Reviews of Photovoltaic and Energy Storage Systems in Buildings for Sustainable Power Generation and Utilization from Perspectives of System Integration and Optimization
Abstract
:1. Introduction
2. Photovoltaic Power Generation
2.1. Configurations of BIPV
2.1.1. PV-Roof System
2.1.2. PV-Wall System
2.1.3. PV-Window System
2.1.4. PV/T System
2.2. Yield of PV
2.2.1. Mathematic Models of PV Yield
2.2.2. Forecasting Models of PV Yield
2.2.3. Methods to Increase PV Yield
2.3. Long-Term Field Performance and Market Evolution of Building PV
3. Energy Storage System Using Storage Battery
3.1. Working Principles of Storage Battery
3.1.1. Mathematic Model
3.1.2. Performance Influence Factors
3.1.3. Passive Techniques in PV-BESS Design
3.2. Applications
3.2.1. Centralized BESS
3.2.2. Customer-Sited Distributed BESS
3.2.3. Electrical Vehicle
3.3. Comparison Among Different Energy Storage Methods
4. Optimization of PV-BESS System’s Design Parameters
4.1. Economic Performance Indexes
4.2. Optimized Design Parameters of the System’s Components
5. Operation Optimization of the PV-BESS System in Buildings
5.1. Measures to Improve Economic Performance
5.2. Operation Optimization Process
5.3. Operation Strategies
- (1)
- Energy transfer optimization
- (2)
- Smoothing the power profiles and reducing the peaks in generation
- (3)
- Increasing power usage from PV and reducing power usage from the grid
- (4)
- Improving the humanization
- (1)
- Time-of-use: considering peak, valley, and flat power prices
- (2)
- The demand response [130]
- (3)
- Power demand forecasts
5.4. Integration of PV-BESS with CCHP Systems
6. Conclusions
- (1)
- Photovoltaic power generation systems in buildings were introduced. The power yield of PV systems was influenced by factors such as temperature, solar radiation, roof type, and panel orientation. Models to calculate or forecast PV yield were summarized, and strategies to enhance energy generation were concluded.
- (2)
- Energy Storage Systems (ESS) in buildings play a crucial role in balancing electricity generation and consumption. Mathematic models of ESS were introduced, showing that the aging of batteries was mainly related to operating temperature, depth of discharge, discharge current, and charge current. Performance degradation models and operation strategies were proposed to extend batteries’ lifespan. Applications of typical ESS, such as centralized and customer-sited distributed systems, as well as in electric vehicles, were summarized, and related operation strategies were concluded.
- (3)
- Optimizations of the PV-BESS system during design processes were summarized, from perspectives of technical, economic, and environmental performances, which is a multi-objective optimization problem. With appropriate optimization algorithms, optimal design parameters of PV-BESS can be determined, leading to a better matching between supply and demand. The ambient environment, PV system configuration, energy system location, and power consumption were found to significantly influence the values of the design parameters of the PV-BESS system.
- (4)
- Optimization methods and technologies were summarized for the operation of PV-BESS systems in buildings. Energy management strategies and optimization processes for the PV-BESS system were concluded. It is also a multi-objective optimization problem, aiming to minimize cost, maximize profit, bring the best peak shaving effects, minimize utilization of storage, maximize renewable energy consumption, minimize degradation cost, and so on. Three mainstream operation strategies as well as corresponding applications were then summarized.
Funding
Conflicts of Interest
Glossary
Term | Definition |
Photovoltaic (PV) Systems | Systems that convert sunlight directly into electricity using semiconductor materials. |
Energy Storage System (ESS) | Technologies used to store energy for later use, including batteries, thermal storage, and hydrogen storage. |
Building Integrated Photovoltaics (BIPV) | PV systems integrated into building structures (e.g., roofs, walls, windows) to serve dual purposes of energy generation and architectural function. |
Peak Shaving | Reducing electricity consumption during periods of high demand to alleviate grid stress. |
Valley Filling | Storing excess energy during low-demand periods for use during peak times. |
State of Charge (SOC) | The remaining capacity of a battery as a percentage of its total capacity. |
Depth of Discharge (DoD) | The percentage of a battery’s capacity that has been discharged relative to its total capacity. |
Levelized Cost of Energy (LCOE) | The average cost of generating electricity over a system’s lifetime. |
Net Present Value (NPV) | A financial metric calculating the profitability of a project by comparing present revenues and costs. |
Internal Rate of Return (IRR) | The discount rate at which the NPV of a project equals zero, indicating breakeven profitability. |
Self-Consumption Ratio (SCR) | The proportion of PV-generated electricity consumed on-site. |
Self-Sufficiency Rate (SSR) | The ability of a system to meet its own energy demand without external grid support. |
Hybrid Systems | Combined energy systems (e.g., PV + ESS + diesel generators) for improved reliability and efficiency. |
Photovoltaic-Thermal (PV/T) System | A hybrid system generating both electricity and thermal energy from solar radiation. |
Compressed Air Energy Storage (CAES) | Storing energy by compressing air in underground reservoirs. |
Pumped Hydro Storage (PHS) | Storing energy by pumping water to an elevated reservoir and releasing it through turbines. |
Time-of-Use (TOU) Pricing | Electricity pricing that varies based on demand periods (peak, off-peak). |
Demand Response (DR) | Adjusting energy consumption patterns in response to grid signals or price incentives. |
Maximum Power Point Tracking (MPPT) | A control algorithm to optimize PV panel output under varying conditions. |
Vehicle-to-Grid (V2G) | Technology allowing bidirectional energy flow between electric vehicles and the grid. |
Abbreviations
Abbreviation | Full Term |
PV | Photovoltaic |
ESS | Energy Storage System |
BIPV | Building Integrated Photovoltaics |
BESS | Battery Energy Storage System |
SOC | State of Charge |
DoD | Depth of Discharge |
LCOE | Levelized Cost of Energy |
NPV | Net Present Value |
IRR | Internal Rate of Return |
SCR | Self-Consumption Ratio |
SSR | Self-Sufficiency Rate |
CAES | Compressed Air Energy Storage |
PHS | Pumped Hydro Storage |
TOU | Time-of-Use |
DR | Demand Response |
MPPT | Maximum Power Point Tracking |
V2G | Vehicle-to-Grid |
EV | Electric Vehicle |
HVAC | Heating, Ventilation, and Air Conditioning |
LES | Local Electricity System |
MILP | Mixed-Integer Linear Programming |
ANN | Artificial Neural Network |
GA | Genetic Algorithm |
NSGA-II | Non-dominated Sorting Genetic Algorithm II |
SAM | System Advisor Model |
SNL | Sandia National Laboratory |
NOCT | Nominal Operating Cell Temperature |
CL | Cycle Life |
FPPT | Flexible Power Point Tracking |
EMS | Energy Management System |
RE | Renewable Energy |
GHG | Greenhouse Gas |
NZEB | Net-Zero Energy Building |
TES | Thermal Energy Storage |
CCHP | Combined Cooling, Heating, and Power |
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Application | Characteristics | Advantages | Disadvantages |
---|---|---|---|
PV Combined with Windows |
|
|
|
PV Combined with Walls |
|
|
|
PV Combined with Roofs |
|
|
|
Country | Number of PV Systems | Roof-Top PV Capacity | Upper Specific Yield Limit |
---|---|---|---|
The Netherlands | 978 | 10.70 MWp | 1500 kWh/kWp |
Belgium | 4308 | 29.75 MWp | 1500 kWh/kWp |
Luxembourg | 86 | 1.56 MWp | 1500 kWh/kWp |
Germany | 24,204 | 325.73 MWp | 1500 kWh/kWp |
France | 474 | 5.15 MWp | 1600 kWh/kWp |
Italy | 2694 | 24.23 MWp | 1800 kWh/kWp |
Total | 32,744 | 397.12 MWp |
a | b | c | d | e | f | g | h |
0.0039 | 1.95 | 67.51 | 2070 | −0.011879 | −0.011879 | ||
i | j | k | l | m | n | o | p |
4464 | −0.1382 | −1519 | −0.4305 | 5963 | −0.6531 | 321.4 | 0.03168 |
Parameters | Numerical Value |
---|---|
Cost of investment: IC0 | 232 $/kW |
Operation and maintenance: Comt | 0.005 $/kW |
cost | |
Rated power: Pout | 260 W |
Conversion efficiency: ηOC | 0.97 |
Rated temperature: Ta | 25 °C |
Temperature coefficient: β | 0.47 |
Life cycle: CL | 20 years |
Indicator | Parameter | Description and Analysis |
---|---|---|
Economic Indicators | (Levelized Cost of Energy) |
|
(Net Present Value) |
| |
IRR (Internal Rate of Return) |
| |
Energy Optimization |
| |
| ||
Investment Analysis | (Investment) |
|
(Operating Costs) |
| |
(Replacement Costs) |
| |
| ||
Comprehensive Evaluation | (Life Cycle Cost) |
|
Algorithm | Applicable Scenarios | Advantages | Limitations | Convergence Speed | Computational Cost |
---|---|---|---|---|---|
Genetic Algorithm (GA) | Suitable for complex, multi-objective, and constrained optimization problems, especially when the solution space is large | Strong adaptability, global search ability, can avoid local optima | May require large computational resources, prone to local optima | Moderate | High |
NSGA-II | Suitable for multi-objective optimization problems, especially when there are conflicts between objectives | Efficient non-dominated sorting and crowding distance calculation, can effectively balance multiple objectives | Convergence may not be optimal, high computational cost in high-dimensional problems | Slow | Moderate |
Random Walk-Latin Hypercube Sampling (RWLHS) | Used for high-dimensional complex problems, especially when the objective function is unknown or hard to represent | Can effectively generate random samples, suitable for optimization with unknown or nonlinear problems | Not suitable for highly complex optimization problems, high computational cost, slow convergence | Slow | High |
Game Theory-Based Modeling Framework | Suitable for optimization problems involving multiple decision-makers and competitive or cooperative relationships | Can handle conflicts and collaboration between multiple participants | Model complexity, requires a deep understanding of participants’ strategies and goals, high computational cost | Moderate | High |
Global Pareto Search Algorithm | Suitable for multi-objective optimization problems, especially when there are conflicts between objectives | Can effectively find the optimal solution between multiple objectives, suitable for multi-objective and multi-constrained scenarios | Requires large computational resources, slow convergence in complex problems | Slow | High |
Newton Weighted Sum Frisch Method (NWSFA) | Suitable for nonlinear multi-objective optimization problems, especially with complex constraints | Good for handling nonlinear problems and offers high computational efficiency | Requires strong mathematical background, limited application scope, sensitive to initial conditions | Fast | Moderate |
Stochastic Programming | Suitable for optimization problems involving uncertainty, especially decision problems with random variables | Can handle uncertainty, suitable for optimization under uncertain environments | Slow convergence, high computational cost in large-scale problems | Slow | High |
Operation Strategy | Advantages | Disadvantages | Suitable Scenarios | Impact on Economic and Energy Efficiency |
---|---|---|---|---|
Time-of-Use Pricing (TOU) | Reduces energy costs by shifting usage to off-peak times | Requires accurate forecasting and user participation | Residential and commercial buildings with flexible loads | Improves economic efficiency, reduces peak demand |
Demand Response (DR) | Enhances grid stability, reduces energy costs | Relies on user participation and technology integration | Buildings with smart devices and control systems | Optimizes energy usage, lowers operational costs |
Accurate Forecasting Techniques | Improves energy management decisions | Requires advanced data analytics capabilities | Systems with variable load and generation patterns | Increases system reliability, optimizes battery usage |
Flexible Power Point Tracking (FPPT) | Reduces battery capacity requirements, lowers costs | May capture less energy compared to MPPT | PV systems with limited storage capacity | Balances energy capture with storage limitations |
Maximum Power Point Tracking (MPPT) | Maximizes energy capture from PV panels | Requires larger battery capacity, higher costs | Systems prioritizing maximum energy output | Enhances energy efficiency, higher initial investment |
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Tu, R.; Guo, Z.; Liu, L.; Wang, S.; Yang, X. Reviews of Photovoltaic and Energy Storage Systems in Buildings for Sustainable Power Generation and Utilization from Perspectives of System Integration and Optimization. Energies 2025, 18, 2683. https://doi.org/10.3390/en18112683
Tu R, Guo Z, Liu L, Wang S, Yang X. Reviews of Photovoltaic and Energy Storage Systems in Buildings for Sustainable Power Generation and Utilization from Perspectives of System Integration and Optimization. Energies. 2025; 18(11):2683. https://doi.org/10.3390/en18112683
Chicago/Turabian StyleTu, Rang, Zichen Guo, Lanbin Liu, Siqi Wang, and Xu Yang. 2025. "Reviews of Photovoltaic and Energy Storage Systems in Buildings for Sustainable Power Generation and Utilization from Perspectives of System Integration and Optimization" Energies 18, no. 11: 2683. https://doi.org/10.3390/en18112683
APA StyleTu, R., Guo, Z., Liu, L., Wang, S., & Yang, X. (2025). Reviews of Photovoltaic and Energy Storage Systems in Buildings for Sustainable Power Generation and Utilization from Perspectives of System Integration and Optimization. Energies, 18(11), 2683. https://doi.org/10.3390/en18112683