Advancing Power Systems with Renewable Energy and Intelligent Technologies: A Comprehensive Review on Grid Transformation and Integration
Abstract
:1. Introduction
1.1. The Contributions of the Paper
- Advancements in Grid Technologies: A detailed analysis is provided of modern power system developments, including HVDC transmission systems, advanced metering infrastructure (AMI), and the dynamic modelling of transmission and distribution networks.
- AI Applications: This study highlights the increasing role of AI in grid optimisation, including applications in voltage control, demand forecasting, fault detection, and system stability. Integrating AI and ML with DESs is examined to enhance grid resilience.
- Blockchains for Energy Systems: This paper reviews the use of blockchain technology in securing energy transactions, enabling peer-to-peer (P2P) trading, and ensuring transparency in energy markets.
- Cybersecurity Challenges and Solutions: The vulnerabilities of SGs to cyber threats are analysed, and potential solutions, including federated learning and decentralised security frameworks, are discussed.
- Technical and Regulatory Challenges: This paper identifies key challenges in power system transformation, including regulatory barriers, economic viability concerns, and scalability issues, and discusses policy frameworks that can facilitate this transition.
1.2. The Organisation of the Paper
2. Renewable Energy Integration in Modern Power Systems
2.1. Methodology of Literature Selection
- “Smart grids” AND “renewable energy integration”;
- “Artificial intelligence in power systems” OR “machine learning for energy optimisation”;
- “Cybersecurity in energy grids” AND “blockchain applications”;
- “HVDC transmission” OR “dynamic line rating” AND “grid stability”.
- Peer-reviewed journal articles and conference papers published in the last 10 years (2015–2025) to ensure up-to-date information.
- Studies focused on grid modernisation, artificial intelligence in energy systems, cybersecurity, and the integration of renewable energy.
- Papers presenting quantitative analyses, experimental results, or systematic evaluations of power system technologies.
- Publications without technical or experimental relevance to smart grids or renewable energy.
- Non-peer-reviewed sources, including white papers, industry reports, and opinion articles.
- Studies with a regional focus only, unless they provided significant insights applicable to global energy systems.
2.2. MG Applications
- Remote and off-grid areas: MGs are pivotal in bringing electricity to remote and underserved regions. Leveraging DERs such as PV panels, WTs, and biomass generators ensures a reliable and sustainable energy supply [5]. These systems reduce the dependency on centralised power plants and facilitate the electrification of off-grid communities. For instance, MGs have been instrumental in rural electrification projects across Africa and South Asia, empowering communities with access to clean energy.
- Enhancing resilience against natural disasters and cyber-attacks: MGs’ ability to “island” or operate independently from the main grid during emergencies makes them essential for energy security. During natural disasters such as hurricanes or earthquakes, MGs can maintain a continuous power supply to critical facilities, hospitals, emergency response centres, and shelters [6]. Similarly, their ability to mitigate cyber-attack risks by isolating vulnerable sections of the grid enhances the overall system security.
- Integrating DERs such as rooftop PV panels and small-scale WTs: Designed to optimise renewable energy utilisation, MGs integrate various DERs efficiently. Advanced energy management systems (EMSs) and smart inverters enable seamless integration and ensure consistent power delivery, even with intermittent RESs [7]. The capability to integrate these sources contributes significantly to achieving decarbonisation goals and reducing the reliance on fossil fuels.
- Supporting electrification in critical sectors: MGs have found applications in critical sectors such as healthcare, education, and industries where uninterrupted power is essential. For example, MGs deployed in educational institutions ensure reliable power for e-learning tools, while industrial MGs improve energy efficiency and cost savings.
- Catalysing smart city development: MGs are crucial to smart city initiatives in urban environments. By integrating renewable energy, advanced sensors, and ESSs, MGs enhance urban areas’ sustainability and energy autonomy. SGs can also efficiently manage electric vehicle (EV) charging networks, reducing strain on the main grid.
2.3. Challenges in Integration
2.4. Role of MGs and Distributed Generation in Energy Resilience
2.5. Advanced Solutions
- ESSs: Energy storage, particularly battery storage systems, plays a critical role in mitigating the variability of RESs. ESSs can store excess energy generated during peak production and release it during periods of low generation, ensuring a stable energy supply. Lithium-ion batteries are especially popular due to their high energy density, scalability, and decreasing costs, making them a viable solution for grid-scale applications [16]. In addition, newer storage technologies, such as flow batteries and hydrogen storage, are gaining traction for their long-duration capabilities.
- Grid-Forming Inverters: These innovative devices enable renewable energy systems to provide a stable voltage and frequency, even without a traditional synchronous generator. Grid-forming inverters facilitate the seamless integration of DERs, improving the overall grid stability and resilience. They also allow MGs to operate autonomously and re-synchronise with the central grid without compromising the system performance [17,18].
- DLR Technologies: DLR technology enables the real-time monitoring and optimisation of the transmission line capacity by adapting to changing environmental conditions and load demands. Unlike traditional static ratings that assume conservative worst-case conditions, DLR adjusts line ratings based on real-time meteorological factors such as the ambient temperature, wind speed and direction, and solar radiation, significantly influencing the conductor’s ability to dissipate heat. Studies have shown that higher wind speeds and lower ambient temperatures can substantially increase the transmission line capacity, reducing the risk of overheating and improving grid flexibility [19,20,21]. By leveraging sensor-based monitoring and AI-driven forecasting, utilities can maximise the efficiency of existing infrastructure, enhancing grid resilience and reducing the need for costly transmission upgrades while accommodating higher renewable energy penetration [22,23]. Several studies have extensively analysed the role of DLR in optimising power line performance under varying climatic conditions, demonstrating its effectiveness in improving grid reliability and enabling the better integration of variable renewable energy sources [24].
- Demand Response Programmes: Advanced DR mechanisms help balance supply and demand by incentivising consumers to adjust their energy usage based on grid requirements. For example, smart appliances and IoT devices can respond to real-time price signals or grid conditions, reducing the peak demand and enabling the more effective integration of intermittent renewables.
- Advanced Forecasting Techniques: Leveraging ML and AI, advanced forecasting tools provide accurate predictions of renewable energy generation and demand patterns. These insights enable grid operators to plan and allocate resources more effectively, minimising the impact of renewable variability.
- Flexible AC and DC Transmission Systems: Flexible Alternating Current Transmission Systems (FACTSs) and HVDC systems enhance the ability of grids to accommodate variable renewable energy by improving power flow control, reducing losses, and enabling long-distance energy transmission from remote renewable sources.
2.6. Role of Dynamic Line Rating in Renewable Energy Integration
3. SG Developments
3.1. SG Technologies
- Real-time data acquisition and analytics: AMI allows utilities to monitor energy consumption in real time, enabling operators to detect inefficiencies and optimise grid operations. SCADA systems further enhance this by providing the centralised control and monitoring of grid components [25]. Predictive analytics powered by these technologies are crucial in anticipating demand fluctuations and ensuring a stable energy supply.
- Predictive maintenance and fault detection: Predictive maintenance technologies rely on SCADA system and AMI data to identify and mitigate potential equipment failures. This capability not only minimises downtime but also reduces repair costs and enhances grid reliability [26].
- Enhanced customer engagement through dynamic pricing and consumption insights: Smart meters, a key component of AMI, empower consumers by providing detailed insights into their energy usage. This facilitates the adoption of dynamic pricing models, enabling customers to adjust their consumption patterns and reduce costs [27].
3.2. AI-Driven Predictive Maintenance in SGs
4. Role of HVDC Systems
4.1. Advantages of HVDC Systems
4.2. Applications in Renewable Energy Integration
4.3. Challenges in Implementation
- High capital costs: The initial investment required for HVDC technology is substantial, which may deter some utilities from implementing it [37]. The cost of HVDC converters, transmission lines, and installation significantly exceeds that of HVAC systems, creating a financial barrier.
- Complexity and expertise: HVDC systems require specialised design, operation, and maintenance knowledge. Their complexity can complicate deployment and necessitate extensive personnel training [38].
- Regulatory and policy barriers: Regulatory frameworks must evolve to accommodate the deployment of HVDC technology. Policymakers need to align HVDC implementation with broader energy transition goals, ensuring supportive legislation and incentives [41].
Category | Details | Benefits | References |
---|---|---|---|
Advantages | Reduced transmission losses | Efficient energy transfer over long distances | [42,43] |
Interconnection of asynchronous grids | Enhanced grid stability and flexibility | [44,45] | |
Better power flow control | Improved congestion management | [37] | |
Applications in RESs | Offshore wind farms | Reliable transfer of electricity to urban centres | [46,47] |
Super grids | Balancing supply and demand across regions | [48,49] | |
Integration of diverse renewable sources | Enables interconnection of solar power, wind power, and hydropower | [50] | |
Challenges | High capital costs | Financial barriers to implementation | [51] |
Technical complexity | Requires specialized expertise for operation | [52,53] | |
Integration with existing HVAC infrastructure | Requires new converters and upgrades | [37] | |
Future Perspectives | Technological advancements | Improved reliability and efficiency of converters | [54] |
Cost reduction efforts | Decrease in initial and operational expenses | [55] |
- Long-Distance Transmission Efficiency: Unlike HVAC systems, where transmission losses increase significantly with distance, HVDC systems can transfer large amounts of power over hundreds of kilometres with lower resistive losses. This makes it particularly well suited for connecting offshore wind farms, remote solar farms, and hydroelectric plants to urban centres.
- Integration of Offshore Wind Power: Offshore wind power presents a unique challenge due to variable generation patterns and the need to connect turbines spread over vast sea areas. HVDC technology allows multiple offshore wind farms to be integrated into a single high-voltage link, delivering power to the mainland grid. This reduces infrastructure costs and enhances grid reliability.
- Asynchronous Grid Interconnection: HVDC technology enables the interconnection of different power networks that operate at varying frequencies. This is crucial for cross-border electricity trading and international power exchange, allowing surplus renewable energy from one region to be exported to another with high demand.
- Grid Stability and Blackout Prevention: The rapid growth of renewables has introduced challenges in frequency stability due to the intermittent nature of wind and solar power. HVDC technology provides better frequency control, reactive power support, and dynamic stability, reducing the risk of grid disruptions.
- Scalability for Future Energy Demand: With the global transition towards carbon neutrality and higher renewable penetration, HVDC technology can accommodate increasing energy demands without requiring major infrastructure overhauls. The modular nature of HVDC substations allows for easy expansion and adaptation to future grid needs.
4.4. HVDC vs. Traditional AC Systems: Efficiency and Scalability
4.5. Future Perspectives
- Technological advancements: Improvements in converter efficiency, reliability, and scalability will enhance the feasibility of deploying HVDC systems on a larger scale. Innovations in materials and power electronics are expected to reduce costs and improve system performance [32].
- Cost reduction efforts: Ongoing research and development aimed at lowering the capital and operational costs of HVDC systems will be crucial for overcoming financial barriers. Collaborative efforts among industry stakeholders can reduce costs and facilitate wider adoption [37].
- Collaboration and innovation: Cooperation among policymakers, researchers, and the private sector will be essential for addressing implementation challenges. By fostering innovation and promoting best practices, the energy sector can leverage HVDC technology to create a more sustainable and resilient power grid [40].
5. AI in Grid Optimisation
AI Technique | Application Area | Key Advantages | References |
---|---|---|---|
ML | Demand forecasting and load prediction | Accurate prediction of energy patterns, enabling enhanced resource planning | [60,61] |
Equipment failure prediction | Prevents outages through timely maintenance | [62] | |
DL | Fault detection and anomaly prevention | Real-time detection of system failures, improving reliability and minimising downtime | [63,64] |
Grid security monitoring | Identifies cyber threats and data irregularities | [65] | |
Reinforcement Learning (RL) | Energy storage management | Optimal utilisation of DERs | [66,67] |
MG operation | Minimisation of operational costs and peak load demand | [68] | |
NLP | User interface for SGs | Enhanced customer interaction through intelligent query handling | [69] |
Smart meter data processing | Provides insights into consumption patterns and for demand-side management (DSM) | [70] | |
Genetic Algorithms (GAs) | Integration of RESs | Optimise resource allocation for solar, wind, and hybrid systems | [71,72] |
Transmission network design | Efficient routing and minimisation of power losses | [73] | |
Swarm Intelligence (SI) | Voltage regulation | Stabilises decentralised grids using distributed control | [74] |
Fault localisation | Quick identification of system failures | [75] | |
Hybrid AI Models | Comprehensive grid optimisation | Combine multiple AI methods to handle complex challenges | [76,77] |
Renewable integration analysis | Improve energy forecasting and distribution | [78] | |
Predictive Analytics | Equipment lifecycle management | Extend asset lifespan through preventive maintenance | [79] |
Energy demand analysis | Accurate forecasting for grid stability | [80] | |
Fuzzy Logic (FL) | DSM | Adaptive resource distribution under uncertain demand conditions | [81] |
Grid reliability enhancement | Provides flexibility in system operations | [82] |
6. Role of Blockchains in Energy Systems
6.1. P2P Energy Trading Using Blockchains
6.2. Blockchains for Energy System Security and Transparency
6.3. Challenges and Opportunities of Blockchain Integration
7. Cybersecurity in SGs
AI and Federated Learning for Smart Grid Security
8. Challenges and Opportunities
8.1. Challenges
- Cybersecurity Threats: The increasing connectivity of energy grids, mainly through the integration of smart technologies, has significantly heightened their vulnerability to cyber-attacks. Cybersecurity threats pose a substantial risk to the integrity and reliability of energy systems, as evidenced by incidents such as the 2015 cyber-attack on Ukraine’s power grid, which resulted in widespread outages affecting hundreds of thousands of residents [124]. The interconnected nature of modern energy infrastructures means that a breach in one component can lead to cascading failures across the entire system, underscoring the urgent need for robust cybersecurity measures. Moreover, the proliferation of IoT devices within energy networks creates additional entry points for potential attacks, necessitating comprehensive security protocols to safeguard these systems [125].The rapid pace of technological advancement compounds the challenges associated with cybersecurity in the energy sector. As new technologies are adopted, the potential for vulnerabilities increases, making it imperative for energy providers to update their security measures continuously. This dynamic environment requires not only technological solutions but also a cultural shift towards prioritising cybersecurity awareness among all stakeholders involved in energy management.
- Regulatory and Policy Barriers: Regulatory and policy barriers present significant challenges to adopting new technologies in the energy sector. The lack of standardisation and clear policies can create an environment of uncertainty that stifles innovation and investment. For instance, integrating RESs into existing grids requires new regulatory frameworks that address grid interconnection and energy storage issues. However, many regulatory bodies operate under outdated frameworks that do not adequately account for the complexities introduced by these new technologies [126,127].Furthermore, the absence of harmonised regulations can lead to inconsistencies in implementing energy projects across different jurisdictions, complicating efforts for companies investing in advanced technologies. This lack of clarity can deter investment and slow the pace of technological adoption, ultimately hindering the transition to a more sustainable energy future [128]. To overcome these barriers, it is essential for policymakers to engage with industry stakeholders to develop comprehensive regulatory frameworks that promote innovation while ensuring the reliability and security of energy systems.
- Economic Viability: The economic viability of advanced technologies in the energy sector remains a significant challenge, particularly due to the high upfront costs associated with their implementation. While technologies such as renewable energy systems and energy storage offer long-term benefits, the initial investment can be a substantial barrier for many stakeholders, especially smaller utilities and independent power producers [129]. The energy sector’s economic landscape is influenced by various external factors, including market volatility and competition from traditional energy sources, which can further complicate investment decisions.Moreover, the transition to RESs often requires significant infrastructure investments, which can be daunting for entities with limited financial resources. Innovative financing models, such as public–private partnerships and green bonds, may be necessary to facilitate investment in advanced energy technologies. Additionally, government incentives and subsidies can be crucial in reducing the financial burden on stakeholders and promoting the adoption of sustainable energy solutions [130,131].
8.2. Opportunities
- Development of Hybrid Models: Integrating AI with DESs presents a significant opportunity for enhancing the efficiency and reliability of energy delivery. Hybrid models that combine AI with RESs, energy storage, and DR mechanisms can optimise energy production and consumption, leading to more resilient energy systems [83]. For example, AI algorithms can analyse vast amounts of data from various sources, including weather forecasts and energy consumption patterns, to predict the energy demand and adjust the supply accordingly. This capability can help mitigate the challenges associated with the intermittent nature of RESs.Additionally, developing hybrid models can facilitate the integration of EVs into the energy ecosystem. By leveraging AI, utilities can manage the charging and discharging of EVs to support grid stability and maximise the use of renewable energy. As the demand for clean energy solutions grows, developing hybrid models integrating AI with DESs will be crucial in driving the transition towards a more sustainable energy future.
- Enhanced Collaboration: The challenges posed by regulatory barriers and cybersecurity threats underscore the need for enhanced collaboration between academia, industry, and policymakers. By fostering partnerships among these stakeholders, it is possible to develop innovative solutions that address the complexities of the energy sector. Collaborative research initiatives can create new technologies and best practices that enhance the resilience and security of energy systems. For instance, academic institutions can research cybersecurity measures explicitly tailored for energy infrastructures, while industry partners can provide practical insights and real-world applications [132,133].Furthermore, collaborative efforts can facilitate the development of standardized regulations that promote the adoption of advanced technologies. Engaging with diverse stakeholders can help ensure that the latest technological advancements and industry trends inform regulatory frameworks. This collaborative approach can also enhance the transparency and accountability of energy systems, fostering public trust and support for new initiatives.
- Leveraging Blockchain Technology: Blockchain technology’s potential to revolutionise energy transactions presents a unique opportunity to enhance security and transparency within the energy sector. Blockchain technology, a decentralised and immutable ledger technology, can facilitate P2P energy trading, enabling consumers to buy and sell excess energy generated from renewable sources directly with one another [134,135]. This not only empowers consumers but also promotes the efficient use of renewable energy, reducing the reliance on centralised energy providers.Moreover, blockchain technology can enhance the security of energy transactions by providing a tamper-proof record of all transactions. This can help mitigate the risks associated with cyber-attacks, as the decentralized nature of blockchains makes it more difficult for malicious actors to compromise the system. Additionally, the transparency afforded by blockchains can enhance trust among stakeholders, as all participants can verify transactions in real time. As the energy sector embraces digital transformation, leveraging blockchain technology for secure and transparent energy transactions represents a significant opportunity for innovation and growth.
8.3. The Limitations of the Study
9. Conclusions and Future Perspectives
Funding
Conflicts of Interest
Abbreviations
AESS | Advanced energy storage system |
AI | Artificial intelligence |
AMI | Advanced metering infrastructure |
DER | Distributed energy resource |
DES | Distributed energy system |
DSM | Demand-side management |
GA | Genetic Algorithm |
DDoS | Distributed denial-of-service |
DG | Distributed generation |
DL | Deep learning |
DLR | Dynamic line rating |
DR | Demand response |
EMS | Energy management system |
ESS | Energy storage system |
EV | Electric vehicle |
FACTS | Flexible Alternating Current Transmission System |
FC | Fuel cell |
FL | Fuzzy Logic |
HVAC | High-Voltage Alternating Current |
HVDC | High-voltage direct current |
ICT | Information and Communication technology |
IEA | International Energy Agency |
IoT | Internet of Things |
MG | Microgrid |
ML | Machine learning |
NLP | Natural Language Processing |
P2P | Peer-to-peer |
PV | Photovoltaic |
RES | Renewable energy source |
RL | Reinforcement Learning |
SCADA | Supervisory control and data acquisition |
SG | Smart grid |
SI | Swarm intelligence |
WT | Wind turbine |
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Feature | Traditional Sys. | Blockchain-Based Sys. | Ref. |
---|---|---|---|
Data Storage | Centralised | Decentralised | [108] |
Security | Vulnerable to Single Point of Failure | Highly Resilient | [109] |
Transparency | Limited | Immutable Audit Trail | [110] |
Automation | Manual Processes | Smart Contracts | [111] |
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Cavus, M. Advancing Power Systems with Renewable Energy and Intelligent Technologies: A Comprehensive Review on Grid Transformation and Integration. Electronics 2025, 14, 1159. https://doi.org/10.3390/electronics14061159
Cavus M. Advancing Power Systems with Renewable Energy and Intelligent Technologies: A Comprehensive Review on Grid Transformation and Integration. Electronics. 2025; 14(6):1159. https://doi.org/10.3390/electronics14061159
Chicago/Turabian StyleCavus, Muhammed. 2025. "Advancing Power Systems with Renewable Energy and Intelligent Technologies: A Comprehensive Review on Grid Transformation and Integration" Electronics 14, no. 6: 1159. https://doi.org/10.3390/electronics14061159
APA StyleCavus, M. (2025). Advancing Power Systems with Renewable Energy and Intelligent Technologies: A Comprehensive Review on Grid Transformation and Integration. Electronics, 14(6), 1159. https://doi.org/10.3390/electronics14061159