期刊文献+
共找到8,882篇文章
< 1 2 250 >
每页显示 20 50 100
Self-Learning and Its Application to Laminar Cooling Model of Hot Rolled Strip 被引量:16
1
作者 GONG Dian-yao XU Jian-zhong PENG Liang-gui WANG Guo-dong LIU Xiang-hua 《Journal of Iron and Steel Research International》 SCIE EI CAS CSCD 2007年第4期11-14,共4页
The mathematical model for online controlling hot rolled steel cooling on run-out table (ROT for abbreviation) was analyzed, and water cooling is found to be the main cooling mode for hot rolled steel. The calculati... The mathematical model for online controlling hot rolled steel cooling on run-out table (ROT for abbreviation) was analyzed, and water cooling is found to be the main cooling mode for hot rolled steel. The calculation of the drop in strip temperature by both water cooling and air cooling is summed up to obtain the change of heat transfer coefficient. It is found that the learning coefficient of heat transfer coefficient is the kernel coefficient of coiler temperature control (CTC) model tuning. To decrease the deviation between the calculated steel temperature and the measured one at coiler entrance, a laminar cooling control self-learning strategy is used. Using the data acquired in the field, the results of the self-learning model used in the field were analyzed. The analyzed results show that the self-learning function is effective. 展开更多
关键词 laminar cooling hot rolled strip self-learnING process control model
在线阅读 下载PDF
Long-and Short-Term Self-Learning Models of Rolling Force in Rolling Process Without Gaugemeter of Plate 被引量:3
2
作者 ZHU Fu-wen ZENG Qing-liang +2 位作者 HU Xian-lei LI Xi-an LIU Xiang-hua 《Journal of Iron and Steel Research International》 SCIE EI CAS CSCD 2009年第1期27-31,61,共6页
Owing to a lack of gaugemeter and the variety of steel grades and standards in some plate mills, the longand short-term self-learning models of rolling force based on gauge soft-measuring with high precision were brou... Owing to a lack of gaugemeter and the variety of steel grades and standards in some plate mills, the longand short-term self-learning models of rolling force based on gauge soft-measuring with high precision were brought up. The soft-measuring method and target value locked method were used in these models to confirm the actual exit gauge of passes, and thick layer division and exponential smoothing method were used to dispose the deformation resistance parameter, which could be calculated from the actual data of the rolling process. The correlative mathematical methods can also be adapted to self-learning with gaugemeter. The models were applied to the process control system of AGC (automatic gauge control) reconstruction on 2800 mm finishing mill of Anyang steel and favorable effect was obtained. 展开更多
关键词 PLATE self-learnING soft measuring rolling force
原文传递
Application of Self-Learning to Heating Process Control of Simulated Continuous Annealing 被引量:2
3
作者 WANG Wen-le LI Jian-ping HUA Fu-an LIUXiang-hua 《Journal of Iron and Steel Research International》 SCIE EI CAS CSCD 2010年第6期27-31,共5页
On the basis of a simulated bright continuous annealing experimental machine, a process control model for heating system was built. The heating model was simplified and self-learning parameters were normalized to enha... On the basis of a simulated bright continuous annealing experimental machine, a process control model for heating system was built. The heating model was simplified and self-learning parameters were normalized to enhance the precision of temperature control. By means of the division of temperature layers and the exponential smoothing disposal of the annealing experimental data, the self-learning of the heating model was carried out. Through exponentially smoothing the deviation of self-learning parameters of the heated phase in heating process, dynamic modifications of self-learning parameters and heating electric current were carried out, and the precision of temperature control was confirmed. The application indicated that the process control model for the heating system can control temperature with high precision, and the deviation can be controlled within 8 ℃. 展开更多
关键词 ANNEALING SIMULATION annealing maehine process control self-learnING
原文传递
Self-Learning of Multivariate Time Series Using Perceptually Important Points 被引量:2
4
作者 Timo Lintonen Tomi Raty 《IEEE/CAA Journal of Automatica Sinica》 SCIE EI CSCD 2019年第6期1318-1331,共14页
In machine learning,positive-unlabelled(PU)learning is a special case within semi-supervised learning.In positiveunlabelled learning,the training set contains some positive examples and a set of unlabelled examples fr... In machine learning,positive-unlabelled(PU)learning is a special case within semi-supervised learning.In positiveunlabelled learning,the training set contains some positive examples and a set of unlabelled examples from both the positive and negative classes.Positive-unlabelled learning has gained attention in many domains,especially in time-series data,in which the obtainment of labelled data is challenging.Examples which originate from the negative class are especially difficult to acquire.Self-learning is a semi-supervised method capable of PU learning in time-series data.In the self-learning approach,observations are individually added from the unlabelled data into the positive class until a stopping criterion is reached.The model is retrained after each addition with the existent labels.The main problem in self-learning is to know when to stop the learning.There are multiple,different stopping criteria in the literature,but they tend to be inaccurate or challenging to apply.This publication proposes a novel stopping criterion,which is called Peak evaluation using perceptually important points,to address this problem for time-series data.Peak evaluation using perceptually important points is exceptional,as it does not have tunable hyperparameters,which makes it easily applicable to an unsupervised setting.Simultaneously,it is flexible as it does not make any assumptions on the balance of the dataset between the positive and the negative class. 展开更多
关键词 Positive-unlabelled(PU) learning self-learnING stopping criterion time series
在线阅读 下载PDF
Sensorimotor Self-Learning Model Based on Operant Conditioning for Two-Wheeled Robot 被引量:1
5
作者 张晓平 阮晓钢 +1 位作者 肖尧 黄静 《Journal of Shanghai Jiaotong university(Science)》 EI 2017年第2期148-155,共8页
Traditional control methods of two-wheeled robot are usually model-based and require the robot’s precise mathematic model which is hard to get. A sensorimotor self-learning model named SMM TWR is presented in this pa... Traditional control methods of two-wheeled robot are usually model-based and require the robot’s precise mathematic model which is hard to get. A sensorimotor self-learning model named SMM TWR is presented in this paper to handle these problems. The model consists of seven elements: the discrete learning time set, the sensory state set, the motion set, the sensorimotor mapping, the state orientation unit, the learning mechanism and the model’s entropy. The learning mechanism for SMM TWR is designed based on the theory of operant conditioning (OC), and it adjusts the sensorimotor mapping at every learning step. This helps the robot to choose motions. The leaning direction of the mechanism is decided by the state orientation unit. Simulation results show that with the sensorimotor model designed, the robot is endowed the abilities of self-learning and self-organizing, and it can learn the skills to keep itself balance through interacting with the environment. © 2017, Shanghai Jiaotong University and Springer-Verlag Berlin Heidelberg. 展开更多
关键词 two-wheeled robot sensorimotor model self-learnING operant conditioning(OC)
原文传递
Where Have Network-based Self-learning Classes Gone?——Reflections & Expectations on the Employment of Network-based Self-learning Classes
6
作者 吴雪茵 《海外英语》 2012年第18期279-280,共2页
To respond to the further development of college English reforms,many universities employed network-based selflearning classes to aid the traditional classroom teaching,especially in teaching listening,but as time wen... To respond to the further development of college English reforms,many universities employed network-based selflearning classes to aid the traditional classroom teaching,especially in teaching listening,but as time went by,some universities gradually gave them up.The paper intends to reflect on the employment of network-based self-learning listening classes,analyz ing the learning with and without its aid,and meanwhile introduce the need to re-employ it,and discuss how we can improve the network-based self-learning classes to help with students' listening. 展开更多
关键词 NETWORK-BASED self-learnING LISTENING improvement
在线阅读 下载PDF
Mathematical model for cooling process and its self-learning applied in hot rolling mill
7
作者 刘伟嵬 李海军 +1 位作者 王昭东 王国栋 《Journal of Shanghai University(English Edition)》 CAS 2011年第6期548-552,共5页
Control precision of coiling temperature is one of the key factors affecting the profile shape and surface quality during the cooling process of hot rolled steel strip.For this reason,the core of temperature control p... Control precision of coiling temperature is one of the key factors affecting the profile shape and surface quality during the cooling process of hot rolled steel strip.For this reason,the core of temperature control precision is to establish an effective cooling mathematical model with self-learning function.Starting from this point,a cooling mathematical model with nonlinear structural characteristics is established in this paper for the cooling process of hot rolled steel strip.By the analysis of self-learning ability,key parameters of the mathematical model could be constantly corrected so as to improve temperature control precision and adaptive capability of the model.The site actual application results proved the stable performance and high control precision of the proposed mathematical model,which would lay a solid foundation to improve the steel product qualities. 展开更多
关键词 cooling process MODEL coiling temperature self-learnING hot rolled steel strip
在线阅读 下载PDF
SELF-LEARNING FUZZY CONTROL RULES USING GENETIC ALGORITHMS
8
作者 方建安 邵世煌 《Journal of China Textile University(English Edition)》 EI CAS 1995年第1期7-13,共7页
This papcr presents a new genetic algorithms(GAs)-based method for self-learniag fuzzy control rules. An improved GA is used to learn to optimally select the fuzzy membership functions of the linguistic labels in the ... This papcr presents a new genetic algorithms(GAs)-based method for self-learniag fuzzy control rules. An improved GA is used to learn to optimally select the fuzzy membership functions of the linguistic labels in the condition portion of each rule, and to automatically generate fuzzy control actions under each condition. The dynamics of the controlled system is unknown to the GA. The only information for evaluating performance is a failure signal indicating that the controlled system is out of control. We compare its performance with that of other learning methods for the same problem. We also examine the ability of the algorithm to adapt to changing conditions. Simulation results show that such an approach for self-learning fuzzy control rules is both effective and robust. 展开更多
关键词 GENETIC ALGORITHM self-learnING FUZZY control.
在线阅读 下载PDF
Self-learning Fuzzy Controllers Based On a Real-time Reinforcement Genetic Algorithm
9
作者 方建安 苗清影 +1 位作者 郭钊侠 邵世煌 《Journal of Donghua University(English Edition)》 EI CAS 2002年第2期19-22,共4页
This paper presents a novel method for constructing fuzzy controllers based on a real time reinforcement genetic algorithm. This methodology introduces the real-time learning capability of neural networks into globall... This paper presents a novel method for constructing fuzzy controllers based on a real time reinforcement genetic algorithm. This methodology introduces the real-time learning capability of neural networks into globally searching process of genetic algorithm, aiming to enhance the convergence rate and real-time learning ability of genetic algorithm, which is then used to construct fuzzy controllers for complex dynamic systems without any knowledge about system dynamics and prior control experience. The cart-pole system is employed as a test bed to demonstrate the effectiveness of the proposed control scheme, and the robustness of the acquired fuzzy controller with comparable result. 展开更多
关键词 fuzzy controller self-learning REAL time reinforcement GENETIC algorithm
在线阅读 下载PDF
Neuron self-learning PSD control for backside width of weld pool in pulsed GTAW with wire filler
10
作者 张广军 陈善本 吴林 《China Welding》 EI CAS 2003年第2期87-91,共5页
In this paper, the weld pool shape control by intelligent strategy was studied. A neuron self-learning PSD controller for backside width of weld pool in pulsed GTAW with wire filler was designed. The PSD control arith... In this paper, the weld pool shape control by intelligent strategy was studied. A neuron self-learning PSD controller for backside width of weld pool in pulsed GTAW with wire filler was designed. The PSD control arithmetic was analyzed, simulating experiment by MATLAB software was done, and the validating experiments on varied heat sink workpiece and varied gap workpiece were successfully implemented. The study results show that the neuron self-learning PSD control method can attain a perfect control effect under different set values and conditions, and is suitable for the welding process with the varied structure and coefficients of control model. 展开更多
关键词 pulsed GTAW with wire filler backside width control intelligent control neuron self-learning PSD
在线阅读 下载PDF
Study on intelligent digital welding machine with a self-learning function
11
作者 张晓莉 朱强 +2 位作者 李钰桢 龙鹏 薛家祥 《China Welding》 EI CAS 2013年第4期74-80,共7页
A design idea was proposed that it was about intelligent digital welding machine with self-learning and self- regulation functions. The overall design scheme of software and hardware was provided. It was introduced th... A design idea was proposed that it was about intelligent digital welding machine with self-learning and self- regulation functions. The overall design scheme of software and hardware was provided. It was introduced that a parameter self-learning algorithm was based on large-step calibration and partial Newton interpolation. Furthermore, experimental verification was carried out with different welding technologies. The results show that weld bead is pegrect. Therefore, good welding quality and stability are obtained, and intelligent regulation is realized by parameters self-learning. 展开更多
关键词 intelligent digital welding machine self-learnING large-step calibration
在线阅读 下载PDF
A Self-Learning Diagnosis Algorithm Based on Data Clustering
12
作者 Dmitry Tretyakov 《Intelligent Control and Automation》 2016年第3期84-92,共9页
The article describes an approach to building a self-learning diagnostic algorithm. The self-learning algorithm creates models of the object under consideration. The models are formed periodically through a certain ti... The article describes an approach to building a self-learning diagnostic algorithm. The self-learning algorithm creates models of the object under consideration. The models are formed periodically through a certain time period. The model includes a set of functions that can describe whole object, or a part of the object, or a specified functionality of the object. Thus, information about fault location can be obtained. During operation of the object the algorithm collects data received from sensors. Then the algorithm creates samples related to steady state operation. Clustering of those samples is used for the functions definition. Values of the functions in the centers of clusters are stored in the computer’s memory. To illustrate the considered approach, its application to the diagnosis of turbomachines is described. 展开更多
关键词 self-learnING Diagnostics Fault Detection CLUSTERS K-MEANS Turbomachine Gas Turbine Centrifugal Supercharger Gas Compressor Unit
在线阅读 下载PDF
The Self-Learning Gate for Quantum Computing
13
作者 Abdullah Ibrahim S. Alsalman 《Journal of Quantum Information Science》 2022年第1期21-28,共8页
Self-learning is one of the most important scientific methods that helps develop sciences, as it derives from the desire and interests of the individual. However, self-learning loses importance if it does not follow t... Self-learning is one of the most important scientific methods that helps develop sciences, as it derives from the desire and interests of the individual. However, self-learning loses importance if it does not follow the scientific methodology for building and organizing information. The case becomes harder if the science is new and few scientific sources are available. Quantum computing is one of the new sciences in computer science and needs the support of specialists to develop it. Quantum computing overlaps with many sciences such as physics, chemistry, and mathematics, so any student in one of the previous disciplines may lose the correct self-learning path to find themselves learning the details of another discipline that does not achieve their goals. This article motivates students and those interested in computer science to begin studying the science of quantum computing and choose the same specialization that suits their interests. The article also provides a roadmap for self-learning steps to protect the learner from losing the correct learning path. I have categorized the stages of learning quantum computing into four steps through which all the essential basics can be learned, provided the goals mentioned in each stage which should be achieved. The learning strategy proposed in this article corresponds with individuals’ self-learning rules. Through my personal experience, the proposed learning strategy has proven its effectiveness in building information in an enjoyable scientific way. 展开更多
关键词 Quantum Computing Computer Science self-learnING Technology Revolution
在线阅读 下载PDF
A novel self-learning approach to overcome incompatibility on TripAdvisor reviews
14
作者 Prarthana Abeysinghe Thushara Bandara 《Data Science and Management》 2022年第1期1-10,共10页
Among social media networks,TripAdvisor acts as the main role because everyone is eager to share and review their thoughts on their travel experiences in different destinations.Sentiment analysis is amethod that can b... Among social media networks,TripAdvisor acts as the main role because everyone is eager to share and review their thoughts on their travel experiences in different destinations.Sentiment analysis is amethod that can be used to analyze people's behaviors and opinions onpublic and socialmedia platforms.In this study,hotel reviews are extracted fromthe five most attractive Sri Lankan cities,and user-written reviews are compared over user bubble ratings,which define overall travelers'experiences as a numerical scale that ranks from 1 to 5.We find that the compatibility between userwritten reviews and bubble ratings has a low correlation because bubble ratings may not represent the overall idea of users'genuine opinions expressed in their reviews.To address this problem,a two-phase approach is proposed:(1)the ensemblemethod to improve the performance of lexicon-based outputs and identify the correctlymatching user review and bubble rating;(2)the self-learning approach to finding the sentiment of a review that does not properly label by the user.The performance is studied by considering reviews incompatible with the sentiment of user bubble rating and the sentiment generated by the proposedmodel.For example,regardless of bigram“not good”,the average percentages of the word“good”for each negatively identified review from the proposed model and bubble rating are 25.63%and 38.85%,respectively.Thereby,it is apparent that the negative sentiments derived by bubble rating have significantly more positive words compared to the proposed model. 展开更多
关键词 ALGORITHMS Sentiment analysis Social media TripAdvisor self-learnING
在线阅读 下载PDF
High Precision Self-learning Hashing for Image Retrieval
15
作者 Jia-run Fu Ling-yu Yan +3 位作者 Lu Yuan Yan Zhou Hong-xin Zhang Chun-zhi Wang 《国际计算机前沿大会会议论文集》 2018年第1期57-57,共1页
在线阅读 下载PDF
局部特征引导的室内自监督单目深度估计方法的改进
16
作者 艾浩军 张锋 +2 位作者 吕鹏飞 唐雪华 王中元 《计算机研究与发展》 北大核心 2026年第2期338-351,共14页
近年来,自监督单目深度估计方法取得了显著的性能提升,但在复杂的室内场景生成结构化深度图时性能明显下降,为此,提出局部特征引导知识蒸馏的自监督单目深度估计方法LoFtDepth改进训练过程。首先,使用预训练的深度估计网络预测结构化的... 近年来,自监督单目深度估计方法取得了显著的性能提升,但在复杂的室内场景生成结构化深度图时性能明显下降,为此,提出局部特征引导知识蒸馏的自监督单目深度估计方法LoFtDepth改进训练过程。首先,使用预训练的深度估计网络预测结构化的相对深度图作为深度先验,从中提取局部特征作为边界点引导局部深度估计细化,减少深度无关特征的干扰,将深度先验中的边界知识传递到自监督深度估计网络中。同时,引入逆自动掩模加权的表面法线损失,通过对齐自监督网络预测的深度图和深度先验在无纹理区域的法线方向来提升深度估计精度。最后,根据相机运动的连续性,对相机位姿残差估计施加位姿一致性约束以适应室内场景相机位姿的频繁变化来减小训练误差和提升模型性能。主要的室内公开数据集上的实验结果表明,LoFtDepth性能提升显著,将相对误差降至0.121,且生成的深度图具有更高的全局准确度和良好的结构特征。 展开更多
关键词 单目深度估计 自监督学习 局部特征 知识蒸馏 表面法线约束
在线阅读 下载PDF
基于自监督学习的玉米植株图像小样本语义分割模型
17
作者 邓寒冰 刘鑫 +1 位作者 李朝阳 苗腾 《农业机械学报》 北大核心 2026年第1期72-82,共11页
图像语义分割技术是获取玉米植株表型信息的重要手段之一,传统的全监督语义分割方法往往依赖大量像素级标签,但玉米在不同生长阶段形态多变,导致图像标注成本高昂,制约模型在实际生产中的应用。为了去掉模型训练中的人工标注过程,本研... 图像语义分割技术是获取玉米植株表型信息的重要手段之一,传统的全监督语义分割方法往往依赖大量像素级标签,但玉米在不同生长阶段形态多变,导致图像标注成本高昂,制约模型在实际生产中的应用。为了去掉模型训练中的人工标注过程,本研究提出了一种基于自监督学习的玉米植株图像小样本语义分割网络(Self-supervised few-shot semantic segmentation network for maize plant images,MSDANet),以提高不同生长时期玉米植株图像的语义分割精度和模型泛化能力。MSDANet利用基于超像素的自监督学习方法生成伪标签,无需人工标注即可为支持集图像构建初步监督信号;设计混合遮蔽机制(Mixed masking,MM),应用基于伪标签的语义遮蔽,在特征空间构建多样性遮蔽样本,促进模型学习更鲁棒性的特征表达,从而提高复杂背景下的分割精度。针对图像中玉米植株存在的弯曲、重叠、遮挡等复杂形态问题,本研究为模型设计了多尺度可变形大核卷积注意力机制(Multi-scale deformable large kernel attention,MS-DLKA),通过融合多尺度感受野和可变形卷积,能够灵活感知玉米植株在不同尺度下的重要结构信息,有效提高了语义分割精度。在小样本数据集上进行验证,在1-shot设置下,MSDANet的mIoU和FB-IoU分别达到75.63%和87.12%;在5-shot设置下,mIoU和FB-IoU分别达到76.04%和87.21%,均优于本研究给出的同类其他模型。此外,与当前主流的全监督小样本语义分割模型对比,在1-shot和5-shot设置下,mIoU分别提升2.9、2.93个百分点。结果表明,MSDANet模型能够在无人工标签和小样本的前提下,实现高精度的玉米植株图像语义分割任务,为不同生长时期的玉米图像分析与植物表型测量提供了技术支持。 展开更多
关键词 玉米图像 植物表型 图像处理 深度学习 语义分割 自监督学习
在线阅读 下载PDF
基于图注意力自编码器的自适应加权深度图聚类算法
18
作者 徐森 王作为 +4 位作者 郭乃瑄 卞学胜 徐秀芳 花小朋 周天 《控制与决策》 北大核心 2026年第1期213-220,共8页
现有深度图聚类方法因依赖静态初始图结构而存在显著局限性,此类结构通常不完整或存在偏差,且难以动态捕捉节点相似性变化.对此,提出基于图注意力自编码器的自适应加权深度图聚类算法(AWDGC).首先,通过可训练的广义马氏距离结合高斯核函... 现有深度图聚类方法因依赖静态初始图结构而存在显著局限性,此类结构通常不完整或存在偏差,且难以动态捕捉节点相似性变化.对此,提出基于图注意力自编码器的自适应加权深度图聚类算法(AWDGC).首先,通过可训练的广义马氏距离结合高斯核函数,自适应分配边权重以构建加权邻接矩阵;其次,设计图注意力自编码器,通过注意力机制融合多阶邻居信息以增强特征判别性;然后,提出基于节点相似性的动态结构优化策略,周期性更新邻接矩阵以捕捉相似性动态变化;最后,引入自监督聚类模块,通过KL散度优化聚类分布对齐,提升特征表示与聚类任务的协同性.在ACM、DBLP、CITESEER、TEXAS等6个公开数据集上的实验表明,AWDGC在聚类指标上均显著优于8个代表性基线方法. 展开更多
关键词 深度图聚类 自适应加权 图注意力网络 图自编码器 动态结构优化 自监督学习
原文传递
基于云端自进化学习的车辆轨迹预测方法
19
作者 胡钊政 王圆海 +3 位作者 黄岩军 张佳楠 冯锋 孟杰 《汽车工程》 北大核心 2026年第2期308-320,共13页
在自动驾驶技术中,轨迹预测是保障系统安全与决策效率的关键环节。然而,现有方法普遍缺乏持续学习和自我进化能力,难以实现模型性能持续提升。为此,本文提出了一种基于云端自进化学习的车辆轨迹预测优化方法,结合闭环反馈机制与自适应... 在自动驾驶技术中,轨迹预测是保障系统安全与决策效率的关键环节。然而,现有方法普遍缺乏持续学习和自我进化能力,难以实现模型性能持续提升。为此,本文提出了一种基于云端自进化学习的车辆轨迹预测优化方法,结合闭环反馈机制与自适应学习策略,提升模型的性能和泛化能力。首先,构建云支持下轨迹预测自进化学习优化框架,通过车端数据实时采集与筛选、分布式云端自动化训练与验证以及优化模型自动下发,实现模型在多轮闭环反馈中高效持续优化。其次,设计多车协同的数据增强机制,通过虚实结合实现多模式数据采集并引入师徒模式进行车端负样本数据筛选,增强训练数据的代表性。最后,提出分布式云端轨迹预测模型优化方法,搭建分布式云端平台,其中,数据云负责融合多车异构数据,训练云与校验云分别执行大规模模型训练与迭代验证,并通过车云协同机制实现模型快速迭代与自适应部署。实验结果显示,经过多轮自进化学习,模型性能持续提升,车辆轨迹预测平均位移误差和最终位移误差相对改进率最高分别达到66.1%和57.1%,该方法显著提升了轨迹预测的准确性,具备良好的自适应性和持续优化能力。 展开更多
关键词 轨迹预测 自进化学习 分布式云端 闭环反馈
在线阅读 下载PDF
上一页 1 2 250 下一页 到第
使用帮助 返回顶部