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面向河口三角洲地形慢速变化分析的D-InSAR和PS-InSAR对比实验设计与实现
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作者 孙正宝 冯玥雯 张军 《实验科学与技术》 2026年第1期113-120,共8页
该文以萨尔温江入海口为实验研究区,基于Sentinel-1A卫星获取的2018—2021年逐月数据,运用D-InSAR和PS-InSAR两种技术进行地形地貌慢速变化实验分析。结果表明,两种技术所获得的变化过程与特征具有显著的一致性,且PS-InSAR技术的精度更... 该文以萨尔温江入海口为实验研究区,基于Sentinel-1A卫星获取的2018—2021年逐月数据,运用D-InSAR和PS-InSAR两种技术进行地形地貌慢速变化实验分析。结果表明,两种技术所获得的变化过程与特征具有显著的一致性,且PS-InSAR技术的精度更高;实验研究区4年平均变化速率为5 mm/年;在入海口南北支流与东西支流交汇的北沿岸呈现出先堆积后侵蚀的特征,西南部岛屿呈现出明显堆积特征。实验不仅有助于学生理解河口三角洲地形地貌慢速变化分析的原理和方法,掌握InSAR数据处理分析的技术,而且有助于培养学生的实践能力和科研素质,为遥感专业课程教学的实验设计提供参考。 展开更多
关键词 实验教学 D-INSAR ps-insar 地形变化 实验设计
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基于SBAS-InSAR和PS-InSAR技术的西安市地表形变监测与分析
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作者 吴晓娟 周荣荣 +3 位作者 刘扬 许曼娜 廖怡晗 张周平 《北京测绘》 2026年第2期142-149,共8页
针对西安市地面沉降和地裂缝等地质灾害发育集中的现状,本文采用2015年6月—2024年3月的哨兵一号A(Sentinel-1A)雷达影像数据,基于短基线集合成孔径雷达干涉测量(SBAS-InSAR)技术,获取西安市主城区近9年的长时序地表形变演变特征;同时,... 针对西安市地面沉降和地裂缝等地质灾害发育集中的现状,本文采用2015年6月—2024年3月的哨兵一号A(Sentinel-1A)雷达影像数据,基于短基线集合成孔径雷达干涉测量(SBAS-InSAR)技术,获取西安市主城区近9年的长时序地表形变演变特征;同时,针对主城区内鱼化寨、清凉山—凤栖原区域,分别采用SBAS-InSAR与永久散射体合成孔径雷达干涉测量(PS-InSAR)技术,获取2019年时序地表形变特征,并对两种技术的监测结果进行交叉验证,在此基础上对两区域开展剖面时序分析。结果表明:2015—2018年,西安市主城区整体呈明显沉降趋势;2018—2024年,主城区核心区域向东北—西南方向延伸的区域出现大面积地表抬升现象。典型形变区域中,鱼化寨区域在持续沉降后呈现明显回弹特征,电子城区域整体呈抬升趋势且抬升速率逐渐变缓,清凉山—凤栖原及马腾空区域均表现为持续沉降趋势。两种时序InSAR技术对鱼化寨、清凉山—凤栖原两区域的监测结果基本一致,表明二者在城市地表形变监测中均具有可靠性。剖面分析结果显示,监测期间两区域均形成主、副沉降中心:鱼化寨区域沉降速率呈“先大后小”的急剧变化,清凉山—凤栖原区域沉降速率则整体均匀且逐渐减缓。 展开更多
关键词 短基线集合成孔径雷达干涉测量(SBAS-InSAR) 永久散射体合成孔径雷达干涉测量(PSInSAR) 西安市 长时序 地表形变
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极端暴雨下基于PS-InSAR技术的城市地铁沿线地表形变研究
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作者 聂久添 王瑞亭 +2 位作者 喜文飞 张冰冰 杨坤武 《昆明理工大学学报(自然科学版)》 北大核心 2026年第1期94-101,共8页
地铁沿线地表形变的监测与分析是保障轨道交通运营安全的关键环节.针对当前缺乏极端暴雨事件影响下城市地铁网络地表形变的专项研究这一空白,以郑州市核心城区为研究区,采用PS-InSAR技术对Sentinel-1A卫星数据进行时序分析,获取研究区... 地铁沿线地表形变的监测与分析是保障轨道交通运营安全的关键环节.针对当前缺乏极端暴雨事件影响下城市地铁网络地表形变的专项研究这一空白,以郑州市核心城区为研究区,采用PS-InSAR技术对Sentinel-1A卫星数据进行时序分析,获取研究区地表形变信息;同时结合城市地铁线路分布图,以及降雨量、土壤特性、洪水分布等多源数据,系统分析地铁沿线地表形变特征与规律.结果表明:研究区内地表形变速率范围为-28.13 mm/a至26.88 mm/a,累积形变量超过40 mm,存在明显的形变集中区域;研究期覆盖2021年7月郑州特大暴雨事件,受强降雨影响,7—8月研究区累积形变量呈显著上升趋势,表现出明显的时滞性与持续性形变特征.研究成果可为郑州市地下工程运行安全评估、灾害预警及城市排水规划提供技术支撑与科学依据. 展开更多
关键词 ps-insar技术 城市地铁 地表形变 监测
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Enhanced Calibration Assessment of Chinese Ground-based Polarimetric Radars Using a Refined GPM DPR Volume-matching Method
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作者 WANG Gang ZHANG Peng +7 位作者 CHEN Lin WU Qiong CHEN Peng WANG Hui-ying LI Jian-yong GU Tao-feng DONG Li-xin CHEN Yu-bao 《Journal of Tropical Meteorology》 2026年第1期73-85,共13页
Accurate calibration of China's new generation ground-based polarimetric radar(GR) network is crucial yet challenging. Although application of the Dual-frequency Precipitation Radar(DPR) of the Global Precipitatio... Accurate calibration of China's new generation ground-based polarimetric radar(GR) network is crucial yet challenging. Although application of the Dual-frequency Precipitation Radar(DPR) of the Global Precipitation Measurement Core Observatory for GR assessment is well-established, current methodologies are inherently limited. Focusing on three GRs in the Guangdong-Hong Kong-Macao Greater Bay Area(GBA)—strategically selected for their high overlapping coverage(>65%) and distinct from single GR or less dense coverage studies—this work introduces key refinements by integrating innovative enhancements into the volume-matching method(VMM), reflecting a systematic approach to mitigating potential error sources. Specifically, we integrate: 1) a novel frequency correction method that adapts to DPR-observed precipitation phase and type, replacing assumption-based polynomial fitting;and 2) a precise beam time-difference matching approach(accuracy < 1 s) to minimize temporal mismatch errors, which improves upon coarser time averaging methods. Furthermore, we developed statistically robust, optimized threshold criteria based on systematic sensitivity analyses using 11 quality control factors, including precipitation type, bright band effects, and attenuation correction limitations. These criteria establish an enhanced protocol designed to minimize errors arising from instrumental, frequency, and scanning differences. Application of this enhanced methodology to the GBA GRs(2021–2023) yielded a significantly improved matching accuracy(correlation coefficient, CC: 0.90–0.95;standard deviation,STD: 1.2–1.6 dB). A unique contribution of this work is the quantitative estimation of historical calibration errors and operational stability, which was achieved by linking VMM results with operational GR calibration and maintenance records. This analysis revealed decreasing STD trends and identified specific calibration-related events, such as an underestimation of approximately 2.43 dB for the Shenzhen radar following calibration in 2023. Consequently, the refined methodology provides a robust framework for ongoing GR network monitoring and offers a validated pathway for authenticating China's Fengyun-3G(FY-3G) satellite precipitation measurement radar(PMR) data. 展开更多
关键词 spaceborne radar radar polarimetry radar detection
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Comparison of the Precipitation Measurement Radar Onboard the FY-3G Meteorological Satellite with Ground-based Radars in China
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作者 Jian SHANG Peng ZHANG +9 位作者 Lei CAO Qiong WU Xiaopeng WANG Xiaowen ZHANG Bosen JIANG Honggang YIN Mei YUAN Da LIU Yubao CHEN Songyan GU 《Advances in Atmospheric Sciences》 2026年第3期645-660,共16页
China launched its first spaceborne Precipitation Measurement Radar(PMR)on the FY-3G satellite in April 2023.To achieve the scientific goal of measuring the three-dimensional precipitation structure,evaluating the qua... China launched its first spaceborne Precipitation Measurement Radar(PMR)on the FY-3G satellite in April 2023.To achieve the scientific goal of measuring the three-dimensional precipitation structure,evaluating the quantitative measurement ability of the PMR is critical.China operates more than 250 weather radars over the mainland.Consistency of the spaceborne radar with ground-based radars will enhance precipitation measurement ability,especially over oceans and mountains where observations are sparse.Additionally,the spaceborne radar can be used to evaluate the spatial and temporal homogeneity of the ground-based radar network.This paper focuses on comparing the PMR onboard the FY-3G satellite with S-band China New Generation Weather Radars(CINRADs).A comparison algorithm between the PMR and CINRADs has been developed,incorporating detailed quality control,attenuation correction,data optimization,spatiotemporal matching,non-uniform beam filling constraint,uniformity constraint,and frequency correction.The matched data in typical months of four seasons were selected to carry out the comparison.The data consistency between the PMR and CINRADs was analyzed.The correlation coefficient is 0.87,the deviation is 0.89 dB,and the standard deviation is 2.50 dB,based on 98226 matching samples.The results show the radar reflectivity of the PMR is quite comparable to that of the CINRADs,demonstrating that the PMR data quality is satisfactory and can be used to verify and correct data consistency among multiple ground-based radars.This work also paves the way for data fusion and joint application of satellite and ground radars in the future. 展开更多
关键词 precipitation radar COMPARISON VALIDATION FY-3G weather radar
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Improvement of a Dual-Polarization Radar Operator for Ice-phase Microphysical Terms
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作者 Ji-Won LEE Ki-Hong MIN GyuWon LEE 《Advances in Atmospheric Sciences》 2026年第3期550-564,共15页
Dual-polarization(dual-pol)radar variables provide information about the quantity,type,size,and water content of hydrometeors.Assimilating these dual-pol radar variables into numerical weather prediction models can en... Dual-polarization(dual-pol)radar variables provide information about the quantity,type,size,and water content of hydrometeors.Assimilating these dual-pol radar variables into numerical weather prediction models can enhance forecast accuracy.Observation operators are essential for radar data assimilation.This study focuses on applying a realistic dual-pol radar observation operator to more accurately calculate dual-pol radar variables.Previously reported dual-pol radar observation operators tended to overestimate radar variables near 0℃ in convective precipitation and simulate unrealistic dual-pol radar variables in subfreezing regions.To address this,the improved operator(KNU dual-pol radar observation operator;K-DROP)limits the distribution of mixed-phase hydrometeors,which have both solid and liquid properties,in areas with strong updrafts and downdrafts,improving the overestimation of radar variables near the melting layer.Additionally,by applying the observed snow axis ratio during winter to K-DROP,the issue of differential reflectivity(Z_(DR))being calculated as a constant value in subfreezing regions has been improved.By incorporating the observed maximum radius of hydrometeors into K-DROP,the overestimation of reflectivity(Z_(H))in subfreezing regions,the overestimation of Z_(DR)in warm regions,and the underestimation of specific differential phase(K_(DP))in subfreezing regions and overestimation in warm regions,are improved.Compared to previous operators,the enhanced version reported in the present work produces more realistic dual-pol radar variables. 展开更多
关键词 dual-polarization radar operator observation operator radar data assimilation remote sensing
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PS-InSAR技术在地铁施工期地表沉降监测中的应用
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作者 付琳 马文浩 《建设机械技术与管理》 2026年第1期93-94,115,共3页
以某城市地铁X号线盾构施工区段为例,研究PS-InSAR技术在地铁施工期地表沉降监测中的应用效果。构建包括监测区域划分、永久散射体点选取、动态监测周期设定及多层级精度控制在内的技术方案,依托Sentinel-1A多期影像开展时序沉降识别与... 以某城市地铁X号线盾构施工区段为例,研究PS-InSAR技术在地铁施工期地表沉降监测中的应用效果。构建包括监测区域划分、永久散射体点选取、动态监测周期设定及多层级精度控制在内的技术方案,依托Sentinel-1A多期影像开展时序沉降识别与演化分析。结果表明,PS-InSAR可实现毫米级精度的非接触式连续监测,准确捕捉沉降带的空间分布特征及掘进扰动响应,揭示非对称沉降槽及关键风险段落的变形机制,为地铁施工风险管控与结构优化提供了高效可靠的技术支撑。 展开更多
关键词 ps-insar 地铁施工 地表沉降 永久散射体
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Geostationary Satellite–Based Proxy Radar Observations:Expanding Coverage for Storm Tracking
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作者 Yunheng XUE Mengxue XU +4 位作者 Jun LI Bo LI Min MIN Peng ZHANG Ling YANG 《Advances in Atmospheric Sciences》 2026年第2期307-320,共14页
Ground-based radar is the primary means by which severe storms are monitored and tracked;however, due to limited coverage, important data is often missed over ocean and mountainous areas. On the other hand, geostation... Ground-based radar is the primary means by which severe storms are monitored and tracked;however, due to limited coverage, important data is often missed over ocean and mountainous areas. On the other hand, geostationary(GEO)weather satellites provide continuous observations with seamless coverage with advanced imager, despite their limited capability to penetrate clouds. Combining satellite and ground-radar observations could exploit the advantages of both techniques, providing tracking capability close to that of ground radar while maintaining full spatial coverage. This study presents a novel method called Multi-dimensional satellite Observation information for Radar Estimation(MORE) to reconstruct radar composite reflectivity(CREF). Deep learning techniques are important components of MORE for estimating CREF from China's Fengyun-4B(FY-4B) GEO satellite observations. Two models are developed: an infraredonly(IR-Single) model available for all times, and a visible-infrared(VIS+IR) model for daytime applications. These models incorporate multi-dimensional satellite observation information, including temporal, spatial, spectral, and viewing angle information, to enhance the accuracy of radar echo reconstruction. Results demonstrate that the VIS+IR model outperforms the IR-Single model, and both models achieves a root-mean-square error(RMSE) of less than 6 dBZ and a coefficient of determination(R~2) of greater than 0.7. The models effectively reconstruct radar echoes, including strong echoes exceeding 50 dBZ, and show good agreement with precipitation data in radar-blind areas. This study offers a valuable solution for severe weather monitoring and tracking in regions lacking ground-based radar observations, and provides a potential tool for enhanced data assimilation in numerical weather prediction(NWP) models. 展开更多
关键词 radar composite reflectivity FY-4B deep learning severe weather
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Pseudo-spectrum based track-before-detect for bistatic radar network
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作者 HAN Tao ZHOU Gongjian 《Journal of Systems Engineering and Electronics》 2026年第1期127-136,共10页
This paper addresses weak target detection problem for bistatic radar via a pseudo-spectrum(PS)based track-before-detect(TBD).Generally,PS-TBD estimates target position and velocity by means of pseudo-spectrum constru... This paper addresses weak target detection problem for bistatic radar via a pseudo-spectrum(PS)based track-before-detect(TBD).Generally,PS-TBD estimates target position and velocity by means of pseudo-spectrum construction in the discrete measurement space and accurate energy accumulation in mixed coordinates.However,the grids within the polar sensing region of the receivers in the bistatic radar are not aligned.Traditional PS-TBD can not directly process these measurements.In this paper,a PS-TBD method for bistatic radar is proposed to overcome this problem.Each cell in the measurement space of the receivers is mapped to the aligned Cartesian coordinates and predicted to the integration frame according to the assumed filter velocity.A PS is formulated centered on the predicted Cartesian position.Then the samples of the pseudo-spectra are accumulated to the nearest cell around the predicted Cartesian position.The procedure of the energy integration is derived in detail.Simulation results validate the efficacy of the proposed method in terms of detection accuracy and parameter estimation. 展开更多
关键词 bistatic radar track-before-detect(TBD) weak target detection pseudo-spectrum(PS)
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Research on Vehicle Joint Radar Communication Resource Optimization Method Based on GNN-DRL
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作者 Zeyu Chen Jian Sun +1 位作者 Zhengda Huan Ziyi Zhang 《Computers, Materials & Continua》 2026年第2期1430-1446,共17页
To address the issues of poor adaptability in resource allocation and low multi-agent cooperation efficiency in Joint Radar and Communication(JRC)systems under dynamic environments,an intelligent optimization framewor... To address the issues of poor adaptability in resource allocation and low multi-agent cooperation efficiency in Joint Radar and Communication(JRC)systems under dynamic environments,an intelligent optimization framework integrating Deep Reinforcement Learning(DRL)and Graph Neural Network(GNN)is proposed.This framework models resource allocation as a Partially Observable Markov Game(POMG),designs a weighted reward function to balance radar and communication efficiencies,adopts the Multi-Agent Proximal Policy Optimization(MAPPO)framework,and integrates Graph Convolutional Networks(GCN)and Graph Sample and Aggregate(Graph-SAGE)to optimize information interaction.Simulations show that,compared with traditional methods and pure DRL methods,the proposed framework achieves improvements in performance metrics such as communication success rate,Average Age of Information(AoI),and policy convergence speed,effectively enabling resource management in complex environments.Moreover,the proposed GNN-DRL-based intelligent optimization framework obtains significantly better performance for resource management in multi-agent JRC systems than traditional methods and pure DRL methods. 展开更多
关键词 Graph neural network joint radar and communication resource allocation multi-agent collaboration
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OSCJC:An open-set compound jamming cognition method for radar systems in high-intensity electromagnetic warfare
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作者 Kaixiang Zhang Jiaxiang Zhang +3 位作者 Xinrui Han Yilin Wang Bo Wang Quanhua Liu 《Defence Technology(防务技术)》 2026年第1期436-455,共20页
In high-intensity electromagnetic warfare,radar systems are persistently subjected to multi-jammer attacks,including potentially novel unknown jamming types that may emerge exclusively under wartime conditions.These j... In high-intensity electromagnetic warfare,radar systems are persistently subjected to multi-jammer attacks,including potentially novel unknown jamming types that may emerge exclusively under wartime conditions.These jamming signals severely degrade radar detection performance.Precise recognition of these unknown and compound jamming signals is critical to enhancing the anti-jamming capabilities and overall reliability of radar systems.To address this challenge,this article proposes a novel open-set compound jamming cognition(OSCJC)method.The proposed method employs a detection-classification dual-network architecture,which not only overcomes the false alarm and misdetection issues of traditional closed-set recognition methods when dealing with unknown jamming but also effectively addresses the performance bottleneck of existing open-set recognition techniques focusing on single jamming scenarios in compound jamming environments.To achieve unknown jamming detection,we first employ a consistency labeling strategy to train the detection network using diverse known jamming samples.This strategy enables the network to acquire highly generalizable jamming features,thereby accurately localizing candidate regions for individual jamming components within compound jamming.Subsequently,we introduce contrastive learning to optimize the classification network,significantly enhancing both intra-class clustering and inter-class separability in the jamming feature space.This method not only improves the recognition accuracy of the classification network for known jamming types but also enhances its sensitivity to unknown jamming types.Simulations and experimental data are used to verify the effectiveness of the proposed OSCJC method.Compared with the state-of-the-art open-set recognition methods,the proposed method demonstrates superior recognition accuracy and enhanced environmental adaptability. 展开更多
关键词 radar compound jamming cognition Open-set recognition Detection-classification dual-network Time-frequency analysis Contrastive learning
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Joint beamforming design for low probability of intercept in transmit subaperturing MIMO radar
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作者 WU Jiale SHI Chenguang +1 位作者 WU Zhifeng ZHOU Jianjiang 《Journal of Systems Engineering and Electronics》 2026年第1期94-103,共10页
In this paper,the joint design of transmit and receive beamformers for transmit subaperturing multiple-input-multiple-output(TS-MIMO)radar is investigated,aiming to enhance its low probability of intercept(LPI)capabil... In this paper,the joint design of transmit and receive beamformers for transmit subaperturing multiple-input-multiple-output(TS-MIMO)radar is investigated,aiming to enhance its low probability of intercept(LPI)capability.The main objective is to simultaneously minimize the transmission power,suppress the transmit sidelobe levels,and minimize the probability of intercept,thus bolstering the LPI performance of the radar system while maintaining the desired target detection performance.An alternative optimization method is proposed to jointly optimize the transmit and receive beamformers,yielding an unified LPI optimization framework.Particularly,the proposed iterative algorithm based on the Lagrange duality theory for transmit beamforming is more efficient than the conventional convex optimization method.Numerical experiments highlight the effectiveness of the proposed approach in sidelobe suppression and computational efficiency. 展开更多
关键词 multiple-input-multiple-output(MIMO)radar BEAM-FORMING SUBARRAY low probability of intercept sidelobe suppression jamming
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Radar Beampattern Gain Maximization for MIMO Integrated Sensing and Communication Systems
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作者 Ren Hong Zhang Ruoyu +2 位作者 Chen Guangyi Lin Xu Wu Wen 《China Communications》 2026年第2期268-284,共17页
Integrated sensing and communication(ISAC)is an appealing approach to address spectrum congestion and beamforming is an effective method to realize ISAC.In this paper,we investigate the beamforming design problem for ... Integrated sensing and communication(ISAC)is an appealing approach to address spectrum congestion and beamforming is an effective method to realize ISAC.In this paper,we investigate the beamforming design problem for multiple-input multipleoutput(MIMO)ISAC systems and propose to maximize the radar beampattern gain of the target direction while ensuring the signal-to-interference-plus-noise ratio(SINR)constraints of communication users.Particularly,we discuss two cases of ISAC transmit beamforming,i.e.,Case-Ⅰand Case-Ⅱ,which do not have and do have the dedicated probing signal,respectively.For these two cases of transmit beamforming design problems,we start from the single-user scenario and provide the closed-form solutions for MIMO ISAC beamforming vectors.Then,we consider the multiuser scenario and utilize the semidefinite relaxation technique to convert the beamforming design problems into convex semidefinite programming problems.Furthermore,we investigate the impact of the channel correlation between radar and communication on the performance gain of MIMO ISAC systems and characterize the performance tradeoff.Numerical results validate that the dedicated probing signal is unnecessary in the single-user scenario,whereas it has a slight improvement in target detection performance at low SINR thresholds in the multi-user scenario.It is also shown that the stronger the correlation between radar and communication channels,the greater the performance gain of the system. 展开更多
关键词 integrated sensing and communication multiple-input multiple-output performance tradeoff radar beampattern gain semidefinite relaxation
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Cooperative finite transmit-receive antenna selection and power allocation strategy for multi-target CFAR-detection in multisite MIMO radar intelligent group system under external uncertainty
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作者 Cheng QI Junwei XIE +6 位作者 Haowei ZHANG Bo WANG Jinlin ZHANG Weijian LIU Weike FENG Qun ZHANG Rennong YANG 《Chinese Journal of Aeronautics》 2026年第1期534-552,共19页
Within the domain of Intelligent Group Systems(IGSs),this paper develops a resourceaware multitarget Constant False Alarm Rate(CFAR)detection framework for multisite MIMO radar systems.It underscores the necessity of ... Within the domain of Intelligent Group Systems(IGSs),this paper develops a resourceaware multitarget Constant False Alarm Rate(CFAR)detection framework for multisite MIMO radar systems.It underscores the necessity of managing finite transmit and receive antennas and transmit power systematically to enhance detection performance.To tackle the multidimensional resource optimization challenge,we introduce a Cooperative Transmit-Receive Antenna Selection and Power Allocation(CTRSPA)strategy.It employs a perception-action cycle that incorporates uncertain external support information to optimize worst-case detection performance with multiple targets.First,we derive a closed-form expression that incorporates uncertainty for the noncoherent integration squared-law detection probability using the Neyman-Pearson criterion.Subsequently,a joint optimization model for antenna selection and power allocation in CFAR detection is formulated,incorporating practical radar resource constraints.Mathematically,this represents an NPhard problem involving coupled continuous and Boolean variables.We propose a three-stage method—Reformulation,Node Picker,and Convex Power Allocation—that capitalizes on the independent convexity of the optimization model for each variable,ensuring a near-optimal result.Simulations confirm the approach's effectiveness,efficiency,and timeliness,particularly for large-scale radar networks,and reveal the impact of threat levels,system layout,and detection parameters on resource allocation. 展开更多
关键词 Combinatorial optimization Constant False Alarm Rate(CFAR) Intelligent Group System Multisite MIMO radar Resource management Target detection
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Noninvasive Radar Sensing Augmented with Machine Learning for Reliable Detection of Motor Imbalance
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作者 Faten S.Alamri Adil Ali Saleem +2 位作者 Muhammad I.Khan Hafeez Ur Rehman Siddiqui Amjad Rehman 《Computer Modeling in Engineering & Sciences》 2026年第1期698-726,共29页
Motor imbalance is a critical failure mode in rotating machinery,potentially causing severe equipment damage if undetected.Traditional vibration-based diagnostic methods rely on direct sensor contact,leading to instal... Motor imbalance is a critical failure mode in rotating machinery,potentially causing severe equipment damage if undetected.Traditional vibration-based diagnostic methods rely on direct sensor contact,leading to installation challenges and measurement artifacts that can compromise accuracy.This study presents a novel radar-based framework for non-contact motor imbalance detection using 24 GHz continuous-wave radar.A dataset of 1802 experimental trials was sourced,covering four imbalance levels(0,10,20,30 g)across varying motor speeds(500–1500 rpm)and load torques(0–3 Nm).Dual-channel in-phase and quadrature radar signals were captured at 10,000 samples per second for 30-s intervals,preserving both amplitude and phase information for analysis.A multi-domain feature extraction methodology captured imbalance signatures in time,frequency,and complex signal domains.From 65 initial features,statistical analysis using Kruskal–Wallis tests identified significant descriptors,and recursive feature elimination with Random Forest reduced the feature set to 20 dimensions,achieving 69%dimensionality reduction without loss of performance.Six machine learning algorithms,Random Forest,Extra Trees Classifier,Extreme Gradient Boosting,Categorical Boosting,Support Vector Machine with radial basis function kernel,and k-Nearest Neighbors were evaluated with grid-search hyperparameter optimization and five-fold cross-validation.The Extra Trees Classifier achieved the best performance with 98.52%test accuracy,98%cross-validation accuracy,and minimal variance,maintaining per-class precision and recall above 97%.Its superior performance is attributed to its randomized split selection and full bootstrapping strategy,which reduce variance and overfitting while effectively capturing the nonlinear feature interactions and non-normal distributions present in the dataset.The model’s average inference time of 70 ms enables near real-time deployment.Comparative analysis demonstrates that the radar-based framework matches or exceeds traditional contact-based methods while eliminating their inherent limitations,providing a robust,scalable,and noninvasive solution for industrial motor condition monitoring,particularly in hazardous or space-constrained environments. 展开更多
关键词 Condition monitoring imbalance detection industrial applications machine learning motor fault diagnosis non-contact sensing radar sensing vibration monitoring
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基于PS-InSAR技术的大跨度桥梁结构变形监测综述 被引量:6
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作者 周云 郝官旺 +3 位作者 危俊杰 杜宗 刘畅 朱茂 《工程力学》 北大核心 2025年第4期25-37,共13页
面对量大面广的大跨度桥梁,实施时空覆盖连续、高效经济的轻量化结构健康监测,对保障桥梁运营安全、实现智慧桥梁和智慧交通具有重要现实意义。该文从永久散射体合成孔径雷达干涉(PS-InSAR)关键技术、桥梁结构变形监测以及影响因素3个方... 面对量大面广的大跨度桥梁,实施时空覆盖连续、高效经济的轻量化结构健康监测,对保障桥梁运营安全、实现智慧桥梁和智慧交通具有重要现实意义。该文从永久散射体合成孔径雷达干涉(PS-InSAR)关键技术、桥梁结构变形监测以及影响因素3个方面,全面总结了PS-InSAR技术监测桥梁结构变形的基本原理、技术特点、适用范围和研究进展。在关键技术方面,系统总结了影像配准、PS点识别、相位解缠、变形恢复4个方面的最新研究成果;综述了PS-InSAR技术在桥梁视线向变形监测以及三维变形反演中的应用,分析了桥梁方向和表面散射特性、相位解缠精度以及热膨胀模型对该技术测量精度的影响;利用该技术对某钢拱桥的结构变形进行了测试,验证了所提方法的可行性。归纳总结了PS-InSAR技术监测桥梁变形研究,讨论了未来可能的发展方向。文献综述表明:基于PS-InSAR技术的桥梁变形监测方法有显著的优势和广阔的应用前景,有望为大跨度桥梁的运维和风险管理提供技术支持。 展开更多
关键词 桥梁工程 结构健康监测 综述 ps-insar 变形监测
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PS-InSAR技术在西安市2022—2024年区域地表沉降分析中的应用 被引量:2
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作者 王宁 《黑龙江科学》 2025年第2期136-138,共3页
地表沉降是由多种因素导致的地表高度下降现象,对城市基础设施、洪涝风险、地下管网和土地资源有重要影响。PS-InSAR技术通过高精度监测地表形变,具有毫米级精度、高频次监测和高空间分辨率等优势。以西安市为例,通过PS-InSAR技术监测... 地表沉降是由多种因素导致的地表高度下降现象,对城市基础设施、洪涝风险、地下管网和土地资源有重要影响。PS-InSAR技术通过高精度监测地表形变,具有毫米级精度、高频次监测和高空间分辨率等优势。以西安市为例,通过PS-InSAR技术监测地表沉降,发现沉降主要集中在西咸新区,这可能与地下水过度开采和工程建设有关。地下水管理措施和城市规划优化是减轻地表沉降影响的关键,有助于西安市实现可持续发展。 展开更多
关键词 ps-insar 地表沉降 西安市 地质灾害
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大型引水工程地面沉降PS-InSAR监测与分析
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作者 熊春宝 安贺雯 苏广利 《测绘通报》 北大核心 2025年第7期19-25,72,共8页
南水北调工程是一项旨在缓解南北方水资源分配不均问题的国家战略工程,对工程沿线进行地表形变监测可以识别安全隐患,对这一大型引水工程的安全运行具有重要意义。本文首先基于覆盖南水北调中线工程天津支线2020年7月至2023年6月的45景S... 南水北调工程是一项旨在缓解南北方水资源分配不均问题的国家战略工程,对工程沿线进行地表形变监测可以识别安全隐患,对这一大型引水工程的安全运行具有重要意义。本文首先基于覆盖南水北调中线工程天津支线2020年7月至2023年6月的45景Sentinel-1A影像数据,采用永久散射体干涉测量技术(PS-InSAR)对研究区域进行地表沉降监测,得到了该地区的年平均沉降速率和累积沉降量;然后与全球导航卫星系统(GNSS)数据对比,验证了PS-InSAR技术测量地表形变的可靠性。结果表明,研究时间内研究区平均地表沉降速率范围为-72.26~17.30 mm/a;天津支线工程经过两个明显的沉降区,分别位于保定市雄县和廊坊市固安县交界处、廊坊市霸州市东部;影响该地区地面沉降的主要原因包括地下水的过度开采、城市基础设施建设及工业化进程加速导致的地面荷载增加;通过对地下水位的变化曲线与地面累计沉降量的对比可知,研究区的地表形变整体上相较于地下水位变化滞后约1~3年。 展开更多
关键词 ps-insar 地面沉降监测 南水北调中线工程
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基于PS-InSAR技术的北京平原区地面沉降与影响因素 被引量:2
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作者 葛畅 石云 +2 位作者 龚文瑜 廖欣 张国宏 《科学技术与工程》 北大核心 2025年第18期7502-7510,共9页
采取系列防治措施后北京平原区的地面沉降发展趋势如何变化尚待深入分析。基于2017—2022年Sentinel-1A影像数据,采用PS-InSAR技术评估北京平原区地面沉降现状,利用地理探测器分析影响地面沉降的主要影响因素及其交互作用。结果表明:北... 采取系列防治措施后北京平原区的地面沉降发展趋势如何变化尚待深入分析。基于2017—2022年Sentinel-1A影像数据,采用PS-InSAR技术评估北京平原区地面沉降现状,利用地理探测器分析影响地面沉降的主要影响因素及其交互作用。结果表明:北京平原区地面沉降分布不均匀,最大沉降速率达到90 mm/a,非漏斗区的沉降速率自2020—2021年表现出一定程度的减缓趋势,漏斗区的沉降速率的减缓趋势则较不明显。地面沉降的主要影响因素首先是地下水,其次是可压缩层厚度。所有影响因素交互作用后均表现为因子增强关系,其中地下水与地铁交互作用对地面沉降的影响最为显著,反映出地下水开采和城市建设共同驱动北京平原区的地面沉降。研究结果可为北京平原区地面沉降的全面评估、准确预测与综合防治提供科学依据。 展开更多
关键词 北京平原区 地面沉降 影响因素 ps-insar 地理探测器
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基于PS-InSAR技术的地铁施工期地表沉降监测研究 被引量:1
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作者 胡玉柳 蓝文海 +4 位作者 王欣 林家全 郭立扬 柴隆 谢雄耀 《建筑施工》 2025年第2期205-209,共5页
目前地铁施工期地表沉降监测方法自动化程度低、监测范围小、耗费人力大,不能满足地铁建设的需要。提出了一种基于永久散射体合成孔径雷达干涉测量技术的隧道施工期沉降监测方法,首先采用PS-InSAR技术获取地铁沿线的地面沉降监测结果,... 目前地铁施工期地表沉降监测方法自动化程度低、监测范围小、耗费人力大,不能满足地铁建设的需要。提出了一种基于永久散射体合成孔径雷达干涉测量技术的隧道施工期沉降监测方法,首先采用PS-InSAR技术获取地铁沿线的地面沉降监测结果,基于永久散射体的时间序列变形数据,对隧道线路周边建筑物进行沉降分析;然后利用克里金法对PS-InSAR结果进行插值,筛选沉降较大区域,并在福州滨海快线滨机区间中间风井—机场站区间进行应用。结果表明,在隧道的施工过程中,机场公安局办公楼、福州翔汇广场、中间风井以及仙岐立交中桥4个区域沉降速率明显提高,并产生较大沉降。 展开更多
关键词 地铁施工 沉降监测 ps-insar 时空演变分析
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