首页> 外文会议>Oceans Conference >Echo-waveform classification using model and model free techniques: experimental study results from central western continental shelf of India
【24h】

Echo-waveform classification using model and model free techniques: experimental study results from central western continental shelf of India

机译:使用模型和模型自由技术的回声波形分类:中西部大陆架的实验研究结果

获取原文

摘要

Seafloor classifications and characterization using acoustic backscatter data from the central western continental shelf of India is presented in this work. We have acquired single beam sea-floor echo data using two frequencies: 33 kHz and 210 kHz along with the sediment samples for determining grain size to be used as ground truth. Analog echo output was digitized using a 1mega sample per second A/D card (16 channels, 12 bit-PCI-1712L). The study is initiated to observe the interaction effects of the sound signal with different sediment seafloor from off Goa shelf area, which covers finer clayey seafloor from inner shelf to coarser sandy seafloor from outer shelf. For classification of the seafloor, analysis conducted by determining the area experimental echo peak histograms and matching them with Rice pdf. We classify different seafloor with estimated model parameter γ (coherently reflected echo energy/incoherently scattered echo energy) for two different frequencies. The differences in estimated 'γ' parameter indicates variability in the roughness of the sedimentary layer structure from a same location. Analyses based on the certain features obtained from echo data acquired from seven data locations provide us insight about the complexity of the seafloor structures. Estimation of power law parameters using topographic data from 33 kHz and 240 kHz frequencies (from a operated shallow water multi-beam system) from transect was also used to find correlations with the estimated 'γ' parameter using echo backscatter data. Though, the critical analyses carried out by employing numerical modeling to bathymetric and echo- backscatter data is useful to understand the complex seafloor processes and characterization of continental shelf seafloor of India, but unable to provide a suitable means for seafloor classification. This paper also suggests a hybrid artificial neural network (ANN) architecture i.e. Learning Vector Quantisation (LVQ) for seafloor classification. An analysis is presented to establish the efficient performance of the proposed network in terms of real time seafloor classification of the acoustic backscatter data.
机译:在这项工作中展示了来自印度中部西部大陆架子的声学反向散射数据的海底分类和表征。我们使用了使用两个频率的单光束海底回声数据:33 kHz和210 kHz以及沉积物样本,用于确定晶粒尺寸以用作地面真理。使用每秒1MEGA样品A / D卡(16个通道,12位PCI-1712L)数字化模拟回波输出。开始研究声音信号与不同沉积物海底的声音信号从果阿架子区覆盖,从内架上覆盖来自内架的较好的克莱·海底,从外架上倾斜桑迪海底。对于海底的分类,通过测定面积实验回波峰直方图并将它们与米PDF匹配来进行分析。我们将不同的海底分类,具有估计的模型参数γ(相干反射的回声能量/不混合散射的回波能量),用于两个不同的频率。估计的'γ'参数的差异表示来自相同位置的沉积层结构的粗糙度的可变性。基于从七个数据位置获取的回波数据获得的某些功能对我们有关海底结构的复杂性的洞察力。使用来自横扫到的33 kHz和240kHz频率(来自操作浅水多光束系统)的地形数据的电力法参数估计也用于使用回声反向散射数据与估计的“γ”参数的相关性。然而,通过使用数值模拟来进行碱基和回声散回数据进行的临界分析可用于了解印度大陆架海底的复杂海底工艺和表征,但无法为海底分类提供合适的手段。本文还提出了一种混合人工神经网络(ANN)架构,即海底分类的学习矢量量化(LVQ)。提出了一种分析,以确定所提出的网络的高效性能,就像声反向散射数据的实时海底分类方面的高效性能。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号