期刊文献+
共找到8,853篇文章
< 1 2 250 >
每页显示 20 50 100
Load-measurement method for floating offshore wind turbines based on a long short-term memory (LSTM) neural network
1
作者 Yonggang LIN Xiangheng FENG +1 位作者 Hongwei LIU Yong SUN 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 2025年第5期456-470,共15页
Complicated loads encountered by floating offshore wind turbines(FOWTs)in real sea conditions are crucial for future optimization of design,but obtaining data on them directly poses a challenge.To address this issue,w... Complicated loads encountered by floating offshore wind turbines(FOWTs)in real sea conditions are crucial for future optimization of design,but obtaining data on them directly poses a challenge.To address this issue,we applied machine learning techniques to obtain hydrodynamic and aerodynamic loads of FOWTs by measuring platform motion responses and wave-elevation sequences.First,a computational fluid dynamics(CFD)simulation model of the floating platform was established based on the dynamic fluid body interaction technique and overset grid technology.Then,a long short-term memory(LSTM)neural network model was constructed and trained to learn the nonlinear relationship between the waves,platform-motion inputs,and hydrodynamic-load outputs.The optimal model was determined after analyzing the sensitivity of parameters such as sample characteristics,network layers,and neuron numbers.Subsequently,the effectiveness of the hydrodynamic load model was validated under different simulation conditions,and the aerodynamic load calculation was completed based on the D'Alembert principle.Finally,we built a hybrid-scale FOWT model,based on the software in the loop strategy,in which the wind turbine was replaced by an actuation system.Model tests were carried out in a wave basin and the results demonstrated that the root mean square errors of the hydrodynamic and aerodynamic load measurements were 4.20%and 10.68%,respectively. 展开更多
关键词 Floating offshore wind turbine(FOWT) Long short-term memory(lstm)neural network Machine learning technique Load measurement Hybrid-scale model test
原文传递
Development and application of an intelligent thermal state monitoring system for sintering machine tails based on CNN-LSTM hybrid neural networks 被引量:1
2
作者 Da-lin Xiong Xin-yu Zhang +3 位作者 Zheng-wei Yu Xue-feng Zhang Hong-ming Long Liang-jun Chen 《Journal of Iron and Steel Research International》 2025年第1期52-63,共12页
Real-time prediction and precise control of sinter quality are pivotal for energy saving,cost reduction,quality improvement and efficiency enhancement in the ironmaking process.To advance,the accuracy and comprehensiv... Real-time prediction and precise control of sinter quality are pivotal for energy saving,cost reduction,quality improvement and efficiency enhancement in the ironmaking process.To advance,the accuracy and comprehensiveness of sinter quality prediction,an intelligent flare monitoring system for sintering machine tails that combines hybrid neural networks integrating convolutional neural network with long short-term memory(CNN-LSTM)networks was proposed.The system utilized a high-temperature thermal imager for image acquisition at the sintering machine tail and employed a zone-triggered method to accurately capture dynamic feature images under challenging conditions of high-temperature,high dust,and occlusion.The feature images were then segmented through a triple-iteration multi-thresholding approach based on the maximum between-class variance method to minimize detail loss during the segmentation process.Leveraging the advantages of CNN and LSTM networks in capturing temporal and spatial information,a comprehensive model for sinter quality prediction was constructed,with inputs including the proportion of combustion layer,porosity rate,temperature distribution,and image features obtained from the convolutional neural network,and outputs comprising quality indicators such as underburning index,uniformity index,and FeO content of the sinter.The accuracy is notably increased,achieving a 95.8%hit rate within an error margin of±1.0.After the system is applied,the average qualified rate of FeO content increases from 87.24%to 89.99%,representing an improvement of 2.75%.The average monthly solid fuel consumption is reduced from 49.75 to 46.44 kg/t,leading to a 6.65%reduction and underscoring significant energy saving and cost reduction effects. 展开更多
关键词 Sinter quality Convolutional neural network Long short-term memory Image segmentation FeO prediction
原文传递
Optimizing Stock Market Prediction Using Long Short-Term Memory Networks
3
作者 Nadia Afrin Ritu Samsun Nahar Khandakar +1 位作者 Md. Masum Bhuiyan Md. Imdadul Islam 《Journal of Computer and Communications》 2025年第2期207-222,共16页
Deep learning plays a vital role in real-life applications, for example object identification, human face recognition, speech recognition, biometrics identification, and short and long-term forecasting of data. The ma... Deep learning plays a vital role in real-life applications, for example object identification, human face recognition, speech recognition, biometrics identification, and short and long-term forecasting of data. The main objective of our work is to predict the market performance of the Dhaka Stock Exchange (DSE) on day closing price using different Deep Learning techniques. In this study, we have used the LSTM (Long Short-Term Memory) network to forecast the data of DSE for the convenience of shareholders. We have enforced LSTM networks to train data as well as forecast the future time series that has differentiated with test data. We have computed the Root Mean Square Error (RMSE) value to scrutinize the error between the forecasted value and test data that diminished the error by updating the LSTM networks. As a consequence of the renovation of the network, the LSTM network provides tremendous performance which outperformed the existing works to predict stock market prices. 展开更多
关键词 Long Short-Term memory (lstm) Stock Market PREDICTION Time Series Analysis Deep Learning
在线阅读 下载PDF
Real-Time Prediction of Elbow Motion Through sEMG-Based Hybrid BP-LSTM Network
4
作者 MA Yiyuan CHEN Huaiyuan CHEN Weidong 《Journal of Shanghai Jiaotong university(Science)》 2025年第3期452-460,共9页
In the face of the large number of people with motor function disabilities,rehabilitation robots have attracted more and more attention.In order to promote the active participation of the user's motion intention i... In the face of the large number of people with motor function disabilities,rehabilitation robots have attracted more and more attention.In order to promote the active participation of the user's motion intention in the assisted rehabilitation process of the robots,it is crucial to establish the human motion prediction model.In this paper,a hybrid prediction model built on long short-term memory(LSTM)neural network using surface electromyography(sEMG)is applied to predict the elbow motion of the users in advance.This model includes two sub-models:a back-propagation neural network and an LSTM network.The former extracts a preliminary prediction of the elbow motion,and the latter corrects this prediction to increase accuracy.The proposed model takes time series data as input,which includes the sEMG signals measured by electrodes and the continuous angles from inertial measurement units.The offline and online tests were carried out to verify the established hybrid model.Finally,average root mean square errors of 3.52°and 4.18°were reached respectively for offline and online tests,and the correlation coefficients for both were above 0.98. 展开更多
关键词 motion prediction surface electromyography(sEMG) long short-term memory(lstm) back-propagation neural network
原文传递
基于LSTM神经网络预测转炉炉壁温度周期性波动
5
作者 陈习堂 孙鼎然 +3 位作者 张鑫 高荣 王恩志 徐建新 《有色金属(冶炼部分)》 北大核心 2026年第1期9-19,共11页
针对铜冶炼转炉在生产过程中因熔体喷溅、摇炉操作等动态工况导致炉壁温度出现周期性剧烈波动,传统静态温度监测方法难以准确预测的问题,本文提出一种融合LSTM神经网络与图像匹配技术的智能监测方法。通过部署于炉腹、风眼区、端盖东、... 针对铜冶炼转炉在生产过程中因熔体喷溅、摇炉操作等动态工况导致炉壁温度出现周期性剧烈波动,传统静态温度监测方法难以准确预测的问题,本文提出一种融合LSTM神经网络与图像匹配技术的智能监测方法。通过部署于炉腹、风眼区、端盖东、端盖西四部位的红外热像仪采集时序温度数据,创新性地采用模板区域提取与灰度差异分析算法对摇炉遮挡等异常图像进行预处理,有效提升数据质量。在此基础上,构建LSTM预测模型,利用其门控机制捕捉温度序列的长期依赖关系,实现对未来温度趋势的精准预测。工业验证结果表明,该模型在炉腹和端盖西的预测平均绝对误差(MAE)为1.35~1.44℃,风眼区等复杂工况下MAE控制在3.66~4.20℃,显著优于传统方法。该方法能够可靠识别炉衬蚀损引起的温度上升趋势,为转炉预测性维护提供数据支撑,对保障安全生产、延长炉寿及推动冶炼智能化具有重要工程价值。 展开更多
关键词 PS转炉 lstm神经网络 温度预测 预测性维护 图像匹配
在线阅读 下载PDF
基于注意力机制LSTM神经网络的北方岩溶大泉水位预测研究
6
作者 黄林显 徐征和 +7 位作者 支传顺 李双 刘治政 邢立亭 朱恒华 王晓玮 毕雯雯 胡晓农 《地学前缘》 北大核心 2026年第1期419-431,共13页
岩溶地下水是北方岩溶区重要供水水源,准确预测其水位动态对地下水资源科学管理和保护具有重要意义。但岩溶含水系统具有强烈的非均质性和各向异性,导致其水位动态往往体现出非平稳及非线性波动状态,造成进行地下水位预测时易产生较大... 岩溶地下水是北方岩溶区重要供水水源,准确预测其水位动态对地下水资源科学管理和保护具有重要意义。但岩溶含水系统具有强烈的非均质性和各向异性,导致其水位动态往往体现出非平稳及非线性波动状态,造成进行地下水位预测时易产生较大误差。论文提出一种耦合注意力机制(Attention)和长短时记忆(LSTM,Long Short-Term Memory)神经网络的多变量趵突泉地下水位预测模型,利用泉域2013—2024年日降水(代表补给项)及水汽压、日气温和开采量(代表排泄项)进行模型训练和预测,结果表明:①采用BEAST(Bayesian Estimator of Abrupt Change,Seasonality,and Trend)算法对1958—2024年趵突泉水位时间序列进行分解,共识别出四个突变点并以此为依据将水位动态划分为四个阶段;②互相关分析揭示降雨和趵突泉水位动态变化之间存在2~3个月的时间滞后,表明两者之间动态变化较为一致;③所提出的预测模型以多种变量(降水量、水汽压、气温及开采量)作为模型输入,不同变量间的交互作用可相互验证,能有效提升预测精度;④采用正弦函数拟合日气温数据,可消除测量误差影响,能在一定程度上提高预测精度;⑤相较于单一LSTM神经网络和门控循环单元(GRU)神经网络,LSTM_Attention神经网络由于引入注意力机制,能聚焦更重要特征的影响,从而显著提高预测精度,其水位预测RMSE和R 2值分别为0.13 m和0.94。总体来说,本文所提出的LSTM_Attention神经网络岩溶地下水位预测模型具有较强的准确性和稳定性,可为岩溶地下水位精确预测提供借鉴。 展开更多
关键词 北方岩溶 水位预测 多变量模拟 lstm_Attention神经网络
在线阅读 下载PDF
Bifurcation dynamics govern sharp wave ripple generation and rhythmic transitions in hippocampal-cortical memory networks
7
作者 Xin Jiang Jialiang Nie +1 位作者 Denggui Fan Lixia Duan 《Chinese Physics B》 2025年第12期534-548,共15页
This study investigates the bifurcation dynamics underlying rhythmic transitions in a biophysical hippocampal–cortical neural network model.We specifically focus on the membrane potential dynamics of excitatory neuro... This study investigates the bifurcation dynamics underlying rhythmic transitions in a biophysical hippocampal–cortical neural network model.We specifically focus on the membrane potential dynamics of excitatory neurons in the hippocampal CA3 region and examine how strong coupling parameters modulate memory consolidation processes.Employing bifurcation analysis,we systematically characterize the model's complex dynamical behaviors.Subsequently,a characteristic waveform recognition algorithm enables precise feature extraction and automated detection of hippocampal sharp-wave ripples(SWRs).Our results demonstrate that neuronal rhythms exhibit a propensity for abrupt transitions near bifurcation points,facilitating the emergence of SWRs.Critically,temporal rhythmic analysis reveals that the occurrence of a bifurcation is not always sufficient for SWR formation.By integrating one-parameter bifurcation analysis with extremum analysis,we demonstrate that large-amplitude membrane potential oscillations near bifurcation points are highly conducive to SWR generation.This research elucidates the mechanistic link between changes in neuronal self-connection parameters and the evolution of rhythmic characteristics,providing deeper insights into the role of dynamical behavior in memory consolidation. 展开更多
关键词 hippocampal-cortical memory networks bifurcation analysis rhythmic transitions sharp wave ripples
原文传递
Coal burst spatio‑temporal prediction method based on bidirectional long short‑term memory network
8
作者 Xu Yang Yapeng Liu +4 位作者 Anye Cao Yaoqi Liu Changbin Wang Weiwei Zhao Qiang Niu 《International Journal of Coal Science & Technology》 2025年第1期228-245,共18页
The increasingly severe state of coal burst disaster has emerged as a critical factor constraining coal mine safety production,and it has become a challenging task to enhance the accuracy of coal burst disaster predic... The increasingly severe state of coal burst disaster has emerged as a critical factor constraining coal mine safety production,and it has become a challenging task to enhance the accuracy of coal burst disaster prediction.To address the issue of insufficient exploration of the spatio-temporal characteristic of microseismic data and the challenging selection of the optimal time window size in spatio-temporal prediction,this paper integrates deep learning methods and theory to propose a novel coal burst spatio-temporal prediction method based on Bidirectional Long Short-Term Memory(Bi-LSTM)network.The method involves three main modules,including microseismic spatio-temporal characteristic indicators construction,temporal prediction model,and spatial prediction model.To validate the effectiveness of the proposed method,engineering application tests are conducted at a high-risk working face in the Ordos mining area of Inner Mongolia,focusing on 13 high-energy microseismic events with energy levels greater than 105 J.In terms of temporal prediction,the analysis indicates that the temporal prediction results consist of 10 strong predictions and 3 medium predictions,and there is no false alarm detected throughout the entire testing period.Moreover,compared to the traditional threshold-based coal burst temporal prediction method,the accuracy of the proposed method is increased by 38.5%.In terms of spatial prediction,the distribution of spatial prediction results for high-energy events comprises 6 strong hazard predictions,3 medium hazard predictions,and 4 weak hazard predictions. 展开更多
关键词 Coal burst Spatio-temporal prediction Microseismic spatio-temporal characteristic indicators Bidirectional long short-term memory network
在线阅读 下载PDF
A leap forward in compute-in-memory system for neural network inference
9
作者 Liang Chu Wenjun Li 《Journal of Semiconductors》 2025年第4期5-7,共3页
Developing efficient neural network(NN)computing systems is crucial in the era of artificial intelligence(AI).Traditional von Neumann architectures have both the issues of"memory wall"and"power wall&quo... Developing efficient neural network(NN)computing systems is crucial in the era of artificial intelligence(AI).Traditional von Neumann architectures have both the issues of"memory wall"and"power wall",limiting the data transfer between memory and processing units[1,2].Compute-in-memory(CIM)technologies,particularly analogue CIM with memristor crossbars,are promising because of their high energy efficiency,computational parallelism,and integration density for NN computations[3].In practical applications,analogue CIM excels in tasks like speech recognition and image classification,revealing its unique advantages.For instance,it efficiently processes vast amounts of audio data in speech recognition,achieving high accuracy with minimal power consumption.In image classification,the high parallelism of analogue CIM significantly speeds up feature extraction and reduces processing time.With the boosting development of AI applications,the demands for computational accuracy and task complexity are rising continually.However,analogue CIM systems are limited in handling complex regression tasks with needs of precise floating-point(FP)calculations.They are primarily suited for the classification tasks with low data precision and a limited dynamic range[4]. 展开更多
关键词 neural network von neumann architectures compute memory INFERENCE MEMRISTOR artificial intelligence ai traditional memristor crossbarsare analogue cim
在线阅读 下载PDF
Data-Driven Method for Predicting Remaining Useful Life of Bearings Based on Multi-Layer Perception Neural Network and Bidirectional Long Short-Term Memory Network
10
作者 Yongfeng Tai Xingyu Yan +3 位作者 Xiangyi Geng Lin Mu Mingshun Jiang Faye Zhang 《Structural Durability & Health Monitoring》 2025年第2期365-383,共19页
The remaining useful life prediction of rolling bearing is vital in safety and reliability guarantee.In engineering scenarios,only a small amount of bearing performance degradation data can be obtained through acceler... The remaining useful life prediction of rolling bearing is vital in safety and reliability guarantee.In engineering scenarios,only a small amount of bearing performance degradation data can be obtained through accelerated life testing.In the absence of lifetime data,the hidden long-term correlation between performance degradation data is challenging to mine effectively,which is the main factor that restricts the prediction precision and engineering application of the residual life prediction method.To address this problem,a novel method based on the multi-layer perception neural network and bidirectional long short-term memory network is proposed.Firstly,a nonlinear health indicator(HI)calculation method based on kernel principal component analysis(KPCA)and exponential weighted moving average(EWMA)is designed.Then,using the raw vibration data and HI,a multi-layer perceptron(MLP)neural network is trained to further calculate the HI of the online bearing in real time.Furthermore,The bidirectional long short-term memory model(BiLSTM)optimized by particle swarm optimization(PSO)is used to mine the time series features of HI and predict the remaining service life.Performance verification experiments and comparative experiments are carried out on the XJTU-SY bearing open dataset.The research results indicate that this method has an excellent ability to predict future HI and remaining life. 展开更多
关键词 Remaining useful life prediction rolling bearing health indicator construction multilayer perceptron bidirectional long short-term memory network
在线阅读 下载PDF
Long short‑term memory networks in learning memory inconsistencies of stock markets
11
作者 Jaemoo Hong Yoon Min Hwang 《Financial Innovation》 2025年第1期3824-3873,共50页
Deep learning enables neural networks to improve prediction performance through data supplementation.In financial time series forecasting,however,such data-driven approaches can encounter limitations where additional ... Deep learning enables neural networks to improve prediction performance through data supplementation.In financial time series forecasting,however,such data-driven approaches can encounter limitations where additional data degrade performance,contrary to common expectations.While more data can still be beneficial,it may introduce systemic concept drift due to the complex nonstationarities of stock price index time series,thereby exacerbating overfitting.One such drift is memory inconsistency:locally measured long memories fluctuate over time,alternately approaching and deviating from the random walk condition.We address this problem by typifying memory inconsistencies into two simplified forms:long-term dependentto-independent(D2I)and long-term independent-to-dependent(I2D)inconsistencies.The first experiment,which uses U.S.stock price indices,suggests that additional training examples may lead to performance deterioration of long short-term memory(LSTM)networks,especially when memory inconsistencies are prominent.Since stock markets are influenced by numerous unknown dynamics,the second experiment,which uses simulated mean-reverting time series derived from the fractional Ornstein–Uhlenbeck(fOU)process,is conducted to focus solely on challenges arising from memory inconsistencies.The experimental results demonstrate that memory inconsistencies disrupt the performance of LSTM networks.Theoretically,additional errors from D2I and I2D inconsistencies increase as the time lag increases.Since LSTM networks are inherently recurrent,causing information from distant steps to attenuate,they fail to effectively capture memory inconsistencies in practical offline learning schemes.Nonetheless,transplanting pretrained memory-consistent gate parameters into the LSTM model partially mitigates the performance deterioration caused by memory inconsistencies,suggesting that memory augmentation strategies have the potential to overcome this problem.As such a memory augmentation method,we propose the Gate-of-Gates(GoG)model,which extends the capacity of LSTM gates and demonstrates that it can mitigate additional errors arising from memory inconsistencies. 展开更多
关键词 Long short-term memory(lstm) Fractional Ornstein-Uhlenbeck process(fOU) Limits of deep learning Stock market prediction Financial time series forecasting
在线阅读 下载PDF
Fault Detection and Fault-Tolerant Control Based on Bi-LSTM Network and SPRT for Aircraft Braking System
12
作者 Renjie Li Yaoxing Shang +4 位作者 Jinglin Cai Xiaochao Liu Lingdong Geng Pengyuan Qi Zongxia Jiao 《Chinese Journal of Mechanical Engineering》 2025年第3期12-28,共17页
The aircraft braking system is critical to ensure the safe take-off and landing of the aircraft.However,the braking system is often exposed to high temperatures and strong vibration working environments,which makes th... The aircraft braking system is critical to ensure the safe take-off and landing of the aircraft.However,the braking system is often exposed to high temperatures and strong vibration working environments,which makes the sensor prone to failure.Sensor failure has the potential to compromise aircraft safety.In order to improve the safety of the aircraft braking system,a fault detection and fault-tolerant control(FDFTC)strategy for the aircraft brake pressure sensor is designed.Firstly,a model based on a bidirectional long short-term memory(Bi-LSTM)network is constructed to estimate the brake pressure.Then,the residual sequence is obtained by comparing the measured pressure with the estimated pressure.On this basis,the improved sequential probability ratio test(SPRT)method based on mathematical statistics is applied to analyze the residual sequence to detect the fault.Finally,simulation and hardware-in-the-loop(HIL)testing results indicate that the proposed FDFTC strategy can detect sensor faults in time and efficiently complete braking when faults occur.Hence,the proposed FDFTC strategy can effectively deal with the faults of the aircraft brake pressure sensor,which is of great significance to improve the reliability and safety of the aircraft. 展开更多
关键词 Aircraft braking system Fault detection and fault-tolerant control Bidirectional long short-term memory network Sequential probability ratio test
在线阅读 下载PDF
Road pavement performance prediction using a time series long short-term memory (LSTM) model
13
作者 Chuanchuan HOU Huan WANG +1 位作者 Wei GUAN Jun CHEN 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 2025年第5期424-437,共14页
Intelligent maintenance of roads and highways requires accurate deterioration evaluation and performance prediction of asphalt pavement.To this end,we develop a time series long short-term memory(LSTM)model to predict... Intelligent maintenance of roads and highways requires accurate deterioration evaluation and performance prediction of asphalt pavement.To this end,we develop a time series long short-term memory(LSTM)model to predict key performance indicators(PIs)of pavement,namely the international roughness index(IRI)and rutting depth(RD).Subsequently,we propose a comprehensive performance indicator for the pavement quality index(PQI),which leverages the highway performance assessment standard method,entropy weight method,and fuzzy comprehensive evaluation method.This indicator can evaluate the overall performance condition of the pavement.The data used for the model development and analysis are extracted from tests on two full-scale accelerated test tracks,called MnRoad and RIOHTrack.Six variables are used as predictors,including temperature,precipitation,total traffic volume,asphalt surface layer thickness,pavement age,and maintenance condition.Furthermore,wavelet denoising is performed to analyze the impact of missing or abnormal data on the LSTM model accuracy.In comparison to a traditional autoregressive integrated moving average(ARIMAX)model,the proposed LSTM model performs better in terms of PI prediction and resiliency to noise.Finally,the overall prediction accuracy of our proposed performance indicator PQI is 93.8%. 展开更多
关键词 Asphalt pavement performance model International roughness index(IRI) Rutting depth(RD) Long short-term memory(lstm)model Pavement management system
原文传递
基于分解优化LSTM的RCS序列预测方法研究
14
作者 傅莉 张宝锟 +2 位作者 张磊 于洋 席剑辉 《电光与控制》 北大核心 2026年第1期71-77,共7页
为提高长短期记忆(LSTM)神经网络对雷达散射截面积(RCS)序列的预测精度,提出了一种改进MVMD-FTTA-LSTM的耦合预测模型。首先,对目标RCS序列进行多元变分模态分解(MVMD),将RCS序列分解成多个平稳的模态分量,从而降低RCS序列数据特征的获... 为提高长短期记忆(LSTM)神经网络对雷达散射截面积(RCS)序列的预测精度,提出了一种改进MVMD-FTTA-LSTM的耦合预测模型。首先,对目标RCS序列进行多元变分模态分解(MVMD),将RCS序列分解成多个平稳的模态分量,从而降低RCS序列数据特征的获取难度;然后,在足球队训练优化算法(FTTA)中引入佳点集、Levy飞行策略和自适应t分布变异策略,提高FTTA对最优解的寻优能力;最后,采用改进的FTTA-LSTM模型对分解后的模态分量进行预测,重构各分量的预测值,重构结果为最终预测值。仿真结果表明,改进MVMD-FTTA-LSTM模型的预测精度相对LSTM和VMD-LSTM都有大幅度提升,证明这种改进方法使得LSTM模型显著提高了对目标RCS序列的预测精度,为开展目标RCS序列预测工作提供了一条新思路。 展开更多
关键词 雷达散射截面积 多元变分模态分解 足球队训练优化算法 长短期记忆 神经网络 序列预测
在线阅读 下载PDF
基于LSTM-EM的电动汽车充电桩故障率预测
15
作者 周宇 韦宣 黄泓叶 《电力电子技术》 2026年第1期139-148,共10页
充电桩作为电动汽车(EV)的重要充电设备,其能否正常运行直接关系到用户对EV的体验和EV产业的推广。准确预测充电桩的故障率能够有效保障EV充电过程的安全。本文提出了一种长短期记忆网络(LSTM)与嵌入方法(LSTM-EM)相结合的充电桩故障率... 充电桩作为电动汽车(EV)的重要充电设备,其能否正常运行直接关系到用户对EV的体验和EV产业的推广。准确预测充电桩的故障率能够有效保障EV充电过程的安全。本文提出了一种长短期记忆网络(LSTM)与嵌入方法(LSTM-EM)相结合的充电桩故障率预测模型,以捕获充电桩故障特征的长时间序列与多维性的特点,使得模型能够更好地学习不同特征以精准预测故障率。首先基于LSTM学习故障率的时序序列来捕捉序列数据中的时间依赖关系,然后基于嵌入方法将离散的特征映射到连续的向量空间中,最后使用全连接层融合两部分的特征,经过线性激活函数返回最终的预测结果。实验结果表明,提出的方法对问题预测的效果很好,与Transformer、LSTM、循环神经网络(RNN)、卷积神经网络(CNN)-LSTM模型相比,预测结果的对称平均绝对百分比误差(SMAPE)分别降低了48.18%、43.33%、41.69%、37.46%。 展开更多
关键词 充电桩 故障率预测 长短期记忆网络 嵌入方法
在线阅读 下载PDF
基于ARIMA-LSTM的矿区地表沉降预测方法 被引量:5
16
作者 王磊 马驰骋 +1 位作者 齐俊艳 袁瑞甫 《计算机工程》 北大核心 2025年第1期98-105,共8页
煤矿开采安全问题尤其是采空区地表沉降现象会对人员安全及工程安全造成威胁,研究合适的矿区地表沉降预测方法具有很大意义。矿区地表沉降影响因素复杂,单一的深度学习模型对矿区地表沉降数据拟合效果差且现有的地表沉降预测研究多是单... 煤矿开采安全问题尤其是采空区地表沉降现象会对人员安全及工程安全造成威胁,研究合适的矿区地表沉降预测方法具有很大意义。矿区地表沉降影响因素复杂,单一的深度学习模型对矿区地表沉降数据拟合效果差且现有的地表沉降预测研究多是单独进行概率预测或考虑时序特性进行点预测,难以在考虑数据的时序特征的同时对其随机性进行定量描述。针对此问题,在对数据本身性质进行观察分析后选择差分整合移动平均自回归(ARIMA)模型进行时序特征的概率预测,结合长短时记忆(LSTM)网络模型来学习复杂的且具有长期依赖性的非线性时序特征。提出基于ARIMA-LSTM的地表沉降预测模型,利用ARIMA模型对数据的时序线性部分进行预测,并将ARIMA模型预测的残差数据辅助LSTM模型训练,在考虑时序特征的同时对数据的随机性进行描述。研究结果表明,相较于单独采用ARIMA或LSTM模型,该方法具有更高的预测精度(MSE为0.262 87,MAE为0.408 15,RMSE为0.512 71)。进一步的对比结果显示,预测结果与雷达卫星影像数据(经SBAS-INSAR处理后)趋势一致,证实了该方法的有效性。 展开更多
关键词 煤矿采空区 地表沉降预测 时序概率预测 差分整合移动平均自回归 长短时记忆网络
在线阅读 下载PDF
基于CNN-LSTM-Attention 组合模型的黄金周旅游客流预测——以大理州为例 被引量:1
17
作者 戢晓峰 郭雅诗 +2 位作者 陈方 黄志文 李武 《干旱区资源与环境》 北大核心 2025年第3期200-208,共9页
黄金周旅游客流预测一直是区域旅游管理的重大现实需求,能够为黄金周旅游组织提供更为精准的数据支持。文中基于百度迁徙数据和百度搜索指数数据,以卷积神经网络(CNN)、长短期记忆网络(LSTM)以及注意力机制(Attention)为基准,构建了CNN-... 黄金周旅游客流预测一直是区域旅游管理的重大现实需求,能够为黄金周旅游组织提供更为精准的数据支持。文中基于百度迁徙数据和百度搜索指数数据,以卷积神经网络(CNN)、长短期记忆网络(LSTM)以及注意力机制(Attention)为基准,构建了CNN-LSTM-Attention组合模型,对大理州黄金周日度旅游客流人数进行了预测,并基于SHAP算法进行了影响因素分析。结果显示:1)CNN-LSTM-Attention组合模型的预测精度优于RF模型、SVM模型、CNN模型、LSTM模型和CNN-LSTM模型。2)引入百度搜索指数特征后,模型的均方根误差(RMSE)、平均绝对百分比误差(MAPE)、决定系数(R^(2))表现最优,表明百度搜索指数的加入在一定程度上提升了模型的预测精度。文中所构模型为黄金周旅游客流预测提供了新思路。 展开更多
关键词 客流预测 黄金周 卷积神经网络(CNN) 长短期记忆网络(lstm) 注意力机制
原文传递
基于BP-DCKF-LSTM的锂离子电池SOC估计 被引量:3
18
作者 张宇 李维嘉 吴铁洲 《电源技术》 北大核心 2025年第1期155-166,共12页
电池荷电状态(SOC)的准确估计是电池管理系统(BMS)的核心功能之一。为了提高锂电池SOC估算精度,提出了一种将反向传播神经网络(BP)、双容积卡尔曼滤波(DCKF)和长短期记忆神经网络(LSTM)相结合的SOC估计方法。针对多温度条件下传统多项... 电池荷电状态(SOC)的准确估计是电池管理系统(BMS)的核心功能之一。为了提高锂电池SOC估算精度,提出了一种将反向传播神经网络(BP)、双容积卡尔曼滤波(DCKF)和长短期记忆神经网络(LSTM)相结合的SOC估计方法。针对多温度条件下传统多项式拟合法在拟合开路电压(OCV)与SOC时效果较差的问题,提出了一种基于BP神经网络的拟合方法,通过验证表明该方法能有效提高拟合精度。针对单独使用模型法或数据驱动法估计SOC各自存在的优缺点,提出了一种将DCKF与LSTM相结合的估计方法,在提高估计精度的同时,可以减少参数调节时间和训练成本。实验验证表明,BP-DCKF-LSTM算法的均方根误差(RMSE)和平均绝对误差(MAE)分别小于0.5%和0.4%,具有较高的SOC估算精度和鲁棒性。 展开更多
关键词 荷电状态 反向传播神经网络 双容积卡尔曼滤波 长短期记忆神经网络
在线阅读 下载PDF
基于IWOA-LSTM算法的预应力钢筋混凝土梁损伤识别 被引量:5
19
作者 范旭红 章立栋 +2 位作者 杨帆 李青 郁董凯 《江苏大学学报(自然科学版)》 CAS 北大核心 2025年第1期105-112,119,共9页
为准确识别桥梁结构的损伤程度,制作了桥梁的关键构件——预应力钢筋混凝土梁,进行三点弯曲加载试验.收集了损伤破坏全过程的声发射(AE)信号,通过AE信号参数分析,将梁的损伤破坏过程划分为4个典型阶段.构建了长短时记忆神经网络(LSTM)模... 为准确识别桥梁结构的损伤程度,制作了桥梁的关键构件——预应力钢筋混凝土梁,进行三点弯曲加载试验.收集了损伤破坏全过程的声发射(AE)信号,通过AE信号参数分析,将梁的损伤破坏过程划分为4个典型阶段.构建了长短时记忆神经网络(LSTM)模型,根据经验设置LSTM模型的超参数容易导致网络陷入局部最优而影响了分类结果,提出采用Sine混沌映射和自适应权重来改进鲸鱼优化算法(WOA),对LSTM进行超参数寻优.设计了IWOA-LSTM算法模型,训练识别试验梁各损伤阶段的AE信号特征参数.定型网络结构,并识别同种工况下其他梁的AE信号.结果表明:IWOA-LSTM算法模型识别准确率均超过或接近92%,相较于普通LSTM模型,IWOA-LSTM模型识别准确率提高了约7%. 展开更多
关键词 预应力钢筋混凝土梁 声发射 损伤识别 长短时记忆神经网络 改进的鲸鱼优化算法
在线阅读 下载PDF
基于时空关联规则与LSTM的机场进港延误等级预测 被引量:1
20
作者 李善梅 王端阳 +3 位作者 唐锐 李艳伟 李锦辉 纪亚宏 《中国安全科学学报》 北大核心 2025年第4期59-66,共8页
为提升空中交通运行安全,提出一种基于时空关联规则挖掘和深度学习相结合的延误等级预测方法。首先,选取平均航班延误时间和延误率作为机场进港延误度量指标,并分析其时空关联特性;其次,基于模糊C均值(FCM)聚类算法划分机场进港延误等级... 为提升空中交通运行安全,提出一种基于时空关联规则挖掘和深度学习相结合的延误等级预测方法。首先,选取平均航班延误时间和延误率作为机场进港延误度量指标,并分析其时空关联特性;其次,基于模糊C均值(FCM)聚类算法划分机场进港延误等级,并在此基础上,基于频繁模式增长(FP-Growth)算法挖掘机场进港延误的时空关联规则;然后,基于规则数据以及延误指标数据构建样本数据,作为长短时记忆(LSTM)模型的输入,输出为未来时段机场进港延误等级,同时引入注意力机制,学习不同规则对预测结果的影响程度;最后,采用美国航班数据进行算例分析。结果表明:总体预测的平均准确率达到0.91,不同时段的预测准确率均在80%以上,注意力层网络的连接权重可解释预测结果。 展开更多
关键词 时空关联规则 长短时记忆(lstm) 机场进港 延误等级 延误预测 空中交通管理
原文传递
上一页 1 2 250 下一页 到第
使用帮助 返回顶部