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Identification of the best model to predict optical properties of water

Author

Listed:
  • Wessam El-Ssawy

    (Agricultural Engineering Research Institute (AEnRI), Agricultural Research Center (ARC))

  • Hosam Elhegazy

    (Future University in Egypt)

  • Heba Abd-Elrahman

    (Agricultural Engineering Research Institute (AEnRI), Agricultural Research Center (ARC))

  • Mohamed Eid

    (Heliopolis University For Sustainable Development)

  • Niveen Badra

    (Ain Shams University)

Abstract

This research studies prediction models for optical water properties, which are very important to save time consumption to easy control of irrigation systems to make it smart irrigation systems and changing manual system with automatic systems, moreover the suitable time to implement maintenance. One of the most important reasons to use a regression model in this study is to have the ability to use a simple laser device to measure one optical parameter or physical parameters to predict the other parameters by regression models, which will save more money used by an expensive laser device to measure the three optical properties (reflection, transmission, and absorption). Data collected through laboratory experiments were then put through various machine learning regression models. The applied models are random forest (RF), XGBoost (XGB), support vector machine (SVR), and multiple linear regression (MLR). Four scenarios implemented these models; the first scenario included [pressure difference (Bar), wavelength (nm), total suspended solids (TSS)] for samples of Water taken from the filtration system, the second scenario included (Bar, nm, TSS, and reflection), the third scenario included (Bar, nm, TSS and transmission). The fourth scenario is (Bar, nm, TSS, transmission, and reflection). The findings of this research were SVR in scenario 3 (SVR3) had a high correlation coefficient (R2 = 0.95) and minimum error, followed by MLR in scenario 3 (MLR3) and scenario 2 (MLR2), which had the same correlation coefficient (R2 = 0.95), but errors were higher than SVR3. The lowest root means square error (RMSE) was in SVR in scenario 1 (SVR1) by 0.180, followed by RF in scenario 1 (RF1) by 0.181, and the highest was in RF in scenario 2 (RF 2) by 15.2. Based on these performance criteria, SVR3 is the best model to predict optical properties in this study.

Suggested Citation

  • Wessam El-Ssawy & Hosam Elhegazy & Heba Abd-Elrahman & Mohamed Eid & Niveen Badra, 2023. "Identification of the best model to predict optical properties of water," Environment, Development and Sustainability: A Multidisciplinary Approach to the Theory and Practice of Sustainable Development, Springer, vol. 25(7), pages 6781-6797, July.
  • Handle: RePEc:spr:endesu:v:25:y:2023:i:7:d:10.1007_s10668-022-02331-5
    DOI: 10.1007/s10668-022-02331-5
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    References listed on IDEAS

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    1. Ping Liu & Jin Wang & Arun Kumar Sangaiah & Yang Xie & Xinchun Yin, 2019. "Analysis and Prediction of Water Quality Using LSTM Deep Neural Networks in IoT Environment," Sustainability, MDPI, vol. 11(7), pages 1-14, April.
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