Robot Path Planning Using Differential Evolution

The differential evaluation (DE) algorithm is an evolutionary algorithm. It is a popular metaheuristics that efficiently solved various complex optimization problems. This paper studied some recent modifications in DE and Robot Path Planning Problem. The problem are studied with various constraints and results are compared with competitive nature-inspired algorithms.

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