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The Time-frequency Characteristic of a Large Volume Airgun Source Wavelet and Its Influencing Factors
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作者 Xia Ji Jin Xing +1 位作者 Cai Huiteng Xu Jiajun 《Earthquake Research in China》 CSCD 2016年第3期364-379,共16页
Through analyzing the near-field hydrophone records of the airgun experiment in the Jiemian reservoir,Fujian,we study the time-frequency characteristic of airgun source wavelet and the influence of gun depth and firin... Through analyzing the near-field hydrophone records of the airgun experiment in the Jiemian reservoir,Fujian,we study the time-frequency characteristic of airgun source wavelet and the influence of gun depth and firing pressure,and explain the process of bubble oscillation based on the Johnson( 1994) bubble model. The data analysis shows that:( 1) Airgun wavelet is composed of primary pulse and bubble pulse. The primary pulse,which is of large amplitude,short duration and wide frequency band,is usually used in shallow exploration. The bubble pulse,which is concentrated in the low-frequency range,is usually used in deep exploration with deep vertical penetration and far horizontal propagation.( 2) The variation of primary pulse amplitude with gun depth is very small,bubble pulse amplitude and the dominant frequency increase,and peak-bubble ratio and bubble period decrease. When the gun depth is 10 m,primary pulse amplitude and peakbubble ratio are maximum,which is suitable for shallow exploration; when gun depth is25 m,bubble pulse amplitude is large, and peak-bubble ratio is minimum, which is suitable for deep exploration.( 3) The primary pulse amplitude,bubble pulse amplitude,peak-bubble ratio,and bubble period increase and the dominant frequency decreases with increased firing pressure. 展开更多
关键词 Airgun wavelet Time-frequency characteristic wavelet parameters Gun depth Firing pressure
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Analysis of prediction performance in wavelet minimum complexity echo state network 被引量:1
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作者 CUI Hong-yan FENG Chen LIU Yun-jie 《The Journal of China Universities of Posts and Telecommunications》 EI CSCD 2013年第4期59-66,共8页
Echo state network (ESN) has become one of the most popular recurrent neural networks (RNN) for its good prediction performance of non-linear time series and simple training process. But several problems still pre... Echo state network (ESN) has become one of the most popular recurrent neural networks (RNN) for its good prediction performance of non-linear time series and simple training process. But several problems still prevent ESN from becoming a widely used tool. The most prominent problem is its high complexity with lots of random parameters. Aiming at this problem, a minimum complexity ESN model (MCESN) was proposed. In this paper, we proposed a new wavelet minimum complexity ESN model (WMCESN) to improve the prediction accuracy and increase the practical applicability. Our new model inherits the characters of minimum complexity ESN model using the fixed parameters and simple circle topology. We injected wavelet neurons to replace the original neurons in internal reservoir and designed a wavelet parameter matrix to reduce the computing time. By using different datasets, our new model performed better than the minimum complexity ESN model with normal neurons, but only utilized tiny time cost. We also used our own packets of transmission control protocol (TCP) and user datagram protocol (UDP) dataset to prove that our model can deal with the data packet bit prediction problem well. 展开更多
关键词 wavelet minimum complexity echo state network echo state network wavelet parameter matrix practical applicability
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