Artificial intelligence-assisted characterization and optimization of red mud-based nanofluids for high-efficiency direct solar thermal absorption
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https://hdl.handle.net/10037/34500Date
2024-01-30Type
Journal articleTidsskriftartikkel
Peer reviewed
Author
Praveen Kumar, Kumar; Khedkar, Rohit; Sharma, Prabhakar; Elavarasan, Rajvikram Madurai; Paramasivam, Prabhu; Wanatasanappan, V. Vicki; Dhanasekaran, SesathiriAbstract
The utilization of nanofluids (NFs) holds promise for enhancing the thermal efficiency of solar
thermal collectors. Among the various NF solutions, red mud (RM) NFs have gained attention due
to their effective absorption of solar thermal energy. RM comprises precious metal oxides, making it a proficient medium for direct solar heat absorption. This study aimed to formulate waterbased RM NFs with concentrations ranging from 0.1 to 0.75 vol%. Within the temperature range
of 303–333 K, we assessed the specific heat (SH), viscosity (VST), and thermal conductivity (TC)
of the NFs. To maintain stability, we employed polyvinylpyrrolidone (PVP) surfactant. The results indicated that the SH of RM NFs is lower than that of water. Additionally, as RM NF concentrations increased, there was a significant improvement in TC. The highest TC enhancement of
36.9 % is observed at 333 K for a concentration of 0.75 vol% compared to water. Based on the
gathered data, unique equations were developed to estimate the properties of RM NFs within the
studied range. Our findings suggest that RM NFs have the potential to effectively replace water in
solar energy applications. Furthermore, we employed innovative ensemble-type machine learning (ML) techniques, namely Adaptive Boosting (AdaBoost) and random forest (RF), to address
the problem. We also utilized these novel ML methods to construct metamodels for predicting the
considered properties, offering accurate and efficient models for analyzing NF behavior. The incorporation of RM in solar thermal applications could contribute to resolving disposal challenges
associated with this waste material, thereby aiding in its long-term management.
Publisher
ElsevierCitation
Praveen Kumar, Khedkar, Sharma, Elavarasan, Paramasivam, Wanatasanappan, Dhanasekaran. Artificial intelligence-assisted characterization and optimization of red mud-based nanofluids for high-efficiency direct solar thermal absorption. Case Studies in Thermal Engineering. 2024;54Metadata
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