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Smart monitoring and inspection of electrical installations based on the internet of things
Electrical equipment and Installation such as induction motors, transformers, and others have parameters of voltage, current, active power, apparent power, power factor, and that constantly change at any time along with changes in load, disturbance, or other abnormal conditions. Electrical equipment...
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Main Authors: | , |
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Format: | Conference Proceeding |
Language: | English |
Subjects: | |
Online Access: | Get full text |
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Summary: | Electrical equipment and Installation such as induction motors, transformers, and others have parameters of voltage, current, active power, apparent power, power factor, and that constantly change at any time along with changes in load, disturbance, or other abnormal conditions. Electrical equipment and Installation need to be monitored to identify its condition to prevent serious problems with the system. This paper aims to develop Smart Monitoring and Inspection of Electrical Installation based on The Internet of things (SMIEE-IoT) by measuring and monitoring electrical parameters in real-time. The development of SMIEE-IoT is carried out using the scientific method, which consists of the following stages: 1) needs analysis conducted through literature study, observation, and interviews with technicians and engineers. 2) System Design which consists of designing hardware, software, and data communication systems. 3) Smart system development, 4. System testing to measure and test electrical equipment and installations in real-time based on IoT and 5. System implementation. The test results show that the SMIEE-IoT can work well. The system can measure and test the electrical parameter with an Android application that can send data within 16 seconds. The accuracy of the SMIEE-IoT in voltage measurement reaches 98.60%, current 98, 84%, active power 97.42%, reactive power 97.80%, energy 97.90%, and power factor 98.80%. |
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ISSN: | 0094-243X 1551-7616 |
DOI: | 10.1063/5.0106401 |