Abstract:
"Energy is required by all countries in the globe to provide fundamental human requirements
and to aid industrial activities. Due to the scarcity of fossil fuels, depletion of energy resources,
pollution, unfavorable climatic changes, and rising costs, the use and development of green
energy sources is becoming more popular. Manipulation of renewable energy sources also
reduces reliance on fossil fuel supplies and carbon emissions into the atmosphere. It's also a
technique for dealing with the issues of increased energy demand as a result of population
growth. When compared to other renewable energy sources, photovoltaic energy systems have
a high energy production potential. Although solar energy has many benefits, anticipating the
power generation of photovoltaic systems is important and difficult because it is strongly
dependent on weather conditions.
When considering Sri Lankan context, the government, the Ceylon Electricity Board, and other
regulatory bodies are focusing on reliable power generation forecasting related to renewable
energy sources, particularly related to solar energy due to the current nationwide long power
outages caused by fuel scarcity and economic crisis. This study on the development of a
statistical time series model to forecast short-term solar power generation in a large-scale
Photovoltaic (PV) plant in Sri Lanka considering weather conditions is expected to assist solar
power vendors in providing a reliable solar power supply by identifying excesses and shortages
in power generation during different time periods and under different weather conditions.
The time series data considered in this study includes historic solar power output and weather
data of past two years. Rainfall, temperature, relative humidity, cloud cover, wind speed, and
sun irradiation are some of the weather parameters addressed in the study which are all
independent variables. The other independent variable is the past solar power output of a
photovoltaic facility in the Beliatta area of Sri Lanka, with the solar power output at time T as
the dependent variable. The Meteorological Department of Sri Lanka provided historical data
of weather parameters.
The timeseries data involved with this study was statistically analyzed and multivariate time
series models were developed using FB Prophet machine learning (ML) technology combining
with python programming language. Initially, six multivariate time series forecasting models
were created to identify the behavior of the dataset based on its descriptive statistics. Then the
final time-series forecasting model was created to predict the future weather conditions and
thereby the solar power output for near future. The performance of the model was assessed via
cross validation and creating a performance matrix.
The findings of this research study demonstrated that FB Prophet can efficiently handle datasets
with strong seasonality. Rainfall, cloud cover, wind speed, and relative humidity have all been
found to have a negative correlation with solar power output, whereas temperature and solar
irradiation have a positive correlation. Finally, a reliable multivariate forecasting model was
created using feature engineering approaches in FB Prophet, which anticipated solar power
generation for a short period with reduced variance from true values."