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Settlement Prediction for Buildings Surrounding Foundation Pits Based on a Stationary Auto-regression Model 被引量:4
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作者 TIAN Lin-ya HUA Xi-sheng 《Journal of China University of Mining and Technology》 EI 2007年第1期78-81,共4页
To ensure the safety of buildings surrounding foundation pits, a study was made on a settlement monitoring and trend prediction method. A statistical testing method for analyzing the stability of a settlement monitori... To ensure the safety of buildings surrounding foundation pits, a study was made on a settlement monitoring and trend prediction method. A statistical testing method for analyzing the stability of a settlement monitoring datum has been discussed. According to a comprehensive survey, data of 16 stages at operating control point, were verified by a standard t test to determine the stability of the operating control point. A stationary auto-regression model, AR(p), used for the observation point settlement prediction has been investigated. Given the 16 stages of the settlement data at an observation point, the applicability of this model was analyzed. Settlement of last four stages was predicted using the stationary auto-regression model AR (1); the maximum difference between predicted and measured values was 0.6 mm, indicating good prediction results of the model. Hence, this model can be applied to settlement predictions for buildings surrounding foundation pits. 展开更多
关键词 foundation pit BUILDING settlement monitoring datum stability stationary auto-regression model settlement prediction
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Forecasting Gas Consumption Based on a Residual Auto-Regression Model and Kalman Filtering Algorithm 被引量:10
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作者 ZHU Meifeng WU Qinglong WANG Yongqin 《Journal of Resources and Ecology》 CSCD 2019年第5期546-552,共7页
Consumption of clean energy has been increasing in China.Forecasting gas consumption is important to adjusting the energy consumption structure in the future.Based on historical data of gas consumption from 1980 to 20... Consumption of clean energy has been increasing in China.Forecasting gas consumption is important to adjusting the energy consumption structure in the future.Based on historical data of gas consumption from 1980 to 2017,this paper presents a weight method of the inverse deviation of fitted value,and a combined forecast based on a residual auto-regression model and Kalman filtering algorithm is used to forecast gas consumption.Our results show that:(1)The combination forecast is of higher precision:the relative errors of the residual auto-regressive model,the Kalman filtering algorithm and the combination model are within the range(–0.08,0.09),(–0.09,0.32)and(–0.03,0.11),respectively.(2)The combination forecast is of greater stability:the variance of relative error of the residual auto-regressive model,the Kalman filtering algorithm and the combination model are 0.002,0.007 and 0.001,respectively.(3)Provided that other conditions are invariant,the predicted value of gas consumption in 2018 is 241.81×10~9 m^3.Compared to other time-series forecasting methods,this combined model is less restrictive,performs well and the result is more credible. 展开更多
关键词 residual auto-regressive model Kalman filtering algorithm inverse fitting value deviation method combined forecast
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Auto-regressive模型在全国婴儿死亡率拟合中的应用 被引量:2
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作者 刘松 李晓妹 +2 位作者 刘健 刘晓冬 李向云 《中国卫生统计》 CSCD 北大核心 2011年第4期366-368,共3页
目的分析我国1991~2007年的婴儿死亡率的变化规律,探讨Auto-regressive模型在非平稳时间序列数据拟合中的适用性和有效性。方法对我国婴儿死亡率数据序列的平稳性和纯随机性进行预处理,然后利用SAS程序拟合Auto-regressive模型,并根据... 目的分析我国1991~2007年的婴儿死亡率的变化规律,探讨Auto-regressive模型在非平稳时间序列数据拟合中的适用性和有效性。方法对我国婴儿死亡率数据序列的平稳性和纯随机性进行预处理,然后利用SAS程序拟合Auto-regressive模型,并根据决定系数R2评价其拟合效果。结果我国婴儿死亡率为非平稳时间序列,总体呈现随时间线性递减的长期趋势,同时又包含一定的随机信息,采用Auto-regressive模型拟合效果较好。结论 Auto-regressive模型可以用来拟合我国婴儿死亡率的数据,并可以推广应用到卫生领域中其他具有非平稳时间序列特征的数据,为相关卫生管理部门制定策略措施提供科学的理论依据。 展开更多
关键词 auto-regressive模型 婴儿死亡率 拟合
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基于(残差)Auto-Regressive模型利用MATLAB解决经济非平稳时间序列的预测分析 被引量:2
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作者 曾慧 郑彩萍 王涛涛 《佳木斯大学学报(自然科学版)》 CAS 2008年第1期71-74,共4页
利用(残差)Auto—Regressive模型对我国1978年—2005年的GDP进行建模与预测,显示出该拟合模型优于ARIMA模型,并运行MATLAB软件,实现了建模仿真的全过程,显示了MATLAB的强大科学计算与可视化功能.
关键词 (残差)auto-regressive 建模 预测 程序
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Application of Seasonal Auto-regressive Integrated Moving Average Model in Forecasting the Incidence of Hand-foot-mouth Disease in Wuhan,China 被引量:17
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作者 彭颖 余滨 +3 位作者 汪鹏 孔德广 陈邦华 杨小兵 《Journal of Huazhong University of Science and Technology(Medical Sciences)》 SCIE CAS 2017年第6期842-848,共7页
Outbreaks of hand-foot-mouth disease(HFMD) have occurred many times and caused serious health burden in China since 2008. Application of modern information technology to prediction and early response can be helpful ... Outbreaks of hand-foot-mouth disease(HFMD) have occurred many times and caused serious health burden in China since 2008. Application of modern information technology to prediction and early response can be helpful for efficient HFMD prevention and control. A seasonal auto-regressive integrated moving average(ARIMA) model for time series analysis was designed in this study. Eighty-four-month(from January 2009 to December 2015) retrospective data obtained from the Chinese Information System for Disease Prevention and Control were subjected to ARIMA modeling. The coefficient of determination(R^2), normalized Bayesian Information Criterion(BIC) and Q-test P value were used to evaluate the goodness-of-fit of constructed models. Subsequently, the best-fitted ARIMA model was applied to predict the expected incidence of HFMD from January 2016 to December 2016. The best-fitted seasonal ARIMA model was identified as(1,0,1)(0,1,1)12, with the largest coefficient of determination(R^2=0.743) and lowest normalized BIC(BIC=3.645) value. The residuals of the model also showed non-significant autocorrelations(P_(Box-Ljung(Q))=0.299). The predictions by the optimum ARIMA model adequately captured the pattern in the data and exhibited two peaks of activity over the forecast interval, including a major peak during April to June, and again a light peak for September to November. The ARIMA model proposed in this study can forecast HFMD incidence trend effectively, which could provide useful support for future HFMD prevention and control in the study area. Besides, further observations should be added continually into the modeling data set, and parameters of the models should be adjusted accordingly. 展开更多
关键词 hand-foot-mouth disease forecast surveillance modeling auto-regressive integrated moving average(ARIMA)
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CONSTRUCTION OF POLYNOMIAL MATRIX USING BLOCK COEFFICIENT MATRIX REPRESENTATION AUTO-REGRESSIVE MOVING AVERAGE MODEL FOR ACTIVELY CONTROLLED STRUCTURES 被引量:1
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作者 李春祥 周岱 《Acta Mechanica Sinica》 SCIE EI CAS CSCD 2004年第6期661-667,共7页
The polynomial matrix using the block coefficient matrix representation auto-regressive moving average(referred to as the PM-ARMA)model is constructed in this paper for actively controlled multi-degree-of-freedom(MDOF... The polynomial matrix using the block coefficient matrix representation auto-regressive moving average(referred to as the PM-ARMA)model is constructed in this paper for actively controlled multi-degree-of-freedom(MDOF)structures with time-delay through equivalently transforming the preliminary state space realization into the new state space realization.The PM-ARMA model is a more general formulation with respect to the polynomial using the coefficient representation auto-regressive moving average(ARMA)model due to its capability to cope with actively controlled structures with any given structural degrees of freedom and any chosen number of sensors and actuators.(The sensors and actuators are required to maintain the identical number.)under any dimensional stationary stochastic excitation. 展开更多
关键词 actively controlled MDOF structures stationary stochastic processes polynomial matrix auto-regressive moving average
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A Study of Wind Statistics Through Auto-Regressive and Moving-Average (ARMA) Modeling 被引量:1
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作者 John Z.YIM(尹彰) +1 位作者 ChunRen CHOU(周宗仁) 《China Ocean Engineering》 SCIE EI 2001年第1期61-72,共12页
Statistical properties of winds near the Taichung Harbour are investigated. The 26 years'incomplete data of wind speeds, measured on an hourly basis, are used as reference. The possibility of imputation using simu... Statistical properties of winds near the Taichung Harbour are investigated. The 26 years'incomplete data of wind speeds, measured on an hourly basis, are used as reference. The possibility of imputation using simulated results of the Auto-Regressive (AR), Moving-Average (MA), and/ or Auto-Regressive and Moving-Average (ARMA) models is studied. Predictions of the 25-year extreme wind speeds based upon the augmented data are compared with the original series. Based upon the results, predictions of the 50- and 100-year extreme wind speeds are then made. 展开更多
关键词 auto-regressive and Moving-Average (ARMA) modeling probability distributions extreme wind speeds
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基于Auto-Regressive的河北省旅游接待人数预测研究
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作者 聂再冉 李志新 李志国 《应用数学进展》 2020年第10期1710-1721,共12页
旅游人数是发展旅游业的重要指标,对河北省未来接待旅游人数的预测一直受到河北省旅游局的重视。本文通过以1990年~2019年河北省旅游数据为依托,首先,从市场、景区、政策三个方面分析了河北省旅游业现状,然后进行了河北省历年来旅游接... 旅游人数是发展旅游业的重要指标,对河北省未来接待旅游人数的预测一直受到河北省旅游局的重视。本文通过以1990年~2019年河北省旅游数据为依托,首先,从市场、景区、政策三个方面分析了河北省旅游业现状,然后进行了河北省历年来旅游接待人数数据的平稳性和白噪声检验,分别运用非平稳时间序列的两种残差自回归模型方法(因变量关于时间的回归模型和延迟因变量回归模型)对以往河北省旅游接待人数建立模型。研究结果发现,前者模型拟合效果较好,并对未来旅游人数进行短期预测。最后为促进河北省旅游业的发展提出了一些相关建议。 展开更多
关键词 时间序列分析 残差自回归(auto-regressive) 旅游接待人数
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Parametric SNR Estimation Based on Auto-Regressive Model in AWGN Channels 被引量:1
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作者 Dan-Ping Bai Qun Wan Xian-Sheng Guo Yan Wang 《Journal of Electronic Science and Technology of China》 2008年第1期21-24,共4页
Signal-to-noise ratio(SNR)estimation for signal which can be modeled by Auto-regressive(AR)process is studied in this paper.First,the conventional frequency domain method is introduced to estimate the SNR for the ... Signal-to-noise ratio(SNR)estimation for signal which can be modeled by Auto-regressive(AR)process is studied in this paper.First,the conventional frequency domain method is introduced to estimate the SNR for the received signal in additive white Gauss noise(AWGN)channel.Then a parametric SNR estimation algorithm is proposed by taking advantage of the AR model information of the received signal.The simulation results show that the proposed parametric method has better performance than the conventional frequency doma in method in case of AWGN channel. 展开更多
关键词 auto-regressive model AWGN channel model information SNR (Signal-to-noise ratio) estimation.
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Optimal zero-crossing group selection method of the absolute gravimeter based on improved auto-regressive moving average model
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作者 牟宗磊 韩笑 胡若 《Chinese Physics B》 SCIE EI CAS CSCD 2023年第11期347-354,共8页
An absolute gravimeter is a precision instrument for measuring gravitational acceleration, which plays an important role in earthquake monitoring, crustal deformation, national defense construction, etc. The frequency... An absolute gravimeter is a precision instrument for measuring gravitational acceleration, which plays an important role in earthquake monitoring, crustal deformation, national defense construction, etc. The frequency of laser interference fringes of an absolute gravimeter gradually increases with the fall time. Data are sparse in the early stage and dense in the late stage. The fitting accuracy of gravitational acceleration will be affected by least-squares fitting according to the fixed number of zero-crossing groups. In response to this problem, a method based on Fourier series fitting is proposed in this paper to calculate the zero-crossing point. The whole falling process is divided into five frequency bands using the Hilbert transformation. The multiplicative auto-regressive moving average model is then trained according to the number of optimal zero-crossing groups obtained by the honey badger algorithm. Through this model, the number of optimal zero-crossing groups determined in each segment is predicted by the least-squares fitting. The mean value of gravitational acceleration in each segment is then obtained. The method can improve the accuracy of gravitational measurement by more than 25% compared to the fixed zero-crossing groups method. It provides a new way to improve the measuring accuracy of an absolute gravimeter. 展开更多
关键词 absolute gravimeter laser interference fringe Fourier series fitting honey badger algorithm mul-tiplicative auto-regressive moving average(MARMA)model
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基于NARX的蒸汽发生器液位异常检测方法 被引量:1
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作者 周光荣 杨森权 +1 位作者 郑胜 易爽 《科学技术与工程》 北大核心 2024年第34期14672-14678,共7页
蒸汽发生器液位是评价核电机组运行状态的重要参数指标之一,由于传统预设固定液位报警阈值的监测方法无法在触发报警信号前及早发现异常,为蒸汽发生器液位建立异常检测模型很有必要。基于蒸汽发生器复杂非线性系统的特点,通过带外源输... 蒸汽发生器液位是评价核电机组运行状态的重要参数指标之一,由于传统预设固定液位报警阈值的监测方法无法在触发报警信号前及早发现异常,为蒸汽发生器液位建立异常检测模型很有必要。基于蒸汽发生器复杂非线性系统的特点,通过带外源输入的非线性自回归(nonlinear auto-regressive with exogenous inputs, NARX)方法研究了蒸汽发生器在正常工作模式下液位及相关参数间的耦合关系模型。模型以历史液位值和相关参数作为输入回归得到下一时刻的液位预测值,并通过预测值与实际观测值残差的大小,来判断蒸汽发生器多传感器系统当前工作状态是否异常。与触发预设液位阈值后再报警的传统状态监测方法相比,结果表明该方法能够检测到液位与相关参数间的耦合关系偏移,并在微小变化发生时就检测到异常,从而实现蒸汽发生器液位的状态监测和预警。同时经真实核电厂数据验证,可见该模型能够对液位实现准确的回归预测,并在依照真实故障类型构建的异常数据集验证实验中,取得了较好的异常检测效果。 展开更多
关键词 蒸汽发生器 液位 带外源输入的非线性自回归(nonlinear auto-regressive with exogenous inputs NARX) 异常检测
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Identification of the Hammerstein nonlinear system with noisy output measurements
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作者 Qiming Zha Feng Li Ranran Liu 《Control Theory and Technology》 EI CSCD 2024年第2期203-212,共10页
In this research, we present a methodology to identify the Hammerstein nonlinear system with noisy output measurements. The Hammerstein system presented is comprised of neural fuzzy model (NFM) as its static nonlinear... In this research, we present a methodology to identify the Hammerstein nonlinear system with noisy output measurements. The Hammerstein system presented is comprised of neural fuzzy model (NFM) as its static nonlinear block and auto-regressive with extra input (ARX) model as its dynamic linear block, and a two-step procedure is accomplished using signal combination. In the first step, in the case of input–output of Gaussian signals, the correlation function-based least squares (CF-LS) technique is utilized to identify the linear block, solving the problem that the intermediate variable connecting nonlinear and linear blocks cannot be measured. In the second step, to improve the identification accuracy of the nonlinear block parameters, an improved particle swarm optimization technique is developed under input–output of random signals. The validity and accuracy of the presented scheme are verified by a numerical simulation and a practical nonlinear process, and the results illustrate that the proposed methodology can identify well the Hammerstein nonlinear system with noisy output measurements. 展开更多
关键词 Hammerstein nonlinear system Signal combination auto-regressive with extra input Improved particle swarm optimization
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A multi-scale second-order autoregressive recursive filter approach for the sea ice concentration analysis
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作者 Lu Yang Xuefeng Zhang 《Acta Oceanologica Sinica》 SCIE CAS CSCD 2024年第3期115-126,共12页
To effectively extract multi-scale information from observation data and improve computational efficiency,a multi-scale second-order autoregressive recursive filter(MSRF)method is designed.The second-order autoregress... To effectively extract multi-scale information from observation data and improve computational efficiency,a multi-scale second-order autoregressive recursive filter(MSRF)method is designed.The second-order autoregressive filter used in this study has been attempted to replace the traditional first-order recursive filter used in spatial multi-scale recursive filter(SMRF)method.The experimental results indicate that the MSRF scheme successfully extracts various scale information resolved by observations.Moreover,compared with the SMRF scheme,the MSRF scheme improves computational accuracy and efficiency to some extent.The MSRF scheme can not only propagate to a longer distance without the attenuation of innovation,but also reduce the mean absolute deviation between the reconstructed sea ice concentration results and observations reduced by about 3.2%compared to the SMRF scheme.On the other hand,compared with traditional first-order recursive filters using in the SMRF scheme that multiple filters are executed,the MSRF scheme only needs to perform two filter processes in one iteration,greatly improving filtering efficiency.In the two-dimensional experiment of sea ice concentration,the calculation time of the MSRF scheme is only 1/7 of that of SMRF scheme.This means that the MSRF scheme can achieve better performance with less computational cost,which is of great significance for further application in real-time ocean or sea ice data assimilation systems in the future. 展开更多
关键词 second-order auto-regressive filter multi-scale recursive filter sea ice concentration three-dimensional variational data assimilation
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关中平原渠井双灌区地下水循环对环境变化的响应 被引量:17
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作者 李萍 魏晓妹 +1 位作者 降亚楠 冯东溥 《农业工程学报》 EI CAS CSCD 北大核心 2014年第18期123-131,共9页
为促进陕西关中平原渠井双灌区地下水良性循环,保障灌区水资源高效安全利用,以泾惠渠灌区为例,分析了灌区多年来地下水系统外部环境因素及地下水循环要素的变化特征,基于多变量时间序列CAR(controlled auto-regressive)模型建立了地下... 为促进陕西关中平原渠井双灌区地下水良性循环,保障灌区水资源高效安全利用,以泾惠渠灌区为例,分析了灌区多年来地下水系统外部环境因素及地下水循环要素的变化特征,基于多变量时间序列CAR(controlled auto-regressive)模型建立了地下水位动态对环境变化的响应模型,利用验证后的模型对灌区不同环境变化情景下的地下水位埋深进行了模拟。研究结果表明:降水、蒸发、渠首引水、渠井用水比例是影响灌区地下水循环的主要外部环境因素;降水量减少、蒸发量增加,地下水各项补给量减少、排泄量增加,使得地下水位逐年下降,近34 a累计下降11.8 m;在多年平均降水量情景Ⅰ下(近56 a均值:513 mm),维持灌区地下水良性循环的适宜渠井用水比例为1.53,在多年平均降水量减少5%,即降水情景Ⅱ下(487 mm),适宜渠井用水比例为1.61。环境变化下不同渠井用水方案的研究,有利于灌区地下水的良性循环,可为灌区制定高效安全用水对策提供依据。 展开更多
关键词 灌溉 模型 水分管理 地下水循环 泾惠渠灌区 多变量分析 CAR(Controlled auto-regressive)模型
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基于ARIMA-NARNN组合模型的血吸虫感染率预测研究 被引量:9
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作者 王克伟 吴郁 +1 位作者 李金平 蒋玉宇 《中国血吸虫病防治杂志》 CAS CSCD 北大核心 2016年第6期630-634,共5页
目的探讨ARIMA-NARNN组合模型预测血吸虫感染率的有效性。方法利用2005年1月至2015年2月江苏省血吸虫感染率资料分别建立ARIMA模型、NARNN模型和ARIMA-NARNN组合模型,比较各模型的拟合和预测效果。结果相比较ARIMA模型和NARNN模型,ARIMA... 目的探讨ARIMA-NARNN组合模型预测血吸虫感染率的有效性。方法利用2005年1月至2015年2月江苏省血吸虫感染率资料分别建立ARIMA模型、NARNN模型和ARIMA-NARNN组合模型,比较各模型的拟合和预测效果。结果相比较ARIMA模型和NARNN模型,ARIMA-NARNN组合模型预测样本的MSE、MAE和MAPE均最小,分别为0.011 1、0.090 0和0.282 4。结论 ARIMA-NARNN组合模型能有效模拟和预测血吸虫感染率,具有较好的推广应用价值。 展开更多
关键词 自回归滑动平均模型 非线性自回归神经网络 时间序列 血吸虫病 预测 AUTOREGRESSIVE integrated MOVING AVERAGE model (ARIMA) Nonlinear auto-regressive neural network (NARNN)
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Identification Method for RLG Random Errors Based on Allan Variance and Equivalent Theorem 被引量:3
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作者 唐江河 付振宪 邓正隆 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2009年第3期273-278,共6页
An identification method using Allan variance and equivalent theorem is proposed to identify non-stationary sensor errors mixed out of different simple noises. This method firstly derives the discrete Allan variances ... An identification method using Allan variance and equivalent theorem is proposed to identify non-stationary sensor errors mixed out of different simple noises. This method firstly derives the discrete Allan variances of all component noises inherent in noise sources in terms of their different equations; then the variances are used to estimate the parameters of all component noise models; finally, the original errors are represented by the sum of the non-stationary component noise model and the equivalent m... 展开更多
关键词 Allan variance equivalent theorem NON-STATIONARY auto-regressive and moving average model ring laser gyro
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基于广义逆矩阵的AR模型参数估计算法 被引量:1
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作者 张莹 王太勇 黄国龙 《机械强度》 CAS CSCD 北大核心 2010年第6期890-893,共4页
AR(auto-regressive)模型是时序建模分析中常用的时间序列模型。在模型参数的最小二乘估计和定阶的过程中,要求线性方程组必须有解。针对这一问题,文中引入自相关系数矩阵对线性方程组进行化简,并提出基于广义逆矩阵理论的参数估计方法... AR(auto-regressive)模型是时序建模分析中常用的时间序列模型。在模型参数的最小二乘估计和定阶的过程中,要求线性方程组必须有解。针对这一问题,文中引入自相关系数矩阵对线性方程组进行化简,并提出基于广义逆矩阵理论的参数估计方法。该算法对线性方程组是否有解没有限制,无需事先判定,从而解决建模过程中线性方程组无解情况下的参数估计问题。实验证明该法可有效地对设备运行状态进行趋势预测,具有一定的工程意义。 展开更多
关键词 时间序列 AR(auto-regressive)模型 参数估计 广义逆矩阵
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Joint application of feature extraction based on EMD-AR strategy and multi-class classifier based on LS-SVM in EMG motion classification 被引量:5
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作者 YAN Zhi-guo WANG Zhi-zhong REN Xiao-mei 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2007年第8期1246-1255,共10页
This paper presents an effective and efficient combination of feature extraction and multi-class classifier for motion classification by analyzing the surface electromyografic(sEMG) signals. In contrast to the existin... This paper presents an effective and efficient combination of feature extraction and multi-class classifier for motion classification by analyzing the surface electromyografic(sEMG) signals. In contrast to the existing methods,considering the non-stationary and nonlinear characteristics of EMG signals,to get the more separable feature set,we introduce the empirical mode decomposition(EMD) to decompose the original EMG signals into several intrinsic mode functions(IMFs) and then compute the coefficients of autoregressive models of each IMF to form the feature set. Based on the least squares support vector machines(LS-SVMs) ,the multi-class classifier is designed and constructed to classify various motions. The results of contrastive experiments showed that the accuracy of motion recognition is improved with the described classification scheme. Furthermore,compared with other classifiers using different features,the excellent performance indicated the potential of the SVM techniques embedding the EMD-AR kernel in motion classification. 展开更多
关键词 Electromyografic signal Empirical mode decomposition (EMD) auto-regression model Wavelet packet transform Least squares support vector machines (LS-SVM) Neural network
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对数回归-ARMA周期预测模型及其应用 被引量:1
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作者 赵凌 张健 陈涛 《水资源与水工程学报》 2010年第6期19-21,25,共4页
对成都市月供水量时序进行周期分析。在利用对数变换后的回归模型基础上,建立ARMA(1,5)时间序列模型,给出了月供水量时序的预测模型,并根据此模型对2010年全年月供水量进行预测。实例表明:本文提出的基于对数回归-ARMA月供水时序周期预... 对成都市月供水量时序进行周期分析。在利用对数变换后的回归模型基础上,建立ARMA(1,5)时间序列模型,给出了月供水量时序的预测模型,并根据此模型对2010年全年月供水量进行预测。实例表明:本文提出的基于对数回归-ARMA月供水时序周期预测模型,能更好地挖掘供水量时序的规律。 展开更多
关键词 auto-regressive模型 对数回归 季节效应 ARMA模型 城市供水量
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EXPERIMENTS WITH SHORT-TERM CLIMATE PREDICTION MODELS ON SSTA OVER THE NINO OCEANIC REGION 被引量:1
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作者 丁裕国 江志红 朱艳峰 《Journal of Tropical Meteorology》 SCIE 1999年第1期1-8,共8页
Predictions of averaged SST monthly anomalous series for Nino 1-4 regions in the context of auto-adaptive filter are made using a model combining the singular spectrum analysis (SSA) and auto-regression (AR). The resu... Predictions of averaged SST monthly anomalous series for Nino 1-4 regions in the context of auto-adaptive filter are made using a model combining the singular spectrum analysis (SSA) and auto-regression (AR). The results have shown that the scheme is efticient in forward forecaning of the strong ENSO event in 1997- 1998, it is of high reliability in retrospective forecasting of three corresponding historical strong ENSO events. It is seen that the scheme has stable skill and large accuracy for experiments of both independent samples and real cases.With modifications, the SSA-AR scheme is expected to become an efficient model in routine predictions of ENSO. 展开更多
关键词 SINGULAR Spectrum Analysis ENSO EVENT CLIMATE prediction auto-regression model
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