Approach for energy efficient building design during early phase of design process

Q2 Energy Energy Informatics Pub Date : 2024-11-19 DOI:10.1186/s42162-024-00426-z
Aviruch Bhatia, Shanmukh Dontu, Vishal Garg, Reshma Singh
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Abstract

Energy consumption in the building sector is about 40% of total energy consumed globally and is trending upwards, along with its contribution to greenhouse gas (GHG) emissions. Given the adverse impacts of GHG emissions, it is crucial to integrate energy efficiency into building designs. The most significant opportunities for enhancing energy performance are present during the initial phases of building design, when there is less impact of other design constraints. Various tools exist for simulating different design options and providing feedback in terms of energy consumption and comfort parameters. These simulation outputs must then be analyzed to derive design solutions. This paper presents an innovative approach that utilizes user input parameters, processes them through cloud computing, and outputs easily understandable strategies for energy-efficient building design. The methodology employs Asynchronous Distributed Task Queues (DTQ) - a more scalable and reliable alternative to conventional speedup techniques-for conducting parametric energy simulations in the cloud. The goal of this approach is to assist design teams in identifying, visualizing, and prioritizing energy-saving design strategies from a range of possible solutions for each project. Furthermore, a tool ‘eDOT’ has been developed utilizing the discussed methodology. Unlike existing tools, eDOT leverages artificial intelligence to dynamically generate and provide design strategies during the early phases of design process. By simplifying the simulation process, eDOT enables design teams to make informed, data-driven decisions without needing to interpret complex simulation outputs. A case study simulated for two locations is provided in this paper to demonstrate the effectiveness of eDOT, further underscoring its practical impact on energy-efficient building design.

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在设计过程的早期阶段进行节能建筑设计的方法
建筑领域的能源消耗约占全球能源消耗总量的 40%,并且呈上升趋势,同时也增加了温室气体(GHG)的排放量。鉴于温室气体排放的不利影响,将能源效率纳入建筑设计至关重要。在建筑设计的初始阶段,受其他设计限制因素的影响较小,此时是提高能源性能的最佳时机。有各种工具可以模拟不同的设计方案,并提供能耗和舒适度参数方面的反馈。然后必须对这些模拟输出进行分析,以得出设计方案。本文提出了一种创新方法,利用用户输入参数,通过云计算进行处理,并输出易于理解的节能建筑设计策略。该方法采用异步分布式任务队列(DTQ)--一种比传统加速技术更具可扩展性和可靠性的替代方法--在云中进行参数化能源模拟。这种方法的目标是帮助设计团队从每个项目的一系列可能解决方案中识别、可视化节能设计策略,并确定其优先级。此外,还利用所讨论的方法开发了一种工具 "eDOT"。与现有工具不同,eDOT 利用人工智能在设计流程的早期阶段动态生成并提供设计策略。通过简化模拟过程,eDOT 使设计团队无需解释复杂的模拟输出,就能做出以数据为导向的明智决策。本文提供了两个地点的模拟案例研究,以证明 eDOT 的有效性,并进一步强调其对节能建筑设计的实际影响。
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来源期刊
Energy Informatics
Energy Informatics Computer Science-Computer Networks and Communications
CiteScore
5.50
自引率
0.00%
发文量
34
审稿时长
5 weeks
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