期刊文献+
共找到20,109篇文章
< 1 2 250 >
每页显示 20 50 100
Hybrid Bayesian-Machine Learning Framework for Multi-Profile Atmospheric Retrieval from Hyperspectral Infrared Observations
1
作者 Senyi KONG Lei BI +2 位作者 Wei HAN Ruoying YIN Honglei ZHANG 《Advances in Atmospheric Sciences》 2026年第2期373-389,共17页
Accurate retrieval of atmospheric vertical profiles is critical for improving weather prediction and climate monitoring.However,the complexity of atmospheric processes in cloudy regions poses challenges compared to th... Accurate retrieval of atmospheric vertical profiles is critical for improving weather prediction and climate monitoring.However,the complexity of atmospheric processes in cloudy regions poses challenges compared to those of clear sky scenarios.This study presents a novel framework that integrates Bayesian optimization and machine learning approaches to retrieve atmospheric vertical profiles—including temperature,humidity,ozone concentration,cloud fraction,ice water content(IWC),and liquid water content(LWC)—from hyperspectral infrared observations.Specifically,a Bayesian method was used to refine ERA5 reanalysis data by minimizing brightness temperature(BT)discrepancies against FY-4B Geostationary Interferometric Infrared Sounder(GIIRS)observations,generating a high-quality profile database(~2.8 million profiles)across diverse weather systems.The optimized profiles improve radiative consistency,reducing BT biases from>40 K to<10 K in cloudy regions.To further overcome the limitations of the Bayesian method,we developed a Transformer-Resnet hybrid model(TERNet),which achieved superior performance with RMSE values of 1.61 K(temperature),5.77%(humidity),and 2.25×10^(–6)/6.09×10^(–6)kg kg^(–1)(IWC/LWC)across the entire vertical levels in all-sky conditions.The TERNet outperforms both ERA5 in cloud parameter retrieval and the GIIRS L2 product in thermodynamic profiling.Independent verification with radiosonde and Cloud-Aerosol Lidar and Infrared Pathfinder Satellite Observations(CALIPSO)datasets confirms the framework's reliability across various meteorological regimes.This work demonstrates the capability of combining physics-informed Bayesian methods with data-driven machine learning to fully exploit hyperspectral IR data. 展开更多
关键词 bayesian machine learning RETRIEVAL GIIRS atmospheric profile
在线阅读 下载PDF
CsPbI_(2)Br薄膜的双源共蒸原位GIWAXS研究
2
作者 张君瀚 何丙辰 +3 位作者 苏圳煌 王晨越 符美荣 高兴宇 《核技术》 北大核心 2026年第2期1-9,共9页
钙钛矿薄膜的制备工艺对薄膜质量及其器件性能有重要影响。利用同步辐射掠入射广角X射线散射(Grazing-Incidence Wide Angle X-ray Scattering,GIWAXS)原位监测钙钛矿薄膜的生长过程,对于优化制备工艺具有重要的指导意义。关于溶液法制... 钙钛矿薄膜的制备工艺对薄膜质量及其器件性能有重要影响。利用同步辐射掠入射广角X射线散射(Grazing-Incidence Wide Angle X-ray Scattering,GIWAXS)原位监测钙钛矿薄膜的生长过程,对于优化制备工艺具有重要的指导意义。关于溶液法制备的钙钛矿薄膜,原位GIWAXS研究已取得显著的进展,然而真空蒸镀法却一直缺乏专门的原位表征系统。为此,开发了一款双源共蒸真空系统,该系统的真空度、运动精度、衍射接收角度等各项指标都满足同步辐射线站的GIWAXS原位实验要求。基于该系统,在上海光源衍射线站采用GIWAXS观测了基底温度分别为25℃和85℃时双源共蒸CsPbI_(2)Br钙钛矿薄膜沉积、退火的过程。实验结果表明:基底预加热至85℃,有利于在沉积过程中先形成高结晶度的PbI_(2),从而在退火过程中促进钙钛矿的形成。在85℃基底上沉积后,380℃退火最终形成纯净且具有良好取向的黑相CsPbI_(2)Br。相较于25℃基底,85℃基底钙钛矿的结晶质量有明显提升。该双源共蒸系统与X射线光电子能谱和紫外光电子能谱测试真空系统串联进行原位光电子能谱测量,结果证实了黑相CsPbI_(2)Br的成功制备。该研究为优化钙钛矿蒸镀工艺提供了重要依据和新的思路。 展开更多
关键词 全无机CsPbI_(2)br钙钛矿 双源共蒸 原位GIWAXS
原文传递
Hybrid quantum–classical multi-agent decision-making framework based on hierarchical Bayesian networks in the noisy intermediate-scale quantum era
3
作者 Hao Shi Chenghao Han +1 位作者 Peng Wang Ming Zhang 《Chinese Physics B》 2025年第12期61-74,共14页
Although quantum Bayesian networks provide a promising paradigm for multi-agent decision-making,their practical application faces two challenges in the noisy intermediate-scale quantum(NISQ)era.Limited qubit resources... Although quantum Bayesian networks provide a promising paradigm for multi-agent decision-making,their practical application faces two challenges in the noisy intermediate-scale quantum(NISQ)era.Limited qubit resources restrict direct application to large-scale inference tasks.Additionally,no quantum methods are currently available for multi-agent collaborative decision-making.To address these,we propose a hybrid quantum–classical multi-agent decision-making framework based on hierarchical Bayesian networks,comprising two novel methods.The first one is a hybrid quantum–classical inference method based on hierarchical Bayesian networks.It decomposes large-scale hierarchical Bayesian networks into modular subnetworks.The inference for each subnetwork can be performed on NISQ devices,and the intermediate results are converted into classical messages for cross-layer transmission.The second one is a multi-agent decision-making method using the variational quantum eigensolver(VQE)in the influence diagram.This method models the collaborative decision-making with the influence diagram and encodes the expected utility of diverse actions into a Hamiltonian and subsequently determines the intra-group optimal action efficiently.Experimental validation on the IonQ quantum simulator demonstrates that the hierarchical method outperforms the non-hierarchical method at the functional inference level,and the VQE method can obtain the optimal strategy exactly at the collaborative decision-making level.Our research not only extends the application of quantum computing to multi-agent decision-making but also provides a practical solution for the NISQ era. 展开更多
关键词 quantum bayesian networks multi-agent decision-making hybrid quantum–classical algorithms hierarchical bayesian networks
原文传递
Parameterization of the 3‑PG model for Quercus mongolica by using tree‑ring data and Bayesian calibration
4
作者 Wen Nie Qi Wang +7 位作者 Ruizhi Huang Shaowei Yang Yipei Zhao Jingyi Sun Xiangfen Cheng Zuyuan Wang Wenfa Xiao Jianfeng Liu 《Journal of Forestry Research》 2025年第6期69-81,共13页
Although Quercus mongolica is a widely distributed,economically and ecologically important deciduous tree in northern China,models to accurately predict stand growth at a regional scale are limited.The physiological p... Although Quercus mongolica is a widely distributed,economically and ecologically important deciduous tree in northern China,models to accurately predict stand growth at a regional scale are limited.The physiological process model(3-PG)has the potential to predict stand growth dynamics under varying site conditions and climate change scenarios.Here,we used field inventory,tree ring sampling,and Bayesian calibration to parameterize a model for Q.mongolica.Stand volume and productivity were then predicted under present conditions and three future climate scenarios(RCP26,RCP45 and RCP85).Our results demonstrated that after Bayesian calibration,the posterior ranges of the sensitivity parameters apha Cx,wSx1000 and pRn accounted for 34%,45%and 65%,respectively,of their prior range.Calibration and validation results revealed a strong correlation between predicted and measured values(R^(2)>0.87,P<0.01),with<20%bias for all growth indicators.Stand volume was projected to increase by 145%and productivity by 80%by the year 2100 under the RCP85 scenario,although these projections may vary across regions.The present study developed a tailored set of 3-PG model parameters for Q.mongolica,based on a comprehensive range of climate conditions,stand structure,and age classes.These parameters offer a scientific basis to accurately predict growth of other monospecific oak or mixed-species stands. 展开更多
关键词 Quercus mongolica 3-PG model bayesian calibration Productivity Growth forecast
在线阅读 下载PDF
Dynamic Reliability Assessment Approach for Deepwater Subsea Wellhead Systems via Hybrid Bayesian Networks
5
作者 LI Jia-yi CHANG Yuan-jiang +2 位作者 LIU Xiu-quan XU Liang-bin CHEN Guo-ming 《China Ocean Engineering》 2025年第1期100-110,共11页
The deepwater subsea wellhead(SW)system is the foundation for the construction of oil and gas wells and the crucial channel for operation.During riser connection operation,the SW system is subjected to cyclic dynamic ... The deepwater subsea wellhead(SW)system is the foundation for the construction of oil and gas wells and the crucial channel for operation.During riser connection operation,the SW system is subjected to cyclic dynamic loads which cause fatigue damage to the SW system,and continuously accumulated fatigue damage leads to fatigue failure of the SW system,rupture,and even blowout accidents.This paper proposes a hybrid Bayesian network(HBN)-based dynamic reliability assessment approach for deepwater SW systems during their service life.In the proposed approach,the relationship between the accumulation of fatigue damage and the fatigue failure probability of the SW system is predicted,only considering normal conditions.The HBN model,which includes the accumulation of fatigue damage under normal conditions and the other factors affecting the fatigue of the SW system,is subsequently developed.When predictive and diagnostic analysis techniques are adopted,the dynamic reliability of the SW system is achieved,and the most influential factors are determined.Finally,corresponding safety control measures are proposed to improve the reliability of the SW system effectively.The results illustrate that the fatigue failure speed increases rapidly when the accumulation fatigue damage is larger than 0.45 under normal conditions and that the reliability of the SW system is larger than 94%within the design life. 展开更多
关键词 deepwater subsea wellhead system RELIABILITY accumulation fatigue damage hybrid bayesian network
在线阅读 下载PDF
Modeling forest recovery in southeast Brazil's mountain biomes:Bayesian analysis of the diffusive-logistic growth(DLG)approach
6
作者 Victor B.F.RAMOS Guilherme J.C.GOMES 《Journal of Mountain Science》 2025年第10期3670-3689,共20页
This study investigated forest recovery in the Atlantic Rainforest and Rupestrian Grassland of Brazil using the diffusive-logistic growth(DLG)model.This model simulates vegetation growth in the two mountain biomes con... This study investigated forest recovery in the Atlantic Rainforest and Rupestrian Grassland of Brazil using the diffusive-logistic growth(DLG)model.This model simulates vegetation growth in the two mountain biomes considering spatial location,time,and two key parameters:diffusion rate and growth rate.A Bayesian framework is employed to analyze the model's parameters and assess prediction uncertainties.Satellite imagery from 1992 and 2022 was used for model calibration and validation.By solving the DLG model using the finite difference method,we predicted a 6.6%–51.1%increase in vegetation density for the Atlantic Rainforest and a 5.3%–99.9%increase for the Rupestrian Grassland over 30 years,with the latter showing slower recovery but achieving a better model fit(lower RMSE)compared to the Atlantic Rainforest.The Bayesian approach revealed well-defined parameter distributions and lower parameter values for the Rupestrian Grassland,supporting the slower recovery prediction.Importantly,the model achieved good agreement with observed vegetation patterns in unseen validation data for both biomes.While there were minor spatial variations in accuracy,the overall distributions of predicted and observed vegetation density were comparable.Furthermore,this study highlights the importance of considering uncertainty in model predictions.Bayesian inference allowed us to quantify this uncertainty,demonstrating that the model's performance can vary across locations.Our approach provides valuable insights into forest regeneration process uncertainties,enabling comparisons of modeled scenarios at different recovery stages for better decision-making in these critical mountain biomes. 展开更多
关键词 Atlantic rainforest Diffusive-logistic growth model Soil-Adjusted Vegetation Index Rupestrian Grassland Forest recovery bayesian inference
原文传递
An adaptive Bayesian randomized controlled trial of traditional Chinese medicine in progressive pulmonary fibrosis:Rationale and study design
7
作者 Cheng Zhang Yi-sen Nie +8 位作者 Chuan-tao Zhang Hong-jing Yang Hao-ran Zhang Wei Xiao Guang-fu Cui Jia Li Shuang-jing Li Qing-song Huang Shi-yan Yan 《Journal of Integrative Medicine》 2025年第2期138-144,共7页
patients with PPF.TCM treatments are typically diverse and individualized,requiring urgent development of efficient and precise design strategies to identify effective treatment options.We designed an innovative Bayes... patients with PPF.TCM treatments are typically diverse and individualized,requiring urgent development of efficient and precise design strategies to identify effective treatment options.We designed an innovative Bayesian adaptive two-stage trial,hoping to provide new ideas for the rapid evaluation of the effectiveness of TCM in PPF.An open-label,two-stage,adaptive Bayesian randomized controlled trial will be conducted in China.Based on Bayesian methods,the trial will employ response-adaptive randomization to allocate patients to study groups based on data collected over the course of the trial.The adaptive Bayesian trial design will employ a Bayesian hierarchical model with“stopping”and“continuation”criteria once a predetermined posterior probability of superiority or futility and a decision threshold are reached.The trial can be implemented more efficiently by sharing the master protocol and organizational management mechanisms of the sub-trial we have implemented.The primary patient-reported outcome is a change in the Leicester Cough Questionnaire score,reflecting an improvement in cough-specific quality of life.The adaptive Bayesian trial design may be a promising method to facilitate the rapid clinical evaluation of TCM effectiveness for PPF,and will provide an example for how to evaluate TCM effectiveness in rare and refractory diseases.However,due to the complexity of the trial implementation,sufficient simulation analysis by professional statistical analysts is required to construct a Bayesian response-adaptive randomization procedure for timely response.Moreover,detailed standard operating procedures need to be developed to ensure the feasibility of the trial implementation. 展开更多
关键词 Progressive pulmonary fibrosis Traditional Chinese medicine Adaptive trial design bayesian model
原文传递
Automated Brain Tumor Classification from Magnetic Resonance Images Using Fine-Tuned Efficient Net-B6 with Bayesian Optimization Approach
8
作者 Sarfaraz Abdul Sattar Natha Mohammad Siraj +2 位作者 Majid Altamimi Adamali Shah Maqsood Mahmud 《Computer Modeling in Engineering & Sciences》 2025年第12期4179-4201,共23页
A brain tumor is a disease in which abnormal cells form a tumor in the brain.They are rare and can take many forms,making them difficult to treat,and the survival rate of affected patients is low.Magnetic resonance im... A brain tumor is a disease in which abnormal cells form a tumor in the brain.They are rare and can take many forms,making them difficult to treat,and the survival rate of affected patients is low.Magnetic resonance imaging(MRI)is a crucial tool for diagnosing and localizing brain tumors.However,themanual interpretation of MRI images is tedious and prone to error.As artificial intelligence advances rapidly,DL techniques are increasingly used in medical imaging to accurately detect and diagnose brain tumors.In this study,we introduce a deep convolutional neural network(DCNN)framework for brain tumor classification that uses EfficientNet-B6 as the backbone architecture and adds additional layers.The model achieved an accuracy of 99.10%on the public Brain Tumor MRI datasets,and we performed an ablation study to determine the optimal batch size,optimizer,loss function,and learning rate to maximize the accuracy and robustness of the model,followed by K-Fold cross-validation and testing the model on an independent dataset,and tuning Hyperparameters with Bayesian Optimization to further enhance the performance.When comparing our model to other deep learning(DL)models such as VGG19,MobileNetv2,ResNet50,InceptionV3,and DenseNet201,aswell as variants of the EfficientNetmodel(B1–B7),the results showthat our proposedmodel outperforms all othermodels.Our investigational results demonstrate superiority in terms of precision,recall/sensitivity,accuracy,specificity,and F1-score.Such innovations can potentially enhance clinical decision-making and patient treatment in neurooncological settings. 展开更多
关键词 brain tumor classification convolutional neural network magnetic resonance imaging deep learning bayesian optimization
在线阅读 下载PDF
Quadrant categorization of spillover determinants of sovereign risk of BRICIT nations:a Bayesian approach
9
作者 Pawan Kumar Vipul Kumar Singh 《Financial Innovation》 2025年第1期1778-1799,共22页
This study investigates the determinants that drive the volatility of the credit default swaps(CDS)of BRICIT(Brazil,Russia,India,China,Indonesia,and Turkey)nations as a proxy measure for sovereign risk.On the existenc... This study investigates the determinants that drive the volatility of the credit default swaps(CDS)of BRICIT(Brazil,Russia,India,China,Indonesia,and Turkey)nations as a proxy measure for sovereign risk.On the existence of cointegration,an unrestricted error correction model integrated with the autoregressive distributed lag(ARDL)model is applied to measure the short-run and long-run dynamics empirically.The study utilizes the Bayesian global vector autoregression methodology for cross-border spillover estimation.The study also suggests a strategy for policymakers for quadrant categorization to mitigate risk arising from cross-border spillover.The result of ARDL indicates that the global macroeconomic variables affect the BRICIT CDS more than domestic macroeconomic determinants,with Indian CDS being the most sensitive to Fed tapering.Notably,China’s CDS is the most sensitive to shocks,with the CDS volatility primarily driven by China’s geopolitical risk.Russian CDS is more sensitive to real effective exchange rates due to severe ruble depreciation than crude oil,despite Russia being a major oil exporter.The quadrant categorization indicates that the Indonesian stock market index is most interconnected with BRICIT CDS,while the Turkish long-term interest rates send the highest intensity spillover across BRICIT nations. 展开更多
关键词 bayesian global vector autoregression(B-GVAR) brICIT(brazil RUSSIA INDIA China Indonesia and Turkey) Credit default swaps(CDS) Sovereign risk SPILLOVER
在线阅读 下载PDF
Defect Identification Method of Power Grid Secondary Equipment Based on Coordination of Knowledge Graph and Bayesian Network Fusion
10
作者 Jun Xiong Peng Yang +1 位作者 Bohan Chen Zeming Chen 《Energy Engineering》 2026年第1期296-313,共18页
The reliable operation of power grid secondary equipment is an important guarantee for the safety and stability of the power system.However,various defects could be produced in the secondary equipment during longtermo... The reliable operation of power grid secondary equipment is an important guarantee for the safety and stability of the power system.However,various defects could be produced in the secondary equipment during longtermoperation.The complex relationship between the defect phenomenon andmulti-layer causes and the probabilistic influence of secondary equipment cannot be described through knowledge extraction and fusion technology by existing methods,which limits the real-time and accuracy of defect identification.Therefore,a defect recognition method based on the Bayesian network and knowledge graph fusion is proposed.The defect data of secondary equipment is transformed into the structured knowledge graph through knowledge extraction and fusion technology.The knowledge graph of power grid secondary equipment is mapped to the Bayesian network framework,combined with historical defect data,and introduced Noisy-OR nodes.The prior and conditional probabilities of the Bayesian network are then reasonably assigned to build a model that reflects the probability dependence between defect phenomena and potential causes in power grid secondary equipment.Defect identification of power grid secondary equipment is achieved by defect subgraph search based on the knowledge graph,and defect inference based on the Bayesian network.Practical application cases prove this method’s effectiveness in identifying secondary equipment defect causes,improving identification accuracy and efficiency. 展开更多
关键词 Knowledge graph bayesian network secondary equipment defect identification
在线阅读 下载PDF
Combined Fault Tree Analysis and Bayesian Network for Reliability Assessment of Marine Internal Combustion Engine
11
作者 Ivana Jovanović Çağlar Karatuğ +1 位作者 Maja Perčić Nikola Vladimir 《哈尔滨工程大学学报(英文版)》 2026年第1期239-258,共20页
This paper investigates the reliability of internal marine combustion engines using an integrated approach that combines Fault Tree Analysis(FTA)and Bayesian Networks(BN).FTA provides a structured,top-down method for ... This paper investigates the reliability of internal marine combustion engines using an integrated approach that combines Fault Tree Analysis(FTA)and Bayesian Networks(BN).FTA provides a structured,top-down method for identifying critical failure modes and their root causes,while BN introduces flexibility in probabilistic reasoning,enabling dynamic updates based on new evidence.This dual methodology overcomes the limitations of static FTA models,offering a comprehensive framework for system reliability analysis.Critical failures,including External Leakage(ELU),Failure to Start(FTS),and Overheating(OHE),were identified as key risks.By incorporating redundancy into high-risk components such as pumps and batteries,the likelihood of these failures was significantly reduced.For instance,redundant pumps reduced the probability of ELU by 31.88%,while additional batteries decreased the occurrence of FTS by 36.45%.The results underscore the practical benefits of combining FTA and BN for enhancing system reliability,particularly in maritime applications where operational safety and efficiency are critical.This research provides valuable insights for maintenance planning and highlights the importance of redundancy in critical systems,especially as the industry transitions toward more autonomous vessels. 展开更多
关键词 Fault tree analysis bayesian network RELIABILITY REDUNDANCY Internal combustion engine
在线阅读 下载PDF
Thermodynamics of heavy quarkonium in a Bayesian holographic QCD model
12
作者 Li-Qiang Zhu Ou-Yang Luo +3 位作者 Xun Chen Kai Zhou Han-Zhong Zhang De-Fu Hou 《Nuclear Science and Techniques》 2026年第4期216-231,共16页
Leveraging high-precision lattice QCD data on the equation of state and baryon number susceptibility at a vanishing chemical potential,we constructed a Bayesian holographic QCD model and systematically analyzed the th... Leveraging high-precision lattice QCD data on the equation of state and baryon number susceptibility at a vanishing chemical potential,we constructed a Bayesian holographic QCD model and systematically analyzed the thermodynamic properties of heavy quarkonium in QCD matter under varying temperatures and chemical potentials.We computed the quark-antiquark interquark distance,potential energy,entropy,binding energy,and internal energy.We present detailed posterior distribution results of the thermodynamic quantities of heavy quarkonium,including maximum a posteriori(MAP)value estimates and 95%confidence levels(CL).Through numerical simulations and theoretical analysis,we find that an increase in the temperature and chemical potential reduces the quark distance,thereby facilitating the dissociation of heavy quarkonium and leading to a suppressed potential energy.The increase in temperature and chemical potential also raises the entropy and entropy force,further accelerating the dissociation of heavy quarkonium.The calculated results of binding energy indicate that a higher temperature and chemical potential enhance the tendency of heavy quarkonium to dissociate into free quarks.The internal energy also increases with rising temperature and chemical potential.These findings provide significant theoretical insights into the properties of strongly interacting matter under extreme conditions and lay a solid foundation for the interpretation and validation of future experimental data.Finally,we also present the results for the free energy,entropy,and internal energy of a single quark. 展开更多
关键词 Holographic QCD bayesian inference In-medium heavy quarkonium Thermodynamics of heavy quarkonium
在线阅读 下载PDF
Improving multibreed genomic prediction for breeds with small populations by modeling heterogeneous genetic(co)variance blockwise accounting for linkage disequilibrium
13
作者 Weining Li Siyu Li +7 位作者 Heng Du Qianqian Huang Yue Zhuo Lei Zhou Jinhua Cheng Wanying Li Jicai Jiang Jianfeng Liu 《Journal of Animal Science and Biotechnology》 2026年第1期147-158,共12页
Background Multibreed genomic prediction(MBGP)is crucial for improving prediction accuracy for breeds with small populations,for which limited data are often available.Recent studies have demonstrated that partitionin... Background Multibreed genomic prediction(MBGP)is crucial for improving prediction accuracy for breeds with small populations,for which limited data are often available.Recent studies have demonstrated that partitioning the genome into nonoverlapping blocks to model heterogeneous genetic(co)variance in multitrait models can achieve higher joint prediction accuracy.However,the block partitioning method,a key factor influencing model performance,has not been extensively explored.Results We introduce mbBayesABLD,a novel Bayesian MBGP model that partitions each chromosome into nonoverlapping blocks on the basis of linkage disequilibrium(LD)patterns.In this model,marker effects within each block are assumed to follow normal distributions with block-specific parameters.We employ simulated data as well as empirical datasets from pigs and beans to assess genomic prediction accuracy across different models using cross-validation.The results demonstrate that mbBayesABLD significantly outperforms conventional MBGP models,such as GBLUP and BayesR.For the meat marbling score trait in pigs,compared with GBLUP,which does not account for heterogeneous genetic(co)variance,mbBayesABLD improves the prediction accuracy for the small-population breed Landrace by 15.6%.Furthermore,our findings indicate that a moderate level of similarity in LD patterns between breeds(with an average correlation of 0.6)is sufficient to improve the prediction accuracy of the target breed.Conclusions This study presents a novel LD block-based approach for multibreed genomic prediction.Our work provides a practical tool for livestock breeding programs and offers new insights into leveraging genetic diversity across breeds for improved genomic prediction. 展开更多
关键词 Heterogeneous genetic(co)variance Linkage disequilibrium Multibreed genomic prediction Multitrait bayesian model Small-population breed
在线阅读 下载PDF
Performance improvement method of new R&D institutions considering Bayesian network
14
作者 ZHU Jianjun JIANG Lin 《Journal of Systems Engineering and Electronics》 2026年第1期257-271,共15页
A performance improvement model of research and development(R&D)institutions based on evolutionary game and Bayesian network is proposed.First,the nature and performance factors of new R&D institutions are sys... A performance improvement model of research and development(R&D)institutions based on evolutionary game and Bayesian network is proposed.First,the nature and performance factors of new R&D institutions are systematically analyzed,the appropriate factor model is found,and the sharing of performance benefits between institutions and employees,the change in distribution proportion,and the risk of institutional improvement and employee cooperation are considered.Second,based on the mechanism improvement and employee cooperation,the payment matrix is given and evolutionary game analysis is carried out to obtain a stable and balanced institutional improvement probability and employee cooperation probability.These two probability values are substituted into the Bayesian network model of performance improvement of new R&D institutions,and the posterior probability of performance improvement is predicted by Bayesian network reasoning and diagnosis to find effective improvement measures.Finally,practical case analysis is given to verify the effectiveness and practicability of the proposed method. 展开更多
关键词 new research and development(R&D)institution performance improvement evolutionary game bayesian network conditional probability
在线阅读 下载PDF
Fast identification of γ‑emitting radionuclides based on sequential Bayesian approach
15
作者 Xuan Zhang Jian-Wei Huang +5 位作者 Lin-Jian Wan Jia-Cheng Liu Xiao-Le Zhang De-Hong Li Fei Tuo Zhi-Jun Yang 《Nuclear Science and Techniques》 2026年第2期1-15,共15页
The rapid identification of γ-emitting radionuclides with low activity levels in public areas is crucial for nuclear safety.However,classical methods rely on full-energy peaks in the integral spectrum,requiring suffi... The rapid identification of γ-emitting radionuclides with low activity levels in public areas is crucial for nuclear safety.However,classical methods rely on full-energy peaks in the integral spectrum,requiring sufficient count accumulation for evaluation,thereby limiting response time.The sequential Bayesian approach,which utilizes prior information and considers both photon energies and interarrival times,can significantly enhance the performance of radionuclides identification.This study proposes a theoretical optimization method for the traditional sequential Bayesian approach.Each photon is processed sequentially,and the corresponding posterior probability is updated in real time using a noninformative prior from the Bayesian theory.By comparing the posterior probabilities of the background and radionuclides based on the energy variance and time interval,the type of γ-rays can be identified(background characteristic γ-rays,Compton plateaus γ-rays,or radionuclide-specific characteristic γ-rays).By integrating the information from these multiple characteristic γ-rays,the presence and type of radionuclides were determined based on the final decision function and a set threshold.Based on theoretical research,verification experiments were conducted using a LaBr_(3)(Ce)detector in both low-and natural background radiation environments with typical radionuclides(^(137)Cs,^(60)Co,and ^(133)Ba).The results show that this approach can identify ^(137)Cs in 7.9 s and 8.5 s(source dose rate contribution:approximately 6.5×10^(−3)μGy/h),^(60)Co in 8.1 s and 9.8 s(approximately 4.8×10^(−2)μGy/h),and ^(133)Ba in 4.05 s and 5.99 s(approximately 3.4×10^(−2)μGy/h)under low and natural background radiation,respectively,with a miss rate below 0.01%.This demonstrates the effectiveness of the proposed approach for fast radionuclides identification,even at low activity levels and highlights its potential for enhancing public safety in diverse radiation environments. 展开更多
关键词 Sequential bayesian approach Fast radionuclides identification Labr_(3)(Ce)detector Low background radiation laboratory
在线阅读 下载PDF
Bayesian neural network evaluation method on the neutron-induced fission product yields of^(232)Th
16
作者 Chun-Yuan Qiao Ya-Xuan Wang +2 位作者 Chun-Wang Ma Jun-Chen Pei Yong-Jing Chen 《Nuclear Science and Techniques》 2026年第3期132-142,共11页
Research on neutron-induced fission product yields of^(232)Th is crucial for understanding the competition between symmetric and asymmetric fission in actinide nuclei.However,obtaining complete isotopic yield distribu... Research on neutron-induced fission product yields of^(232)Th is crucial for understanding the competition between symmetric and asymmetric fission in actinide nuclei.However,obtaining complete isotopic yield distributions over a wide range of neutron energies remains a challenge.In this study,a Bayesian neural network model was developed to predict the independent(IND)and cumulative fission yields of^(232)Th under neutron irradiation at various incident energies.To address the limited availability of experimental data for the analysis of IND mass distributions,we substituted mass-number-based yields with the yields of specific isotopes.Furthermore,physical phenomena or quantities,such as the odd-even effect and isospin,were introduced as constraints to enhance the physical consistency of the predictions.The impact of these constraints was evaluated using mass-chain yield distributions and their dependence on energy.Incorporating physical constraints significantly improves the prediction accuracy,yielding more reliable and physically meaningful fission yield data for nuclear physics and reactor design applications. 展开更多
关键词 bayesian neural network ^(232)Th Independent fission yield Cumulative fission yield Odd–even effect ISOSPIN
在线阅读 下载PDF
BR118制粒剂及其脱脂工艺对串珠胎体物理性能的影响研究
17
作者 莫睿 《超硬材料工程》 2026年第1期17-21,共5页
将充分混合均匀的铁基金刚石串珠胎体粉料,取样后冷压成试验块冷压坯,其余粉料添加BR118制粒剂后进行制粒,并冷压成试验块冷压坯,采用3种工艺进行脱脂,完成后与未添加制粒剂的试验块一起,在同一工艺下烧结成型,检测其相对致密度、硬度... 将充分混合均匀的铁基金刚石串珠胎体粉料,取样后冷压成试验块冷压坯,其余粉料添加BR118制粒剂后进行制粒,并冷压成试验块冷压坯,采用3种工艺进行脱脂,完成后与未添加制粒剂的试验块一起,在同一工艺下烧结成型,检测其相对致密度、硬度、抗弯强度等物理性能。试验结果显示:铁基金刚石串珠胎体粉料制粒后,经过不同工艺脱脂,致密度提高1.03%到1.64%,硬度下降3.4%到3.9%,抗弯强度下降2.3%到14.5%;其中氢气还原气氛下脱脂后的抗弯强度最接近未添加制粒剂的试验块。 展开更多
关键词 铁基胎体粉料 粉末制粒 脱脂工艺 物理性能 金刚石串珠 br118制粒剂
在线阅读 下载PDF
基于MRF二次Membrane-Plate混合自适应先验的PET图像的收敛Bayesian重建算法
18
作者 陈阳 陈武凡 +1 位作者 冯前进 冯衍秋 《电路与系统学报》 CSCD 北大核心 2007年第3期45-51,共7页
对于如何抑制正电子发射成像(positron emission tomography,PET)中的噪声效果的问题,Bayesian重建或者最大化后验估计(maximum a posteriori,MAP)的方法在重建图像质量和收敛性方面具有相对于其他方法的优越性。基于Bayesian理论,本文... 对于如何抑制正电子发射成像(positron emission tomography,PET)中的噪声效果的问题,Bayesian重建或者最大化后验估计(maximum a posteriori,MAP)的方法在重建图像质量和收敛性方面具有相对于其他方法的优越性。基于Bayesian理论,本文提出了一种新的能够保持其先验能量函数凸性的马尔可夫随机场(Markov Random Fields,MRF)混合多阶二次先验(quadratic hybrid multi-order,QHM),该QHM先验综合了二次-阶(quadratic membrane,QM)先验和二次二阶(quadratic plate,QP)先验,且能够根据不同阶数的二次先验和待重建表面的性质自适应的发挥QM先验和QP先验的作用。文中还给出了使用该新的混合先验的收敛重建算法。模拟实验结果的视觉和量化比较证明了对于PET重建,该先验在抑制背景噪声和保持边缘方面具有很好的表现。 展开更多
关键词 bayesian重建 正电子发射成像 二次混合多阶先验 马尔可夫随机场
在线阅读 下载PDF
鄂尔多斯盆地陕北盐盆东部盐下马四段富K、Li、Br油田水新发现
19
作者 樊馥 马占荣 +2 位作者 刘建平 张永生 包洪平 《地球学报》 北大核心 2025年第2期493-496,共4页
钾、锂资源是保障我国农业粮食安全以及新能源产业发展的关键矿产资源,一直以来均保持极高的对外依存度。中国地质科学院矿产资源研究所与中国石油天然气股份有限公司长庆油田分公司合作,通过“油盐兼探”,在鄂尔多斯陕北盐盆东部地区,... 钾、锂资源是保障我国农业粮食安全以及新能源产业发展的关键矿产资源,一直以来均保持极高的对外依存度。中国地质科学院矿产资源研究所与中国石油天然气股份有限公司长庆油田分公司合作,通过“油盐兼探”,在鄂尔多斯陕北盐盆东部地区,获得了米探6井、榆阳1井盐下段马家沟组四段富K、Li、Br油田水新发现,为鄂尔多斯盆地锂、钾资源新层系。测试结果表明:该层段卤水KCl含量为1.798%~3.573%,LiCl为1460.606~1915.152 mg/L,均为工业品位数倍;Rb_(2)O和Br含量也达到工业利用和综合利用标准。马家沟组四段,在盆地范围内分布较广,其富K、Li、Br油田水的发现,展示了鄂尔多斯盆地良好的K、Li等资源前景。 展开更多
关键词 鄂尔多斯盆地 油盐兼探 盐下段 马四段 富K、Li、br油田水
在线阅读 下载PDF
UiO-66-Br@MBC复合吸附剂的制备及Hg^(0)脱除机理研究
20
作者 程鹏 贾里 +6 位作者 郑玉斓 闫祺祯 聂浩田 贺玲 王晨星 武亚文 张震 《中国电机工程学报》 北大核心 2025年第12期4768-4779,I0020,共13页
针对金属有机骨架(metal-organic frameworks,MOFs)材料存在难以实现对Hg^(0)高效脱除的问题,基于掺杂Fe/Ce多元金属的改性生物焦与MOFs材料UiO-66两者均含有不饱和金属中心与含氧官能团的基础特性,通过原位生长法进行结构设计,制备UiO-... 针对金属有机骨架(metal-organic frameworks,MOFs)材料存在难以实现对Hg^(0)高效脱除的问题,基于掺杂Fe/Ce多元金属的改性生物焦与MOFs材料UiO-66两者均含有不饱和金属中心与含氧官能团的基础特性,通过原位生长法进行结构设计,制备UiO-66-Br与Fe/Ce改性生物焦的复合吸附剂。在获得吸附温度与复合比例对Hg^(0)脱除特性影响的基础上,建立理化性质与脱汞性能之间构效关系,对活性吸附位和氧化位进行识别,并采用程序升温脱附技术及吸附动力学模型,揭示Hg^(0)脱除机理。结果表明:复合材料对Hg^(0)脱除是吸附及氧化共同作用的结果,样品中微孔和较小孔径介孔提供物理吸附位;改性生物焦发挥载体作用,促进中心金属锆离子充分暴露,并形成更多活性位点以及促进电子转移过程;Br元素的掺杂改性可以增强样品整体的氧化还原能力,所引入的Fe、Ce多元金属离子对Hg^(0)的氧化过程可以发挥协同促进的作用。所制备的UiO-66-Br@MBC(1:1)复合吸附剂在吸附温度为50~25℃条件下具备优异的汞脱除性能,在兼具热稳定性的同时实现吸附位点和氧化位点的定向构筑。 展开更多
关键词 UiO-66-br 改性生物焦 复合材料 汞脱除
原文传递
上一页 1 2 250 下一页 到第
使用帮助 返回顶部