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RefluxClassifier分离细颗粒的技术发展与应用前景
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作者 马梦绮 张志远 +2 位作者 荆隆隆 方佳豪 李延锋 《有色金属(选矿部分)》 CAS 2024年第1期106-115,共10页
矿石综采技术带来诸多便利的同时,也导致了矿石中细颗粒比例增多。细颗粒分离成为了国内外矿物加工领域面临的难题。由于细颗粒质量小、比表面积大、表面能高、容易团聚,进而难以有效分离。本世纪初,由澳大利亚学者Galvin所研制的Reflux... 矿石综采技术带来诸多便利的同时,也导致了矿石中细颗粒比例增多。细颗粒分离成为了国内外矿物加工领域面临的难题。由于细颗粒质量小、比表面积大、表面能高、容易团聚,进而难以有效分离。本世纪初,由澳大利亚学者Galvin所研制的RefluxClassifier(回流分级机,简称RC)作为一种新型重力分选设备进入到矿物加工设备行列。该设备由液固流化床与倾斜通道组成,分为垂直段与倾斜段,具有操作简单、成本低廉和高效节能等优点。据研究,RC因其特殊的结构与工作机理可以有效解决细颗粒分离问题。本文首先归纳了国内外有关RC的理论研究,详细描述了RC倾斜段中颗粒在流体中的运动状态,阐明了倾斜通道内颗粒运动与流体流动特性之间的关系,简要分析了颗粒性质与流体之间的力与速度关系。此外,本文对目前现有RC的水速预测模型(经典动力学模型、经验模型、弱化粒度模型、平衡模型)进行了总结,并综合分析了各模型的适用范围。结合试验案例,介绍了RC在煤炭、黑金属、砂石骨料等领域的应用现状,举例分析不同试验条件下RC对细颗粒回收的分离情况。最后结合我国资源现状与现代设备发展趋势,提出如何深入优化RC分选理论模型、拓展更广阔的应用领域是国内外学者的长期研究目标,并展望RC在工业范围内的全面推广。 展开更多
关键词 Refluxclassifier 细粒回收 重力分选 颗粒运动
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Decision Bayes Criteria for Optimal Classifier Based on Probabilistic Measures 被引量:1
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作者 Wissal Drira Faouzi Ghorbel 《Journal of Electronic Science and Technology》 CAS 2014年第2期216-219,共4页
This paper addresses the high dimension sample problem in discriminate analysis under nonparametric and supervised assumptions. Since there is a kind of equivalence between the probabilistic dependence measure and the... This paper addresses the high dimension sample problem in discriminate analysis under nonparametric and supervised assumptions. Since there is a kind of equivalence between the probabilistic dependence measure and the Bayes classification error probability, we propose to use an iterative algorithm to optimize the dimension reduction for classification with a probabilistic approach to achieve the Bayes classifier. The estimated probabilities of different errors encountered along the different phases of the system are realized by the Kernel estimate which is adjusted in a means of the smoothing parameter. Experiment results suggest that the proposed approach performs well. 展开更多
关键词 Bayesian classifier dimension reduction kernel method optimization probabilistic dependence measure smoothing parameter
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Adaptive target and jamming recognition for the pulse doppler radar fuze based on a time-frequency joint feature and an online-updated naive bayesian classifier with minimal risk 被引量:7
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作者 Jian Dai Xin-hong Hao +2 位作者 Ze Li Ping Li Xiao-peng Yan 《Defence Technology(防务技术)》 SCIE EI CAS CSCD 2022年第3期457-466,共10页
This paper considers the problem of target and jamming recognition for the pulse Doppler radar fuze(PDRF).To solve the problem,the matched filter outputs of the PDRF under the action of target and jamming are analyzed... This paper considers the problem of target and jamming recognition for the pulse Doppler radar fuze(PDRF).To solve the problem,the matched filter outputs of the PDRF under the action of target and jamming are analyzed.Then,the frequency entropy and peak-to-peak ratio are extracted from the matched filter output of the PDRF,and the time-frequency joint feature is constructed.Based on the time-frequency joint feature,the naive Bayesian classifier(NBC)with minimal risk is established for target and jamming recognition.To improve the adaptability of the proposed method in complex environments,an online update process that adaptively modifies the classifier in the duration of the work of the PDRF is proposed.The experiments show that the PDRF can maintain high recognition accuracy when the signal-to-noise ratio(SNR)decreases and the jamming-to-signal ratio(JSR)increases.Moreover,the applicable analysis shows that he ONBCMR method has low computational complexity and can fully meet the real-time requirements of PDRF. 展开更多
关键词 Pulse Doppler radar fuze(PDRF) Target and jamming recognition Time-frequency joint feature Online-update naive Bayesian classifier minimal risk(ONBCMR)
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Video Concept Detection Based on Multiple Features and Classifiers Fusion 被引量:1
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作者 Dong Yuan Zhang Jiwei +2 位作者 Zhao Nan Chang Xiaofu Liu Wei 《China Communications》 SCIE CSCD 2012年第8期105-121,共17页
The rapid growth of multimedia content necessitates powerful technologies to filter, classify, index and retrieve video documents more efficiently. However, the essential bottleneck of image and video analysis is the ... The rapid growth of multimedia content necessitates powerful technologies to filter, classify, index and retrieve video documents more efficiently. However, the essential bottleneck of image and video analysis is the problem of semantic gap that low level features extracted by computers always fail to coincide with high-level concepts interpreted by humans. In this paper, we present a generic scheme for the detection video semantic concepts based on multiple visual features machine learning. Various global and local low-level visual features are systelrtically investigated, and kernelbased learning method equips the concept detection system to explore the potential of these features. Then we combine the different features and sub-systen on both classifier-level and kernel-level fusion that contribute to a more robust system Our proposed system is tested on the TRECVID dataset. The resulted Mean Average Precision (MAP) score is rmch better than the benchmark perforrmnce, which proves that our concepts detection engine develops a generic model and perforrrs well on both object and scene type concepts. 展开更多
关键词 concept detection visual feature extraction kemel-based learning classifier fusion
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Modeling the effects of mechanical parameters on the hydrodynamic behavior of vertical current classifiers 被引量:3
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作者 Arabzadeh Jarkani Soroush Khoshdast Hamid +1 位作者 Shariat Elaheh Sam Abbas 《International Journal of Mining Science and Technology》 SCIE EI 2014年第1期123-127,共5页
This study modeled the effects of structural and dimensional manipulations on hydrodynamic behavior of a bench vertical current classifier. Computational fluid dynamics (CFD) approach was used as modeling method, an... This study modeled the effects of structural and dimensional manipulations on hydrodynamic behavior of a bench vertical current classifier. Computational fluid dynamics (CFD) approach was used as modeling method, and turbulent intensity and fluid velocity were applied as system responses to predict the over- flow cut size variations. These investigations showed that cut size would decrease by increasing diameter and height of the separation column and cone section depth, due to the decrease of turbulent intensity and fluid velocity. As the size of discharge gate increases, the overflow cut-size would decrease due to freely fluid stream out of the column. The overflow cut-size was significantly increased in downward fed classifier compared to that fed by upward fluid stream. In addition, reforming the shape of angular overflow outlet's weir into the curved form prevented stream inside returning and consequently unselec- tire cut-size decreasing. 展开更多
关键词 Hydraulic classifier Modeling Computational fluid dynamic Cut size
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Common Spatial Pattern Ensemble Classifier and Its Application in Brain-Computer Interface 被引量:5
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作者 Xu Lei Ping Yang Peng Xu Tie-Jun Liu De-Zhong Yao 《Journal of Electronic Science and Technology of China》 2009年第1期17-21,共5页
Abstract-Common spatial pattern (CSP) algorithm is a successful tool in feature estimate of brain-computer interface (BCI). However, CSP is sensitive to outlier and may result in poor outcomes since it is based on... Abstract-Common spatial pattern (CSP) algorithm is a successful tool in feature estimate of brain-computer interface (BCI). However, CSP is sensitive to outlier and may result in poor outcomes since it is based on pooling the covariance matrices of trials. In this paper, we propose a simple yet effective approach, named common spatial pattern ensemble (CSPE) classifier, to improve CSP performance. Through division of recording channels, multiple CSP filters are constructed. By projection, log-operation, and subtraction on the original signal, an ensemble classifier, majority voting, is achieved and outlier contaminations are alleviated. Experiment results demonstrate that the proposed CSPE classifier is robust to various artifacts and can achieve an average accuracy of 83.02%. 展开更多
关键词 Brain-computer interface channel selection classifier ensemble common spatial pattern.
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An Algorithm for Idle-State Detection and Continuous Classifier Design in Motor-Imagery-Based BCI 被引量:3
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作者 Yu Huang Qiang Wu Xu Lei Ping Yang Peng Xu De-Zhong Yao 《Journal of Electronic Science and Technology of China》 2009年第1期27-33,共7页
Abstract-The development of asynchronous brain-computer interface (BCI) based on motor imagery (M1) poses the research in algorithms for detecting the nontask states (i.e., idle state) and the design of continuo... Abstract-The development of asynchronous brain-computer interface (BCI) based on motor imagery (M1) poses the research in algorithms for detecting the nontask states (i.e., idle state) and the design of continuous classifiers that classify continuously incoming electroencephalogram (EEG) samples. An algorithm is proposed in this paper which integrates two two-class classifiers to detect idle state and utilizes a sliding window to achieve continuous outputs. The common spatial pattern (CSP) algorithm is used to extract features of EEG signals and the linear support vector machine (SVM) is utilized to serve as classifier. The algorithm is applied on dataset IVb of BCI competition Ⅲ, with a resulting mean square error of 0.66. The result indicates that the proposed algorithm is feasible in the first step of the development of asynchronous systems. 展开更多
关键词 Brain-computer interface competition common spatial pattern continuous classifier idle state motor imagery support vector machine.
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Face Recognition Combining Eigen Features with a Parzen Classifier 被引量:1
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作者 孙鑫 刘兵 刘本永 《Journal of Electronic Science and Technology of China》 2005年第1期18-21,共4页
A face recognition scheme is proposed, wherein a face image is preprocessed by pixel averaging and energy normalizing to reduce data dimension and brightness variation effect, followed by the Fourier transform to esti... A face recognition scheme is proposed, wherein a face image is preprocessed by pixel averaging and energy normalizing to reduce data dimension and brightness variation effect, followed by the Fourier transform to estimate the spectrum of the preprocessed image. The principal component analysis is conducted on the spectra of a face image to obtain eigen features. Combining eigen features with a Parzen classifier, experiments are taken on the ORL face database. 展开更多
关键词 face recognition Fourier transform principal component analysis Parzen classifier pixel averaging energy normalizing
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Key-Attributes-Based Ensemble Classifier for Customer Churn Prediction
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作者 Yu Qian Liang-Qiang Li +1 位作者 Jian-Rong Ran Pei-Ji Shao 《Journal of Electronic Science and Technology》 CAS CSCD 2018年第1期37-44,共8页
Recently, it has been seen that the ensemble classifier is an effective way to enhance the prediction performance. However, it usually suffers from the problem of how to construct an appropriate classifier based on a ... Recently, it has been seen that the ensemble classifier is an effective way to enhance the prediction performance. However, it usually suffers from the problem of how to construct an appropriate classifier based on a set of complex data, for example,the data with many dimensions or hierarchical attributes. This study proposes a method to constructe an ensemble classifier based on the key attributes. In addition to its high-performance on precision shared by common ensemble classifiers, the calculation results are highly intelligible and thus easy for understanding.Furthermore, the experimental results based on the real data collected from China Mobile show that the keyattributes-based ensemble classifier has the good performance on both of the classifier construction and the customer churn prediction. 展开更多
关键词 Customer churn data mining ensemble classifier key attribute
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Operating Rule Classification System of Water Supply Reservoir Based on Learning Classifier System
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作者 张先锋 王小林 +1 位作者 尹正杰 李惠强 《Journal of Southwest Jiaotong University(English Edition)》 2008年第3期275-284,共10页
An operating rule classification system based on learning classifier system (LCS), which learns through credit assignment (bucket brigade algorithm, BBA) and rule discovery (genetic algorithm, GA), is establishe... An operating rule classification system based on learning classifier system (LCS), which learns through credit assignment (bucket brigade algorithm, BBA) and rule discovery (genetic algorithm, GA), is established to extract water-supply reservoir operating rules. The proposed system acquires an online identification rate of 95% for training samples and an offline rate of 85% for testing samples in a case study. The performances of the rule classification system are discussed from the rationality of the obtained rules, the impact of training samples on rule extraction, and a comparison between the rule classification system and the artificial neural network (ANN). The results indicate that the LCS is feasible and effective for the system to obtain the reservoir supply operating rules. 展开更多
关键词 Operating rules Water supply Learning classifier system Genetic algorithm
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Intrusion Detection System Using Classification Algorithms with Feature Selection Mechanism over Real-Time Data Traffic 被引量:1
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作者 Gulab Sah Sweety Singh Subhasish Banerjee 《China Communications》 SCIE CSCD 2024年第9期292-320,共29页
The key objective of intrusion detection systems(IDS)is to protect the particular host or network by investigating and predicting the network traffic as an attack or normal.These IDS uses many methods of machine learn... The key objective of intrusion detection systems(IDS)is to protect the particular host or network by investigating and predicting the network traffic as an attack or normal.These IDS uses many methods of machine learning(ML)to learn from pastexperience attack i.e.signatures based and identify the new ones.Even though these methods are effective,but they have to suffer from large computational costs due to considering all the traffic features,together.Moreover,emerging technologies like the Internet of Things(Io T),big data,etc.are getting advanced day by day;as a result,network traffics are also increasing rapidly.Therefore,the issue of computational cost needs to be addressed properly.Thus,in this research,firstly,the ML methods have been used with the feature selection technique(FST)to reduce the number of features by picking out only the important ones from NSL-KDD,CICIDS2017,and CIC-DDo S2019datasets later that helped to build IDSs with lower cost but with the higher performance which would be appropriate for vast scale network.The experimental result demonstrated that the proposed model i.e.Decision tree(DT)with Recursive feature elimination(RFE)performs better than other classifiers with RFE in terms of accuracy,specificity,precision,sensitivity,F1-score,and G-means on the investigated datasets. 展开更多
关键词 CICIDS2017 dataset classifierS IDS ML NSL KDD dataset RFE
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Single-qubit quantum classifier based on gradient-free optimization algorithm
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作者 张安琪 王可伦 +1 位作者 吴逸华 赵生妹 《Chinese Physics B》 SCIE EI CAS CSCD 2023年第10期241-247,共7页
A single-qubit quantum classifier(SQC)based on a gradient-free optimization(GFO)algorithm,named the GFO-based SQC,is proposed to overcome the effects of barren plateaus caused by quantum devices.Here,a rotation gate R... A single-qubit quantum classifier(SQC)based on a gradient-free optimization(GFO)algorithm,named the GFO-based SQC,is proposed to overcome the effects of barren plateaus caused by quantum devices.Here,a rotation gate R_(X)(φ)is applied on the single-qubit binary quantum classifier,and the training data and parameters are loaded intoφin the form of vector multiplication.The cost function is decreased by finding the value of each parameter that yields the minimum expectation value of measuring the quantum circuit.The algorithm is performed iteratively for all parameters one by one until the cost function satisfies the stop condition.The proposed GFO-based SQC is demonstrated for classification tasks in Iris and MNIST datasets and compared with the Adam-based SQC and the quantum support vector machine(QSVM).Furthermore,the performance of the GFO-based SQC is discussed when the rotation gate in the quantum device is under different types of noise.The simulation results show that the GFO-based SQC can reach a high accuracy in reduced time.Additionally,the proposed GFO algorithm can quickly complete the training process of the SQC.Importantly,the GFO-based SQC has a good performance in noisy environments. 展开更多
关键词 single-qubit quantum classifier gradient-free parameters optimizing barren plateau quantum noise
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Evolutionary Algorithm with Ensemble Classifier Surrogate Model for Expensive Multiobjective Optimization
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作者 LAN Tian 《Transactions of Nanjing University of Aeronautics and Astronautics》 EI CSCD 2020年第S01期76-87,共12页
For many real-world multiobjective optimization problems,the evaluations of the objective functions are computationally expensive.Such problems are usually called expensive multiobjective optimization problems(EMOPs).... For many real-world multiobjective optimization problems,the evaluations of the objective functions are computationally expensive.Such problems are usually called expensive multiobjective optimization problems(EMOPs).One type of feasible approaches for EMOPs is to introduce the computationally efficient surrogates for reducing the number of function evaluations.Inspired from ensemble learning,this paper proposes a multiobjective evolutionary algorithm with an ensemble classifier(MOEA-EC)for EMOPs.More specifically,multiple decision tree models are used as an ensemble classifier for the pre-selection,which is be more helpful for further reducing the function evaluations of the solutions than using single inaccurate model.The extensive experimental studies have been conducted to verify the efficiency of MOEA-EC by comparing it with several advanced multiobjective expensive optimization algorithms.The experimental results show that MOEA-EC outperforms the compared algorithms. 展开更多
关键词 multiobjective evolutionary algorithm expensive multiobjective optimization ensemble classifier surrogate model
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Numeral Classifiers in Chinese:The Syntax-Semantics Interface评介
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作者 苑晓鹤 《北京第二外国语学院学报》 2018年第6期110-122,共13页
关于汉语数量结构的研究成果颇丰,主要有两种观点,第一种观点以Cheng&Sybesma(1998/2005)的count classifiers和mass classifiers的区分为代表,第二种观点以Rothstein(2009/2010)、李旭平(2013)的classifiers of counting和classifi... 关于汉语数量结构的研究成果颇丰,主要有两种观点,第一种观点以Cheng&Sybesma(1998/2005)的count classifiers和mass classifiers的区分为代表,第二种观点以Rothstein(2009/2010)、李旭平(2013)的classifiers of counting和classifiers of measure的区分为代表。本文介绍李旭平2013年出版的Numeral Classifiers in Chinese:The Syntax-Semantics Interface一书,介绍其汉语计数量词与计量量词的理论,并作简要评价。 展开更多
关键词 数量结构 个体量词 非个体量词 计数 计量
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Recognition of Characters by Adaptive Combination of Classifiers
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作者 王飞 李在铭 《Journal of Electronic Science and Technology of China》 2004年第2期7-9,共3页
In this paper, the visual feature space based on the long Horizontals, the long Verticals, and the radicals are given. An adaptive combination of classifiers, whose coefficients vary with the input pattern, is also pr... In this paper, the visual feature space based on the long Horizontals, the long Verticals, and the radicals are given. An adaptive combination of classifiers, whose coefficients vary with the input pattern, is also proposed. Experiments show that the approach is promising for character recognition in video sequences. 展开更多
关键词 character recognition adaptive combination multiple classifiers
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基于卷积神经网络组合算法的卷烟牌号在线分类识别研究
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作者 李石头 廖付 +8 位作者 吴继忠 张军 徐梦瑶 丁伟 李永生 李淑彪 何文苗 王辉 毕一鸣 《分析测试学报》 北大核心 2025年第3期514-520,共7页
为探究烟丝在线近红外光谱与卷烟牌号间的关系,提出了一种基于ResNeXt18-CNN-LightGBM混合模型的卷烟牌号分类识别方法。首先对采集的烟丝样本在线光谱数据进行预处理,并利用ResNeXt18网络模型对预处理后的光谱进行初次特征提取。然后... 为探究烟丝在线近红外光谱与卷烟牌号间的关系,提出了一种基于ResNeXt18-CNN-LightGBM混合模型的卷烟牌号分类识别方法。首先对采集的烟丝样本在线光谱数据进行预处理,并利用ResNeXt18网络模型对预处理后的光谱进行初次特征提取。然后将提取后的特征输入自定义的3层卷积神经(CNN)网络模型中,进行二次特征提取。最后将CNN提取的特征代入LightGBM分类器进行牌号分类训练。结果表明,ResNeXt18-CNN-LightGBM模型中烟丝牌号分类的准确率达97%。相较于传统的单个化学计量学算法,该文提出的基于卷积神经网络组合算法的卷烟牌号分类识别方法简单易行、准确性高、稳定性好,可应用于卷烟工业生产中卷烟牌号的在线识别,对卷烟品牌管理、生产质量评价及卷烟质量管控具有重要意义。 展开更多
关键词 在线近红外光谱 卷烟牌号 ResNeXt18 LightGBM 分类效果
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基于决策融合的南方复杂地区覆膜农田信息快速提取研究
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作者 林娜 陈宏 +1 位作者 谢骞 赵健 《安徽农业科学》 2025年第3期229-235,242,共8页
为实现快速且准确地获取南方复杂地区覆膜农田信息,探索一种基于决策融合规则的单时相遥感提取方法。首先基于Sentinel-2影像数据,在南方丘陵山区这一典型地表混杂区域,应用特征提取算法与最小距离、最大似然、支持向量机、BP神经网络... 为实现快速且准确地获取南方复杂地区覆膜农田信息,探索一种基于决策融合规则的单时相遥感提取方法。首先基于Sentinel-2影像数据,在南方丘陵山区这一典型地表混杂区域,应用特征提取算法与最小距离、最大似然、支持向量机、BP神经网络、随机森林5种单分类器进行遥感影像分类,在此基础上依据各分类器分类结果与分类性能,构建一种结合层次分析与投票机制的自适应决策融合规则,进行了覆膜农田信息的提取,并评估其精度。对比5种单分类器与决策融合模型的分类性能,结果表明决策融合模型在精度评价指标上均显著优于单一分类器,总体精度达到91.82%,Kappa系数达到0.89,对覆膜农田的提取识别能力也表现优异,其生产者精度、用户精度和F_(1)Score分别达到92.68%、81.74%和0.87。提出的方法有效提高了覆膜农田的提取准确率、复杂度和计算成本较低,具有较强的泛化性与可操作性,适用于南方复杂农业环境,为实际生产应用提供了可靠的解决方案。 展开更多
关键词 决策融合 多分类器 覆膜农田 Sentinel-2 复杂地区
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地铁站火灾全过程动态分级应急响应评价方法
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作者 杨礼桢 《消防科学与技术》 北大核心 2025年第1期74-81,共8页
实现对地铁站火灾初期-灾中演化全过程的动态分级应急响应,是科学精准开展火灾应急救援处置的重要基础。本研究基于地铁站固有火灾危险性及火灾动态演化特性,从静态、半动态、动态三个角度构建地铁站火灾全过程分级应急响应指标体系,分... 实现对地铁站火灾初期-灾中演化全过程的动态分级应急响应,是科学精准开展火灾应急救援处置的重要基础。本研究基于地铁站固有火灾危险性及火灾动态演化特性,从静态、半动态、动态三个角度构建地铁站火灾全过程分级应急响应指标体系,分别提出不同类别应急响应指标数据的分级量化表征方法;采用层次分析法与复杂网络相结合的方法确定指标综合权重;采用逼近理想解排序法提出地铁站火灾应急响应等级判别方法,构建地铁站火灾分级应急响应评价模型,在此基础上提出地铁站火灾机电设备系统运行及应急组织分级响应策略。研究结果能够为地铁站火灾应急响应处置全过程提供决策支持。 展开更多
关键词 地铁站火灾 动态分级 应急响应 组合赋权 逼近理想解排序法
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省域高等教育分类发展的竞合逻辑与实践路径
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作者 王丹 吴立保 《高校教育管理》 北大核心 2025年第1期74-83,共10页
实现高等教育分类发展是建设教育强国的先决条件,省域高等教育分类发展对教育强国建设负有主体责任。本研究依托竞合理论,针对省域高等教育分类标准固化、合作联动不足和分类目标建设失衡、合作理念和行动不足等问题,提出竞合视角下省... 实现高等教育分类发展是建设教育强国的先决条件,省域高等教育分类发展对教育强国建设负有主体责任。本研究依托竞合理论,针对省域高等教育分类标准固化、合作联动不足和分类目标建设失衡、合作理念和行动不足等问题,提出竞合视角下省域高等教育分类发展的实践路径,通过构建省域高等教育分类多主体竞合生态关系,建立互涉共生的省域高校分类发展主体,形成互补嵌入的结构化竞合和评价机制,分类引领确立互为目标的价值旨归以突破传统分类发展中的路径依赖和组织惯习影响,为建设中国特色、世界一流的高等教育贡献力量。 展开更多
关键词 省域高等教育 分类发展 竞合理论 生态关系 实践路径
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Application of Artificial Neural Network to Battlefield Target Classification
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作者 李芳 张中民 李科杰 《Journal of Beijing Institute of Technology》 EI CAS 2000年第2期201-204,共4页
To study the capacity of artificial neural network (ANN) applying to battlefield target classification and result of classification, according to the characteristics of battlefield target acoustic and seismic sign... To study the capacity of artificial neural network (ANN) applying to battlefield target classification and result of classification, according to the characteristics of battlefield target acoustic and seismic signals, an on the spot experiment was carried out to derive acoustic and seismic signals of a tank and jeep by special experiment system. Experiment data processed by fast Fourier transform(FFT) were used to train the ANN to distinguish the two battlefield targets. The ANN classifier was performed by the special program based on the modified back propagation (BP) algorithm. The ANN classifier has high correct identification rates for acoustic and seismic signals of battlefield targets, and is suitable for the classification of battlefield targets. The modified BP algorithm eliminates oscillations and local minimum of the standard BP algorithm, and enhances the convergence rate of the ANN. 展开更多
关键词 artificial neural network sample data classifier TRAINING
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