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基于Enhanced Transformer的铁路客运站节假日客流预测研究
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作者 朱友蓉 李得伟 +2 位作者 李涛 吴迪 李华 《铁道经济研究》 2026年第1期97-108,共12页
节假日作为居民集中出行的高峰期,其客流特征直接关系到铁路运营的安全、运力配置效率和服务质量。节假日期间的铁路客流呈现出与日常显著不同的特殊性,主要表现为长距离出行需求剧增、旅游流与探亲流高度叠加,以及客流分布的时空不均衡... 节假日作为居民集中出行的高峰期,其客流特征直接关系到铁路运营的安全、运力配置效率和服务质量。节假日期间的铁路客流呈现出与日常显著不同的特殊性,主要表现为长距离出行需求剧增、旅游流与探亲流高度叠加,以及客流分布的时空不均衡性,为铁路运营管理带来了挑战。一是客流需求的突增,热门线路和高峰时段的运输能力趋于饱和,传统时间序列模型难以捕捉这种剧烈的非平稳波动;二是预售数据不完整性,旅客购票行为贯穿整个预售期,不同时间点获取的预售数据反映的未来客流信息是动态变化的;三是客流受时间、节假日效应、列车运行安排等多种因素共同影响,这些特征之间存在复杂的非线性耦合关系。为解决上述问题,提出一种基于Enhanced Transformer的铁路客运站节假日客流预测模型。在特征工程方面,主要从时间特征、节假日特征和运营特征3个维度构建了多源特征体系:时间特征包括预售提前量和小时周期编码,用于捕捉旅客出行决策行为和一天内客流的规律性波动;节假日特征涵盖周末指示、节假日标记、节前高峰和节假日周末叠加效应,用于精确捕捉节假日期间客流模式的突变特征;运营特征则提取了每小时上下行列车班次数,反映车站的实时运力供给情况。通过多头自注意力机制,模型能够在不同的表示子空间中并行学习这些多源特征间的复杂交互模式,实现对客流驱动因素的深度理解。创新性地将动态变化的预售数据作为关键输入特征,结合模型的时序信息处理能力,实现对未来客流的滚动预测,突破传统方法在处理预售期动态性上的局限,通过选取苏州地区4个核心铁路客站(苏州北站、苏州站、苏州新区站、苏州园区站)在2025年春节期间的客流数据进行案例分析。实验结果表明,Enhanced Transformer模型对于苏州北站和苏州站等客流规模大的枢纽站,预测准确率可达84.06%,证明了模型在处理高流量、高波动性时间序列数据时的有效性。与Transformer,XGBoost,LSTM,Bi-LSTM的4种基准模型的对比实验显示,Enhanced Transformer在MSE,RMSE,MAE和准确率等所有评估指标上均全面优于其他模型。相较于标准Transformer模型,其预测准确率提升了约6.29%~6.89%;相较于LSTM,准确率提升约3.4%。这些性能提升归因于模型在长序列依赖捕捉、非平稳数据适应和多源特征交互方面的结构优势,为铁路管理部门提供了有力的技术支持,有助于实现节假日期间运力的精准配置、提升旅客服务质量和保障运营安全。 展开更多
关键词 铁路客流预测 节假日 enhanced transformer 动态预售数据获取时间 时间序列预测 多源特征 注意力机制 铁路运营
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Extreme Attitude Prediction of Amphibious Vehicles Based on Improved Transformer Model and Extreme Loss Function
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作者 Qinghuai Zhang Boru Jia +3 位作者 Zhengdao Zhu Jianhua Xiang Yue Liu Mengwei Li 《哈尔滨工程大学学报(英文版)》 2026年第1期228-238,共11页
Amphibious vehicles are more prone to attitude instability compared to ships,making it crucial to develop effective methods for monitoring instability risks.However,large inclination events,which can lead to instabili... Amphibious vehicles are more prone to attitude instability compared to ships,making it crucial to develop effective methods for monitoring instability risks.However,large inclination events,which can lead to instability,occur frequently in both experimental and operational data.This infrequency causes events to be overlooked by existing prediction models,which lack the precision to accurately predict inclination attitudes in amphibious vehicles.To address this gap in predicting attitudes near extreme inclination points,this study introduces a novel loss function,termed generalized extreme value loss.Subsequently,a deep learning model for improved waterborne attitude prediction,termed iInformer,was developed using a Transformer-based approach.During the embedding phase,a text prototype is created based on the vehicle’s operation log data is constructed to help the model better understand the vehicle’s operating environment.Data segmentation techniques are used to highlight local data variation features.Furthermore,to mitigate issues related to poor convergence and slow training speeds caused by the extreme value loss function,a teacher forcing mechanism is integrated into the model,enhancing its convergence capabilities.Experimental results validate the effectiveness of the proposed method,demonstrating its ability to handle data imbalance challenges.Specifically,the model achieves over a 60%improvement in root mean square error under extreme value conditions,with significant improvements observed across additional metrics. 展开更多
关键词 Amphibious vehicle Attitude prediction Extreme value loss function enhanced transformer architecture External information embedding
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Knowledge Graph Enhanced Transformers for Diagnosis Generation of Chinese Medicine 被引量:4
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作者 WANG Xin-yu YANG Tao +1 位作者 GAO Xiao-yuan HU Kong-fa 《Chinese Journal of Integrative Medicine》 SCIE CAS CSCD 2024年第3期267-276,共10页
Chinese medicine(CM)diagnosis intellectualization is one of the hotspots in the research of CM modernization.The traditional CM intelligent diagnosis models transform the CM diagnosis issues into classification issues... Chinese medicine(CM)diagnosis intellectualization is one of the hotspots in the research of CM modernization.The traditional CM intelligent diagnosis models transform the CM diagnosis issues into classification issues,however,it is difficult to solve the problems such as excessive or similar categories.With the development of natural language processing techniques,text generation technique has become increasingly mature.In this study,we aimed to establish the CM diagnosis generation model by transforming the CM diagnosis issues into text generation issues.The semantic context characteristic learning capacity was enhanced referring to Bidirectional Long Short-Term Memory(BILSTM)with Transformer as the backbone network.Meanwhile,the CM diagnosis generation model Knowledge Graph Enhanced Transformer(KGET)was established by introducing the knowledge in medical field to enhance the inferential capability.The KGET model was established based on 566 CM case texts,and was compared with the classic text generation models including Long Short-Term Memory sequence-to-sequence(LSTM-seq2seq),Bidirectional and Auto-Regression Transformer(BART),and Chinese Pre-trained Unbalanced Transformer(CPT),so as to analyze the model manifestations.Finally,the ablation experiments were performed to explore the influence of the optimized part on the KGET model.The results of Bilingual Evaluation Understudy(BLEU),Recall-Oriented Understudy for Gisting Evaluation 1(ROUGE1),ROUGE2 and Edit distance of KGET model were 45.85,73.93,54.59 and 7.12,respectively in this study.Compared with LSTM-seq2seq,BART and CPT models,the KGET model was higher in BLEU,ROUGE1 and ROUGE2 by 6.00–17.09,1.65–9.39 and 0.51–17.62,respectively,and lower in Edit distance by 0.47–3.21.The ablation experiment results revealed that introduction of BILSTM model and prior knowledge could significantly increase the model performance.Additionally,the manual assessment indicated that the CM diagnosis results of the KGET model used in this study were highly consistent with the practical diagnosis results.In conclusion,text generation technology can be effectively applied to CM diagnostic modeling.It can effectively avoid the problem of poor diagnostic performance caused by excessive and similar categories in traditional CM diagnostic classification models.CM diagnostic text generation technology has broad application prospects in the future. 展开更多
关键词 Chinese medicine diagnosis knowledge graph enhanced transformer text generation
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DEFORMATION ENHANCED FERRITE TRANSFORMATION IN PLAIN LOW CARBON STEEL 被引量:7
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作者 Z.Q. Sun, W Y. Yang, A.M. Hu and P. Yang (State Key Laboratory for Advanced Metals and Materials, University of Science and Technology Beijing, Beijing 100083, China) (School of Material Science and Engineering, University of Science and Technology Beijin 《Acta Metallurgica Sinica(English Letters)》 SCIE EI CAS CSCD 2001年第2期115-121,共7页
The microstructure evolution during deformation enhanced transformation of undercooled austenite of a plain low carbon steel has been investigated by means of hot compression simulation experiment under various condit... The microstructure evolution during deformation enhanced transformation of undercooled austenite of a plain low carbon steel has been investigated by means of hot compression simulation experiment under various conditions of strain rate, deformation temperature and strain. The effect of austenite grain size on the strain enhanced ferrite transformation has been studied. The ferrite dynamic recrystallization involved in successive hot deformation has been explored. 展开更多
关键词 deformation enhanced transformation undercooled austenite.plain low carbon steel microstructure refinement
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Solving shock wave with discontinuity by enhanced differential transform method(EDTM)
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作者 邹丽 王振 +2 位作者 宗智 邹东阳 张朔 《Applied Mathematics and Mechanics(English Edition)》 SCIE EI 2012年第12期1569-1582,共14页
An enhanced differential transform method (EDTM), which introduces the Pad@ technique into the standard differential transform method (DTM), is proposed. The enhanced method is applied to the analytic treatment of... An enhanced differential transform method (EDTM), which introduces the Pad@ technique into the standard differential transform method (DTM), is proposed. The enhanced method is applied to the analytic treatment of the shock wave. It accelerates the convergence of the series solution and provides an exact Dower series solution. 展开更多
关键词 enhanced differential transform method (EDTM) shock wave Pad@ tech-nique Burgers equation
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Precipitation and Hetero-nucleation Effect of V(C,N) in V-Microalloyed Steel 被引量:2
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作者 李新城 《Journal of Wuhan University of Technology(Materials Science)》 SCIE EI CAS 2008年第6期844-849,共6页
The precipitation behavior of V(C, N) in steels microalloyed with vanadium was researched using a thermal simulator during single-pass deformation at 800-750 ℃. The V(C, N) precipitates and its nucleation effect ... The precipitation behavior of V(C, N) in steels microalloyed with vanadium was researched using a thermal simulator during single-pass deformation at 800-750 ℃. The V(C, N) precipitates and its nucleation effect on ferrite were investigated by TEM and EDS. The experimental results show that there are two remarkable heterogeneous nucleation effects of V(C, N) particles precipitated before γ →/ α phase change: primary reason is that high coherency between V(C, N) and ferrite promotes V(C, N) to become a nucleating center of intragranular ferrite; secondary reason is that the coarsening of V(C, N) causes locally solute-poor region in austenite, thus expedites the nucleation of intragranular ferrites further. Furthermore, the relationship between the size and shape of V(C, N) was studied, and identification method was provided for distinguishing interphase precipitation and general precipitation to avoid erroneous judgment and misguide. 展开更多
关键词 V(C N) heterogeneous nucleation deformation enhanced ferrite transformation
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Localization method of subsynchronous oscillation source based on high-resolution time-frequency distribution image and CNN 被引量:2
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作者 Hui Liu Yundan Cheng +3 位作者 Yanhui Xu Guanqun Sun Rusi Chen Xiaodong Yu 《Global Energy Interconnection》 EI CSCD 2024年第1期1-13,共13页
The penetration of new energy sources such as wind power is increasing,which consequently increases the occurrence rate of subsynchronous oscillation events.However,existing subsynchronous oscillation source-identific... The penetration of new energy sources such as wind power is increasing,which consequently increases the occurrence rate of subsynchronous oscillation events.However,existing subsynchronous oscillation source-identification methods primarily analyze fixed-mode oscillations and rarely consider time-varying features,such as frequency drift,caused by the random volatility of wind farms when oscillations occur.This paper proposes a subsynchronous oscillation sourcelocalization method that involves an enhanced short-time Fourier transform and a convolutional neural network(CNN).First,an enhanced STFT is performed to secure high-resolution time-frequency distribution(TFD)images from the measured data of the generation unit ports.Next,these TFD images are amalgamated to form a subsynchronous oscillation feature map that serves as input to the CNN to train the localization model.Ultimately,the trained CNN model realizes the online localization of subsynchronous oscillation sources.The effectiveness and accuracy of the proposed method are validated via multimachine system models simulating forced and natural oscillation events using the Power Systems Computer Aided Design platform.Test results show that the proposed method can localize subsynchronous oscillation sources online while considering unpredictable fluctuations in wind farms,thus providing a foundation for oscillation suppression in practical engineering scenarios. 展开更多
关键词 Subsynchronous oscillation source localization Synchronous squeezing transform enhanced short-time Fourier transform Convolutional neural networks
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Comparative analysis of different methods for image enhancement 被引量:4
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作者 吴笑峰 胡仕刚 +4 位作者 赵瑾 李志明 李劲 唐志军 席在芳 《Journal of Central South University》 SCIE EI CAS 2014年第12期4563-4570,共8页
Image enhancement technology plays a very important role to improve image quality in image processing. By enhancing some information and restraining other information selectively, it can improve image visual effect. T... Image enhancement technology plays a very important role to improve image quality in image processing. By enhancing some information and restraining other information selectively, it can improve image visual effect. The objective of this work is to implement the image enhancement to gray scale images using different techniques. After the fundamental methods of image enhancement processing are demonstrated, image enhancement algorithms based on space and frequency domains are systematically investigated and compared. The advantage and defect of the above-mentioned algorithms are analyzed. The algorithms of wavelet based image enhancement are also deduced and generalized. Wavelet transform modulus maxima(WTMM) is a method for detecting the fractal dimension of a signal, it is well used for image enhancement. The image techniques are compared by using the mean(μ),standard deviation(?), mean square error(MSE) and PSNR(peak signal to noise ratio). A group of experimental results demonstrate that the image enhancement algorithm based on wavelet transform is effective for image de-noising and enhancement. Wavelet transform modulus maxima method is one of the best methods for image enhancement. 展开更多
关键词 image enhancement wavelet transform histogram equalization unsharp masking(UM) modulus maxl mum threshold
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Influence of prior austenite grain size on the critical strain for completion of DEFT through hot compression test 被引量:1
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作者 Jing Tian Wangyue Yang +1 位作者 Zuqing Sun Jianping He 《Journal of University of Science and Technology Beijing》 CSCD 2006年第2期135-138,共4页
A low carbon steel was used to determine the critical strain εc for completion of deformation enhanced ferrite transformation (DEFT) through a series of hot compression tests. In addition, the influence of prior au... A low carbon steel was used to determine the critical strain εc for completion of deformation enhanced ferrite transformation (DEFT) through a series of hot compression tests. In addition, the influence of prior austenite grain size (PAGS) on the critical strain was systematically investigated. Experimental results showed that the critical strain is affected by PAGS. When γ→α transformation completes, the smaller the PAGS is, the smaller the critical strain is. The ferrite grains obtained through DEFT can be refined to about 3 μm when the DEFT is completed. 展开更多
关键词 low carbon steel hot compression deformation enhanced ferrite transformation critical strain prior austenite grain size
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Multi-level denoising and enhancement method based on wavelet transform for mine monitoring 被引量:9
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作者 Yanqin Zhao 《International Journal of Mining Science and Technology》 SCIE EI 2013年第1期163-166,共4页
Based on low illumination and a large number of mixed noises contained in coal mine, denoising with one method usually cannot achieve good results, so a multi-level image denoising method based on wavelet correlation ... Based on low illumination and a large number of mixed noises contained in coal mine, denoising with one method usually cannot achieve good results, so a multi-level image denoising method based on wavelet correlation relevant inter-scale is presented. Firstly, we used directional median filter to effectively reduce impulse noise in the spatial domain, which is the main cause of noise in mine. Secondly, we used a Wiener filtration method to mainly reduce the Gaussian noise, and then finally used a multi-wavelet transform to minimize the remaining noise of low-light images in the transform domain. This multi-level image noise reduction method combines spatial and transform domain denoising to enhance benefits, and effectively reduce impulse noise and Gaussian noise in a coal mine, while retaining good detailed image characteristics of the underground for improving quality of images with mixing noise and effective low-light environment. 展开更多
关键词 Median filter Wiener filter Wavelet transform Image denoising Image enhancement
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Phase Transformation and Enhancing Electron Field Emission Properties in Microcrystalline Diamond Films Induced by Cu Ion Implantation and Rapid Annealing 被引量:1
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作者 申艳艳 张一新 +5 位作者 祁婷 乔瑜 贾钰欣 黑鸿君 贺志勇 于盛旺 《Chinese Physics Letters》 SCIE CAS CSCD 2016年第8期123-126,共4页
Cu ion implantation and subsequent rapid annealing at 500℃ in N2 result in low surface resistivity of 1.611 ohm/sq with high mobility of 290 cm2 V-1S-1 for microcrystalline diamond (MCD) films. Its electrical field... Cu ion implantation and subsequent rapid annealing at 500℃ in N2 result in low surface resistivity of 1.611 ohm/sq with high mobility of 290 cm2 V-1S-1 for microcrystalline diamond (MCD) films. Its electrical field emission behavior can be turned on at Eo = 2.6 V/μm, attaining a current density of 19.5μA/cm2 at an applied field of 3.5 V/#m. Field emission scanning electron microscopy combined with Raman and x-ray photoelectron mi- croscopy reveal that the formation of Cu nanoparticles in MCD films can catalytically convert the less conducting disorder/a-C phases into graphitic phases and can provoke the formation of nanographite in the films, forming conduction channels for electron transportation. 展开更多
关键词 CU of MCD Phase Transformation and Enhancing Electron Field Emission Properties in Microcrystalline Diamond Films Induced by Cu Ion Implantation and Rapid Annealing in by
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Distance Transform Based Enhancement for Linear Interpolated Images
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作者 唐莉萍 曾培峰 《Journal of Donghua University(English Edition)》 EI CAS 2003年第1期43-48,共6页
An approach of distane map based imageenhancement (DMIE) is proposed. It is applied toconventional interpolations to get sharp images. Edgedetection is performed after images are interpolatedby linear interpolations. ... An approach of distane map based imageenhancement (DMIE) is proposed. It is applied toconventional interpolations to get sharp images. Edgedetection is performed after images are interpolatedby linear interpolations. To meet the two conditionsset for DMIE, i. e., no abrupt changes and no over-boosting, different boosting rate should be used inadjusting pixel intensities. When the boosting rate isdetermined by using the distance from enhancedpixels to nearest edges, edge-oriented imageenhancement is obtained. By using Erosion technique,the range for pixel intensity adiustment is set.Over-enhancement is avoided by limiting the pixel iutensities in enhancement within the range. A unifled linear-time algoritiml for disance transform is adopted to deal with the calculation of Euelidean distance of the images.Its computation complexity is 0(N).After the preparation,i.e.,distance transforming and erosion,the images get more and more sharpened while no over.boosting.Occurs by repeating the enhancement procedure ,The simplicity of the enhancement operation makes DMIE suitable for enhancement rate adjusting 展开更多
关键词 INTERPOLATION edge detection Euclidean distance transform B-spline。image enhancement
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Improved single image dehazing using dark channel prior
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作者 Zhizhong Fu Yanjing Yang +3 位作者 Chang Shu Yuan Li Honggang Wu Jin Xu 《Journal of Systems Science & Complexity》 SCIE EI CSCD 2015年第5期1070-1079,共10页
An improved single image dehazing method based on dark channel prior and wavelet transform is proposed. This proposed method employs wavelet transform and guided filter instead of the soft matting procedure to estimat... An improved single image dehazing method based on dark channel prior and wavelet transform is proposed. This proposed method employs wavelet transform and guided filter instead of the soft matting procedure to estimate and refine the depth map of haze images. Moreover, a contrast enhancement method based on just noticeable difference(JND) and quadratic function is adopted to enhance the contrast for the dehazed image, since the scene radiance is usually not as bright as the atmospheric light,and the dehazed image looks dim. The experimental results show that the proposed approach can effectively enhance the haze image and is well suitable for implementing on the surveillance and obstacle detection systems. 展开更多
关键词 single image haze removal dark channel prior guided filter wavelet transform contrast enhancement quadratic function
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