Development and Validation of an Energy Consumption Model for Animal Houses Achieving Precision Livestock Farming
Abstract
:Simple Summary
Abstract
1. Introduction
- Develop a customized model based on ISO 13790 (energy balance module, Section 2.5) to predict the energy consumption of poultry houses with indoor environmental control.
- Incorporate the modules for estimating the indoor ammonia and carbon dioxide concentrations into the model (Section 2.8). Incorporate the module for solar radiation into the model (Section 2.9). The related animal data were based on the performance of the local species and management strategies on the local requirements (Section 2.1, Section 2.2, Section 2.3, Section 2.4, Section 2.6.1 and Section 2.10). The ventilation module and moisture balance module were built according to Costantino et al.’s proposal [24] (Section 2.6.2, Section 2.6.3 and Section 2.7).
- Validate the model in terms of the indoor environmental parameters and overall energy consumption. Sixty days of continuous experimental measurements were conducted at a small-scale layer hen house to validate the model. Indoor and outdoor environmental parameters, including temperature, relative humidity, solar radiation, etc., were monitored and recorded together with the concentrations of ammonia and carbon dioxide. Additionally, energy consumption from ventilation fans, heaters and other equipment was also monitored.
- Provide a customized model for poultry producers to interpret the information captured, optimize management strategies and ensure optimum efficiency of both energy use and livestock productivity, achieving precision livestock farming from an energy consumption standpoint.
2. Materials and Methods
2.1. The Poultry House
2.2. Overall Model Structure
2.3. Animal Body Weight and Heat Production
2.4. Indoor Temperature Management
2.5. Energy Balance Module
2.6. Heating and Cooling
2.6.1. Heating
2.6.2. Base Ventilation
2.6.3. Tunnel Ventilation
- the indoor air temperature was higher than the critical temperature ()
- the cooling load was larger than zero ()
- the outdoor air temperature, , was sufficiently lower than the critical temperature, , ( when evaporative cooling was not activated).
2.6.4. Evaporative Cooling
- was not satisfied or
- (cooling load is not required)
- (tunnel ventilation is required only)
- (evaporative cooling is activated)
2.7. Moisture Balance Module
2.8. Gas Balance Module
2.8.1. Ammonia
2.8.2. Carbon Dioxide
2.9. Solar Radiation
2.10. System Performance
3. Case Study—Validation Test
4. Results and Discussion
4.1. Indoor Temperature (T) and Relative Humidity (RH)
4.2. Indoor Gas Concentration
4.3. Energy Consumption
5. Conclusions
- The simulated indoor temperature and relative humidity matched well with the monitored data showing similar overall trends. The average RMSEs of the daily T and RH were and , respectively, indicating acceptable discrepancies according to a previous study [23].
- The indoor concentration showed good agreement with the real data, especially for the second half of the validation test when the birds grew up. The tunnel played a crucial role in affecting the concentration as expected, and the final indoor daily average concentration stabilized at approximately .
- The indoor concentration a clear cyclical pattern resulting from manure removal performed every 48 h. The model predicted averaged concentration was approximately at the beginning of the batch, and the value decreased to approximately at the end due to the activation of tunnel ventilation. Ammonia gas was only detected by the sensors for a few days in reality with an averaged daily value of about , which is far below the threshold value. Both estimated and measured results of indoor concentrations demonstrated that the current ventilation strategies can effectively and efficiently remove indoor harmful gases.
- The corresponding difference between the measured and simulated energy consumption for heating, tunnel ventilation and base ventilation was , and , respectively. The difference in total energy consumption was approximately , indicating an acceptable discrepancy as suggested by the previous research [24], especially considering that many nonavoidable human interventions occur during the actual production process.
6. Future Study
- Quantify the difference in total energy consumption (and greenhouse gas emissions) among several typical management strategies. Conduct the cost-benefit analysis at the same time to provide the optimum strategy for the producers from a more comprehensive perspective.
- Incorporate the module for an indoor environment early warning function into the model by taking the 48 h weather forecast data into consideration.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Element | Material | ||
---|---|---|---|
Roof | 368.0 | Rock-wool insulation board | 0.35 |
Wall | 229.2 | Firebrick | 1.05 |
Windows | 4.6 | Polystyrene + metal frame | 6.67 |
Door | 5.8 | Single-decker wood | 4.76 |
Ground | 368.0 | Concrete | 1.20 |
Ventilation fans | 6.4 | / | 10.0 |
Age (Days) | Age (Weeks) | ||
---|---|---|---|
0 | 0 | / | / |
7 | 1 | 100 | ad libitum feeding |
14 | 2 | 210 | ad libitum feeding |
21 | 3 | 350 | ad libitum feeding |
28 | 4 | 520 | ad libitum feeding |
35 | 5 | 640 | 48 |
42 | 6 | 760 | 50 |
49 | 7 | 860 | 52 |
56 | 8 | 960 | 55 |
63 | 9 | 1050 | 57 |
70 | 10 | 1140 | 60 |
77 | 11 | 1230 | 63 |
84 | 12 | 1320 | 67 |
91 | 13 | 1410 | 70 |
98 | 14 | 1500 | 74 |
105 | 15 | 1590 | 78 |
112 | 16 | 1680 | 83 |
119 | 17 | 1770 | 88 |
126 | 18 | 1860 | 93 |
133 | 19 | 1950 | 98 |
140 | 20 | 2040 | 103 |
Coefficient | Value | Unit |
---|---|---|
/ |
Coefficient | Value |
---|---|
−0.1648 | |
5.081 | |
−4.105 |
Aspects | Notes | Unit |
---|---|---|
Heating | kWh | |
Forced convection heat transfer | Electrical energy consumed by the small fans located at the back of the radiators | kWh |
Radiator natural heat convection | During the first few weeks, radiators were treated as heat sources | kWh |
Base ventilation | Electrical energy consumed by the base ventilation fan | kWh |
Tunnel ventilation | Electrical energy consumed by the three tunnel ventilation fans | kWh |
Other (including evaporative cooling system, manure belt cleaning, feeding, etc.) | Neglected | N/A |
Parameters | Method | Unit | Information |
---|---|---|---|
Indoor air temperature | ) | °C | Model SHT20, Huakong Xingye Technology, Beijing, China |
Indoor RH | ) | Model SHT20, Huakong Xingye Technology, Beijing, China | |
concentration | ) | Model 336, Huakong Xingye Technology, Beijing, China | |
concentration | ) | Model 458, Zhize, Jinan, China | |
Indoor air velocity | ) | Model 9545, TSI, USA | |
Outdoor air temperature | ) | °C | Model SHT20, Huakong Xingye Technology, Beijing, China |
) | Model SHT20, Huakong Xingye Technology, Beijing, China | ||
Solar radiation intensity | ) | Model HSTL-ZFSQ, Huakong Xingye Technology, Beijing, China |
Electrical Energy Consumption | Method | Unit | Notes |
---|---|---|---|
Tunnel ventilation fans | Meter | ||
Base ventilation fan | Meter | ||
Boiler | Meter | ||
Small fans lactated at the back of the radiators | Meter |
Parameters | Method | Unit | Notes |
---|---|---|---|
Animal body weight | ) | To ensure the averaged value follows the designed body weight curve (Table 2) | |
Manure pH | Quality certified laboratory | / | Measured once a week, model input |
Manure MC | Quality certified laboratory | % | Measured once a week, model input |
RMSE | MAE | ||
---|---|---|---|
Hourly basis | T | ||
RH | |||
Daily basis | T | ||
RH |
RMSE | MAE | ||
---|---|---|---|
Hourly basis | |||
Daily basis | |||
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Du, L.; Yang, L.; Yang, C.; Hu, C.; Yu, C.; Qiu, M.; Liu, S.; Zhu, S.; Ye, X. Development and Validation of an Energy Consumption Model for Animal Houses Achieving Precision Livestock Farming. Animals 2022, 12, 2580. https://doi.org/10.3390/ani12192580
Du L, Yang L, Yang C, Hu C, Yu C, Qiu M, Liu S, Zhu S, Ye X. Development and Validation of an Energy Consumption Model for Animal Houses Achieving Precision Livestock Farming. Animals. 2022; 12(19):2580. https://doi.org/10.3390/ani12192580
Chicago/Turabian StyleDu, Longhuan, Li Yang, Chaowu Yang, Chenming Hu, Chunlin Yu, Mohan Qiu, Siyang Liu, Shiliang Zhu, and Xianlin Ye. 2022. "Development and Validation of an Energy Consumption Model for Animal Houses Achieving Precision Livestock Farming" Animals 12, no. 19: 2580. https://doi.org/10.3390/ani12192580
APA StyleDu, L., Yang, L., Yang, C., Hu, C., Yu, C., Qiu, M., Liu, S., Zhu, S., & Ye, X. (2022). Development and Validation of an Energy Consumption Model for Animal Houses Achieving Precision Livestock Farming. Animals, 12(19), 2580. https://doi.org/10.3390/ani12192580