丰富了机器学习技术的太阳能蒸馏系统:综述

Y. S. Prasanna, S. Deshmukh
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引用次数: 0

摘要

太阳能蒸馏器具有利用太阳辐射的优点,是咸水和工业海水淡化的简单热能来源。本文重点介绍了如何使用正在进行的高端机器学习技术来进行太阳能蒸馏系统性能评估,这些技术明确有助于优化和评估蒸馏器性能。本研究对ML模型的实现进行了完整的研究,以得出实现适当的有监督或无监督机器学习方法的可行性。本文比较了两种深度学习模型在太阳能蒸馏过程改进中的应用。分析了利用机器学习技术对太阳能蒸馏系统进行性能评估的必要性,并进一步明确了ML和DL方法的重要特征和组成部分。将研究的重要性放在前面,从文献综述中发现的观察结果进行比较分析。我们得出结论,ANN- mlp和ANN- ff模型是预测太阳馏分最合适的模型,而ANN- mlp和ANN- ff模型比其他模型更准确。与传统的统计方法不同,具有更多隐藏层的DNN混合模型可用于优化水深。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Solar Distillation Systems Enriched With Machine Learning Techniques: A Review
Solar stills have the advantage of using solar radiation as they are the simple thermal energy source for saline water and industrial water desalination. This paper focuses on a detailed review of how a solar distillation system performance evaluation can be made with ongoing higher-end Machine learning techniques explicitly helpful in optimising and evaluating the still performance. Complete research on the implementation of ML models is made in this study to draw the feasibility of implementing the appropriate supervised or unsupervised machine learning methods. A comparison of the two of deep learning models applied in the advancement of the solar distillation process is explained in this study. The need for performance assessment of solar distillation system with Machine Learning Techniques is analyzed, and further significant features and components of ML and DL Methods are clearly explained. Keeping the importance of the study in front, a comparative analysis is made from the observations found in the literature review. We conclude that the Classification ML Techniques with ANN are the most appropriate models to predict the solar distillate while the ANN-MLP, ANN-FF models are more accurate than the other models. Instead of a traditional statistical approach, a DNN Hybrid model with more hidden layers can be used in optimising the water depth.
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