利用机器学习探索影响社区能耗的商业服务空间布局优化

IF 3.1 3区 工程技术 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Buildings Pub Date : 2023-12-31 DOI:10.3390/buildings14010108
Yiwen Liu, Chun-Huei Liu, Xiaolong Wang, Junjie Zhang, Yang Yang, Yi Wang
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引用次数: 0

摘要

目前,许多社区的商业服务空间设计面临着不协调、资源分配不合理、利用率低等问题。这些难题导致社区能耗增加,阻碍了城市整体的可持续发展。作为城市环境中具有代表性的社区空间,园区内的商业空间需要持续的能源投入。其节能布局符合可持续发展的原则。本文以大学校园为案例,研究商业空间的节能布局和社区环境保护实践。影响社区间商业空间布局的因素多种多样,考虑到样本量较大,衡量布局结构的参数也多种多样。利用机器学习和大数据处理来量化各行业的发展指标,并优化其结构、资源配置和能源使用,已成为可持续城市规划实践的可行工具。本研究试图利用机器学习和数据驱动的优化技术,为社区内商业服务空间的可持续分配和设计制定一个综合框架。首先,我们通过问卷调查和实地调研等方式收集数据,对大学校园商业服务空间布局的影响因素进行了全面调查和建模。其次,结合层次分析法确定主观权重、熵权法计算客观权重和拉格朗日算法确定综合权重,构建了 AEL 机器学习模型。第三,评估和改进商业服务空间布局。然后,通过训练和测试神经网络模型,应用案例确保机器学习计算结果的准确性。定性分析阐明了影响不同商业空间可持续布局的各种因素。定量分析表明,在大学校园内,商业服务空间与宿舍楼之间的距离是促进可持续布局的关键因素。其他重要因素还包括商业空间沿主要学生路线的位置以及是否靠近教学区。这项研究不仅为优化社区商业服务空间这一特定领域做出了贡献,也为更广泛的可持续城市发展讨论做出了贡献。它加深了我们对打造既高效又环保的城市环境所涉及的复杂动态的理解。除了理论方面的考虑,本研究还提供了适用于切实改善资源分配的实际解决方案和建议。这些贡献的目的是营造不仅具有环保意识,而且在经济上可行的城市环境。
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Exploring the Layout Optimization of Commercial Service Space Affecting Energy Consumption in Communities Using Machine Learning
The current design of commercial service spaces in many communities faces issues like incoherence, irrational resource allocation, and low utilization rates. These challenges contribute to increased energy consumption in communities, hindering the overall sustainable development of cities. As a representative community space in the urban environment, the commercial space within the campus requires continuous energy input. Its energy-efficient layout aligns with the principles of sustainable development. This paper uses the university campus as a case study to examine energy-efficient commercial space layout and community practices for environmental protection. Various factors influence the layout of inter-community commercial spaces, and the parameters for measuring the layout structure are diverse, considering the large sample size. Employing machine learning and big data processing to quantify development indicators across various industries and optimize their structure, resource allocation, and energy use has emerged as a viable tool for sustainable urban planning practices. This research seeks to utilize machine learning and data-driven optimization techniques to formulate a comprehensive framework for the sustainable allocation and design of business service spaces within communities. Firstly, we conduct a comprehensive investigation, which includes data collected by applying questionnaire surveys and field research, to assess and model the factors influencing the spatial layout of commercial services on university campuses. Secondly, the AEL machine learning model is constructed by combining the analytic hierarchy process to determine subjective weights, the entropy weight method to calculate objective weights, and the Lagrange algorithm to determine comprehensive weights. Thirdly, we assess and improve the layout of commercial service spaces. Then, by training and testing the Neural Network Model, we apply cases to ensure the accuracy of the machine learning calculation results. Qualitative analysis elucidates the varying factors influencing the sustainable layout of different commercial spaces. Quantitative analysis indicates that, within university campuses, the distance between commercial service spaces and residence halls is a crucial factor in fostering a more sustainable layout. Other significant factors include their location along major student routes and proximity to teaching areas. This study makes contributions not only to the specific field of optimizing commercial service space in communities but also to the broader discourse on sustainable urban development. It advances our understanding of the complex dynamics involved in crafting urban environments that are both efficient and environmentally friendly. Beyond theoretical considerations, the study provides practical solutions and recommendations applicable to implementing tangible improvements in resource allocation. These contributions aim to foster urban environments that are not only environmentally conscious but also economically viable.
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来源期刊
Buildings
Buildings Multiple-
CiteScore
3.40
自引率
26.30%
发文量
1883
审稿时长
11 weeks
期刊介绍: BUILDINGS content is primarily staff-written and submitted information is evaluated by the editors for its value to the audience. Such information may be used in articles with appropriate attribution to the source. The editorial staff considers information on the following topics: -Issues directed at building owners and facility managers in North America -Issues relevant to existing buildings, including retrofits, maintenance and modernization -Solution-based content, such as tips and tricks -New construction but only with an eye to issues involving maintenance and operation We generally do not review the following topics because these are not relevant to our readers: -Information on the residential market with the exception of multifamily buildings -International news unrelated to the North American market -Real estate market updates or construction updates
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