Development of Operating Method of Multi-Geothermal Heat Pump Systems Using Variable Water Flow Rate Control and a COP Prediction Model Based on ANN
Abstract
:1. Introduction
2. Geothermal Heat Pump System Information of the Target Building
Building Information
3. ANN Models for COP Prediction of Geothermal Heat Pump System
3.1. ANN
3.2. ANN Models for COP Prediction
4. Development of the Operating Method of a Multi-Geothermal Heat Pump System
4.1. Impact of a Variable Flow Rate on the System Performance
4.2. Operating Number Control Method of Multi-Geothermal Heat Pump System Using Constant Water Flow Rate Control Method
4.3. Proposed Sequential Operating Method of a Multi-Geothermal Heat Pump System using Variable Water Flow Rate Control
5. Modeling Dynamic Simulation
5.1. Introduction of Dynamic Simulation
- 1.
- Operating number control method of a multi-geothermal heat pump system using constant water flow rate control (Case 1)
- 2.
- Sequential operating method of a multi-geothermal heat pump system using variable water flow rate control (Case 2)
5.2. Results Analysis
6. Conclusions
- The lack of equipment and monitoring systems in the field makes it difficult to verify the performance in real time. The COP prediction model using an artificial neural network was developed. The developed prediction model was validated by statistical analysis. Predictive models were applied to geothermal system operation algorithms to identify problems, such as poor performance.
- To operate the geothermal heat pump system more efficiently than the existing operating method, the COP prediction model using an ANN and the variable water flow control method of circulation pump were applied to develop an operating method. The flow rate was controlled proportionally through the geothermal temperature difference in the proposed operating method. If the setting value is over, the geothermal heat pump operates in sequence. The COP prediction model enables real-time performance prediction during system operation.
- The proposed multi-geothermal heat pump system operation was verified for an indoor thermal environment, circulating water flow rate, energy consumption, and geothermal heat pump system COP. The proposed operating method can control the indoor heat environment stably and the circulating water supply flow rate is reduced by up to 29% compared to the existing operation method. Geothermal heat pumps can save approximately 23% and 66% energy and circulating pumps, respectively. Thus, the system COP, including the power consumption of the circulation pump, is improved.
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
Nomenclature
Weights | |
Input value | |
Bias value | |
Learning rate | |
Measured value | |
Calculated value | |
Heat transfer rate, kW | |
Δt | Temperature difference, °C |
Water flow rate at constant flow rate control | |
Water flow rate at variable flow rate control |
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Classification | Contents | |
---|---|---|
Buildings | Location | Daegu, Korea |
Building stories | 9 floors above ground, 2 floors underground | |
Building purpose | Mixed-use building | |
Gross floor area | 49,667 m2 | |
Building area | 7653 m2 |
Classification | Contents | ||
---|---|---|---|
Geothermal heat pump | Quantity | 7 | |
Capacity (kW) | Cooling | Heating | |
170 | 156 | ||
Power consumption (kW) | 46.5 | 45.6 | |
Entering source temperature (°C) | 25 | 5 | |
Supplied temperature (°C) | 12 | 40 | |
Flow Rate (m3/h) | 36 | 36 | |
Circulation pump | Quantity | 8 | |
Flow rate (m3/h) | 54 | ||
Head (m) | 35 | ||
Power consumption (kW) | 7.5 |
Classification | Contents | |
---|---|---|
Input layer | The number of neurons | 4 |
Hidden layer | The number of nodes | 5 |
The number of neurons | 1 | |
Output layer | The number of neurons | 1 |
Activation function | Sigmoid |
Predictive Model | RMS | R2 | AE | RE |
0.087579 | 0.989475 | −0.14 to 0.11 | −0.06 to 0.03 |
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Share and Cite
Shin, J.-H.; Kim, Y.-I.; Cho, Y.-H. Development of Operating Method of Multi-Geothermal Heat Pump Systems Using Variable Water Flow Rate Control and a COP Prediction Model Based on ANN. Energies 2019, 12, 3894. https://doi.org/10.3390/en12203894
Shin J-H, Kim Y-I, Cho Y-H. Development of Operating Method of Multi-Geothermal Heat Pump Systems Using Variable Water Flow Rate Control and a COP Prediction Model Based on ANN. Energies. 2019; 12(20):3894. https://doi.org/10.3390/en12203894
Chicago/Turabian StyleShin, Ji-Hyun, Yong-In Kim, and Young-Hum Cho. 2019. "Development of Operating Method of Multi-Geothermal Heat Pump Systems Using Variable Water Flow Rate Control and a COP Prediction Model Based on ANN" Energies 12, no. 20: 3894. https://doi.org/10.3390/en12203894
APA StyleShin, J. -H., Kim, Y. -I., & Cho, Y. -H. (2019). Development of Operating Method of Multi-Geothermal Heat Pump Systems Using Variable Water Flow Rate Control and a COP Prediction Model Based on ANN. Energies, 12(20), 3894. https://doi.org/10.3390/en12203894