Intelligent IoT Platform for Multiple PV Plant Monitoring

Author:

Utama Ida Bagus Krishna Yoga1ORCID,Pamungkas Radityo Fajar1ORCID,Faridh Muhammad Miftah1ORCID,Jang Yeong Min1ORCID

Affiliation:

1. Department of Electronics Engineering, Kookmin University, Seoul 02707, Republic of Korea

Abstract

Due to the accelerated growth of the PV plant industry, multiple PV plants are being constructed in various locations. It is difficult to operate and maintain multiple PV plants in diverse locations. Consequently, a method for monitoring multiple PV plants on a single platform is required to satisfy the current industrial demand for monitoring multiple PV plants on a single platform. This work proposes a method to perform multiple PV plant monitoring using an IoT platform. Next-day power generation prediction and real-time anomaly detection are also proposed to enhance the developed IoT platform. From the results, an IoT platform is realized to monitor multiple PV plants, where the next day’s power generation prediction is made using five types of AI models, and an adaptive threshold isolation forest is utilized to perform sensor anomaly detection in each PV plant. Among five developed AI models for power generation prediction, BiLSTM became the best model with the best MSE, MAPE, MAE, and R2 values of 0.0072, 0.1982, 0.0542, and 0.9664, respectively. Meanwhile, the proposed adaptive threshold isolation forest achieves the best performance when detecting anomalies in the sensor of the PV plant, with the highest precision of 0.9517.

Funder

Technology Development Program of MSS and MSIT (Ministry of Science and ICT), Korea

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Biochemistry,Instrumentation,Atomic and Molecular Physics, and Optics,Analytical Chemistry

Reference24 articles.

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2. Center for Sustainable Systems, University of Michigan (2021). Photovoltaic Energy Factsheet, University of Michigan. Pub. No. CSS07-08.

3. International Energy Agency Photovoltaic Power Systems (IEA PVPS) (2023). 2023 Snapshot of Global PV Markets, IEA PVPS.

4. Snapshot of photovoltaics—February 2022;EPJ Photovolt.,2022

5. Center for Sustainable Systems, University of Michigan (2021). U.S. Renewable Energy Factsheet, University of Michigan. Pub. No. CSS03-12.

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