Abstract
In this study, an ANN (artificial neural network) based real-time optimized control algorithm for a chilled water cooling system was developed and applied in an actual building to analyze its cooling energy saving effects through in-situ application and actual measurements. For this purpose, the cooling tower's CndWT (condenser water temperature) and the chiller's ChWT (chilled water temperature) were set as system control variables. To evaluate algorithm performance, the electric consumption and the COP (coefficient of performance) were compared and analyzed when ChWT and CndWTs were controlled conventionally and controlled based on the ANN. During the analysis, unexpected abnormal data was observed due to insufficient training data and limited consideration of OWBT (outdoor air wet-bulb temperature) when determining the CndWT set-point. Therefore, it is necessary to further build training data from a wider range of conditions and to set the lower limit of CndWT set-point to at least +3.6 °C above OWBT when the OWBT is higher than 23 °C, so that further energy savings can be achieved.
Original language | English |
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Pages (from-to) | 6349-6361 |
Number of pages | 13 |
Journal | Energy Reports |
Volume | 9 |
DOIs | |
State | Published - Dec 2023 |
Funding
This research was funded by the Technology Innovation Program (or Industrial Strategic Technology Development Program, 20014154, Development of EMS with Optimal Control Algorithm for Energy Efficiency Improvement in Commercial Building Using AI and Digital Twin Technology) funded By the Ministry of Trade, Industry & Energy (MOTIE, Korea) . This work was supported by a Korea University Grant (No. K2218701 ).
Funders | Funder number |
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Korea University | K2218701 |
Ministry of Trade, Industry and Energy |
Keywords
- ANN (Artificial neural network)
- ChWT (Chilled water temperature)
- CndWT (Condenser water temperature)
- In-situ application
- OWBT (outdoor air wet-bulb temperature)