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Automatic target recognition of moving target based on empirical mode decomposition and genetic algorithm support vector machine 被引量:4
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作者 张军 欧建平 占荣辉 《Journal of Central South University》 SCIE EI CAS CSCD 2015年第4期1389-1396,共8页
In order to improve measurement accuracy of moving target signals, an automatic target recognition model of moving target signals was established based on empirical mode decomposition(EMD) and support vector machine(S... In order to improve measurement accuracy of moving target signals, an automatic target recognition model of moving target signals was established based on empirical mode decomposition(EMD) and support vector machine(SVM). Automatic target recognition process on the nonlinear and non-stationary of Doppler signals of military target by using automatic target recognition model can be expressed as follows. Firstly, the nonlinearity and non-stationary of Doppler signals were decomposed into a set of intrinsic mode functions(IMFs) using EMD. After the Hilbert transform of IMF, the energy ratio of each IMF to the total IMFs can be extracted as the features of military target. Then, the SVM was trained through using the energy ratio to classify the military targets, and genetic algorithm(GA) was used to optimize SVM parameters in the solution space. The experimental results show that this algorithm can achieve the recognition accuracies of 86.15%, 87.93%, and 82.28% for tank, vehicle and soldier, respectively. 展开更多
关键词 automatic target recognition(ATR) moving target empirical mode decomposition genetic algorithm support vector machine
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Using Audiometric Data to Weigh and Prioritize Factors that Affect Workers’ Hearing Loss through Support Vector Machine (SVM) Algorithm 被引量:3
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作者 Hossein ElahiShirvan MohammadReza Ghotbi-Ravandi +1 位作者 Sajad Zare Mostafa Ghazizadeh Ahsaee 《Sound & Vibration》 EI 2020年第2期99-112,共14页
Workers’exposure to excessive noise is a big universal work-related challenges.One of the major consequences of exposure to noise is permanent or transient hearing loss.The current study sought to utilize audiometric... Workers’exposure to excessive noise is a big universal work-related challenges.One of the major consequences of exposure to noise is permanent or transient hearing loss.The current study sought to utilize audiometric data to weigh and prioritize the factors affecting workers’hearing loss based using the Support Vector Machine(SVM)algorithm.This cross sectional-descriptive study was conducted in 2017 in a mining industry in southeast Iran.The participating workers(n=150)were divided into three groups of 50 based on the sound pressure level to which they were exposed(two experimental groups and one control group).Audiometric tests were carried out for all members of each group.The study generally entailed the following steps:(1)selecting predicting variables to weigh and prioritize factors affecting hearing loss;(2)conducting audiometric tests and assessing permanent hearing loss in each ear and then evaluating total hearing loss;(3)categorizing different types of hearing loss;(4)weighing and prioritizing factors that affect hearing loss based on the SVM algorithm;and(5)assessing the error rate and accuracy of the models.The collected data were fed into SPSS 18,followed by conducting linear regression and paired samples t-test.It was revealed that,in the first model(SPL<70 dBA),the frequency of 8 KHz had the greatest impact(with a weight of 33%),while noise had the smallest influence(with a weight of 5%).The accuracy of this model was 100%.In the second model(70<SPL<80 dBA),the frequency of 4 KHz had the most profound effect(with a weight of 21%),whereas the frequency of 250 Hz had the lowest impact(with a weight of 6%).The accuracy of this model was 100%too.In the third model(SPL>85 dBA),the frequency of 4 KHz had the highest impact(with a weight of 22%),while the frequency of 250 Hz had the smallest influence(with a weight of 3%).The accuracy of this model was 100%too.In the fourth model,the frequency of 4 KHz had the greatest effect(with a weight of 24%),while the frequency of 500 Hz had the smallest effect(with a weight of 4%).The accuracy of this model was found to be 94%.According to the modeling conducted using the SVM algorithm,the frequency of 4 KHz has the most profound effect on predicting changes in hearing loss.Given the high accuracy of the obtained model,this algorithm is an appropriate and powerful tool to predict and model hearing loss. 展开更多
关键词 Noise modeling hearing loss data mining support vector machine algorithm
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Speech Analysis for Diagnosis of Parkinson’s Disease Using Genetic Algorithm and Support Vector Machine 被引量:1
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作者 Mohammad Shahbakhi Danial Taheri Far Ehsan Tahami 《Journal of Biomedical Science and Engineering》 2014年第4期147-156,共10页
Parkinson’s disease (PD) is the most common disease of motor system degeneration that occurs when the dopamine-producing cells are damaged in substantia nigra. To detect PD, various signals have been investigated, in... Parkinson’s disease (PD) is the most common disease of motor system degeneration that occurs when the dopamine-producing cells are damaged in substantia nigra. To detect PD, various signals have been investigated, including EEG, gait and speech. Since approximately 90 percent of the people with PD suffer from speech disorders, speech analysis is considered as the most common technique for this aim. This paper proposes a new algorithm for diagnosing of Parkinson’s disease based on voice analysis. In the first step, genetic algorithm (GA) is undertaken for selecting optimized features from all extracted features. Afterwards a network based on support vector machine (SVM) is used for classification between healthy and people with Parkinson. The dataset of this research is composed of a range of biomedical voice signals from 31 people, 23 with Parkinson’s disease and 8 healthy people. The subjects were asked to pronounce letter “A” for 3 seconds. 22 linear and non-linear features were extracted from the signals that 14 features were based on F0 (fundamental frequency or pitch), jitter, shimmer and noise to harmonics ratio, which are main factors in voice signal. Because changing in these factors is noticeable for the people with PD, optimized features were selected among them. Of the various numbers of optimized features, the data classification was investigated. Results show that the classification accuracy percent of 94.50 per 4 optimized features, the accuracy percent of 93.66 per 7 optimized features and the accuracy percent of 94.22 per 9 optimized features, could be achieved. It can be observed that the best classification accuracy may be achieved using Fhi (Hz), Fho (Hz), jitter (RAP) and shimmer (APQ5). 展开更多
关键词 Parkinson’s Disease SPEECH Analysis GENETIC algorithm support VECTOR Machine
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Nonlinear model predictive control based on support vector machine and genetic algorithm 被引量:5
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作者 冯凯 卢建刚 陈金水 《Chinese Journal of Chemical Engineering》 SCIE EI CAS CSCD 2015年第12期2048-2052,共5页
This paper presents a nonlinear model predictive control(NMPC) approach based on support vector machine(SVM) and genetic algorithm(GA) for multiple-input multiple-output(MIMO) nonlinear systems.Individual SVM is used ... This paper presents a nonlinear model predictive control(NMPC) approach based on support vector machine(SVM) and genetic algorithm(GA) for multiple-input multiple-output(MIMO) nonlinear systems.Individual SVM is used to approximate each output of the controlled plant Then the model is used in MPC control scheme to predict the outputs of the controlled plant.The optimal control sequence is calculated using GA with elite preserve strategy.Simulation results of a typical MIMO nonlinear system show that this method has a good ability of set points tracking and disturbance rejection. 展开更多
关键词 support vector machine Genetic algorithm Nonlinear model predictive control Neural network Modeling
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Fast Adaptive Support-Weight Stereo Matching Algorithm 被引量:2
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作者 Kai He Yunfeng Ge +1 位作者 Rui Zhen Jiaxing Yan 《Transactions of Tianjin University》 EI CAS 2017年第3期295-300,共6页
Adaptive support-weight (ASW) stereo matching algorithm is widely used in the field of three-dimensional (3D) reconstruction owing to its relatively high matching accuracy. However, since all the weight coefficients n... Adaptive support-weight (ASW) stereo matching algorithm is widely used in the field of three-dimensional (3D) reconstruction owing to its relatively high matching accuracy. However, since all the weight coefficients need to be calculated in the whole disparity range for each pixel, the algorithm is extremely time-consuming. To solve this problem, a fast ASW algorithm is proposed using twice aggregation. First, a novel weight coefficient which adapts cosine function to satisfy the weight distribution discipline is proposed to accomplish the first cost aggregation. Then, the disparity range is divided into several sub-ranges and local optimal disparities are selected from each of them. For each pixel, only the ASW at the location of local optimal disparities is calculated, and thus, the complexity of the algorithm is greatly reduced. Experimental results show that the proposed algorithm can reduce the amount of calculation by 70% and improve the matching accuracy by 6% for the 15 images on Middlebury Website on average. © 2017, Tianjin University and Springer-Verlag Berlin Heidelberg. 展开更多
关键词 Computational complexity Cosine transforms PIXELS
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The Comparison between Random Forest and Support Vector Machine Algorithm for Predicting β-Hairpin Motifs in Proteins
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作者 Shaochun Jia Xiuzhen Hu Lixia Sun 《Engineering(科研)》 2013年第10期391-395,共5页
Based on the research of predictingβ-hairpin motifs in proteins, we apply Random Forest and Support Vector Machine algorithm to predictβ-hairpin motifs in ArchDB40 dataset. The motifs with the loop length of 2 to 8 ... Based on the research of predictingβ-hairpin motifs in proteins, we apply Random Forest and Support Vector Machine algorithm to predictβ-hairpin motifs in ArchDB40 dataset. The motifs with the loop length of 2 to 8 amino acid residues are extracted as research object and thefixed-length pattern of 12 amino acids are selected. When using the same characteristic parameters and the same test method, Random Forest algorithm is more effective than Support Vector Machine. In addition, because of Random Forest algorithm doesn’t produce overfitting phenomenon while the dimension of characteristic parameters is higher, we use Random Forest based on higher dimension characteristic parameters to predictβ-hairpin motifs. The better prediction results are obtained;the overall accuracy and Matthew’s correlation coefficient of 5-fold cross-validation achieve 83.3% and 0.59, respectively. 展开更多
关键词 Random FOREST algorithm support Vector Machine algorithm β-Hairpin MOTIF INCREMENT of Diversity SCORING Function Predicted Secondary Structure Information
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Enhanced Wolf Pack Algorithm (EWPA) and Dense-kUNet Segmentation for Arterial Calcifications in Mammograms
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作者 Afnan M.Alhassan 《Computers, Materials & Continua》 SCIE EI 2024年第2期2207-2223,共17页
Breast Arterial Calcification(BAC)is a mammographic decision dissimilar to cancer and commonly observed in elderly women.Thus identifying BAC could provide an expense,and be inaccurate.Recently Deep Learning(DL)method... Breast Arterial Calcification(BAC)is a mammographic decision dissimilar to cancer and commonly observed in elderly women.Thus identifying BAC could provide an expense,and be inaccurate.Recently Deep Learning(DL)methods have been introduced for automatic BAC detection and quantification with increased accuracy.Previously,classification with deep learning had reached higher efficiency,but designing the structure of DL proved to be an extremely challenging task due to overfitting models.It also is not able to capture the patterns and irregularities presented in the images.To solve the overfitting problem,an optimal feature set has been formed by Enhanced Wolf Pack Algorithm(EWPA),and their irregularities are identified by Dense-kUNet segmentation.In this paper,Dense-kUNet for segmentation and optimal feature has been introduced for classification(severe,mild,light)that integrates DenseUNet and kU-Net.Longer bound links exist among adjacent modules,allowing relatively rough data to be sent to the following component and assisting the system in finding higher qualities.The major contribution of the work is to design the best features selected by Enhanced Wolf Pack Algorithm(EWPA),and Modified Support Vector Machine(MSVM)based learning for classification.k-Dense-UNet is introduced which combines the procedure of Dense-UNet and kU-Net for image segmentation.Longer bound associations occur among nearby sections,allowing relatively granular data to be sent to the next subsystem and benefiting the system in recognizing smaller characteristics.The proposed techniques and the performance are tested using several types of analysis techniques 826 filled digitized mammography.The proposed method achieved the highest precision,recall,F-measure,and accuracy of 84.4333%,84.5333%,84.4833%,and 86.8667%when compared to other methods on the Digital Database for Screening Mammography(DDSM). 展开更多
关键词 Breast arterial calcification cardiovascular disease semantic segmentation transfer learning enhanced wolf pack algorithm and modified support vector machine
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基于BOA-SVR算法的弹射起飞安全性预测方法研究 被引量:1
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作者 田煜 刘苗鑫 刘涛 《飞行力学》 北大核心 2025年第4期83-88,共6页
为保证舰载机弹射起飞的顺利实施,需要对弹射起飞进行安全性评估和预测。以大数据和机器学习评估技术入手,研究了基于蝴蝶优化算法的支持向量回归(BOA-SVR)弹射起飞安全性评估方法。首先梳理弹射起飞安全性影响因素和指标参数,明确评估... 为保证舰载机弹射起飞的顺利实施,需要对弹射起飞进行安全性评估和预测。以大数据和机器学习评估技术入手,研究了基于蝴蝶优化算法的支持向量回归(BOA-SVR)弹射起飞安全性评估方法。首先梳理弹射起飞安全性影响因素和指标参数,明确评估算法的输入和输出;其次研究BOA-SVR算法的实现,并利用仿真数据进行算法的回归分析和性能比较,结果表明所提出的算法比传统SVR算法具有更高的性能;最后使用弹射起飞安全性评估回归模型实现弹射起飞的安全性预测,并用于工况调整,对飞行试验和部队训练具有很好的实用性。 展开更多
关键词 弹射起飞 安全性预测 蝴蝶优化算法 支持向量回归
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Parameter selection of support vector regression based on hybrid optimization algorithm and its application 被引量:9
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作者 Xin WANG Chunhua YANG +1 位作者 Bin QIN Weihua GUI 《控制理论与应用(英文版)》 EI 2005年第4期371-376,共6页
Choosing optimal parameters for support vector regression (SVR) is an important step in SVR. design, which strongly affects the pefformance of SVR. In this paper, based on the analysis of influence of SVR parameters... Choosing optimal parameters for support vector regression (SVR) is an important step in SVR. design, which strongly affects the pefformance of SVR. In this paper, based on the analysis of influence of SVR parameters on generalization error, a new approach with two steps is proposed for selecting SVR parameters, First the kernel function and SVM parameters are optimized roughly through genetic algorithm, then the kernel parameter is finely adjusted by local linear search, This approach has been successfully applied to the prediction model of the sulfur content in hot metal. The experiment results show that the proposed approach can yield better generalization performance of SVR than other methods, 展开更多
关键词 support vector regression Parameters tuning Hybrid optimization Genetic algorithm(GA)
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融合改进卷积神经网络和层次SVM的鸡蛋外观检测 被引量:1
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作者 姚万鹏 张凌晓 +1 位作者 赵肖峰 王飞成 《食品与机械》 北大核心 2025年第1期158-164,共7页
[目的]实现鸡蛋精细化分类和提高鸡蛋外观检测的准确率。[方法]提出一种融合改进卷积神经网络和层次SVM的鸡蛋外观检测方案。(1)采用鸡蛋机器视觉图像采集设备获取不同方位、不同外观鸡蛋图像,并运用图像增强技术扩充鸡蛋图像数据库。(2... [目的]实现鸡蛋精细化分类和提高鸡蛋外观检测的准确率。[方法]提出一种融合改进卷积神经网络和层次SVM的鸡蛋外观检测方案。(1)采用鸡蛋机器视觉图像采集设备获取不同方位、不同外观鸡蛋图像,并运用图像增强技术扩充鸡蛋图像数据库。(2)设计改进的浣熊优化算法(coati optimization algorithm,COA)和FCM聚类算法,在此基础上对卷积神经网络(convolutional neural network,CNN)模型结构和超参数进行优化,以提升CNN泛化能力。运用优化后的CNN深度学习鸡蛋图像数据库,从而实现鸡蛋外观图像特征的有效提取。(3)建立层次支持向量机鸡蛋外观分类工具,最终实现对鸡蛋外观的准确检测分类。[结果]所提鸡蛋外观检测方案的检测准确率提高了1.74%~4.31%,检测时间降低了21.68%~53.51%。[结论]所提方法能够有效实现对鸡蛋的在线实时精细化分类。 展开更多
关键词 鸡蛋外观 卷积神经网络 浣熊优化算法 支持向量机 特征提取
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Seasonal Least Squares Support Vector Machine with Fruit Fly Optimization Algorithm in Electricity Consumption Forecasting
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作者 WANG Zilong XIA Chenxia 《Journal of Donghua University(English Edition)》 EI CAS 2019年第1期67-76,共10页
Electricity is the guarantee of economic development and daily life. Thus, accurate monthly electricity consumption forecasting can provide reliable guidance for power construction planning. In this paper, a hybrid mo... Electricity is the guarantee of economic development and daily life. Thus, accurate monthly electricity consumption forecasting can provide reliable guidance for power construction planning. In this paper, a hybrid model in combination of least squares support vector machine(LSSVM) model with fruit fly optimization algorithm(FOA) and the seasonal index adjustment is constructed to predict monthly electricity consumption. The monthly electricity consumption demonstrates a nonlinear characteristic and seasonal tendency. The LSSVM has a good fit for nonlinear data, so it has been widely applied to handling nonlinear time series prediction. However, there is no unified selection method for key parameters and no unified method to deal with the effect of seasonal tendency. Therefore, the FOA was hybridized with the LSSVM and the seasonal index adjustment to solve this problem. In order to evaluate the forecasting performance of hybrid model, two samples of monthly electricity consumption of China and the United States were employed, besides several different models were applied to forecast the two empirical time series. The results of the two samples all show that, for seasonal data, the adjusted model with seasonal indexes has better forecasting performance. The forecasting performance is better than the models without seasonal indexes. The fruit fly optimized LSSVM model outperforms other alternative models. In other words, the proposed hybrid model is a feasible method for the electricity consumption forecasting. 展开更多
关键词 forecasting FRUIT FLY optimization algorithm(FOA) least SQUARES support vector machine(LSSVM) SEASONAL index
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Parameters Optimization Using Genetic Algorithms in Support Vector Regression for Sales Volume Forecasting 被引量:1
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作者 Fong-Ching Yuan 《Applied Mathematics》 2012年第10期1480-1486,共7页
Budgeting planning plays an important role in coordinating activities in organizations. An accurate sales volume forecasting is the key to the entire budgeting process. All of the other parts of the master budget are ... Budgeting planning plays an important role in coordinating activities in organizations. An accurate sales volume forecasting is the key to the entire budgeting process. All of the other parts of the master budget are dependent on the sales volume forecasting in some way. If the sales volume forecasting is sloppily done, then the rest of the budgeting process is largely a waste of time. Therefore, the sales volume forecasting process is a critical one for most businesses, and also a difficult area of management. Most of researches and companies use the statistical methods, regression analysis, or sophisticated computer simulations to analyze the sales volume forecasting. Recently, various prediction Artificial Intelligent (AI) techniques have been proposed in forecasting. Support Vector Regression (SVR) has been applied successfully to solve problems in numerous fields and proved to be a better prediction model. However, the select of appropriate SVR parameters is difficult. Therefore, to improve the accuracy of SVR, a hybrid intelligent support system based on evolutionary computation to solve the difficulties involved with the parameters selection is presented in this research. Genetic Algorithms (GAs) are used to optimize free parameters of SVR. The experimental results indicate that GA-SVR can achieve better forecasting accuracy and performance than traditional SVR and artificial neural network (ANN) prediction models in sales volume forecasting. 展开更多
关键词 BUDGETING Planning SALES Volume Forecasting Artificial Intelligent support VECTOR Regression GENETIC algorithms Artificial NEURAL Network
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一种基于数据驱动的空调负荷预测方法 被引量:1
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作者 周孟然 周光耀 +6 位作者 胡锋 朱梓伟 张奇奇 王玲 孔伟乐 吴长臻 崔恩汉 《河南师范大学学报(自然科学版)》 北大核心 2025年第3期128-134,共7页
空调负荷预测是空调负荷潜力分析和电网空调负荷调控的基础,为了精确地对空调负荷进行预测,文中提出了一种考虑到外界影响因素以及集成优化的空调负荷预测方法.首先,拟定好实验运行方案并采集影响因素数据.其次,使用近邻成分分析(NCA)... 空调负荷预测是空调负荷潜力分析和电网空调负荷调控的基础,为了精确地对空调负荷进行预测,文中提出了一种考虑到外界影响因素以及集成优化的空调负荷预测方法.首先,拟定好实验运行方案并采集影响因素数据.其次,使用近邻成分分析(NCA)方法进行特征选择,剔除重要度小的特征.然后使用白鲨优化算法(white shark optimizer,WSO)对支持向量回归(support vector regression,SVR)的正则化参数和核函数的宽度参数进行优化,最后,结合自适应提升算法(adaptive boosting,Adaboost)构建Adaboost-WSO-SVR主模型,检验其精度并与其他方法进行比较.结果表明,提出的Adaboost-WSO-SVR主模型相比于集成优化后的BP,ELM模型精度更高.可知提出的方法在负荷预测方面效果更好,为空调节能优化控制策略提供依据. 展开更多
关键词 空调负荷 负荷预测 特征选择 白鲨优化算法 自适应提升算法 支持向量回归
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粮食生产大数据平台研究进展与展望 被引量:1
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作者 杨贵军 赵春江 +13 位作者 杨小冬 杨浩 胡海棠 龙慧灵 裘正军 李娴 江冲亚 孙亮 陈雷 周清波 郝星耀 郭威 王培 高美玲 《智慧农业(中英文)》 2025年第2期1-12,共12页
[目的/意义]农业大数据爆炸式发展,加速农业生产迈入数字化、智能化新时代。作为新质生产力,大数据服务于粮食生产全过程综合智能化管理决策,面临粮食生产大数据资源治理机制不明、全链条化粮食生产决策核心算法体系缺乏且对外依存度高... [目的/意义]农业大数据爆炸式发展,加速农业生产迈入数字化、智能化新时代。作为新质生产力,大数据服务于粮食生产全过程综合智能化管理决策,面临粮食生产大数据资源治理机制不明、全链条化粮食生产决策核心算法体系缺乏且对外依存度高、粮食生产全过程全要素的大数据平台缺乏等问题。[进展]本文综合分析了国内外粮食生产大数据、农情监测与智能决策算法、大数据平台方面的相关进展和面临的挑战,面向产前规划、产中监测与决策、产后综合评价等粮食生产全程管理决策需求,构建由多源异构粮食生产大数据治理、粮食生产知识图谱、“数据获取-信息提取-知识构建-智能决策-农机作业”全链条标准化算法体系、数字孪生典型应用场景等环节组成的粮食生产大数据智能平台。[结论/展望]应重点关注宏观管理监测和微观农场全程智能化生产作业需求,聚焦粮食生产典型应用场景,充分融合大数据与人工智能、数字孪生及云边端等新技术,探索技术联通集成为本,智能化服务为魂的大数据平台研发路径,创建开放式作物与环境传感接入、核心算法成熟度分级与云原生封装、高效数据与决策服务响应等为核心特色的开放共生型粮食生产大数据平台,实现数据-算法-服务全链条智能化、决策信息与智能装备作业一体化、粮食生产大数据平台与应用体系标准化,形成保障粮食安全高效绿色生产的新质生产力。 展开更多
关键词 粮食生产 大数据平台 农情监测 智能算法 决策支持 新质生产力
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基于近红外光谱的草莓多品质参数通用预测模型研究 被引量:1
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作者 李博 朱莉 +1 位作者 姚庆宇 姜洪洋 《现代食品科技》 北大核心 2025年第8期227-236,共10页
可溶性固形物(Soluble Solids Content,SSC)和硬度(Firmness,FI)是影响草莓口感的关键因素。该研究建立了一种基于共同特征的草莓品质参数(SSC、FI)通用预测模型。采用竞争性自适应重加权算法(Competitive Adaptive Reweighted Sampling... 可溶性固形物(Soluble Solids Content,SSC)和硬度(Firmness,FI)是影响草莓口感的关键因素。该研究建立了一种基于共同特征的草莓品质参数(SSC、FI)通用预测模型。采用竞争性自适应重加权算法(Competitive Adaptive Reweighted Sampling,CARS)、连续投影法(Successive Projection Algorithm,SPA)和无信息变量消除法(Uniformative Variable Elimination,UVE)提取光谱特征,建立了偏最小二乘(Partial Least Squares Regression,PLSR)、极限学习机(Extreme Learning Machine,ELM)和最小二乘支持向量机(Least Square Support Vector Machines,LS-SVM)决策模型,并使用鲸鱼优化算法寻优LS-SVM模型的最佳参数。建立了基于SSC和FI共同特征的通用预测模型。结果表明,使用SG卷积平滑法(Savizky-Golay,SG)进行预处理可有效减少光谱的噪声。CARS-LS-SVM模型对SSC和FI的单指标预测效果最好,预测集相关系数分别为0.937和0.898,残差预测偏差分别为2.87和2.28;采用UVE方法分别提取的SSC和FI特征有着最高重合率。基于共同特征建立的LS-SVM双指标模型可以对SSC和FI进行有效预测,预测集相关系数分别为0.922和0.871,残差预测偏差为2.58和2.04。利用近红外光谱技术可以同时预测草莓的SSC和FI,该研究为草莓的多参数通用预测模型提供了理论参考。 展开更多
关键词 草莓 近红外光谱 鲸鱼优化算法 最小二乘支持向量机 通用预测模型
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电力变压器内部故障的递进分层诊断方法 被引量:1
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作者 咸日常 李云淏 +4 位作者 刘焕国 王昭璇 张海强 胡玉耀 王玮 《电网技术》 北大核心 2025年第4期1726-1734,I0079,I0080,共11页
电力变压器内部故障成因复杂、种类繁多,精确诊断难度大,现有诊断技术大多滞留于故障定性阶段。为实现多类型故障的精准定位,该文通过建立多状态量与故障特征之间的递进映射关系,提出一种改进灰狼算法与最小二乘支持向量机耦合的电力变... 电力变压器内部故障成因复杂、种类繁多,精确诊断难度大,现有诊断技术大多滞留于故障定性阶段。为实现多类型故障的精准定位,该文通过建立多状态量与故障特征之间的递进映射关系,提出一种改进灰狼算法与最小二乘支持向量机耦合的电力变压器故障递进分层诊断方法。首先介绍改进灰狼算法与最小二乘支持向量机的原理,建立电力变压器故障递进分层、自动诊断及定位模型;其次基于300组电力变压器的状态量,利用核主成分分析法进行降维处理,选取线性无关的特征状态量,依据DL/T 1685—2017《油浸式变压器状态评价导则》进行离散化处理,借助算法模型递进分层、自动诊断:第一层诊断故障回路、第二层确定故障部位、第三层明确故障原因,得到各分类器的诊断准确率及惩罚系数和核函数参数的最优组合解,并与其他算法模型的故障诊断结果进行分析对比;最后以实际故障案例验证方法的有效性。结果表明:该文所提诊断模型比其他方法拥有更高准确率和更快的运算速度。 展开更多
关键词 电力变压器 改进灰狼算法 最小二乘支持向量机 多状态量 内部故障 递进分层诊断
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Using the Support Vector Machine Algorithm to Predict β-Turn Types in Proteins
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作者 Xiaobo Shi Xiuzhen Hu 《Engineering(科研)》 2013年第10期386-390,共5页
The structure and function of proteins are closely related, and protein structure decides its function, therefore protein structure prediction is quite important.β-turns are important components of protein secondary ... The structure and function of proteins are closely related, and protein structure decides its function, therefore protein structure prediction is quite important.β-turns are important components of protein secondary structure. So development of an accurate prediction method ofβ-turn types is very necessary. In this paper, we used the composite vector with position conservation scoring function, increment of diversity and predictive secondary structure information as the input parameter of support vector machine algorithm for predicting theβ-turn types in the database of 426 protein chains, obtained the overall prediction accuracy of 95.6%, 97.8%, 97.0%, 98.9%, 99.2%, 91.8%, 99.4% and 83.9% with the Matthews Correlation Coefficient values of 0.74, 0.68, 0.20, 0.49, 0.23, 0.47, 0.49 and 0.53 for types I, II, VIII, I’, II’, IV, VI and nonturn respectively, which is better than other prediction. 展开更多
关键词 support Vector Machine algorithm INCREMENT of Diversity VALUE Position Conservation SCORING Function VALUE Secondary Structure Information
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Assessing supply chain performance using genetic algorithm and support vector machine
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作者 ZHAO Yu 《Ecological Economy》 2019年第2期101-108,共8页
The rough set-genetic support vector machine(SVM) model is applied to supply chain performance evaluation. First, the rough set theory is used to remove the redundant factors that affect the performance evaluation of ... The rough set-genetic support vector machine(SVM) model is applied to supply chain performance evaluation. First, the rough set theory is used to remove the redundant factors that affect the performance evaluation of supply chain to obtain the core influencing factors. Then the support vector machine is used to extract the core influencing factors to predict the level of supply chain performance. In the process of SVM classification, the genetic algorithm is used to optimize the parameters of the SVM algorithm to obtain the best parameter model, and then the supply chain performance evaluation level is predicted. Finally, an example is used to predict this model, and compared with the result of using only rough set-support vector machine to predict. The results show that the method of rough set-genetic support vector machine can predict the level of supply chain performance more accurately and the prediction result is more realistic, which is a scientific and feasible method. 展开更多
关键词 supply CHAIN performance evaluation ROUGH set theory support VECTOR machine GENETIC algorithm
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基于机器视觉的海鲜花螺分类研究 被引量:1
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作者 陈林涛 陈睿 +2 位作者 蓝莹 梁国健 牟向伟 《水生生物学报》 北大核心 2025年第2期138-145,共8页
针对目前人工分选海鲜花螺劳动强度大、人工成本高的问题,研究提出一种DPO-SVM海鲜花螺公母分类模型。通过灰度共生矩阵分析提取海鲜花螺外壳间隔纹理特征量,采用SVM作为公母分类模型基体,对不同纹理特征量组合进行分类效果对比,得出使... 针对目前人工分选海鲜花螺劳动强度大、人工成本高的问题,研究提出一种DPO-SVM海鲜花螺公母分类模型。通过灰度共生矩阵分析提取海鲜花螺外壳间隔纹理特征量,采用SVM作为公母分类模型基体,对不同纹理特征量组合进行分类效果对比,得出使用能量、熵、对比度3种特征量分类效果最好的结论。针对SVM优化问题,以PSO和WOA算法为基础提出DPO算法对SVM的重要参数c、g进行优化;对DPO-SVM性能进行测试,将测试结果与SVM、PSO-SVM、WOA-SVM测试结果对比。相比于其他3种SVM模型,DPOSVM分类准确率大幅度提升,相比于SVM,分类总准确率由85%上升至100%,上升了15%;DPO算法提高了单种群优化算法的寻优性能,相比于PSO算法,DPO算法将最佳适应度从95.26提升至98.68,提升幅度为3.47%。此外,达到最佳适应度的迭代次数由14次减少至6次,下降57.14%,显著优化了收敛速度。研究结果可为自动分拣装置中海鲜花螺公母分类提供技术参考。 展开更多
关键词 机器视觉 花螺分选 外壳 纹理特征 支持向量机 算法
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基于改进人工蜂鸟算法优化支持向量机的人脸识别算法
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作者 肖剑 黄博 +2 位作者 程鸿亮 胡欣 袁晔 《计算机工程》 北大核心 2025年第10期319-326,共8页
传统的人脸识别系统在最终人脸分类问题上,通常借助各种仿生学算法与支持向量机(SVM)相结合组成相应的人脸识别模型。该方法通过算法的迭代选取最优SVM参数,然而这种策略在人脸识别方法上存在分类精度较低、训练时间较长且容易陷入局部... 传统的人脸识别系统在最终人脸分类问题上,通常借助各种仿生学算法与支持向量机(SVM)相结合组成相应的人脸识别模型。该方法通过算法的迭代选取最优SVM参数,然而这种策略在人脸识别方法上存在分类精度较低、训练时间较长且容易陷入局部最优解的问题。针对上述问题,提出利用改进人工蜂鸟算法(AHA)优化SVM的人脸识别算法。首先通过引入Tent映射的混沌序列改进人工蜂鸟算法,使蜂鸟种群初始化更为均匀,避免算法陷入局部最优解;其次在SVM进行人脸识别的方法中引入改进AHA,通过设定一定的迭代次数,选择用来优化SVM的最优相关参数,达到提高人脸识别准确率的目的。实验结果表明,将改进的人工蜂鸟算法与灰狼优化(GWO)算法、麻雀搜索算法(SSA)、鲸鱼优化算法(WOA)进行对比,改进AHA在基准函数的求解上具有更快的收敛速度,同时在ORL人脸数据库进行人脸识别实验,将改进AHA与SVM相结合,相比于将GWO、SSA和WOA与SVM相结合,在人脸识别的准确率指标方面,改进AHA结合SVM方案具有更高的准确率和召回率,并且模型推理速度更快。 展开更多
关键词 人工蜂鸟算法 支持向量机 人脸识别 TENT映射 混沌序列
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