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1.
现有的变压器故障诊断方法较为复杂且计算冗余度较高,在高压变频器的功率单元频繁发生故障时难以高效地检测故障。为此,提出基于迭代退火算法的高压变频器功率单元频繁故障诊断方法。采用小波包分解方法提取高压变频器功率单元的电压信号特征熵,将该特征熵输入到支持向量机模型。使用迭代退火算法优化支持向量机的训练参数,并输出诊断结果。研究结果表明:该方法提取的高压变频器单元故障的平均冗余度最低至3.2%,平均诊断时间为15.1 ms,可实现高压变频器功率单元频繁故障的高效诊断。  相似文献   

2.
使用支持向量机(SVM)方法对矿井通风系统进行故障诊断,存在惩罚系数(c)和核函数系数(g),通过人工方法选取效率低、难以达到较高准确率并且出现过拟合的问题。为了提高矿井通风故障诊断的效率、准确率,同时避免过拟合现象,提出了一种改进遗传算法(GA),在故障诊断过程中对支持向量机的c,g参数进行优化。经过多组试验分析,研究结果表明:用遗传算法优化的SVM矿井通风故障诊断系统相比于未优化系统的故障诊断准确率有所提升,参数未优化前故障诊断的准确率为60%,优化后的准确率为97.894 7%,并且优化参数经过大数据样本验证,未出现过拟合现象,证明了本文提出方法的有效性。  相似文献   

3.
为了避免风量单一特征进行故障位置诊断的不适定性,提出基于风量-风压复合特征的故障位置诊断方法,实现特征信息的多维互补,提高故障位置诊断的准确度。利用蒙特卡洛方法生成大致满足实际故障风阻值分布的故障仿真样本,为了避免不同变量之间不同量纲、不同数量级造成的数据损失,对原始风量、风压数据进行标准化处理,并分别以风量单一特征、风压单一特征、风量-风压复合特征作为支持向量机(SVM)的输入,构建通风系统阻变型故障位置诊断模型。通过故障模拟实验研究表明:风量、风压单一特征进行故障位置诊断的准确度分别为89.80%,90.34%,风量-风压复合特征进行故障位置诊断的准确度为98.23%,说明风量-风压复合特征进行故障诊断可以消除风量、风压单一特征进行故障诊断的不适定性,提高故障诊断的准确度。  相似文献   

4.
应急通信预案作为应急通信保障的行动纲领,其文本有效性将直接影响预案有效性,进而影响到整个应急救援行动的有效性。针对预案文本有效性问题,从文本故障视角出发,基于故障树分析法构建通信保障应急预案有效性评估模型;采用语句成分分析法和伪代码转换法对预案进行故障形式诊断,结合标准故障树,计算预案的有效性并给出具体评估步骤;最终,通过4个样本预案对模型进行实例分析,结果表明:该模型能够提高预案文本故障的识别效率,对预案的编制或修订具有参考意义。  相似文献   

5.
The offshore oil industry has expanded to deep water and Arctic. The harsh operating conditions (e.g., ice and strong wind) and increasing complicated system raise the occurrence likelihood of system faults. This requires timely fault isolation and management in the subsea system. However, the offshore oil industry mainly relies on humans to isolate faults based on alarms. With harsh operating conditions and increasing complicated system, this industry urgently needs research on more efficient fault isolation and cause diagnosis methods. Unfortunately, limited research is conducted on fault isolation method in the offshore oil industry. Furthermore, in industry 4.0 era, large amounts of information are obtained. This provides precondition for the application of information fusion technique which aims to improve diagnosis results. However, to the authors’ knowledge, information fusion has not been much studied in the fault isolation of the offshore oil industry. Moreover, the interaction of different subsystems contains valuable information. How the interaction of different subsystems can influence the fault diagnosis has not been explored. This paper proposes a Bayesian network (BN) based method for timely fault isolation and cause diagnosis for the offshore oil industry. The work fuses different information, and it also includes the dependency among different subsystems in the fault diagnosis. As an important alarm source, false alarms are also taken into account in the model. A case study on the subject of the subsea wellhead and chemical injection systems is conducted to demonstrate the functions and merits of the proposed method.  相似文献   

6.
为了快速、准确地诊断出输气压力管道不同的泄漏状态,提出了一种基于小波包熵与人工鱼群优化支持向量机(AFSA-SVM)相结合的压力管道泄漏模式识别方法。该方法首先对管道泄漏时产生的声发射信号进行小波包分解,并对分解的最后一层节点重构信号进行相关性分析,以获得敏感的节点信号。然后求取这些敏感节点信号的小波包熵值,作为管道不同泄漏信号的特征向量。最后将小波包熵值输入到SVM中,并运用AFSA方法对SVM分类器中惩罚因子C与核函数参数g进行全局优化,以提高其分类准确率。实验结果表明,该方法能准确地识别压力管道不同的泄漏状态,为天然气管道泄漏状态监测提供新方法。  相似文献   

7.
涂文勇 《安全》2019,40(2):12-14,18
为了提高液化石油气罐车采用压缩机卸车法作业的安全性,通过对某液化石油气罐车卸车作业时其顶部安全阀意外开启泄压的事故原因进行调查,查明了导致罐车顶部安全阀意外开启泄压的直接原因是操作工人违章作业导致储罐与罐车罐体内气相液化石油气压差安全裕量严重不足所致。同时探讨了在夏季高温环境采用压缩机法对液化石油气罐车卸车作业时液化石油气罐车顶部安全阀整定值设定、液化石油气储罐与罐车罐体内气相液化石油气压差安全裕量的重要性。  相似文献   

8.
为分析影响常减压蒸馏装置平稳运行的设备失效模式及故障部件,基于1 151条设备故障数据,采用Bayesian网络分析方法,分别对离心泵、压缩机、电动机构建基于Bayesian网络的设备故障概率分析模型,分析故障部件、失效模式、故障后果之间的定量概率关系。研究结果表明:离心泵、压缩机、电动机停运的关键致因部件分别为轴承箱密封故障、活塞环故障、轴承故障,同时得到导致设备停运的故障部件敏感度排序。研究结果有助于提高设备故障风险防范及检维修工作效率,同时可为备件优化方案提供思路。  相似文献   

9.
针对公共安全突发事件应急救援的封闭空间场景(Confined Space Scene,CSS)信息采集不通畅、不全面而影响救援等问题,提出1种基于不变特征转换(Scale invariant feature transform,SIFT)和支持向量机(Support Vector Machine,SVM)的图像信息异常检测方法。在场景内外信息传递“断环”情况下,该方法可利用物联网技术采集的图片,或以网络图片信息、历史类似场景数据等作为补充,通过SIFT特征提取、K means聚类处理以及SVM分类,实现场景的智能识别。经仿真分析,该方法能实现封闭空间内外部图像信息互通,“接补”因无法了解事件内部情况而产生的救援环节链条的“断环”,为救援提供决策参考。  相似文献   

10.
针对当前管网系统数据量大不利于传统模型方法诊断故障的问题,设计了1种基于深度置信网络的管网故障诊断算法。首先,对管网数据结构以及管网系统运行状态进行分析,选取管网主要数据作为故障诊断网络的输入,确定相应运行状态作为诊断网络输出;其次,设计了基于多个受限制玻尔兹曼机与Softmax分类器级联的深度置信网络,并且利用对比散度算法和BP算法对模型进行预训练与调优,使模型参数达到全局最优;最后,通过实验测试确定所设计的深度置信网络的训练迭代次数与网络层数,使算法诊断准确率达到最优。研究结果表明:提出的基于深度置信网络的管网故障诊断算法对管网故障诊断可以达到良好的诊断结果,泄漏预测准确率在验证集样本上可达96.87%,在管网泄漏检测方面,相较于传统基于模型的方法优势明显。  相似文献   

11.
Earlier studies on fault diagnosis of the pipeline and pump unit systems (PPU) relied mainly on independent equipment analyses, which usually lead to false alarms because of the loss of information fusion. The aim of this study is to utilize the status coupling relationship to improve fault detection sensitivity and reduce false alarm rate. A real-time status identification of related equipment step is added between capturing abnormal signals and listing out diagnosis results. For example, when the pipeline pressure fluctuation is found abnormal, a status analysis of pump units is performed immediately, if the pump units are proven to be operational normally, then the pipeline leak alarm is acknowledged valid. The logical reasoning algorithm is used to capture abnormal conditions of pipeline pressures. The pump unit faults are captured by combining information from multiple sources. Field applications show that the proposed method significantly improves the PPU fault detection capability on fault detection sensitive and accuracy.  相似文献   

12.
为实现矿井通风阻变型故障智能诊断,解决风速传感器优化布置与诊断模型不匹配的问题,提出基于决策树的矿井通风故障位置分类判断、故障量回归预测及嵌入式风速传感器优化布置一体化方法;以唐安矿为例对上述方法进行验证。结果表明:矿井通风空间数据集无量纲化能提高故障诊断准确率、提升模型收敛速度,剪枝能提高模型泛化能力;以基尼系数为嵌入式传感器优化布置选择标准,其模型故障诊断准确率更高,当风速传感器数量为15时,故障诊断准确率为84.5%,继续增加风速传感器数量故障诊断准确率提升较小。人工智能诊断技术的应用具有较大的经济和社会效益,是智慧矿山的重要研究方向之一。  相似文献   

13.
信息融合技术在锅炉故障诊断中的应用   总被引:1,自引:0,他引:1  
为满足锅炉故障诊断的要求,用信息融合技术,提出了具有数据挖掘功能的锅炉故障诊断系统的一般模型。在对锅炉故障诊断中的信息进行分类的基础上,详细阐述了模型中各功能模块的作用以及它们之间的层次关系,并提出了模型中关键技术的实现方法。实例分析表明,信息融合技术用于锅炉故障诊断对提高诊断的可靠性和准确性有重要作用。  相似文献   

14.
模糊支持向量机(FSVM)综合了模糊理论和支持向量机(SVM)的学习理论,不仅继承了SVM在小样本情况下所具有的较强识别能力的特点,并且比SVM拥有更好的学习能力。在FSVM算法中,每个样本被赋予一个隶属度值,使得构造目标函数时不同的样本有不同的贡献,达到最大限度的消除噪声或者孤立点的效果。运用了灰色关联分析(GRA)对煤与瓦斯突出指标进行提取,引入了一个合适的模糊隶属度函数,并在此基础上提出了基于FSVM的煤与瓦斯突出预测的模型,通过实际数据的验证和其他预测方法的对比,证明了FSVM模型能够满足煤与瓦斯突出预测的要求。最后,将FSVM和传统SVM对同一组数据进行训练,证明了FSVM相比较传统SVM拥有更高的精确度。  相似文献   

15.
The safety status of a dynamic mechanical system is determined by its historical, current and future states together. Therefore the safety assessment process of such system should have dynamic and diachronic characteristics, which helps to track the dynamic states of system and predict future probable danger in advance. In order to overcome the disadvantages of traditional static safety assessment approaches, the results from which are often delayed and prone to produce false alarms, an adaptive online safety assessment method is proposed in this paper, which consists of two steps. A dynamic adaptive weighting method is first introduced and an aggregation scheme based on “3-D” time perspective is further presented to integrate system’s historical, current and future safety performance in a unit framework, considering both of assessment and pre-warning functions. The proposed method is able to track and predict the safety status of system dynamically and discover the potential fault in time. Its feasibility and benefits are investigated with a field case study of gas turbine compressor system, which validates that the proposed method improves the accuracy of safety assessment in dynamic conditions, and finally helps to restrain the fault symptom by proactive maintenance successfully.  相似文献   

16.
在综合分析、比较了最新发展的光纤通信网络的4种故障诊断方法的计算复杂度、平均检测次数,结合江西省电力通信网络的具体情况的基础上,提出了一套故障诊断的改进方案。该方案将该电力通信网络简化为一个有向图,并考虑电力通信网络的单故障边失效和单故障节点失效两种情形。基于该电力通信的网络拓扑分析、权衡故障诊断时间及故障诊断精确度表明,边概率失效的故障诊断方法适用于单故障边失效情形,而对于单故障节点失效情形,基于图论的系统模型、网络模型以及改进的反向检测模型的性能相当。该方案将对提高江西省电力通信网络系统的诊断效率以及可靠性具有借鉴和参考作用。  相似文献   

17.
Subsea Xmas tree is a vital equipment for offshore oil and gas development. Aiming at the fault mode of subsea Christmas tree system under production conditions, the fault tree of subsea tree system was established, which was transformed into Dynamic Bayesian network, and the reliability and availability of subsea tree system with different repair states are quantitatively analyzed. In this paper, the DBNs are partially verified by the method based on three axes. The results show that the reliability of subsea vertical tree system is slightly higher than that of subsea horizontal tree system. After repair and maintenance, the performance of subsea tree system has been significantly improved, and the improvement of the system performance by preventive maintenance is more obvious. Compared with the perfect repair, the performance of the system with imperfect repair is not significantly reduced. Compared with perfect repair & preventive maintenance, the performance of the system with imperfect repair & preventive maintenance is slightly reduced. In addition, the influence of failure rates and degradation probability on reliability and availability is analyzed. By comparing the influence of failure rates on the system performance of non-maintenance and maintenance, it is found that the change of failure rates has the greatest influence on the reliability and the least influence on the availability of perfect repair & preventive maintenance. By comparing the performance of each component in the subsea tree system, it is found that the failure rates has the most obvious influence on the chock module, and gate valve and tree cap have the most significant influence on the reliability of the system. In order to improve the reliability of subsea tree system, it is necessary to improve the reliability of chock module, gate valve and tree cap.  相似文献   

18.
权重值的确定是安全性评价中非常重要的环节,其准确与否直接决定了评价结果的是否能达到预期目的。为了解决在多层次评价体系中间层和顶层权重无法由熵值法直接求得的不便并保证评价结果的合理性,尝试将基于熵的TOPSIS安全评价方法进行改进,首先将主观评价意见定量化,根据量化结果利用层次分析法求取各因素的主观权重,然后利用信息熵值得到客观权重,最后将二者进行折衷处理,在客观熵权基础上融入主观意见,并引入综合指数的概念来协助计算多层次评价体系中间层和顶层客观权重,通过实例应用,所建立的评价模型计算结果与目前广泛采用的模糊综合评比结果基本一致,解决了多层次评价结构中权重值不易获得的问题。这对于具有多层次体系的安全评价方法不失为一种发展思路。  相似文献   

19.
支持向量机法在煤与瓦斯突出分析中的应用研究   总被引:7,自引:5,他引:2  
通过分析采煤工作面煤与瓦斯涌出量与地质构造指标的对应关系,应用支持向量机(SVM)方法对煤与瓦斯涌出类型及涌出量进行分析。建立两类突出识别的SVM模型、多类型突出识别的H-SVMs模型以及预测瓦斯涌出量的支持向量回归模型。研究结果表明:SVM方法能够很好地对煤与瓦斯突出模式进行识别,所建立的采煤工作面瓦斯涌出量预测模型的精度高于应用BP神经网络预测精度;SVM理论基础严谨,决策函数结构简单,泛化能力强,并且决策函数中的法向量W可以反映突出模式识别的地质结构指标的权重。  相似文献   

20.
Pipeline faults like leakage and blockage always create problem for engineers. Detection of exact fault quantity and its location is necessary for smooth functioning of a plant or industry and safety of the environment. In this paper brief discussion is made on various pipeline fault detection methods viz. Vibration analysis, Pulse echo methodology, Acoustic techniques, Negative pressure wave based leak detection system, Support Vector Machine (SVM) based pipeline leakage detection, Interferometric fibre sensor based leak detection, Filter Diagonalization Method (FDM), etc. In this paper merit and demerits of all methods are discussed. It is found that these methods have been applied for specific fluids like oil, gas and water, for different layout patterns like straight and zigzag, for various lengths of pipeline like short and long and also depending on various operating conditions. Therefore, a comparison among all methods has been done based on their applicability. Among all fault detection methods, Acoustic reflectometry is found most suitable because of its proficiency to identify blockages and leakage in pipe as small as 1% of its diameter. Moreover this method is economical and applicable for straight, zigzag and long, short length pipes for low, medium and high density fluid.  相似文献   

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