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Evaluation of machine learning methods for optimizing the defrosting process of air-to-water heat pumps.
Number: 0117
Author(s) : KLINGEBIEL J., GOBEL S., VENZIK V., MÜLLER D.
Summary
Frost formation decreases system efficiency, so frequent defrosting is necessary to achieve energy-efficient operation. Compared to conventional time-controlled defrosting, demand-controlled defrosting offers a high potential for increasing overall efficiency. This study develops a demand-controlled defrosting strategy based on machine learning. Therefore a detailed simulation model is presented and calibrated using experimental data. Our experimental results indicate that defrosting initiation time is a key parameter for efficient operation: A deviation of 30 minutes from the optimal defrosting time (ODT) results in a 10.7 % reduction in efficiency. We show that self-optimizing control strategies, such as reinforcement learning, can improve the defrosting process due to successfully predicting ODT. Compared to conventional defrosting strategies, the system efficiency increases by a minimum of 5.56 % for a typical 24 h demand profile. The method reduces the number of defrosting operations by avoiding unnecessary defrosting, thus increasing the operating time and thermal comfort.
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Details
- Original title: Evaluation of machine learning methods for optimizing the defrosting process of air-to-water heat pumps.
- Record ID : 30029719
- Languages: English
- Subject: Technology
- Source: 15th IIR-Gustav Lorentzen Conference on Natural Refrigerants (GL2022). Proceedings. Trondheim, Norway, June 13-15th 2022.
- Publication date: 2022/06/13
- DOI: http://dx.doi.org/10.18462/iir.gl2022.0117
- Document available for consultation in the library of the IIR headquarters only.
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