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电能质量扰动识别的不同时频分析方法研究 被引量:5
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作者 张立国 张淑清 +4 位作者 李莎莎 乔永静 张航飞 李明星 贺朋 《计量学报》 CSCD 北大核心 2017年第3期345-350,共6页
分析了EEMD、LMD、ITD的算法、特点及分解不同扰动信号的实现步骤。经过实验模拟,对比分解所得效果图,得到适合各种电能质量扰动信号的最佳分解方法:对于电压暂升、电压暂降、电压中断幅值类扰动信号用EEMD方法分解效果最佳;脉冲暂态扰... 分析了EEMD、LMD、ITD的算法、特点及分解不同扰动信号的实现步骤。经过实验模拟,对比分解所得效果图,得到适合各种电能质量扰动信号的最佳分解方法:对于电压暂升、电压暂降、电压中断幅值类扰动信号用EEMD方法分解效果最佳;脉冲暂态扰动EEMD和ITD均可,ITD方法更快、定位更准;暂态振荡信号用ITD方法效果较好;电压闪变扰动EEMD分解效果较好;谐波信号用ITD分解效果较好。 展开更多
关键词 计量学 电能质量扰动信号 总体平均经验模式分解 局部均值分解 固有时间尺度分解
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A Novel Hybrid Intelligent Prediction Model for Valley Deformation: A Case Study in Xiluodu Reservoir Region, China 被引量:1
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作者 Mengcheng Sun Weiya Xu +3 位作者 Huanling Wang Qingxiang Meng Long Yan Wei-Chau Xie 《Computers, Materials & Continua》 SCIE EI 2021年第1期1057-1074,共18页
The narrowing deformation of reservoir valley during the initial operation period threatens the long-term safety of the dam,and an accurate prediction of valley deformation(VD)remains a challenging part of risk mitiga... The narrowing deformation of reservoir valley during the initial operation period threatens the long-term safety of the dam,and an accurate prediction of valley deformation(VD)remains a challenging part of risk mitigation.In order to enhance the accuracy of VD prediction,a novel hybrid model combining Ensemble empirical mode decomposition based interval threshold denoising(EEMD-ITD),Differential evolutions—Shuffled frog leaping algorithm(DE-SFLA)and Least squares support vector machine(LSSVM)is proposed.The non-stationary VD series is firstly decomposed into several stationary subseries by EEMD;then,ITD is applied for redundant information denoising on special sub-series,and the denoised deformation is divided into the trend and periodic deformation components.Meanwhile,several relevant triggering factors affecting the VD are considered,from which the input features are extracted by Grey relational analysis(GRA).After that,DE-SFLA-LSSVM is separately performed to predict the trend and periodic deformation with the optimal inputs.Ultimately,the two individual forecast components are reconstructed to obtain the final predicted values.Two VD series monitored in Xiluodu reservoir region are utilized to verify the proposed model.The results demonstrate that:(1)Compared with Discrete wavelet transform(DWT),better denoising performance can be achieved by EEMD-ITD;(2)Using GRA to screen the optimal input features can effectively quantify the deformation response relationship to the triggering factors,and reduce the model complexity;(3)The proposed hybrid model in this study displays superior performance on some compared models(e.g.,LSSVM,Backward Propagation neural network(BPNN),and DE-SFLA-BPNN)in terms of forecast accuracy. 展开更多
关键词 Valley deformation prediction multiple triggering factors DE-SFLALSSVM eemd-itd Xiluodu hydropower station
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