基于准数字孪生的机器学习调节加湿-除湿系统

IF 6.9 2区 工程技术 Q2 ENERGY & FUELS
Juxin Du , Senshan Sun , Tianhao Li , A.W. Kandeal , Guilong Peng , Nuo Yang
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引用次数: 0

摘要

太阳能加湿-除湿技术的优势在于其易于维护和清洁的操作轮廓。将数字孪生集成到这些系统中可以实现及时和精确的控制能力,以增强系统优化。本工作实现了一个由机器学习模型驱动的准数字孪生优化框架,用于太阳能加湿-除湿系统。利用实验数据对机器学习模型进行了训练和验证,淡水产量预测的R2值为0.96,温度预测的R2值为0.93。利用机器学习辅助的准数字孪生,本研究探索了四种不同模式下操作参数的实时优化:生产最大化、节能、效率优化和平衡。采用遗传算法确定在不同天气条件下的最优配置。结果显示了显著的性能改进:在产量最大化模式下,每小时淡水产量在晴天增加了25%,在阴天增加了49%。在节能模式下,与基线运行相比,晴天和阴天的日能耗分别减少58%和52%。这项研究不仅提高了太阳能加湿-除湿系统的性能,而且通过使用数字孪生来解决各种工程挑战,强调了优化框架的更广泛适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regulating humidification-dehumidification systems via machine learning based on quasi-digital twin
Solar humidification-dehumidification technology is advantageous due to its ease of maintenance and clean operational profile. Integrating a digital twin into these systems enables timely and precisely control capabilities for enhanced system optimization. This work implements a quasi-digital twin optimization framework driven by machine learning models into the solar humidification-dehumidification system. The machine learning model was trained and validated using experimental data, achieving R2 values of 0.96 for freshwater production predictions and 0.93 for temperature forecasts. Leveraging the machine learning-assisted quasi-digital twin, this study explores the real-time optimization of operational parameters across four distinct modes: production-maximized, energy-saving, efficiency-optimized, and balanced. Genetic algorithms were employed to determine optimal configurations under varying weather conditions. Results indicate significant performance improvements: under the production-maximized mode, hourly freshwater output increased by up to 25% during a sunny clear day and 49 % during a cloudy day. In energy-saving mode, daily energy consumption was reduced by 58 % on a clear day and 52 % on a cloudy day, respectively, relative to baseline operations. This research not only elevates the performance of solar humidification-dehumidification systems but also underscores the broader applicability of the optimization framework by using digital twin to diverse engineering challenges.
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来源期刊
Applied Thermal Engineering
Applied Thermal Engineering 工程技术-工程:机械
CiteScore
11.30
自引率
15.60%
发文量
1474
审稿时长
57 days
期刊介绍: Applied Thermal Engineering disseminates novel research related to the design, development and demonstration of components, devices, equipment, technologies and systems involving thermal processes for the production, storage, utilization and conservation of energy, with a focus on engineering application. The journal publishes high-quality and high-impact Original Research Articles, Review Articles, Short Communications and Letters to the Editor on cutting-edge innovations in research, and recent advances or issues of interest to the thermal engineering community.
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