节能智能家庭负荷预测技术综述

Zahraa A. Jaaz, M. Rusli, N. A. Rahmat, Inteasar Yaseen Khudhair, Israa Al Barazanchi, H. Mehdy
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引用次数: 12

摘要

本研究的目的是分析高能效智能家居负荷预测技术,并借助数据挖掘中的聚类来确定未来智能家居中高频谱分配的能源或电力使用情况。这项研究首先概述了智能家居能源领域及其面临的挑战;它观察到能源政策的变化,促进能源效率,鼓励消费者的积极作用,指导他们关于消费者行为的重要性,保护消费者的权利。电力作为能源的空间越来越大;在接下来的几十年里,它的份额将不断增加。在不久的将来,智能家居和智能电表的部署将使公用事业和消费者都受益。在这种环境下,新的服务和新的业务出现,重点是能源管理领域和工具,他们需要专业化的领域,如计算机科学,软件开发和数据科学。本研究工作根据其电气负载概况的相似性对智能家居进行了细分,使用每小时能源使用比例(%)作为共同框架,并在本研究中进行了分析。这种能源消耗细分背后的目标是能够为每个群体提供个性化的建议,以减少他们的能源消耗和相关成本,促进能源效率措施,提高消费者对未来智能家居的参与度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Review on Energy-Efficient Smart Home Load Forecasting Techniques
The aim of this study survey is to analyze energy-efficient smart home load forecasting techniques and determine the usage of energy or power with high spectrum allocation in future smart home with the help of clustering in data mining. The study work starts presenting an overview of the smart home energy sector and the challenges it is facing; it is observed a change on the energy policies promoting the energy efficiency, encouraging an active role of the consumer, instructing them about the importance of the consumer behavior and protecting consumer rights. Electricity is gaining room as energy source; its share will keep increasing constantly in the following decades. In this close future, smart homes and smart meters' deployment will benefit both the utility and the consumer. In this environment, new services and new business appear, focusing on the energy management field and tools, they require specialization in fields such as, computer science, software development and data science. This study work has segmented the smart home according to the similarities of their electrical load profiles, using the proportion of energy usage per hour (%) as a common framework with analysis done in this proposed research. The objective behind this energy consumption segmentation is to be able to provide personalized recommendations to each group to reduce their energy consumption and the associated costs, fostering energy efficiency measures and improving the consumer engagement for future smart homes.
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