6533b85afe1ef96bd12ba034
RESEARCH PRODUCT
ANN modelling of CO2 refrigerant cooling system COP in a smart warehouse
Armin HafnerMohan KolheSven Myrdahl OpalicHenrik Kofoed NielsenÁNgel Á. PardiñasMorten GoodwinLei Jiaosubject
Renewable Energy Sustainability and the EnvironmentComputer sciencebusiness.industry020209 energyStrategy and Management05 social sciences02 engineering and technologyEnergy consumptionIndustrial and Manufacturing EngineeringEnergy storageAutomotive engineeringRenewable energyRefrigerantEnergy management systemMean absolute percentage errorOperating temperature050501 criminology0202 electrical engineering electronic engineering information engineeringWater coolingbusinessVDP::Teknologi: 500::Informasjons- og kommunikasjonsteknologi: 5500505 lawGeneral Environmental Sciencedescription
Author's accepted manuscript Industrial cooling systems consume large quantities of energy with highly variable power demand. To reduce environmental impact and overall energy consumption, and to stabilize the power requirements, it is recommended to recover surplus heat, store energy, and integrate renewable energy production. To control these operations continuously in a complex energy system, an intelligent energy management system can be employed using operational data and machine learning. In this work, we have developed an artificial neural network based technique for modelling operational CO2 refrigerant based industrial cooling systems for embedding in an overall energy management system. The operating temperature and pressure measurements, as well as the operating frequency of compressors, are used in developing operational model of the cooling system, which outputs electrical consumption and refrigerant mass flow without the need for additional physical measurements. The presented model is superior to a generalized theoretical model, as it learns from data that includes individual compressor type characteristics. The results show that the presented approach is relatively precise with a Mean Average Percentage Error (MAPE) as low as 5%, using low resolution and asynchronous data from a case study system. The developed model is also tested in a laboratory setting, where MAPE is shown to be as low as 1.8%.
year | journal | country | edition | language |
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2020-07-01 |