Jaringan Saraf Tiruan Resilient Backpropagation untuk Memprediksi Faktor Dominan Injury Severity pada Kecelakaan Lalu Lintas
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Date
2012Author
Yunita, Tika
Advisor(s)
Suyanto
Putra, Mohammad Fadly Syah
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Traffic accidents is an event that often occure around us. Traffic accident cause a
variety of risks. The risks of accidents experienced by each person is different in each
event. It can be divided into several categories of risk of traffic accidents or
commonly known as the injury severity. In this study explains about the application of
the method Resilient Backpropagation Neural Network to predict the severity of
injury. This method is used to avoid a small gradient changes during the update
process with Sigmoid activation function that causes the formation of a slow network.
The result of this paper are resulting learning process more faster and better to predict
the dominant factor of injury severity of traffic accidents.
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