictions in relation to intelligent network controllers for district heating are explored and the initial results of such systems are discussed.
机译:热量需求预测是区域供热和制冷(DHC)的大多数优化解决方案中不可或缺的一部分。由于DHC系统是由需求驱动的,因此预测此行为的能力已成为大多数总体能源效率工作的重要组成部分。本文介绍了用于需求预测的在线机器学习算法的开发,实施和操作服务方面的大量工作的现状和结果。将最近的结果和经验与作者先前所做的工作所预测的结果进行比较。现有技术主要基于某些基于决策树的回归算法进行了扩展,以包括其他形式的决策树解决方案以及基于神经网络的方法。这些算法既可以单独分析,也可以组合在一起使用。此外,本文还描述了在两种不同的操作环境中系统的实际实施和调试,在其中实时在线分析数据流。结果表明,结果与基于先前工作的预期相符,并且需求预测在可接受的误差范围内具有稳健的行为。探索了这种预测在区域供热智能网络控制器中的应用,并讨论了这种系统的初步结果。

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