Collaborative Planning of Distribution Network, Data Centres and Renewable Energy in the Power Distribution IoT via Interval Optimization
Abstract
:1. Introduction
- ▪
- How can a collaborative optimization of DCs, RESs, and DNs be developed from a long-term planning perspective to promote carbon reduction?
- ▪
- How can multidimensional uncertain factors be modeled in a collaborative planning setting?
- ▪
- How can the mathematical model with interval variables be solved efficiently?
2. Literature Review
Contributions and Paper Organization
3. Model Framework
3.1. System Structure
3.2. Model Framework
4. DC Modeling
4.1. Information Domain
4.1.1. Delay-Tolerant Workloads (DW)
4.1.2. Real-Time Workloads (RWs)
4.1.3. Quality of Service Requirement
4.2. Physical Domain
4.2.1. Thermodynamic Process
4.2.2. Power Consumption Characteristics
5. A Collaborative Planning Model for the DN and DC Based on Interval Optimization
5.1. Objective Function
5.2. Constraints Conditions
5.2.1. Planning Stage
5.2.2. Operation Stage
- (1)
- RES
- (2)
- DN
5.2.3. Uncertain Variables
6. Solution Algorithm
6.1. Deterministic Transformation
6.2. Improved Integrated PSOGSA Algorithms
6.2.1. Traditional PSO and GSA
6.2.2. IIPSOA-GSA
- (1)
- Improved particle-updating scheme
- (2)
- Adaptive parameter strategy
6.3. Steps of the Algorithm
7. Case Study
7.1. Test System and Parameters
7.2. Results of the Experiments
7.3. Discussion
7.3.1. Performance of DC Demand Response
7.3.2. Performance of the Proposed Algorithm
8. Imitations of the Proposed Framework
9. Conclusions and Future Work
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
Indicates (Sets) | |
i | Load node |
d | DC node |
t | Time periods |
j | RES node |
Variables | |
Data workload capacity transferred from time t to time t’ | |
Number of data transferred between the two DCs | |
Quantity of DW/RW data at the end of scheduling | |
Waiting time for data workloads in the queue | |
Data-processing time | |
Indoor/outdoor temperature of the DC | |
Upper and lower bounds of the indoor temperature of the DC | |
Indoor-temperature variation rates of the data center | |
Total active power consumption of the DC at time t for node d | |
Active power of servers / ACE | |
Number of servers in the powered-on state at time t | |
Number of installed servers | |
Maximum CPU utilization | |
Cooling power of the DC | |
ACE installation capacity | |
Capacity expansion of the distribution transformer | |
Investment cost for equipment X | |
Investment cost for the distribution line | |
Binary variable representing the linear selection | |
Length of the line | |
Purchased power from the main grid | |
Purchase price of electricity | |
Cost coefficient for DW participating in demand response | |
Intensity of carbon emissions for electricity production on the grid side | |
Maximum expansion capacity of the substation | |
Maximum installation number of equipment X | |
/ | Active/reactive power flowing through line ij at time t |
Active/reactive power of the load at time t | |
Reactive power of RES/DC at time t | |
Maximum/minimum allowable voltage values at node i | |
/ | Resistance/reactance of line ij |
Capacities of line ij before and after the transformation | |
Uncertain variables | |
Interval of RES load factor | |
Interval of electricity price | |
Interval of carbon emission coefficient | |
Interval of electric load demand | |
Interval of workloads | |
Parameters | |
Ratio of DW/RW in the total data workloads | |
Initial amount of DW/RW | |
The maximum allowable delay time for users | |
Air density | |
Specific heat capacity of air | |
Wall area of the DC room | |
The unit wall heat exchange coefficient | |
Operating heat dissipation coefficient of the equipment | |
Energy efficiency coefficient of the DC/ACE | |
Average utilization of the server | |
Server processing rate | |
Server spare coefficient | |
Standby/peak power consumption of a single server |
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Reference | Interacts with DN | Research Field | Uncertainty Handling | |||
---|---|---|---|---|---|---|
Ignores Uncertainty | SO | RO | IO | |||
[6] | × | Operation | √ | × | × | × |
[7] | × | Operation | √ | × | × | × |
[8] | × | Operation | √ | × | × | × |
[9] | × | Operation | √ | × | × | × |
[10] | × | Operation | √ | × | × | × |
[11] | √ | Operation | √ | × | × | × |
[12] | √ | Operation | √ | × | × | × |
[13] | √ | Operation | √ | × | × | × |
[14] | √ | Operation | √ | × | × | × |
[15] | √ | Operation | × | × | √ | × |
[16] | √ | Operation | √ | × | × | × |
[17] | √ | Operation | √ | × | × | × |
[18] | √ | Operation | √ | × | × | × |
[19] | √ | Operation | √ | × | × | × |
[20] | √ | Operation | √ | × | × | × |
[21] | √ | DC self-planning | √ | √ | × | × |
[22] | √ | DC self-planning | √ | × | × | × |
[23] | √ | DC self-planning | √ | × | × | × |
[24] | √ | DC self-planning | × | × | √ | × |
[25] | √ | DC self-planning | × | √ | × | × |
This paper | √ | Collaborative planning | × | × | × | √ |
Equipment | Parameters | |
---|---|---|
Technical | Economic | |
Wind Turbine | = 100 kW | = 7000 RMB/kW |
= 10 | ||
= 6% | ||
= 20 | ||
Server | = 600 W | = 15,200 RMB/unit |
= 300 W | ||
= 500 | ||
= 1500 | ||
= 8% | ||
= 20 | ||
ACE | = 50 kW | = 835 RMB/kW |
= 4 | ||
= 10 | ||
= 8% | ||
= 20 |
Parameters | Values | Parameters | Values |
---|---|---|---|
1.2 kg/m3 | 1.09 W/(m2·k) | ||
1000 J/(kg·°C) | 1000 m2 | ||
0.9 | RMB 0.1/Gbps |
Distribution Line Model | Resistivity (Ω/km) | Reactance (Ω/km) | Current Rating (A) | Construction Cost (RMB 10⁴/km) |
---|---|---|---|---|
1 | 0.076 | 0.069 | 410 | 60 |
2 | 0.046 | 0.066 | 713 | 80 |
3 | 0.035 | 0.06 | 1025 | 100 |
Investment Cost (10⁴ RMB) | System Operation (RMB 10⁴) | Carbon Emissions (RMB 10⁴) | Total Cost (RMB 10⁴) | |||||
---|---|---|---|---|---|---|---|---|
Case | Distribution Line | Transformer | Server | ACE | Wind Turbine | |||
I | 85.43 | 37.94 | 512.57 | 11.25 | 253.12 | 2746.46 | 1640.12 | 5261.12 |
II | 62.46 | 31.92 | 512.57 | 11.25 | 234.78 | 2476.68 | 1357.49 | 4681.86 |
III | 39.34 | 10.65 | 267.31 | 6.12 | 216.72 | 1963.22 | 894.78 | 3404.91 |
Distribution Line (From-To Nodes) | WT/Unit (Node) | Server/Unit (Node) | ACE/Unit (Node) | |||
---|---|---|---|---|---|---|
Model 1 | Model 2 | Model 3 | ||||
I | 6–7/7–8/8–9/3–23/23–24/ 6–26/26–27/27–28/28–29 | 3–4/4–5/5–6 | 1–2/2–3 | 6 (8), 10 (13), 10 (19), 10 (25), 10 (26), 10 (30) | 995 (18), 984 (22), 985 (25), 963 (33) | 3 (18), 4 (22), 4 (25), 4 (33) |
II | 6–7/7–8/8–9/ 3–23/6–26/ | 3–4/4–5/5–6 | 1–2/2–3 | 7 (9), 10 (13), 9 (19), 10 (23), 10 (26) | 995 (13), 984 (19), 985 (23), 963 (26) | 3 (13), 4 (19), 4 (23), 4(26) |
III | 4–5/5–6/6–7 | 2–3/3–4 | 1–2 | 9 (18), 8 (22), 10 (25), 9 (33) | 476 (13), 472 (19), 463 (25), 652 (26) | 2 (13), 2 (19), 2 (25), 3 (26) |
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Share and Cite
Su, L.; Wu, W.; Feng, W.; Qin, J.; Ao, Y. Collaborative Planning of Distribution Network, Data Centres and Renewable Energy in the Power Distribution IoT via Interval Optimization. Energies 2024, 17, 3623. https://doi.org/10.3390/en17153623
Su L, Wu W, Feng W, Qin J, Ao Y. Collaborative Planning of Distribution Network, Data Centres and Renewable Energy in the Power Distribution IoT via Interval Optimization. Energies. 2024; 17(15):3623. https://doi.org/10.3390/en17153623
Chicago/Turabian StyleSu, Lei, Wenxiang Wu, Wanli Feng, Junda Qin, and Yuqi Ao. 2024. "Collaborative Planning of Distribution Network, Data Centres and Renewable Energy in the Power Distribution IoT via Interval Optimization" Energies 17, no. 15: 3623. https://doi.org/10.3390/en17153623
APA StyleSu, L., Wu, W., Feng, W., Qin, J., & Ao, Y. (2024). Collaborative Planning of Distribution Network, Data Centres and Renewable Energy in the Power Distribution IoT via Interval Optimization. Energies, 17(15), 3623. https://doi.org/10.3390/en17153623