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Multi-criteria comprehensive study on predictive algorithm of heating energy consumption of district heating station based on timeseries processing

机译:基于时期加工的地区供热站加热能耗预测算法的多标准综合研究

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摘要

Refined control of district heating station relies on reasonable and accurate prediction of heating energy consumption. Due to the influence of building thermal inertia and time-delay of the district heating system, certain research work is necessary to thoroughly illustrate and analyze the impact of data timeseries processing on various prediction models. Four kinds of prediction algorithms were investigated and compared in this paper. Results showed that all of three timeseries processing methods, namely time feature construction, sliding window and building thermal inertia coefficient (C_(BTI)), can improve the prediction accuracy of all four models and C_(BTI) had the greatest impact on model accuracy improvement. Moreover, timeseries processing method has no limitation on the types of prediction model and it is a general method to improve the model accuracy. Time feature construction and sliding window had greater influence on the non-neural network models while C_(BTI) was the opposite. In terms of model robustness, the robustness had been significantly improved after introducing timeseries processing except random forest, and the comprehensive robustness coefficient for the other three models had been reduced by about 95%. Recurrent neural network had extremely excellent robustness under different temporal granularity.
机译:地区供暖站的精致控制依赖于合理和准确的加热能耗预测。由于建筑物热惯性和地区供热系统的延时的影响,必须彻底地说明和分析各种预测模型对数据处理的影响和分析数据的影响。研究了四种预测算法并在本文中进行了比较。结果表明,全部三次处理方法,即时间特征结构,滑动窗口和建筑物热惯量系数(C_(BTI)),可以提高所有四种模型的预测精度,C_(BTI)对模型精度的影响最大改进。此外,TimeSeries处理方法对预测模型的类型没有限制,并且是提高模型精度的一般方法。时间特征结构和滑动窗口对非神经网络模型的影响更大,而C_(BTI)是相反的。在模型稳健性方面,在除随机森林外,在引入超时处理后,稳健性得到了显着的改善,另外三种模型的综合稳健性系数已减少约95%。经常性神经网络在不同时间粒度下具有极佳的鲁棒性。

著录项

  • 来源
    《Energy》 |2020年第1期|117714.1-117714.13|共13页
  • 作者单位

    Tianjin Key Laboratory of Indoor Air Environmental Quality Control Key Laboratory of Efficient Utilization of Low and Medium Grade Energy School of Environmental Science and Engineering Tianjin University Tianjin China;

    Tianjin Key Laboratory of Indoor Air Environmental Quality Control Key Laboratory of Efficient Utilization of Low and Medium Grade Energy School of Environmental Science and Engineering Tianjin University Tianjin China;

    Tianjin Key Laboratory of Indoor Air Environmental Quality Control Key Laboratory of Efficient Utilization of Low and Medium Grade Energy School of Environmental Science and Engineering Tianjin University Tianjin China;

    Tianjin Key Laboratory of Indoor Air Environmental Quality Control Key Laboratory of Efficient Utilization of Low and Medium Grade Energy School of Environmental Science and Engineering Tianjin University Tianjin China;

    Tianjin Key Laboratory of Indoor Air Environmental Quality Control Key Laboratory of Efficient Utilization of Low and Medium Grade Energy School of Environmental Science and Engineering Tianjin University Tianjin China;

    School of Architecture Tianjin University Tianjin China;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Heating energy consumption prediction; Data timeseries processing; Prediction accuracy; Prediction robustness; District heating station;

    机译:加热能量消耗预测;数据时系的处理;预测准确性;预测鲁棒性;区供暖站;

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