With the growth of smart building applications, occupancy information in residential buildings is becoming more and more significant. In the context of the smart buildings' paradigm, this kind of information is required for a wide range of purposes, including enhancing energy efficiency and occupant comfort. In this study, occupancy detection in residential building is implemented using deep learning based on technical information of electric appliances. To this end, a novel approach of occupancy detection for smart residential building system is proposed. The dataset of electric appliances, sensors, light, and HVAC, which is measured by smart metering system and is collected from 50 households, is used for simulations. To classify the occupancy among datasets, the support vector machine and autoencoder algorithm are used. Confusion matrix is utilized for accuracy, precision, recall, and F1 to demonstrate the comparative performance of the proposed method in occupancy detection. The proposed algorithm achieves occupancy detection using technical information of electric appliances by 95.7~98.4%. To validate occupancy detection data, principal component analysis and the t-distributed stochastic neighbor embedding (t-SNE) algorithm are employed. Power consumption with renewable energy system is reduced to 11.1~13.1% in smart buildings by using occupancy detection.
翻译:随着智能建筑应用的成长,住宅建筑中的占用信息正在变得越来越重要。在智能建筑范式中,需要这类信息是为了广泛的用途,包括提高能源效率和住家舒适度。在这项研究中,住宅建筑中的占用检测是通过基于电器技术信息的深层学习实施的。为此,提出了智能住宅建筑系统使用占用检测的新办法。用智能计量系统测量的电器、传感器、光和HVAC数据集,从50户住户收集,用于模拟。在数据集中进行占用分类时,使用辅助矢量机和自动编码算法。使用混集矩阵是为了准确、精确、回顾和F1来显示拟议的占用检测方法的比较性能。拟议的算法将使用电器技术信息进行占用检测95.7~98.4%。使用智能计量数据、主要部件分析和T-分散式邻居嵌入式算法(t-SNE)用于验证占用数据。使用可再生能源系统的电源消耗量将降低到使用智能的11.1%。