Abstract:
Climate change is one of the most signicant challenges faced by the world. As the hu man population continues to grow, so too does the demand for energy. Fossil fuels being
the primary source of energy produce greenhouse gases which adversely affect our climate.
The United Nations Sustainable Development Goals (UNSDGs) emphasize the urgent need
for reliable, sustainable, and clean energy. Wave energy is a promising form of renewable
energy that harnesses the power of ocean waves to produce electricity. While it is under utilized and research on it is lacking in comparison to other renewable energy resources, it
can contribute signicantly towards achieving the UNSDGs by providing a clean source of
electricity for coastal areas.
This research work assesses the potential of wave energy at a selected coastal location,
aiming to evaluate its feasibility as a complementary energy source alongside other renew able energy sources. Historical wave parameter data spanning 15 years is obtained for the
selected location and processed. Using Python, the dataset comprising of sea state param eters in each month of the year is then tted with probability density functions. The Monte
Carlo simulation is used to generate synthetic wave scenarios. These simulations incorpo rate randomness in the wave parameters to assess the variability of wave energy generation.
The MATLAB based tool for simulating wave energy converters, WEC-Sim, is used to as sess the capabilities of a converter in harvesting the resource based on the monthly average
of wave parameters obtained from the simulations. In addition, a hybrid wave and solar
energy system is developed using MATLAB Simulink to integrate the two renewable re sources. The analysis revealed signicant seasonal variations in wave power.
At the selected location, the yearly average wave power was observed to be 376 kW/m, with
the winter months from October to March showing a high availability of wave power. The
month of January has the highest theoretical wave power potential of 675 kW/m. The sum mer months showed signicantly lower power potential with the month of July showing the
lowest potential of 140 kW/m. This suggests seasonal variability in wave energy resource
as sea conditions change and impact generation. The WEC-Sim simulations revealed that
the wave energy converters only capture a fraction of the wave power. The commercially
available and tested wave energy converters are analyzed and the most suitable converter is
selected for use at the selected location. The research concludes that wave energy is a vi able energy source with negligible greenhouse emissions, and is capable of reducing yearly
energy costs by up to 18250 USD per meter of energy capture from wavefronts. These
ndings underscore the importance of integrating wave energy into the broader renewable
energy portfolio to achieve the UNSDGs, especially in remote coastal communities where
grid infrastructure is challenging to set up and maintain