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Trade-off and synergy effects,driving factors,and spatial optimization of ecosystem services in the Wuding River Basin of China:A study based on the Bayesian Belief Network approach
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作者 FAN Liangwei WANG Ni +3 位作者 WANG Tingting LIU Zheng WAN Yong LI Zhiwei 《Journal of Arid Land》 2025年第12期1669-1693,共25页
The Wuding River Basin,situated in the Loess Plateau of northern China,is an ecologically fragile region facing severe soil erosion and imbalanced ecosystem service(ES)functions.However,the mechanisms driving the spat... The Wuding River Basin,situated in the Loess Plateau of northern China,is an ecologically fragile region facing severe soil erosion and imbalanced ecosystem service(ES)functions.However,the mechanisms driving the spatiotemporal evolution of ES functions,as well as the trade-offs and synergies among these functions,remain poorly understood,constraining effective watershed-scale management.To address this challenge,this study quantified four ES functions,i.e.,water yield(WY),carbon storage(CS),habitat quality(HQ),and soil conservation(SC)in the Wuding River Basin from 1990 to 2020 using the Integrated Valuation of Ecosystem Services and Tradeoff(InVEST)model,and proposed an innovative integration of InVEST with a Bayesian Belief Network(BBN)to nonlinearly identify trade-off and synergy relationships among ES functions through probabilistic inference.A trade-off and synergy index(TSI)was developed to assess the spatial interaction intensity among ES functions,while sensitivity and scenario analyses were employed to determine key driving factors,followed by spatial optimization to delineate functional zones.Results revealed distinct spatiotemporal variations:WY increased from 98.69 to 120.52 mm;SC rose to an average of 3.05×10^(4) t/hm^(2);CS remained relatively stable(about 15.50 t/km^(2));and HQ averaged 0.51 with localized declines.The BBN achieved a high accuracy of 81.9%and effectively identified strong synergies between WY and SC,as well as between CS and HQ,while clear trade-offs were observed between WY and SC versus CS and HQ.Sensitivity analysis indicated precipitation(variance reduction of 9.4%),land use(9.8%),and vegetation cover(9.1%)as key driving factors.Spatial optimization further showed that core supply and ecological regulation zones are concentrated in the central-southern and southeastern basin,while ecological strengthening and optimization core zones dominate the central-northern and southeastern margins,highlighting strong spatial heterogeneity.Overall,this study advances ES research by combining process-based quantification with probabilistic modeling,offering a robust framework for studying nonlinear interactions,driving mechanisms,and optimization strategies,and providing a transferable paradigm for watershed-scale ES management and ecological planning in arid and semi-arid areas. 展开更多
关键词 ecosystem service functions trade-offs and synergies bayesian belief network spatial pattern optimization Wuding River Basin
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Exploring the interdependencies among social progress index(SPI)components and their impact on country-level sustainability performance based on Bayesian Belief Network
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作者 Abroon QAZI 《Regional Sustainability》 2025年第3期87-102,共16页
The social progress index(SPI)measures social and environmental performance beyond traditional economic indicators,providing transparent and actionable insights into the true condition of societies.This study investig... The social progress index(SPI)measures social and environmental performance beyond traditional economic indicators,providing transparent and actionable insights into the true condition of societies.This study investigates the interdependencies among SPI components and their impact on country-level sustainability performance.Using a Bayesian Belief Network(BBN)approach,the analysis explores the interdependencies among 12 SPI components(including advanced education,basic education,environmental quality,freedom and choice,health,housing,inclusive society,information and communications,nutrition and medical care,rights and voice,safety,and water and sanitation)and their collective influence on sustainability performance.Data from the Sustainable Development Report and SPI datasets,covering 162 countries(including Australia,China,United Arab Emirates,United Kingdom,United States,and so on),were used to assess the relative importance of each SPI component.The key findings indicate that advanced education,inclusive society,and freedom and choice make substantial contributions to high sustainability performance,whereas deficiencies in nutrition and medical care,water and sanitation,and freedom and choice are associated with poor sustainability performance.The results reveal that sustainability performance is shaped by a network of interlinked SPI components,with education and inclusion emerging as key levers for progress.The study emphasizes that targeted improvements in specific SPI components can significantly enhance a country’s overall sustainability performance.Rather than visualizing countries’progress through composite indicator-based heat maps,this study explores the interdependencies among SPI components and their role in sustainability performance at the global level.The study underscores the importance of a multidimensional policy approach that addresses social and environmental factors to enhance sustainability.The findings contribute to a deeper understanding of how SPI components interact and shape sustainable development. 展开更多
关键词 Sustainability performance Social progress index(SPI) Advanced education Environmental quality bayesian belief network(BBN)
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A hybrid approach for evaluating CPT-based seismic soil liquefaction potential using Bayesian belief networks 被引量:6
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作者 MAHMOOD Ahmad TANG Xiao-wei +2 位作者 QIU Jiang-nan GU Wen-jing FEEZAN Ahmad 《Journal of Central South University》 SCIE EI CAS CSCD 2020年第2期500-516,共17页
Discernment of seismic soil liquefaction is a complex and non-linear procedure that is affected by diversified factors of uncertainties and complexity.The Bayesian belief network(BBN)is an effective tool to present a ... Discernment of seismic soil liquefaction is a complex and non-linear procedure that is affected by diversified factors of uncertainties and complexity.The Bayesian belief network(BBN)is an effective tool to present a suitable framework to handle insights into such uncertainties and cause–effect relationships.The intention of this study is to use a hybrid approach methodology for the development of BBN model based on cone penetration test(CPT)case history records to evaluate seismic soil liquefaction potential.In this hybrid approach,naive model is developed initially only by an interpretive structural modeling(ISM)technique using domain knowledge(DK).Subsequently,some useful information about the naive model are embedded as DK in the K2 algorithm to develop a BBN-K2 and DK model.The results of the BBN models are compared and validated with the available artificial neural network(ANN)and C4.5 decision tree(DT)models and found that the BBN model developed by hybrid approach showed compatible and promising results for liquefaction potential assessment.The BBN model developed by hybrid approach provides a viable tool for geotechnical engineers to assess sites conditions susceptible to seismic soil liquefaction.This study also presents sensitivity analysis of the BBN model based on hybrid approach and the most probable explanation of liquefied sites,owing to know the most likely scenario of the liquefaction phenomenon. 展开更多
关键词 bayesian belief network cone penetration test seismic soil liquefaction interpretive structural modeling structural learning
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A Software Risk Analysis Model Using Bayesian Belief Network 被引量:1
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作者 Yong Hu Juhua Chen +2 位作者 Mei Liu Xang Yun Junbiao Tang 《南昌工程学院学报》 CAS 2006年第2期102-106,共5页
The uncertainty during the period of software project development often brings huge risks to contractors and clients. If we can find an effective method to predict the cost and quality of software projects based on fa... The uncertainty during the period of software project development often brings huge risks to contractors and clients. If we can find an effective method to predict the cost and quality of software projects based on facts like the project character and two-side cooperating capability at the beginning of the project,we can reduce the risk. Bayesian Belief Network(BBN) is a good tool for analyzing uncertain consequences, but it is difficult to produce precise network structure and conditional probability table.In this paper,we built up network structure by Delphi method for conditional probability table learning,and learn update probability table and nodes’confidence levels continuously according to the application cases, which made the evaluation network have learning abilities, and evaluate the software development risk of organization more accurately.This paper also introduces EM algorithm, which will enhance the ability to produce hidden nodes caused by variant software projects. 展开更多
关键词 software risk analysis bayesian belief network EM algorithm parameter learning
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An EEGA-Based Bayesian Belief Network Model for Recognition of Human Activity in Smart Home
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作者 曾献辉 陈晓婷 叶承阳 《Journal of Donghua University(English Edition)》 EI CAS 2012年第6期497-500,共4页
With the emerging of sensor networks, research on sensor-based activity recognition has attracted much attention. Many existing methods cannot well deal with the cases that contain hundreds of sensors and their recogn... With the emerging of sensor networks, research on sensor-based activity recognition has attracted much attention. Many existing methods cannot well deal with the cases that contain hundreds of sensors and their recognition accuracy is requisite to be further improved. A novel framework for recognizing human activities in smart home was presented. First, small, easy-to-install, and low-cost state change sensors were adopted for recording state change or use of the objects. Then the Bayesian belief network (BBN) was applied to conducting activity recognition by modeling statistical dependencies between sensor data and human activity. An edge-encode genetic algorithm (EEGA) approach was proposed to resolve the difficulties in structure learning of the BBN model under a high dimension space and large data set. Finally, some experiments were made using one publicly available dataset. The experimental results show that the EEGA algorithm is effective and efficient in learning the BBN structure and outperforms the conventional approaches. By conducting human activity recognition based on the testing samples, the BBN is effective to conduct human activity recognition and outperforms the naive Bayesian network (NBN) and multiclass naive Bayes classifier (MNBC). 展开更多
关键词 human activity recognition edge-encoded genetic algorithm(EEGA) bayesian belief network (BBN) smart home
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A Bayesian belief network approach for mapping water conservation ecosystem service optimization region 被引量:1
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作者 ZENG Li LI Jing 《Journal of Geographical Sciences》 SCIE CSCD 2019年第6期1021-1038,共18页
Water conservation is one of the most important ecosystem services of terrestrial ecosystems. Identifying the optimization regions of water conservation using Bayesian belief networks not only helps develop a better u... Water conservation is one of the most important ecosystem services of terrestrial ecosystems. Identifying the optimization regions of water conservation using Bayesian belief networks not only helps develop a better understanding of water conservation processes but also increases the rationality of scenario design and pattern optimization. This study establishes a water conservation network model. The model, based on Bayesian belief networks, forecasts the distribution probability of the water conservation projected under different land use scenarios for the year 2050 with the CA-Markov model. A key variable subset method is proposed to optimize the spatial pattern of the water conservation. Three key findings were obtained. First, among the three scenarios, the probability of high water conservation value was the largest under the protection scenario, and the design of this scenario was conducive to the formulation of future land use policies. Second, the key influencing factors impacting the water conservation included precipitation, evapotranspiration and land use, and the state set corresponding to the highest state of water conservation was mainly distributed in areas with high annual average rainfall and evapotranspiration and high vegetation coverage. Third, the regions suitable for optimizing water conservation were mainly distributed in the southern part of Maiji District in Tianshui, southwest of Longxian and south of Weibin District in Baoji, northeast of Xunyi County and northwest of Yongshou County in Xianyang, and west of Yaozhou District in Tongchuan. 展开更多
关键词 water CONSERVATION ECOSYSTEM services bayesian belief network SCENARIO analysis spatial SUITABILITY land use
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Developing a Bayesian belief network model for prediction of R&D project success 被引量:3
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作者 Satyendra Kumar Sharma Udayan Chanda 《Journal of Management Analytics》 EI 2017年第3期321-344,共24页
The project success is critical to the business performance in the era of fierce competition and globalization.The basis for project success lies in the capabilities of managing risks effectively.Innovation has always... The project success is critical to the business performance in the era of fierce competition and globalization.The basis for project success lies in the capabilities of managing risks effectively.Innovation has always been considerably risky;however,managing Research and Development(R&D)project risks has become even more important given today’s tight schedules and limited resources.Risk management has to be an integral part of the development process.The purpose of this research is to develop a model to assess and estimate the risk exposure of an R&D project.A risk quantification model based on the Bayesian belief network is proposed,which is effective in capturing the interaction between various risk factors.The aim of this model is to empower the project managers to predict the failure risk probability of R&D projects. 展开更多
关键词 R&D projects bayesian belief networks risk identification risk assessment
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Data learning and expert judgment in a Bayesian belief network for aiding human reliability assessment in offshore decommissioning risk assessment 被引量:2
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作者 Mei Ling Fam Dimitrios Konovessis +1 位作者 XuHong He Lin Seng Ong 《Journal of Ocean Engineering and Science》 SCIE 2021年第2期170-184,共15页
Decommissioning of offshore facilities involve changing risk profiles at different decommissioning phases.Bayesian Belief Networks(BBN)are used as part of the proposed risk assessment method to capture the multiple in... Decommissioning of offshore facilities involve changing risk profiles at different decommissioning phases.Bayesian Belief Networks(BBN)are used as part of the proposed risk assessment method to capture the multiple interactions of a decommissioning activity.The BBN is structured from the data learning of an accident database and a modification of the BBN nodes to incorporate human reliability and barrier performance modelling.The analysis covers one case study of one area of decommissioning operations by extrapolating well workover data to well plugging and abandonment.Initial analysis from well workover data,of a 5-node BBN provided insights on two different levels of severity of an accident,the’Accident’and’Incident’level,and on its respective profiles of the initiating events and the investigation-reported human causes.The initial results demonstrate that the data learnt from the database can be used to structure the BBN,give insights on how human reliability pertaining to well activities can be modelled,and that the relative frequencies from the count analysis can act as initial data input for the proposed nodes.It is also proposed that the integrated treatment of various sources of information(database and expert judgement)through a BBN model can support the risk assessment of a dynamic situation such as offshore decommissioning. 展开更多
关键词 bayesian belief network Human reliability assessment Expert judgement Data learning
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Evaluation of liquefaction-induced lateral displacement using Bayesian belief networks
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作者 Mahmood AHMAD Xiao-Wei TANG +1 位作者 Jiang-Nan QIU Feezan AHMAD 《Frontiers of Structural and Civil Engineering》 SCIE EI CSCD 2021年第1期80-98,共19页
Liquefaction-induced lateral displacement is responsible for considerable damage to engineered structures during major earthquakes.Therefore,an accurate estimation of lateral displacement in liquefaction-prone regions... Liquefaction-induced lateral displacement is responsible for considerable damage to engineered structures during major earthquakes.Therefore,an accurate estimation of lateral displacement in liquefaction-prone regions is an essential task for geotechnical experts for sustainable development.This paper presents a novel probabilistic framework for evaluating liquefaction-induced lateral displacement using the Bayesian belief network(BBN)approach based on an interpretive structural modeling technique.The BBN models are trained and tested using a wide-range casehistory records database.The two BBN models are proposed to predict lateral displacements for free-face and sloping ground conditions.The predictive performance results of the proposed BBN models are compared with those of frequently used multiple linear regression and genetic programming models.The results reveal that the BBN models are able to learn complex relationships between lateral displacement and its influencing factors as cause-effect relationships,with reasonable precision.This study also presents a sensitivity analysis to evaluate the impacts of input factors on the lateral displacement. 展开更多
关键词 bayesian belief network seismically induced soil liquefaction interpretive structural modeling lateral displacement
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Bayesian belief-based model for reliability improvement of the digital reactor protection system 被引量:2
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作者 Hanaa Torkey Amany S.Saber +2 位作者 Mohamed K.Shaat Ayman El-Sayed Marwa A.Shouman 《Nuclear Science and Techniques》 SCIE CAS CSCD 2020年第10期55-73,共19页
The digital reactor protection system(RPS)is one of the most important digital instrumentation and control(I&C)systems utilized in nuclear power plants(NPPs).It ensures a safe reactor trip when the safety-related ... The digital reactor protection system(RPS)is one of the most important digital instrumentation and control(I&C)systems utilized in nuclear power plants(NPPs).It ensures a safe reactor trip when the safety-related parameters violate the operational limits and conditions of the reactor.Achieving high reliability and availability of digital RPS is essential to maintaining a high degree of reactor safety and cost savings.The main objective of this study is to develop a general methodology for improving the reliability of the RPS in NPP,based on a Bayesian Belief Network(BBN)model.The structure of BBN models is based on the incorporation of failure probability and downtime of the RPS I&C components.Various architectures with dual-state nodes for the I&C components were developed for reliability-sensitive analysis and availability optimization of the RPS and to demonstrate the effect of I&C components on the failure of the entire system.A reliability framework clarified as a reliability block diagram transformed into a BBN representation was constructed for each architecture to identify which one will fit the required reliability.The results showed that the highest availability obtained using the proposed method was 0.9999998.There are 120 experiments using two common component importance measures that are applied to define the impact of I&C modules,which revealed that some modules are more risky than others and have a larger effect on the failure of the digital RPS. 展开更多
关键词 Nuclear power plants Reactor protection system bayesian belief network
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Assessing Chemical Mixtures and Human Health: Use of Bayesian Belief Net Analysis
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作者 Anindya Roy Neil J. Perkins Germaine M. Buck Louis 《Journal of Environmental Protection》 2012年第6期462-468,共7页
Background: Despite humans being exposed to complex chemical mixtures, much of the available research continues to focus on a single compound or metabolite or a select subgroup of compounds inconsistent with the natur... Background: Despite humans being exposed to complex chemical mixtures, much of the available research continues to focus on a single compound or metabolite or a select subgroup of compounds inconsistent with the nature of human exposure. Uncertainty regarding how best to model chemical mixtures coupled with few analytic approaches remains a formidable challenge and served as the impetus for the study. Objectives: To identify the polychlorinated biphenyl (PCB) congener(s) within a chemical mixture that was most associated with an endometriosis diagnosis using novel graphical modeling techniques. Methods: Bayesian Belief Network (BBN) models were developed and empirically assessed in a cohort comprising 84 women aged 18 - 40 years who underwent a laparoscopy or laparotomy between 1999 and 2000;79 (94%) women had serum concentrations for 68 PCB congeners quantified. Adjusted odds ratios (AOR) for endometriosis were estimated for individual PCB congeners using BBN models. Results: PCB congeners #114 (AOR = 3.01;95% CI = 2.25, 3.77) and #136 (AOR = 1.79;95% CI = 1.03, 2.55) were associated with an endometriosis diagnosis. Combinations of mixtures inclusive of PCB #114 were all associated with higher odds of endometriosis, underscoring its potential relation with endometriosis. Conclusions: BBN models identified PCB congener 114 as the most influential congener for the odds of an endometriosis diagnosis in the context of a 68 congener chemical mixture. BBN models offer investigators the opportunity to assess which compounds within a mixture may drive a human health effect. 展开更多
关键词 bayesian belief network ENDOMETRIOSIS Environment Mixtures POLYCHLORINATED BIPHENYLS
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一种基于Bayesian信念网络的客户行为预测方法 被引量:4
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作者 何蓓 吴敏 《控制与决策》 EI CSCD 北大核心 2007年第6期626-631,共6页
提出一种基于Bayesian信念网络(BN)的客户行为预测方法.通过知识学习构建客户行为Bayesian网络(CBN),根据CBN对预实例计算联合分布概率,准确预测了一对一营销优化中的客户行为.CBN学习算法包括连线和定向部分,复杂度为O(N4)条件相关测试... 提出一种基于Bayesian信念网络(BN)的客户行为预测方法.通过知识学习构建客户行为Bayesian网络(CBN),根据CBN对预实例计算联合分布概率,准确预测了一对一营销优化中的客户行为.CBN学习算法包括连线和定向部分,复杂度为O(N4)条件相关测试.在零售行业一对一营销实际应用表明,CBN学习算法较现有BN学习算法更快构建CBN,预测精度高于朴素Bayesina分类法. 展开更多
关键词 bayesian信念网络 一对一营销 数据挖掘 客户行为预测
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基于Bayesian网络的软件开发模型 被引量:1
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作者 杜献峰 《微型电脑应用》 2007年第12期61-64,70,共4页
在这篇论文中,阐述了用贝叶斯信任网络(Bayesian Belief Networks:BBN)进行软件建模的方法,提出了基于BBN软件开发模型,该模型能够表示软件过程的主要活动,给出了如何构建BBN开发模型的步骤,在定义要求控制和计划的关键工作流时该模型... 在这篇论文中,阐述了用贝叶斯信任网络(Bayesian Belief Networks:BBN)进行软件建模的方法,提出了基于BBN软件开发模型,该模型能够表示软件过程的主要活动,给出了如何构建BBN开发模型的步骤,在定义要求控制和计划的关键工作流时该模型能支持专家意见,这种模型能够应对软件开发过程的迭代特性,并对开发过程中的每一步都会渐近产生精确评估,根据其结构可对每一个工作流的整体结果做出评估。 展开更多
关键词 软件开发模型 RATIONAL UNIFIED PROCESS 贝叶斯信任网络
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SM4密钥扩展算法的单能迹攻击
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作者 吴震 赵洋 王敏 《计算机研究与发展》 北大核心 2025年第10期2441-2454,共14页
在分布式物联网的大规模应用背景下,各实体设备中密码技术作为信息安全的底层支撑架构,正面临着侧信道攻击(SCA)这一物理层安全威胁的严峻挑战. SM4分组密码算法作为我国自主研制的商用密码算法标准,已深度集成于分布式物联网安全协议中... 在分布式物联网的大规模应用背景下,各实体设备中密码技术作为信息安全的底层支撑架构,正面临着侧信道攻击(SCA)这一物理层安全威胁的严峻挑战. SM4分组密码算法作为我国自主研制的商用密码算法标准,已深度集成于分布式物联网安全协议中,但其实现层面的侧信道脆弱性问题亟待解决.针对SM4密钥扩展算法的侧信道攻击研究存在空白,现有攻击方法多依赖多能迹统计特性,而单能迹攻击研究匮乏.研究提出一种基于贝叶斯网络结合建模侧信道攻击的单能迹侧信道攻击方法,针对单条能量轨迹,通过构建概率图模型,结合置信传播算法,实现对轮子密钥的高效推测,进而恢复主密钥.仿真实验与实测实验表明该攻击方法有效,在理想实测环境下主密钥恢复成功率达85.74%,即使在实测能迹中添加大量高斯白噪声,使得信噪比仅为10 d B的条件下,成功率仍可达70%.与传统方法相比,所提方法在成功率、所需能量轨迹数量和攻击时间等方面优势显著,为分布式物联网系统含密设备的侧信道攻击研究提供了新的思路与技术手段,也为相关防护设计提供了理论依据和参考. 展开更多
关键词 SM4密钥扩展算法 单能迹攻击 贝叶斯网络 置信传播算法 侧信道攻击 分布式物联网
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Study on UAV Path Planning Approach Based on Fuzzy Virtual Force 被引量:14
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作者 董卓宁 张汝麟 +1 位作者 陈宗基 周锐 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2010年第3期341-350,共10页
This article proposes a novel fuzzy virtual force (FVF) method for unmanned aerial vehicle (UAV) path planning in compli-cated environment. An integrated mathematical model of UAV path planning based on virtual fo... This article proposes a novel fuzzy virtual force (FVF) method for unmanned aerial vehicle (UAV) path planning in compli-cated environment. An integrated mathematical model of UAV path planning based on virtual force (VF) is constructed and the corresponding optimal solving method under the given indicators is presented. Specifically,a fixed step method is developed to reduce computational cost and the reachable condition of path planning is proved. The Bayesian belief network and fuzzy logic reasoning theories are applied to setting the path planning parameters adaptively,which can reflect the battlefield situation dy-namically and precisely. A new way of combining threats is proposed to solve the local minima problem completely. Simulation results prove the feasibility and usefulness of using FVF for UAV path planning. Performance comparisons between the FVF method and the A* search algorithm demonstrate that the proposed approach is fast enough to meet the real-time requirements of the online path planning problems. 展开更多
关键词 fuzzy virtual force unmanned aerial vehicle path planning hybrid system bayesian belief network fuzzy logic reasoning local minima
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核电厂仪控系统软件可靠性评估:方法、应用与困境
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作者 冯素梅 郭林 +1 位作者 冯伟 王少华 《核安全》 2025年第4期21-28,共8页
随着核电厂仪控系统数字化进程的加速,软件可靠性评估成为保障核安全的核心课题。本文详细阐述了国内外相关标准和核电领域技术报告中关于软件可靠性评估方法及应用情况,分析其优缺点以及面临的挑战,旨在为提升核电厂软件可靠性评估水... 随着核电厂仪控系统数字化进程的加速,软件可靠性评估成为保障核安全的核心课题。本文详细阐述了国内外相关标准和核电领域技术报告中关于软件可靠性评估方法及应用情况,分析其优缺点以及面临的挑战,旨在为提升核电厂软件可靠性评估水平提供参考,确保核电厂安全稳定运行。 展开更多
关键词 软件可靠性 贝叶斯信念网络 定量评估
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基于BBN的航空公司风险评估技术研究 被引量:26
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作者 金灿灿 左洪福 +1 位作者 张营 白芳 《航空学报》 EI CAS CSCD 北大核心 2013年第3期588-596,共9页
在人、机、环境和管理(MMEM)系统理论的基础上,通过研究有关民航规则、标准中的相关内容建立航空公司风险评估指标体系;利用层次分析法(AHP)确定指标权重,运用模糊综合评价法(FCE)量化其中的定性指标;基于贝叶斯置信网络(BBN)软件GeNIe... 在人、机、环境和管理(MMEM)系统理论的基础上,通过研究有关民航规则、标准中的相关内容建立航空公司风险评估指标体系;利用层次分析法(AHP)确定指标权重,运用模糊综合评价法(FCE)量化其中的定性指标;基于贝叶斯置信网络(BBN)软件GeNIe完成了整个系统贝叶斯网络拓扑结构的建立,将航空公司历史数据作为贝叶斯网络参数学习的训练数据,获取节点概率表(NPT),建立航空公司风险评估模型,并对其进行概率推理计算;通过环比分析确定影响风险的主要因素。 展开更多
关键词 模糊综合评价法 贝叶斯置信网络 GENIE 环比分析 风险评估
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基于贝叶斯统计推理的故障定位实验研究 被引量:9
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作者 柳永坡 吴际 +3 位作者 金茂忠 杨海燕 贾晓霞 刘雪梅 《计算机研究与发展》 EI CSCD 北大核心 2010年第4期707-715,共9页
故障定位的目的是帮助程序员寻找引发失效的原因或故障位置,以加快调试过程.故障和失效间的关系往往非常复杂,难以直接描述故障到失效的转化.最新的研究多采用差异分析的方法,基于可疑模式,构建故障推理贝叶斯网络,其节点由可疑模式及... 故障定位的目的是帮助程序员寻找引发失效的原因或故障位置,以加快调试过程.故障和失效间的关系往往非常复杂,难以直接描述故障到失效的转化.最新的研究多采用差异分析的方法,基于可疑模式,构建故障推理贝叶斯网络,其节点由可疑模式及组成可疑模式方法的调用者构成;定义了贝叶斯网络的构建算法、各个相关概率的定义及BBN中各个边的条件概率计算公式.提出基于该BBN的推理算法,推理得到包含故障的模块,并计算得到每个模块包含故障的概率.提出了评价方法,详细设计了参数调整与定位性能的关系实验和定位结果分析实验.实验数据表明,该故障定位方法取得了平均0.761的定准率和0.737的定全率,定位结果良好,具有较高的实用价值. 展开更多
关键词 故障定位 差异分析 可疑模式 贝叶斯置信网络 故障概率
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食品中微生物危害的风险评估建模方法改进与应用 被引量:14
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作者 刘丽梅 高永超 王玎 《农业工程学报》 EI CAS CSCD 北大核心 2014年第6期279-286,共8页
为了解决目前食品中微生物危害风险评估中模块化过程风险模型仅能评估当前风险而未能考虑流通领域的风险因素和危害溯源等缺陷,该文对食品中微生物危害的定量风险评估建模方法进行了改进。改进方法将操作环境、人员、设备等风险因素抽... 为了解决目前食品中微生物危害风险评估中模块化过程风险模型仅能评估当前风险而未能考虑流通领域的风险因素和危害溯源等缺陷,该文对食品中微生物危害的定量风险评估建模方法进行了改进。改进方法将操作环境、人员、设备等风险因素抽象为危害转移模块,设置控制模块表征控制措施对风险因素的控制作用,设置效益模块表征实施控制措施的成本和收益;采用贝叶斯网络模型结构,结合预测微生物学,通过贝叶斯推理估计食品处理过程中微生物危害的数量及其出现的概率。仿真分析表明,改进方法在实现食品中微生物危害风险评估的同时,在同一模型结构下能溯源危害被引入的风险因素源头,评估风险因素对食品产品安全的影响程度,管理者通过综合考虑控制效果和成本能够选择合适的风险控制措施。改进的风险评估建模方法对现有方法进行了补充,扩展了风险评估模型的功能,也为企业在生产流通过程中预防和管理安全风险提供有力的工具,具有重要的理论和应用价值。 展开更多
关键词 风险评估 微生物 模型 食品安全 模块化建模 贝叶斯网络 预测微生物学
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多状态机械系统可靠性的离散化建模方法 被引量:13
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作者 钱文学 尹晓伟 谢里阳 《东北大学学报(自然科学版)》 EI CAS CSCD 北大核心 2008年第11期1609-1612,1632,共5页
针对传统的基于二态逻辑的可靠性评估方法应用于多状态系统理论和实际应用存在差异的问题,根据贝叶斯信念网(BBN)具有双向不确定性推理功能和图形化显示的特点,提出了一种多状态机械系统可靠性离散化建模方法.首先确定BBN的节点及离散... 针对传统的基于二态逻辑的可靠性评估方法应用于多状态系统理论和实际应用存在差异的问题,根据贝叶斯信念网(BBN)具有双向不确定性推理功能和图形化显示的特点,提出了一种多状态机械系统可靠性离散化建模方法.首先确定BBN的节点及离散系统各元件的多个状态,并给出各状态的概率,用概率分布表(CPD)描述元件各状态之间的关系来表达关联节点的状态,最终建立离散化BBN模型.该模型避免了已有方法复杂的公式计算,对元件数量没有限制.实例分析表明了应用BBN离散化模型进行多状态机械系统可靠性评估的有效性和优越性. 展开更多
关键词 可靠性 多状态系统 贝叶斯信念网 离散化 建模
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