A Comprehensive Review of Solar PV Integration with Smart-Grids: Challenges, Standards, and Grid Codes
Abstract
:1. Introduction
- (1)
- Techno-Economic Analysis of Renewable based Grid Architectures: An evaluation of AC, DC, and smart grids focuses on their costs, efficiency, stability, and scalability. Smart grids, augmented by AI and IoT, refine energy management, guaranteeing economical and sustainable integration of renewables.
- (2)
- Innovations in a Renewable-Driven World: Innovations in a renewable-driven world include advanced solar PV systems, energy storage systems, and smart grids. Technologies like digital twins, AI, machine learning, and blockchain enhance energy optimization, predictive maintenance, and secure energy transactions, driving the transition to sustainable energy.
- (3)
- Challenges in PV integration to the Grid: PV integration challenges include intermittency, voltage fluctuations, frequency instability, harmonics, reverse power flow, grid congestion, and the need for energy storage and infrastructure upgrades to ensure stable operation.
- (4)
- Role of Regulatory Bodies and Grid Codes: Reviews the involvement of both local and international regulatory bodies in establishing grid codes aimed at addressing challenges specific to grid-connected solar PV systems, such as stability and compatibility issues.
2. Modern Power Grids: Challenges and Innovations in a Renewable-Driven World
2.1. Introduction
2.2. Architectures of Power Grid
2.2.1. Conventional Grid
2.2.2. AC Microgrid
2.2.3. DC Microgrid
2.2.4. Smart Grid
3. Challenges in Solar PV Integration with the Power Grid
3.1. Introduction
3.2. Voltage Fluctuations
3.3. Output Power Prediction
3.4. Frequency Variations
3.5. Reactive Power Compensation
3.6. Impacts of Harmonics/Power Quality
3.7. Angular Stability
3.8. Other Challenges
4. Global Standards and Grid Codes for Solar PV Integration into Power Grid
4.1. Introduction
4.2. Grid Codes
4.2.1. Steady-State Requirements
- i.
- Voltage ControlPV power stations must maintain grid voltage within specified limits.
- Reactive Power Support: Advanced inverters are required to provide or absorb reactive power based on grid conditions. Grid codes often define reactive power capability curves to ensure voltage stability.
- Voltage Droop Control: This technique allows PV systems to adjust their output voltage dynamically in response to grid voltage deviations.
- ii.
- Frequency ControlAlthough PV systems lack inherent inertia like traditional generators, they must contribute to frequency regulation:
- Primary Frequency Control: PV systems can adjust active power output during frequency fluctuations, either by curtailing generation or using stored energy.
- Secondary Frequency Control: Some advanced grid codes require PV systems to participate in long-term frequency restoration processes.
- iii.
- Power Factor RegulationMaintaining a specified power factor is crucial for efficient energy transfer and reducing losses.
- Range Specification: Grid codes typically require PV systems to operate within a defined power factor range (e.g., 0.95 lagging to 0.95 leading).
- Dynamic Adjustments: Advanced inverters allow real-time adjustment of power factor based on grid conditions.
- iv.
- Harmonic Distortion MitigationPV inverters must comply with limits on Total Harmonic Distortion (THD) to avoid adversely affecting power quality.
- Filter Design: Harmonics are minimized through the use of active and passive filters integrated into inverter systems.
- Compliance with Standards: Grid codes reference standards such as IEEE 519 or IEC 61000-3 for harmonic limits.
- v.
- Active Power CurtailmentDuring scenarios of excess generation, PV systems must have the capability to reduce their output to balance grid supply and demand.
- Automatic Curtailment: Advanced grid codes require inverters to respond automatically to signals from grid operators.
- Reserve Power: Some systems are designed to reserve a portion of their capacity for grid support during disturbances.
4.2.2. Transient Requirements
- i.
- fault ride-through (FRT)FRT capabilities allow PV systems to remain connected during voltage disturbances, preventing cascading failures.
- Low-Voltage Ride-Through (LVRT): PV systems must continue operation during voltage sags, providing reactive power to support grid recovery.
- High-Voltage Ride-Through (HVRT): During temporary voltage spikes, PV systems must avoid disconnection unless safety is compromised.
- ii.
- Dynamic Frequency SupportGrid codes increasingly require PV systems to mimic the inertia provided by traditional generators:
- Synthetic Inertia: Advanced inverters can emulate inertial responses by adjusting active power output during frequency deviations.
- Fast Frequency Response (FFR): PV systems are expected to react quickly to frequency changes, stabilizing the grid before traditional resources respond.
- iii.
- Voltage Recovery SupportAfter fault clearance, PV systems must assist in restoring grid voltage levels.
- Post-Fault Reactive Power Injection: Grid codes often mandate reactive power injection during recovery to stabilize voltages.
- Active Power Ramp-Up: PV systems must ramp up their active power output in a controlled manner to avoid additional disturbances.
- iv.
- Synchronization and Islanding DetectionPV inverters must ensure seamless synchronization with the grid during reconnection and detect islanding conditions to prevent unsafe operations.
- Phase-Locked Loops (PLLs): Used for precise synchronization with grid voltage and frequency.
- Islanding Protection: Advanced algorithms detect unintentional islanding and disconnect the PV system to ensure safety and compliance.
4.2.3. Reactive Power Support
- Fixed Reactive Power: Maintaining a constant reactive power output.
- Fixed Power Factor: Operating at a predetermined PF regardless of active power output.
- Q-V Droop Control: Adjusting reactive power based on voltage deviations at the POC.
- Photovoltaic systems with a capacity of less than 1.5 MW are required to incorporate reactive power control functions, including fixed Q, fixed PF, and automatic PF control, which adjusts based on the active power output.
- Photovoltaic plants exceeding 1.5 MW are required to implement fixed Q, fixed PF, and Q-V droop control mechanisms.
Voltage Magnitudes and Thresholds
- Voltage thresholds are established as the permissible operating ranges for voltage at the point of common coupling (PCC). These generally encompass constraints for nominal voltage, along with elevated and reduced thresholds that necessitate corrective measures when exceeded.
- For instance, certain standards delineate typical operating ranges of ±10% of the nominal voltage, alongside supplementary thresholds for extreme conditions that necessitate immediate disconnection or other protective measures.
Frequency Magnitudes and Thresholds
- Frequency thresholds pertain to variations from the standard grid frequency (for instance, 50 Hz or 60 Hz). The frequency ranges that are considered acceptable are typically narrow to ensure synchrony between distributed energy resources and the grid.
- Grid codes can specify “narrow” and “wide” frequency bands for standard operation and emergency situations, along with the associated requirements for DER response.
Trip Times
- The duration of trips determines the speed at which distributed energy resources must detach from the grid or react to voltage and frequency fluctuations that exceed established limits.
- A prompt response is essential to avert cascading failures, whereas a delayed disconnection is frequently advocated for minor deviations to enhance grid stability during transient events.
- For instance, regulations might mandate prompt disconnection in cases of significant overvoltage (e.g., >120% of nominal voltage) or permit prolonged operation at diminished power output during moderate underfrequency occurrences.
Voltage Magnitude and Its Significance in LV PV Systems
4.2.4. Power Quality Requirement
4.2.5. Transient Requirements in Grid Code
Fault Ride Through (FRT)
Low-Voltage Ride-Through (LVRT) Requirement for Distribution Grids
Zero Voltage Ride-Through (ZVRT)
- 1.
- Italy
- 2.
- Germany
- 3.
- Spain
- 4.
- Australia
Significance of ZVRT Requirements
High-Voltage Ride-Through (HVRT)
4.3. Frequency Support
- The rate of change of frequency (ROCOF): The time derivative of the system frequency (df/dt), serving to quantify the initial rate of frequency deviation that occurs after a disturbance.
- Frequency nadir: The lowest frequency value attained during the transient phase, affected by system inertia and primary frequency response [247].
- Steady-state frequency deviation: The peak frequency variation at which the system reaches stability following a notable power imbalance, defined by the quantity of PFR provided within a designated timeframe.
4.4. Dynamic Voltage Support
4.5. Dynamic Reactive Current Injection
4.5.1. Power Factor Capabilities
4.5.2. Power Factor Requirements Across Standards
- The International Standard IEEE 929 and the Indian standard “Gazette of India: Part III—Sec.4” establish a wider range of ±0.85 for the power factor, providing greater flexibility in the operation of PV systems.
- Many other standards impose more stringent thresholds, generally within a ±0.95 range. This facilitates improved management of reactive power contributions from photovoltaic systems, thereby strengthening grid stability and reducing voltage fluctuations.
- Rated Active or Apparent Power: The German standard VDE-AR-N 4105 modifies power factor requirements according to the rated capacity of the photovoltaic system. Larger systems are compelled to comply with more stringent regulations because of their considerable influence on the grid.
- Location and Commissioning Date: The Indian standard “Gazette of India: Part III—Sec.4” takes into account the geographical location of the PV system as well as the year it commenced operation, focusing on regional grid conditions and the development of technical standards over time.
4.5.3. Injection and Absorption of Reactive Power
- The German standard BDEW requires that PV systems deliver reactive power at all active power output levels, thereby guaranteeing consistent voltage support under varying operating conditions.
- The British standards G59 and G83 stipulate that reactive power support is necessary solely when the PV system functions at its rated power. This more flexible approach streamlines the criteria for smaller systems or those with restricted reactive power capabilities.
4.5.4. Active Power Dependency and Operational Flexibility
- In Germany, regulations permit reactive power injection at any active power level, allowing PV systems to assist the grid even when operating at partial load or in idle mode.
- In the UK, standards emphasize reactive power support solely during peak active power output. This approach simplifies operations but may restrict contributions to voltage stabilization in low-load situations.
4.5.5. Dynamic Capabilities of Solar PV Systems
- Address voltage fluctuations resulting from changes in active and reactive power flows.
- Mitigate voltage fluctuations that may jeopardize grid stability or lead to disconnections.
- Improve the robustness of the grid in the face of disruptions, including faults or voltage sags.
4.5.6. Global Relevance
- In the event of faults, the majority of grid codes permit photovoltaic systems to function with no active power output, as long as the reactive current injection criteria are satisfied. Nonetheless, as long as the nominal power of the inverters remains within limits, photovoltaic systems can persist in supplying active power to the grid, thereby enhancing stability.
- The inconsistencies in grid codes underscore the necessity for unified and thorough guidelines that encompass both reactive and active power contributions from photovoltaic systems.
4.6. Synchronization and Islanding Capabilities
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Storage Technology | PHESS | CAESS | FESS | BESS | SMESS | SCESS | FCESS | |
---|---|---|---|---|---|---|---|---|
Lithium-Ion | Lead-Acid | |||||||
Power range (MW) | 100–5000 | 5–300 | 0–0.25 | 0–0.1 | 0–40 | 0.1–10 | 0–0.30 | 0–50 |
Energy range (kWh) | 25–5000 | 2550–25,000 | 0.1–100 | 0.001–5 | <200,000 | |||
Energy density (Wh/kg) | 0.5–1.5 | 30–60 | 5–80 | 120–230 | 30–50 | 0.5–5 | 0.05–15 | 500–3000 |
Power density (W/kg) | - | - | 700–12,000 | 150–2000 | 75–300 | 500–2000 | 10– | >500 W/L * |
Efficiency (%) | 65–87 | 80–89 | 85–95 | 75–97 | 63–90 | 95–98 | 84–97 | 20–66 |
Pickup time | 2–5 min | 1–2 min | Seconds | Milliseconds | Milliseconds | Milliseconds | Milliseconds | Seconds |
Discharge time | Hours-day | Hours-day | Seconds-minutes | Minutes-hours | Seconds-hours | Milliseconds-seconds | Milliseconds-minutes | Seconds-days |
Storage period | Hours-months | Hours-months | Seconds-minutes | Minutes-days | Minutes-days | Minutes-hours | Seconds-hours | Hours-months |
Lifetime (year) | 40–60 | 20–60 | 15- | 5–15 | 5–15 | 20+ | 10–30 | 5–15 |
Environmental impact | High | High | No | Very low | Medium | Low | Low | Low |
Advantages | 1. Mature technology 2. low cost and flexibility | 3. Matured technology 4. low investment | 5. Fast response 6. No environmental impact | 7. Long lifecycle 8. Lightweight | 9. Mature technology 10. Cheap and recyclable | 11. Fast response 12. High power density | 13. Fast response 14. High power density | 15. Long time storage 16. No emission |
Disadvantages | 17. Geographical location and environmental condition oriented 18. Long construction time | 19. Only large-scale storage systems are viable 20. Long construction time | 21. Mechanical components affect their stability and efficiency 22. Short time storage | 23. Higher initial cost 24. Less recyclability | 25. Requires regular checks and external venting | 26. Higher capital cost 27. Not matured technology | 28. Limited storage capacity 29. High initial cost | 30. Lower round trip efficiency 31. Higher capital cost |
Country | Average Electricity Price (USD/kWh) | Solar PV Levelized Cost of Electricity (USD/kWh) | Renewable Energy Share (%) | Grid Parity Status | CO2 Emissions Intensity (kg CO2/kWh) |
---|---|---|---|---|---|
Australia | 0.22 | 0.041 | 32 | Yes | 0.58 |
China | 0.08 | 0.037 | 28 | Yes | 0.70 |
France | 0.19 | 0.062 | 23 | Yes | 0.05 |
Germany | 0.34 | 0.080 | 46 | Yes | 0.42 |
India | 0.08 | 0.037 | 22 | Yes | 0.75 |
Italy | 0.21 | 0.046 | 38 | Yes | 0.30 |
Japan | 0.23 | 0.074 | 18 | No | 0.47 |
South Korea | 0.13 | 0.074 | 6 | No | 0.51 |
Spain | 0.24 | 0.046 | 44 | Yes | 0.39 |
United Kingdom | 0.21 | 0.058 | 37 | Yes | 0.23 |
United States | 0.15 | 0.058 | 20 | Yes | 0.53 |
Brazil | 0.12 | 0.050 | 83 | Yes | 0.10 |
Canada | 0.10 | 0.060 | 65 | Yes | 0.15 |
Egypt | 0.05 | 0.040 | 9 | Yes | 0.60 |
Mexico | 0.09 | 0.045 | 20 | Yes | 0.45 |
South Africa | 0.14 | 0.065 | 11 | No | 0.90 |
Supervised | Unsupervised | Neural Networks | Reinforcement Learning |
---|---|---|---|
Decision Tree Classifier (DTC) [88] | Modified Mutual Information (MMI) [89] | Factored Conditional Restricted Boltzmann Machine’s (FCRBM) [90] | Model-Free Reinforcement Learning (RL) [91] |
Logistic Regression [92] | K-Means Clustering [93] | Modified Teaching-Learning Algorithm (MTLA) [94] | Proximal Policy Optimization (PPO) [95] |
Support Vector Machines (SVM) [96] | Hidden Markov Model (HMM) [97] | Temporal Convolution Network (TCN) [98] | Interpretable Machine Learning [99] |
Naïve Bayes (NB) [100] | Principle Component Analysis (PCA) [101] | Long-Short Term Memory (LSTM) [102] | |
K-Nearest Neighbor (KNN) [103] | Ensemble Learning [104] | Stacked Denoising Auto-Encoders with Support Vector Regression (SVR) [105] |
Year | Standards | Description |
---|---|---|
2015 | ISO/IEC 13272-1 | Terminology for Energy Efficiency This section is dedicated to clarifying terminology associated with energy efficiency. The objective is to establish a uniform comprehension of concepts like energy performance, energy savings, and energy efficiency indicators across various sectors and applications. The standardization of these definitions facilitates the global development and implementation of energy management systems and policies. |
2015 | ISO/IEC 13273-2 | Terminology for Renewable Energy This section addresses the terminology associated with renewable energy systems and sources, such as solar, wind, hydropower, and biomass. It offers precise explanations for concepts related to the production, incorporation, and application of renewable energy. The standard plays a crucial role in aligning technical terminology within the renewable energy sector, thereby enhancing communication among various stakeholders. |
2018 | ISO 50001 | Energy Management Systems An internationally acknowledged standard that offers a structured approach for the establishment, implementation, maintenance, and enhancement of energy management systems. This approach enables organizations to enhance energy performance, boost efficiency, and lower costs along with greenhouse gas emissions. |
2016 | ISO 17741 | Energy Savings Outlines fundamental approaches for evaluating and documenting energy savings within organizations. This framework is applicable across multiple sectors and is intended to assess and validate enhancements in energy efficiency. |
2015 | ISO 17742 | Energy Efficiency and Savings Calculations Presents approaches to quantify and articulate energy efficiency enhancements and savings within industrial, commercial, and residential sectors. |
2013 | ISO 9459-1-4 | Solar Heating A collection of criteria outlining approaches for assessing and analyzing solar heating systems, focusing on thermal efficiency and life expectancy. |
2021 | IEC 61724 | Photovoltaic System Performance Monitoring Outlines procedures for collecting, analyzing, and reporting data on the performance of photovoltaic (PV) systems. |
2002 | ISO 13602 | Energy Systems Integration Provides foundational concepts and recommendations for the incorporation of renewable energy systems into current grids and infrastructure, prioritizing efficiency and reliability. |
2014 | IEC 62817 | Photovoltaic (PV) System—Design Qualification It focuses on the design certification of photovoltaic trackers to guarantee their reliability and efficiency in solar energy systems. |
2017 | ISO 52000 Series | Energy Performance of Buildings A set of requirements pertaining to the comprehensive energy performance of buildings, including heating, cooling, lighting, and more operational elements. |
2018 | ISO 14064 | Greenhouse Gas Accounting and Verification Establishes criteria for measuring and disclosing greenhouse gas emissions and removals, relevant to renewable energy initiatives focused on emission reduction. |
2019 | IEC 60364-8-1 | Energy Efficiency in Electrical Installations Addresses energy efficiency considerations in electrical installations, including design recommendations to enhance efficiency in energy distribution systems. |
2018 | ISO/TR 21954 | Energy Storage Systems Provides guidance on the integration and functioning of energy storage technologies, particularly batteries, into energy frameworks. |
2006 | ISO 14040 | Life Cycle Assessment (LCA) Establishes guidelines and a methodology for evaluating the environmental effect of renewable energy technologies over their entire life cycle. |
2019 | ISO 14687 | Hydrogen Fuel Quality Defines the quality standards for hydrogen used as a renewable energy source, assuring compatibility with fuel cell systems. |
2010 | IEC 62109 | Safety of Power Converters for Use in PV Systems Ensures safety in the design and execution of power converters used in photovoltaic systems, encompassing electrical, thermal, and mechanical aspects. |
2020 | IEC TS 62257-9-8 | Renewable Energy and Hybrid Systems for Rural Electrification Provides guidance on evaluating the performance of solar photovoltaic (PV) lighting systems and kits intended for rural electrification initiatives. This is included in the IEC 62257-9-8 series, which addresses off-grid renewable energy systems and electrification in regions that lack connection to the main power grid. |
2016 | IEC TS 618376 | Solar Photovoltaic Energy systems—Terms, Definitions and Symbols This technical specification outlines the terms, definitions, and symbols derived from national and international solar photovoltaic standards, as well as relevant documents in the field of solar photovoltaic energy systems. It incorporates terminology and symbols compiled from the published standards of IEC Technical Committee 82, ensuring consistency and alignment with established guidelines in photovoltaic system design and analysis. |
Year | Standards | Description |
---|---|---|
2010 | IEEE 1679 | Guide for the Characterization and Evaluation of EES Systems Provides guidelines for assessing the features, functionality, and security of electrical energy storage systems for different uses. |
2013 | IEC 61427-1 | Secondary Cells and Batteries for Renewable Energy Storage Evaluates the specifications for batteries in solar energy systems, emphasizing performance and durability. |
2015 | IEEE 2030.2 | Guide for Energy Storage in Electric Power Systems Addresses grid connectivity, operation, and design of energy storage devices with an emphasis on electric power system integration. |
2016 | IEEE 2030.3 | Test Procedures for Electric Energy Storage Equipment Establishes testing methodologies to ensure the functionality and safety of energy storage systems in both grid-connected and off-grid environments. |
2017 | IEEE 2030.7 | Standard for the Specification of Microgrid Controllers focuses on controllers for microgrids that include energy storage systems, facilitating smooth grid interaction and enhancement. |
2017 | IEC 62933-2-1 | Electrical Energy Storage Systems—Unit Parameters and Testing Methods Provides the metrics and procedures for evaluating electrical energy storage systems to ensure their efficiency and dependability. |
2017 | IEC 62920 | Grid Integration of Large-Capacity EES Systems Describes the necessary specifications and evaluation techniques for the integration of high-capacity energy storage systems within power grids. |
2017 | ISO/IEC 11801-6 | Balanced Cabling Systems for ESS Communication Develops cabling standards that ensure effective communication between ESS and grid infrastructure. |
2018 | IEC 62933-1 | Electrical Energy Storage (EES) Systems—Vocabulary: Revised Creates a unified framework of terminology and definitions for EES systems, promoting clear and consistent technical communication. |
2018 | IEC 62660 | Lithium-Ion Batteries for Automotive and Energy Storage Applications Provides specifications and conducts assessments for lithium-ion batteries utilized in both automotive and stationary energy storage applications. |
2019 | ISO 23900 | Energy Storage Systems for Renewable Energy Integration Provides guidelines for the integration of energy storage systems with renewable energy technologies such as wind and solar. |
2020 | ISO/TR 21954 | Energy Storage Systems—Guidelines Provides a framework for the planning, implementation, and management of energy storage systems, encompassing applications for renewable energy and support for the grid. |
2020 | UL 1974 | Repurposing Batteries for Second-Life Applications Provides a comprehensive framework for the repurposing of electric vehicle batteries in grid storage applications, emphasizing the importance of performance and safety evaluations. |
2020 | IEEE 1547 | Standard for Interconnection and Interoperability of Distributed Energy Resources with Associated Power Systems Combines conditions for energy storage systems that are integrated with distributed energy resources such as photovoltaic and wind technologies. |
2020 | IEEE 1547.1 | Testing Requirements for Interconnection of Energy Storage with Power Systems Provides evaluation standards for the integration of distributed energy storage systems with the grid. |
2020 | IEEE 2030.8 | Standard for the Testing of Microgrid Controllers with Energy Storage Outlines the role of energy storage systems in microgrid configurations for providing ancillary services such as demand response, voltage regulation, and peak shaving. |
2020 | IEC 62898-3-1 | Microgrid Systems Including EES Details the specifications for energy management systems in microgrids that incorporate energy storage solutions. |
2020 | IEC 62920 | Photovoltaic Power Generation Systems—Energy Storage Systems Testing Focuses on energy storage solutions within photovoltaic systems, detailing approaches to evaluate efficiency and reliability. |
2020 | IEC 62040-5-3 | Grid-Connected Energy Storage Systems (GCES) Outlines the functional and performance specifications for GCES utilized in utility applications. |
2020 | IEC 61850-7-4 | Communication Networks for EES Systems in Smart Grids Defines communication protocols for energy storage systems within smart grid applications. |
2021 | IEC 62933-3-1 | Electrical Energy Storage Systems—Planning and Installation Provides a framework for the planning, design, and implementation of electrical energy storage systems. |
2021 | IEC 61427-2 | Performance Requirements for Secondary Batteries in Solar Applications Defines criteria for assessing the performance and longevity of batteries within solar photovoltaic systems. |
2021 | IEC 62133 | Safety Requirements for Portable Lithium-Ion Batteries Outlines the safety standards for portable lithium-ion batteries utilized in energy storage systems. |
2021 | IEC TS 62933-4-1 | EES Systems—Environmental Issues Focuses on evaluating and reducing the environmental effects of energy storage systems across their entire lifecycle. |
2021 | UL 9540 | Standard for Energy Storage Systems and Equipment Outlines the safety standards necessary for the design, construction, and operation of energy storage systems utilized in residential, commercial, and utility settings. |
2022 | IEC TR 61850-90-9 | Communication Systems for Power Quality Management Outlines protocols for ESS to play a significant role in sustaining grid power quality. |
2022 | IEC 62933-2-2 | Electrical Energy Storage Systems—Performance Testing Develops protocols for assessing the effectiveness of energy storage systems across different scenarios. |
2022 | IEC TS 62933-4-2 | Electrical Energy Storage Systems—Grid Performance Testing Outlines procedures for evaluating ESS performance, focusing on efficiency, response time, and power quality in grid-connected situations. |
2022 | IEC 62933-5-2 | Electrical Energy Storage Systems—Safety Requirements for Grid Integration Promotes the importance of implementing safety protocols to mitigate risks associated with energy storage systems when integrated with utility grids. Highlights the importance of fault tolerance, fire resistance, and ensuring safe operation during grid disturbances. |
2022 | IEEE 1561 | Guide for Optimizing Battery Life in Stationary Applications Provides methods for enhancing the lifespan of batteries in stationary energy storage systems, along with maintenance recommendations. |
2022 | IEC 62619 | Safety Requirements for Secondary Lithium Cells and Batteries Establishes safety standards for rechargeable lithium batteries utilized in industrial energy storage systems. |
2022 | IEC 63125 | Safety Guidelines for Solid-State Batteries in Grid Storage Focuses on the distinct safety aspects associated with solid-state battery systems. |
2022 | IEC 62040-5-3 | Safety Requirements for Energy Storage in UPS Systems Evaluates safety standards for uninterruptible power supply system employing energy storage technologies. |
2023 | IEEE P2030.11 | Standards for Hybrid Energy Storage Systems Details the integration guidelines for hybrid storage systems that merge batteries with flywheels, supercapacitors, or other forms of technology. |
2019 | EN 50549-1 | Requirements for Grid Connection of Generating Units (Europe) Defines the necessary connections for energy storage systems in European electrical grids, focusing on voltage regulation, protection mechanisms, and fault ride-through capabilities. |
2020 | NERC PRC-024-2 | Generator Frequency and Voltage Ride-Through Standards Relevant to energy storage systems in North American grids, promoting stability during frequency and voltage fluctuations. |
2020 | AS 4777.2 | Grid Connection of Energy Systems via Inverters Details the specifications for ESS inverters to align with Australian grid codes, guaranteeing adherence to local regulations. |
Region/Countries | Connected Voltage Level | Voltage Range (p.u.) | |
---|---|---|---|
China | 110 kV and 66 kV | 0.97~1.07 | |
220 kV and above | 1.0~1.10 | ||
ENTSO | Continental Europe | All | 0.90~1.118 |
Nordic | All | 0.90~1.05 | |
UK | All | 0.90~1.10 | |
Ireland | All | 0.90~1.118 | |
Baltic | All | 0.90~1.12 | |
National Grid (United Kingdom) | 132 kV | 0.90~1.10 | |
275 kV | 0.90~1.10 | ||
400 kV | 0.95~1.05 | ||
AESO (Canada) | 115 kV | 0.98~1.10 |
Standard | AS 4777.1 | BDEW | IEC/IEEE/IPAS 63547 | VDE-AR-N 4104 | Gazette of India. Part III—Sec.4 | ARCONEL 003 |
---|---|---|---|---|---|---|
Voltage variation | 2% | 2% | 5% | 3% | 5% | 5% |
IEEE 1574 | IEC 61727 | VDE-AR-N 4105 | |||
---|---|---|---|---|---|
Voltage Range (%) | Disc. (s) | Voltage Range (%) | Disc. (s) | Voltage Range (%) | Disc. (s) |
V < 50 | 0.16 | V < 50 | 0.10 | V < 80 | 0.1 |
50 ≤ V < 88 | 2.00 | 50 ≤ V < 85 | 2.00 | V ≥ 110 | 0.1 |
110 < V < 120 | 1.00 | 110 < V < 135 | 2.00 | ||
V ≥ 120 | 0.16 | V ≥ 135 | 0.05 |
Max. Clearance Time (s) | Voltage Trip Setting | ||
---|---|---|---|
Overvoltage Stage 1 | Default | 0.2 | 230 V + 15% |
CZ | 0.2 | 230 V + 15% | |
DE | 0.2 | 230 V + 10% | |
DK | 40 | 230 V + 10% | |
ES | - | 230 V + 10% | |
FR | 0.2 | 230 V + 15% | |
GB | 1.5 | 258 V | |
IT | 0.1 | 230 V + 20% | |
Undervoltage | Default | 1.5 | 230 V − 15% |
CZ | 0.2 | 230 V − 15% | |
DE | 0.2 | 230 V − 20% | |
DK | 10 | 230 V − 10% | |
ES | - | 230 V − 15% | |
FR | 0.2 | 230 V − 15% | |
GB | 1.5 | 184 V | |
IT | 0.2 | 230 V − 20% |
Supply Voltage Variation VDE-AE-N 4105 Germany [188] | RD 661/2007 Spain [190] | Arrêté 2011 France [202] |
---|---|---|
0.8 Vn < V < 1.1 Vn | 0.8 Vn < V < 1.1 Vn | 0.8 Vn < V < 1.1 Vn |
Country Grid Code | Nominal Frequency, Hz | Frequency Limits, Hz | Maximum Duration | |
---|---|---|---|---|
Germany | 50 | f > 51.5 47.5 < f< 51.5 f < 47.5 | Instant disconnection No trip (continuous) Immediate disconnection | |
Spain | 50 | f > 51.5 47.5 < f < 51.5 48 < f < 47.5 f < 47.5 | Immediate disconnection Continuous operation 3 s of operation Immediate disconnection | |
China | 50 | f > 52 50.2 < f < 52 49.5 < f < 50.2 48 < f < 49.5 f < 48 | Immediate disconnection 2 min of operation Continuous operation 10 min of operation Depend on the inverter | |
Denmark | 50 | 50.2–52.0 49.5–50.2 49.0–49.5 48.0–49.0 47.5–48.0 47.0–47.5 | 15 min of operation Continuous operation 5 h of operation 30 min of operation 3 min of operation 20 s of operation | |
Ireland | 50 | 50.5–52.0 49.5–50.5 47.5–49.5 47.0–47.5 | 60 min or less operation Continuous operation 20 min or less operation 10 min or less operation | |
United States—Puerto Rico Electric Power Authority | 60 | f > 62.5 61.5 < f < 62.5 57.5 < f < 61.5 56.5 < f < 57.5 f < 56.5 | Immediate disconnection 30 s of operation Continuous operation 10 s of operation Immediate disconnection | |
United States—North American Electric Reliability Corporation | 60 | f > 61.5 61 < f ≤ 61.5 58.5 < f ≤ 61 57.0 < f ≤ 58.5 f ≤ 57 | 0.16 s of operation 300 s of operation Continuous operation 300 s of operation 0.16 s of operation | |
Canada | 60 | >61.7 61.6–61.7 60.6–61.6 59.4–60.6 58.4–59.4 57.8–58.4 57.3–57.8 57.0–57.3 <57 | 0 s of operation 30 s of operation 3 min of operation Continuous operation 3 min of operation 30 s of operation 7.5 s of operation 45 cycles of operation Immediate disconnection | |
Japan | Eastern Western | 50 60 | f > 51.5 47.5 < f < 51.5 f < 47.5 f > 61.8 58 < f < 61.8 f < 58 | Immediate disconnection Continuous operation Immediate disconnection Immediate disconnection Continuous operation Immediate disconnection |
Malaysia | 50 | f > 52 47 < f < 52 f < 47 | Immediate disconnection Continuous operation Immediate disconnection | |
South Africa | 50 | f > 52 51 < f < 52 49 < f < 51 48 < f < 49 47 < f < 48 f < 47 | 4 s of operation 60 s of operation Continuous operation 60 s of operation 10 s of operation 0.2 s of operation | |
UK | 50 | 51.5–52.0 51.0–51.5 49.0–51.0 47.5–49.0 47.0–47.5 | 15 min of operation 90 min of operation Continuous operation 90 min of operation 20 s of operation | |
Romania | 50 | f > 52 47.5 < f < 52 f < 47.5 | Immediate disconnection No trip (continuous) Immediate disconnection | |
Australia | 50 | f > 52 47.5 < f< 52 f< 47.5 | 2 s of operation Continuous operation 2 s of operation | |
Saudi Arabia | 60 | >62.5 61.6–62.5 60.6–61.5 58.8–60.5 57.5–58.7 57.0–57.4 <57.0 | Immediate disconnection 30 s of operation 30 min of operation Continuous operation 30 min of operation 30 s of operation Immediate disconnection |
Standard ID | Function | Under Voltage Threshold 2 | Under Voltage Threshold 1 | Base Voltage | Over Voltage Threshold 1 | Over Voltage Threshold 2 | Under Frequency Threshold 2 | Under Frequency Threshold 1 | Base Frequency | Over Frequency Threshold 1 | Over Frequency Threshold 1 |
---|---|---|---|---|---|---|---|---|---|---|---|
AS 4777.2 | Settings | - | AUS—22% NZL—22% | AS 230 V & 240 V NL 230 V | AUS +13% NZL +9% | - | - | AUS −3 Hz NZL −3 Hz | 50 Hz | AUS +2 Hz NZL +2 Hz | - |
Trip Time (s) | 2 | 2 | 2 | 2 | - | ||||||
BDEW | Settings | −55% | −20% | 230 V | +20% | - | - | −2.5 Hz | −2.5 Hz | +2 Hz | - |
Trip Time (s) | 0.3 | 1.5–2.4 | 0.1 | - | - | 0.1 | 0.1 | - | |||
ARCONEL 003 | Settings | - | −10% | +10% | - | - | −0.5 Hz | 60 Hz | +0.5 Hz | - | |
Trip Time (s) | - | 1 | 1 | - | - | - | - | - | |||
VDE-AR-N 4105 | Settings | - | −20% | 230 V | +10% | +15% | - | −2.5 Hz | 50 Hz | +1.5 Hz | - |
Trip Time (s) | - | 0.1 | 0.1 | 0.1 | - | 0.1 | 0.1 | - | |||
CLC/TS 50549-1 | Settings | - | −15% | ≤1000 V | +20% | +30 | −2.5 Hz | −1.5 Hz | 50 Hz | +1.5 Hz | - |
Trip Time (s) | - | - | - | - | - | ||||||
CEI 0-21 | Settings | −60% | −15% | 230 V | +10% | +15% | −2.5 Hz | −0.5 Hz | 50 Hz | +0.2 Hz | +1.5 Hz |
Trip Time (s) | 0.2 | 0.4 | 603 maximum | 0.2 | 0.1 or 4 | 0.1 | 0.1 | 0.1 or 1 | |||
IEC/IEEE/PAS 63547 ≤30 kW | Settings | −50% | −12% | 120 V to 600 V | +10% | +20% | - | −0.7 Hz | 60 Hz | +0.5 Hz | - |
Trip Time (s) | 0.16 | 2 | 1 | 0.16 | - | 0.16 | 0.16 | - | |||
IEC/IEEE/PAS 63547 >30 kW | Settings | −3 Hz | −0.2 to −3 Hz adjustable | +0.5 Hz | - | ||||||
Trip Time (s) | 0.16 | 0.16 to 300 adjustable | 0.16 | - | |||||||
IEEE 929 | Settings | −50% | −12% | 120 V | +10% | +37% | - | −0.7 Hz | 60 Hz | +0.5 Hz | - |
Trip Time (s) | 0.1 | 2 | 2 | 0.03 | - | 0.1 | 0.1 | - | |||
IEEE 1547 Category I | Settings | −55% | −30% | 120 V to 600 V | +10% | +20% | −3.5 Hz | −1.5 Hz | 60 Hz | +1.2 Hz | +2 Hz |
Trip Time (s) | 0.16 | 2 | 2 | 0.16 | 0.16 | 300 | 300 | 0.16 | |||
IEEE 1547 Category II | Settings | −55% | −30% | 120 V to 600 V | +10% | +20% | −3.5 Hz | −1.5 Hz | 60 Hz | +1.2 Hz | +2 Hz |
Trip Time (s) | 0.16 | 10 | 2 | 0.16 | 0.16 | 300 | 300 | 0.16 | |||
IEEE 1547 Category III | Settings | −50% | −12% | 120 V to 600 V | +10% | +20% | −3.5 Hz | −1.5 Hz | 60 Hz | +1.2 Hz | +2 Hz |
Trip Time (s) | 2 | 21 | 13 | 0.16 | 0.16 | 300 | 300 | 0.16 | |||
Gazette of India Part III—Sec.4 | Settings | −20% | 230 V | +10% | - | - | −2.5 Hz | 50 Hz | +0.5 Hz | - | |
Trip Time (s) | - | 2 | 2 | - | - | 0.2 | 0.2 | - | |||
EN 50438 | Settings | - | −15% | 230 V | +10% | +15% | - | −2.5 Hz | 50 Hz | +2 Hz | - |
Trip Time (s) | - | 1.5 | 0.2 | 3 | - | 0.5 | 0.5 | - | |||
G 59 | Settings | −22% | −18% | 230 V | +17% | +21% | −2 Hz | −0.5 Hz | 50 Hz | +0.2 Hz | +0.5 Hz |
Trip Time (s) | 0.48 | 2.48 | 0.98 | 0.48 | - | 600 | 120 | 0 | |||
G 83 | Settings | −20% | −13% | 230 V | +14% | +19% | |||||
Trip Time (s) | 0.5 | 2.5 | 1 | 0.5 | |||||||
GB-T 19964 | Settings | - | −10% | 220 V | +10% | +20% | |||||
Trip Time (s) | - | 10 | 0.5 | ||||||||
GB-T 20046 | Settings | −50% | −12% | 220 V | +10% | +37% | - | −0.5 Hz | 50 Hz | +0.5 Hz | - |
Trip Time (s) | 0.1 | 2 | 2 | 2–60 | - | 2 | 2 | - | |||
UNE/EN/IEC 62109 | Settings | - | −3 Hz | 50 Hz | +2 Hz | - | |||||
Trip Time (s) | - | - | - | - | |||||||
UL 1741 | Settings | −0.7 Hz | 60 Hz | +0.5 Hz | - | ||||||
Trip Time (s) | - | 0.1 | 0.1 | - |
Standards | Country | Type | Harmonic Order (h) | Distortion Limit | THD (%) |
---|---|---|---|---|---|
IEEE 1547 AS 4777.2, GB/T, and ECM | Australia, China, and Malaysia | Odd | 33 < h 23≤ h≤ 33 17 ≤ h ≤ 21 11 ≤ h ≤ 15 3 ≤ h ≤ 9 | <0.3% <0.6% <1.5% <2% <4% | <5% |
Even | 10 ≤ h ≤ 32 2 ≤ h ≤ 8 | <0.5% <1% | |||
EREC G83 Standards | UK | Odd | h = 3, 5, and 7 h = 9, 11, and 13 11 ≤ h ≤ 15 | <(2.3, 1.14, and 0.77) %. <(0.4, 0.33, and 0.21) %. <0.15% | <3% |
Even | h = 2, 4, and 6 8 ≤ h ≤ 40 | <(1.08, 0.43, and 0.3) % <0.23% | |||
IEC 61000-3-2 | International Standard | Odd | h = 3, 5, and 7 h = 9, 11, and 13 15 ≤ h ≤ 39 | <(3.45, 1.71, and 1.15) % <(0.6, 0.5, and 0.3) % <0.225% | <5% |
Even | h = 2, 4, and 6 8 ≤ h ≤ 40 | <(1.6, 0.65, and 0.45) % <0.345% | |||
CAN/CSA C22.3 | Canada | Odd | h > 33 23 ≤ h ≤ 33 17 ≤ h ≤ 21 11 ≤ h ≤ 15 3 ≤ h ≤ 9 | <0.33% <0.6% <1.5% <2% <4% | <5% |
Even | h > 34 22 ≤ h ≤ 32 16 ≤ h ≤ 20 10 ≤ h ≤ 14 8 ≤ h ≤ 40 | <1.0% <0.5% <0.4% <0.2% <0.1% | <5% |
Individual Harmonic Order (Odd Harmonics) | ||||||
---|---|---|---|---|---|---|
ISC/IL | 3 ≤ h < 11 | 3 ≤ h < 11 | 17 ≤ h < 23 | 23 ≤ h < 35 | 35 ≤ h ≤ 50 | THD |
<20 | 4.0 | 2.0 | 1.5 | 0.6 | 0.3 | 5.0 |
20 < 50 | 7.0 | 3.5 | 2.5 | 1.0 | 0.5 | 8.0 |
50 < 100 | 10.0 | 4.5 | 4.0 | 1.5 | 0.7 | 12.0 |
100 < 1000 | 12.0 | 5.5 | 5.0 | 2.0 | 1.0 | 15.0 |
>1000 | 15.0 | 7.0 | 6.0 | 2.5 | 1.4 | 20.0 |
Individual Harmonic Order (Odd Harmonics) | ||||||
---|---|---|---|---|---|---|
ISC/IL | 3 ≤ h < 11 | 3 ≤ h < 11 | 17 ≤ h < 23 | 23 ≤ h < 35 | 35 ≤ h ≤ 50 | THD |
<20 | 2.0 | 1.0 | 0.75 | 0.3 | 0.15 | 2.5 |
20 < 50 | 3.5 | 1.75 | 1.25 | 0.5 | 0.25 | 4.0 |
50 < 100 | 5.0 | 2.25 | 2.0 | 0.75 | 0.35 | 6.0 |
100 < 1000 | 6.0 | 2.75 | 2.5 | 1.0 | 0.5 | 7.5 |
>1000 | 7.5 | 3.5 | 3.0 | 1.25 | 0.7 | 10.0 |
Individual Harmonic Order (Odd Harmonics) | ||||||
---|---|---|---|---|---|---|
ISC/IL | 3 ≤ h < 11 | 3 ≤ h < 11 | 17 ≤ h < 23 | 23 ≤ h < 35 | 35 ≤ h ≤ 50 | TTD |
<25 | 1.0 | 0.5 | 0.38 | 0.15 | 0.1 | 1.5 |
25 < 50 | 2.0 | 1.0 | 0.75 | 0.3 | 0.15 | 2.5 |
>50 | 3.0 | 1.5 | 1.15 | 0.45 | 0.22 | 3.75 |
Standards | Country | Voltage Bus | Max. Individual Harmonics | THD (%) |
---|---|---|---|---|
IEEE 519 | International Standard | (V ≤ 1) kV (1 ≤ V ≤ 69) kV (69 ≤ V ≤ 161) kV (V > 161) kV | 5% 3% 1.5% 1% | 8% 5% 2.5% 1.5% |
IEC 61000-3-2 | International Standard | (2.3 ≤ V ≤ 69) kV (69 ≤ V ≤ 161) kV (V > 161) kV | 3% 1.5% 1% | 5% 2.5% 1.5% |
Country | During Fault | Post Fault | ||
---|---|---|---|---|
(s) | (s) | |||
Denmark | 20 | 0.5 | 90 | 1.5 |
China | 20 | 0.625 | 90 | 2 |
United Kingdom | 15 | 0.14 | 80 | 1.2 |
Japan | 20 | 1 | 80 | 1.2 |
Romania | 15 | 0.625 | 90 | 3 |
USA (NERC) | 15 | 0.625 | 90 | 3 |
Puerto Rico (PREPA) | 15 | 0.6 | 85 | 3 |
Brazil | 20 | 0.5 | 85 | 1 |
Country | During Fault | Post Fault | ||
---|---|---|---|---|
(s) | (s) | |||
Germany | 0 | 0.15 | 90 | 1.5 |
USA (WECC) | 0 | 0.15 | 90 | 1.75 |
Australia | 0 | 0.45 | 80 | 0.45 |
Canada | 0 | 0.15 | 85 | 1 |
Italy | 0 | 0.2 | 85 | 1.5 |
Spain | 0 | 0.15 | 85 | 1 |
South Africa | 0 | 0.15 | 85 | 2 |
Malaysia | 0 | 0.15 | 90 | 1.5 |
South Korea | 0 | 0.15 | 90 | 1.35 |
Country | During Fault | |
---|---|---|
Germany | 120 | 0.1 |
Australia | 130 | 0.6 |
Italy | 125 | 0.1 |
Spain | 130 | 0.25 |
Malaysia | 120 | Continuous |
South Africa | 120 | 0.15 |
Puerto Rico (PREPA) | 140 | 1 |
USA (WECC) | 120 | 1 |
USA (NERC) | 120 | 1 |
Denmark | 120 | 0.1 |
Brazil | 120 | 2.5 |
China | NE * | NE * |
Japan | NE * | NE * |
Romania | NE * | NE * |
Canada | NE * | NE * |
United Kingdom | NE * | NE * |
Standard | Condition Depending on Rated P or S, Location or Year | Normal Stationary Operating Conditions | PF Leading Limit | PF Lagging Limit |
---|---|---|---|---|
AS 4777.2 | - | from 25% to 100% of output current | 0.95 | 0.95 |
BDEW | - | at any P | 0.95 | 0.95 |
CLC/TS 50549-1 | - | - | 0.9 | 0.9 |
CEI 0-21 | - | - | 0.9 | 0.9 |
IEEE 929 | - | output >10% of rating | 0.85 | 0.85 |
VDE-AR-N 41052 | ≤13.8 kVA | - | 0.95 | 0.95 |
>13.8 kVA | - | 0.9 | 0.9 | |
Gazette of India Part III—Sec.4 on or after 2007 | near load centre | operating at rated output | 0.85 | 0.95 |
Far from load centres | - | 0.9 | 0.95 | |
Gazette of India Part III—Sec.4 on or after 2014 | - | - | 0.85 | 0.95 |
EN 50438 | - | ≥20% of its | 0.9 | 0.9 |
- | <20% of its | Q/ ≤ 0.1 | Q/ ≤ 0.1 | |
G 59 | - | Operating at rated power | 0.95 | 0.95 |
G 83 | - | Operating at rated power | 0.95 | 0.95 |
GB-T 199644 | - | Under rated power | 0.95 | 0.95 |
GB-T 20046 | - | ≤50% of its | - | 0.9 |
IEEE 1547 | ≥20% of its | Q/ ≤ 0.44 | Q/ ≤ 0.25 | |
<20% of its | Q/ ≤ 0.44 | Q/ ≤ 0.44 |
Standard | CLC EN 50549-1 | G 83 | CEI 0-21 | GM-T 20046 | VDE-AR-N 4105 |
---|---|---|---|---|---|
Time(s) | 60 | 20 | 60 | 20–300 | 60 |
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Rajendran, G.; Raute, R.; Caruana, C. A Comprehensive Review of Solar PV Integration with Smart-Grids: Challenges, Standards, and Grid Codes. Energies 2025, 18, 2221. https://doi.org/10.3390/en18092221
Rajendran G, Raute R, Caruana C. A Comprehensive Review of Solar PV Integration with Smart-Grids: Challenges, Standards, and Grid Codes. Energies. 2025; 18(9):2221. https://doi.org/10.3390/en18092221
Chicago/Turabian StyleRajendran, Gowthamraj, Reiko Raute, and Cedric Caruana. 2025. "A Comprehensive Review of Solar PV Integration with Smart-Grids: Challenges, Standards, and Grid Codes" Energies 18, no. 9: 2221. https://doi.org/10.3390/en18092221
APA StyleRajendran, G., Raute, R., & Caruana, C. (2025). A Comprehensive Review of Solar PV Integration with Smart-Grids: Challenges, Standards, and Grid Codes. Energies, 18(9), 2221. https://doi.org/10.3390/en18092221