This paper discusses the use of a probabilistic neural network (PNN) for robot navigation tasks, specifically the wall-following strategy. The PNN achieved the highest classification accuracy of 99.635% compared to other neural network models like logistic perceptron and multilayer perceptron. The research highlights the importance of machine learning in facilitating complex robot control and navigation in various real-world scenarios.
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