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基于FFT-BN模型的桥式起重机危险等级评估方法及系统
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作者 董青 李俊齐 +2 位作者 徐格宁 牛曙光 赵科渊 《工程设计学报》 北大核心 2026年第1期17-32,共16页
为了在设计源头对起重机所面临的危险实施有效防控,需着力解决现役桥式起重机存在的危险源辨识不全面、量化评估体系缺失及风险评估模型局限性等核心问题。为此,提出了基于FFT-BN(fuzzy fault tree-Bayesian network,模糊故障树-贝叶斯... 为了在设计源头对起重机所面临的危险实施有效防控,需着力解决现役桥式起重机存在的危险源辨识不全面、量化评估体系缺失及风险评估模型局限性等核心问题。为此,提出了基于FFT-BN(fuzzy fault tree-Bayesian network,模糊故障树-贝叶斯网络)模型的桥式起重机危险等级评估方法,并开发了专用型系统平台。聚焦桥式起重机的结构与零部件,通过系统性失效分析建立精细化的危险源辨识流程,以实现潜在风险的全覆盖;构建专家评价量化体系,设计标准的定量指标,并对危险源进行量化表征;提出基于FFT-BN的危险等级评估模型,结合FFT的失效逻辑分析能力与BN的不确定性推理优势,在提升模型精度与效率的同时实现复杂风险的动态量化评估与等级划分;开发专用型桥式起重机危险等级评估系统平台,实现了评估流程的智能化革新,大幅提升工程实际的应用效率。以在役QD40 t-22.5 m-9 m通用桥式起重机为例,验证了所提出方法的工程可行性与场景适用性,为设备本质安全提升与事故主动预防提供了有效的解决方案和工具支持。 展开更多
关键词 危险源辨识 危险源量化 模糊故障树-贝叶斯网络 桥式起重机 危险等级
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Fuzzy-support vector machine geotechnical risk analysis method based on Bayesian network 被引量:6
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作者 LIU Yang ZHANG Jian-jing +2 位作者 ZHU Chong-hao XIANG Bo WANG Dong 《Journal of Mountain Science》 SCIE CSCD 2019年第8期1975-1985,共11页
Machine learning method has been widely used in various geotechnical engineering risk analysis in recent years. However, the overfitting problem often occurs due to the small number of samples obtained in history. Thi... Machine learning method has been widely used in various geotechnical engineering risk analysis in recent years. However, the overfitting problem often occurs due to the small number of samples obtained in history. This paper proposes the FuzzySVM(support vector machine) geotechnical engineering risk analysis method based on the Bayesian network. The proposed method utilizes the fuzzy set theory to build a Bayesian network to reflect prior knowledge, and utilizes the SVM to build a Bayesian network to reflect historical samples. Then a Bayesian network for evaluation is built in Bayesian estimation method by combining prior knowledge with historical samples. Taking seismic damage evaluation of slopes as an example, the steps of the method are stated in detail. The proposed method is used to evaluate the seismic damage of 96 slopes along roads in the area affected by the Wenchuan earthquake. The evaluation results show that the method can solve the overfitting problem, which often occurs if the machine learning methods are used to evaluate risk of geotechnical engineering, and the performance of the method is much better than that of the previous machine learning methods. Moreover,the proposed method can also effectively evaluate various geotechnical engineering risks in the absence of some influencing factors. 展开更多
关键词 GEOTECHNICAL evaluation OVERFITTING problem bayesian network Prior knowledge fuzzy set theory Support vector machine
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Reliability Modeling and Evaluation of Complex Multi-State System Based on Bayesian Networks Considering Fuzzy Dynamic of Faults 被引量:5
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作者 Fangjun Zuo Meiwei Jia +2 位作者 Guang Wen Huijie Zhang Pingping Liu 《Computer Modeling in Engineering & Sciences》 SCIE EI 2021年第11期993-1012,共20页
In the traditional reliability evaluation based on the Bayesian method,the failure probability of nodes is usually expressed by the average failure rate within a period of time.Aiming at the shortcomings of traditiona... In the traditional reliability evaluation based on the Bayesian method,the failure probability of nodes is usually expressed by the average failure rate within a period of time.Aiming at the shortcomings of traditional Bayesian network reliability evaluation methods,this paper proposes a Bayesian network reliability evaluation method considering dynamics and fuzziness.The fuzzy theory and the dynamic of component failure probability are introduced to construct the dynamic fuzzy set function.Based on the solving characteristics of the dynamic fuzzy set and Bayesian network,the fuzzy dynamic probability and fuzzy dynamic importance degree of the fault state of leaf nodes are solved.Finally,through the dynamic fuzzy reliability analysis of CNC machine tool hydraulic system balance circuit,the application of this method in system reliability evaluation is verified,which provides support for fault diagnosis of CNC machine tools. 展开更多
关键词 bayesian network(bn) dynamics fuzzy MULTI-STATE
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An evaluation method of contribution rate based on fuzzy Bayesian networks for equipment system-of-systems architecture 被引量:6
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作者 XU Renjie LIU Xin +2 位作者 CUI Donghao XIE Jian GONG Lin 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2023年第3期574-587,共14页
The contribution rate of equipment system-of-systems architecture(ESoSA)is an important index to evaluate the equipment update,development,and architecture optimization.Since the traditional ESoSA contribution rate ev... The contribution rate of equipment system-of-systems architecture(ESoSA)is an important index to evaluate the equipment update,development,and architecture optimization.Since the traditional ESoSA contribution rate evaluation method does not make full use of the fuzzy information and uncertain information in the equipment system-of-systems(ESoS),and the Bayesian network is an effective tool to solve the uncertain information,a new ESoSA contribution rate evaluation method based on the fuzzy Bayesian network(FBN)is proposed.Firstly,based on the operation loop theory,an ESoSA is constructed considering three aspects:reconnaissance equipment,decision equipment,and strike equipment.Next,the fuzzy set theory is introduced to construct the FBN of ESoSA to deal with fuzzy information and uncertain information.Furthermore,the fuzzy importance index of the root node of the FBN is used to calculate the contribution rate of the ESoSA,and the ESoSA contribution rate evaluation model based on the root node fuzzy importance is established.Finally,the feasibility and rationality of this method are validated via an empirical case study of aviation ESoSA.Compared with traditional methods,the evaluation method based on FBN takes various failure states of equipment into consideration,is free of acquiring accurate probability of traditional equipment failure,and models the uncertainty of the relationship between equipment.The proposed method not only supplements and improves the ESoSA contribution rate assessment method,but also broadens the application scope of the Bayesian network. 展开更多
关键词 equipment system-of-systems architecture(ESoSA) contribution rate evaluation fuzzy bayesian network(Fbn) fuzzy set theory
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Hybrid Reliability Parameter Selection Method Based on Text Mining, Frequent Pattern Growth Algorithm and Fuzzy Bayesian Network 被引量:1
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作者 SHUAI Yon SONG Tailian +1 位作者 WANG Jianping ZHAN Wenbin 《Journal of Shanghai Jiaotong university(Science)》 EI 2018年第3期423-428,共6页
Reliability parameter selection is very important in the period of equipment project design and demonstration. In this paper, the problem in selecting the reliability parameters and their number is proposed. In order ... Reliability parameter selection is very important in the period of equipment project design and demonstration. In this paper, the problem in selecting the reliability parameters and their number is proposed. In order to solve this problem, the thought of text mining is used to extract the feature and curtail feature sets from text data firstly, and frequent pattern tree (FPT) of the text data is constructed to reason frequent item-set between the key factors by frequent patter growth (FPC) algorithm. Then on the basis of fuzzy Bayesian network (FBN) and sample distribution, this paper fuzzifies the key attributes, which forms associated relationship in frequent item-sets and their main parameters, eliminates the subjective influence factors and obtains condition mutual information and maximum weight directed tree among all the attribute variables. Furthermore, the hybrid model is established by reason fuzzy prior probability and contingent probability and concluding parameter learning method. Finally, the example indicates the model is believable and effective. 展开更多
关键词 reliability parameter text mining frequent pattern growth(FPG) fuzzy bayesian network(Fbn)
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基于BN-MC的极端天气下城市新型电力系统风险评估
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作者 刘坤琦 杨涓 +3 位作者 李子依 李鹏 吴建松 刘畅 《中国安全科学学报》 北大核心 2026年第1期157-166,共10页
为缓解极端天气频发对新型电力系统的源、网、荷侧设备构成的重大安全风险,提出一种面向极端天气的城市新型电力系统风险评估模型。首先,基于灾害理论辨识城市新型电力系统的风险因素,并借助解释结构模型(ISM)梳理风险因素间的影响关系... 为缓解极端天气频发对新型电力系统的源、网、荷侧设备构成的重大安全风险,提出一种面向极端天气的城市新型电力系统风险评估模型。首先,基于灾害理论辨识城市新型电力系统的风险因素,并借助解释结构模型(ISM)梳理风险因素间的影响关系;然后,将灾害链拓扑结构映射成为贝叶斯网络(BN),并通过模糊综合评价和事故统计确定各风险因素节点的先验概率,运用敏感性分析和情景分析得出城市新型电力系统事故关键风险节点和多灾害耦合事故后果;最后,借助蒙特卡罗(MC)模拟,对敏感性较高的“杆塔”节点开展运行优化分析。结果表明:BN-MC耦合模型可有效实现城市新型电力系统极端天气风险的量化评估与提升分析,多重极端天气叠加时,光伏发电机组故障概率高达60%,且强风是其故障的关键驱动因素;其次,提升杆塔抗风等级对降低其失效概率效果显著,在实时风速36 km/h时,抗风等级从35 km/h提升至40 km/h,可使失效概率下降59.39%,且该效果呈现非线性特征,低风速区段的风险概率降幅大于中风速区段。 展开更多
关键词 贝叶斯网络(bn) 蒙特卡罗(MC) 极端天气 城市新型电力系统 风险评估 解释结构模型(ISM)
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Reliability Analysis of Lithography Wafer Stage Based on Fuzzy Bayesian Networks
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作者 韩晓萌 李彦锋 +1 位作者 刘宇 黄洪钟 《Journal of Donghua University(English Edition)》 EI CAS 2014年第6期753-756,共4页
Bayesian network( BN) is a powerful tool of uncertainty reasoning. Considering the insufficient information,incorporating fuzzy probability into BN is an effective method. Fuzzy BN was used to solve this problem. In t... Bayesian network( BN) is a powerful tool of uncertainty reasoning. Considering the insufficient information,incorporating fuzzy probability into BN is an effective method. Fuzzy BN was used to solve this problem. In this paper,fuzzy BN was applied in wafer stage system,which was an important part of lithography. BN of wafer stage was transferred from fault tree( FT). The quantitative assessment based on fuzzy BN was carried out. The Birnbaum importance factors of basic events were calculated. Therefore,the system failure probability and the vulnerable components could be gotten. 展开更多
关键词 LITHOGRAPHY wafer stage fuzzy bayesian network(bn) reliability analysis
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基于FTA-BN的塔吊安全事故致因分析
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作者 王涵 申建红 +1 位作者 张茜 郭明慧 《山东理工大学学报(自然科学版)》 2026年第3期1-8,共8页
针对塔吊安全事故频发的现状,通过塔吊安全事故数据探究事故关键致因因素,提出一种基于故障树-贝叶斯网络(FTA-BN)的系统性风险分析方法,从人、设备、管理、环境四大方面识别事故致因。通过扎根理论对塔吊事故数据进行质性分析,提取了2... 针对塔吊安全事故频发的现状,通过塔吊安全事故数据探究事故关键致因因素,提出一种基于故障树-贝叶斯网络(FTA-BN)的系统性风险分析方法,从人、设备、管理、环境四大方面识别事故致因。通过扎根理论对塔吊事故数据进行质性分析,提取了29个致因因素构建故障树模型,进一步将其映射为贝叶斯网络模型,结合逆向推理与敏感性分析进行定量评估。结果表明,安全管理制度不完善、未按照专项施工方案实施、塔吊结构/部件故障、违规操作、政府/相关单位监管不到位、安全意识淡薄、交叉作业、未按要求进行设备维保、断绳脱钩这9个关键致因对事故风险影响显著,其中管理因素是系统性风险的核心。 展开更多
关键词 塔吊安全 贝叶斯网络 故障树 事故致因分析
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Building Bayesian Network(BN)-Based System Reliability Model by Dual Genetic Algorithm(DGA)
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作者 游威振 钟小品 《Journal of Donghua University(English Edition)》 EI CAS 2015年第6期914-918,共5页
A system reliability model based on Bayesian network(BN)is built via an evolutionary strategy called dual genetic algorithm(DGA).BN is a probabilistic approach to analyze relationships between stochastic events.In con... A system reliability model based on Bayesian network(BN)is built via an evolutionary strategy called dual genetic algorithm(DGA).BN is a probabilistic approach to analyze relationships between stochastic events.In contrast with traditional methods where BN model is built by professionals,DGA is proposed for the automatic analysis of historical data and construction of BN for the estimation of system reliability.The whole solution space of BN structures is searched by DGA and a more accurate BN model is obtained.Efficacy of the proposed method is shown by some literature examples. 展开更多
关键词 bayesian network(bn)model dual genetic algorithm(DGA) system reliability historical data
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Uncertain Knowledge Reasoning Based on the Fuzzy Multi Entity Bayesian Networks
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作者 Dun Li Hong Wu +3 位作者 Jinzhu Gao Zhuoyun Liu Lun Li Zhiyun Zheng 《Computers, Materials & Continua》 SCIE EI 2019年第7期301-321,共21页
With the rapid development of the semantic web and the ever-growing size of uncertain data,representing and reasoning uncertain information has become a great challenge for the semantic web application developers.In t... With the rapid development of the semantic web and the ever-growing size of uncertain data,representing and reasoning uncertain information has become a great challenge for the semantic web application developers.In this paper,we present a novel reasoning framework based on the representation of fuzzy PR-OWL.Firstly,the paper gives an overview of the previous research work on uncertainty knowledge representation and reasoning,incorporates Ontology into the fuzzy Multi Entity Bayesian Networks theory,and introduces fuzzy PR-OWL,an Ontology language based on OWL2.Fuzzy PROWL describes fuzzy semantics and uncertain relations and gives grammatical definition and semantic interpretation.Secondly,the paper explains the integration of the Fuzzy Probability theory and the Belief Propagation algorithm.The influencing factors of fuzzy rules are added to the belief that is propagated between the nodes to create a reasoning framework based on fuzzy PR-OWL.After that,the reasoning process,including the SSFBN structure algorithm,data fuzzification,reasoning of fuzzy rules,and fuzzy belief propagation,is scheduled.Finally,compared with the classical algorithm from the aspect of accuracy and time complexity,our uncertain data representation and reasoning method has higher accuracy without significantly increasing time complexity,which proves the feasibility and validity of our solution to represent and reason uncertain information. 展开更多
关键词 Ontology language uncertainty representation uncertainty reasoning fuzzy multi entity bayesian networks belief propagation algorithm fuzzy PR-OWL
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基于模糊DBN的生鲜冷链物流风险评估方法 被引量:1
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作者 马颖 隽雯露 王诗颖 《交通信息与安全》 北大核心 2025年第4期160-167,180,共9页
针对生鲜冷链物流风险因素多、风险状态随时间变化等问题,为提升生鲜冷链物流风险动态评估效能,精准识别其关键风险诱因,基于模糊动态贝叶斯网络开展生鲜冷链物流风险评估方法研究。基于全流程-多维度融合视角,采用分解分析法解构生鲜... 针对生鲜冷链物流风险因素多、风险状态随时间变化等问题,为提升生鲜冷链物流风险动态评估效能,精准识别其关键风险诱因,基于模糊动态贝叶斯网络开展生鲜冷链物流风险评估方法研究。基于全流程-多维度融合视角,采用分解分析法解构生鲜冷链物流运作全流程,运用熵权-TOPSIS法深度筛选核心指标,构建了全流程多维度生鲜冷链物流风险评估指标体系。并结合模糊理论,纳入生鲜特性参数,以确定动态贝叶斯网络的条件概率分布,从而建立生鲜冷链物流的DBN风险评估模型。以武汉市某生鲜冷链物流企业为例开展实证分析,利用GeNIe软件建立DBN风险评估模型,对生鲜冷链物流的风险因素概率评估。结果表明:生鲜冷链物流风险的发生概率随着时间的转移从0.24增加到0.31;其中,运输环节呈现出最高的风险发生概率,构成生鲜冷链物流系统的关键风险变量,且随着时间流逝,存储环节因堆放方式不当、存储温度不适等原因,存储风险易转移至运输环节,导致运输风险增加约10%,对生鲜冷链物流风险影响最大。与BN相比,模糊DBN风险评估的精准性提高19.73%。 展开更多
关键词 供应链风险管理 生鲜冷链物流 风险评估 模糊动态贝叶斯网络
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基于SNA-BN的三峡船闸预约调度模式社会风险评估
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作者 李嵘 刘清 +3 位作者 王磊 钟悦 兰毓峰 南航 《中国安全科学学报》 北大核心 2025年第8期148-155,共8页
为提升三峡船闸智能化水平及风险承载能力,首先,采用社会网络分析(SNA)方法识别并提取三峡船闸预约调度的利益相关方,通过点度中心度、中介中心度和接近中心度这3种中心性指标表征利益相关方的网络特征,并从合法性、合理性、可行性、可... 为提升三峡船闸智能化水平及风险承载能力,首先,采用社会网络分析(SNA)方法识别并提取三峡船闸预约调度的利益相关方,通过点度中心度、中介中心度和接近中心度这3种中心性指标表征利益相关方的网络特征,并从合法性、合理性、可行性、可控性4个维度构建评价指标体系;其次,根据指标间的潜在耦合关系,运用贝叶斯网络(BN)构建三峡船闸预约调度模式社会风险评估模型,以量化各指标作用的方向与强度;最后,通过敏感性分析识别影响社会稳定性的关键因素。结果表明:三峡船闸预约调度模式下的社会风险等级处于较低水平;评价指标体系中的4个准则指标对综合社会风险的影响强度排序为:合法性>可控性>可行性>合理性;规则修订、审批及发布的合规性,负面舆论易发性,群体性事件易发性,预约成功率,安全管理策略覆盖度等指标是影响总体社会风险的关键因素。 展开更多
关键词 社会网络分析(SNA) 贝叶斯网络(bn) 三峡船闸 预约调度 社会风险评估 利益相关方
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基于Fuzzy-DBN的氨泄漏爆炸事故风险分析 被引量:11
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作者 程洁 许开立 +1 位作者 陈守坤 徐晓虎 《安全与环境工程》 CAS 北大核心 2020年第5期147-152,164,共7页
传统的事件树、故障树和静态贝叶斯网络在事故风险分析中存在一定的局限性,动态贝叶斯网络对于描述多态性、相关性、时序性、交互行为的复杂系统在节点的安全风险以及预测未来一段时间内事故发生概率方面较为突出。提出将动态贝叶斯网... 传统的事件树、故障树和静态贝叶斯网络在事故风险分析中存在一定的局限性,动态贝叶斯网络对于描述多态性、相关性、时序性、交互行为的复杂系统在节点的安全风险以及预测未来一段时间内事故发生概率方面较为突出。提出将动态贝叶斯网络模型与模糊数学方法相结合的思路,分析氨制冷系统预防氨泄漏爆炸事故风险的方法。先根据氨泄漏爆炸事故故障树,利用GENIE软件建立了氨泄漏爆炸事故风险评估的模糊动态贝叶斯网络(Fuzzy-DBN)模型;然后利用模糊数学方法确定动态贝叶斯网络模型中的条件概率参数,利用动态贝叶斯网络算法推理计算各根节点发生的后验概率,并进行前向推理,预测事故发生概率;最后将该风险评估模型应用于某氨泄漏爆炸事故风险分析,通过案例分析验证了该模型的可行性。得出导致氨泄漏爆炸事故发生的关键火源因素及泄漏因素,并基于动态贝叶斯网络,根据氨制冷系统发生氨泄漏报警情况,对氨泄漏爆炸事故发生概率进行预测。 展开更多
关键词 氨泄漏爆炸事故 风险分析 动态贝叶斯网络(Dbn) 模糊数学 氨制冷系统 事故发生概率
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基于故障树和模糊BN的地铁工程技术接口施工风险评估
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作者 闫林君 刘晶晶 +1 位作者 王亚妮 陈慧鑫 《中国安全科学学报》 北大核心 2025年第11期24-31,共8页
为量化城市地铁工程技术接口施工风险并甄别关键风险因素,提出一种基于故障树和模糊贝叶斯网络(BN)的地铁工程技术接口施工风险评估方法。首先,从人员、材料设备、技术、环境、管理5个方面识别出地铁工程技术接口施工风险因素;然后,运... 为量化城市地铁工程技术接口施工风险并甄别关键风险因素,提出一种基于故障树和模糊贝叶斯网络(BN)的地铁工程技术接口施工风险评估方法。首先,从人员、材料设备、技术、环境、管理5个方面识别出地铁工程技术接口施工风险因素;然后,运用故障树模型梳理施工风险因素之间的逻辑关系,构建地铁工程技术接口施工风险BN模型,并基于模糊集理论和专家经验评估各施工风险因素发生概率;最后,以北京地铁17号线北段工程为例,进行施工风险仿真评估,验证文中所提风险评估方法的科学性和有效性。研究结果表明:在地铁工程技术接口施工阶段,风险发生的概率为65%,处于中风险等级,且与工程技术接口实际施工的情况相匹配;通过逆向诊断推理,可快速识别出影响较大的风险因素组合,提高技术接口施工风险事件的诊断效率;通过敏感性分析得出,技术接口施工人员安全意识薄弱、接口施工管理制度的落实情况差是导致工程技术接口施工风险发生的关键致险因素。通过构建故障树模型,清晰梳理了风险因素间的逻辑关系,再转化为模糊BN模型,实现了对风险概率的计算与评估。 展开更多
关键词 故障树 模糊贝叶斯网络(bn) 地铁工程技术接口 施工风险 风险因素
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基于BT-BN的无人机运行安全风险分析
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作者 齐福强 张晓阳 +2 位作者 陈姝宁 孟明源 朱峰 《科学技术与工程》 北大核心 2025年第20期8745-8752,共8页
为有效评估并控制无人机(unmanned aerial vehicle, UAV)运行风险,在总结无人机地面撞击各种风险因素的基础上,分析无人机地面撞击可能的发生原因,确定相应的控制措施,建立风险分析与控制技术相结合的安全屏障模型,可清晰地显示无人机... 为有效评估并控制无人机(unmanned aerial vehicle, UAV)运行风险,在总结无人机地面撞击各种风险因素的基础上,分析无人机地面撞击可能的发生原因,确定相应的控制措施,建立风险分析与控制技术相结合的安全屏障模型,可清晰地显示无人机运行安全致因、缓解措施以及事故后果之间的逻辑关系;进一步将蝴蝶结(bow-tie, BT)模型映射到贝叶斯网络(Bayesian network, BN),量化BT模型中各要素,计算不安全事件发生的概率。结果表明:该模型能够清晰地展现风险控制过程并有效降低无人机运行风险,为无人机运行风险评估与控制提供了一种高效、实用的方法。 展开更多
关键词 无人机(UAV) 运行风险 蝴蝶结(BT)模型 贝叶斯网络(bn) 风险控制
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Prediction of TBM jamming risk in squeezing grounds using Bayesian and artificial neural networks 被引量:19
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作者 Rohola Hasanpour Jamal Rostami +2 位作者 Jürgen Schmitt Yilmaz Ozcelik Babak Sohrabian 《Journal of Rock Mechanics and Geotechnical Engineering》 SCIE CSCD 2020年第1期21-31,共11页
This study presents an application of artificial neural network(ANN)and Bayesian network(BN)for evaluation of jamming risk of the shielded tunnel boring machines(TBMs)in adverse ground conditions such as squeezing gro... This study presents an application of artificial neural network(ANN)and Bayesian network(BN)for evaluation of jamming risk of the shielded tunnel boring machines(TBMs)in adverse ground conditions such as squeezing grounds.The analysis is based on database of tunneling cases by numerical modeling to evaluate the ground convergence and possibility of machine entrapment.The results of initial numerical analysis were verified in comparison with some case studies.A dataset was established by performing additional numerical modeling of various scenarios based on variation of the most critical parameters affecting shield jamming.This includes compressive strength and deformation modulus of rock mass,tunnel radius,shield length,shield thickness,in situ stresses,depth of over-excavation,and skin friction between shield and rock.Using the dataset,an ANN was trained to predict the contact pressures from a series of ground properties and machine parameters.Furthermore,the continuous and discretized BNs were used to analyze the risk of shield jamming.The results of these two different BN methods are compared to the field observations and summarized in this paper.The developed risk models can estimate the required thrust force in both cases.The BN models can also be used in the cases with incomplete geological and geomechanical properties. 展开更多
关键词 bayesian network(bn) Artificial neural network(ANN) Shielded tunnel BORING machine(TBM) Jamming RISK Numerical simulation SQUEEZING ground
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基于FUZZY-BN-FTA的厂区架空燃气管道泄漏可能性研究 被引量:6
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作者 杨斯涵 许开立 《中国安全生产科学技术》 CAS CSCD 北大核心 2024年第2期82-89,共8页
为研究厂区架空燃气管道泄漏的故的可能性,提出模糊数学方法、贝叶斯网络模型以及故障树模型相结合的集成模型。通过GeNIe软件建立架空燃气管道泄漏事故的模糊贝叶斯网络模型;引入Leaky Noisy-or Gate扩展模型对模糊贝叶斯网络中节点的... 为研究厂区架空燃气管道泄漏的故的可能性,提出模糊数学方法、贝叶斯网络模型以及故障树模型相结合的集成模型。通过GeNIe软件建立架空燃气管道泄漏事故的模糊贝叶斯网络模型;引入Leaky Noisy-or Gate扩展模型对模糊贝叶斯网络中节点的条件概率表进行修正,结合基本事件先验概率预测架空燃气管道泄漏的概率值,并引入3个基本事件重要度确定基本事件的重要性排序,同时进行敏感性分析确定主要影响因素,提出控制措施。研究结果表明:厂区车辆撞击、管道疲劳损耗、管材质量不佳、安装设计不合理、焊接缺陷为导致架空燃气管道泄漏的主要因素。研究结果可为工业企业安全管理人员有针对性地制定控制措施,减少事故发生率提供参考。 展开更多
关键词 架空燃气管道泄漏 可能性分析 贝叶斯网络 梯形模糊数 Leaky Noisy-or Gate扩展模型
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Finding optimal Bayesian networks by a layered learning method 被引量:4
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作者 YANG Yu GAO Xiaoguang GUO Zhigao 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2019年第5期946-958,共13页
It is unpractical to learn the optimal structure of a big Bayesian network(BN)by exhausting the feasible structures,since the number of feasible structures is super exponential on the number of nodes.This paper propos... It is unpractical to learn the optimal structure of a big Bayesian network(BN)by exhausting the feasible structures,since the number of feasible structures is super exponential on the number of nodes.This paper proposes an approach to layer nodes of a BN by using the conditional independence testing.The parents of a node layer only belong to the layer,or layers who have priority over the layer.When a set of nodes has been layered,the number of feasible structures over the nodes can be remarkably reduced,which makes it possible to learn optimal BN structures for bigger sizes of nodes by accurate algorithms.Integrating the dynamic programming(DP)algorithm with the layering approach,we propose a hybrid algorithm—layered optimal learning(LOL)to learn BN structures.Benefitted by the layering approach,the complexity of the DP algorithm reduces to O(ρ2^n?1)from O(n2^n?1),whereρ<n.Meanwhile,the memory requirements for storing intermediate results are limited to O(C k#/k#^2 )from O(Cn/n^2 ),where k#<n.A case study on learning a standard BN with 50 nodes is conducted.The results demonstrate the superiority of the LOL algorithm,with respect to the Bayesian information criterion(BIC)score criterion,over the hill-climbing,max-min hill-climbing,PC,and three-phrase dependency analysis algorithms. 展开更多
关键词 bayesian network (bn) structure LEARNING layeredoptimal LEARNING (LOL)
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Learning Bayesian networks by constrained Bayesian estimation 被引量:3
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作者 GAO Xiaoguang YANG Yu GUO Zhigao 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2019年第3期511-524,共14页
Bayesian networks (BNs) have become increasingly popular in recent years due to their wide-ranging applications in modeling uncertain knowledge. An essential problem about discrete BNs is learning conditional probabil... Bayesian networks (BNs) have become increasingly popular in recent years due to their wide-ranging applications in modeling uncertain knowledge. An essential problem about discrete BNs is learning conditional probability table (CPT) parameters. If training data are sparse, purely data-driven methods often fail to learn accurate parameters. Then, expert judgments can be introduced to overcome this challenge. Parameter constraints deduced from expert judgments can cause parameter estimates to be consistent with domain knowledge. In addition, Dirichlet priors contain information that helps improve learning accuracy. This paper proposes a constrained Bayesian estimation approach to learn CPTs by incorporating constraints and Dirichlet priors. First, a posterior distribution of BN parameters is developed over a restricted parameter space based on training data and Dirichlet priors. Then, the expectation of the posterior distribution is taken as a parameter estimation. As it is difficult to directly compute the expectation for a continuous distribution with an irregular feasible domain, we apply the Monte Carlo method to approximate it. In the experiments on learning standard BNs, the proposed method outperforms competing methods. It suggests that the proposed method can facilitate solving real-world problems. Additionally, a case study of Wine data demonstrates that the proposed method achieves the highest classification accuracy. 展开更多
关键词 bayesian networks (bns) PARAMETER LEARNING CONSTRAINTS SPARSE data
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A Bayesian Network Approach for Offshore Risk Analysis Through Linguistic Variables 被引量:4
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作者 Ren J. Wang J. +2 位作者 Jenkinson I. Xu D. L. Yang J. B. 《China Ocean Engineering》 SCIE EI 2007年第3期371-388,共18页
This paper presents a new approach for offshore risk analysis that is capable of dealing with linguistic probabilities in Bayesian networks ( BNs). In this paper, linguistic probabilities are used to describe occurr... This paper presents a new approach for offshore risk analysis that is capable of dealing with linguistic probabilities in Bayesian networks ( BNs). In this paper, linguistic probabilities are used to describe occurrence likelihood of hazardous events that may cause possible accidents in offshore operations. In order to use fuzzy information, an f-weighted valuation function is proposed to transform linguistic judgements into crisp probability distributions which can be easily put into a BN to model causal relationships among risk factors. The use of linguistic variables makes it easier for human experts to express their knowledge, and the transformation of linguistic judgements into crisp probabilities can significantly save the cost of computation, modifying and maintaining a BN model. The flexibility of the method allows for multiple forms of information to be used to quantify model relationships, including formally assessed expert opinion when quantitative data are lacking, or when only qualitative or vague statements can be made. The model is a modular representation of uncertain knowledge caused due to randomness, vagueness and ignorance. This makes the risk analysis of offshore engineering systems more functional and easier in many assessment contexts. Specifically, the proposed f-weighted valuation function takes into account not only the dominating values, but also the a-level values that are ignored by conventional valuation methods. A case study of the collision risk between a Floating Production, Storage and Off-loading (FPSO) unit and the anthorised vessels due to human elements during operation is used to illustrate the application of the proposed model. 展开更多
关键词 Risk analysis fiweighted valuation function bayesian networks fuzzy number linguistic probability off-shore engineering systems
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