Solar thermal process parameters forecasting for evacuated tube collectors (ETC) based on RNN-LSTM

Solar Heat for Industrial Process (SHIP) systems are a clean source of alternative and renewable energy for industrial processes. A typical SHIP system consists of a solar panel connected with a thermal storage system along with necessary piping. Predictive maintenance and condition monitoring of th...

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Bibliographic Details
Main Authors: Akbar, Muhammad Ali, Haja Mohideen, Ahmad Jazlan, Rashid, Muhammad Mahbubur, Mohd Zaki, Hasan Firdaus, Akhter, Muhammad Naveed, Embong, Abd Halim
Format: Article
Language:English
English
Published: IIUM Press 2023
Subjects:
Online Access:http://irep.iium.edu.my/103059/7/103059_Solar%20thermal%20process%20parameters%20forecasting.pdf
http://irep.iium.edu.my/103059/8/103059_Solar%20thermal%20process%20parameters%20forecasting_WOS.pdf
http://irep.iium.edu.my/103059/
https://journals.iium.edu.my/ejournal/index.php/iiumej/article/download/2374/897/15722
https://doi.org/10.31436/iiumej.v24i1.2374
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Institution: Universiti Islam Antarabangsa Malaysia
Language: English
English
Description
Summary:Solar Heat for Industrial Process (SHIP) systems are a clean source of alternative and renewable energy for industrial processes. A typical SHIP system consists of a solar panel connected with a thermal storage system along with necessary piping. Predictive maintenance and condition monitoring of these SHIP systems are essential to prevent system downtime and ensure a steady supply of heated water for a particular industrial process. This paper proposes the use of recurrent neural network based predictive models to forecast solar thermal process parameters. Data of five process parameters namely - Solar Irradiance, Solar Collector Inlet & Outlet Temperature, and Flux Calorimeter Readings at two points were collected throughout a four-month period. Two variants of RNN, including LSTM and Gated Recurrent Units, were explored and the performance for this forecasting task was compared. The results show that Root Mean Square Errors (RMSE) between the actual and predicted values were 0.4346 (Solar Irradiance), 61.51 (Heat Meter 1), 23.85 (Heat Meter 2), Inlet Temperature (0.432) and Outlet Temperature (0.805) respectively. These results open up possibilities for employing a deep learning based forecasting method in the application of SHIP systems.