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基于规则推理的网络结线分析与建模研究
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作者 王子才 许海平 《黑龙江自动化技术与应用》 1999年第4期13-16,25,共5页
网络结线的实时判断推理是潮流计算的前提,是网控培训仿真机建模技术的关键之一。介绍了采用规则基系统来分析判断电站网络结线的模型及程序。程序利用开关及刀闸的实时状态信息判断网络连结情况。判断推理的结果作为网络实时潮流计算... 网络结线的实时判断推理是潮流计算的前提,是网控培训仿真机建模技术的关键之一。介绍了采用规则基系统来分析判断电站网络结线的模型及程序。程序利用开关及刀闸的实时状态信息判断网络连结情况。判断推理的结果作为网络实时潮流计算的人口参数。本文所建模型满足了培训仿真机的要求。 展开更多
关键词 建模 网络结线分析 网络分析 规则推理
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电力系统拓朴可观测性和量测量配置的辅助分析
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作者 梁统珍 陈超英 《电力系统及其自动化学报》 CSCD 1993年第2期33-37,32,共6页
本文提出了一种简便、有效的电力系统可观测性和量测量配置的计算机辅助分析算法。相应的辅助分析软件可以为电力系统调度中心的工作人员在进行电网量测量的合理配置,或者为在远动装置检修、更新时进行量测量的调整补充,提供辅助分析的... 本文提出了一种简便、有效的电力系统可观测性和量测量配置的计算机辅助分析算法。相应的辅助分析软件可以为电力系统调度中心的工作人员在进行电网量测量的合理配置,或者为在远动装置检修、更新时进行量测量的调整补充,提供辅助分析的手段。该方法可以从在线实时数据库获得系统结构,开关状态和量测系统信息,通过网络结线分析和网络可观测生成树分析网络可观测性,保证电力系统状态估计软件的正常运行。 展开更多
关键词 电力系统 网络结线分析 可观测生成树
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Seismic Health Monitoring of Foundations Using Artificial Neural Networks
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作者 Azlan bin Adnan Mohammadreza Vafaei 《Journal of Civil Engineering and Architecture》 2012年第6期730-737,共8页
Damage identification plays an important role in structural health monitoring systems. Despite variety in damage identification methods, little attention has been paid to the seismic damage identification of foundatio... Damage identification plays an important role in structural health monitoring systems. Despite variety in damage identification methods, little attention has been paid to the seismic damage identification of foundations. When shear walls serve as the lateral load resistance system of structures, foundations may subject to the high level of concentrated moment and shear forces. Consequently, they can experience severe damage. Since such damage is often internal and not visible, visual inspections cannot identify the location and the severity of damage. Therefore, a robust method is required for damage localization and quantification of foundations. According to the concept of performance-based seismic design of structures, the seismic behavior of foundations is considered as Force-Controlled. Therefore, for damage identification of foundation, internal forces should be estimated during ground motions. In this study, for real-time seismic damage detection of foundations, a method based on artificial neural networks was proposed. A feed-forward multilayer neural network with one hidden layer was selected to map input samples to output parameters. The lateral displacements of stories were considered as the input parameters of the neural network while moment and shear force demands at critical points of foundations were taken into account as the output parameters. In order to prepare well-distributed data sets for training the neural network, several nonlinear time history analyses were carried out. The proposed method was tested on the foundation of a five-story concrete shear wall building. The obtained results revealed that the proposed method was successfully estimated moment and shear force demands at the critical points of the foundation. 展开更多
关键词 Structural health monitoring seismic damage detection artificial neural networks performance-based design.
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