dc.description.abstract | Solar photovoltaic (PV) power has several advantages such as free availability, absence
of rotating parts, can be easily integrated with building architecture, and need little maintenance.
However, the PV cell current–voltage (I–V) characteristics are non-linear and power generated from
a PV array depends on solar insolation/irradiation and panel temperature. The extracted PV output
power is influenced by the accuracy with which the nonlinear power–voltage (P–V) characteristic
curve is traced by the maximum power point tracking (MPPT) controller. In this paper, a bio-inspired
roach infestation optimization (RIO) algorithm is proposed to extract the maximum power from
the PV system (PVS). To validate the usefulness of the RIO MPPT algorithm, MATLAB/Simulink
simulations are performed under varying environmental conditions, for example, step changes
in solar irradiance, partial shading, and the presence of system uncertainties and load variation
conditions of the PV array. Furthermore, the search performance of the RIO algorithm is examined on
different unconstrained benchmark functions, and it is realized that the RIO algorithm has improved
search performance in terms of finding the optimal solution and faster convergence characteristics
than Particle swarm optimization (PSO). The results demonstrated that the RIO-based MPPT performs
remarkably in tracking with high accuracy as the PSO, perturb and observe (P&O), and incremental
conductance (IC)-based MPPT schemes. | en_US |