Next-Generation CSP: The Synergy of Nanofluids and Industry 4.0 for Sustainable Solar Energy Management
Abstract
:1. Introduction
2. Earlier Assessments and Developments in This Review
3. Concentrated Solar Power Collectors
3.1. Parabolic Trough Collector (PTC)
3.2. Solar Power Tower Collector (SPTC)
3.3. Solar Dish Collector (SDC)
3.4. Fresnel Reflector Collector (FRC)
4. Nanofluids in CSP Systems
4.1. Nanofluids in Parabolic Trough Collectors
4.2. Nanofluids in Solar Power Tower Collectors
4.3. Nanofluids in Solar Dish Collector
4.4. Nanofluids in Fresnel Reflector Collector
5. Traditional Simulation-Based Evaluation of Nanofluids
5.1. Parabolic Trough Collector
5.2. Solar Power Tower Collector
5.3. Solar Dish Collector
5.4. Fresnel Reflector Collector
6. Industry 4.0 in CSP Systems
6.1. Parabolic Trough Collector
6.2. Solar Power Tower Collector
6.3. Solar Dish Collector
6.4. Fresnel Reflector Collector
7. Challenges in CSP
7.1. Nanofluid Incorporation
- Obstacles to nanofluid preparation: Nanofluids are prepared using one-step or two-step methods; the two-step method risks stability issues, while the one-step method may introduce impurities affecting performance [16].
- Selecting appropriate base fluids and nanoparticles: The selection of base fluid and nanomaterials in nanofluids depends on heat capacity, viscosity, and solubility; hybrid nanofluids improve heat transfer, with oil-based ones for lubrication and water/ethylene glycol-based ones for cooling, while performance depends on nanoparticle size, concentration, and pumping power [16].
- Substantial production costs: Nanofluid production is complex and costly; the one-step method ensures stability but has low yield and high costs, while the two-step method is efficient for large quantities but expensive, driving research toward more economical solutions [16].
- Stability: Nanofluid stability is crucial; surfactants enhance stability but may reduce thermal conductivity, while higher nanoparticle concentration boosts conductivity but can hinder stability [16].
- Sedimentation: It remains a key barrier to long-term nanofluid performance; however, recent advancements such as nanoparticle surface functionalization, use of advanced surfactants, and ultrasonication techniques have significantly improved dispersion stability [16].
- Erosion and corrosion: Erosion and corrosion are challenges in thermal nanofluids; studies show ZrO2 and TiO2 cause high corrosion, while SiC has minimal impact, with long-term effects in solar collectors linked to nanoparticle accumulation [16].
- Environmental consequences: The disposal of nanofluids, especially those containing hazardous nanomaterials, raises serious environmental concerns. Improper disposal, such as landfilling or incineration, can release toxic substances into the air, contributing to environmental degradation and posing risks to both human and biodiversity. To mitigate these concerns, further research is needed to explore alternative, eco-friendly disposal methods and develop biodegradable nanomaterials, which could help minimize the environmental footprint of nanofluids in energy systems and promote a more sustainable approach to their lifecycle [16].
7.2. Industry 4.0 Implementation
- Technical and Regulatory Challenges: These include technical issues such as system malfunctions, interoperability problems, unreliable connectivity, and cybersecurity risks. Regulatory hurdles involve the lack of clear frameworks and standards for digital technology integration in renewable energy systems, as well as the challenge of keeping up with rapid technological advancements [20].
- Economic and Social Challenges: High capital costs, uncertain return of investment (ROI), and energy consumption of digital technologies are significant economic barriers. Social challenges include job displacement due to automation and the need for workforce retraining, as well as addressing the digital literacy gap among users and maintenance staff [20]. Predictive analysis frameworks in DT systems, as seen in study [158], enable proactive maintenance, reducing downtime, preventing costly repairs, and extending equipment lifespan [158]. Performance optimization frameworks reduce energy waste and operational costs, enhancing economic sustainability by lowering production costs and supporting affordable renewable energy [159]. Risk and fault assessment frameworks, like the proactive approach, enable early issue detection, reducing downtime and minimizing costly reactive maintenance, improving economic resilience in renewable energy plants [160].
- Data Integration and Interoperability Challenges: Effective implementation of Industry 4.0 in renewable energy relies on the seamless integration of diverse data sources, such as sensors, weather forecasts, and historical performance data. Ensuring interoperability across different technologies and standards while transforming legacy systems into digital formats is a significant hurdle [47].
- Workforce and Knowledge Gap: The lack of expertise in both digital technologies and the renewable energy domain creates challenges in adopting Industry 4.0 solutions. There is a high demand for skilled professionals, but many digital experts lack experience with specific energy technologies, further complicating the process of digital transformation [47].
- Cybersecurity Concerns: With increased digital connectivity comes a higher risk of cyber threats to critical infrastructure. Ensuring the security and privacy of vast amounts of data is essential [21].
- Coordinated Defense Strategies: Due to the complexity of distributed energy resources (DERs), it is crucial to move from isolated cybersecurity solutions to coordinated, defense-in-depth strategies across interconnected systems like VPPs, DERMS, and energy trading platforms. These strategies should adapt to the flexible and dynamic nature of DERs, ensuring comprehensive protection against evolving cyber threats [161].
- Advanced Technologies for Resilience: To enhance cybersecurity, DER systems should adopt blockchain and cloud/edge computing for decentralized frameworks, and software-defined networks (SDN) for better visibility and control. Additionally, large language models (LLMs) can be utilized for intelligent, real-time decision-making, strengthening defense mechanisms and ensuring a proactive response to threats [161].
8. Future Prospects for Research
- Nanofluid Enhancement: Future research will concentrate on developing nanofluids with smaller nanoparticle sizes and enhanced dispersion properties. These improvements are expected to significantly increase thermal conductivity and heat transfer efficiency, which are crucial for the optimal performance of CSP systems. By focusing on these enhancements, future studies can push the boundaries of nanofluid application in CSP systems, leading to greater energy capture and storage efficiencies.
- Hybrid Systems for Energy Storage: Combining nanofluids with phase change materials (PCMs) for energy storage in CSP systems is a promising avenue for future research. Such hybrid systems could significantly improve energy storage capacity and heat transfer efficiency, enabling CSP systems to operate more sustainably and efficiently. This integration could prove critical for overcoming the intermittent nature of solar energy, providing better heat retention and continuous energy supply.
- Stability and Functionalization of Nanofluids: One of the key challenges in utilizing nanofluids in CSP applications is their stability, especially under extreme operating conditions. Advances in functionalized nanoparticles and the development of advanced surfactants will help improve the stability of nanofluids, making them more viable for long-term use in CSP systems, particularly in parabolic trough collectors (PTC) and solar power tower collectors (SPTC). Overcoming these challenges is essential for the sustained operation of CSP systems in harsh environments.
- Comprehensive Evaluation of Nanofluid Viability: Future research will also need to integrate economic, environmental, and exergy evaluations to assess the long-term viability and sustainability of nanofluids in CSP systems. These assessments are crucial for understanding how nanofluids can be integrated into CSP systems without compromising environmental sustainability or leading to negative social impacts. A balanced approach is necessary to ensure that the advantages of nanofluids outweigh any potential downsides in their application.
- CSP’s Economic Perspective: CSP holds strong potential for large-scale renewable integration due to its dispatchability and storage capabilities. However, its higher levelized cost of electricity (LCoE) compared to PV and wind remains a challenge. Despite a 68% drop in global average LCoE since 2010 and significant reductions in capital and Operations and Maintenance costs, further cost optimization is essential. Innovations in materials, storage, and system design alongside supportive financing and policy frameworks are crucial to enhancing CSP’s economic competitiveness in the global energy transition [162].
- CSP’s Environmental Perspective: Climate change has led to global efforts like the Kyoto Protocol and Clean Development Mechanism (CDM) aimed at reducing emissions. CSP projects have been part of CDM initiatives, offering potential for sustainable energy generation in developing countries. Multi-criteria decision analyses have been used to evaluate the environmental sustainability of these projects, incorporating indicators such as emissions reduction, ecological impact, and long-term viability. This approach provides a structured framework for assessing the environmental performance of CSP systems and supports informed decision-making for future sustainable energy deployments [163].
- CSP’s Social View: Life Cycle Assessment studies on CSP systems reveal gaps in data standardization and impact category coverage, especially regarding decommissioning and subsystem-specific analyses. While climate change remains the most assessed impact, there’s a need for broader social and environmental evaluations, including operational issues and community-level effects, to enhance CSP’s sustainability and public acceptance [164].
- AI and ML in CSP Optimization: The incorporation of AI and ML into CSP plants can enable data-driven decision-making for optimal energy production. AI-based optimization models have the potential to improve heat transfer in various CSP configurations, including PTC and SPTC, by dynamically adjusting to real-time operational data. This integration can drive higher performance and cost efficiency in CSP systems.
- Digital Twin for Enhanced CSP Operations: DT technology could allow for the virtual simulation and management of CSP plants. This will enable better system control, troubleshooting, and enhanced reliability, ultimately reducing downtime and increasing the operational lifespan of CSP systems. The application of DT could be particularly beneficial for both large-scale and small-scale CSP operations by providing a more accurate representation of the system’s behavior under different conditions.
- Role of Industry 4.0 in Global Decarbonization: Emerging evidence from bibliometric evaluations shows that Industry 4.0 technologies have contributed significantly to carbon footprint reduction and environmental sustainability across various sectors, including supply chains [165]. This further reinforces the potential for their integration into CSP systems to enhance sustainable energy management.
- Nanofluid-Industry 4.0 Synergy: Despite limited research into the integration of nanofluids with Industry 4.0 technologies, future studies should focus on leveraging AI and ML to optimize nanofluid performance. This combination could improve heat transfer efficiency, stability, and overall system performance in CSP systems, while addressing key challenges related to nanofluid application. The synergy between nanofluids and Industry 4.0 technologies holds significant potential to unlock new efficiencies and operational capabilities in CSP systems.
9. Conclusions
- Nanofluids provide significant improvements in the thermal conductivity, energy absorbance, and exergy efficiency of every type of CSP system. They depend on the type of nanoparticles, concentration, and compatibility of nanofluids with receiver geometries. However, issues including increased viscosity, pressure drop, stability, and environmental concerns must also be addressed.
- To better understand how nanofluids behave inside CSP systems, engineers use simulation tools like CFD. These tools make it easier to optimize designs without the need for costly experiments. Even so, some compromises, such as higher pumping power, must be managed during system design.
- The use of Industry 4.0 technologies such as AI, ML, and DT boosts the performance of CSP further by implementing real-time monitoring and predictive analytics. These technologies enhance system performance by identifying faults early, reducing maintenance, and improving overall reliability. However, there are still technical, regulatory, and financial barriers to overcome.
- Future studies need to work on stabilizing the nanofluids, advancing hybrid TES systems, and specifying optimization and control using Industry 4.0 technologies more precisely. Overcoming the present technological and economic barriers is crucial to ensure the scalable and sustainable use of the technologies in realistic CSP systems.
- While the integrated use of nanofluids and Industry 4.0 technologies in CSP systems is promising, the potential of their integration will create a more favorable opportunity for next-generation CSP system development. This dual approach also bears an immense ability to enhance the utilization of solar energy, contributing to global sustainability and renewable energy targets.
Author Contributions
Funding
Conflicts of Interest
Nomenclature
Abbreviations | |
AdaBoost | Adaptive Boosting |
ACUREX | Adaptive Control for Real-Time Expert Systems |
AI | Artificial Intelligence |
ANFIS | Adaptive Neuro-Fuzzy Inference Systems |
ANN | Artificial Neural Network |
CART | Classification and Regression Trees |
CDM | Clean Development Mechanism |
CFD | Computational Fluid Dynamics |
CHF | Constant heat flux |
CNN | Convolutional Neural Network |
COMSOL | COMSOL Multiphysics |
CSP | Concentrated Solar Power |
DNI | Direct Normal Irradiance |
DT | Digital Twin |
DW | Distilled Water |
EES | Engineering Equation Solver |
EG | Ethylene Glycol |
ELU | Exponential Linear Unit |
EO | Earth Mover’s Optimization |
EOR | Enhanced Oil Recovery |
ERTE | Exergetic Efficiency |
ETR | Extra Trees Regressor |
EXP | Experimental |
FDI | False Data Injections |
FRC | Fresnel Reflectors Collector |
GNP | Graphene Nanoplates |
GO | Graphen Oxide |
GtCO2e | Gigatonnes of carbon dioxide equivalent |
GWO | Grey Wolf Optimizer |
HTF | Heat Transfer Fluid |
iDLR | Inverse Deep Learning Ray Tracing |
IPSO | Improved Particle Swarm Optimization |
IPPOA | Improved Prey Predator Optimization Algorithm |
KNN | K-Nearest Neighbors |
LCOE | Levelized Cost of Energy |
LOS | Loss Out |
LSTM | Long Short-Term Memory |
MAE | Mean Absolute Error |
MCRT | Monte Carlo Ray Tracing |
MAPE | Mean Absolute Percentage Error |
ML | Machine Learning |
MLP | Multilayer Perceptron |
MWCNT | Multi-Walled Carbon Nanotube |
NSGA-II | Non-dominated Sorting Genetic Algorithm II |
NUM | Numerical |
OpenFOAM | Open-Source Field Operation and Manipulation |
OPEX | Operational Expenditure |
RVM | Relevance Vector Machine |
PCA | Principal Component Analysis |
PCM | Phase Change Material |
PDE | Partial Differential Equations |
PSO | Particle Swarm Optimization |
PTC | Parabolic Trough Collector |
PV | Photovoltaic |
RMSE | Root Mean Squared Error |
ROI | Return of Investment |
SAA | Simulated Annealing Algorithm |
SDC | Solar Dish Collector |
SGD | Stochastic Gradient Descent |
SPTC | Solar Power Tower Collector |
SVM | Support Vector Machine |
SVR | Support Vector Regression |
TES | Thermal Energy Storage |
TOPSIS | Technique for Order Preference by Similarity to Ideal Solution |
WHO | World Health Organization |
en | Energy efficiency |
ex | Exergy efficiency |
th | Thermal efficiency |
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Ref | Review Focus on | Year | CSP | Nanomaterial | Simulation | Industry 4.0 |
---|---|---|---|---|---|---|
[27] | Performance and optimization of PTC | 2018 | ✔ | - | ✔ | - |
[28] | Nano-enhanced PCMs for solar energy storage | 2022 | - | ✔ | - | - |
[29] | Enhancing the performance of PTCs using nanofluids | 2022 | ✔ | ✔ | - | - |
[30] | Comparing the performance of mono and hybrid nanofluids with conventional fluids in solar thermal collectors. | 2022 | ✔ | ✔ | - | - |
[31] | Nanofluid-driven multifunctional systems in solar energy | 2022 | ✔ | ✔ | - | - |
[32] | Hybrid nanofluids for solar TES | 2024 | - | ✔ | ✔ | - |
[36] | NEPCMs for solar heat collection | 2023 | - | ✔ | ✔ | - |
[37] | Enhancing solar thermal collector efficiency using nanomaterials | 2024 | ✔ | ✔ | - | - |
[38] | The application of nanofluids in various solar energy systems | 2018 | - | ✔ | - | - |
[39] | The application of nanofluids in solar thermal collectors other than CSP | 2018 | - | ✔ | - | - |
[40] | It examines the technology’s cost evolution, the role of thermal storage, and the properties of molten salts used in CSP plants. | 2019 | ✔ | - | - | - |
[18] | Modeling and simulation of PCM-based solar energy storage systems | 2019 | - | - | ✔ | - |
[41] | The application of hybrid nanofluids in solar energy collectors | 2021 | ✔ | ✔ | - | - |
[42] | The sustainability of nanofluids in thermal systems | 2021 | - | ✔ | ✔ | - |
[43] | Hybrid nanofluids for solar thermal energy systems | 2021 | - | ✔ | - | - |
[44] | Enhancing the thermal efficiency of parabolic solar collectors using hybrid nanofluids. | 2024 | ✔ | ✔ | ✔ | - |
[45] | Enhancing solar still performance using nano-enhanced PCMs | 2024 | - | ✔ | - | - |
[21] | Industry 4.0 technologies optimize renewable energy production and improve system efficiency | 2023 | - | - | - | ✔ |
[33] | Use of ML techniques to improve solar thermal collector modeling and performance | 2023 | - | - | - | ✔ |
[34] | Challenges and opportunities in applying DT technology to solar energy systems | 2024 | - | - | - | ✔ |
[46] | The potential of DT technology in addressing the challenges associated with solar energy resources | 2024 | ✔ | - | - | ✔ |
[47] | DT impact on solar energy research | 2025 | ✔ | - | - | ✔ |
[48] | Application of AI technology in solar tower systems | 2021 | ✔ | - | - | ✔ |
Ref | Location | Analysis | Base Fluid | Nano Material | VF (%) | PS (nm) | th ↑ (%) | Findings |
---|---|---|---|---|---|---|---|---|
[67] | Algeria | EXP | Therminol-VP-1 | CuO, TiO2, Al2O3, SiO2 | 4 | - | 1.03%, 0.97%, 0.97%, 0.81% | Nanoparticles boosted PTC outlet temperature by up to 9.57%, enhancing efficiency by 1.03%. An increased pressure drop was observed. |
[69] | Greece | EXP | Syltherm 800 | Al2O3, TiO2 | 3 | - | 0.7 | The hybrid nanofluid composed of TiO2 and Al2O3 outperformed both individual TiO2 and Al2O3 nanofluids in the studied parameters. |
[68] | Egypt | EXP | Water, EG | MWCNT | - | 50 | 28% | Integrating MWCNT nanofluid into a PTC significantly enhanced thermal efficiency, leading to substantial reductions in CO2 emissions. |
[70] | Saudi Arabia | NUM | Syltherm-800 | Al2O3, MWCNT | 1–2 | 21 | 2.3 | The optimal combination of 2% Al2O3 and 1% MWCNT nanofluids within a PTC yielded the highest thermal efficiency of 70.54%. |
[71] | India | EXP | Water | CuO | 0.05, 0.075, 0.1 | 10 | 5.15%, 51.19%, 53.26% | Enhanced efficiency by up to 53.26% compared to water, with a corresponding 1.08% increase in cost. |
[72] | China | NUM | Therminol-VP-1 Syltherm-800 | Cu | <10 | 100 | 7.99 | Nanoparticles enhance heat transfer but also increase pressure drop, with Syltherm 800 demonstrating better performance than Therminol VP1. |
[73] | Saudi Arabia | EXP | Water | Al2O3, MWCNT | 0.1–0.3 | <100 | 18 | Enhanced thermal conductivity and heat transfer capabilities of the nanofluid, resulting in higher energy storage capacity and overall system performance. |
[74] | Saudi Arabia | EXP | Therminol VP-1, Therminol 75, Syltherm-800 | TiO2, Al2O3 | 1.5 | - | 0.48%, 1.61%, 0.87% | Al2O3-TiO2 hybrid nanoparticles with Syltherm-800 as the base fluid in a PTC improved thermal and exergy efficiency. |
[75] | India | EXP | Water | CuO, Al2O3 | 0.05 | 20 to 40 | 44 | Among all the materials tested, CuO exhibited the highest thermal efficiency. |
[76] | India | EXP | Water | Al2O3 | 0.06 | <20 | 29 | The improved thermal efficiency was primarily due to a decrease in energy losses and the prevention of nanoparticle sedimentation. |
[77] | Iran | EXP | Water | CuO | 0.08 | <100 | 52 | A general upward trend in thermal efficiency, ranging from 18 to 52%, was observed as the nanoparticle volume fraction increased. |
[78] | South Korea | EXP | Water | CeO2, Al2O3, TiO2 | 3 | - | 27 | Among the nanofluids tested, CeO2/water exhibited the most significant enhancement in thermal efficiency, followed by TiO2 and Al2O3. |
[79] | Iran | EXP | EG | MWCNT, SiO2 | 0.3 | 4,6 | 30 | MWCNT/EG nanofluid demonstrated a superior thermal efficiency compared to its SiO2/EG counterpart. |
[80] | Mexico | EXP | Water | Al2O3 | 3 | 10 | 28 | The thermal performance of a solar collector is significantly influenced by its incidence angle, with even slight increases leading to appreciable improvements in thermal efficiency. |
[81] | India | EXP | Water | Fe3O4 | 0.6 | - | 1.6 | The combined application of fins and nanofluid resulted in an 87% increase in the heat transfer coefficient. |
[82] | Iran | EXP | Mineral oil | MWCNT | 0.03 | 10 | 7 | The incorporation of MWCNTs into mineral oil significantly enhanced the overall efficiency of PTC systems compared to those utilizing pure mineral oil. |
[83] | Turkey | EXP | Therminol-VP-1 | CuO, Al2O3, Fe3O4 | 3 | - | 0.2 | In terms of thermal efficiency, Al2O3/Therminol nanofluid demonstrated superior performance compared to CuO/Therminol, while Fe3O4/Therminol exhibited the lowest efficiency among the tested nanofluids. |
[84] | Greece | NUM | Syltherm 800 | CuO, Al2O3 | 4 | - | 1.3 | The CuO/Syltherm nanofluid exhibited the highest thermal efficiency among all fluids tested. |
[85] | Pakistan | EXP | Water | Al2O3, Fe2O3 | 0.30 | 20 to 40 | 13 | Al2O3/water nanofluid outperformed Fe2O3/water nanofluid in terms of overall performance. |
[86] | Iran | EXP | Water | CuO | 0.01 | 30 | 79 | The combined use of CuO/water nanofluid and metal foam within a PTC system resulted in superior thermal efficiency when compared to the individual application of either component. |
Ref | Location | Analysis | Base Fluid | Nano Material | VF (%) | PS (nm) | th ↑ (%) | Findings |
---|---|---|---|---|---|---|---|---|
[87] | Saudi Arabia | NUM | Distilled Water | SiO2, GO | - | - | - | GO-DW mono nanofluid exhibited superior performance and GO/SiO2-DW hybrid nanofluid offered a more cost-effective solution. |
[88] | Malaysia | NUM | 0.6 NaNO3 + 0.4 KNO3 | Al2O3 | 0.5 | <20 | 14 | The addition of 0.5% Al2O3 nanoparticles to molten salt increased thermal efficiency at a Reynolds number of 38,000. |
[89] | Arizona | EXP | Therminol VP-1 | GNP | 0.001 | - | 10 | Nanofluids offer a 5–10% efficiency boost. |
Ref | Analysis | Nano Material | Cavity Shape | VF (%) | ex (%) | th (%) | en (%) | Findings |
---|---|---|---|---|---|---|---|---|
[90] | NUM & EXP | MWCNT/oil | Cylindrical | 0.8% | - | 4.72 | - | The thermal efficiency of the cavity receiver increased by 4.72% using nanofluid. |
[94] | NUM | CuO-H2O | Cylindrical | 0.1–0.4% | - | 25.6 | - | Employing a 0.1% CuO nanofluid at a flow rate of 0.0083 kg/s, the collector’s maximum thermal efficiency was enhanced. |
[95] | EXP | MWCNT/thermal oil | Hemispherical | 0.8% | - | 13 | - | Exergy and energy efficiencies were calculated to be approximately 60.48% and 12.94%, respectively. |
[96] | EXP | Al2O3/oil & SiO2/oil | Hemispherical | - | 16 & 12 | 74.41 & 68.86 | - | Al2O3/oil nanofluid outperformed SiO2/oil and pure oil in reducing heat loss from the hemispherical cavity receiver. |
[97] | NUM | Soybean oil-based MXene | Hemispherical, cubical & cylindrical | 0.025–0.125% | - | 0.6 | - | The equivalent efficiency demonstrated that the thermal benefits of using nanofluids surpassed the additional pumping energy, resulting in a net increase in overall solar collector performance. |
[98] | NUM& EXP | Water/Al2O3 | Parabolic | - | 17.3 | 62.65 | - | Nanofluids enhance heat transfer, leading to improved efficiency and performance. |
[99] | EXP | Water/Al2O3, ZnO | Parabolic | - | 22.72, 15.90 | - | 20.06, 12.55 | Al2O3 enhanced energy, exergy, economic, exergo-economic, and enviro-economic aspects. |
[100] | NUM& EXP | Oil/Al2O3 | Hemispherical, cubical & cylindrical | 0.01–0.2% | - | 12.9, 5.84, 1.44 | - | The thermal enhancement is most pronounced at higher temperatures, making nanofluids a promising choice for high-temperature applications. |
[101] | EXP | Water/SiC | Parabolic | 1% | 37.06 | - | - | SiC/water nanofluid exhibited higher exergy efficiency. |
Ref | Location | Analysis | Base Fluid | Nano Material | VF (%) | PS (nm) | th ↑ (%) | Findings |
---|---|---|---|---|---|---|---|---|
[102] | Algeria | EXP | DW | MWCNT | 0.05–0.3 | 8–15 | 33.81 ↑ | The nanofluids exhibited a 3%, 6%, and 7% increase in thermal conductivity at 25 °C for volume fractions of 0.05%, 0.1%, and 0.3% respectively. |
[103] | Iran | EXP & NUM | Water/Thermal Oil B | Al2O3, CuO | 1–5 | 20–50 | 5.95 ↑ | Al2O3, which is 28.7% cheaper LCOE than water + CuO due to the significantly higher purchase cost of CuO. |
[104] | Greece | EXP | Syltherm 800 | CuO | 2,4,6 | - | 0.82 ↑ | The optimum nanoparticle concentration is about 4% because a higher concentration does not lead to significant thermal efficiency enhancement. |
[105] | Iran | EXP | Water | Al, Ag, Ni, TiO2 | 0.01–2 | 20 | 10.8–11.3 ↑ | Ni at a volume concentration of 0.5% led to thermal efficiency of 11.2% in June, 10.8% in July, and 11.3% in August. |
[106] | Algeria | NUM | Therminol 66 Oil | MXene (Ti3C2) | 0.05–0.1 | - | 29.38 ↑ | Nanofluid with a 0.1 wt% concentration achieved an average thermal efficiency of 58.07%, an exergy efficiency of 12.21%, and a performance evaluation criterion (PEC) of 15.50%. |
[107] | China | EXP | Thermal oil | CuO | 0.05, 0.1, 0.2 | 60 | 67.6 | The thermal conductivity of CuO/oil nanofluids with a 0.2% volume fraction was 3.8% higher than that of the pure oil-based fluid. |
[108] | Iran | EXP | Water | Gold | 0.01–2 | - | - | At a mass flux of 100 kg/m2s, critical heat flux (CHF) increased by 91.01%, while at 500 kg/m2s, it increased by 114.1%. |
Ref | CSP/ Location | Simulation Tool | Base Fluid | Nano Material | VF (%) | PS (nm) | th ↑ (%) | Findings |
---|---|---|---|---|---|---|---|---|
[110] | SDC Kuwait | Eulerian two-phase model | Thermal oil | MgO, MWCNT | - | 30, 20–30 | 41 | Nanofluids boost thermal performance and exergy efficiency but increase pressure loss. |
[111] | PTC India | COMSOL | Water | TiO2 | 0.2–0.5 | 20 | 11 | The optimal configuration was achieved using a nanoparticle volume percentage of 0.5% and a 45-degree inclination angle, resulting in superior heat transfer and overall system efficiency. |
[112] | PTC Saudi Arabia | CFD | Water | CuO, Al2O3 | 3–7 | - | 7.2 | Incorporating porous obstacles and CuO nanofluids boosted efficiency by 7.2%. |
[113] | PTC Saudi Arabia | CFD | Therminol-VP-1 | Cu | - | - | 1.6 | Increasing fin height enhances thermal efficiency but also leads to higher pressure losses. |
[114] | PTC Morocco | CFD | Syltherm 800 | MWCTN, TiO2 | - | - | 2.5 | MWCTN-TiO2/Syltherm800 hybrid nanofluid significantly improved thermal performance. |
[115] | PTC Hungary | ANSYS Fluent | Water | Fe3O4 Graphene | 0.01, 0.05, 0.1, 0.2 | 20–30, 1–5 | 0.11 | Higher thermal efficiency is attributed to the improved thermophysical properties of the G-Fe3O4/water hybrid nanofluid, specifically its higher thermal conductivity and lower viscosity compared to water. |
[116] | PTC Iran | CFD | Therminol-VP-1 | Al2O3 | 4 | 20 | 0.5 | Application of nanofluid led to an appreciable increase in Nusselt number compared with the base fluid |
[117] | PTC South Africa | CFD | Therminol-VP-1 | Cu, Al2O3, Ag | 6 | <100 | 14 | Among the tested nanofluids, Ag-Therminol exhibited the highest thermal performance, while Al2O3-Therminol demonstrated the lowest. |
[118] | PTC Tunisia | Python | Syltherm-800 Therminol-VP-1 | CuO, CeO2 | 1 | - | 34.82, 1.58 | Syltherm-800 demonstrates superior performance compared to Therminol VP1 in terms of heat transfer enhancement. |
[119] | PTC Iran | 3D Numerical | Water | Al2O3, Cu | - | - | - | Inserting turbulators in the form of conical helical gear rings increased the heat transfer coefficient by up to 57.3% while reducing total entropy generation by 32.8%, despite a rise in pump power consumption. |
[120] | PTC China | FlexPDE | Water | Cu, Al2O3, Fe3O4, TiO2 | 8 | - | - | Among the nanoparticles tested, CuO demonstrated the highest thermal performance compared to Al2O3, Fe3O4, and TiO2. |
[121] | PTC Iran | CFD | Water | Al2O3 | 1–2 | - | - | Al2O3 nanofluid in a PTC with direct steam generation enhanced vapor volume fraction by 8.64% compared to water, while increasing Nusselt number by up to 544% under non-uniform heat flux |
[109] | PTC Greece | CFD | Syltherm 800 | CuO | 6 | - | 1.5 | The synergistic combination of nanofluids and finned surfaces led to a substantial enhancement in both thermal efficiency and convective heat transfer. |
[122] | PTC Greece | CFD | Therminol-VP-1 | SWCNT | 2.5 | 10 | 4 | Specific heat capacity also plays a critical role in determining overall thermal performance. |
[123] | SPTC Saudi Arabia | COMSOL | Water | Al2O3 | 1, 2 | 47 | 19 | Adding 2% nanofluids to water can increase PEC by up to 16%. |
[124] | SPTC China | EES | Water | CuO | - | - | - | CuO increases the ERTE of a solar collector by 5.6% under the maximum available DNI of 1000 W/m2. |
[125] | SDC Iran | MATLAB | Engine oil | MWCNT, SiO2, Al2O3, TiO2, Fe2O3, CuO | 0.01–0.05 | - | 12 | CuO shows the highest efficiency |
[126] | SDC China & Iran | Numerical | Water/Dowtherm | MWCNT | 0–0.04 | 20–50 | - | LCOE of SDC with nanofluid increased 5.5 times |
[127] | FRC Greece | SolidWorks Flow | Syltherm 800 | CuO | 6 | - | 0.22–0.78 | The nanofluid’s positive impact on thermal efficiency, reaching 0.8%, was offset by a substantial 50% rise in pumping energy demand. |
[128] | FRC UAE | MATLAB Numerical | Water | rGO-Co3O4 | 0.05, 0.1, 0.2 | - | 2.75–31.95 | The mean exergy efficiency increased by 2.27%, while the FRC optical efficiency was 41.97%. PEC values higher than 1. |
[129] | FRC Ecuador | PYTHON Numerical | Therminol VP 3 | Graphite | - | 10–45 | 94 | Within the temperature range of 403 K to 343 K, receiver efficiencies were consistently high, reaching values between 92% and 96% with nanofluid. |
[130] | FRC China | CFD | - | Ag/propylene glycol | - | - | 49.3 | Increasing the inlet nanofluid flow velocity or decreasing the inlet nanofluid temperature can lead to improved thermal efficiency. |
[26] | FRC China | Aspen-HYSYS | Water | Al2O3, CuO | 0.001–0.2 | - | - | The economic analysis of the proposed hybrid system revealed an LCOE of 0.0446 Euro/kWh and an SPT of 7.74 years. |
Ref | Nanofluid Used | Industry 4.0 Tool | Application in CSP | Findings | Impact on Energy Management |
---|---|---|---|---|---|
[24] | Al2O3, CuO, SiO2 | AI | Exergy efficiency prediction using AI models | Six AI models (AdaBoost, MARS, SGD, Tweedie, Stacking, and Voting) were developed to predict the exergy efficiency of PTCs using molten salt-based nanofluids. The stacking regressor achieved the highest accuracy (R2 = 0.963), followed by AdaBoost (R2 = 0.947). | AI models, particularly Stacking and AdaBoost, enhance prediction accuracy, optimize performance, and contribute to more efficient management of energy in PTC systems. |
[131] | Therminol VP-1-SiO2, Dowtherm Q-SiO2 | AI | Energy and exergy efficiency prediction using oil-based nanofluids | AI algorithms to predict energy and exergy efficiencies in PTCs using oil-based nanofluids. CART and ETR models achieved the highest accuracy, with R2 = 0.9999 for energy and R2 = 0.9983 for exergy using Therminol VP-1-SiO2 and Dowtherm Q-SiO2 nanofluids. | AI models like CART and ETR optimize energy and exergy performance, leading to more efficient PTC operation, reduced environmental impact, and enhanced sustainability. |
[132] | - | AI | Fault detection in PTC | Detects faults in optical efficiency, flow rate, and thermal losses with accuracy ranging from 71.72% to 90.62%. | Improved operational efficiency and reduced maintenance costs. |
[133] | - | AI | Heat loss detection and monitoring in receiver tubes | The proposed Heat LOS system uses real-time infrared camera images and CNN deep learning to achieve 93% accuracy in detecting thermal | Reduced maintenance costs and optimized OPEX by enabling early intervention. |
[134] | Graphene and silver | AI | Optimizing solar thermal collector efficiency | Key parameters (e.g., Deborah number, Darcy number) affect thermal profiles, Nusselt number, and entropy generation. ANN model improved prediction accuracy. | Enhanced thermal performance and heat transfer efficiency, optimizing energy use in solar thermal systems. |
[135] | - | AI | Estimation of hourly electric production | ANN model outperformed analytical models with 96% accuracy, predicting annual energy production of 42.6 GWh/year. | Improved accuracy in energy production estimates, beneficial for optimizing performance in future solar power plants. |
[136] | - | AI | Fault detection and isolation | A three-layer neural network methodology detected faults with over 80% accuracy, reaching 90% when all layers were used. | Enhanced fault detection and isolation, improving plant efficiency and reducing downtime. |
[137] | Hybrid Non-Newtonian Nanofluids | AI | Optimizing PTC performance | Deep learning predicted the thermal efficiency of the system, showing higher efficiency with helical absorber tubes and optimized flow rates. The highest thermal efficiency was 58.2% at a 4% nanoparticle concentration and Re = 5000. | Demonstrated that deep learning can optimize CSP performance by predicting efficiency, and highlighted the benefits of using hybrid nanofluids and helical absorber tubes in enhancing heat transfer and energy efficiency. |
[70] | Al2O3-MWCNT/Syltherm-800 | ML | Optimizing PTC performance | The addition of 2% Al2O3, 1% MWCNT/Syltherm-800 yields the highest thermal efficiency (70.54%). ML showed an R2 value of 99.99%. | Enhanced thermal efficiency and reduced computation time for outlet temperature prediction. |
[138] | - | DT, ML | PTC in the Mexican dairy industry | DT model, combined with ML, accurately predicted energy and cost indicators. Optimization identified the best solar collector configurations for various climates. | Emphasized the value of DT models in optimizing energy systems, enhancing efficiency, and reducing environmental impacts in industrial applications. |
[139] | - | ML | Predicting transient heat transfer in sensible heat storage | ML tool showed the best prediction accuracy with errors below 1.45%. The method reduces the computational time for transient simulations. | Reduces computational effort, improves site selection, and accelerates design processes. |
[140] | - | ML | Enhancing efficiency with corrugated tube receivers | The Huber model predicted friction factors with R2 = 0.97, the support vector regression (SVR) model predicted the Nusselt number with R2 = 0.96. Enhancements in thermal efficiency (9%), Nusselt number (132%), and friction factor (38%). | Enhances CSP collector performance, optimizing energy transfer and reducing energy input needs. |
Ref | Industry 4.0 Tool | Application in CSP | Findings | Impact on Energy Management |
---|---|---|---|---|
[141] | AI | Optimizing heliostat calibration | A deep learning-based method using self-normalizing neural networks and transfer learning achieved a heliostat calibration accuracy of 0.42 mrad, three times more accurate than the best regression algorithm. | Improved heliostat calibration leads to enhanced accuracy and efficiency in SPTC operations, reducing tracking errors and improving energy generation efficiency. |
[142] | AI | Safety assessment of AI in heliostat calibration | Sensitivity analysis of a neural network for heliostat calibration showed that measurement errors due to noisy data were guaranteed to be below 0.02 mrad, even with small datasets (as few as 30 data points). | Ensures reliable calibration, reducing risks and improving system efficiency. |
[143] | AI | Optimizing heliostat surface prediction | The iDLR method predicted heliostat surfaces with high accuracy (MAE of 0.14 mm) based on target images, achieving 92% accuracy in flux density predictions. | Increases efficiency by improving flux density distribution, reducing the need for recalibration, and optimizing power plant operations. |
[144] | ML | Optimizing hybrid performance | The GWO-HSVR ML model was the most accurate in predicting turbine and PV output. The SPTC-PV system outperformed both SPTC-PV and stand-alone PV modules, achieving an electrical output of up to 8.36 MW. | Enhances hybrid system efficiency, optimizes performance based on location, and increases overall electrical and thermal energy production. |
[145] | ML | Optimizing the EOR factor with solar-assisted carbon capture | The integration of SPTC heliostats and PV systems reduced the energy penalty factor from 21.2% to 7.4%, while the decision tree model achieved an R2 of 0.98, forecasting an increase in the EOR factor from 19% to 43.16%. | The solar-assisted system, coupled with ML, reduces energy consumption and enhances EOR performance, improving overall system efficiency. |
[146] | DT | Optimizing solar chimney performance | DT model, using both multivariate regression and MLP-ANN, successfully predicted performance parameters. The optimized design through DT showed significant improvements in air changes per hour, energy efficiency, and environmental impact, with improvements of up to 87%. | Enhances building energy efficiency by integrating passive solar chimney systems, providing real-time optimization and performance projections, and reducing energy consumption and environmental emissions across different climatic zones. |
Ref | Nanofluid Used | Industry 4.0 Tool | Application in CSP | Findings | Impact on Energy Management |
---|---|---|---|---|---|
[147] | - | AI | Optimizing the SDC/Stirling system | The ANFIS-PSO method optimized power generation, global efficiency, and engine speed under various parameters. | The model improves system efficiency by optimizing power output, reducing heat loss, and enhancing performance. |
[148] | - | AI | Exergo-economic analysis | The ANN-Improved Particle Swarm Optimization (ANN-IPSO) model provided highly accurate predictions for exergy efficiency (R2 = 0.9903) and product cost (R2 = 0.9948), outperforming ANN alone. | Enhances forecasting accuracy, leading to optimized system efficiency and reduced operational costs. |
[149] | - | AI | Optimizing SDC performance for hydrogen production | ANN predicted heat flux with R2 = 0.979, RMSE = 0.438, and MAPE = 0.32%. Uniformity parameter prediction achieved R2 = 0.925. | AI-based modeling reduces computational costs and optimizes SDC configurations for efficient hydrogen production. |
[150] | MWCNT-Thermal Oil | ML | Optimizing SDC performance | ANFIS-EO outperformed ANN and ANFIS, achieving an R2 of 0.99999 and reducing RMSE by up to 91.86%. Thermal efficiency improved by 10% using nanofluid. | Enhances prediction accuracy, reducing experimental costs and optimizing CSP efficiency. |
[151] | - | ML | Optimizing SDC performance | The integrated optical-thermal model combined with ANN Exponential Linear Unit (ELU activation) achieved R2 = 0.97, RMSE = 0.49, and MAPE = 5.38%. | ML-assisted modeling reduces computational expenses and improves thermal performance predictions. |
Ref | Industry 4.0 Tool | Application in CSP | Findings | Impact on Energy Management |
---|---|---|---|---|
[153] | AI | Optimizing FRC performance | IPPOA achieved efficiencies of 42%, 47%, and 48% in different cases. MCRT modeling had 97% precision. | AI-driven optimization enhances FRC efficiency, improving cost-effectiveness and thermal performance. |
[154] | ML | Performance prediction | The Relevance Vector Machine–Simulated Annealing Algorithm (RVM-SAA) model outperformed RVM and ANN, achieving R2 values of 0.9997 for thermal power and 0.9988 for outlet oil temperature. RMSE values were 0.4090 and 2.5150, respectively. | Enhanced predictive capabilities for FRC system performance, improving long-term operation monitoring and optimization. |
[155] | ML | Performance prediction | K-nearest neighbors (KNN) demonstrated the highest R2 of 98.81% and MAPE of 1.975%, outperforming other ML models for predicting output power. | Enhanced prediction accuracy for operational optimization, leading to better energy management and system efficiency. |
[156] | DT | False data injection detection in outlet temperature sensor | The neuro-fuzzy detector, based on ANFIS, demonstrated over 97% detection accuracy in identifying false data injections affecting the outlet temperature sensor of FRC. | Improved system reliability and security by accurately identifying and mitigating cyber-attacks, ensuring continuous operation and performance of the solar plant. |
[157] | DT | DT for solar cooling optimization | The DT models, both ANFIS and PDE-based, successfully simulated the operation of an FRC for cooling applications, achieving excellent accuracy with a worst-case mean absolute percentage error of 2.49%. | Enabled optimization and control of the cooling plant, offering enhanced predictive control, adaptation to plant aging, and faster twinning for operation improvement |
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Peer, M.S.; Melesse, T.Y.; Orrù, P.F.; Braggio, M.; Petrollese, M. Next-Generation CSP: The Synergy of Nanofluids and Industry 4.0 for Sustainable Solar Energy Management. Energies 2025, 18, 2083. https://doi.org/10.3390/en18082083
Peer MS, Melesse TY, Orrù PF, Braggio M, Petrollese M. Next-Generation CSP: The Synergy of Nanofluids and Industry 4.0 for Sustainable Solar Energy Management. Energies. 2025; 18(8):2083. https://doi.org/10.3390/en18082083
Chicago/Turabian StylePeer, Mohamed Shameer, Tsega Y. Melesse, Pier Francesco Orrù, Mattia Braggio, and Mario Petrollese. 2025. "Next-Generation CSP: The Synergy of Nanofluids and Industry 4.0 for Sustainable Solar Energy Management" Energies 18, no. 8: 2083. https://doi.org/10.3390/en18082083
APA StylePeer, M. S., Melesse, T. Y., Orrù, P. F., Braggio, M., & Petrollese, M. (2025). Next-Generation CSP: The Synergy of Nanofluids and Industry 4.0 for Sustainable Solar Energy Management. Energies, 18(8), 2083. https://doi.org/10.3390/en18082083