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Discrete Synapse Recurrent Neural Network for nonlinear system modeling and its application on seismic signal classification

机译:非线性系统建模的离散突触经常性神经网络及其对地震信号分类的应用

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For a lumped nonlinear modeling of the relationship between input and output sequences, Discrete Synapse Recurrent Neural Network (DSRNN) is proposed using fully Recurrent Neural Network (RNN) structure and Extended Kalman Filter (EKF) algorithm for its training. The training process is more efficient and there is less output error and more stability than in the previous study using feedforward networks. DSRNN is applied to a task of seismic signal classification to discriminate footsteps and vehicles from background. Temporal features of the signals were modeled using data recorded in the deserts of Joshua Tree, CA. The proposed classifier showed 0.3% false recognition rate for the recognition of human footsteps, 0.9% for vehicle, and 0.0% for background. The models were able to reject quadrupedal animal's footsteps (in this study a trained dog). The system rejected dog's footsteps with 0.2% false recognition rate.
机译:对于输入和输出序列之间的关系的集总线非线性建模,使用完全复发性神经网络(RNN)结构和扩展卡尔曼滤波器(EKF)算法来提出离散突触经常性神经网络(DSRNN)。培训过程更有效,输出误差较少,比使用前馈网络的研究更稳定。 DSRNN应用于地震信号分类的任务,以区分脚步声和从背景的车辆。使用记录在Joshua树,CA的沙漠中的数据建模的信号的时间特征。拟议的分类器显示了识别人类脚步的0.3%的虚假识别率,车辆0.9%,背景为0.0%。该模型能够拒绝Quadrupedal动物的脚步(在这项研究中训练有素的狗)。该系统拒绝了狗的脚步,具有0.2%的虚假识别率。

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