Energy Efficiency Measurement Method and Thermal Environment in Data Centers—A Literature Review
Abstract
1. Introduction
1.1. Growth of Data Centers and Energy Concerns
1.2. Importance of Power Metrics
1.3. Research Gaps
1.4. Research Objectives
- To categorize IT equipment and measure the PUE value of different data centers.
- To investigate the influence of data center type on the energy distribution priorities and cooling methods of each data center type.
- To evaluate data centers’ compliance with existing thermal standards and identify the deviations that indicate a need for improvement.
- To evaluate the possible thermal comfort of employees working in data center environments, based on exposure cycles and workplace conditions, with the aim of proposing occupational thermal comfort guidelines.
2. Research Methodology
2.1. Process of Literature Review
2.2. Power Efficiency Metric in Data Centers
2.3. Alternative Metrics to Measure Data Center Power Efficiency
3. Results and Discussion
3.1. Energy Usage and Efficiency Measurement in Data Centers
3.2. The Role of Data Center Classification in Energy Efficiency Measurement
3.2.1. Limitations of PUE Without Data Center Classification
3.2.2. Evaluating Passive Cooling Feasibility Through Data Center Classification
3.3. Thermal Environment in Data Centers
3.4. Thermal Comfort in Computer Rooms
4. Conclusions
- The referenced data centers averaged 44.8% for IT equipment power, resulting in a PUE of 2.23, being categorized as “Average” efficiency. These results highlight that there is room for improvement to achieve more efficient data center power usage.
- Larger-scale data center types, such as hyperscale, are more compatible with passive cooling compared to smaller-scale ones, such as small and medium business data centers. These are related to data center size and location. Smaller data centers are often built near offices, while larger ones are placed in areas suited for passive cooling.
- Most data centers are already following the ASHRAE thermal guidelines, although many remain in the “allowable range” rather than the “recommended range”. Some facilities even exceed the allowable limits, which may pose risk to the equipment.
- Thermal comfort research specific to data centers was not found during this study; therefore, data from computer labs, which are unfortunately also limited and not standardized, were used instead. This reflects the lack of attention to the topic and highlights the need for further research. Even if it does not change how data centers operate, standards such as exposure duration or clothing requirements could be adopted instead.
Funding
Acknowledgments
Conflicts of Interest
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References | Data Type | Equipment | Power Consumption (%) | ||
---|---|---|---|---|---|
Equipment Usage | PUE Categorization Usage | ||||
Cho et al. [18] | Identified as typical data center power consumption in their study | Processor | 15 | IT equipment power | 52 |
Communication equipment | 4 | ||||
Storage | 4 | ||||
Server power supply | 14 | ||||
Other server | 15 | ||||
Power distribution units (PDUs) | 1 | Facility power | 48 | ||
Cooling | 38 | ||||
Switchgear | 3 | ||||
Lighting system | 1 | ||||
Uninterruptable power supply (UPS) | 5 | ||||
Yaqi et al. [23] | Referred to as data from an EYP report (source not given) | IT equipment | 50 | IT equipment power | 50 |
Power supply system | 10 | Facility power | 50 | ||
Lighting system | 3 | ||||
Room cooling system | 25 | ||||
Ventilation and humidification system | 12 | ||||
Info-tech [24] | Identified as typical data center power consumption in their study | Network hardware | 10 | IT equipment power | 36 |
Server and storage | 26 | ||||
Power conversion | 11 | Facility power | 64 | ||
Cooling | 50 | ||||
Lighting system | 3 | ||||
Karlsson and Moshfegh [25] | Measured data (Linköping, Sweden) | Computer equipment | 29 | IT equipment power | 29 |
Central chiller plant | 34 | Facility power | 71 | ||
Computer room air conditioner unit | 37 | ||||
Zhang et al. [15] | Identified as typical data center power consumption in their study | Information and communication technology (ICT) | 50 | IT equipment power | 50 |
Lighting | 3 | Facility power | 50 | ||
Uninterruptible power supply (UPS) and energy transformation | 10 | ||||
Chiller | 14 | ||||
Fans | 12 | ||||
Other equipment | 11 | ||||
Ahuja et al. [26] | Simulation result | IT equipment | 52 | IT equipment power | 52 |
Chiller system | 22 | Facility power | 48 | ||
Computer room air conditioner | 11 | ||||
Other | 15 | ||||
Average | IT equipment power | 44.8 | |||
Facility power | 51.2 |
References | Location of Data Center | Cooling Method | Climate Suitability | Space Requirement | Geographic Constraints |
---|---|---|---|---|---|
Inoue et al. [30] | Hokkaido, Japan | Airside free cooling | Cold climates required (e.g., Hokkaido) | Large open spaces for airflow stabilization | Should not be near urban pollution sources |
Mi et al. [31] | Chongqing, China | Waterside free cooling | Moderate-to-humid climates | Requires cooling towers | Needs access to a stable water source (e.g., cooling towers) |
Data Center Type [27] | Available Space * | Typical Location * | Cooling Load/Density * | Airside Free Cooling + [30] | Waterside Free Cooling + [31] | Recommended Cooling Method * |
---|---|---|---|---|---|---|
Telco Edge | Very limited | Dense urban areas | High | Use liquid-cooled racks or direct expansion (DX) cooling. | ||
Commercial Edge | Small–medium | Office buildings, urban | High | Adopt precision air cooling or closed-loop liquid cooling. | ||
Small and Medium Business (SMB) | Limited | Urban/suburban | Moderate–high | Consider small-scale waterside economizer with a backup chiller. | ||
Enterprise Branch | Moderate | Mixed (urban/suburban) | Moderate | Install compact cooling towers with a hybrid chiller system. | ||
Internal | Moderate | Office campuses | Moderate–high | Use high-efficiency air-cooled systems or waterside economizers. | ||
Communications Service Providers (Comms SPs) | Moderate–large | Regional data hubs | High | Hybrid cooling with mechanical support for peak loads. | ||
Colocation—Small/Med | Available | Mixed (suburban/regional) | Moderate | Prioritize free cooling via airside and waterside economizers. | ||
Colocation—Large | Large | Regional/remote | High | Use optimized airside cooling and large-scale waterside economizers. | ||
Hyperscale | Very large | Remote, optimized for cooling | Very high | Hybrid cooling strategy combining air and advanced liquid cooling. |
References | Data Center Location | Air Temperature (°C) | Relative Humidity (%) | ||||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Room | Outside [33,34,35,36] | Room | Outside [33,34,35,36] | ||||||||||
Min. | Avg. | Max. | Min. | Avg. | Max. | Min. | Avg. | Max. | Min. | Avg. | Max. | ||
Purwanto et al. [37] | Bengkulu, Indonesia | 23.0 | 28.0 * | 33.0 | 24.0 | 27.0 | 30.0 | 46 | 57 * | 68 | 70 | 77 * | 85 |
Nasution et al. [38] | Medan, Indonesia | 15.0 | 16.5 * | 18.0 | 24.0 | 27.5 | 31.0 | 18 | 19 * | 20 | - | - | - |
Arifin et al. [39] | Jakarta, Indonesia | 19.5 | 23.9 * | 28.4 | 25.0 | 28.3 * | 32.0 | - | - | - | 65 | 83 | 98 |
Peng et al. [40] | Hong Kong, China | 15.0 | 24.5 * | 34.0 | 17.0 | 20.5 * | 24.0 | 17 | 32 * | 48 | 54 | 74 * | 95 |
Shehabi et al. [41] | Oakland, USA | 18.3 | 19.7 * | 21.1 | 10.0 | 17.0 * | 24.0 | 40 | 47 * | 55 | - | - | - |
Reference | Location Type | Air Temperature (°C) | Relative Humidity (%) | Tc (°C) | PMV | PPD (%) | ||||
---|---|---|---|---|---|---|---|---|---|---|
Min. | Avg. | Max. | Min. | Avg. | Max. | |||||
Ismail et al. [43] | Computer lab | - | - | 30.0 | 40 | 50 * | 60 | 20–24 | 1.1–1.4 | - |
Telejko [49] | Computer lab | 26.8 | 28.2 * | 29.6 | 49 | 52 * | 55 | Exceeding the recommended temperature when occupied | - | - |
Abanto et al. [47] | Computer room | 16.8 | 18.3 * | 19.8 | - | - | 46 | In line with thermal standard | - | <10 |
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Setyo, Z.G.M.; Rijal, H.B.; Aqilah, N.; Abdullah, N. Energy Efficiency Measurement Method and Thermal Environment in Data Centers—A Literature Review. Energies 2025, 18, 3689. https://doi.org/10.3390/en18143689
Setyo ZGM, Rijal HB, Aqilah N, Abdullah N. Energy Efficiency Measurement Method and Thermal Environment in Data Centers—A Literature Review. Energies. 2025; 18(14):3689. https://doi.org/10.3390/en18143689
Chicago/Turabian StyleSetyo, Zaki Ghifari Muhamad, Hom Bahadur Rijal, Naja Aqilah, and Norhayati Abdullah. 2025. "Energy Efficiency Measurement Method and Thermal Environment in Data Centers—A Literature Review" Energies 18, no. 14: 3689. https://doi.org/10.3390/en18143689
APA StyleSetyo, Z. G. M., Rijal, H. B., Aqilah, N., & Abdullah, N. (2025). Energy Efficiency Measurement Method and Thermal Environment in Data Centers—A Literature Review. Energies, 18(14), 3689. https://doi.org/10.3390/en18143689