2020
DOI: 10.1109/jstars.2020.3026011
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Seismic Signal Classification Using Perceptron With Different Learning Rules

Abstract: Perceptron is adopted to classify the Ricker wavelets and to detect the seismic anomaly in seismogram. Three learning rules are used in the training of perceptron to solve the decision boundary. The optimal learning-rate parameter is derived. The lower and upper bounds of learning-rate parameter are derived. It can provide that the learning can converge when the parameter is within the range. Normalized learning rule is derived also. Combining learning rules, a fusion learning rule is proposed. In the experime… Show more

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