Demand Based Cost Optimization of Electric Bills for Household Users

N. Tawalbeh, M. Malkawi, Hanan M. Abusamaha, S. Alnaser
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Abstract

Abstract- Internet of Things (IoT) is increasingly becoming the vehicle to automate, optimize and enhance the performance of systems in the energy, environment, and health sectors. In this paper, we use Wi-Fi wrapped sensors to provide online and in realtime the current energy consumptions at a device level, in a manner to allow for automatic control of peak energy consumption at a household, factory level, and eventually at a region level, where a region can be defined as an area supported by a distinct energy source. This allows to decrease the bill by avoiding heavily and controllable loads during high tariff slice and/or peak period per household and to optimize the energy production and distribution in a given region. The proposed model relies on adaptive learning techniques to help adjust the current load, while taking into consideration the actual and real need of the consumer. The experiments used in this study makes use of current and voltage sensors, Arduino platform, and simulation system. The main performance indexes used are the control of a peak consumption level, and the minimum time needed to adjust the distribution of load in the system. The system was able to keep the maximum load at a maximum of 10 kW in less than 10 seconds of response time. The level and response time are controllable parameters.
基于需求的家庭用户电费成本优化
物联网(IoT)正日益成为自动化、优化和增强能源、环境和卫生领域系统性能的工具。在本文中,我们使用Wi-Fi封装传感器在线和实时地提供设备级当前的能源消耗,以允许自动控制家庭、工厂级和最终区域级的峰值能源消耗的方式,其中一个区域可以定义为由不同能源支持的区域。这可以通过避免每个家庭在高电价时段和/或高峰时段的沉重和可控负荷来减少账单,并优化特定地区的能源生产和分配。提出的模型依赖于自适应学习技术来帮助调整当前负载,同时考虑到消费者的实际和真实需求。本研究的实验使用了电流和电压传感器、Arduino平台和仿真系统。使用的主要性能指标是对峰值消耗水平的控制,以及调整系统负荷分配所需的最小时间。该系统能够在不到10秒的响应时间内将最大负载保持在最大10 kW。电平和响应时间是可控参数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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