Improved Model of Base Station Power System for the Optimal Capacity Planning of Photovoltaic and Energy Storage System
Abstract
:1. Introduction
2. Model of Base Station Power System
2.1. Converter Model
2.2. Battery and PV Model
2.3. Economic Model
2.4. Ecological Model
3. Capacity Configuration Optimization
3.1. Objective Function
3.2. Constraint Condition
3.3. Power Output Strategy
3.4. Solution Algorithm
4. Case Study
4.1. Economic Results
4.2. Ecological Results
4.3. Comprehensive Optimization Results
5. Conclusions
- The loss of power converters significantly affects the optimization of base station PV and ESS. Calculating with a fixed efficiency cannot accurately reflect the actual situation.
- The proposed evaluation method achieves a balance in LCC, initial investment, return on investment, and carbon emissions.
- From the perspective of LCC and carbon emissions, base stations with lower annual irradiance levels can install more PV. However, when considering the return on investment, the opposite is true.
Author Contributions
Funding
Data Availability Statement
Conflicts of Interest
Nomenclature
Acronyms | |
5G | Fifth-generation Mobile Communication Technology |
4G | Fourth-generation Mobile Communication Technology |
PV | Photovoltaic |
ESS | Energy Storage Systems |
EEG | Excess Energy Generation |
DP | Dynamic Programming |
MILP | Mixed Integer Linear Programming |
RESCA | Reformed Electric System Cascade Analysis |
NPC | Net Present Cost |
LCC | Life Cycle Cost |
BBU | Baseband Unit |
AAU | Active Antenna Unit |
AC | Alternating Current |
DC | Direct Current |
PFC | Power Factor Correction |
PWM | Pulse Width Modulation |
BMS | Battery Management System |
PCB | Printed Circuit Board |
SOC | State of Charge |
SOH | State of Health |
Parameters | |
Converter efficiency | |
Converter operating power | |
Converter power loss | |
Fitting coefficients | |
Efficiency of the converter at 100%, 50%, and 10% load | |
Input current of the converter | |
Battery voltage | |
Output power of photovoltaic modules | |
Efficiency of photovoltaic modules | |
Rated power of photovoltaic modules | |
Current solar irradiance | |
Solar irradiance under standard conditions | |
Temperature coefficient of photovoltaic modules | |
Current photovoltaic modules temperature | |
PV modules temperature under standard conditions | |
Life cycle cost | |
Initial investment | |
Operating cost | |
Disposal cost | |
Discount rate | |
LC | Life cycle |
Initial investment of converters, PV modules and batteries | |
Equipment installation costs | |
Unit price of PV modules, converters and batteries | |
Number of converter | |
Capacity of batteries | |
Maintenance cost | |
Electricity purchasing cost | |
Unit price of electricity | |
Power purchased from the utility grid | |
Length of the period | |
Maintenance coefficient of year t | |
Battery capacity that needs to be replaced | |
Disposal price of PV modules, energy storage batteries and converters | |
Carbon emissions | |
Installation carbon emissions | |
Operating carbon emissions | |
Carbon emission coefficients of PV modules, energy storage batteries, converters and utility grid | |
Installed capacity of converters | |
Dimensionless values of the LCC, initial investment, investment return rate, and carbon emissions reduction | |
LCC of the base station without PV and ESS | |
Carbon emissions of the base station without PV and ESS | |
Parameters used to adjust the starting score | |
Weighting coefficients for the LCC, initial investment cost, return on investment, and carbon reduction | |
Real-time power of the base station equipment | |
Real-time power of the batterie | |
Real-time power of the PFC converter | |
Efficiencies of the PV converter, ESS converter, and PFC converter |
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Parameters | Value |
---|---|
electricity price (USD) | 0.094 |
battery price (USD/kWh) | 126.57 |
PV module price (USD/kW) | 309.39 |
battery carbon emission coefficients (kg/kWh) | 91.21 |
PV module carbon emission coefficients (kg/kW) | 2522.7 |
grid carbon emission coefficients (kg/kWh) | 0.81129 |
maximum power point voltage of PV module (V) | 38 |
first-year power degradation of PV module | 2% |
Annual power degradation of PV modules | 0.55% |
Scheme | Converter Model | Lifecycle Cost (USD) | PV (kW) | ESS (kWh) |
---|---|---|---|---|
Scheme 1 | Dynamic | 77,900 | - | - |
Scheme 1 | η = 100 | 74,410 | - | - |
Scheme 1 | η = 95 | 77,580 | - | - |
Scheme 1 | η = 90 | 81,110 | - | - |
Scheme 2 | Dynamic | 61,210 | 20 | 23 |
Scheme 2 | η = 100 | 55,650 | 23 | 59 |
Scheme 2 | η = 95 | 59,120 | 22.5 | 42 |
Scheme 2 | η = 90 | 62,630 | 21.5 | 22 |
Scheme | Climate | Lifecycle Cost (USD) | PV (kW) | ESS (kWh) |
---|---|---|---|---|
Scheme 1 | Guangxi | 77,900 | - | - |
Scheme 2 | Guangxi | 64,910 | 24 | 23 |
Scheme 3 | Guangxi | 60,150 | 32.5 | 78 |
Scheme 1 | Xinjiang | 77,900 | - | - |
Scheme 2 | Xinjiang | 61,210 | 20 | 23 |
Scheme 3 | Xinjiang | 55,860 | 28.5 | 79 |
Scheme | Climate | Lifecycle Cost (USD) | PV (kW) | ESS (kWh) |
---|---|---|---|---|
Scheme 2 | Guangxi | 160.8 | 47.5 | 88 |
Scheme 3 | Guangxi | 179.6 | 43 | 71 |
Scheme 2 | Xinjiang | 205.8 | 44.5 | 83 |
Scheme 3 | Xinjiang | 221.4 | 39.5 | 71 |
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Share and Cite
Zhu, B.; Wang, Y.; Guo, H.; Yang, N.; Lu, L. Improved Model of Base Station Power System for the Optimal Capacity Planning of Photovoltaic and Energy Storage System. Electronics 2023, 12, 4826. https://doi.org/10.3390/electronics12234826
Zhu B, Wang Y, Guo H, Yang N, Lu L. Improved Model of Base Station Power System for the Optimal Capacity Planning of Photovoltaic and Energy Storage System. Electronics. 2023; 12(23):4826. https://doi.org/10.3390/electronics12234826
Chicago/Turabian StyleZhu, Binxin, Yizhang Wang, Hao Guo, Nan Yang, and Ling Lu. 2023. "Improved Model of Base Station Power System for the Optimal Capacity Planning of Photovoltaic and Energy Storage System" Electronics 12, no. 23: 4826. https://doi.org/10.3390/electronics12234826
APA StyleZhu, B., Wang, Y., Guo, H., Yang, N., & Lu, L. (2023). Improved Model of Base Station Power System for the Optimal Capacity Planning of Photovoltaic and Energy Storage System. Electronics, 12(23), 4826. https://doi.org/10.3390/electronics12234826