“…Besides, a high data set is required for training the ANN, which needs a large memory for implementation as well as fuzzification and defuzzification are very complicated tasks. Therefore, the MPPT methods based on swarm intelligence and bio‐inspired have been proposed in the literature as alternative methods to optimise the drawbacks of the aforementioned methods such as deterministic particle swarm optimisation (PSO) [15], Leader particle swarm optimisation (LPSO) [16], distributed PSO [17], Lipschitz optimisation [18], fusion firefly [19], Harris hawk optimisation [20], hybrid evolutionary [21], firefly algorithm [22], simulated annealing [23], flower pollination algorithm [24], improved grey wolf optimiser (GWO) [25], whale optimisation algorithm [26], moth‐flame optimisation [27], human psychology optimisation [28], a novel bat [29], new Cuck–Sepic converter with a hybrid GSA–PSO [30] etc. These algorithms mimic animals’ natural behaviour, such as birds, fish, and other animals.…”