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Chiller load forecasting using outdoor temperature profiles for a medium-sized office building

机译:使用室外温度曲线预测中型办公楼的冷水机组负荷

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The foreseen large-scale deployment of renewable energy sources and continued electrification of space heating and transport is expected to seriously affect the stability of the electricity grid. Nonetheless, by means of intelligent building energy management systems associated with building loads, supply and demand could better be matched and flexibility can be provided to the grid. Accurate short-term and small-scale (sub-loads) electricity load forecasting is key in exploiting this energy flexibility potential of the built environment. Therefore, this paper presents and compares two load forecasting methodologies for predicting the electricity demand of a chiller machine of a medium-sized office building. One technique comprehends linear regression using time series data of the outdoor temperature in order to predict the chiller’s power demand. As the next technique, a new Clustering Algorithm for Prediction (CAP) was introduced that compares historic outdoor temperature profiles with forecasted temperature profiles. The energy demands corresponding to similar historic temperature profiles can then be used to make a prediction. The introduced CAP technique has shown better results than the regression technique with an obtained Coefficient of Variance of the Root Mean Square Error value of 23.4% compared to 27.6% of the regression technique.
机译:预计可再生能源和持续的空间加热和运输充电的预见的大规模部署预计会严重影响电网的稳定性。尽管如此,通过与建筑负载相关的智能建筑能源管理系统,可以更好地匹配和需求,并且可以向电网提供灵活性。准确的短期和小规模(次载)电力负荷预测是利用建筑环境的能量灵活性潜力的关键。因此,本文介绍了两个负荷预测方法,用于预测中型办公楼的冷却机的电力需求。一种技术通过室外温度的时间序列数据来理解线性回归,以预测冷却器的电力需求。作为下一个技术,引入了一种新的预测(帽)的聚类算法,其比较了具有预测温度型材的历史室外温度曲线。然后可以使用对应于类似历史型材的能量要求来进行预测。引入的帽技术表现出比具有23.4%的根均方误差值的获得系数的回归技术更好的结果与回归技术的27.6%相比。

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