Removal of cloud cover on the satellite remote sensing image can effectively improve the availability of remote sensing images. For thin cloud cover, support vector value contourlet transform is used to achieve multi-...Removal of cloud cover on the satellite remote sensing image can effectively improve the availability of remote sensing images. For thin cloud cover, support vector value contourlet transform is used to achieve multi-scale decomposition of the area of thin cloud cover on remote sensing images. Through enhancing coefficients of high frequency and suppressing coefficients of low frequency, the thin cloud is removed. For thick cloud cover, if the areas of thick cloud cover on multi-source or multi-temporal remote sensing images do not overlap, the multi-output support vector regression learning method is used to remove this kind of thick clouds. If the thick cloud cover areas overlap, by using the multi-output learning of the surrounding areas to predict the surface features of the overlapped thick cloud cover areas, this kind of thick cloud is removed. Experimental results show that the proposed cloud removal method can effectively solve the problems of the cloud overlapping and radiation difference among multi-source images. The cloud removal image is clear and smooth.展开更多
To overcome the disadvantage that the standard least squares support vector regression(LS-SVR) algorithm is not suitable to multiple-input multiple-output(MIMO) system modelling directly,an improved LS-SVR algorithm w...To overcome the disadvantage that the standard least squares support vector regression(LS-SVR) algorithm is not suitable to multiple-input multiple-output(MIMO) system modelling directly,an improved LS-SVR algorithm which was defined as multi-output least squares support vector regression(MLSSVR) was put forward by adding samples' absolute errors in objective function and applied to flatness intelligent control.To solve the poor-precision problem of the control scheme based on effective matrix in flatness control,the predictive control was introduced into the control system and the effective matrix-predictive flatness control method was proposed by combining the merits of the two methods.Simulation experiment was conducted on 900HC reversible cold roll.The performance of effective matrix method and the effective matrix-predictive control method were compared,and the results demonstrate the validity of the effective matrix-predictive control method.展开更多
With the development of technology, the relevant performance of unmanned aerial vehicles(UAVs) has been greatly improved, and various highly maneuverable UAVs have been developed, which puts forward higher requirement...With the development of technology, the relevant performance of unmanned aerial vehicles(UAVs) has been greatly improved, and various highly maneuverable UAVs have been developed, which puts forward higher requirements on target tracking technology. Strong maneuvering refers to relatively instantaneous and dramatic changes in target acceleration or movement patterns, as well as continuous changes in speed,angle, and acceleration. However, the traditional UAV tracking algorithm model has poor adaptability and large amount of calculation. This paper applies support vector regression(SVR)to the interacting multiple model(IMM) algorithm. The simulation results show that the improved algorithm has higher tracking accuracy for highly maneuverable targets than the original algorithm, and can adjust parameters adaptively, making it more adaptable.展开更多
As one of the most important part of weapon system of systems(WSoS),quantitative evaluation of reconnaissance satellite system(RSS)is indispensable during its construction and application.Aiming at the problem of nonl...As one of the most important part of weapon system of systems(WSoS),quantitative evaluation of reconnaissance satellite system(RSS)is indispensable during its construction and application.Aiming at the problem of nonlinear effectiveness evaluation under small sample conditions,we propose an evaluation method based on support vector regression(SVR)to effectively address the defects of traditional methods.Considering the performance of SVR is influenced by the penalty factor,kernel type,and other parameters deeply,the improved grey wolf optimizer(IGWO)is employed for parameter optimization.In the proposed IGWO algorithm,the opposition-based learning strategy is adopted to increase the probability of avoiding the local optima,the mutation operator is used to escape from premature convergence and differential convergence factors are applied to increase the rate of convergence.Numerical experiments of 14 test functions validate the applicability of IGWO algorithm dealing with global optimization.The index system and evaluation method are constructed based on the characteristics of RSS.To validate the proposed IGWO-SVR evaluation method,eight benchmark data sets and combat simulation are employed to estimate the evaluation accuracy,convergence performance and computational complexity.According to the experimental results,the proposed method outperforms several prediction based evaluation methods,verifies the superiority and effectiveness in RSS operational effectiveness evaluation.展开更多
Considering the modeling errors of on-board self-tuning model in the fault diagnosis of aero-engine, a new mechanism for compensating the model outputs is proposed. A discrete series predictor based on multi-outputs l...Considering the modeling errors of on-board self-tuning model in the fault diagnosis of aero-engine, a new mechanism for compensating the model outputs is proposed. A discrete series predictor based on multi-outputs least square support vector regression (LSSVR) is applied to the compensation of on-board self-tuning model of aero-engine, and particle swarm optimization (PSO) is used to the kernels selection of multi-outputs LSSVR. The method need not reconstruct the model of aero-engine because of the differences in the individuals of the same type engines and engine degradation after use. The concrete steps for the application of the method are given, and the simulation results show the effectiveness of the algorithm.展开更多
为提高光伏发电功率预测精度,提出一种基于外生因素及季节性的差分自回归移动平均SARIMAX(seasonal autoregressive integrated moving average with exogenous factors)并结合优化支持向量回归SVR(support vector regression)的光伏发...为提高光伏发电功率预测精度,提出一种基于外生因素及季节性的差分自回归移动平均SARIMAX(seasonal autoregressive integrated moving average with exogenous factors)并结合优化支持向量回归SVR(support vector regression)的光伏发电功率预测方法。首先,采用相关性特征法聚类气象条件中关键气象因子,以消除数据冗余并降低ARIMAX模型的复杂性;其次,在ARIMAX模型中引入季节性因素,构建SARIMAX模型来捕捉数据的季节性变化;最后,使用SARIMAX模型的拟合残差其作为SVR模型的输入,进一步拟合数据的非线性。通过仿真算例分析表明,所提方法可显著提高光伏发电功率预测精度。展开更多
针对以往船舶备件需求预测精度不高,无法满足船舶综合保障的实际问题,文章建立一种基于改进红狐优化算法(improved red fox optimization,IRFO)的支持向量机回归(support vector regression,SVR)的船舶备件预测模型。为进一步提高红狐...针对以往船舶备件需求预测精度不高,无法满足船舶综合保障的实际问题,文章建立一种基于改进红狐优化算法(improved red fox optimization,IRFO)的支持向量机回归(support vector regression,SVR)的船舶备件预测模型。为进一步提高红狐优化算法(red fox optimization,RFO)的寻优精度,重构其全局搜索公式,并融合精英反向学习策略。采用基准测试函数对IRFO算法进行仿真实验,实验表明,IRFO算法比RFO算法、粒子群算法、灰狼优化算法寻优能力更强,综合性能更优。基于船舶备件历史数据,建立IRFO-SVR船舶备件预测模型,通过对比其他模型的预测结果,表明IRFO-SVR的预测效果更佳。展开更多
为给小麦的长势监测与农艺决策提供科学依据,利用高光谱技术实现了小麦冠层叶绿素含量的估测。通过分析18种高光谱指数对叶绿素的估测能力,筛选出可敏感表征叶绿素含量的指数REP,利用地面光谱数据为样本集,以最小二乘支持向量回归(least...为给小麦的长势监测与农艺决策提供科学依据,利用高光谱技术实现了小麦冠层叶绿素含量的估测。通过分析18种高光谱指数对叶绿素的估测能力,筛选出可敏感表征叶绿素含量的指数REP,利用地面光谱数据为样本集,以最小二乘支持向量回归(least squares support vector regression,LS-SVR)算法建立了小麦冠层叶绿素含量反演模型,其校正决定系数C-R2与预测决定系数P-R2分别为0.751与0.722,在各指数中反演精度最高。进一步分析表明,REP对叶绿素含量以及LAI值较高与较低的样本均具备良好的预测能力,可有效避免样本取值范围以及冠层郁闭度等因素对叶绿素含量估测的影响。利用LS-SVR反演模型完成了OMIS影像叶绿素含量的遥感填图,并以地面实测值进行检验,其拟合模型R2与RMSE值分别为0.676与1.715。结果表明,高光谱指数REP所建立的LS-SVR模型实现了叶绿素含量的准确估测,可用于小麦叶绿素含量信息的快速、无损获取。展开更多
为改进小麦冠层含氮率的高光谱测定模型,以正交试验筛选出小波去噪的最优参数组合(小波类型取haar,分解层数为5,阈值方案选择Fixed form threshold,噪声结构定为Unscaled white noise),并利用去噪后的小麦冠层光谱建立偏最小二乘回归(P...为改进小麦冠层含氮率的高光谱测定模型,以正交试验筛选出小波去噪的最优参数组合(小波类型取haar,分解层数为5,阈值方案选择Fixed form threshold,噪声结构定为Unscaled white noise),并利用去噪后的小麦冠层光谱建立偏最小二乘回归(PLS)模型,对不同预处理方法进行比较分析。发现采用小波去噪结合一阶导数能最有效消除原始光谱的背景信息,此时PLS模型校正集均方根误差(RMSEC)为0.260,预测集均方根误差(RMSEP)为0.288。对经一阶导数结合小波去噪后的光谱用主成分分析(PCA)进行降维,以前6个主成份为输入变量,建立最小二乘支撑向量机回归模型(LS-SVR),其RMSEC与RMSEP分别为0.154与0.259,具有比PLS模型更高的精度。结果表明:以小波去噪结合一阶导数去除小麦冠层反射光谱中的土壤背景信息以提高模型的精度是可行的,且LS-SVR是建模的优选方法。展开更多
基金supported by the National Natural Science Foundation of China(61172127)the Natural Science Foundation of Anhui Province(1408085MF121)
文摘Removal of cloud cover on the satellite remote sensing image can effectively improve the availability of remote sensing images. For thin cloud cover, support vector value contourlet transform is used to achieve multi-scale decomposition of the area of thin cloud cover on remote sensing images. Through enhancing coefficients of high frequency and suppressing coefficients of low frequency, the thin cloud is removed. For thick cloud cover, if the areas of thick cloud cover on multi-source or multi-temporal remote sensing images do not overlap, the multi-output support vector regression learning method is used to remove this kind of thick clouds. If the thick cloud cover areas overlap, by using the multi-output learning of the surrounding areas to predict the surface features of the overlapped thick cloud cover areas, this kind of thick cloud is removed. Experimental results show that the proposed cloud removal method can effectively solve the problems of the cloud overlapping and radiation difference among multi-source images. The cloud removal image is clear and smooth.
基金Project(50675186) supported by the National Natural Science Foundation of China
文摘To overcome the disadvantage that the standard least squares support vector regression(LS-SVR) algorithm is not suitable to multiple-input multiple-output(MIMO) system modelling directly,an improved LS-SVR algorithm which was defined as multi-output least squares support vector regression(MLSSVR) was put forward by adding samples' absolute errors in objective function and applied to flatness intelligent control.To solve the poor-precision problem of the control scheme based on effective matrix in flatness control,the predictive control was introduced into the control system and the effective matrix-predictive flatness control method was proposed by combining the merits of the two methods.Simulation experiment was conducted on 900HC reversible cold roll.The performance of effective matrix method and the effective matrix-predictive control method were compared,and the results demonstrate the validity of the effective matrix-predictive control method.
基金supported by the Foundation of Key Laboratory of Near-Surface。
文摘With the development of technology, the relevant performance of unmanned aerial vehicles(UAVs) has been greatly improved, and various highly maneuverable UAVs have been developed, which puts forward higher requirements on target tracking technology. Strong maneuvering refers to relatively instantaneous and dramatic changes in target acceleration or movement patterns, as well as continuous changes in speed,angle, and acceleration. However, the traditional UAV tracking algorithm model has poor adaptability and large amount of calculation. This paper applies support vector regression(SVR)to the interacting multiple model(IMM) algorithm. The simulation results show that the improved algorithm has higher tracking accuracy for highly maneuverable targets than the original algorithm, and can adjust parameters adaptively, making it more adaptable.
基金the National Defense Science and Technology Key Laboratory Fund of China(XM2020XT1023).
文摘As one of the most important part of weapon system of systems(WSoS),quantitative evaluation of reconnaissance satellite system(RSS)is indispensable during its construction and application.Aiming at the problem of nonlinear effectiveness evaluation under small sample conditions,we propose an evaluation method based on support vector regression(SVR)to effectively address the defects of traditional methods.Considering the performance of SVR is influenced by the penalty factor,kernel type,and other parameters deeply,the improved grey wolf optimizer(IGWO)is employed for parameter optimization.In the proposed IGWO algorithm,the opposition-based learning strategy is adopted to increase the probability of avoiding the local optima,the mutation operator is used to escape from premature convergence and differential convergence factors are applied to increase the rate of convergence.Numerical experiments of 14 test functions validate the applicability of IGWO algorithm dealing with global optimization.The index system and evaluation method are constructed based on the characteristics of RSS.To validate the proposed IGWO-SVR evaluation method,eight benchmark data sets and combat simulation are employed to estimate the evaluation accuracy,convergence performance and computational complexity.According to the experimental results,the proposed method outperforms several prediction based evaluation methods,verifies the superiority and effectiveness in RSS operational effectiveness evaluation.
文摘Considering the modeling errors of on-board self-tuning model in the fault diagnosis of aero-engine, a new mechanism for compensating the model outputs is proposed. A discrete series predictor based on multi-outputs least square support vector regression (LSSVR) is applied to the compensation of on-board self-tuning model of aero-engine, and particle swarm optimization (PSO) is used to the kernels selection of multi-outputs LSSVR. The method need not reconstruct the model of aero-engine because of the differences in the individuals of the same type engines and engine degradation after use. The concrete steps for the application of the method are given, and the simulation results show the effectiveness of the algorithm.
文摘为提高光伏发电功率预测精度,提出一种基于外生因素及季节性的差分自回归移动平均SARIMAX(seasonal autoregressive integrated moving average with exogenous factors)并结合优化支持向量回归SVR(support vector regression)的光伏发电功率预测方法。首先,采用相关性特征法聚类气象条件中关键气象因子,以消除数据冗余并降低ARIMAX模型的复杂性;其次,在ARIMAX模型中引入季节性因素,构建SARIMAX模型来捕捉数据的季节性变化;最后,使用SARIMAX模型的拟合残差其作为SVR模型的输入,进一步拟合数据的非线性。通过仿真算例分析表明,所提方法可显著提高光伏发电功率预测精度。
文摘针对以往船舶备件需求预测精度不高,无法满足船舶综合保障的实际问题,文章建立一种基于改进红狐优化算法(improved red fox optimization,IRFO)的支持向量机回归(support vector regression,SVR)的船舶备件预测模型。为进一步提高红狐优化算法(red fox optimization,RFO)的寻优精度,重构其全局搜索公式,并融合精英反向学习策略。采用基准测试函数对IRFO算法进行仿真实验,实验表明,IRFO算法比RFO算法、粒子群算法、灰狼优化算法寻优能力更强,综合性能更优。基于船舶备件历史数据,建立IRFO-SVR船舶备件预测模型,通过对比其他模型的预测结果,表明IRFO-SVR的预测效果更佳。
文摘为给小麦的长势监测与农艺决策提供科学依据,利用高光谱技术实现了小麦冠层叶绿素含量的估测。通过分析18种高光谱指数对叶绿素的估测能力,筛选出可敏感表征叶绿素含量的指数REP,利用地面光谱数据为样本集,以最小二乘支持向量回归(least squares support vector regression,LS-SVR)算法建立了小麦冠层叶绿素含量反演模型,其校正决定系数C-R2与预测决定系数P-R2分别为0.751与0.722,在各指数中反演精度最高。进一步分析表明,REP对叶绿素含量以及LAI值较高与较低的样本均具备良好的预测能力,可有效避免样本取值范围以及冠层郁闭度等因素对叶绿素含量估测的影响。利用LS-SVR反演模型完成了OMIS影像叶绿素含量的遥感填图,并以地面实测值进行检验,其拟合模型R2与RMSE值分别为0.676与1.715。结果表明,高光谱指数REP所建立的LS-SVR模型实现了叶绿素含量的准确估测,可用于小麦叶绿素含量信息的快速、无损获取。
文摘为改进小麦冠层含氮率的高光谱测定模型,以正交试验筛选出小波去噪的最优参数组合(小波类型取haar,分解层数为5,阈值方案选择Fixed form threshold,噪声结构定为Unscaled white noise),并利用去噪后的小麦冠层光谱建立偏最小二乘回归(PLS)模型,对不同预处理方法进行比较分析。发现采用小波去噪结合一阶导数能最有效消除原始光谱的背景信息,此时PLS模型校正集均方根误差(RMSEC)为0.260,预测集均方根误差(RMSEP)为0.288。对经一阶导数结合小波去噪后的光谱用主成分分析(PCA)进行降维,以前6个主成份为输入变量,建立最小二乘支撑向量机回归模型(LS-SVR),其RMSEC与RMSEP分别为0.154与0.259,具有比PLS模型更高的精度。结果表明:以小波去噪结合一阶导数去除小麦冠层反射光谱中的土壤背景信息以提高模型的精度是可行的,且LS-SVR是建模的优选方法。