An artificial intelligence-based non-intrusive load monitoring of energy consumption in an electrical energy system using a modified K-Nearest Neighbour algorithm

IF 2.1 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Benjamin Kommey, Elvis Tamakloe, Jerry John Kponyo, Eric Tutu Tchao, Andrew Selasi Agbemenu, Henry Nunoo-Mensah
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Abstract

Energy profligacy and appliance degradation are the apex reasons accounting for the continuous rise in power wastage and high energy bills. The decline in energy conservation and management in residences has been largely attributed to the financial implications of using intrusive methods. This work aimed to resolve the challenges of intrusive load monitoring by introducing artificial intelligence and machine learning to optimise load monitoring. To solve this challenge, a non-intrusive approach was proposed where modalities for load prediction and classification were achieved with a Bagging regressor and a modified multiclass K-Nearest Neighbour algorithms. This developed supervised learning models produced a 0.9624 R2 score and 78.24% accuracy for prediction and classification, respectively, when trained and tested on a Dutch Residential Energy Dataset. This work seeks to provide a cost-effective approach to the optimisation of energy using steady state active power features. Essentially, the adoption of this non-intrusive technique for load monitoring would effectively aid customers on the distribution network save cost on energy bills, facilitate the detection of faulty appliances, provide recommendations for smart homes and buildings with the required information for efficient decision making and planning of energy needs. In the long term, easing the pressure on power generation to meet demand would translate to reduction in carbon emissions based on a wide-scale implementation of this proposed system. Hence, these are important parameters in realising the development of smart sustainable cities and sustainable energy systems in this current industrial revolution.

Abstract Image

基于人工智能的电力能源系统能耗非侵入式负荷监测,采用改进的 K 近邻算法
能源浪费和设备老化是造成电力浪费和能源账单居高不下的主要原因。住宅能源节约和管理的下降在很大程度上归因于使用侵入式方法的财务影响。这项工作旨在通过引入人工智能和机器学习来优化负荷监测,从而解决侵入式负荷监测所面临的挑战。为解决这一难题,我们提出了一种非侵入式方法,利用 Bagging 回归器和改进的多类 K-Nearest Neighbour 算法实现负荷预测和分类。所开发的监督学习模型在荷兰住宅能源数据集上进行训练和测试时,预测和分类的 R2 得分分别为 0.9624 和 78.24%。这项工作旨在提供一种具有成本效益的方法,利用稳态有功功率特征进行能源优化。从根本上说,采用这种非侵入式技术进行负荷监测,将有效帮助配电网客户节省能源账单成本,便于检测故障电器,并为智能家居和楼宇提供建议,为有效决策和规划能源需求提供所需的信息。从长远来看,减轻发电压力以满足需求将转化为减少碳排放,而这正是基于该拟议系统的大范围实施。因此,在当前的工业革命中,这些都是实现智能可持续城市和可持续能源系统发展的重要参数。
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来源期刊
IET Smart Cities
IET Smart Cities Social Sciences-Urban Studies
CiteScore
7.70
自引率
3.20%
发文量
25
审稿时长
21 weeks
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