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Determination of consumer behavior based energy wastage using IoT and machine learning

机译:基于IOT和机器学习的消费者行为的确定

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We develop a low-cost, non-intrusive methodology for the determination of consumer-behavior-based-energy-wastage (CBB-EW) in the operation and control of Heating, Ventilation, and Air-Conditioning (HVAC) systems. Using data from temperature and humidity sensors, we develop Machine Learning (ML) models of heat flow from the environment (environment-component) and heat flow due to HVAC operation (HVAC-component). Environment-component and HVAC-component models are used to determine HVAC ON/OFF status and HVAC energy consumption. We divide CBB-EW into two components, i.e., non-occupancy-based wastage (CBB-EW-NOC) and occupancy-based wastage (CBB-EW-OCC). With the help of HVAC status, motion sensor, and contextual information, we propose a data fusion approach to determine CBB-EW-NOC. We use predicted mean voting (PMV) model to determine the optimal thermal settings required to operate HVAC unit in the neutral PMV range. The difference between the amount of energy consumed by the HVAC unit at the optimal and user-controlled thermal settings allows us to compute CBB-EW-OCC. We validate our proposed methodology using actual data from an experimental case study comprising of users controlling HVAC units in their separate office rooms. We observe that users generally waste a large amount of energy (more than 50% in some cases) due to unnecessary HVAC operation and sub-optimal thermal settings. Furthermore, energy wastage pattern of different users also differ significantly, which implies the requirement of customized feedback and interventions to inculcate energy-conservation behavior. (c) 2020 Elsevier B.V. All rights reserved.
机译:我们在加热,通风和空调(HVAC)系统的运行和控制中,开发出低成本,非侵入性的方法,用于确定基于消费者行为的能量浪费(CBB-EW)。使用来自温度和湿度传感器的数据,我们开发从环境(环境 - 组件)和HVAC操作(HVAC组件)引起的热流的机器学习(ML)型号。环境 - 组件和HVAC组件模型用于确定HVAC开/关状态和HVAC能耗。我们将CBB-EW分为两个组分,即基于非占用的浪费(CBB-EW-NoC)和基于占用的浪费(CBB-EW-OCC)。在HVAC状态,运动传感器和上下文信息的帮助下,我们提出了一种数据融合方法来确定CBB-EW-NoC。我们使用预测的平均投票(PMV)模型来确定在中性PMV范围内操作HVAC单元所需的最佳热设置。 HVAC单元在最佳和用户控制的热设置处消耗的能量的差异允许我们计算CBB-EW-Over。我们使用来自实验性案例研究的实际数据验证我们提出的方法,包括控制其单独的办公室中的HVAC单元的用户。我们观察到,由于不必要的HVAC操作和次优热设置,用户通常会浪费大量的能量(在某些情况下超过50%)。此外,不同用户的能量浪费模式也有显着差异,这意味着需要定制的反馈和干预措施来灌输节能行为。 (c)2020 Elsevier B.v.保留所有权利。

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