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A platform architecture for occupancy detection using stream processing and machine learning approaches

机译:使用流处理和机器学习方法的占用检测平台架构

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Context-awareness in energy-efficient buildings has been considered as a crucial fact for developing context-driven control approaches in which sensing and actuation tasks are performed according to the contextual changes. This could be done by including the presence of occupants, number, actions, and behaviors in up-to-date context, taking into account the complex interlinked elements, situations, processes, and their dynamics. However, many studies have shown that occupancy information is a major leading source of uncertainty when developing control approaches. Comprehensive and real-time fine-grained occupancy information has to be, therefore, integrated in order to improve the performance of occupancy-driven control approaches. The work presented in this paper is toward the development of a holistic platform that combines recent IoT and Big Data technologies for real-time occupancy detection in smart building. The purpose of this work focuses mainly on the presence of occupants by comparing both static and dynamic machine learning techniques. An open-access occupancy detection dataset was first used to assess the usefulness of the platform and the effectiveness of static machine learning strategies for data processing. This dataset is used for applications that follow the strategy aiming at storing data first and processing it later. However, many smart buildings' applications, such as HVAC and ventilation control, require online data streams processing. Therefore, a distributed real-time machine learning framework was integrated into the platform and tested to show its effectiveness for this kind of applications. Experiments have been conducted for ventilation systems in energy-efficient building laboratory (EEBLab) and preliminary results show the effectiveness of this platform in detecting on-the-fly presence of occupants, which is required to either make ON or OFF the system and then activate the corresponding embedded control technique (eg, ON/OFF, PID, state-feedback).
机译:节能建筑物的背景已经被认为是开发上下文驱动的控制方法的关键事实,其中根据上下文变化进行感应和致动任务。这可以通过包括在最新上下文中的乘员,数量,行动和行为的存在,同时考虑到复杂的互连元素,情况,流程及其动态。然而,许多研究表明,在开发控制方法时,占用信息是一个主要的不确定性的主要领域。因此,必须集成综合性和实时细粒度的占用信息,以提高占用控制方法的绩效。本文提出的工作是开发一个整体平台,将最近的IOT和大数据技术结合在智能建筑中实时入住检测。这项工作的目的主要在存在静态和动态机器学习技术的情况下主要侧重于乘员。首先使用开放访问占用检测数据集来评估平台的有用性以及数据处理的静态机器学习策略的有效性。此数据集用于遵循旨在首先存储数据并稍后处理的策略的应用程序。但是,许多智能建筑的应用程序,例如HVAC和通风控制,需要在线数据流处理。因此,分布式实时机器学习框架被集成到平台中并测试以显示其对这种应用的有效性。已经在节能建筑实验室(EEBLAB)中的通风系统进行了实验,初步结果显示了该平台在检测到乘员的当机存在时的有效性,这是制造在系统上或从系统上进行的,然后激活相应的嵌入式控制技术(例如,开/关,PID,状态反馈)。

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