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A speckle noise suppression method based on surface waves investigation and monitoring data
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作者 Jingwei Gu Xiuzhong Li Yijun He 《Acta Oceanologica Sinica》 SCIE CAS CSCD 2023年第1期131-141,共11页
The internal energy distribution of waves can be described using ocean-wave spectra.In many ways,obtaining wave spectra on a global scale is critical.Surface waves investigation and monitoring onboard the Chinese-Fren... The internal energy distribution of waves can be described using ocean-wave spectra.In many ways,obtaining wave spectra on a global scale is critical.Surface waves investigation and monitoring onboard the Chinese-French oceanography satellite is the first space-borne instrument for detecting wave spectra specially,which was launched on October 29,2018.It can avoid the shortage of synthetic aperture radar detection results while still having some problems,especially with the effects of speckle noise.In this study,a method to suppress the speckle noise is proposed.First,the empirical formula for background speckle noise is established.Second,many spatio-temporal representative fluctuation spectra are classified and averaged.Third,rational transfer function filtering is used to obtain speckle noise close to the along-track direction.Finally,a signal-to-noise ratio threshold is used to suppress the abnormal speckle noise.This method solves the problems existing in previous denoising methods,such as excessive denoising in the along-track direction and the inability of some abnormal noises to be denoised in the two-dimensional directional wave spectra. 展开更多
关键词 speckle noise surface waves investigation and monitoring WaveWatch III wave spectra
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Monitoring the Growth Rate of HAp Crystal on the Surface of Ti/TiO_2 in SCS by a Quartz Crystal Microbalance
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作者 Zhi-Hong ZHU~1 Xin-Yu SHEN~1 Peng WAN~1 Shan-Shan LIU~1 Hua TONG~(1,2Δ) Ji-Ming HU~11(Institute of Analytical and Biomedical Science, Collage of Chemistry and Molecular Science,Wuhan University, Wuhan 430072,China)2(Center of Nano-Sciences and Nano-Technology Reseach, Wuhan University, Wuhan 430072,China) 《生物医学工程学杂志》 EI CAS CSCD 北大核心 2005年第S1期55-56,共2页
关键词 monitoring the Growth Rate of HAp Crystal on the surface of Ti/TiO2 in SCS by a Quartz Crystal Microbalance SCS TIO
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GF-3 InSAR Achieves Sub-centimeter Level Surface Subsidence Monitoring
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作者 KE Xuan 《Aerospace China》 2017年第1期44-45,共2页
The GF-3 satellite was launched on August 10,2016 from the Taiyuan Satellite Launch Center and was put into operation at the end of January,2017.It has acquired nearly 100 thousand C-band multi-polarization ocean and ... The GF-3 satellite was launched on August 10,2016 from the Taiyuan Satellite Launch Center and was put into operation at the end of January,2017.It has acquired nearly 100 thousand C-band multi-polarization ocean and land SAR images,providing data support for many departments covering resource survey,typhoon early warning,disaster assessment,crop yield estimation and polar investigation.Recently,the team led by ZHANG Qingjun from 展开更多
关键词 SAR In GF-3 InSAR Achieves Sub-centimeter Level surface Subsidence monitoring high
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Use of SAR interferometry for monitoring illegal mining activities: A case study at Xishimen Iron Ore Mine 被引量:7
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作者 Ji Maowei Li Xiaojing +2 位作者 Wu Shunchuan Gao Yongtao Ge Linlin 《Mining Science and Technology》 EI CAS 2011年第6期781-786,共6页
The development and application of the ''digital mine'' concept in China depends heavily upon the use of remote sensing data as well as domestic expertise and awareness. Illegal mining of mineral resou... The development and application of the ''digital mine'' concept in China depends heavily upon the use of remote sensing data as well as domestic expertise and awareness. Illegal mining of mineral resources has been a serious long term problem frustrating the Xishimen Iron Ore Mine management. This mine is located in Wu'an county in Hebei province, China. Illegal activities have led to enormous economic losses by interfering with the normal operation of the Xishimen mine and have ruined the surrounding environ- ment and the stability of the Mahe riverbed the crosses the mined area. This paper is based on field recon- naissance taken over many years around the mine area. The ground survey data are integrated with Differential Synthetic Aperture Radar Interferometry (D-InSAR) results from ALOS/PALSAR data to pin- point mining locations. By investigating the relationship between the resulting interferometric deforma- tion pattern and the mining schedule, which is known a priori, areas affected by illegal mining activities are identified. To some extent these areas indicate the location of the illegal site. The results clearly dem- onstrate D-InSAR's ability to cost-effectively monitor illegal mining activities. 展开更多
关键词 D-InSAR monitoring Illegal mines surface deformation
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Slope deformation partitioning and monitoring points optimization based on cluster analysis
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作者 LI Yuan-zheng SHEN Jun-hui +3 位作者 ZHANG Wei-xin ZHANG Kai-qiang PENG Zhang-hai HUANG Meng 《Journal of Mountain Science》 SCIE CSCD 2023年第8期2405-2421,共17页
The scientific and fair positioning of monitoring locations for surface displacement on slopes is a prerequisite for early warning and forecasting.However,there is no specific provision on how to effectively determine... The scientific and fair positioning of monitoring locations for surface displacement on slopes is a prerequisite for early warning and forecasting.However,there is no specific provision on how to effectively determine the number and location of monitoring points according to the actual deformation characteristics of the slope.There are still some defects in the layout of monitoring points.To this end,based on displacement data series and spatial location information of surface displacement monitoring points,by combining displacement series correlation and spatial distance influence factors,a spatial deformation correlation calculation model of slope based on clustering analysis was proposed to calculate the correlation between different monitoring points,based on which the deformation area of the slope was divided.The redundant monitoring points in each partition were eliminated based on the partition's outcome,and the overall optimal arrangement of slope monitoring points was then achieved.This method scientifically addresses the issues of slope deformation zoning and data gathering overlap.It not only eliminates human subjectivity from slope deformation zoning but also increases the efficiency and accuracy of slope monitoring.In order to verify the effectiveness of the method,a sand-mudstone interbedded CounterTilt excavation slope in the Chongqing city of China was used as the research object.Twenty-four monitoring points deployed on this slope were monitored for surface displacement for 13 months.The spatial location of the monitoring points was discussed.The results show that the proposed method of slope deformation zoning and the optimized placement of monitoring points are feasible. 展开更多
关键词 Excavation slope surface displacement monitoring Spatial deformation analysis Clustering analysis Slope deformation partitioning monitoring point optimization
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Instantly Investigating the Adsorption of Polymeric Corrosion Inhibitors on Magnesium Alloys by Surface Analysis under Ambient Conditions
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作者 Livia M.Garcia Goncalves Larissa C.Sanchez +6 位作者 Stephani Stamboroski Yendry R.Corrales Urena Welchy Leite Cavalcanti Jorg Ihde Michael Noeske Marko Soltau Kai Brune 《Journal of Surface Engineered Materials and Advanced Technology》 2014年第5期282-294,共13页
Surface engineering of magnesium alloys requires adequate strategies, processes and materials permitting corrosion protection. Liquid formulations containing corrosion inhibitors often are to be optimized according to... Surface engineering of magnesium alloys requires adequate strategies, processes and materials permitting corrosion protection. Liquid formulations containing corrosion inhibitors often are to be optimized according to the demands of the respective substrate and following the service conditions during its application. As an interdisciplinary approach, a combination of several techniques for instantly monitoring or elaborately analyzing the surface state of magnesium was accomplished in order to characterize the performance of new adsorbing sustainable amphiphilic polymers which recently were developed to facilitate a multi-metal corrosion protection approach. The application of established techniques like Contact Angle measurements and X-ray Photoelectron Spectroscopy investigations was supplemented by introducing related and yet faster online-capable and larger-scale techniques like Aerosol Wetting Test and Optically Stimulated Electron Emission. Moreover, an inexpensive setup was configured for scaling the inset and the extent of degradation processes which occur at local electrochemical circuits and lead to hydrogen bubble formation. Using these analytical tools, changes of the surface state of emeried AM50 samples were investigated. Even in contact with water, being a moderate corrosive medium, the online techniques facilitated detecting surface degradation of the unprotected magnesium alloy within some seconds. In contrast, following contact with a 1 weight% formulation of a polymeric corrosion inhibitor, surface monitoring indicated a delay of the onset of degradation processes by approximately two orders of magnitude in time. Mainly based on the spectroscopic investigations, the corrosion inhibiting effects of the investigated polymer are attributed to the adsorption of a primary polymer layer with a thickness of a few nanometers which occurs within some seconds. Immersion of magnesium for several hours brings up a protective film with around ten nanometers thickness. 展开更多
关键词 Online surface monitoring Magnesium Alloys Polymeric Corrosion Inhibitors Fast Screening of Effective Formulations Optimization of Application Process
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Deep-learning-assisted online surface roughness monitoring in ultraprecision fly cutting
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作者 SHEHZAD Adeel RUI XiaoTing +4 位作者 DING YuanYuan ZHANG JianShu CHANG Yu LU HanJing CHEN YiHeng 《Science China(Technological Sciences)》 SCIE EI CAS CSCD 2024年第5期1482-1497,共16页
Surface roughness is one of the most critical attributes of machined components,especially those used in high-performance systems.Online surface roughness monitoring offers advancements comparable to post-process insp... Surface roughness is one of the most critical attributes of machined components,especially those used in high-performance systems.Online surface roughness monitoring offers advancements comparable to post-process inspection methods,reducing inspection time and costs and concurrently reducing the likelihood of defects.Currently,online monitoring approaches for surface roughness are constrained by several limitations,including the reliance on handcrafted feature extraction,which necessitates the involvement of human experts and entails time-consuming processes.Moreover,the prediction models trained under one set of cutting conditions exhibit poor performance when applied to different experimental settings.To address these challenges,this work presents a novel deep-learning-assisted online surface roughness monitoring method for ultraprecision fly cutting of copper workpieces under different cutting conditions.Tooltip acceleration signals were acquired during each cutting experiment to develop two datasets,and no handcrafted features were extracted.Five deep learning models were developed and evaluated using standard performance metrics.A convolutional neural network stacked on a long short-term memory network outperformed all other network models,yielding exceptional results,including a mean absolute percentage error as low as 1.51%and an R2value of 96.6%.Furthermore,the robustness of the proposed model was assessed via a validation cohort analysis using experimental data obtained using cutting parameters different from those previously employed.The performance of the model remained consistent and commendable under varied conditions,asserting its applicability in real-world scenarios. 展开更多
关键词 online surface roughness monitoring UPFC deep learning CNN-LSTM vibration signal
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Monitoring the surface evolution of a nanoporous core-shell electrocatalyst for oxygen reduction reaction
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作者 Ding Yi (丁轶) Luo Jun (罗俊) Liu Limin (刘利民) 《Science Foundation in China》 CAS 2017年第3期16-16,共1页
Subject Code:E01With the support by the National Natural Science Foundation of China,a collaborative study by the research groups led by Profs.Ding Yi(丁轶)and Luo Jun(罗俊)from the School of Materials Science and Eng... Subject Code:E01With the support by the National Natural Science Foundation of China,a collaborative study by the research groups led by Profs.Ding Yi(丁轶)and Luo Jun(罗俊)from the School of Materials Science and Engineering,Tianjin University of Technology and Prof.Liu Limin(刘利民)from Beijing 展开更多
关键词 monitoring the surface evolution of a nanoporous core-shell electrocatalyst for oxygen reduction reaction Pt
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Research on micr oseismic denoising method based on CBDNet
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作者 Jianchao Lin Jing Zheng +1 位作者 Dewei Li Zhixiang Wu 《Artificial Intelligence in Geosciences》 2023年第1期28-38,共11页
Naise sppeaion s an important part of micrseimic momiloring techomology.Sigmul and naise can be separated by denoisig and fihering to improve the subesequent amlys.In this paper,we popoase a new denoising method besed... Naise sppeaion s an important part of micrseimic momiloring techomology.Sigmul and naise can be separated by denoisig and fihering to improve the subesequent amlys.In this paper,we popoase a new denoising method besed on comvolutional blind denoising netwonk(CBDNet).The method is pnily modied for image denoising netwarck CBDNet to make it suitble for ome dimernsional data denoising At present,moast aof the existing ftering methods are proposed for the Gausian white nmoise denoising h comtrast the propesed method also leams the wind moise mnstruction noix trafc noie and mixed noise through the sategy of reidual leamig.The full anvohution subnetwark.is used to esimate the noise level,which significandy improves the sigmal.to nise mio and ibs perfommance of removing the comelated noises The model is trmined with dffent types of real naise and randoam noises The denoising esult is evaluated by comespanding indexes and compured with ofher denoing methods.The reuls show that the poposed method has better demoising performance than raditiomal methods,and it has a superior noise supession level for ail well construction noise and mixed noise.The proposed method can supress the inerference of time frequeney owedapped end to end and still he nmoise suppesion and event detection capability even if the sigmul is superimpased on other types of noie. 展开更多
关键词 DENOISING Microseismic Deep learning surface monitoring
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