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Refrigeration Subcommittee. Proposed Revision of Refrigeration Provisional Data Requirements. July 26, 2014. Data Collection for demonstration projects. Demonstration project data collection best practices method. Demonstration project data collection best practices method. Project #1
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Refrigeration Subcommittee Proposed Revision of Refrigeration Provisional Data Requirements • July 26, 2014
Project #1 • Data Collection and Calibration
Regression analysis (Best Practices) Collection Periods: Pre: 2/27 to 4/22 Post: 4/22 to 7/9 Methodology for regression Average daily temp from NOAA as independent Averaged hourly compressor power Compressor power as dependent Linear regression Method for calculating annual savings Applied linear regression to average daily TMY3
Regression analysis Pre measure implementation
Regression analysis Post measure implementation
Regression analysis Pre measure implementation
Regression analysis Post measure implementation
Best Practice model results Pre: kWh = 3.4238(Temp) +422.39 Post: kWh=-1.486(Temp) + 584.74
SRM analysis Audit data collected (See protocol appendix) DOE2 Simulation with TMY3
Calibration adjustments Focused on rated compressor power and capacity Used manufacturer’s selection tool as a guide Increased capacity and power to adjust baseline and savings
Thank you subcommittee! bowens@peci.org
Demonstration project data collection simplest reliable method Remove what was not used for model, a
Calibration: Model parameter examples Compressors • Rated power • Rated refrigerant flow • Evaporator superheat • Return gas temperature • COP curves Loads • Fixture infiltration • Light, fan, and ASH absorbed into fixtures • Sales space humidity levels
Data Collection Individual compressor data
Next Steps Recommendations on approach, documentation Review next projects as available