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http://dx.doi.org/10.9717/kmms.2019.22.3.366

A Development of Real-time Energy Usage Data Collection and Analysis System based on the IoT  

Hwang, Hyunsuk (Technical Research Center, New Communication Infotech Co., Ltd.)
Seo, Youngwon (Technical Research Center, New Communication Infotech Co., Ltd.)
Publication Information
Abstract
The development of monitoring and analysis systems to increase productivity while saving energy is needed as a method to reduce huge amount of energy consumed in the process of producing large forged products. In this paper, we propose a system to monitor and analyze energy usage in real-time collected from gas-meter, wattmeter, and thermometer based on IoT installed in forging factories. The system consists of a data collection server for collecting and processing data from IoT- based platform and existing SCADA equipment and ERP/MES system in forging factories, and an application server for providing services to users. To develop the system, the overall system structure is logically diagrammed, and the databases configuration and implementation modules to efficiently store and manage data are presented. In the future, the system will be utilized to reduce energy consumption by analyzing energy usage pattern and optimizing process works with real-time energy usage and production process data for each facility.
Keywords
Facility Energy Data; Monitoring and Analysis Systems; Forging Process; Smart Factory; IoT Solution;
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Times Cited By KSCI : 4  (Citation Analysis)
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