Recommended by the IIR
Frost detection with neural networks: determining necessary sensors to predict optimal defrost initiation time for air source heat pumps.
Number: 0231
Author(s) : KLINGEBIEL J., SALOMON P., VERING C., MÜLLER D.
Summary
Air Source Heat Pumps (ASHPs) are the most common heat pump type in Europe's residential buildings. To increase the energy efficiency of ASHPs, a main research field focuses on defrosting management. Currently, researchers showed that optimal defrosting initiation time (ODT) exists, which exhibits great potential to improve operational efficiency. However, ODT depends on multiple factors such as ASHP operation (e.g., compressor RPM) and ambient conditions (e.g., relative humidity). While mapping all correlations between ODT and all relevant factors can be accomplished with artificial neural networks (ANN), gaining sufficient test-bench data is time-consuming. When combining ANNs with reinforcement learning (RL) the data can be automatically generated on-site. A key aspect for the successful realization of RL is the determination of necessary sensors to detect frost under dynamic ASHP operation and varying ambient conditions. This work studies the applicability of different sensor sets to predict frost. Therefore, we use a heat pump model with valid frosting and defrosting behavior. The model is calibrated with test bench data. The results indicate that commonly available sensors in heat pumps are suitable for robust frost detection. Using only the ambient and evaporation temperature, the RL agent can separate frosting behavior from heat pump control and improves energy efficiency by up to 9.4 % compared to conventional time-controlled defrosting.
Available documents
Format PDF
Pages: 12 p.
Available
Public price
20 €
Member price*
Free
* Best rate depending on membership category (see the detailed benefits of individual and corporate memberships).
Details
- Original title: Frost detection with neural networks: determining necessary sensors to predict optimal defrost initiation time for air source heat pumps.
- Record ID : 30031108
- Languages: English
- Subject: Technology
- Source: 14th IEA Heat Pump Conference 2023, Chicago, Illinois.
- Publication date: 2023/05/15
Links
See other articles from the proceedings (78)
See the conference proceedings
Indexing
-
A novel defrosting initiation strategy based on...
- Author(s) : WANG W., ZHOU Q., TIAN G., WANG Y., ZHAO Z., CAO F.
- Date : 2021/08
- Languages : English
- Source: International Journal of Refrigeration - Revue Internationale du Froid - vol. 128
- Formats : PDF
View record
-
Use of artificial intelligence in the refrigera...
- Author(s) : CITARELLA B., MAURO A. W., PELELLA F.
- Date : 2021/09/01
- Languages : English
- Source: 6th IIR Conference on Thermophysical Properties and Transfer Processes of Refrigerants
- Formats : PDF
View record
-
Artificial intelligence models for refrigeratio...
- Author(s) : ADELEKAN D. S., OHUNAKIN O. S., PAUL B. S.
- Date : 2022/11
- Languages : English
- Source: Energy Reports - vol. 8
- Formats : PDF
View record
-
Energy saving pre-cooling pattern search of an ...
- Author(s) : YOON M. S., YOON W. S.
- Date : 2021/08/31
- Languages : English
- Source: 13th IEA Heat Pump Conference 2021: Heat Pumps – Mission for the Green World. Conference proceedings [full papers]
- Formats : PDF
View record
-
Novel chiller fault diagnosis using deep neural...
- Author(s) : HAN H., XU L., CUI X., FAN Y.
- Date : 2021/01
- Languages : English
- Source: International Journal of Refrigeration - Revue Internationale du Froid - vol. 121
- Formats : PDF
View record