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Multivariable Dynamic Modeling for Molten Iron Quality Using Incremental Random Vector Functional-link Networks 被引量:4
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作者 Li ZHANG Ping ZHOU +2 位作者 He-da SONG Meng YUAN Tian-you CHAI 《Journal of Iron and Steel Research International》 SCIE EI CAS CSCD 2016年第11期1151-1159,共9页
Molten iron temperature as well as Si, P, and S contents is the most essential molten iron quality (MIQ) indices in the blast furnace (BF) ironmaking, which requires strict monitoring during the whole ironmaking p... Molten iron temperature as well as Si, P, and S contents is the most essential molten iron quality (MIQ) indices in the blast furnace (BF) ironmaking, which requires strict monitoring during the whole ironmaking production. However, these MIQ parameters are difficult to be directly measured online, and large-time delay exists in off-line analysis through laboratory sampling. Focusing on the practical challenge, a data-driven modeling method was presented for the prediction of MIQ using the improved muhivariable incremental random vector functional-link net- works (M-I-RVFLNs). Compared with the conventional random vector functional-link networks (RVFLNs) and the online sequential RVFLNs, the M-I-RVFLNs have solved the problem of deciding the optimal number of hidden nodes and overcome the overfitting problems. Moreover, the proposed M I RVFLNs model has exhibited the potential for multivariable prediction of the MIQ and improved the terminal condition for the multiple-input multiple-out- put (MIMO) dynamic system, which is suitable for the BF ironmaking process in practice. Ultimately, industrial experiments and contrastive researches have been conducted on the BF No. 2 in Liuzhou Iron and Steel Group Co. Ltd. of China using the proposed method, and the results demonstrate that the established model produces better estima ting accuracy than other MIQ modeling methods. 展开更多
关键词 molten iron quality multivariable incremental random vector functional-link network blast furnace iron-making data-driven modeling principal component analysis
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Optimization of processing parameters for microwave drying of selenium-rich slag using incremental improved back-propagation neural network and response surface methodology 被引量:4
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作者 李英伟 彭金辉 +2 位作者 梁贵安 李玮 张世敏 《Journal of Central South University》 SCIE EI CAS 2011年第5期1441-1447,共7页
In the non-linear microwave drying process, the incremental improved back-propagation (BP) neural network and response surface methodology (RSM) were used to build a predictive model of the combined effects of ind... In the non-linear microwave drying process, the incremental improved back-propagation (BP) neural network and response surface methodology (RSM) were used to build a predictive model of the combined effects of independent variables (the microwave power, the acting time and the rotational frequency) for microwave drying of selenium-rich slag. The optimum operating conditions obtained from the quadratic form of the RSM are: the microwave power of 14.97 kW, the acting time of 89.58 min, the rotational frequency of 10.94 Hz, and the temperature of 136.407 ℃. The relative dehydration rate of 97.1895% is obtained. Under the optimum operating conditions, the incremental improved BP neural network prediction model can predict the drying process results and different effects on the results of the independent variables. The verification experiments demonstrate the prediction accuracy of the network, and the mean squared error is 0.16. The optimized results indicate that RSM can optimize the experimental conditions within much more broad range by considering the combination of factors and the neural network model can predict the results effectively and provide the theoretical guidance for the follow-up production process. 展开更多
关键词 microwave drying response surface methodology optimization incremental improved back-propagation neural network PREDICTION
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Tracking maneuvering target based on neural fuzzy network with incremental neural leaning 被引量:1
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作者 Liu Mei Quan Taifan Yao Tianbin 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2006年第2期343-349,共7页
The scheme for tracking maneuvering target based on neural fuzzy network with incremental neural learning is proposed. When tracked target maneuver occurs, the scheme can detect maneuver immediately and estimate the m... The scheme for tracking maneuvering target based on neural fuzzy network with incremental neural learning is proposed. When tracked target maneuver occurs, the scheme can detect maneuver immediately and estimate the maneuver value accurately , then the tracking filter can be compensated correctly and duly by the estimated maneuver value. When environment changes, neural fuzzy network with incremental neural learning (INL-SONFIN) can find its optimal structure and parameters automatically to adopt to changed environment. So, it always produce estimated output very close to the true maneuver value that leads to good tracking performance and avoids misstracking. Simulation results show that the performance is superior to the traditional schemes and the scheme can fit changed dynamic environment to track maneuvering target accurately and duly. 展开更多
关键词 neural fuzzy network incremental neural learning maneuvering target tracking.
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Incremental Network Programming for Wireless Sensors 被引量:1
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作者 Jaein JEONG David CULLER 《International Journal of Communications, Network and System Sciences》 2009年第5期433-452,共20页
We present an incremental network programming mechanism which reprograms wireless sensors quickly by transmitting the incremental changes using the Rsync algorithm;we generate the difference of the two program images ... We present an incremental network programming mechanism which reprograms wireless sensors quickly by transmitting the incremental changes using the Rsync algorithm;we generate the difference of the two program images allowing us to distribute only the key changes. Unlike previous approaches, our design does not assume any prior knowledge of the program code structure and can be applied to any hardware platform. To meet the resource constraints of wireless sensors, we tuned the Rsync algorithm which was originally made for updating binary files among powerful host machines. The sensor node processes the delivery and the decoding of the difference script separately making it easy to extend for multi-hop network programming. We are able to get a speed-up of 9.1 for changing a constant and 2.1 to 2.5 for changing a few lines in the source code. 展开更多
关键词 network PROGRAMMING incrementAL WIRELESS SENSOR networks DIFFERENCE Generation RSYNC Algorithm
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Prediction model of microwave calcining of ammonium diuranate using incremental improved back-propagation neural network 被引量:1
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作者 Yingwei LI Bingguo LIU +3 位作者 Jinhui PENG Wei LI Daifu HUANG Libo ZHANG 《Acta Metallurgica Sinica(English Letters)》 SCIE EI CAS CSCD 2011年第1期34-42,共9页
The incremental improved Back-Propagation (BP) neural network prediction model using the Levenberg-Marquardt algorithm based on optimizing theory is put forward, which can solve the problems existing in the process ... The incremental improved Back-Propagation (BP) neural network prediction model using the Levenberg-Marquardt algorithm based on optimizing theory is put forward, which can solve the problems existing in the process of calcinations for ammonium diuranate (ADU) by microwave heating, such as long testing cycle, high testing quan- tity, difficulty of optimization for process parameters. Many training data probably were offered by the way of increment batch and the limitation of the system mem- ory could make the training data infeasible when the sample scale was large. The prediction model of the nonlinear system is built, which can effectively predict the experiment of microwave calcining of ADU, and the incremental improved BP neural network is very useful in overeoining the local minimum problem, finding the global optimal solution and accelerating the convergence speed. 展开更多
关键词 Microwave calcinations ADU increment BP neural network PREDICTION
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Scalable Incremental Network Programming for Multihop Wireless Sensors
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作者 Jaein Jeong David Culler 《International Journal of Communications, Network and System Sciences》 2013年第1期37-51,共15页
We present a network programming mechanism that can flexibly and quickly re-task a large multi-hop network of wireless sensor nodes. Our mechanism allows each sensor node to be incrementally reprogrammed with heteroge... We present a network programming mechanism that can flexibly and quickly re-task a large multi-hop network of wireless sensor nodes. Our mechanism allows each sensor node to be incrementally reprogrammed with heterogeneous images of native program code using Rsync block comparison algorithm, point-to-point routing with the BLIP IPv6 stack, and image volume management with Deluge2. With our re-tasking method, we demonstrate an order of magnitude speed-up on small code changes over non-incremental delivery. Our mechanism also scales sub-linearly in the diameter of the network. Collectively, these advancements qualitatively change the software life cycle of the embedded networked systems. 展开更多
关键词 network PROGRAMMING incrementAL UPDATE MULTIHOP networks HETEROGENEOUS Images
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A Design of Incremental Granular Network for Software Data Modeling
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作者 Keun-Chang Kwak 《Journal of Software Engineering and Applications》 2010年第11期1027-1031,共5页
In this paper, we propose an incremental method of Granular Networks (GN) to construct conceptual and computational platform of Granular Computing (GrC). The essence of this network is to describe the associations bet... In this paper, we propose an incremental method of Granular Networks (GN) to construct conceptual and computational platform of Granular Computing (GrC). The essence of this network is to describe the associations between information granules including fuzzy sets formed both in the input and output spaces. The context within which such relationships are being formed is established by the system developer. Here information granules are built using Context-driven Fuzzy Clustering (CFC). This clustering develops clusters by preserving the homogeneity of the clustered patterns associated with the input and output space. The experimental results on well-known software module of Medical Imaging System (MIS) revealed that the incremental granular network showed a good performance in comparison to other previous literature. 展开更多
关键词 incrementAL GRANULAR network GRANULAR COMPUTING Information GRANULES Context-Based Fuzzy Clustering
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An Autonomous Incremental Learning Algorithm for Radial Basis Function Networks
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作者 Seiichi Ozawa Toshihisa Tabuchi +1 位作者 Sho Nakasaka Asim Roy 《Journal of Intelligent Learning Systems and Applications》 2010年第4期179-189,共11页
In this paper, an incremental learning model called Resource Allocating Network with Long-Term Memory (RAN-LTM) is extended such that the learning is conducted with some autonomy for the following functions: 1) data c... In this paper, an incremental learning model called Resource Allocating Network with Long-Term Memory (RAN-LTM) is extended such that the learning is conducted with some autonomy for the following functions: 1) data collection for initial learning, 2) data normalization, 3) addition of radial basis functions (RBFs), and 4) determination of RBF cen-ters and widths. The proposed learning algorithm called Autonomous Learning algorithm for Resource Allocating Network (AL-RAN) is divided into the two learning phases: initial learning phase and incremental learning phase. And the former is further divided into the autonomous data collection and the initial network learning. In the initial learning phase, training data are first collected until the class separability is converged or has a significant dif-ference between normalized and unnormalized data. Then, an initial structure of AL-RAN is autonomously determined by selecting a moderate number of RBF centers from the collected data and by defining as large RBF widths as possible within a proper range. After the initial learning, the incremental learning of AL-RAN is conducted in a sequential way whenever a new training data is given. In the experiments, we evaluate AL-RAN using five benchmark data sets. From the experimental results, we confirm that the above autonomous functions work well and the efficiency in terms of network structure and learning time is improved without sacrificing the recognition accuracy as compared with the previous version of AL-RAN. 展开更多
关键词 AUTONOMOUS LEARNING incrementAL LEARNING RADIAL BASIS Function network PATTERN Recognition
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基于反事实数据增强的高价值专利识别模型
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作者 成伟 余传明 《情报杂志》 北大核心 2026年第3期104-115,共12页
解决当前高价值专利识别模型过度依赖历史统计数据,缺乏因果解释力的问题,提升高价值专利识别的效果与可解释性。提出了一种基于反事实数据增强的高价值专利识别模型,该模型构建多类型节点的异构图,融合GAT与GCN捕获节点关系,通过对抗... 解决当前高价值专利识别模型过度依赖历史统计数据,缺乏因果解释力的问题,提升高价值专利识别的效果与可解释性。提出了一种基于反事实数据增强的高价值专利识别模型,该模型构建多类型节点的异构图,融合GAT与GCN捕获节点关系,通过对抗神经网络对节点特征扰动生成反事实样本,并利用增量学习策略实现专利价值评估与因果机制揭示。实验结果表明,本文模型在人工智能领域专利数据集中的准确率、精确率、召回率、F1值分别达到了84.27%、84.51%、85.17%、84.84%,优于基线模型,证明了本文方法的有效性,为高价值专利识别任务提供了新的研究视角。 展开更多
关键词 高价值专利识别 反事实数据增强 图神经网络 对抗神经网络 多维特征 增量学习
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结合DM-KM分组的TAS机制增量式调度方法
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作者 景世龙 施睿 +2 位作者 周璇 闫嘉伟 何锋 《航空学报》 北大核心 2026年第2期236-246,共11页
针对航天器大规模时间敏感组网应用中面临的时间感知调度(TAS)调度求解规模较低、速度较慢的问题,提出了一种基于距离矩阵和K-means聚类分组的DM-KM流量分组算法,并完成与之结合的增量式TAS调度方法设计。首先,构建流量网络模型,使用基... 针对航天器大规模时间敏感组网应用中面临的时间感知调度(TAS)调度求解规模较低、速度较慢的问题,提出了一种基于距离矩阵和K-means聚类分组的DM-KM流量分组算法,并完成与之结合的增量式TAS调度方法设计。首先,构建流量网络模型,使用基于熵权法的加权综合距离矩阵表示流量之间的相关性。在该模型的基础上,设计并实现了结合DM-KM流量分组的增量式调度算法。所提出的分组方法具有较大的组内相似性和较低的组间相似性,流量分组能够有效提升增量式调度求解速度。实验结果表明:与现有DoC-KM和CILP-KM分组算法相比,在1000条流量调度场景下,DM-KM算法在维持较高求解速度的基础上,拥有较好的可调度性。相较于其他调度算法,求解规模提升最大可达32.36%,为TSN网络在航天器大规模组网提供了分组增量式的调度解决方案。 展开更多
关键词 时间敏感网络(TSN) 时间感知调度(TAS) 流量分组 增量式求解框架 箭载网络
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Evaluation of Green Development Level of Electric Energy in Distribution Network Based on Multilevel Fuzzy Comprehensive Evaluation
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作者 Zhongfu Tan Jing Wang +1 位作者 Caixia Tan Gejirifu De 《Energy Engineering》 EI 2022年第1期331-357,共27页
At present,there are few studies on the comprehensive evaluation of green power grid development in China,and all aspects of green power grid need to be evaluated.Therefore,this paper studies the green development lev... At present,there are few studies on the comprehensive evaluation of green power grid development in China,and all aspects of green power grid need to be evaluated.Therefore,this paper studies the green development level of power distribution network.This paper proposes a multi-level fuzzy comprehensive evaluation method,which first needs to classify the influencing factors.Therefore,this paper constructs an indicator system for the evaluation of green development of power distribution network from three dimensions.In order to avoid the influence of subjective factors,this paper adopts the model combining analytic hierarchy process and entropy weight method to give weight to indexes.Finally,five typical regions are selected for empirical analysis.The results show that the model established in this paper can reflect the green development level of power distribution network in each region and put forward relevant improvement suggestions for each region. 展开更多
关键词 incremental distribution network fuzzy comprehensive evaluation entropy weight method-analytic hierarchy process green development
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An Online Malicious Spam Email Detection System Using Resource Allocating Network with Locality Sensitive Hashing 被引量:1
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作者 Siti-Hajar-Aminah Ali Seiichi Ozawa +2 位作者 Junji Nakazato Tao Ban Jumpei Shimamura 《Journal of Intelligent Learning Systems and Applications》 2015年第2期42-57,共16页
In this paper, we propose a new online system that can quickly detect malicious spam emails and adapt to the changes in the email contents and the Uniform Resource Locator (URL) links leading to malicious websites by ... In this paper, we propose a new online system that can quickly detect malicious spam emails and adapt to the changes in the email contents and the Uniform Resource Locator (URL) links leading to malicious websites by updating the system daily. We introduce an autonomous function for a server to generate training examples, in which double-bounce emails are automatically collected and their class labels are given by a crawler-type software to analyze the website maliciousness called SPIKE. In general, since spammers use botnets to spread numerous malicious emails within a short time, such distributed spam emails often have the same or similar contents. Therefore, it is not necessary for all spam emails to be learned. To adapt to new malicious campaigns quickly, only new types of spam emails should be selected for learning and this can be realized by introducing an active learning scheme into a classifier model. For this purpose, we adopt Resource Allocating Network with Locality Sensitive Hashing (RAN-LSH) as a classifier model with a data selection function. In RAN-LSH, the same or similar spam emails that have already been learned are quickly searched for a hash table in Locally Sensitive Hashing (LSH), in which the matched similar emails located in “well-learned” are discarded without being used as training data. To analyze email contents, we adopt the Bag of Words (BoW) approach and generate feature vectors whose attributes are transformed based on the normalized term frequency-inverse document frequency (TF-IDF). We use a data set of double-bounce spam emails collected at National Institute of Information and Communications Technology (NICT) in Japan from March 1st, 2013 until May 10th, 2013 to evaluate the performance of the proposed system. The results confirm that the proposed spam email detection system has capability of detecting with high detection rate. 展开更多
关键词 MALICIOUS SPAM EMAIL Detection System incrementAL Learning Resource Allocating network LOCALITY Sensitive HASHING
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基于增量学习的社交网络链路预测 被引量:1
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作者 舒坚 陈芷晨 《工程科学与技术》 北大核心 2025年第2期1-11,共11页
社交网络中,节点间存在多种关系类型,节点数量会随着时间的推移而变化,这种异质性和动态性给链路预测任务带来极大的挑战。因此,本文提出一种基于增量学习的社交网络链路预测方法(incremental learning social networks link prediction... 社交网络中,节点间存在多种关系类型,节点数量会随着时间的推移而变化,这种异质性和动态性给链路预测任务带来极大的挑战。因此,本文提出一种基于增量学习的社交网络链路预测方法(incremental learning social networks link prediction,IL-SNLP)。通过对网络进行分层,使每一层网络只包含一种关系类型,以更好地获取节点在每种关系类型下的语义信息;针对网络的动态性,利用时序随机游走捕获社交网络中的局部结构信息和时序信息;针对增量数据,采用增量式更新随机游走策略对历史随机游走序列进行更新。通过增量式skip-gram模型从随机游走序列中提取新出现节点的特征,并进一步更新历史节点的特征;针对网络的异质性,采用概率模型提取不同关系类型之间的因果关系关联程度,并将其作用于每一层的节点特征,以改善不同关系层下节点特征表现能力;利用多层感知机构建节点相互感知器,挖掘节点间建立连接时的相互贡献,实现更高的链路预测准确率。实验结果表明,在3个真实的社交网络数据集上,IL-SNLP方法的ROC曲线下的面积(AUC)和F1分数比基线方法分别提高了10.08%~67.60%和1.76%~64.67%,提升了预测性能;对于增量数据,只需要少次迭代就能保持预测模型的性能,提高了模型训练的速度;与未采用增量学习技术的IL-SNLP−方法相比,IL-SNLP方法在时间效率上提升了30.78%~257.58%,显著缩短了模型的运行时长。 展开更多
关键词 社交网络 链路预测 增量学习 时序随机游走 概率模型
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随时间持续演化的流图神经网络
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作者 郭虎升 张旭飞 +1 位作者 孙玉杰 王文剑 《计算机科学》 北大核心 2025年第8期118-126,共9页
流图在现实应用中广泛存在,其节点特征和结构特征会随时间推移而动态变化。尽管图神经网络在静态图节点分类中表现卓越,但其难以直接应用于流图,流图的持续演化会导致信息滞后和遗漏问题,所以模型难以准确提取流图特征。针对上述挑战,... 流图在现实应用中广泛存在,其节点特征和结构特征会随时间推移而动态变化。尽管图神经网络在静态图节点分类中表现卓越,但其难以直接应用于流图,流图的持续演化会导致信息滞后和遗漏问题,所以模型难以准确提取流图特征。针对上述挑战,提出了一种随时间持续演化的流图神经网络(Continuously Evolution Streaming Graph Neural Network,CESGNN),以解决流图节点分类问题。该方法首先通过持续更新的图卷积网络(Continuous Updates Graph Convolutional Network,CU-GCN)增量地更新参数,以适应流图节点特征的变化,缓解信息滞后问题,然后自适应扩展的图神经网络(Adaptive Deepening Graph Neural Network,AD-GNN)通过将聚合和更新操作解耦,以挖掘流图深层特征,从而缓解信息遗漏问题。CESGNN通过有机地融合原始特征、CU-GCN提取的浅层特征和AD-GNN提取的深层特征,获得更准确、全面的流图特征表示。实验结果表明,CESGNN模型对流图具有良好的适应性和稳定性,提高了流图节点分类的准确率。 展开更多
关键词 流图 图神经网络 增量更新 聚合与更新解耦 特征融合
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A Quality-aware Incremental LMS Algorithm for Distributed Adaptive Estimation
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作者 Wael M.Bazzi Amir Rastegarnia Azam Khalili 《International Journal of Automation and computing》 EI CSCD 2014年第6期676-682,共7页
In this paper, we consider the problem of unknown parameter estimation using a set of nodes that are deployed over an area. The recently proposed distributed adaptive estimation algorithms(also known as adaptive netwo... In this paper, we consider the problem of unknown parameter estimation using a set of nodes that are deployed over an area. The recently proposed distributed adaptive estimation algorithms(also known as adaptive networks) are appealing solutions to the mentioned problem when the statistical information of the underlying process is not available or it varies over time. In this paper, our goal is to develop a new incremental least-mean square(LMS) adaptive network that considers the quality of measurements collected by the nodes. Thus, we use an adaptive combination strategy which assigns each node a step size according to its quality of measurement. The adaptive combination strategy improves the robustness of the proposed algorithm to the spatial variations of signal-to-noise ratio(SNR). The performance of our algorithm is more remarkable in inhomogeneous environments when there are some nodes with low SNRs in the network. The simulation results indicate the efficiency of the proposed algorithm. 展开更多
关键词 Adaptive networks distributed estimation least mean-square (LMS) incremental cooperation quality aware
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基于BP神经网络的连体建筑地震易损性研究
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作者 吴碧桥 张磊 +3 位作者 姜治军 李胜才 花倩 王欣 《土木工程与绿色建筑》 2025年第5期24-26,50,共4页
连体结构的传力机制与动力特性复杂,地震响应行为特殊,存在较高的地震风险。为评估其地震危险性,文章基于太平洋地震工程研究中心(PEER)的强震记录,采用增量动力分析方法研究结构的地震响应特征,并利用BP神经网络构建结构响应参数与地... 连体结构的传力机制与动力特性复杂,地震响应行为特殊,存在较高的地震风险。为评估其地震危险性,文章基于太平洋地震工程研究中心(PEER)的强震记录,采用增量动力分析方法研究结构的地震响应特征,并利用BP神经网络构建结构响应参数与地震动强度参数之间的预测模型,分析模型在测试集上的预测性能,进而开展连体结构的地震易损性分析。结果表明,采用简单结构的BP神经网络即可建立高精度响应预测模型,无需预设函数形式,测试集的结构响应预测值与真实值之间的相关系数达0.93,所选连体结构满足“小震不坏、中震可修、大震不倒”的抗震设防目标。本研究可为连体建筑抗震性能评估提供参考。 展开更多
关键词 连体结构 BP神经网络 增量动力分析(IDA) 地震易损性分析
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基于BP神经网络的连体建筑地震易损性研究
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作者 吴碧桥 张磊 +3 位作者 姜治军 李胜才 花倩 王欣 《土木工程与绿色建筑》 2025年第6期24-26,50,共4页
连体结构的传力机制与动力特性复杂,地震响应行为特殊,存在较高的地震风险。为评估其地震危险性,文章基于太平洋地震工程研究中心(PEER)的强震记录,采用增量动力分析方法研究结构的地震响应特征,并利用BP神经网络构建结构响应参数与地... 连体结构的传力机制与动力特性复杂,地震响应行为特殊,存在较高的地震风险。为评估其地震危险性,文章基于太平洋地震工程研究中心(PEER)的强震记录,采用增量动力分析方法研究结构的地震响应特征,并利用BP神经网络构建结构响应参数与地震动强度参数之间的预测模型,分析模型在测试集上的预测性能,进而开展连体结构的地震易损性分析。结果表明,采用简单结构的BP神经网络即可建立高精度响应预测模型,无需预设函数形式,测试集的结构响应预测值与真实值之间的相关系数达0.93,所选连体结构满足“小震不坏、中震可修、大震不倒”的抗震设防目标。本研究可为连体建筑抗震性能评估提供参考。 展开更多
关键词 连体结构 BP神经网络 增量动力分析(IDA) 地震易损性分析
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持续记忆的流图神经网络
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作者 郭虎升 孙玉杰 王文剑 《小型微型计算机系统》 北大核心 2025年第4期818-824,共7页
流图的节点和边以流的形式持续产生,导致整个图结构随着时间推移而不断演化.图神经网络作为图嵌入技术的一种,在捕获流图的动态信息以及快速适应流图持续演化等方面仍然面临着巨大的挑战.为解决这些问题,本文提出了持续记忆的流图神经网... 流图的节点和边以流的形式持续产生,导致整个图结构随着时间推移而不断演化.图神经网络作为图嵌入技术的一种,在捕获流图的动态信息以及快速适应流图持续演化等方面仍然面临着巨大的挑战.为解决这些问题,本文提出了持续记忆的流图神经网络(CMSGNN).该模型能够根据流图持续的演化充分学习历史信息,通过增量学习的方式更新已记忆的历史信息,并且能够自适应地调整模型以适应流图的变化程度,以获得更符合当前信息的流图嵌入.该模型将历史信息与当前信息相结合使得模型能够获得更准确的流图嵌入,从而提高下游任务的准确率.实验结果表明,本文提出的CMSGNN在现实生活中的多个数据集上执行多个任务上均有更好的性能. 展开更多
关键词 流图 图神经网络 历史信息 增量更新 当前信息 自适应聚合
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共母线开绕组永磁同步牵引电机改进级联模型预测控制
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作者 高锋阳 吴银波 +4 位作者 徐昊 史志龙 岳文瀚 孙伟 王高强 《铁道科学与工程学报》 北大核心 2025年第3期1254-1265,共12页
为降低共母线开绕组永磁同步牵引电机三矢量级联模型预测电流控制开关频率和控制系统对电机参数依赖性,提出一种基于变步长自适应线性神经网络(Adaline)可调参数改进级联模型预测电流控制策略。首先,针对共母线开绕组永磁同步牵引电机... 为降低共母线开绕组永磁同步牵引电机三矢量级联模型预测电流控制开关频率和控制系统对电机参数依赖性,提出一种基于变步长自适应线性神经网络(Adaline)可调参数改进级联模型预测电流控制策略。首先,针对共母线开绕组永磁同步牵引电机三矢量级联模型预测电流控制造成开关频率高的原因进行分析,剔除高开关频率和高共模电压的电压矢量,优化备选电压矢量范围,对剩余电压矢量根据其对q轴电流作用效果分组组合寻优和分配作用时间;基于变步长自适应线性神经网络改进PI控制器,使得改进PI控制器兼顾快速性与超调;然后,分析共母线开绕组永磁同步牵引电机模型预测控制参数变化特性,构建系统变步长自适应线性神经网络参数辨识模型,对电机参数分步辨识,形成参数可调节级联模型预测控制;最后,对所提策略和三矢量级联模型预测电流控制进行稳态和动态半实物测试对比。结果表明:所提策略对转矩脉动、零轴电流、总谐波畸变率、开关频率、调速超调都具有很好的抑制效果,避免了传统模型预测控制的多目标代价函数中权重系数整定和参数辨识模型构建欠秩问题,对系统的控制性能有明显的提升作用。研究结果为进一步将共母线开绕组永磁同步牵引电机传动系统应用于机车牵引提供参考。 展开更多
关键词 开绕组永磁同步牵引电机 变步长自适应线性神经网络 级联模型预测 转矩脉动 零轴电流 参数分步辨识 开关频率
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基于生成对抗网络的螺旋桨性能预报及增量学习优化
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作者 杨柳 刘屹豪 +2 位作者 苏培峰 李亮 叶礼裕 《现代应用物理》 2025年第1期283-290,共8页
螺旋桨作为一种被广泛使用的船舶推进器,在水中运动时产生的推力及性能的优劣问题是其设计、优化等环节中的研究重点。研究快速且精确预测螺旋桨水动力性能的方法,对螺旋桨的性能优化设计、评估和诊断具有重要意义。为此,本文探索了神... 螺旋桨作为一种被广泛使用的船舶推进器,在水中运动时产生的推力及性能的优劣问题是其设计、优化等环节中的研究重点。研究快速且精确预测螺旋桨水动力性能的方法,对螺旋桨的性能优化设计、评估和诊断具有重要意义。为此,本文探索了神经网络在螺旋桨性能智能预报中的应用,以提高螺旋桨设计的效率和性能预报的准确性。基于生成对抗网络,提出一种螺旋桨样本生成方法,并构建螺旋桨性能预报模型,利用生成的样本数据对模型进行训练和验证。此外,还结合增量学习算法对智能预报模型进行了进一步的训练和优化,以提高预报的准确性。实验结果表明,生成对抗网络能有效生成螺旋桨样本数据,基于神经网络建立的螺旋桨性能预报模型预报的相对偏差小于5%,经过增量学习后,模型预报的相对偏差仍小于5%,偏差较小。该方法能处理较大规模的数据,同时可及时处理数据的临时变化,具有实时性。 展开更多
关键词 螺旋桨 性能预报 神经网络 样本生成 增量学习
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