Utilization of genetic algorithm in tuning the hyper-parameters of hybrid NN-based side-slip angle estimators
Mohamed G. Essa,
Catherine M. Elias,
Omar M. Shehata
Abstract:This paper proposes a solution to enhance and compare different neural network (NN)-based side-slip angle estimators. The feed-forward neural networks (FFNNs), recurrent neural networks, long short-term memory units (LSTMs), and gated recurrent units are investigated. However, there is a lack in the selection criteria of the architectures’ hyper-parameters. Therefore, the genetic algorithm is integrated with the NN-based estimators to find the optimal hyper-parameters for the studied architectures. The tuned h… Show more
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