大型地面楼板长期热损失计算的人工智能简化方法

A. M. Măgurean, L. Czumbil, D. Micu
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引用次数: 0

摘要

作为大规模减少能源消耗和温室气体排放的努力的一部分,主要的研究和发展方向之一是集中在住宅和非住宅建筑领域。本文通过地面对建筑物的热损失进行评估,作为建筑物能源需求和能耗的一部分,这一领域目前还缺乏全面的知识,特别是对大型建筑物。为了减少在时间依赖状态下进行数值分析所需的大量资源,作者建议使用人工智能来长期预测大尺寸板通过地面的每小时传热损失。之所以关注这一主题,是因为这种板材适用于许多类型的非住宅建筑,如商业建筑(大型超市、购物中心)、生产大厅甚至教育建筑。另一种方法是采用数值方法进行详细分析,为神经网络建立输入数据,以便通过完全替代数值分析来预测建筑物的部分热响应,以替代地面上任意尺寸的板。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Artificial Intelligence Eased Method for the Long-Term Heat Losses Calculation Applied to Large Slabs On Ground
As part of the efforts to reduce energy consumption and greenhouse gas emissions on a large scale, one of the main research and development directions is focused on the residential and non-residential buildings sector. This paper assesses heat losses of buildings through ground, as part of the energy demand and energy consumption of the building, a domain that still lacks comprehensive knowledge, especially for the large buildings. In order to reduce the significant resources required for numerical analysis in time-dependent state, the authors propose the use of artificial intelligence to allow long-term prediction of the hourly heat transfer losses through ground for large dimension slabs. The attention was directed to this subject due that this slabs are specific for many types of non-residential buildings, such as commercial buildings (hypermarkets, malls), production halls or even educational buildings. An alternative approach is undertaken in the direction of carrying out detailed analyzes using numerical methods to establish input data for neural networks, in order to predict the building's part thermal response, by totally substituting numerical analysis, for arbitrary sizes of slabs on ground.
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