Abstract

Climate change and the energy crisis substantially motivated the use and development of renewable energy resources. Solar power generation is being identified as the most promising and abundant source for bulk power generation. However, solar photovoltaic panel is heavily dependent on meteorological data of the installation site and weather fluctuations. To overcome these issues, collecting performance data at the remotely installed photovoltaic panel and predicting future power generation is important. The key objective of this paper is to develop a scaled-down prototype of an IoT-enabled datalogger for photovoltaic system that is installed in a remote location where human intervention is not possible due to harsh weather conditions or other circumstances. An Internet of Things platform is used to store and visualize the captured data from a standalone photovoltaic system. The collected data from the datalogger is used as a training set for machine learning algorithms. The estimation of power generation is done by a linear regression algorithm. The results are been compared with results obtained by another machine learning algorithm such as polynomial regression and case-based reasoning. Further, a website is developed wherein the user can key in the date and time. The output of that transaction is predicted temperature, humidity, and forecasted power generation of the specific standalone photovoltaic system. The presented results and obtained characteristics confirm the superiority of the proposed techniques in predicting power generation.

Highlights

  • Renewable or nonconventional sources of energy are something that replenishes itself at the speed of its consumption

  • Among all the nonconventional forms of available resources, solar energy is most abundantly found and the amount of International Journal of Photoenergy solar energy that hits the surface of the earth in an hour is enough to fulfill global needs for an entire year. This power from the Sun is used in a variety of ways, such as solar heating, solar thermal energy, photovoltaic, and photosynthesis

  • The website has a back-end connection to the MATLAB server for the estimation of power generation

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Summary

Introduction

Renewable or nonconventional sources of energy are something that replenishes itself at the speed of its consumption. Among all the nonconventional forms of available resources, solar energy is most abundantly found and the amount of International Journal of Photoenergy solar energy that hits the surface of the earth in an hour is enough to fulfill global needs for an entire year. This power from the Sun is used in a variety of ways, such as solar heating, solar thermal energy, photovoltaic, and photosynthesis.

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