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A Basis Function Generation Based Digital Predistortion Concurrent Neural Network Model for RF Power Amplifiers
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作者 SHAO Jianfeng HONG Xi +2 位作者 WANG Wenjie LIN Zeyu LI Yunhua 《ZTE Communications》 2025年第1期71-77,共7页
This paper proposes a concurrent neural network model to mitigate non-linear distortion in power amplifiers using a basis function generation approach.The model is designed using polynomial expansion and comprises a f... This paper proposes a concurrent neural network model to mitigate non-linear distortion in power amplifiers using a basis function generation approach.The model is designed using polynomial expansion and comprises a feedforward neural network(FNN)and a convolutional neural network(CNN).The proposed model takes the basic elements that form the bases as input,defined by the generalized memory polynomial(GMP)and dynamic deviation reduction(DDR)models.The FNN generates the basis function and its output represents the basis values,while the CNN generates weights for the corresponding bases.Through the concurrent training of FNN and CNN,the hidden layer coefficients are updated,and the complex multiplication of their outputs yields the trained in-phase/quadrature(I/Q)signals.The proposed model was trained and tested using 300 MHz and 400 MHz broadband data in an orthogonal frequency division multiplexing(OFDM)communication system.The results show that the model achieves an adjacent channel power ratio(ACPR)of less than-48 d B within a 100 MHz integral bandwidth for both the training and test datasets. 展开更多
关键词 basis function generation digital predistortion generalized memory polynomial dynamic deviation reduction neural network
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State of charge estimation of Li-ion batteries in an electric vehicle based on a radial-basis-function neural network 被引量:6
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作者 毕军 邵赛 +1 位作者 关伟 王璐 《Chinese Physics B》 SCIE EI CAS CSCD 2012年第11期560-564,共5页
The on-line estimation of the state of charge (SOC) of the batteries is important for the reliable running of the pure electric vehicle in practice. Because a nonlinear feature exists in the batteries and the radial... The on-line estimation of the state of charge (SOC) of the batteries is important for the reliable running of the pure electric vehicle in practice. Because a nonlinear feature exists in the batteries and the radial-basis-function neural network (RBF NN) has good characteristics to solve the nonlinear problem, a practical method for the SOC estimation of batteries based on the RBF NN with a small number of input variables and a simplified structure is proposed. Firstly, in this paper, the model of on-line SOC estimation with the RBF NN is set. Secondly, four important factors for estimating the SOC are confirmed based on the contribution analysis method, which simplifies the input variables of the RBF NN and enhttnces the real-time performance of estimation. FiItally, the pure electric buses with LiFePO4 Li-ion batteries running during the period of the 2010 Shanghai World Expo are considered as the experimental object. The performance of the SOC estimation is validated and evaluated by the battery data from the electric vehicle. 展开更多
关键词 state of charge estimation BATTERY electric vehicle radial-basis-function neural network
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Application of Radial Basis Function Network in Sensor Failure Detection
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作者 钮永胜 赵新民 《Journal of Beijing Institute of Technology》 EI CAS 1999年第2期70-76,共7页
Aim To detect sensor failure in control system using a single sensor signal. Methods A neural predictor was designed based on a radial basis function network(RBFN), and the neural predictor learned the sensor sig... Aim To detect sensor failure in control system using a single sensor signal. Methods A neural predictor was designed based on a radial basis function network(RBFN), and the neural predictor learned the sensor signal on line with a hybrid algorithm composed of n means clustering and Kalman filter and then gave the estimation of the sensor signal at the next step. If the difference between the estimation and the actural values of the sensor signal exceeded a threshold, the sensor could be declared to have a failure. The choice of the failure detection threshold depends on the noise variance and the possible prediction error of neural predictor. Results and Conclusion\ The computer simulation results show the proposed method can detect sensor failure correctly for a gyro in an automotive engine. 展开更多
关键词 sensor failure failure detection radial basis function network(BRFN) on line learning
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Application of the optimal Latin hypercube design and radial basis function network to collaborative optimization 被引量:16
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作者 ZHAO Min CUI Wei-cheng 《Journal of Marine Science and Application》 2007年第3期24-32,共9页
Improving the efficiency of ship optimization is crucial for modem ship design. Compared with traditional methods, multidisciplinary design optimization (MDO) is a more promising approach. For this reason, Collabora... Improving the efficiency of ship optimization is crucial for modem ship design. Compared with traditional methods, multidisciplinary design optimization (MDO) is a more promising approach. For this reason, Collaborative Optimization (CO) is discussed and analyzed in this paper. As one of the most frequently applied MDO methods, CO promotes autonomy of disciplines while providing a coordinating mechanism guaranteeing progress toward an optimum and maintaining interdisciplinary compatibility. However, there are some difficulties in applying the conventional CO method, such as difficulties in choosing an initial point and tremendous computational requirements. For the purpose of overcoming these problems, optimal Latin hypercube design and Radial basis function network were applied to CO. Optimal Latin hypercube design is a modified Latin Hypercube design. Radial basis function network approximates the optimization model, and is updated during the optimization process to improve accuracy. It is shown by examples that the computing efficiency and robustness of this CO method are higher than with the conventional CO method. 展开更多
关键词 multidisciplinary design optimization (MDO) collaborative optimization (CO) optimal Latin hypercube design radial basis function network APPROXIMATION
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基于RBFNN的两时间尺度供应链H_(∞)最优控制
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作者 杨洪凯 李庆奎 《北京信息科技大学学报(自然科学版)》 2025年第1期69-79,共11页
为应对当今供应链库存管理面临的牛鞭效应、两时间尺度特性和不确定性干扰等挑战,开发了一种基于径向基函数神经网络(radial basis function neural network,RBFNN)的两时间尺度供应链H_(∞)最优控制器。利用奇异摄动理论将原两时间尺... 为应对当今供应链库存管理面临的牛鞭效应、两时间尺度特性和不确定性干扰等挑战,开发了一种基于径向基函数神经网络(radial basis function neural network,RBFNN)的两时间尺度供应链H_(∞)最优控制器。利用奇异摄动理论将原两时间尺度供应链模型分解为2个具有不同时间尺度的独立子系统;创新性地使用RBFNN在线近似补偿子系统的不确定项,进而采用H_(∞)控制来抑制RBFNN近似误差带来的不确定性。在理论层面上分析证明了所提方法的稳定性。通过一个电视机生产流程仿真案例,验证了所提方法相比2种其他两时间尺度问题解决方法,具有更高的跟踪控制精度和应用可行性。 展开更多
关键词 供应链 奇异摄动 径向基函数神经网络 两时间尺度系统
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基于RBFNN模型和异常检测的船体分段焊接质量溯源
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作者 闫永思 贾玉欢 +3 位作者 郭威 侯星 董家琛 任文彬 《造船技术》 2025年第1期85-89,共5页
为实现对船体分段焊接质量的有效管控,提出基于径向基函数神经网络(Radial Basis Function Neural Network,RBFNN)模型和异常检测的船体分段焊接质量溯源方法。从质量影响因素、不合格产品质量溯源方法和不合格产品质量溯源体系架构等... 为实现对船体分段焊接质量的有效管控,提出基于径向基函数神经网络(Radial Basis Function Neural Network,RBFNN)模型和异常检测的船体分段焊接质量溯源方法。从质量影响因素、不合格产品质量溯源方法和不合格产品质量溯源体系架构等方面对船体分段焊接不合格产品质量溯源进行设计。从数据预处理、影响因素定位和影响因素排序等方面对船体分段焊接不合格产品质量溯源流程进行设置。经实例验证,所提出的方法可有效进行船体分段焊接质量溯源。 展开更多
关键词 船体分段焊接 质量溯源 径向基函数神经网络模型 异常检测 影响因素 不合格产品
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INTERNET TRAFFIC DATA FLOW FORECAST BY RBF NEURAL NETWORK BASED ON PHASE SPACE RECONSTRUCTION 被引量:4
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作者 陆锦军 王执铨 《Transactions of Nanjing University of Aeronautics and Astronautics》 EI 2006年第4期316-322,共7页
Characteristics of the Internet traffic data flow are studied based on the chaos theory. A phase space that is isometric with the network dynamic system is reconstructed by using the single variable time series of a n... Characteristics of the Internet traffic data flow are studied based on the chaos theory. A phase space that is isometric with the network dynamic system is reconstructed by using the single variable time series of a network flow. Some parameters, such as the correlative dimension and the Lyapunov exponent are calculated, and the chaos characteristic is proved to exist in Internet traffic data flows. A neural network model is construct- ed based on radial basis function (RBF) to forecast actual Internet traffic data flow. Simulation results show that, compared with other forecasts of the forward-feedback neural network, the forecast of the RBF neural network based on the chaos theory has faster learning capacity and higher forecasting accuracy. 展开更多
关键词 chaos theory phase space reeonstruction Lyapunov exponent tnternet data flow radial basis function neural network
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New Structural Self-Organizing Fuzzy CMAC with Basis Functions
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作者 何超 徐立新 +1 位作者 董宁 张宇河 《Journal of Beijing Institute of Technology》 EI CAS 2001年第3期298-305,共8页
To improve the nonlinear approximating ability of cerebellar model articulation controller(CMAC), by introducing the Gauss basis functions and the similarity measure based addressing scheme, a new kind of fuzzy CMAC... To improve the nonlinear approximating ability of cerebellar model articulation controller(CMAC), by introducing the Gauss basis functions and the similarity measure based addressing scheme, a new kind of fuzzy CMAC with Gauss basis functions(GFCMAC) was presented. Moreover, based upon the improvement of the self organizing feature map algorithm of Kohonen, the structural self organizing algorithm for GFCMAC(SOGFCMAC) was proposed. Simulation results show that adopting the Gauss basis functions and fuzzy techniques can remarkably improve the nonlinear approximating capacity of CMAC. Compared with the traditional CMAC,CMAC with general basis functions and fuzzy CMAC(FCMAC), SOGFCMAC has the obvious advantages in the aspects of the convergent speed, approximating accuracy and structural self organizing. 展开更多
关键词 CMAC FUZZY basis functions self organizing algorithm neural networks
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Generalization Capabilities of Feedforward Neural Networks for Pattern Recognition
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作者 黄德双 《Journal of Beijing Institute of Technology》 EI CAS 1996年第2期192+184-192,共10页
This paper studies the generalization capability of feedforward neural networks (FNN).The mechanism of FNNs for classification is investigated from the geometric and probabilistic viewpoints. It is pointed out that th... This paper studies the generalization capability of feedforward neural networks (FNN).The mechanism of FNNs for classification is investigated from the geometric and probabilistic viewpoints. It is pointed out that the outputs of the output layer in the FNNs for classification correspond to the estimates of posteriori probability of the input pattern samples with desired outputs 1 or 0. The theorem for the generalized kernel function in the radial basis function networks (RBFN) is given. For an 2-layer perceptron network (2-LPN). an idea of using extended samples to improve generalization capability is proposed. Finally. the experimental results of radar target classification are given to verify the generaliztion capability of the RBFNs. 展开更多
关键词 feedforward neural networks radial basis function networks multilayer perceptronnetworks generalization capability radar target classification
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Recovery of saturated signal waveform acquired from high-energy particles with artificial neural networks 被引量:4
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作者 Yu Liu Jing-Jun Zhu +5 位作者 Neil Roberts Ke-Ming Chen Yu-Lu Yan Shuang-Rong Mo Peng Gu Hao-Yang Xing 《Nuclear Science and Techniques》 SCIE CAS CSCD 2019年第10期30-39,共10页
Artificial neural networks(ANNs)are a core component of artificial intelligence and are frequently used in machine learning.In this report,we investigate the use of ANNs to recover the saturated signals acquired in hi... Artificial neural networks(ANNs)are a core component of artificial intelligence and are frequently used in machine learning.In this report,we investigate the use of ANNs to recover the saturated signals acquired in highenergy particle and nuclear physics experiments.The inherent properties of the detector and hardware imply that particles with relatively high energies probably often generate saturated signals.Usually,these saturated signals are discarded during data processing,and therefore,some useful information is lost.Thus,it is worth restoring the saturated signals to their normal form.The mapping from a saturated signal waveform to a normal signal waveform constitutes a regression problem.Given that the scintillator and collection usually do not form a linear system,typical regression methods such as multi-parameter fitting are not immediately applicable.One important advantage of ANNs is their capability to process nonlinear regression problems.To recover the saturated signal,three typical ANNs were tested including backpropagation(BP),simple recurrent(Elman),and generalized radial basis function(GRBF)neural networks(NNs).They represent a basic network structure,a network structure with feedback,and a network structure with a kernel function,respectively.The saturated waveforms were produced mainly by the environmental gamma in a liquid scintillation detector for the China Dark Matter Detection Experiment(CDEX).The training and test data sets consisted of 6000 and 3000 recordings of background radiation,respectively,in which saturation was simulated by truncating each waveform at 40%of the maximum signal.The results show that the GBRF-NN performed best as measured using a Chi-squared test to compare the original and reconstructed signals in the region in which saturation was simulated.A comparison of the original and reconstructed signals in this region shows that the GBRF neural network produced the best performance.This ANN demonstrates a powerful efficacy in terms of solving the saturation recovery problem.The proposed method outlines new ideas and possibilities for the recovery of saturated signals in high-energy particle and nuclear physics experiments.This study also illustrates an innovative application of machine learning in the analysis of experimental data in particle physics. 展开更多
关键词 Saturated signals Artificial neural networks(ANNs) RECOVERY of signal waveform Generalized radial basis function Backpropagation neural network ELMAN neural network
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Artificial neural network modeling of water quality of the Yangtze River system:a case study in reaches crossing the city of Chongqing 被引量:11
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作者 郭劲松 李哲 《Journal of Chongqing University》 CAS 2009年第1期1-9,共9页
An effective approach for describing complicated water quality processes is very important for river water quality management. We built two artificial neural network(ANN) models,a feed-forward back-propagation(BP) mod... An effective approach for describing complicated water quality processes is very important for river water quality management. We built two artificial neural network(ANN) models,a feed-forward back-propagation(BP) model and a radial basis function(RBF) model,to simulate the water quality of the Yangtze and Jialing Rivers in reaches crossing the city of Chongqing,P. R. China. Our models used the historical monitoring data of biological oxygen demand,dissolved oxygen,ammonia,oil and volatile phenolic compounds. Comparison with the one-dimensional traditional water quality model suggest that both BP and RBF models are superior; their higher accuracy and better goodness-of-fit indicate that the ANN calculation of water quality agrees better with measurement. It is demonstrated that ANN modeling can be a tool for estimating the water quality of the Yangtze River. Of the two ANN models,the RBF model calculates with a smaller mean error,but a larger root mean square error. More effort to identify out the causes of these differences would help optimize the structures of neural network water-quality models. 展开更多
关键词 water quality modeling Yangtze River artificial neural network back-propagation model radial basis functionmodel
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高速列车纵向动力学建模与自适应RBFNN控制 被引量:2
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作者 付雅婷 胡东亮 +1 位作者 杨辉 欧阳超明 《铁道学报》 EI CAS CSCD 北大核心 2024年第1期42-52,共11页
高速列车由多节车厢链接而成的结构特性导致其高速运行在变路况线路条件下难以有效地对其进行优化控制。针对上述问题,提出一种高速列车纵向动力学模型与径向基函数神经网络(RBFNN)控制策略。考虑列车车钩力和复杂线路条件,分析整列车... 高速列车由多节车厢链接而成的结构特性导致其高速运行在变路况线路条件下难以有效地对其进行优化控制。针对上述问题,提出一种高速列车纵向动力学模型与径向基函数神经网络(RBFNN)控制策略。考虑列车车钩力和复杂线路条件,分析整列车前后的不同受力情况,建立列车纵向动力学模型。针对该模型无外加干扰时设计一种理想反馈控制律,引入RBFNN对理想控制输出进行拟合,在考虑干扰项影响的情况下,通过设计参数估计自适应律代替神经网络权值的调整,并对其进行Lyapunov稳定性证明。采用京石武高铁北京西—郑州东段的CRH380B型高速列车真实线路运行数据进行仿真模拟,并在相同条件下与反演滑模(BSSM)控制器的仿真结果进行对比。仿真结果表明所提控制器更能有效应对复杂路况变化和外界干扰,对高速列车具有更好的控制效果,改善其运行的平稳性及高效性。 展开更多
关键词 高速列车 纵向动力学模型 径向基函数神经网络 自适应算法 LYAPUNOV理论
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Catalytic Cracking and PSO-RBF Neural Network Model of FCC Cycle Oil 被引量:3
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作者 Liu Yibin Tu Yongshan +1 位作者 Li Chunyi Yang Chaohe 《China Petroleum Processing & Petrochemical Technology》 SCIE CAS 2013年第4期63-69,共7页
Catalytic cracking experiments of FCC cycle oil were carried out in a fixed fluidized bed reactor. Effects of reac- tion conditions, such as temperature, catalyst to oil ratio and weight hourly space velocity, were in... Catalytic cracking experiments of FCC cycle oil were carried out in a fixed fluidized bed reactor. Effects of reac- tion conditions, such as temperature, catalyst to oil ratio and weight hourly space velocity, were investigated. Hydrocarbon composition of gasoline was analyzed by gas chromatograph. Experimental results showed that conversion of cycle oil was low on account of its poor crackability performance, and the effect of reaction conditions on gasoline yield was obvi- ous. The paraffin content was very high in gasoline. Based on the experimental yields under different reaction conditions, a model for prediction of gasoline and diesel yields was established by radial basis function neural network (RBFNN). In the model, the product yield was viewed as function of reaction conditions. Particle swarm optimization (PSO) algorithm with global search capability was used to obtain optimal conditions for a highest yield of light oil. The results showed that the yield of gasoline and diesel predicted by RBF neural network agreed well with the experimental values. The optimized reac- tion conditions were obtained at a reaction temperature of around 520 ~C, a catalyst to oil ratio of 7.4 and a space velocity of 8 h~. The predicted total yield of gasoline and diesel reached 42.2% under optimized conditions. 展开更多
关键词 catalytic cracking cycle oil radical basis function neural network particle swarm optimization
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A spintronic memristive circuit on the optimized RBF-MLP neural network 被引量:2
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作者 Yuan Ge Jie Li +2 位作者 Wenwu Jiang Lidan Wang Shukai Duan 《Chinese Physics B》 SCIE EI CAS CSCD 2022年第11期272-283,共12页
A radial basis function network(RBF)has excellent generalization ability and approximation accuracy when its parameters are set appropriately.However,when relying only on traditional methods,it is difficult to obtain ... A radial basis function network(RBF)has excellent generalization ability and approximation accuracy when its parameters are set appropriately.However,when relying only on traditional methods,it is difficult to obtain optimal network parameters and construct a stable model as well.In view of this,a novel radial basis neural network(RBF-MLP)is proposed in this article.By connecting two networks to work cooperatively,the RBF’s parameters can be adjusted adaptively by the structure of the multi-layer perceptron(MLP)to realize the effect of the backpropagation updating error.Furthermore,a genetic algorithm is used to optimize the network’s hidden layer to confirm the optimal neurons(basis function)number automatically.In addition,a memristive circuit model is proposed to realize the neural network’s operation based on the characteristics of spin memristors.It is verified that the network can adaptively construct a network model with outstanding robustness and can stably achieve 98.33%accuracy in the processing of the Modified National Institute of Standards and Technology(MNIST)dataset classification task.The experimental results show that the method has considerable application value. 展开更多
关键词 radial basis function network(RBF) genetic algorithm spintronic memristor memristive circuit
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基于RBFNN的双星协同仅测角定轨方法 被引量:1
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作者 龚柏春 刘一澎 +1 位作者 马艳红 任默 《中国惯性技术学报》 EI CSCD 北大核心 2024年第5期449-456,共8页
针对空间非合作目标空间态势感知任务中弱可观测无源定轨状态的快速捕获问题,提出了一种基于径向基函数神经网络(RBFNN)的双星协同稀疏无源测角定轨方法。首先,在限制性三体问题的假设下建立了考虑地球非球形J2项摄动的轨道动力学模型... 针对空间非合作目标空间态势感知任务中弱可观测无源定轨状态的快速捕获问题,提出了一种基于径向基函数神经网络(RBFNN)的双星协同稀疏无源测角定轨方法。首先,在限制性三体问题的假设下建立了考虑地球非球形J2项摄动的轨道动力学模型和赤经赤纬测量模型。然后,构建了基于RBFNN的双星协同仅测角定轨框架,设计了训练数据集生成器、数据预处理方法和RBFNN结构。最后,利用地球静止轨道任务进行了数值仿真验证,并对测角频率等参数的定轨敏感性进行分析。仿真结果表明,在240 s内仅进行三次角度观测的条件下,该模型对初始相对距离估计的平均绝对百分比误差约为0.36%,目标轨道速度的估计误差在米/秒量级,可实现高精度的超短弧段稀疏无源测量定轨。 展开更多
关键词 空间态势感知 初始定轨 仅测角 径向基函数神经网络 双星协同
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Predicting Reliability of Tactical Network Using RBFNN
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作者 王晓凯 侯朝桢 《Journal of Beijing Institute of Technology》 EI CAS 2005年第1期13-17,共5页
A description of the reliability evaluation of tactical network is given, which reflects not only the non-reliable factors of nodes and links but also the factors of network topological structure. On the basis of this... A description of the reliability evaluation of tactical network is given, which reflects not only the non-reliable factors of nodes and links but also the factors of network topological structure. On the basis of this description, a reliability prediction model and its algorithms are put forward based on the radial basis function neural network (RBFNN) for the tactical network. This model can carry out the non-linear mapping relationship between the network topological structure, the nodes reliabilities, the links reliabilities and the reliability of network. The results of simulation prove the effectiveness of this method in the reliability and the connectivity prediction for tactical network. 展开更多
关键词 tactical network reliability prediction radial basis function neural network (rbfnn)
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Rudder Roll Damping Autopilot Using Dual Extended Kalman Filter–Trained Neural Networks for Ships in Waves
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作者 Yuanyuan Wang Hung Duc Nguyen 《Journal of Marine Science and Application》 CSCD 2019年第4期510-521,共12页
The roll motions of ships advancing in heavy seas have severe impacts on the safety of crews,vessels,and cargoes;thus,it must be damped.This study presents the design of a rudder roll damping autopilot by utilizing th... The roll motions of ships advancing in heavy seas have severe impacts on the safety of crews,vessels,and cargoes;thus,it must be damped.This study presents the design of a rudder roll damping autopilot by utilizing the dual extended Kalman filter(DEKF)trained radial basis function neural networks(RBFNN)for the surface vessels.The autopilot system constitutes the roll reduction controller and the yaw motion controller implemented in parallel.After analyzing the advantages of the DEKF-trained RBFNN control method theoretically,the ship’s nonlinear model with environmental disturbances was employed to verify the performance of the proposed stabilization system.Different sailing scenarios were conducted to investigate the motion responses of the ship in waves.The results demonstrate that the DEKF RBFNN based control system is efficient and practical in reducing roll motions and following the path for the ship sailing in waves only through rudder actions. 展开更多
关键词 Rudder roll damping AUTOPILOT radial basis function neural networks Dual extended Kalman filter training Intelligent control Path following Advancing in waves
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基于RBFNN-ISSA的特大跨径悬索桥有限元模型修正 被引量:1
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作者 王祺顺 何维 +2 位作者 吴欣 郭伟奇 雷顺成 《振动与冲击》 EI CSCD 北大核心 2024年第7期155-167,共13页
针对大跨径悬索桥一类复杂结构的有限元模型修正问题,提出了一种基于径向基神经网络(radial basis function neural network,RBFNN)子结构代理模型与改进麻雀搜索算法(improved sparrow search algorithm,ISSA)的有限元模型修正方法。首... 针对大跨径悬索桥一类复杂结构的有限元模型修正问题,提出了一种基于径向基神经网络(radial basis function neural network,RBFNN)子结构代理模型与改进麻雀搜索算法(improved sparrow search algorithm,ISSA)的有限元模型修正方法。首先,基于桥梁图纸数据采用通用有限元软件建立一座大跨悬索桥的初始有限元模型,并根据拉丁超立方抽样原则生成子结构材料参数-结构响应的训练样本,通过RBF神经网络和子结构模拟方法对初始有限元模型进行解构重组和样本学习,拟合关于材料参数-结构响应的代理模型。其次,建立考虑主梁挠度和模态频率误差最小的有限元模型参数修正数学优化模型,采用Tent混沌映射及黄金正弦策略改进标准麻雀搜索算法,引入柯西分布函数和贪心保留策略对每一代麻雀种群进行扰动,以用于求解联合静、动力特征的有限元模型修正数学优化问题。最后,以杭瑞高速洞庭湖大桥为工程背景,进行了悬索桥荷载试验,利用实测桥梁响应数据验证了该方法的可行性。研究结果表明:基于RBF神经网络与子结构法的模型修正方法,可以建立拟合精度较高的悬索桥结构代理模型;基于子结构RBF神经网络与改进麻雀搜索算法修正后的有限元模型相较于整体RBF神经网络、支持向量机和Kriging模型,大幅提升了对于实际结构的模拟精度,与实测数据相比,修正前后有限元模型在两级静力加载工况下13个有效测点挠度的平均相对误差降低了25%以上,前8阶模态频率的平均相对误差由-6.83%降至-2.38%,MAC值结果表明修正后模型能够准确地反映出大桥的实际振动状态,有效改善了初始有限元模型计算失真的情况;此外,基于混合策略改进后的麻雀搜索算法对于有限元模型修正参数的寻优具有更佳的收敛效率和稳定性。 展开更多
关键词 桥梁工程 有限元模型修正 改进麻雀搜索算法(ISSA) 悬索桥 径向基神经网络(rbfnn) 柯西变异策略
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重载列车运行过程的建模与RBFNN滑模控制
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作者 李中奇 曾祥泉 余剑烽 《华东交通大学学报》 2024年第5期94-104,共11页
【目的】为解决重载列车在复杂线路条件下难以实现高精度轨迹跟踪控制的问题,提出了一种重载列车多质点模型和径向基函数神经网络滑模控制(RBFNNSMC)方法。【方法】首先,考虑空气制动和钩缓装置约束,建立重载列车多质点模型,并对人为测... 【目的】为解决重载列车在复杂线路条件下难以实现高精度轨迹跟踪控制的问题,提出了一种重载列车多质点模型和径向基函数神经网络滑模控制(RBFNNSMC)方法。【方法】首先,考虑空气制动和钩缓装置约束,建立重载列车多质点模型,并对人为测量误差和车辆参数差异等导致的模型不确定性问题,利用RBFNN对其进行估计。其次,设计一种非线性干扰观测器(NDO)对列车运行中受强风、雨雪等外界快时变干扰进行实时估计。然后,设计Lyapunov函数对整个系统进行稳定性证明。【结果】基于大秦线的实际线路数据,进行RBFNNSMC方法、PID方法和SMC方法的速度跟踪对比实验。仿真结果表明,RBFNNSMC方法的速度误差在±0.15 km/h以内,优于其他两种方法。加入NDO后,RBFNNSMC方法的抗干扰能力也更强。【结论】基于NDO的RBFNNSMC方法的跟踪精度相较于SMC方法在无干扰和受干扰情况下分别提升27.3%和28.9%,鲁棒性有所提升。 展开更多
关键词 重载列车 多质点模型 空气制动 滑模控制 径向基函数神经网络 非线性干扰观测器
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基于MOPSO-RBFNN的小芯样试件抗压强度预测方法
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作者 黄圣铨 《福建建设科技》 2024年第6期50-53,共4页
针对实际工程中在钢筋密集或构件尺寸较小处使用钻芯法难以获取标准尺寸芯样的问题,本研究提出了一种基于径向基神经网络的小芯样试件抗压强度预测方法。首先,本文制作了82组直径50mm的细石混凝土芯样试件与同条件养护同龄期150mm立方... 针对实际工程中在钢筋密集或构件尺寸较小处使用钻芯法难以获取标准尺寸芯样的问题,本研究提出了一种基于径向基神经网络的小芯样试件抗压强度预测方法。首先,本文制作了82组直径50mm的细石混凝土芯样试件与同条件养护同龄期150mm立方体试件进行轴心抗压试验。其次,对两种试件抗压试验得到的强度数值进行比较与分析,采用MOPSO算法对径向基神经网络的超参数进行优化。最后,建立了基于MOPSO-RBFNN模型的钻芯法取样试件抗压强度预测模型,并与其他方法的预测结果进行对比。结果显示,MOPSO-RBFNN模型预测结果的MAE和R2分别为1.311和0.987,误差评价指标均优于其他方法,验证了本文所提出预测方法的有效性。研究结果为混凝土小芯样试件强度预测提供了技术支撑,并对提高实际工程检测的可靠性和准确性具有重要意义。 展开更多
关键词 钻芯法 混凝土强度 小芯样 径向基函数神经网络 多目标粒子群优化算法
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