Methodology for commercial buildings thermal loads predictive models based on simulation performance

Dimitrios-Stavros Kapetanakis, E. Mangina, D. Finn
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引用次数: 3

Abstract

Commercial buildings incorporate Building Energy Management Systems (BEMS) to monitor indoor environment conditions as well as controlling Heating Ventilation and Air Conditioning (HVAC) systems. Measurements of temperature, humidity and energy consumption are typically stored within BEMS. These measurements include underlying information regarding building thermal response, which is crucial for the calculation of heating and cooling loads. Forecasting of building thermal loads can be achieved using data records from BEMS. Accurate predictions can be produced when introducing these data records to data-mining predictive models. Incomplete datasets are often acquired when extracting data from the BEMS; hence detailed representations of commercial buildings can be implemented using EnergyPlus. For the purposes of the research described in this paper, different types of commercial buildings in various climates are examined to investigate the scalability of the predictive models.
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基于仿真性能的商业建筑热负荷预测模型方法
商业建筑采用建筑能源管理系统(BEMS)来监测室内环境状况,并控制采暖通风和空调(HVAC)系统。温度、湿度和能耗的测量值通常存储在BEMS中。这些测量包括有关建筑热响应的基本信息,这对于计算加热和冷却负荷至关重要。建筑热负荷的预测可以使用BEMS的数据记录来实现。当将这些数据记录引入数据挖掘预测模型时,可以产生准确的预测。从BEMS中提取数据时,往往会获得不完整的数据集;因此,商业建筑的详细表现可以使用EnergyPlus来实现。为了本文所述的研究目的,研究了不同气候条件下不同类型的商业建筑,以研究预测模型的可扩展性。
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