Pre-SEMMS: A Design of Prepaid Smart Energy Meter Monitoring System for Household Uses Based on Internet of Things

K. D. Irianto
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Abstract

The use of prepaid smart electricity services from the State Electricity Company (SEC) for the general public in Indonesia has increased. It is because prepaid electricity has several advantages compared to postpaid electricity. One of them is that it is becoming easier for customers to manage and control their daily electricity usage. Customers can also estimate their total electricity consumption each month. However, customers still have to manually view the information on the electricity meter to find data and information on prepaid electricity. It can make it difficult for customers if the electricity meter is placed outside the house, which is quite far away. Customers must also constantly monitor the use of electricity. This article discusses a prepaid smart electricity consumption monitoring design using Internet of Things technology. The design is carried out without changing the standard prepaid electricity meter system from the SEC. However, a KWH meter tool has been developed that has been combined with Internet of Things technology and can calculate and monitor electricity usage. The results show that with this system, customers can more easily find out and monitor their daily electricity consumption.  
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Pre-SEMMS:基于物联网的预付费家用智能电能表监控系统设计
印度尼西亚国家电力公司(SEC)为公众提供的预付费智能电力服务的使用有所增加。这是因为预付电与后付费电相比有几个优势。其中之一是客户管理和控制日常用电量变得越来越容易。用户还可以估计每月的总用电量。然而,客户仍然需要手动查看电表上的信息来查找预付电费的数据和信息。如果电表放在房子外面,距离很远,可能会给客户带来困难。客户还必须经常监控用电情况。本文讨论了一种基于物联网技术的预付费智能用电量监控设计。该设计在不改变SEC标准预付费电表系统的情况下进行。然而,已经开发了一种与物联网技术相结合的KWH电表工具,可以计算和监控用电量。结果表明,有了这个系统,用户可以更容易地发现和监控他们的日常用电量。
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