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Human-in-the-loop energy flexibility integration on a neighbourhood level: Small and Big Data management

机译:社区级别的人在环上的能源灵活性集成:小型和大数据管理

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摘要

Modern buildings provide an enormous amount of data available from various sources ranging from modular wireless sensors to smart meters. As well as enhancing energy management and building performance, the analysis of these datasets can enhance the management of decentralized energy systems (electrical storage, PV generation, heat storage, etc.). To optimize the interaction between the building and the grid, it is essential to determine the total energy flexibility of the user and the building. A building has different possibilities for demand side management, energy storage and energy exchange for which a functional-layered approach is proposed from the user up to building and its interaction with the energy infrastructure. Central is the principle of the human-in-the-loop, where a bottom-up approach places the human needs as a central starting point for the energy interaction optimisation. The combination of Big Data with deep learning techniques offers new possibilities in the prediction of energy use and decentralized renewable energy production (e.g. from local weather data taking into account local phenomena such as urban heat islands). This combined with a more bottom-up approach of multi-agent systems with a gossip-based cooperative approach using Small Data offers decentralized control and monitoring autonomy to reduce the complexity of the energy system integration and transition. This makes it possible to relate the outcomes of the urban energy system integration on a neighbourhood level. The approach is being applied to a typically medium-sized office building. A first application of the human-in-the-loop controlling the lighting systems in the open-plan workplace of the test-bed office building showed some estimated annual energy saving of around 24%.Practical application: Analysis of a large database containing so called Big Data of clusters of buildings seems promising. Therefor there is the need to study the potential impact of utilization of big building operational data in building services industry. Besides this there is also a need for a data mining-based method for analyzing massive building operational data of a specific building, Small Data. This work sets out a general framework and method for doing both and to combine the strength of both approaches. The presented combined approach and results will be of interest to engineers and facility managers wondering what the key constraints to optimal use data to optimize low energy/carbon control strategies might have within their work.
机译:现代建筑可提供从模块化无线传感器到智能电表等各种来源的大量数据。除了增强能源管理和建筑性能外,对这些数据集的分析还可以增强对分散式能源系统(电存储,光伏发电,热存储等)的管理。为了优化建筑物和电网之间的相互作用,必须确定用户和建筑物的总能量灵活性。建筑物对于需求侧管理,能量存储和能量交换具有不同的可能性,为此提出了从用户到建筑物直至建筑物及其与能源基础设施的交互的功能层方法。核心是人在环环相扣的原则,其中自下而上的方法将人的需求作为能源相互作用优化的中心出发点。大数据与深度学习技术的结合为能源使用和分散式可再生能源生产的预测提供了新的可能性(例如,根据当地天气数据考虑了城市热岛等当地现象)。这种方法与多智能体系统的一种更加自下而上的方法以及使用小数据的基于八卦的协作方法相结合,可提供分散的控制和监视自主权,以降低能源系统集成和过渡的复杂性。这使得可以在邻域级别上关联城市能源系统集成的结果。该方法正在应用于典型的中型办公楼。在测试床办公楼的开放式工作场所中,人为控制照明系统的首次应用显示,估计每年可节省约24%的能源。实际应用:对包含以下内容的大型数据库的分析所谓的建筑物群大数据似乎很有希望。因此,有必要研究在建筑服务行业中利用大型建筑运营数据的潜在影响。除此之外,还需要一种基于数据挖掘的方法来分析特定建筑物(小数据)的大量建筑物运行数据。这项工作提出了一个通用的框架和方法来实现这两种方法,并结合了这两种方法的优势。提出的组合方法和结果将引起工程师和设施经理的兴趣,他们想知道优化使用数据以优化低能耗/碳控制策略的关键约束可能会在他们的工作范围内出现。

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