首页> 外文期刊>Energy and Buildings >A state-of-the-art-review on phase change materials integrated cooling systems for deterministic parametrical analysis, stochastic uncertainty-based design, single and multi-objective optimisations with machine learning applications
【24h】

A state-of-the-art-review on phase change materials integrated cooling systems for deterministic parametrical analysis, stochastic uncertainty-based design, single and multi-objective optimisations with machine learning applications

机译:关于相变材料的最先进 - 关于确定性参数分析,随机不确定性的设计,单一和多目标优化,与机器学习应用的多目标优化进行综述

获取原文
获取原文并翻译 | 示例
       

摘要

Renewable energy utilisation, latent energy storage, optimal system design, and robust system operation are critical elements for carbon-free buildings and communities. Machine learning methods are effective to assist the energy-efficient renewable systems during multi-criteria design and multi-level uncertainty-based operation periods. However, the current literature provides little knowledge on this topic. In this study, a state-of-the-art-review on phase change materials for cooling applications is presented, in terms of smart ventilations, intelligent PCMs charging/discharging, deterministic parametrical analysis, stochastic uncertainty-based performance prediction and optimisation. Furthermore, technical effectiveness of machine learning methods in single and multi-objective optimisations has been presented, through hybrid PCMs integrated renewable systems. Multivariables involved in the review include thermo-physical, geometrical and operating parameters of PCMs. Multi-criteria employed in the review include heat transfer rate, cooling energy storage density, heat storage and release efficiency, and indoor thermal comfort. The literature review presents technical challenges, such as tradeoffsolutions between computational accuracy and efficiency, generic methods for effective selection amongst multi-diversified optimal solutions along the Pareto front, the general methodology for multi-level uncertainty quantification, smart controllers with accurate predictions under high-level parameters' uncertainty and stochastic occupants' behaviors. The future outlook and recommendations of machine learning methods in PCMs integrated cooling systems have also been presented as avenues for upcoming research. (c) 2020 Elsevier B.V. All rights reserved.
机译:可再生能源利用率,潜能存储,最佳系统设计和强大的系统操作是碳自由建筑和社区的关键元素。机器学习方法有效地帮助在多标准设计和基于多级不确定性的操作周期内提供节能可再生系统。但是,目前的文献在这个主题提供了很少的了解。在这项研究中,就智能通风而言,智能PCM充电/放电,确定性参数分析,随机不确定性基于性能预测和优化的智能通风而言,介绍了对冷却应用的相变材料的最新审查。此外,通过混合PCMS集成可再生系统,提出了单一和多目标优化中机器学习方法的技术效果。审查中涉及的多变量包括PCM的热物理,几何和操作参数。审查中使用的多标准包括传热速率,冷却能量存储密度,储热和释放效率,以及室内热舒适度。文献综述提供技术挑战,例如计算准确性和效率之间的权衡操作,沿着帕累托前线的多元化最佳解决方案之间的普通方法,多级不确定性量化的一般方法,智能控制器在高度下预测准确的预测级别参数的不确定性和随机占用者的行为。在PCMS集成冷却系统中的未来展望和建议在PCMS集成冷却系统中也被呈现为即将到来的研究途径。 (c)2020 Elsevier B.v.保留所有权利。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号