Remote Measurement and Energy Performance Evaluation of Solar Photovoltaic Panels
DOI:
https://doi.org/10.37547/ijasr-05-05-08Keywords:
Photovoltaic panels, Remote measurement, Energy parametersAbstract
The development and implementation of remote measurement technologies for photovoltaic (PV) panels play a crucial role in optimizing their performance and efficiency. This study focuses on designing and developing an electronic device for remotely measuring and evaluating the energy parameters of solar photovoltaic panels. The proposed system aims to enhance the accuracy and reliability of PV panel monitoring by integrating advanced sensor technologies and wireless communication protocols. The device measures key parameters such as voltage, current, power output, and temperature while transmitting real-time data for further analysis. The research explores the impact of remote monitoring on the efficiency, maintenance, and operational stability of solar panels. The findings contribute to improving energy management strategies and enhancing the overall sustainability of photovoltaic energy systems.
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