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1. 海军工程大学 兵器工程学院,湖北 武汉430033
2. 海军士官学校 兵器系,安徽 蚌埠233000
Received:12 October 2021,
Published:28 March 2023
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Qiang SUN, Jiawei ZHANG, Peng YU. Analysis of Electric Field Interference Characteristics and Signal Detection Method Based on Ocean Buoys[J]. Acta Armamentarii, 2023, 44(3): 857-864.
Qiang SUN, Jiawei ZHANG, Peng YU. Analysis of Electric Field Interference Characteristics and Signal Detection Method Based on Ocean Buoys[J]. Acta Armamentarii, 2023, 44(3): 857-864. DOI: 10.12382/bgxb.2021.0671.
为解决深远海电场信号获取和目标探测问题,对深海电场探测剖面浮标实测数据进行干扰电场特性分析,分析结果表明该浮标在深海剖面电场测量中,晃动干扰电场能量主要集中在0.5 Hz以下,且随着深度的增加而减小,干扰电场可低至0.1μV/m的量级。在干扰特性分析的基础上,为解决浮标平台的电场信号检测问题,提出基于自适应门限线谱能量加和的改进检测方法。仿真及实测实验结果表明:改进算法可有效检测目标电场信号,并在保证目标检测概率的情况下,减小了虚警概率。
To solve the problems of electric field acquisition and target detection in the deep ocean environment
the interference characteristics of an electric field measured by a deep sea electric field detection buoy are analyzed. It has been confirmed that the energy of buoy shaking interference is primarily below 0.5 Hz and decreases with depth increases. The interference of the electric field can be reduced to 0.1μV/m. Then
to detect the electric field signals of the buoy platform
an improved detection method based on adaptive threshold line spectrum energy sum is proposed
based on the analysis of interference characteristics. Simulation and experimental results show that the proposed improved algorithm can effectively detect the target electric field signals and reduce the false alarm probability while ensuring target detection probability.
武尚慧 , 路静 . 国外无人潜航器的发展现状与展望 [J ] . 电光系统 , 2016 , 156 ( 2 ): 6 - 12 .
WU S H , LU J . The current situation of developing foreign unmanned submarine navigation vehicle and looking into the distance [J ] . Electronic and Electro-optical Systems , 2016 , 156 ( 2 ): 6 - 12 . (in Chinese)
ROHAIZAD H R , MOHD Y M Y . Development of floating buoy technology using a modular method [J ] . Design in Maritime Engineering , 2022 , 167 : 441 - 451 .
刘增宏 , 吴晓芬 , 许建平 , 等 . 中国Argo海洋观测十五年 [J ] . 地球科学进展 , 2016 , 31 ( 5 ): 445 - 460 . DOI: 10.11867/j.issn.1001-8166.2016.05.0445. http://doi.org/10.11867/j.issn.1001-8166.2016.05.0445. 中国Argo计划组织实施15年以来,在太平洋和印度洋等海域布放了350多个剖面浮标,建成了我国Argo大洋观测网,并建立了针对Argo剖面浮标的资料接收、处理和分发系统,利用Argo资料开发了多个数据产品,在一定程度上推动了国内海洋数据的共享进程。海量的Argo资料已成为我国海洋和大气科学领域基础研究及业务化应用的主要数据源,特别是在热带气旋(台风)、海洋环流、中尺度涡、湍流、海水热盐储量与输送、大洋水团以及海洋、天气/气候业务化预测预报等方面取得了一批重要的研究和应用成果。随着国际Argo计划由“核心Argo”向“全球Argo”拓展,我国Argo大洋观测网的长期维护和持续发展面临巨大挑战,应紧紧抓住这一难得的机遇,利用国产北斗剖面浮标在南海及邻近我国的西北太平洋和印度洋海域建成Argo区域海洋观测网,为应对全球气候变化及防御自然灾害,更多地承担一个海洋大国的责任和义务。
LIU Z H , WU X F , XU J P , et al. Fifteen years of ocean observation with China argo [J ] . Advances in Earth Science , 2016 , 31 ( 5 ): 445 - 460 . (in Chinese)
赵文春 , 姜润翔 , 喻鹏 , 等 . 基于轴频电场线谱特征的目标检测及识别 [J ] . 兵工学报 , 2020 , 41 ( 6 ): 1165 - 1171 . DOI: 10.3969/j.issn.1000-1093.2020.06.013 http://doi.org/10.3969/j.issn.1000-1093.2020.06.013 为有效地从海洋环境电场信号中检测出舰船轴频电场信号,在对大量实测数据分析的基础上,提出一种基于轴频电场线谱特征的目标检测与识别方法。对接收信号进行傅里叶变换计算频谱图,并对其进行归一化处理以提高其动态范围;采用浮动门限与固定门限相结合的方法对疑似线谱信号进行检测;采用积分累计的方法对疑似线谱特征进行目标确认,并利用长时间积分特征均值实现对目标信号的识别;通过海上实测数据对方法的有效性进行检验。结果表明,该方法能够有效检测到目标信号,并可实现对目标信号的识别分类。
ZHAO W C , JIANG R X , YU P , et al. Detection and identification of ship shafe-rate electric field based on line-spectrum characteristics [J ] . Acta Armamentarii , 2020 , 41 ( 6 ): 1165 - 1171 . (in Chinese)
喻鹏 , 程锦房 , 张伽伟 , 等 . 基于Rao检测器的舰船轴频电场滑动门限检测方法 [J ] . 兵工学报 , 2021 , 42 ( 4 ): 827 - 834 . DOI: 10.3969/j.issn.1000-1093.2021.04.016 http://doi.org/10.3969/j.issn.1000-1093.2021.04.016 为实现非高斯背景噪声和低信噪比情况下的舰船轴频电场检测,提出一种基于Rao检测器的滑动门限检测方法。基于信号源特征建立信号模型,在对水面浮动平台测量背景下环境噪声非高斯特性分析基础上,采用混合高斯模型对噪声进行建模;在检测过程中,实时估计混合高斯噪声模型参数和Rao检测统计量,并将前一段时间的平均Rao检测统计量作为门限,实现滑动门限检测。为验证所提方法的有效性,采用仿真计算的方式,证明Rao检测方法相比于能量检测方法的优势;根据实测数据,对比滑动门限Rao检测方法与滑动功率谱检测方法的性能差异。结果表明,滑动门限Rao检测方法能够有效抑制环境非高斯噪声影响,相比滑动功率谱检测方法具有更好的检测效果。
YU P , CHENG J F , ZHANG J W , et al. Ship shaft-rate electric field sliding threshold detection method based on Rao detector [J ] . Acta Armamentarii , 2021 , 42 ( 4 ): 827 - 834 . (in Chinese) DOI: 10.3969/j.issn.1000-1093.2021.04.016 http://doi.org/10.3969/j.issn.1000-1093.2021.04.016 A sliding threshold detection method based on Rao detector is proposed to detect the ship's shaft-rate electric field at a low SNR in non-Gaussian noise environment. A signal model is established based on the characteristics of signal source, and a noise model is established based on Gaussian mixture model (GMM) after analyzing its non-Gaussian characteristics measured by a floating platform. In the detection process, the parameters of GMM and the Rao detection value are computed in real time; the mean value of previous Rao detection values is regarded as the sliding threshold. The simulation method is first used to verify the proposed method. The results show that the detection performance of Rao detector is better than that of energy detector. Then the measured ship data is used to compare the Rao sliding threshold method and the sliding power spectrum method. The results show that the proposed method is better in decreasing the non-Gaussian environment noise and has a better detection performance than the sliding power spectrum method.
喻鹏 , 程锦房 , 张伽伟 , 等 . 基于自适应滤波的晃动相关电场噪声抑制方法 [J ] . 华中科技大学学报 , 2021 , 49 ( 4 ): 61 - 66 .
YU P , CHENG J F , ZHANG J W , et al. Sway related electric field noise suppressing method based on adaptive filter [J ] . Journal of Huazhong University of Science & Technology(Natural Science Edition) , 2021 , 49 ( 4 ): 61 - 66 . (in Chinese)
姜楷娜 . 水下电场信号源小波时频分析 [J ] . 通信技术 , 2020 , 53 ( 10 ): 2381 - 2388 .
JIANG K N . Wavelet time-frequency analysis of underwater electric field signal source [J ] . Communication Technology , 2020 , 53 ( 10 ): 2381 - 2388 . (in Chinese)
庞健 , 秦明伟 , 王焕 , 等 . 基于自适应门限的改进BigBand算法 [J ] . 宇航计测技术 , 2021 , 41 ( 1 ): 53 - 57 .
PANG J , QIN M W , WANG H , et al. Improved BigBand algorithm based on adaptive threshold [J ] . Journal of Astronautic Metrology and Measurement , 2021 , 41 ( 1 ): 53 - 57 . (in Chinese)
李松 , 石敏 , 栾经德 , 等 . 舰船轴频电场信号特征提取与检测方法 [J ] . 兵工学报 , 2015 , 36 ( 2 ): 220 - 224 .
LI S , SHI M , LUAN J D , et al. The feature extraction and detection for shafe-rate electric field of a ship [J ] . Acta Armamentarii , 2015 , 36 ( 2 ): 220 - 224 . (in Chinese)
程锐 , 陈聪 , 张伽伟 . 基于EEMD 和改进功率谱熵的船舶轴频电场检测 [J ] . 华中科技大学学报(自然科学版) , 2011 , 39 ( 11 ): 15 - 18 .
CHENG R , CHEN C , ZHANG J W . Detection of ship shafe-rate electric field based on EEMD and modified power spectral entropy [J ] . Journal of Huazhong University of Science & Technology(Natural Science Edition) , 2011 , 39 ( 11 ): 15 - 18 . (in Chinese)
BAO Z H , HU P , GONG S G , et al. Detection of harmonics submerged in heavy and coloured noise based on wavelet packet decomposition [C ] //Proceedings of 2010 International Conference on Computational and Information Sciences. Chengdu, China:IEEE , 2010 : 208 - 210 .
胡鹏 , 龚沈光 , 胡英娣 . 基于小波包熵的船舶轴频电场信号检测 [J ] . 华中科技大学学报(自然科学版) , 2011 , 39 ( 11 ): 15 - 18 .
HU P , GONG S G , HU Y D . Detection of ships shaft-rate electric field signals using wavelet packet entropy [J ] . Journal of Huazhong University of Science & Technology(Natural Science Edition) , 2011 , 39 ( 11 ): 15 - 18 . (in Chinese)
DONATI R , LE C J P . Detection of oceanic electric fields based on the generalized likelihood ratio test (GLRT) [J ] . IEEE Proceedings-Radar, Sonar and Navigation , 2002 , 149 ( 5 ): 221 - 230 . DOI: 10.1049/ip-rsn:20020491 http://doi.org/10.1049/ip-rsn:20020491 https://digital-library.theiet.org/content/journals/10.1049/ip-rsn_20020491 https://digital-library.theiet.org/content/journals/10.1049/ip-rsn_20020491
陈新刚 , 喻鹏 , 刘大钢 . 基于自持式剖面浮标的目标电场探测方法研究 [J ] . 中国造船 , 2020 , 61 ( A1 ): 31 - 39 .
CHEN X G , YU P , LIU D G . Underwater electric field detection method based on autonomous profiling drifter [J ] . Ship Building of China , 2020 , A1 ( 61 ): 31 - 39 . (in Chinese)
林春生 , 龚沈光 . 舰船物理场 [M ] . 北京 : 兵器工业出版社 , 2007 : 233 - 246 .
LIN C S , GONG S G . Ships physical fields [M ] . Beijing Publishing House of Ordnance Industry , 2007 : 233 - 246 . (in Chinese)
SCHAEFER D , THIEL C , DOOSE J . Above water electric potential signatures of submerged naval vessels [J ] . Journal of Marine Science and Engineering , 2019 , 7 ( 2 ): 1 - 12 . DOI: 10.3390/jmse7010001 http://doi.org/10.3390/jmse7010001 http://www.mdpi.com/2077-1312/7/1/1 http://www.mdpi.com/2077-1312/7/1/1 Oil extraction platforms are potential sources of oil spills. For this reason, an oil spill forecasting system was set up to support the management of emergencies from the oil fields in the Italian seas. The system provides ready-to-use products to the relevant response agencies and optimizes the anti-pollution resources by assessing hazards and risks related to this issue. The forecasting system covers seven working oil platforms in the Sicily Channel and middle/low Adriatic Sea. It is composed of a numerical chain involving nested ocean models from regional to coastal spatial scales and an oil spill model. The system provides two online services, one automatic and a second dedicated to possible real emergencies or exercises on risk preparedness and responding. The automatic service produces daily short-term simulations of hypothetical oil spill dispersion, transport, and weathering processes from each extraction platform. Products, i.e., risk maps, animations, and a properly called bulletin, are available on a dedicated web-portal. The hazard estimations are computed by performing geo-statistical analysis on the daily forecasts database. The second service is activated in near-real-time producing oil spill simulations for the following 48 h.
WANG J H , LI B , CHEN L P , et al. A novel detection method for underwater moving targets by measuring their ELF emissions with inductive sensors [J ] . Sensors , 2017 , 17 ( 8 ): 17 - 34 . DOI: 10.3390/s17010017 http://doi.org/10.3390/s17010017 http://www.mdpi.com/1424-8220/17/1/17 http://www.mdpi.com/1424-8220/17/1/17
GARCIA ANTONIO S , SOLANO ADOLFO H , SAURA F J , et al. Underwater multi-influence measurements as a mean to characterize the overall vessel signature and protect the marine environment [J ] . Ship Science and Technology , 2014 , 7 ( 14 ): 67 - 75 .
YU P , ZHANG J W , CHNG J F , et al. Analysis of the natural electric field at different sea depths [J ] . Journal of Instrumentation , 2021 , 16, P01006 : 1 - 14 .
CHENG D H , XU H G , GONG R L , et al. Ships matching based on an adaptive acoustic spectrum signature detection algorithm [J ] . Signal & Image Processing: an International Journal (SIPIJ) , 2018 , 9 ( 4 ): 13 - 29 .
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