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Typhoon Kompasu(2118)simulation with planetary boundary layer and cloud physics parameterization improvements
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作者 Xiaowei Tan Zhiqiu Gao Yubin Li 《Atmospheric and Oceanic Science Letters》 2026年第1期41-46,共6页
This study introduces a new ocean surface friction velocity scheme and a modified Thompson cloud microphysics parameterization scheme into the CMA-TYM model.The impact of these two parameterization schemes on the pred... This study introduces a new ocean surface friction velocity scheme and a modified Thompson cloud microphysics parameterization scheme into the CMA-TYM model.The impact of these two parameterization schemes on the prediction of the movement track and intensity of Typhoon Kompasu in 2021 is examined.Additionally,the possible reasons for their effects on tropical cyclone(TC)intensity prediction are analyzed.Statistical results show that both parameterization schemes improve the predictions of Typhoon Kompasu’s track and intensity.The influence on track prediction becomes evident after 60 h of model integration,while the significant positive impact on intensity prediction is observed after 66 h.Further analysis reveals that these two schemes affect the timing and magnitude of extreme TC intensity values by influencing the evolution of the TC’s warm-core structure. 展开更多
关键词 Tropical cyclone Numerical simulation Planetary boundary layer parameterization SCHEME Cloud physics scheme
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Advanced Meta-Heuristic Optimization for Accurate Photovoltaic Model Parameterization:A High-Accuracy Estimation Using Spider Wasp Optimization
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作者 Sarah M.Alhammad Diaa Salama AbdElminaam +1 位作者 Asmaa Rizk Ibrahim Ahmed Taha 《Computers, Materials & Continua》 2026年第3期2269-2303,共35页
Accurate parameter extraction of photovoltaic(PV)models plays a critical role in enabling precise performance prediction,optimal system sizing,and effective operational control under diverse environmental conditions.W... Accurate parameter extraction of photovoltaic(PV)models plays a critical role in enabling precise performance prediction,optimal system sizing,and effective operational control under diverse environmental conditions.While a wide range of metaheuristic optimisation techniques have been applied to this problem,many existing methods are hindered by slow convergence rates,susceptibility to premature stagnation,and reduced accuracy when applied to complex multi-diode PV configurations.These limitations can lead to suboptimal modelling,reducing the efficiency of PV system design and operation.In this work,we propose an enhanced hybrid optimisation approach,the modified Spider Wasp Optimization(mSWO)with Opposition-Based Learning algorithm,which integrates the exploration and exploitation capabilities of the Spider Wasp Optimization(SWO)metaheuristic with the diversityenhancing mechanism of Opposition-Based Learning(OBL).The hybridisation is designed to dynamically expand the search space coverage,avoid premature convergence,and improve both convergence speed and precision in highdimensional optimisation tasks.The mSWO algorithm is applied to three well-established PV configurations:the single diode model(SDM),the double diode model(DDM),and the triple diode model(TDM).Real experimental current-voltage(I-V)datasets from a commercial PV module under standard test conditions(STC)are used for evaluation.Comparative analysis is conducted against eighteen advanced metaheuristic algorithms,including BSDE,RLGBO,GWOCS,MFO,EO,TSA,and SCA.Performance metrics include minimum,mean,and maximum root mean square error(RMSE),standard deviation(SD),and convergence behaviour over 30 independent runs.The results reveal that mSWO consistently delivers superior accuracy and robustness across all PV models,achieving the lowest RMSE values of 0.000986022(SDM),0.000982884(DDM),and 0.000982529(TDM),with minimal SD values,indicating remarkable repeatability.Convergence analyses further show that mSWO reaches optimal solutions more rapidly and with fewer oscillations than all competing methods,with the performance gap widening as model complexity increases.These findings demonstrate that mSWO provides a scalable,computationally efficient,and highly reliable framework for PV parameter extraction.Its adaptability to models of growing complexity suggests strong potential for broader applications in renewable energy systems,including performance monitoring,fault detection,and intelligent control,thereby contributing to the optimisation of next-generation solar energy solutions. 展开更多
关键词 modified Spider Wasp Optimizer(mSWO) photovoltaic(PV)modeling meta-heuristic optimization solar energy parameter estimation renewable energy technologies
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Physically Constrained Adaptive Deep Learning for Ocean Vertical-Mixing Parameterization 被引量:1
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作者 Junjie FANG Xiaojie LI +4 位作者 Jin LI Zhanao HUANG Yongqiang YU Xiaomeng HUANG Xi WU 《Advances in Atmospheric Sciences》 2025年第1期165-177,共13页
Existing traditional ocean vertical-mixing schemes are empirically developed without a thorough understanding of the physical processes involved,resulting in a discrepancy between the parameterization and forecast res... Existing traditional ocean vertical-mixing schemes are empirically developed without a thorough understanding of the physical processes involved,resulting in a discrepancy between the parameterization and forecast results.The uncertainty in ocean-mixing parameterization is primarily responsible for the bias in ocean models.Benefiting from deep-learning technology,we design the Adaptive Fully Connected Module with an Inception module as the baseline to minimize bias.It adaptively extracts the best features through fully connected layers with different widths,and better learns the nonlinear relationship between input variables and parameterization fields.Moreover,to obtain more accurate results,we impose KPP(K-Profile Parameterization)and PP(Pacanowski–Philander)schemes as physical constraints to make the network parameterization process follow the basic physical laws more closely.Since model data are calculated with human experience,lacking some unknown physical processes,which may differ from the actual data,we use a decade-long time record of hydrological and turbulence observations in the tropical Pacific Ocean as training data.Combining physical constraints and a nonlinear activation function,our method catches its nonlinear change and better adapts to the oceanmixing parameterization process.The use of physical constraints can improve the final results. 展开更多
关键词 deep learning vertical-mixing parameterization ocean sciences adaptive network
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Large system study of chalcopyrite and pyrite flotation surfaces based on SCC-DFTB parameterization method
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作者 Jianhua Chen Yibing Zhang 《International Journal of Mining Science and Technology》 2025年第7期1037-1055,共19页
In recent years,the study of chalcopyrite and pyrite flotation surfaces using computational chemistry methods has made significant progress.However,current computational methods are limited by the small size of their ... In recent years,the study of chalcopyrite and pyrite flotation surfaces using computational chemistry methods has made significant progress.However,current computational methods are limited by the small size of their systems and insufficient consideration of hydration and temperature effects,making it difficult to fully replicate the real flotation environment of chalcopyrite and pyrite.In this study,we employed the self-consistent charge density functional tight-binding(SCC-DFTB)parameterization method to develop a parameter set,CuFeOrg,which includes the interactions between Cu-Fe-C-H-O-N-S-P-Zn elements,to investigate the surface interactions in large-scale flotation systems of chalcopyrite and pyrite.The results of bulk modulus,atomic displacement,band structure,surface relaxation,surface Mulliken charge distribution,and adsorption tests of typical flotation reagents on mineral surfaces demonstrate that CuFeOrg achieves DFT-level accuracy while significantly outperforming DFT in computational efficiency.By constructing large-scale hydration systems of mineral surfaces,as well as large-scale systems incorporating the combined interactions of mineral surfaces,flotation reagents,and hydration,we more realistically reproduce the actual flotation environment.Furthermore,the dynamic analysis results are consistent with mineral surface contact angle experiments.Additionally,CuFeOrg lays the foundation for future studies of more complex and diverse chalcopyrite and pyrite flotation surface systems. 展开更多
关键词 SCC-DFTB parameterization CHALCOPYRITE PYRITE Flotation surface Large-scale system
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Multivariate GARCH models with spherical parameterizations:an oil price application
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作者 Luca Vincenzo Ballestra Riccardo De Blasis Graziella Pacelli 《Financial Innovation》 2025年第1期1158-1177,共20页
In popular Baba-Engle-Kraft-Kroner(BEKK)and dynamic conditional correlation(DCC)multivariate generalized autoregressive conditional heteroskedasticity models,the large number of parameters and the requirement of posit... In popular Baba-Engle-Kraft-Kroner(BEKK)and dynamic conditional correlation(DCC)multivariate generalized autoregressive conditional heteroskedasticity models,the large number of parameters and the requirement of positive definiteness of the covariance and correlation matrices pose some difficulties during the estimation process.To avoid these issues,we propose two modifications to the BEKK and DCC models that employ two spherical parameterizations applied to the Cholesky decompositions of the covariance and correlation matrices.In their full specifications,the introduced Cholesky-BEKK and Cholesky-DCC models allow for a reduction in the number of parameters compared with their traditional counterparts.Moreover,the application of spherical transformation does not require the imposition of inequality constraints on the parameters during the estimation.An application to two crude oils,WTI and Brent,and the main exchange rate prices demonstrates that the Cholesky-BEKK and Cholesky-DCC models can capture the dynamics of covariances and correlations.In addition,the Kupiec test on different portfolio compositions confirms the satisfactory performance of the proposed models. 展开更多
关键词 BEKK Cholesky-GARCH Crude oils DCC Exchange rates Spherical parameterization
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Is convection-permitting model really better than cumulus parameterization for simulating summer precipitation in the Hengduan Mountains?——A case study of summer 2009
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作者 LIU Xudong CHEN Ying +3 位作者 CEN Sixian LU Yaqiong BING Jiawei MING Guijia 《Journal of Mountain Science》 2025年第12期4392-4407,共16页
The Hengduan Mountains are susceptible to hydrological disasters,with precipitation representing a significant risk factor.For effective disaster mitigation strategies,accurate rainfall simulation is essential,typical... The Hengduan Mountains are susceptible to hydrological disasters,with precipitation representing a significant risk factor.For effective disaster mitigation strategies,accurate rainfall simulation is essential,typically achieved through the use of numerical models.Some research has indicated that using a convection-permitting model(CPM)at high resolution(<4 km)could provide more precise rainfall estimates than traditional cumulus parameterization schemes(CPs)at lower resolutions,but CPM demands substantial computational resources.Therefore,to assess whether CPM maintains superior simulation accuracy,this study employed the Weather Research and Forecasting(WRF)model to simulate summer precipitation over the Hengduan Mountains in 2009,comparing CPM(4 km)and CPs(10 km)resolutions.The simulations were evaluated against satellite observations to quantify their performance differences.The results showed that all simulations overestimated amounts and frequency.The CPM outperformed most CPs,except the Tiedtke scheme,which exhibited Root Mean Square Errors(RMSEs)of 2.51 mm·day^(-1) for amount and 5.63%for frequency.The CPM had slightly higher RMSEs of 2.80 mm·day^(-1) and 6.98%,respectively.Both CPM and Tiedtke captured the spatial distribution of precipitation,but overestimations occurred in central and southern regions and underestimations in river valleys.While Tiedtke demonstrated superiority in various aspects,CPM provided more detail.Additionally,the study noted significant differences in diurnal variation at intermediate altitudes and found correlations between rainfall amounts and convective available potential energy(CAPE),frequency,and outgoing longwave radiation(OLR),respectively.Consequently,the Tiedtke scheme is suggested as a more resource-efficient alternative to CPM for simulating precipitation in the Hengduan Mountains. 展开更多
关键词 Convection-permitting model Cumulus parameterization Numerical simulation WRF
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Improved Simulation of Tropical Cyclone Soudelor(2015)Using a Modified Three-Dimensional Turbulence Parameterization
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作者 Gengjiao YE Xu ZHANG +3 位作者 Shanghong WANG Hui YU Xuesong ZHU Mengjuan LIU 《Advances in Atmospheric Sciences》 2025年第7期1407-1422,共16页
A modified three-dimensional turbulence parameterization scheme,implemented by replacing the conventional eddydiffusivity formulation with the H-gradient model,has shown good performance in representing the subgrid-sc... A modified three-dimensional turbulence parameterization scheme,implemented by replacing the conventional eddydiffusivity formulation with the H-gradient model,has shown good performance in representing the subgrid-scale(SGS)turbulent fluxes associated with convective clouds in idealized tropical cyclone(TC)simulations.To evaluate the capability of the modified scheme in simulating real TCs,two sets of simulations of TC Soudelor(2015),one with the modified scheme and the other with the original scheme,are conducted.Comparisons with observations and coarse-grained results from large eddy simulation benchmarks demonstrate that the modified scheme improves the forecasting of the intensity and structure,as well as the SGS turbulent fluxes of Soudelor.Using the modified turbulence scheme,a TC with stronger intensity,smaller size,a shallower but stronger inflow layer,and a more intense but less inclined convective updraft is simulated.The rapid intensification process and secondary eyewall features can also be captured better by the modified scheme.By analyzing the mechanism by which turbulent transport impacts the intensity and structure of TCs,it is shown that accurately representing the turbulent transport associated with convective clouds above the planetary boundary layer helps to initiate the TC spin-up process. 展开更多
关键词 tropical cyclone turbulence parameterization numerical simulation tropical cyclone intensity tropical cyclone structure tropical cyclone spin-up process
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Towards a physics-constrained and interpretable datadriven parameterization scheme for mesoscale eddies in ocean modeling
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作者 Guosong Wang Shuai Song +5 位作者 Min Hou Xinrong Wu Xidong Wang Yaming Zhao Song Pan Zhigang Gao 《Acta Oceanologica Sinica》 2025年第7期15-32,共18页
Mesoscale eddies play a pivotal role in deciphering the intricacies of ocean dynamics and the transport of heat,salt,and nutrients.Accurate representation of these eddies in ocean models is essential for improving mod... Mesoscale eddies play a pivotal role in deciphering the intricacies of ocean dynamics and the transport of heat,salt,and nutrients.Accurate representation of these eddies in ocean models is essential for improving model predictions.In this study,we propose a convolutional neural network(CNN)that combines data-driven techniques with physical principles to develop a robust and interpretable parameterization scheme for mesoscale eddies in ocean modeling.We use a highresolution reanalysis dataset to extract subgrid eddy momentum and then applying machine learning algorithms to identify patterns and correlations.To ensure physical consistency,we have introduced conservation of momentum constraints in our CNN parameterization scheme through soft and hard constraints.The interpretability analysis illustrate that the pre-trained CNN parameterization shows promising results in accurately solving the resolved mean velocity and effectively capturing the representation of unresolved subgrid turbulence processes.Furthermore,to validate the CNN parameterization scheme offline,we conduct simulations using the Massachusetts Institute of Technology general circulation model(MITgcm)ocean model.A series of experiments is conducted to compare the performance of the model with the CNN parameterization scheme and high-resolution simulations.The offline validation demonstrates the effectiveness of the CNN parameterization scheme in improving the representation of mesoscale eddies in the MITgcm ocean model.Incorporating the CNN parameterization scheme leads to better agreement with high-resolution simulations and a more accurate representation of the kinetic energy spectra. 展开更多
关键词 subgrid parameterization ocean mesoscale eddies physics-informed deep learning kinetic energy backscatter numerical simulation
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Stabilized adaptive waveform inversion for enhanced robustness in Gaussian penalty matrix parameterization and transcranial ultrasound imaging
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作者 Jun-Jie Zhao Shan-Mu Jin +2 位作者 Yue-Kun Wang Yu Wang Ya-Hui Peng 《Chinese Physics B》 2025年第8期606-621,共16页
Achieving high-resolution intracranial imaging in a safe and portable manner is critical for the diagnosis of intracranial diseases,preoperative planning of craniotomies and intraoperative management during craniotomy... Achieving high-resolution intracranial imaging in a safe and portable manner is critical for the diagnosis of intracranial diseases,preoperative planning of craniotomies and intraoperative management during craniotomy procedures.Adaptive waveform inversion(AWI),a variant of full waveform inversion(FWI),has shown potential in intracranial ultrasound imaging.However,the robustness of AWI is affected by the parameterization of the Gaussian penalty matrix and the challenges posed by transcranial scenarios.Conventional AWI struggles to produce accurate images in these cases,limiting its application in critical medical settings.To address these issues,we propose a stabilized adaptive waveform inversion(SAWI)method,which introduces a user-defined zero-lag position for theWiener filter.Numerical experiments demonstrate that SAWI can achieve accurate imaging under Gaussian penalty matrix parameter settings where AWI fails,perform successful transcranial imaging in configurations where AWI cannot,and maintain the same imaging accuracy as AWI.The advantage of this method is that it achieves these advancements without modifying the AWI framework or increasing computational costs,which helps to promote the application of AWI in medical fields,particularly in transcranial scenarios. 展开更多
关键词 ultrasound brain imaging full waveform inversion ROBUSTNESS parameterization
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Parameterization of turbulent mixing by deep learning in the continental shelf sea east of Hainan Island
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作者 Minghao HU Lingling XIE +1 位作者 Mingming LI Quanan ZHENG 《Journal of Oceanology and Limnology》 2025年第3期657-675,共19页
The uncertainty of ocean turbulent mixing parameterization comprises a significant challenge in ocean and climate models. A depth-dependent deep learning ocean turbulent mixing parameterization scheme was proposed wit... The uncertainty of ocean turbulent mixing parameterization comprises a significant challenge in ocean and climate models. A depth-dependent deep learning ocean turbulent mixing parameterization scheme was proposed with the hydrological and microstructure observations conducted in summer 2012 in the shelf sea east of Hainan Island, in South China Sea(SCS). The deep neural network model is used and incorporates the Richardson number Ri, the normalized depth D, the horizontal velocity speed U, the shear S^(2), the stratification N^(2), and the density ρ as input parameters. Comparing to the scheme without parameter D and region division, the depth-dependent scheme improves the prediction of the turbulent kinetic energy dissipation rate ε. The correlation coefficient(r) between predicted and observed lgε increases from 0.49 to 0.62, and the root mean square error decreases from 0.56 to 0.48. Comparing to the traditional physics-driven parameterization schemes, such as the G89 and MG03, the data-driven approach achieves higher accuracy and generalization. The SHapley Additive Explanations(SHAP) framework analysis reveals the importance descending order of the input parameters as: ρ, D, U, N^(2), S^(2), and Ri in the whole depth, while D is most important in the upper and bottom boundary layers(D≤0.3&D≥0.65) and least important in middle layer(0.3<D<0.65). The research shows applicability of constructing deep learning-based ocean turbulent mixing parameterization schemes using limited observational data and well-established physical processes. 展开更多
关键词 ocean turbulent mixing parameterization continental shelf sea deep learning SHapley Additive Explanations(SHAP)
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Cloud Droplet Spectrum Evolution Driven by Aerosol Activation and Vapor Condensation:A Comparative Study of Different Bulk Parameterization Schemes
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作者 Jun ZHANG Jiming SUN +2 位作者 Yu KONG Wei DENG Wenhao HU 《Advances in Atmospheric Sciences》 2025年第7期1316-1332,共17页
Accurate descriptions of cloud droplet spectra from aerosol activation to vapor condensation using microphysical parameterization schemes are crucial for numerical simulations of precipitation and climate change in we... Accurate descriptions of cloud droplet spectra from aerosol activation to vapor condensation using microphysical parameterization schemes are crucial for numerical simulations of precipitation and climate change in weather forecasting and climate prediction models.Hence,the latest activation and triple-moment condensation schemes were combined to simulate and analyze the evolution characteristics of a cloud droplet spectrum from activation to condensation and compared with a high-resolution Lagrangian bin model and the current double-moment condensation schemes,in which the spectral shape parameter is fixed or diagnosed by an empirical formula.The results demonstrate that the latest schemes effectively capture the evolution characteristics of the cloud droplet spectrum during activation and condensation,which is in line with the performance of the bin model.The simulation of the latest activation and condensation schemes in a parcel model shows that the cloud droplet spectrum gradually widens and exhibits a multimodal distribution during the activation process,accompanied by a decrease in the spectral shape and slope parameters over time.Conversely,during the condensation process,the cloud droplet spectrum gradually narrows,resulting in increases in the spectral shape and slope parameters.However,these double-moment schemes fail to accurately replicate the evolution of the cloud droplet spectrum and its multimodal distribution characteristics.Furthermore,the latest schemes were coupled into a 1.5D cumulus model,and an observation case was simulated.The simulations confirm that the cloud droplet spectrum appears wider at the supersaturated cloud base and cloud top due to activation,while it becomes narrower at the middle altitudes of the cloud due to condensation growth. 展开更多
关键词 cloud microphysical parameterization cloud droplet spectrum aerosol activation cloud droplet condensation
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MS-GAN:3D deep generative model for multispecies propeller parameterization and generation
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作者 Chenyu WANG Bo CHEN +2 位作者 Haiyang FU Yitong FAN Weipeng LI 《Chinese Journal of Aeronautics》 2025年第6期382-395,共14页
In this study,we introduce a deep generative model,named Multi-Species Generative Adversarial Network(MS-GAN),which is developed to extract the low-dimensional manifold of three-dimensional multi-species surfaces.In t... In this study,we introduce a deep generative model,named Multi-Species Generative Adversarial Network(MS-GAN),which is developed to extract the low-dimensional manifold of three-dimensional multi-species surfaces.In the development of MS-GAN,we extend the freeform deformation by incorporating principal component analysis to increase the non-linear deformation ability while maintaining geometric smoothness.The implicit information of multiple baselines is embedded in the feature extraction layers,to enhance the diversity and parameterization of multi-species dataset.Furthermore,Wasserstein GAN with a gradient penalty is used to ensure the stability and convergence of the training networks.Two experiments,ruled surfaces and propeller blade surfaces,are performed to demonstrate the advantages and superiorities of MS-GAN. 展开更多
关键词 PROPELLERS Dimensionality reduction Parameterize Artificial intelligence Generative design
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Efficient Parameterization for Knowledge Graph Embedding Using Hierarchical Attention Network
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作者 Zhen-Yu Chen Feng-Chi Liu +2 位作者 Xin Wang Cheng-Hsiung Lee Ching-Sheng Lin 《Computers, Materials & Continua》 2025年第3期4287-4300,共14页
In the domain of knowledge graph embedding,conventional approaches typically transform entities and relations into continuous vector spaces.However,parameter efficiency becomes increasingly crucial when dealing with l... In the domain of knowledge graph embedding,conventional approaches typically transform entities and relations into continuous vector spaces.However,parameter efficiency becomes increasingly crucial when dealing with large-scale knowledge graphs that contain vast numbers of entities and relations.In particular,resource-intensive embeddings often lead to increased computational costs,and may limit scalability and adaptability in practical environ-ments,such as in low-resource settings or real-world applications.This paper explores an approach to knowledge graph representation learning that leverages small,reserved entities and relation sets for parameter-efficient embedding.We introduce a hierarchical attention network designed to refine and maximize the representational quality of embeddings by selectively focusing on these reserved sets,thereby reducing model complexity.Empirical assessments validate that our model achieves high performance on the benchmark dataset with fewer parameters and smaller embedding dimensions.The ablation studies further highlight the impact and contribution of each component in the proposed hierarchical attention structure. 展开更多
关键词 Knowledge graph embedding parameter efficiency representation learning reserved entity and relation sets hierarchical attention network
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基于改进SDU-YOLOv8的军事飞机目标检测算法
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作者 赵海丽 包大泱 +3 位作者 张从豪 刘鹏 王彩霞 景文博 《兵工学报》 北大核心 2026年第1期296-306,共11页
针对空天背景下军事飞机目标检测中存在的低对比度、小尺寸及形态多变导致的漏检率高、特征交互不足等问题,提出基于YOLOv8改进的SDU-YOLOv8网络。通过构建SSGBlock深度特征提取模块、动态可学习的Dy-RepGFPN特征融合网络以及参数共享的... 针对空天背景下军事飞机目标检测中存在的低对比度、小尺寸及形态多变导致的漏检率高、特征交互不足等问题,提出基于YOLOv8改进的SDU-YOLOv8网络。通过构建SSGBlock深度特征提取模块、动态可学习的Dy-RepGFPN特征融合网络以及参数共享的UCDN-Head检测头,实现特征提取、融合与检测头的协同优化。在自建军事飞机数据集上的实验结果表明,SDU-YOLOv8网络较基准YOLOv8的mAP@0.5提升2.5%,达到95.7%,参数量减少6.7%,计算量降低9.9%,在小尺寸、低对比度及形变目标的检测鲁棒性显著增强;新方法在保持轻量化的同时实现了检测精度与效率的均衡优化,为空天侦察场景下的军事飞机检测提供了高效解决方案。 展开更多
关键词 军事飞机目标检测 YOLOv8 深度特征提取 动态上采样 统一参数化
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双向水平轴潮流能水轮机翼型优化设计
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作者 王树齐 卞百福 +1 位作者 唐吉 刘峰 《哈尔滨工程大学学报》 北大核心 2026年第1期28-34,共7页
为适应潮流能的双向性和水平轴潮流能水轮机的可靠性,本文以NACA0012翼型为基础翼型,通过截取、拼接构造完全对称翼型,并构建以翼型升阻比为优化目标的自动寻优模型。该模型基于翼型类别形状函数变换参数化方法,并结合ICEM网格划分、Flu... 为适应潮流能的双向性和水平轴潮流能水轮机的可靠性,本文以NACA0012翼型为基础翼型,通过截取、拼接构造完全对称翼型,并构建以翼型升阻比为优化目标的自动寻优模型。该模型基于翼型类别形状函数变换参数化方法,并结合ICEM网格划分、Fluent数值模拟和多岛遗传算法,最终得到适用于水平轴潮流能水轮机双向运行的高升阻比翼型。优化后的完全对称翼型相比基础翼型更加扁平,最大相对厚度减少了49.65%。同时,升力系数提高了10.77%,且升阻比提升46.24%。通过分析翼型表面压力分布,发现优化后的翼型能有效地抑制翼型吸力面的流动分离现象,使翼型整体水动性能得到大幅提升。研究成果可为水平轴潮流能水轮机叶片翼型优化研究提供参考。 展开更多
关键词 潮流能水轮机 完全对称翼型 CST参数化 多岛遗传算法 优化设计 数值模拟 升阻比 压力系数
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Application of the two different salinity parameterization schemes in the sea ice model
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作者 王庆元 李琰 +3 位作者 李清泉 王兰宁 牟林 易笑园 《Marine Science Bulletin》 CAS 2013年第2期3-14,共12页
In this study, we mainly introduce two salinity parameterization schemes used in Sea Ice Simulator (SIS), that is, isosaline scheme and salinity profile scheme. Comparing the equation of isosaline scheme with that o... In this study, we mainly introduce two salinity parameterization schemes used in Sea Ice Simulator (SIS), that is, isosaline scheme and salinity profile scheme. Comparing the equation of isosaline scheme with that of salinity profile scheme, we found that there was one different term between the two schemes named the salinity different term. The thermodynamic effect of the salinity difference term on sea ice thickness and sea ice concentration showed that: in the freezing processes from November to next May, the sea ice temperature could rise on the influence of the salinity difference term and restrain sea ice freezing; at the first melting phase from June to August, the upper ice melting rate was faster than the lower ice melting rate. Then sea ice temperature could rise and accelerate the sea ice melting; at the second melting phase from September to October, the upper ice melting rate was slower than the lower ice melting rate, then sea ice temperature could decrease and restrain sea ice melting. However, the effect of the salinity difference term on the sea ice thickness and sea ice concentration was weak. To analyze the impacts of the salinity different term on Arctic sea ice thickness and sea ice concentration, we also designed several experiments by introducing the two salinity parameterizations to the ice-ocean coupled model, Modular Ocean Model (MOM4), respectively. The simulated results confirmed the previous results of formula derivation. 展开更多
关键词 ARCTIC sea ice model salinity parameterization scheme
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宽域乘波翼身融合布局设计与优化研究
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作者 郭帅旗 刘文 +3 位作者 刘洋 聂晗 王发民 张陈安 《力学学报》 北大核心 2026年第1期221-243,共23页
宽域高超声速飞行器是当前世界航空航天强国抢占制高点的重点方向.宽域乘波翼身融合布局能够同时具备较好的高超声速乘波特性和低速机翼环量/涡升力特性,可以有效缓解高低速气动设计的矛盾.针对宽域乘波翼身融合布局的设计与优化问题,... 宽域高超声速飞行器是当前世界航空航天强国抢占制高点的重点方向.宽域乘波翼身融合布局能够同时具备较好的高超声速乘波特性和低速机翼环量/涡升力特性,可以有效缓解高低速气动设计的矛盾.针对宽域乘波翼身融合布局的设计与优化问题,提出了一种基于乘波体流线追踪和类别形状函数(CST)方法的全参数化几何表征方法,并构建了一种适用于亚声速、超声速和高超声速的宽域气动力模型,可以高效可靠评估该类布局的宽域气动特性.通过遗传算法优化框架,开展了面向不同约束和目标的宽域乘波翼身融合布局优化研究,包括高超声速单点优化、超-高超声速多点加权优化及亚声速升力约束下的宽域多点优化.优化结果表明,通过增加乘波前体长度占比,可以提升乘波前体的设计点升阻比,进而有效提升高超声速最优布局的升阻比,但超声速最大升阻比会显著降低;超-高超声速多点优化的加权权重分配直接影响最优布局特征,高超声速升阻比权重系数越小,机翼占比越大而乘波前体占比越小,相比高超声速最优布局,超声速最优布局的高超声速升阻比降低12.30%,但超声速升阻比提高34.40%;引入亚声速大攻角升力约束后,优化布局在亚声速升力提高24.60%的同时,高超声速设计升阻比提升2.76%,而超声速设计升阻比降低8.39%. 展开更多
关键词 宽域气动布局 乘波体 几何参数化 气动力模型 涡升力
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一种基于YOLO的轻量型多尺度船舶检测算法
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作者 张开发 王玫 +2 位作者 神显豪 唐超尘 阚瑞祥 《电讯技术》 北大核心 2026年第1期47-54,共8页
针对船舶检测中暴露出的参数量大、模型复杂、小目标检测效果欠佳的问题,提出了一种基于结构重参数化的轻量型船舶检测算法:RA-YOLO。首先,引入基于Ghost改进的结构重参数化网络RepGhost降低模型复杂度,提高检测效率实现轻量化。然后,采... 针对船舶检测中暴露出的参数量大、模型复杂、小目标检测效果欠佳的问题,提出了一种基于结构重参数化的轻量型船舶检测算法:RA-YOLO。首先,引入基于Ghost改进的结构重参数化网络RepGhost降低模型复杂度,提高检测效率实现轻量化。然后,采用Adown多尺度特征融合方案将深层特征和浅层特征整合,增强对语义线索的理解能力,提高小目标的检测精度。最后,为了得到高质量的预测框,提高对目标船舶的定位精度,使用EIoU损失函数优化边框回归。改进后的RA-YOLO召回率和mAP@50分别达到了83.4%、91.1%,而模型参数总量和每秒浮点运算次数则减少了30.0%和20.7%,提高了在资源有限设备上部署的可行性。 展开更多
关键词 目标检测 船舶检测 结构重参数化 特征融合
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非标圆柱齿轮精准参数化模型构建
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作者 胡升阳 王世宇 +2 位作者 沈刚 曾云 方宗德 《机械设计》 北大核心 2026年第1期21-27,共7页
随着工业设备的发展,满足定制化要求的非标圆柱齿轮较标准圆柱齿轮具备更加广阔的应用前景。然而,非标圆柱齿轮因压力角、齿顶高、齿根高及变位系数等参数的改变,将导致齿形和齿根过渡曲线的变化,引发齿面承载能力、齿根弯曲应力和传动... 随着工业设备的发展,满足定制化要求的非标圆柱齿轮较标准圆柱齿轮具备更加广阔的应用前景。然而,非标圆柱齿轮因压力角、齿顶高、齿根高及变位系数等参数的改变,将导致齿形和齿根过渡曲线的变化,引发齿面承载能力、齿根弯曲应力和传动性能的转变。现有评估方法依据ISO标准齿轮等效经验公式及三维软件建模分析等存在步骤繁琐低效且精度低的问题,通过推导非标圆柱齿轮刀具加工过程,构建参数化模型,实现了复杂非标圆柱齿轮的齿形实时精准变化及高效分析仿真。 展开更多
关键词 非标圆柱齿轮 齿廓 过渡曲线 参数化 校核
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3D打印个性化多孔椎间融合器的参数化设计
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作者 王艺衡 何坤金 +5 位作者 张聪 郭庆亮 承敏钢 高瑞芳 张能文 刘云龙 《计算机集成制造系统》 北大核心 2026年第1期81-90,共10页
由于传统的椎间融合器通常采用标准化设计,难以完全适应患者的个体性差异,从而导致由于形状不匹配引发椎体终板界面应力集中的问题,进而引发术后椎间融合器移位和下沉等并发症。为解决传统椎间融合器存在的问题,提出3D打印个性化多孔椎... 由于传统的椎间融合器通常采用标准化设计,难以完全适应患者的个体性差异,从而导致由于形状不匹配引发椎体终板界面应力集中的问题,进而引发术后椎间融合器移位和下沉等并发症。为解决传统椎间融合器存在的问题,提出3D打印个性化多孔椎间融合器的参数化设计方法。首先,针对于复杂多孔结构设计,提出多层级联合参数化的设计方法构建晶胞模型,为椎间融合器设计不同的晶胞和孔隙结构,满足患者的个性化需求;其次,针对不同晶胞采用不同扩展方式,提出自适应扩展的方式构建多孔椎间融合器,提高了制造效率;最后,提出椎间融合器边界处理算法,解决椎间融合器在构建过程中存在的边界断杆问题,优化椎间融合器力学性能。实验结果表明,所提设计方法可以提高椎间融合器设计效率和稳定性,为椎间融合器的个性化制造提供有力支持。 展开更多
关键词 参数化 椎间融合器 多孔结构 晶胞 泰森多边形
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