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Seasonal statistics of experimental oceanic noise observed in the deep region of the South China Sea

机译:南海深层地区观察实验海洋噪声的季节性统计

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Seasonal statistics on underwater ambient noise in the deep area of the South China Sea were analyzed on the basis of the experimental observation data. A parameterized fitting model was utilized to determine the noise spectrum levels at different wind speed (WS) conditions and was compared with the Wenz curves, which are consistent with the NLs in winter at WS higher than wind force 3. The correlation coefficient between NLs and WS or significant wave height (SWH) were described according to the reanalysis database. In addition, the relationship between NLs and WS or SWH could be modeled by using four-parameter logarithm model. Empirical expression between NLs and spectrum levels at 1 kHz was corrected in SCS. Weibull and Burr distributions were applied for the evaluation of PDF of NLs in summer and winter. Low-frequency NLs were dominated by distant shipping noise and their PDF satisfied the Burr distribution. High-frequency NLs were dominated by breaking waves or wind agitation and their PDF satisfied the Burr distribution and Gaussian distributions simultaneously. Finally, frequency correlation matrices (FCM) were utilized in analyzing the noise sources mechanism, and discussing the reason for the statistical difference of NLs in summer and winter. The NL statistical differences was induced by noise source mechanism primarily.
机译:基于实验观察数据,分析了南海深处水下环境噪声的季节性统计数据。利用参数化拟合模型来确定不同风速(WS)条件下的噪声频谱水平,并与WENN曲线进行比较,该曲线与高于风力的WS冬季的NLS一致.NLS和NLS之间的相关系数根据Reanalysis数据库描述了WS或显着的波形高度(SWH)。此外,可以使用四参数对数模型建模NLS和WS或SWH之间的关系。在SCS中校正了NLS和频谱水平之间的经验表达。苏布尔和毛刺分布用于夏季和冬季评估NLS的PDF。低频NLS由遥远的运输噪声主导,他们的PDF满足毛刺分布。高频NLS通过破坏波浪或风搅拌,并且它们的PDF同时满足毛刺分布和高斯分布。最后,利用频率相关矩阵(FCM)分析噪声源机制,并讨论夏季和冬季NLS统计差异的原因。噪声源机制主要引起NL统计差异。

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