期刊文献+
共找到872篇文章
< 1 2 44 >
每页显示 20 50 100
Rockburst Intensity Prediction based on Kernel Extreme Learning Machine(KELM)
1
作者 XIAO Yidong QI Shengwen +3 位作者 GUO Songfeng ZHANG Shishu WANG Zan GONG Fengqiang 《Acta Geologica Sinica(English Edition)》 2025年第1期284-295,共12页
As one of the most serious geological disasters in deep underground engineering,rockburst has caused a large number of casualties.However,because of the complex relationship between the inducing factors and rockburst ... As one of the most serious geological disasters in deep underground engineering,rockburst has caused a large number of casualties.However,because of the complex relationship between the inducing factors and rockburst intensity,the problem of rockburst intensity prediction has not been well solved until now.In this study,we collect 292 sets of rockburst data including eight parameters,such as the maximum tangential stress of the surrounding rock σ_(θ),the uniaxial compressive strength of the rockσc,the uniaxial tensile strength of the rock σ_(t),and the strain energy storage index W_(et),etc.from more than 20 underground projects as training sets and establish two new rockburst prediction models based on the kernel extreme learning machine(KELM)combined with the genetic algorithm(KELM-GA)and cross-entropy method(KELM-CEM).To further verify the effect of the two models,ten sets of rockburst data from Shuangjiangkou Hydropower Station are selected for analysis and the results show that new models are more accurate compared with five traditional empirical criteria,especially the model based on KELM-CEM which has the accuracy rate of 90%.Meanwhile,the results of 10 consecutive runs of the model based on KELM-CEM are almost the same,meaning that the model has good stability and reliability for engineering applications. 展开更多
关键词 rockburst intensity prediction kernel extreme learning machine genetic algorithm cross-entropy method
在线阅读 下载PDF
Optimization of Extrusion-based Silicone Additive Manufacturing Process Parameters Based on Improved Kernel Extreme Learning Machine
2
作者 Zi-Ning Li Xiao-Qing Tian +3 位作者 Dingyifei Ma Shahid Hussain Lian Xia Jiang Han 《Chinese Journal of Polymer Science》 2025年第5期848-862,共15页
Silicone material extrusion(MEX)is widely used for processing liquids and pastes.Owing to the uneven linewidth and elastic extrusion deformation caused by material accumulation,products may exhibit geometric errors an... Silicone material extrusion(MEX)is widely used for processing liquids and pastes.Owing to the uneven linewidth and elastic extrusion deformation caused by material accumulation,products may exhibit geometric errors and performance defects,leading to a decline in product quality and affecting its service life.This study proposes a process parameter optimization method that considers the mechanical properties of printed specimens and production costs.To improve the quality of silicone printing samples and reduce production costs,three machine learning models,kernel extreme learning machine(KELM),support vector regression(SVR),and random forest(RF),were developed to predict these three factors.Training data were obtained through a complete factorial experiment.A new dataset is obtained using the Euclidean distance method,which assigns the elimination factor.It is trained with Bayesian optimization algorithms for parameter optimization,the new dataset is input into the improved double Gaussian extreme learning machine,and finally obtains the improved KELM model.The results showed improved prediction accuracy over SVR and RF.Furthermore,a multi-objective optimization framework was proposed by combining genetic algorithm technology with the improved KELM model.The effectiveness and reasonableness of the model algorithm were verified by comparing the optimized results with the experimental results. 展开更多
关键词 Silicone material extrusion Process parameter optimization Double Gaussian kernel extreme learning machine Euclidean distance assigned to the elimination factor multi-objective optimization framework
原文传递
Driving mechanism and nonlinear threshold identification of vegetation in China:Based on causal inference and machine learning
3
作者 ZHANG Houtian WANG Shidong DING Junjie 《Journal of Arid Land》 2025年第10期1341-1360,共20页
Climate change significantly affects vegetation dynamics.Thus,understanding interactions between vegetation and climatic factors is essential for ecological management.This study used kernel Normalized Difference Vege... Climate change significantly affects vegetation dynamics.Thus,understanding interactions between vegetation and climatic factors is essential for ecological management.This study used kernel Normalized Difference Vegetation Index(kNDVI)and climatic data(temperature,precipitation,humidity,and vapor pressure deficit(VPD))of China from 2000 to 2022,integrating Geographic Convergent Cross Mapping(GCCM)causal modeling,Extreme Gradient Boosting-Shapley Additive Explanations(XGBoost-SHAP)nonlinear threshold identification,and Geographical Simulation and Optimization Systems-Future Land Use Simulation(GeoSOS-FLUS)spatial prediction modeling to investigate vegetation spatiotemporal characteristics,driving mechanisms,nonlinear thresholds,and future spatial patterns.Results indicated that from 2000 to 2022,China's kNDVI showed an overall increasing trend(annual average ranging from 0.29 to 0.33 with distinct spatial differentiation:52.77%of areas locating in agricultural and ecological restoration regions in the central-eastern plain)experienced vegetation improvement,whereas 2.68%of areas locating in the southeastern coastal urbanized regions and the Yangtze River Delta experience vegetation degradation.The coefficient of variation(CV)of kNDVI at 0.30–0.40(accounting for 10.61%)was significantly higher than that of NDVI(accounting for 1.80%).Climate-driven mechanisms exhibited notable library length(L)dependence.At short-term scales(L<50),vegetation-driven transpiration regulated local microclimate,with a causal strength from kNDVI to temperature of 0.04–0.15;at long-term scales(L>100),cumulative temperature effects dominated vegetation dynamics,with a causal strength from temperature to kNDVI of 0.33.Humidity and kNDVI formed bidirectional positive feedback at long-term scales(L=210,causal strength>0.70),whereas the long-term suppressive effect of VPD was particularly pronounced(causal strength=0.21)in arid areas.The optimal threshold intervals identified were temperature at–12.18℃–0.67℃,precipitation at 24.00–159.74 mm,humidity of lower than 22.00%,and VPD of<0.07,0.17–0.24,and>0.30 kPa;notably,the lower precipitation threshold(24.00 mm)represented the minimum water requirements for vegetation recovery in arid areas.Future kNDVI spatial patterns are projected to continue the trend of"southeastern optimization and northwestern delay"from 2025 to 2040:the area proportion of high kNDVI value(>0.50)will rise from 40.43%to 41.85%,concentrated in the Sichuan Basin and the southern hills;meanwhile,the proportion of low-value areas of kNDVI(0.00–0.10)in the arid northwestern areas will decline by only 1.25%,constrained by sustained temperature and VPD stress.This study provides a scientific basis for vegetation dynamic regulation and sustainable development under climate change. 展开更多
关键词 kernel Normalized Difference Vegetation Index(kNDVI) climate drivers machine learning Geographic Convergent Cross Mapping(GCCM) extreme Gradient Boosting-Shapley Additive Explanations(XGBoost-SHAP) Geographical Simulation and Optimization Systems-Future Land Use Simulation(GeoSOS-FLUS)model
在线阅读 下载PDF
Prediction of flyrock induced by mine blasting using a novel kernel-based extreme learning machine 被引量:4
4
作者 Mehdi Jamei Mahdi Hasanipanah +2 位作者 Masoud Karbasi Iman Ahmadianfar Somaye Taherifar 《Journal of Rock Mechanics and Geotechnical Engineering》 SCIE CSCD 2021年第6期1438-1451,共14页
Blasting is a common method of breaking rock in surface mines.Although the fragmentation with proper size is the main purpose,other undesirable effects such as flyrock are inevitable.This study is carried out to evalu... Blasting is a common method of breaking rock in surface mines.Although the fragmentation with proper size is the main purpose,other undesirable effects such as flyrock are inevitable.This study is carried out to evaluate the capability of a novel kernel-based extreme learning machine algorithm,called kernel extreme learning machine(KELM),by which the flyrock distance(FRD) is predicted.Furthermore,the other three data-driven models including local weighted linear regression(LWLR),response surface methodology(RSM) and boosted regression tree(BRT) are also developed to validate the main model.A database gathered from three quarry sites in Malaysia is employed to construct the proposed models using 73 sets of spacing,burden,stemming length and powder factor data as inputs and FRD as target.Afterwards,the validity of the models is evaluated by comparing the corresponding values of some statistical metrics and validation tools.Finally,the results verify that the proposed KELM model on account of highest correlation coefficient(R) and lowest root mean square error(RMSE) is more computationally efficient,leading to better predictive capability compared to LWLR,RSM and BRT models for all data sets. 展开更多
关键词 BLASTING Flyrock distance kernel extreme learning machine(KELM) Local weighted linear regression(LWLR) Response surface methodology(RSM)
在线阅读 下载PDF
Dynamic model for predicting nitrogen oxide concentration at outlet of selective catalytic reduction denitrification system based on kernel extreme learning machine 被引量:1
5
作者 Ma Ning Liu Lei +2 位作者 Yang Zhenyong Yan Laiqing Dong Ze 《Journal of Southeast University(English Edition)》 EI CAS 2022年第4期383-391,共9页
To solve the increasing model complexity due to several input variables and large correlations under variable load conditions,a dynamic modeling method combining a kernel extreme learning machine(KELM)and principal co... To solve the increasing model complexity due to several input variables and large correlations under variable load conditions,a dynamic modeling method combining a kernel extreme learning machine(KELM)and principal component analysis(PCA)was proposed and applied to the prediction of nitrogen oxide(NO_(x))concentration at the outlet of a selective catalytic reduction(SCR)denitrification system.First,PCA is applied to the feature information extraction of input data,and the current and previous sequence values of the extracted information are used as the inputs of the KELM model to reflect the dynamic characteristics of the NO_(x)concentration at the SCR outlet.Then,the model takes the historical data of the NO_(x)concentration at the SCR outlet as the model input to improve its accuracy.Finally,an optimization algorithm is used to determine the optimal parameters of the model.Compared with the Gaussian process regression,long short-term memory,and convolutional neural network models,the prediction errors are reduced by approximately 78.4%,67.6%,and 59.3%,respectively.The results indicate that the proposed dynamic model structure is reliable and can accurately predict NO_(x)concentrations at the outlet of the SCR system. 展开更多
关键词 selective catalytic reduction nitrogen oxides principal component analysis kernel extreme learning machine dynamic model
在线阅读 下载PDF
Anomaly Detection of UAV State Data Based on Single-Class Triangular Global Alignment Kernel Extreme Learning Machine
6
作者 Feisha Hu Qi Wang +2 位作者 Haijian Shao Shang Gao Hualong Yu 《Computer Modeling in Engineering & Sciences》 SCIE EI 2023年第9期2405-2424,共20页
Unmanned Aerial Vehicles(UAVs)are widely used and meet many demands in military and civilian fields.With the continuous enrichment and extensive expansion of application scenarios,the safety of UAVs is constantly bein... Unmanned Aerial Vehicles(UAVs)are widely used and meet many demands in military and civilian fields.With the continuous enrichment and extensive expansion of application scenarios,the safety of UAVs is constantly being challenged.To address this challenge,we propose algorithms to detect anomalous data collected from drones to improve drone safety.We deployed a one-class kernel extreme learning machine(OCKELM)to detect anomalies in drone data.By default,OCKELM uses the radial basis(RBF)kernel function as the kernel function of themodel.To improve the performance ofOCKELM,we choose a TriangularGlobalAlignmentKernel(TGAK)instead of anRBF Kernel and introduce the Fast Independent Component Analysis(FastICA)algorithm to reconstruct UAV data.Based on the above improvements,we create a novel anomaly detection strategy FastICA-TGAK-OCELM.The method is finally validated on the UCI dataset and detected on the Aeronautical Laboratory Failures and Anomalies(ALFA)dataset.The experimental results show that compared with other methods,the accuracy of this method is improved by more than 30%,and point anomalies are effectively detected. 展开更多
关键词 UAV safety kernel extreme learning machine triangular global alignment kernel fast independent component analysis
在线阅读 下载PDF
Power Transformer Fault Diagnosis Using Random Forest and Optimized Kernel Extreme Learning Machine 被引量:2
7
作者 Tusongjiang Kari Zhiyang He +3 位作者 Aisikaer Rouzi Ziwei Zhang Xiaojing Ma Lin Du 《Intelligent Automation & Soft Computing》 SCIE 2023年第7期691-705,共15页
Power transformer is one of the most crucial devices in power grid.It is significant to determine incipient faults of power transformers fast and accurately.Input features play critical roles in fault diagnosis accura... Power transformer is one of the most crucial devices in power grid.It is significant to determine incipient faults of power transformers fast and accurately.Input features play critical roles in fault diagnosis accuracy.In order to further improve the fault diagnosis performance of power trans-formers,a random forest feature selection method coupled with optimized kernel extreme learning machine is presented in this study.Firstly,the random forest feature selection approach is adopted to rank 42 related input features derived from gas concentration,gas ratio and energy-weighted dissolved gas analysis.Afterwards,a kernel extreme learning machine tuned by the Aquila optimization algorithm is implemented to adjust crucial parameters and select the optimal feature subsets.The diagnosis accuracy is used to assess the fault diagnosis capability of concerned feature subsets.Finally,the optimal feature subsets are applied to establish fault diagnosis model.According to the experimental results based on two public datasets and comparison with 5 conventional approaches,it can be seen that the average accuracy of the pro-posed method is up to 94.5%,which is superior to that of other conventional approaches.Fault diagnosis performances verify that the optimum feature subset obtained by the presented method can dramatically improve power transformers fault diagnosis accuracy. 展开更多
关键词 Power transformer fault diagnosis kernel extreme learning machine aquila optimization random forest
在线阅读 下载PDF
Real-time human blood pressure measurement based on laser self-mixing interferometry with extreme learning machine 被引量:3
8
作者 WANG Xiu-lin LÜLi-ping +1 位作者 HU Lu HUANG Wen-cai 《Optoelectronics Letters》 EI 2020年第6期467-470,共4页
In this paper, we present a method based on self-mixing interferometry combing extreme learning machine for real-time human blood pressure measurement. A signal processing method based on wavelet transform is applied ... In this paper, we present a method based on self-mixing interferometry combing extreme learning machine for real-time human blood pressure measurement. A signal processing method based on wavelet transform is applied to extract reversion point in the self-mixing interference signal, thus the pulse wave profile is successfully reconstructed. Considering the blood pressure values are intrinsically related to characteristic parameters of the pulse wave, 80 samples from the MIMIC-II database are used to train the extreme learning machine blood pressure model. In the experiment, 15 measured samples of pulse wave signal are used as the prediction sets. The results show that the errors of systolic and diastolic blood pressure are both within 5 mm Hg compared with that by the Coriolis method. 展开更多
关键词 PROFILE Real-time human blood pressure measurement based on laser self-mixing interferometry with extreme learning machine
原文传递
Constrained voting extreme learning machine and its application 被引量:5
9
作者 MIN Mengcan CHEN Xiaofang XIE Yongfang 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2021年第1期209-219,共11页
Extreme learning machine(ELM)has been proved to be an effective pattern classification and regression learning mechanism by researchers.However,its good performance is based on a large number of hidden layer nodes.Wit... Extreme learning machine(ELM)has been proved to be an effective pattern classification and regression learning mechanism by researchers.However,its good performance is based on a large number of hidden layer nodes.With the increase of the nodes in the hidden layers,the computation cost is greatly increased.In this paper,we propose a novel algorithm,named constrained voting extreme learning machine(CV-ELM).Compared with the traditional ELM,the CV-ELM determines the input weight and bias based on the differences of between-class samples.At the same time,to improve the accuracy of the proposed method,the voting selection is introduced.The proposed method is evaluated on public benchmark datasets.The experimental results show that the proposed algorithm is superior to the original ELM algorithm.Further,we apply the CV-ELM to the classification of superheat degree(SD)state in the aluminum electrolysis industry,and the recognition accuracy rate reaches87.4%,and the experimental results demonstrate that the proposed method is more robust than the existing state-of-the-art identification methods. 展开更多
关键词 extreme learning machine(ELM) majority voting ensemble method sample based learning superheat degree(SD)
在线阅读 下载PDF
Fiber-based wearable sensors for bio-medical monitoring
10
作者 Zeev Zalevsky 《Opto-Electronic Advances》 2025年第3期1-2,共2页
In a recent study,Prof.Rui Min and collaborators published their paper in the journal of Opto-Electronic Science that is entitled"Smart photonic wristband for pulse wave monitoring".The paper introduces nove... In a recent study,Prof.Rui Min and collaborators published their paper in the journal of Opto-Electronic Science that is entitled"Smart photonic wristband for pulse wave monitoring".The paper introduces novel realization of a sensor that us-es a polymer optical multi-mode fiber to sense pulse wave bio-signal from a wrist by analyzing the specklegram mea-sured at the output of the fiber.Applying machine learning techniques over the pulse wave signal allowed medical diag-nostics and recognizing different gestures with accuracy rate of 95%. 展开更多
关键词 machine learning fiber based wearable sensors pulse wave polymer optical multi mode fiber pulse wave monitoring recognizing different gestures machine learning techniques specklegram
在线阅读 下载PDF
Multi-Interval-Aggregation Failure Point Approximation for Remaining Useful Life Prediction
11
作者 Linchuan Fan Xiaolong Chen +1 位作者 Shuo Li Yi Chai 《IEEE/CAA Journal of Automatica Sinica》 2025年第3期639-641,共3页
Dear Editor,This letter focuses on the remaining useful life(RUL)prediction task under limited labeled samples.Existing machine-learning-based RUL prediction methods for this task usually pay attention to mining degra... Dear Editor,This letter focuses on the remaining useful life(RUL)prediction task under limited labeled samples.Existing machine-learning-based RUL prediction methods for this task usually pay attention to mining degradation information to improve the prediction accuracy of degradation value or health indicator for the next epoch.However,they ignore the cumulative prediction error caused by iterations before reaching the failure point. 展开更多
关键词 remaining useful life prediction failure point degradation value health indicator multi interval aggregation failure point approximation machine learning based mining degradation information
在线阅读 下载PDF
Deep kernel extreme learning machine classifier based on the improved sparrow search algorithm
12
作者 Zhao Guangyuan Lei Yu 《The Journal of China Universities of Posts and Telecommunications》 EI CSCD 2024年第3期15-29,共15页
In the classification problem,deep kernel extreme learning machine(DKELM)has the characteristics of efficient processing and superior performance,but its parameters optimization is difficult.To improve the classificat... In the classification problem,deep kernel extreme learning machine(DKELM)has the characteristics of efficient processing and superior performance,but its parameters optimization is difficult.To improve the classification accuracy of DKELM,a DKELM algorithm optimized by the improved sparrow search algorithm(ISSA),named as ISSA-DKELM,is proposed in this paper.Aiming at the parameter selection problem of DKELM,the DKELM classifier is constructed by using the optimal parameters obtained by ISSA optimization.In order to make up for the shortcomings of the basic sparrow search algorithm(SSA),the chaotic transformation is first applied to initialize the sparrow position.Then,the position of the discoverer sparrow population is dynamically adjusted.A learning operator in the teaching-learning-based algorithm is fused to improve the position update operation of the joiners.Finally,the Gaussian mutation strategy is added in the later iteration of the algorithm to make the sparrow jump out of local optimum.The experimental results show that the proposed DKELM classifier is feasible and effective,and compared with other classification algorithms,the proposed DKELM algorithm aciheves better test accuracy. 展开更多
关键词 deep kernel extreme learning machine(DKELM) improved sparrow search algorithm(ISSA) CLASSIFIER parameters optimization
原文传递
Determination of influential parameters for prediction of total sediment loads in mountain rivers using kernel-based approaches
13
作者 Kiyoumars ROUSHANGAR Saman SHAHNAZI 《Journal of Mountain Science》 SCIE CSCD 2020年第2期480-491,共12页
It is important to have a reasonable estimation of sediment transport rate with respect to its significant role in the planning and management of water resources projects. The complicate nature of sediment transport i... It is important to have a reasonable estimation of sediment transport rate with respect to its significant role in the planning and management of water resources projects. The complicate nature of sediment transport in gravel-bed rivers causes inaccuracies of empirical formulas in the prediction of this phenomenon. Artificial intelligences as alternative approaches can provide solutions to such complex problems. The present study aimed at investigating the capability of kernel-based approaches in predicting total sediment loads and identification of influential parameters of total sediment transport. For this purpose, Gaussian process regression(GPR), Support vector machine(SVM) and kernel extreme learning machine(KELM) are applied to enhance the prediction level of total sediment loads in 19 mountain gravel-bed streams and rivers located in the United States. Several parameters based on two scenarios are investigated and consecutive predicted results are compared with some well-known formulas. Scenario 1 considers only hydraulic characteristics and on the other side, the second scenario was formed using hydraulic and sediment properties. The obtained results reveal that using the parameters of hydraulic conditions asinputs gives a good estimation of total sediment loads. Furthermore, it was revealed that KELM method with input parameters of Froude number(Fr), ratio of average velocity(V) to shear velocity(U*) and shields number(θ) yields a correlation coefficient(R) of 0.951, a Nash-Sutcliffe efficiency(NSE) of 0.903 and root mean squared error(RMSE) of 0.021 and indicates superior results compared with other methods. Performing sensitivity analysis showed that the ratio of average velocity to shear flow velocity and the Froude number are the most effective parameters in predicting total sediment loads of gravel-bed rivers. 展开更多
关键词 Total sediment loads Support vector machine Gaussian process regression kernel extreme learning machine Mountain Rivers
原文传递
A Novel Kernel for Least Squares Support Vector Machine
14
作者 冯伟 赵永平 +2 位作者 杜忠华 李德才 王立峰 《Defence Technology(防务技术)》 SCIE EI CAS 2012年第4期240-247,共8页
Extreme learning machine(ELM) has attracted much attention in recent years due to its fast convergence and good performance.Merging both ELM and support vector machine is an important trend,thus yielding an ELM kernel... Extreme learning machine(ELM) has attracted much attention in recent years due to its fast convergence and good performance.Merging both ELM and support vector machine is an important trend,thus yielding an ELM kernel.ELM kernel based methods are able to solve the nonlinear problems by inducing an explicit mapping compared with the commonly-used kernels such as Gaussian kernel.In this paper,the ELM kernel is extended to the least squares support vector regression(LSSVR),so ELM-LSSVR was proposed.ELM-LSSVR can be used to reduce the training and test time simultaneously without extra techniques such as sequential minimal optimization and pruning mechanism.Moreover,the memory space for the training and test was relieved.To confirm the efficacy and feasibility of the proposed ELM-LSSVR,the experiments are reported to demonstrate that ELM-LSSVR takes the advantage of training and test time with comparable accuracy to other algorithms. 展开更多
关键词 计算技术 理论 方法 自动机理论
在线阅读 下载PDF
Incorporating Prior Knowledge into Kernel Based Regression
15
作者 SUN Zhe ZHANG Zeng-Ke WANG Huan-Gang 《自动化学报》 EI CSCD 北大核心 2008年第12期1515-1521,共7页
在一些,样品基于回归任务,观察样品是相当很少足够增进知识。作为结果,在样品和模型复杂性的数字之间的冲突出现,并且回归方法将面对窘境是否选择一个复杂模型。合并优先的知识是这窘境的一个潜在的解决方案。在这份报纸,一种优先... 在一些,样品基于回归任务,观察样品是相当很少足够增进知识。作为结果,在样品和模型复杂性的数字之间的冲突出现,并且回归方法将面对窘境是否选择一个复杂模型。合并优先的知识是这窘境的一个潜在的解决方案。在这份报纸,一种优先的知识被调查,把它合并到核的一个新奇方法基于回归计划被建议。建议优先的 knowledge based 核回归(PKBKR ) 方法包括二 subproblems:在函数空间代表优先的知识,并且联合这个代表和训练样品获得回归函数。为代表的步的一个贪婪算法和为加入步的加权的损失功能被建议。最后,实验被执行验证建议 PKBKR 方法,结果在那里证明建议方法能与适当模型复杂性完成相对高的回归性能,特别当样品的数字是小的或观察噪音大时。 展开更多
关键词 计算方法 回归方程 机械学习 自动化系统
在线阅读 下载PDF
Research on the IL-Bagging-DHKELM Short-Term Wind Power Prediction Algorithm Based on Error AP Clustering Analysis
16
作者 Jing Gao Mingxuan Ji +1 位作者 Hongjiang Wang Zhongxiao Du 《Computers, Materials & Continua》 SCIE EI 2024年第6期5017-5030,共14页
With the continuous advancement of China’s“peak carbon dioxide emissions and Carbon Neutrality”process,the proportion of wind power is increasing.In the current research,aiming at the problem that the forecasting m... With the continuous advancement of China’s“peak carbon dioxide emissions and Carbon Neutrality”process,the proportion of wind power is increasing.In the current research,aiming at the problem that the forecasting model is outdated due to the continuous updating of wind power data,a short-term wind power forecasting algorithm based on Incremental Learning-Bagging Deep Hybrid Kernel Extreme Learning Machine(IL-Bagging-DHKELM)error affinity propagation cluster analysis is proposed.The algorithm effectively combines deep hybrid kernel extreme learning machine(DHKELM)with incremental learning(IL).Firstly,an initial wind power prediction model is trained using the Bagging-DHKELM model.Secondly,Euclidean morphological distance affinity propagation AP clustering algorithm is used to cluster and analyze the prediction error of wind power obtained from the initial training model.Finally,the correlation between wind power prediction errors and Numerical Weather Prediction(NWP)data is introduced as incremental updates to the initial wind power prediction model.During the incremental learning process,multiple error performance indicators are used to measure the overall model performance,thereby enabling incremental updates of wind power models.Practical examples show the method proposed in this article reduces the root mean square error of the initial model by 1.9 percentage points,indicating that this method can be better adapted to the current scenario of the continuous increase in wind power penetration rate.The accuracy and precision of wind power generation prediction are effectively improved through the method. 展开更多
关键词 Short-term wind power prediction deep hybrid kernel extreme learning machine incremental learning error clustering
在线阅读 下载PDF
基于GMDE和MFO-MKELM算法的往复压缩机轴承故障诊断研究 被引量:1
17
作者 李彦阳 王金东 +1 位作者 宁留洋 马磊 《机械传动》 北大核心 2025年第2期170-176,共7页
【目的】针对往复压缩机轴承间隙振动信号呈现局部强非平稳性、非线性等特点,导致出现轴承故障特征提取困难、识别准确率不高等问题,提出了基于广义多尺度散布熵(Generalized Multi-scale Dispersal Entropy,GMDE)和飞蛾捕焰优化-多核... 【目的】针对往复压缩机轴承间隙振动信号呈现局部强非平稳性、非线性等特点,导致出现轴承故障特征提取困难、识别准确率不高等问题,提出了基于广义多尺度散布熵(Generalized Multi-scale Dispersal Entropy,GMDE)和飞蛾捕焰优化-多核极限学习机智能模型算法(Moth Flame Catching Optimization and Multiple Kernel Extreme Learning Machine,MFO-MKELM)的往复压缩机轴承故障诊断新方法。【方法】首先,针对多尺度散布熵在粗粒化过程中采用均值粗粒化方式、在一定程度“中和”了原始信号的动力学突变行为、降低了熵值分析准确性,提出了一种广义多尺度散布熵算法,并提取往复压缩机轴承间隙振动信号的故障特征;接着,将多项式核函数和改进高斯核函数进行线性组合,构建多核极限学习机智能识别算法,并针对提取的特征向量集进行了故障诊断研究。【结果】仿真结果表明,该诊断方法识别准确率达98.6%,实现了轴承不同种类故障的高效、智能诊断。 展开更多
关键词 往复压缩机 广义多尺度散布熵 飞蛾捕焰优化算法 多核极限学习机
在线阅读 下载PDF
Prediction of coal and gas outburst hazard using kernel principal component analysis and an enhanced extreme learning machine approach
18
作者 Kailong Xue Yun Qi +2 位作者 Hongfei Duan Anye Cao Aiwen Wang 《Geohazard Mechanics》 2024年第4期279-288,共10页
In order to enhance the accuracy and efficiency of coal and gas outburst prediction,a novel approach combining Kernel Principal Component Analysis(KPCA)with an Improved Whale Optimization Algorithm(IWOA)optimized extr... In order to enhance the accuracy and efficiency of coal and gas outburst prediction,a novel approach combining Kernel Principal Component Analysis(KPCA)with an Improved Whale Optimization Algorithm(IWOA)optimized extreme learning machine(ELM)is proposed for precise forecasting of coal and gas outburst disasters in mines.Firstly,based on the influencing factors of coal and gas outburst disasters,nine coupling indexes are selected,including gas pressure,geological structure,initial velocity of gas emission,and coal structure type.The correlation between each index was analyzed using the Pearson correlation coefficient matrix in SPSS 27,followed by extraction of the principal components of the original data through Kernel Principal Component Analysis(KPCA).The Whale Optimization Algorithm(WOA)was enhanced by incorporating adaptive weight,variable helix position update,and optimal neighborhood disturbance to augment its performance.The improved Whale Optimization Algorithm(IWOA)is subsequently employed to optimize the weight Φ of the Extreme Learning Machine(ELM)input layer and the threshold g of the hidden layer,thereby enhancing its predictive accuracy and mitigating the issue of"over-fitting"associated with ELM to some extent.The principal components extracted by KPCA were utilized as input,while the outburst risk grade served as output.Subsequently,a comparative analysis was conducted between these results and those obtained from WOA-SVC,PSO-BPNN,and SSA-RF models.The IWOA-ELM model accurately predicts the risk grade of coal and gas outburst disasters,with results consistent with actual situations.Compared to other models tested,the model's performance showed an increase in Ac by 0.2,0.3,and 0.2 respectively;P increased by 0.15,0.2167,and 0.1333 respectively;R increased by 0.25,0.3,and 0.2333 respectively;F1-Score increased by 0.2031,0.2607,and 0.1864 respectively;Kappa coefficient k increased by 0.3226,0.4762 and 0.3175,respectively.The practicality and stability of the IWOAELM model were verified through its application in a coal mine in Shanxi Province where the predicted values exactly matched the actual values.This indicates that this model is more suitable for predicting coal and gas outburst disaster risks. 展开更多
关键词 Coal and gas outburst Risk prediction kernel principal component analysis(KPCA) Improved whale optimization algorithm(IWOA) extreme learning machine(ELM)
在线阅读 下载PDF
基于GA-RELM多特征优选的烟叶多部位正反面识别方法 被引量:2
19
作者 陈婷 赵晓琳 +5 位作者 张冀武 盖小雷 张晓伟 刘宇晨 王燕 龙杰 《湖南农业大学学报(自然科学版)》 北大核心 2025年第1期113-122,共10页
针对现有烟叶分级模型多基于平整烟叶的正面特征构建,分级模型准确率和实用性较低的问题,提出一种基于遗传算法-正则化极限学习机(GA-RELM)多特征优选的烟叶多部位正反面识别方法。首先,对自然状态下的烟叶进行多尺度正反面特征提取,构... 针对现有烟叶分级模型多基于平整烟叶的正面特征构建,分级模型准确率和实用性较低的问题,提出一种基于遗传算法-正则化极限学习机(GA-RELM)多特征优选的烟叶多部位正反面识别方法。首先,对自然状态下的烟叶进行多尺度正反面特征提取,构建正反面数据集,根据特征重要性和特征间的潜在关系,实现特征降维并构建新特征组合。其次,对正则化极限学习机(RELM)进行隐藏层偏置寻优,以提高模型实际应用性和分类精度。结果表明:与原极限学习机(ELM)相比,GA-RELM对自然状态下的烟叶正反面和多部位正反面的分类精度分别提高了0.84%和7.88%,运算时间分别减少2.56 s和5.72 s;与其他烟叶分级算法相比,GA-RELM在准确率、精确率、召回率、F1评分等多个指标上表现出明显优势。 展开更多
关键词 烤烟 烟叶分级 多特征优选 遗传算法 正则化极限学习机
在线阅读 下载PDF
改进SSA-HKELM模型在海洋弯管剩余寿命预测中的应用 被引量:1
20
作者 骆正山 王良雨 +1 位作者 高懿琼 骆济豪 《安全与环境学报》 北大核心 2025年第5期1770-1779,共10页
针对海洋油气弯管剩余寿命预测问题,建立了基于改进麻雀搜索算法(Improved Sparrow Search Algorithm,ISSA)优化混合核极限学习机(Hybrid Kernel Extreme Learning Machine,HKELM)的腐蚀深度预测模型。通过最优拉丁超立方初始化种群分布... 针对海洋油气弯管剩余寿命预测问题,建立了基于改进麻雀搜索算法(Improved Sparrow Search Algorithm,ISSA)优化混合核极限学习机(Hybrid Kernel Extreme Learning Machine,HKELM)的腐蚀深度预测模型。通过最优拉丁超立方初始化种群分布,采用黄金正弦、Tent混沌扰动和柯西变异提高麻雀搜索算法(Sparrow Search Algorithm,SSA)的收敛速度和搜索能力,运用ISSA算法优化HKELM的网络参数,构建海洋弯管腐蚀深度预测模型。依据改进的ASME B31G剩余强度评价准则,计算最大允许腐蚀深度,结合管道腐蚀发展趋势模型,对薄弱弯管进行腐蚀剩余寿命预测。以某海洋管道弯管试验数据为基础对模型进行验证,模型预测精度高达0.989 7,能较好地预测海洋弯管的最大腐蚀深度及未来腐蚀发展趋势。寿命预测结果表明,部分弯管剩余寿命未超过其预期服役时间,为海洋弯管的安全运维及维修更换提供了决策支持。 展开更多
关键词 安全工程 海洋弯管 剩余寿命 改进麻雀搜索算法 混合核极限学习机 腐蚀深度预测模型
原文传递
上一页 1 2 44 下一页 到第
使用帮助 返回顶部