Please use this identifier to cite or link to this item: http://elar.urfu.ru/handle/10995/130871
Title: Machine learning approaches for real-time forecasting of solar still distillate output
Authors: Murugan, D. K.
Said, Z.
Panchal, H.
Gupta, N. K.
Subramani, S.
Kumar, A.
Sadasivuni, K. K.
Issue Date: 2023
Publisher: Elsevier B.V.
Citation: Murugan, DK, Said, Z, Panchal, H, Gupta, N, Subramani, S, Kumar, A & Sadasivuni, K 2023, 'Machine learning approaches for real-time forecasting of solar still distillate output', Environmental Challenges, Том. 13, 100779. https://doi.org/10.1016/j.envc.2023.100779
Murugan, D. K., Said, Z., Panchal, H., Gupta, N., Subramani, S., Kumar, A., & Sadasivuni, K. (2023). Machine learning approaches for real-time forecasting of solar still distillate output. Environmental Challenges, 13, [100779]. https://doi.org/10.1016/j.envc.2023.100779
Abstract: Solar stills provide a promising avenue for freshwater production in regions grappling with water scarcity, especially remote locales. However, their efficiency is often constrained by the variable climatic conditions. Conventional prediction methods fall short in consistently forecasting the yield, leaving a significant gap in optimizing solar still operations. Recognizing this, the introduction of machine learning becomes pivotal. With a robust predictive model, operators can avoid inefficiencies, inconsistent outputs, and sub-optimal resource utilization. The primary objective of this research is to determine the most suitable machine learning model tailored for predicting solar still output under specific environmental conditions. This research work assessed various machine learning models, including linear regression, decision trees, random forest, support vector machines, and multilayer perceptron. Evaluation metrics encompassed Mean Absolute Error (MAE), cross-validation, grid search, and randomized search techniques. Our results identified the Decision Tree model, registering a MAE of 5.43 and 5.74 through random and grid search methods, respectively, as the preeminent predictor for our dataset. This machine learning-centric methodology elevates the precision of solar still output predictions and paves the way for enhanced solar still designs and superior optimization of solar energy conversion mechanisms. © 2023 The Author(s)
Keywords: DECISION TREE MODELLING
MACHINE LEARNING TECHNIQUES
PREDICTIVE MODELS
PRODUCTIVITY ESTIMATION
SOLAR STILL
URI: http://elar.urfu.ru/handle/10995/130871
Access: info:eu-repo/semantics/openAccess
cc-by-nc-nd
License text: https://creativecommons.org/licenses/by-nc-nd/4.0/
SCOPUS ID: 85174639403
PURE ID: 46908703
ISSN: 2667-0100
DOI: 10.1016/j.envc.2023.100779
metadata.dc.description.sponsorship: Qatar National Research Fund, QNRF: MME03-1226-210042
This work was supported by Qatar National Research Fund under the grant no. MME03-1226-210042 . The statements made herein are solely the responsibility of the authors.
Appears in Collections:Научные публикации ученых УрФУ, проиндексированные в SCOPUS и WoS CC

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