Optimisation of energy consumption using building information modelling technology

Liqin Ding, Chao Ma, Xuezhi Ma
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引用次数: 0

Abstract

The energy consumption of the whole life cycle of the existing buildings in China exceeds 50% of the total energy consumption of the society. With the rapid development of the construction industry, this proportion is still growing. On the whole, there is a lack of analysis on the factors related to energy consumption and comfort in the process of building scheme design at this stage. In addition, designers have insufficient understanding of the theoretical system of low-energy buildings, and it is difficult to optimise the scheme throughout the design. To solve these problems, the research first proposes an integrated design method of green buildings based on building information modelling technology. This method integrates and shares engineering information, problem solving, simulation tools, architectural model applications, and architectural team communication platforms, which can effectively improve the problem that the current green building projects do not belong to each other when designing. The research also proposes a multi-objective optimisation algorithm based on genetic algorithm. The proposed method optimises the overall design of green buildings, especially the design of natural lighting, starting from the influence relationship between targets and targets and between targets and enclosure systems. To obtain the optimal effect, the virtual function of Traind is selected as the training function after testing. In addition, the model obtains a reasonable range of design parameters according to the energy consumption of the building in the uncomfortable time. Finally, the method proposed in the study was tested. The experimental results found that compared with the initial scheme, the overall energy consumption of the optimised scheme was reduced by 10.46%; The natural light coefficient was increased by 0.44%; The natural pressure Pa hour coefficient was optimised by 5.38%. The optimisation scheme can effectively reduce the energy consumption of the building in the whole life cycle and improve the comfort.
利用楼宇资讯模型技术优化能源消耗
中国既有建筑全生命周期能耗超过社会总能耗的50%。随着建筑业的快速发展,这一比例还在不断增长。总体而言,现阶段对建筑方案设计过程中与能耗和舒适性相关的因素分析不足。此外,设计师对低能耗建筑的理论体系了解不足,难以在整个设计过程中对方案进行优化。针对这些问题,本研究首先提出了一种基于建筑信息建模技术的绿色建筑集成设计方法。该方法集成并共享工程信息、问题求解、仿真工具、建筑模型应用、建筑团队交流平台,可以有效改善当前绿色建筑项目在设计时互不隶属的问题。提出了一种基于遗传算法的多目标优化算法。本文提出的方法从目标与目标、目标与围护系统之间的影响关系出发,对绿色建筑的整体设计,尤其是自然采光的设计进行优化。为了获得最佳效果,经过测试,选择Traind的虚拟函数作为训练函数。此外,该模型还根据建筑在不舒适时段的能耗情况,获得了合理的设计参数范围。最后,对本文提出的方法进行了验证。实验结果表明,与初始方案相比,优化后的方案总能耗降低了10.46%;自然光系数提高0.44%;自然压力Pa小时系数优化为5.38%。该优化方案可有效降低建筑全生命周期能耗,提高舒适度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
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