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Minimizing on-peak and off-peak demands for a thermal storage system - Forecast model analysis to predict next day daily average load and model application

机译:最小化对储热系统的高峰和非高峰需求-预测模型分析以预测第二天的日平均负荷和模型应用

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Thermal storage systems were originally designed to shift on-peak cooling production to off-peak cooling production to reduce on-peak electricity demand. Recently, however, the reduction of both on- and off-peak demands is becoming an exceedingly important issue. Reduction of on- and off-peak demands can also extend the life span and defer or eliminate the replacement of power transformers due to potential shortage of building power capacity caused by anticipated equipment load increases. Next day daily average electricity demand is a critical set point to operate chillers and associated pumps at the appropriate time. For this paper, a mathematical analysis of the annual daily average cooling of a building was conducted, and three real-time building load forecasting models were developed: a first-order autoregressive model, a random walk model, and a linear regression model. A comparison of results shows that the random walk model provides the best forecast. A complete control algorithm integrated with forecast model for a chiller plant including chillers, thermal storage system and pumping systems was developed to verify the feasibility of applying this algorithm in the building automation system. Application results are introduced in this paper as well.
机译:蓄热系统最初旨在将高峰制冷生产转换为非高峰制冷生产,以减少高峰电力需求。但是,最近,减少高峰和非高峰需求已成为一个极其重要的问题。由于预期的设备负载增加可能导致建筑电力容量不足,因此降低高峰和非高峰需求还可以延长使用寿命,并推迟或消除电力变压器的更换。第二天,每日平均电力需求是在适当的时间运行冷却器和相关泵的关键设定点。在本文中,对建筑物的年平均制冷量进行了数学分析,并开发了三种实时建筑物负荷预测模型:一阶自回归模型,随机游走模型和线性回归模型。结果比较表明,随机游走模型可提供最佳预测。开发了一套完整的控制算法并结合了预测模型,该模型用于冷水机组,包括冷水机组,蓄热系统和抽水系统,以验证将该算法应用于楼宇自动化系统的可行性。本文还介绍了应用结果。

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