MODELING OF POWER GENERATION FOR A SOLAR POWER GENERATOR SYSTEM
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Journal of Agricultural and Rural Research
Abstract
Solar power systems have evolved into a viable source of
sustainable energy over the years and one of the key difficulties
confronting researchers in the installation and operation of solar
power generating systems is how to create a model for household
power forecasting.
Multiple regression models were developed from experimental data
to estimate rotational and static power as a function of time,
current, and voltage, using Minitab 20.4 software. The model
correlations were assessed using statistical metrics, Mean Absolute
Bias Error (MABE), and Root Mean Square Error (RMSE).
The results showed that the rotational and static power models were
built using the mathematical model as a function of time, current,
and voltage, The coefficient of determination, R2
for rotational and
static power models were 99.64 % and 99.86 % respectively.
MABE and RMSE for rotational model were 1.3030 and 0.7431
and MABE and RMSE for static power model were 1.3548 and
0.79405.
Statistical indicators revealed that regression models accurately
predicted rotational and static power as a function of time, current,
and voltage. The projected values of rotational and static power
demonstrate that these quantities can be utilized to predict and
compensate for energy deficit.
