利用数据:建筑建模和高级控制的新前沿

IF 2.2 4区 工程技术 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Journal of Building Performance Simulation Pub Date : 2022-06-18 DOI:10.1080/19401493.2022.2079827
J. Candanedo, A. Athienitis
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引用次数: 0

摘要

建筑物中不断增加的数据可用性引发了人类活动各个领域的全面深刻变革,涉及工程、娱乐、营销和医学等各个领域。建筑性能模拟和建筑运行也不例外:缓慢而稳定地,来自建筑的数据集正被用于负荷预测、故障检测和诊断、节能和减少峰值负荷的机会识别、优化与智能电网的交互以及更好地了解居住者的行为。国际上正在进行的努力,如IEA EBC附件81“数据驱动的智能建筑”的工作,重点是如何更好地利用数据来了解建筑运营并提高其整体性能。虽然已经确定了重要的障碍,最值得注意的是需要标准化建筑自动化系统中的数据标签和结构,机器学习等众多技术进步,以及建筑行业脱碳的需要,将推动未来几十年数据驱动工具的采用。在建筑仿真领域,数据的价值是巨大的。虽然建筑性能模拟依赖于人们很好理解和严格的物理原理,但大量的干预变量和它们之间的相互作用使得很难评估这些模型的总和在多大程度上产生了建筑中主要能量流及其与电网相互作用的清晰图景。数据的可访问性和处理将为“循证”建筑性能模拟的新范式提供越来越坚实的基础,特别是在与短期动态和建筑操作相关的方面。“大数据”,无论是来自单个建筑物还是来自多个建筑物,都将弥合对建筑物理和机械系统的理解与开发模型所需的假设中有根据的猜测之间的差距。数据的影响是双重的:(a)它将促进创建具有泛化能力的可靠预测建筑模型的任务;(b)将简化针对多种楼宇结构和气候条件的先进控制措施的实施,并日益整合可再生能源,例如与楼宇集成的光伏发电,以及能源储存系统。
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Leveraging data: a new frontier in building modelling and advanced control
The ever-increasing availability of data in buildings has sparked a profound transformation across the board in all areas of human activity, in fields as diverse as engineering, entertainment, marketing and medicine. Building performance simulation and building operation are no exception: slowly but steadily, datasets frombuildings are being used for load forecasting, fault detection and diagnosis, the identification of opportunities for energy savings and peak load reduction, optimizing interaction with smart grids and a better understanding of occupant behaviour. International ongoing efforts, such as the work of the IEA EBC Annex 81 ‘Data-Driven Smart Buildings’ efforts, focus on how to better use data to gain insight on building operation and improve their overall performance. While important hurdles have been identified, most notably the need to standardize data labelling and structure in building automation systems, numerous technological advances such as machine learning, in addition to the need to decarbonize the building sector will drive the adoption of data-driven tools over the next decades. In the field of building simulation, the value of data is immense. While building performance simulation rests upon well-understood and rigorous physical principles, thenumerous intervening variables and their interactions make it difficult to assess to what extent the aggregate of these models yields a clear picture of themajor energy flows in abuildingandof its interactionwith thegrid.Data accessibility and treatment will provide an increasingly solid ground for a new paradigm of ‘evidence-based’ building performance simulation, particularly in aspects related to short-term dynamics and building operation. ‘Big Data’, either from a single building or from many buildings, will bridge the gap between the understanding of building physics and mechanical systems, and the educated guesses required in the assumptions made to develop a model. The impact of data is twofold: (a) it will facilitate the task of creating reliable predictive building models with generalization capabilities; (b) it will streamline the implementation of advanced control in a large diversity of building configurations and climatic conditions, with increasingly integrated renewable energy sources such as building-integrated photovoltaics, as well as energy storage systems.
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来源期刊
Journal of Building Performance Simulation
Journal of Building Performance Simulation CONSTRUCTION & BUILDING TECHNOLOGY-
CiteScore
5.50
自引率
12.00%
发文量
55
审稿时长
12 months
期刊介绍: The Journal of Building Performance Simulation (JBPS) aims to make a substantial and lasting contribution to the international building community by supporting our authors and the high-quality, original research they submit. The journal also offers a forum for original review papers and researched case studies We welcome building performance simulation contributions that explore the following topics related to buildings and communities: -Theoretical aspects related to modelling and simulating the physical processes (thermal, air flow, moisture, lighting, acoustics). -Theoretical aspects related to modelling and simulating conventional and innovative energy conversion, storage, distribution, and control systems. -Theoretical aspects related to occupants, weather data, and other boundary conditions. -Methods and algorithms for optimizing the performance of buildings and communities and the systems which service them, including interaction with the electrical grid. -Uncertainty, sensitivity analysis, and calibration. -Methods and algorithms for validating models and for verifying solution methods and tools. -Development and validation of controls-oriented models that are appropriate for model predictive control and/or automated fault detection and diagnostics. -Techniques for educating and training tool users. -Software development techniques and interoperability issues with direct applicability to building performance simulation. -Case studies involving the application of building performance simulation for any stage of the design, construction, commissioning, operation, or management of buildings and the systems which service them are welcomed if they include validation or aspects that make a novel contribution to the knowledge base.
期刊最新文献
Comparing overheating risk and mitigation strategies for two Canadian schools by using building simulation calibrated with measured data Using Fourier series to obtain cross periodic wall response factors Limitations and issues of conventional artificial neural network-based surrogate models for building energy retrofit An empirical review of methods to assess overheating in buildings in the context of changes to extreme heat events Coupling BIM and detailed modelica simulations of HVAC systems in a common data environment
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