Developing Optimal Pre-Cooling Model Based on Statistical Analysis of BEMS Data in Air Handling Unit
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Abstract Since the operating conditions of HVAC systems are different from those for which they are designed, on-going commissioning is required to optimize the energy consumed and the environment in the building. This study presents a methodology to analyze operational data and its applications. A predicted operation model is to be produced through a statistical data analysis using multiple regressions in SPSS. In this model, the dependent variable is the pre-cooling time, and the independent variables include the power output of the supply air inverter during pre-cooling, the supply air settemperature during pre-cooling, the indoor temperature-indoor set temperature just before pre-cooling, supply heat capacity,and the lowest outdoor air temperature during non-cooling/non-heating hours. The correlation coefficient R2 of the multipleregression model between the pre-cooling hour and the internal/external factors is of 0.612, and this could be used to provideinformation related to energy conservation and operating guidance.