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Forecasting China’s natural gas consumption based on a combination model 被引量:10
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作者 Gang Xu Weiguo W ang 《Journal of Natural Gas Chemistry》 EI CAS CSCD 2010年第5期493-496,共4页
Ensuring a sufficient energy supply is essential to a country. Natural gas constitutes a vital part in energy supply and therefore forecasting natural gas consumption reliably and accurately is an essential part of a ... Ensuring a sufficient energy supply is essential to a country. Natural gas constitutes a vital part in energy supply and therefore forecasting natural gas consumption reliably and accurately is an essential part of a country's energy policy. Over the years, studies have shown that a combinative model gives better projected results compared to a single model. In this study, we used Polynomial Curve and Moving Average Combination Projection (PCMACP) model to estimate the future natural gas consumption in China from 2009 to 2015. The new proposed PCMACP model shows more reliable and accurate results: its Mean Absolute Percentage Error (MAPE) is less than those of any previous models within the investigated range. According to the PCMACP model, the average annual growth rate will increase for the next 7 years and the amount of natural gas consumption will reach 171600 million cubic meters in 2015 in China. 展开更多
关键词 natural gas consumption forecasting combination model
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Wind-speed forecasting model based on DBN-Elman combined with improved PSO-HHT
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作者 Wei Liu Feifei Xue +4 位作者 Yansong Gao Wumaier Tuerxun Jing Sun Yi Hu Hongliang Yuan 《Global Energy Interconnection》 EI CSCD 2023年第5期530-541,共12页
Random and fluctuating wind speeds make it difficult to stabilize the wind-power output,which complicates the execution of wind-farm control systems and increases the response frequency.In this study,a novel predictio... Random and fluctuating wind speeds make it difficult to stabilize the wind-power output,which complicates the execution of wind-farm control systems and increases the response frequency.In this study,a novel prediction model for ultrashort-term wind-speed prediction in wind farms is developed by combining a deep belief network,the Elman neural network,and the Hilbert-Huang transform modified using an improved particle swarm optimization algorithm.The experimental results show that the prediction results of the proposed deep neural network is better than that of shallow neural networks.Although the complexity of the model is high,the accuracy of wind-speed prediction and stability are also high.The proposed model effectively improves the accuracy of ultrashort-term wind-speed forecasting in wind farms. 展开更多
关键词 Wind-speed forecasting DBN ELMAN HHT combined neural network
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A New Type of Combination Forecasting Method Based on PLS——The Application of It in Cigarette Sales Forecasting 被引量:1
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作者 Biao Luo Liang Wan +1 位作者 Wei-Wei Yan Jie-Jie Yu 《American Journal of Operations Research》 2012年第3期408-416,共9页
Cigarette market is a kind of monopoly market which is closed loop running, it depends on the plan mechanism to schedule producing, supplying and selling, but the “bullwhip effect” still exists. So it has a fundamen... Cigarette market is a kind of monopoly market which is closed loop running, it depends on the plan mechanism to schedule producing, supplying and selling, but the “bullwhip effect” still exists. So it has a fundamental significance to do sales forecasting work. It needs to considerate the double trend characteristics, history sales data and other main factors that affect cigarette sales. This paper depends on the panel data of A province’s cigarette sales, first we established three single forecasting models, after getting the predicted value of these single models, then using the combination forecasting method which based on PLS to predict the province’s cigarette sales of the next year. The results show that the prediction accuracy is good, which could provide a certain reference to cigarette sales forecasting in A province. 展开更多
关键词 PLS ARMA Time Series METHOD combination forecasting METHOD SALES forecast
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The Optimal Weighted Combinational Forecasting with Constant Terms 被引量:1
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作者 ZHANG Jian-guo 《Chinese Quarterly Journal of Mathematics》 CSCD 北大核心 2007年第1期109-113,共5页
我们基于与经常的术语预报的最佳的加权的 combinational 建议一个模型,没有经常的术语,象模型和相应模型的一种关系一样给重量和平均错误的公式,并且比较这些模型。最后,一个例子被给,它证明恰当的精确被提高了。
关键词 常数项 组合预测 加权 优化
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Forecasting Alzheimer’s Disease Using Combination Model Based on Machine Learning
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作者 He Li Yuhang Wu +2 位作者 Yingnan Zhang Tao Wei Yufeng Gui 《Applied Mathematics》 2018年第4期403-417,共15页
As the acceleration of aged population tendency, building models to forecast Alzheimer’s Disease (AD) is essential. In this article, we surveyed 1157 interviewees. By analyzing the results using three machine learnin... As the acceleration of aged population tendency, building models to forecast Alzheimer’s Disease (AD) is essential. In this article, we surveyed 1157 interviewees. By analyzing the results using three machine learning methods—BP neural network, SVM and random forest, we can derive the accuracy of them in forecasting AD, so that we can compare the methods in solving AD prediction. Among them, random forest is the most accurate method. Moreover, to combine the advantages of the methods, we build a new combination forecasting model based on the three machine learning models, which is proved more accurate than the models singly. At last, we give the conclusion of the connection between life style and AD, and provide several suggestions for elderly people to help them prevent AD. 展开更多
关键词 Alzheimer’s Disease BP NEURAL Network SVM RANDOM FOREST combination forecasting Model
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A New Multi-Method Combination Forecasting Model for ESDD Predicting
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作者 Haiyan SHUAI Qingwu GONG 《Energy and Power Engineering》 2009年第2期94-99,共6页
Equal Salt Deposit Density (ESDD) is a main factor to classify contamination severity and draw pollution distribution map. The precise ESDD forecasting plays an important role in the safety, economy and reliability of... Equal Salt Deposit Density (ESDD) is a main factor to classify contamination severity and draw pollution distribution map. The precise ESDD forecasting plays an important role in the safety, economy and reliability of power system. To cope with the problems existing in the ESDD predicting by multivariate linear regression (MLR), back propagation (BP) neural network and least squares support vector machines (LSSVM), a nonlinear combination forecasting model based on wavelet neural network (WNN) for ESDD is proposed. The model is a WNN with three layers, whose input layer has three neurons and output layer has one neuron, namely, regarding the ESDD forecasting results of MLR, BP and LSSVM as the inputs of the model and the observed value as the output. In the interest of better reflection of the influence of each single forecasting model on ESDD and increase of the accuracy of ESDD prediction, Morlet wavelet is used to con-struct WNN, error backpropagation algorithm is adopted to train the network and genetic algorithm is used to determine the initials of the parameters. Simulation results show that the accuracy of the proposed combina-tion ESDD forecasting model is higher than that of any single model and that of traditional linear combina-tion forecasting (LCF) model. The model provides a new feasible way to increase the accuracy of pollution distribution map of power network. 展开更多
关键词 equal salt deposit density MULTIVARIATE linear regression BP NEURAL NETWORK least SQUARES support vector machines combination forecasting wavelet NEURAL NETWORK
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A Weighted Combination Forecasting Model for Power Load Based on Forecasting Model Selection and Fuzzy Scale Joint Evaluation
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作者 Bingbing Chen Zhengyi Zhu +1 位作者 Xuyan Wang Can Zhang 《Energy Engineering》 EI 2021年第5期1499-1514,共16页
To solve the medium and long term power load forecasting problem,the combination forecasting method is further expanded and a weighted combination forecasting model for power load is put forward.This model is divided ... To solve the medium and long term power load forecasting problem,the combination forecasting method is further expanded and a weighted combination forecasting model for power load is put forward.This model is divided into two stages which are forecasting model selection and weighted combination forecasting.Based on Markov chain conversion and cloud model,the forecasting model selection is implanted and several outstanding models are selected for the combination forecasting.For the weighted combination forecasting,a fuzzy scale joint evaluation method is proposed to determine the weight of selected forecasting model.The percentage error and mean absolute percentage error of weighted combination forecasting result of the power consumption in a certain area of China are 0.7439%and 0.3198%,respectively,while the maximum values of these two indexes of single forecasting models are 5.2278%and 1.9497%.It shows that the forecasting indexes of proposed model are improved significantly compared with the single forecasting models. 展开更多
关键词 Power load forecasting forecasting model selection fuzzy scale joint evaluation weighted combination forecasting
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A Type of Combination Forecasting Method Based on Time Series Method and PLS
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作者 Liang Wan Biao Luo +1 位作者 Hong-Mei Ji Wei-Wei Yan 《American Journal of Operations Research》 2012年第4期467-472,共6页
This paper depends on the panel data of Anhui province and its 17 cities’ cigarette sales. First we established three single forecasting models (Holter-Wintel Season product model, Time series model decomposing model... This paper depends on the panel data of Anhui province and its 17 cities’ cigarette sales. First we established three single forecasting models (Holter-Wintel Season product model, Time series model decomposing model and Partial least square regression model), after getting the predicted value of cigarette sales from these single models, we then employ the combination forecasting method based on Time Series method and PLS to predict the province and its 17 cities’ cigarette sales of the next year. The results show that the accuracy of prediction is good which could provide a reliable reference to cigarette sales forecasting in Anhui province and its 17 cities. 展开更多
关键词 PLS Time SERIES METHOD combination forecast METHOD SALES forecasts
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A nonlinear combination forecasting method based on the fuzzy inference system
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作者 董景荣 YANG +1 位作者 Jun 《Journal of Chongqing University》 CAS 2002年第2期78-82,共5页
It has been shown in recent economic and statistical studies that combining forecasts may produce more accurate forecasts than individual ones. However, the literature on combining forecasts has almost exclusively foc... It has been shown in recent economic and statistical studies that combining forecasts may produce more accurate forecasts than individual ones. However, the literature on combining forecasts has almost exclusively focused on linear combining forecasts. In this paper, a new nonlinear combination forecasting method based on fuzzy inference system is present to overcome the difficulties and drawbacks in linear combination modeling of non-stationary time series. Furthermore, the optimization algorithm based on a hierarchical structure of learning automata is used to identify the parameters of the fuzzy system. Experiment results related to numerical examples demonstrate that the new technique has excellent identification performances and forecasting accuracy superior to other existing linear combining forecasts. 展开更多
关键词 非线性联合预测方法 模糊推理系统 层次结构 自动控制 模糊控制 学习算法
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Artificial Neural Network for Combining Forecasts
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作者 Shanming Shi, Li D. Xu & Bao Liu(Department of Computer Science, University of Colorado at Boulder, Boulder, CO 80309, USA)(Department of MSIS, Wright State University, Dayton, OH 45435,USA)(Institute of Systems Engineering, Tianjin University, Tianjin 30 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 1995年第2期58-64,共7页
This paper proposes artificial neural networks (ANN) as a tool for nonlinear combination of forecasts. In this study, three forecasting models are used for individual forecasts, and then two linear combining methods a... This paper proposes artificial neural networks (ANN) as a tool for nonlinear combination of forecasts. In this study, three forecasting models are used for individual forecasts, and then two linear combining methods are used to compare with the ANN combining method. The comparative experiment using real--world data shows that the prediction by the ANN method outperforms those by linear combining methods. The paper suggests that the ANN combining method can be used as- an alternative to conventional linear combining methods to achieve greater forecasting accuracy. 展开更多
关键词 Artificial neural network forecasting combined forecasts Nonlinear systems.
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Research on Methods of Parameter Estimation in Combining Forecasting Based on Harmonic Mean
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作者 Wang Yingming Dept. of Automation, Xiamen University, 361005, P. R. China 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 1998年第1期2-8,共7页
Two kinds of parameter estimation methods (I) and (II) of combining forecasting based on harmontic mean are proposed and compared through a lot of simulation forecasting examples. A very helpful conclusion is obtained... Two kinds of parameter estimation methods (I) and (II) of combining forecasting based on harmontic mean are proposed and compared through a lot of simulation forecasting examples. A very helpful conclusion is obtained, which can lay solid foundations for correct application of the above methods. 展开更多
关键词 Harmonic mean combining forecasting Parameter estimation.
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Generalized weighted functional proportional mean combining forecasting model and its method of parameter estimation
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作者 万玉成 盛昭潮 《Journal of Systems Engineering and Electronics》 SCIE EI CSCD 2004年第1期7-11,18,共6页
A new kind of combining forecasting model based on the generalized weighted functional proportional mean is proposed and the parameter estimation method of its weighting coefficients by means of the algorithm of quadr... A new kind of combining forecasting model based on the generalized weighted functional proportional mean is proposed and the parameter estimation method of its weighting coefficients by means of the algorithm of quadratic programming is given. This model has extensive representation. It is a new kind of aggregative method of group forecasting. By taking the suitable combining form of the forecasting models and seeking the optimal parameter, the optimal combining form can be obtained and the forecasting accuracy can be improved. The effectiveness of this model is demonstrated by an example. 展开更多
关键词 combining forecasting generalized weighted functional proportional mean parameter estimation quadratic programming
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Nonlinear combined forecasting model based on fuzzy adaptive variable weight and its application 被引量:1
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作者 蒋爱华 梅炽 +1 位作者 鄂加强 时章明 《Journal of Central South University》 SCIE EI CAS 2010年第4期863-867,共5页
In order to enhance forecasting precision of problems about nonlinear time series in a complex industry system,a new nonlinear fuzzy adaptive variable weight combined forecasting model was established by using concept... In order to enhance forecasting precision of problems about nonlinear time series in a complex industry system,a new nonlinear fuzzy adaptive variable weight combined forecasting model was established by using conceptions of the relative error,the change tendency of the forecasted object,gray basic weight and adaptive control coefficient on the basis of the method of fuzzy variable weight.Based on Visual Basic 6.0 platform,a fuzzy adaptive variable weight combined forecasting and management system was developed.The application results reveal that the forecasting precisions from the new nonlinear combined forecasting model are higher than those of other single combined forecasting models and the combined forecasting and management system is very powerful tool for the required decision in complex industry system. 展开更多
关键词 非线性时间序列 变权重组合预测 组合预测模型 模糊自适应 应用 复杂工业系统 管理系统 预测精度
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A new hybrid method with data‑characteristic‑driven analysis for artificial intelligence and robotics index return forecasting
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作者 Yue‑Jun Zhang Han Zhang Rangan Gupta 《Financial Innovation》 2023年第1期2019-2041,共23页
Forecasting returns for the Artificial Intelligence and Robotics Index is of great significance for financial market stability,and the development of the artificial intelligence industry.To provide investors with a mo... Forecasting returns for the Artificial Intelligence and Robotics Index is of great significance for financial market stability,and the development of the artificial intelligence industry.To provide investors with a more reliable reference in terms of artificial intelligence index investment,this paper selects the NASDAQ CTA Artificial Intelligence and Robotics(AIRO)Index as the research target,and proposes innovative hybrid methods to forecast returns by considering its multiple structural characteristics.Specifically,this paper uses the ensemble empirical mode decomposition(EEMD)method and the modified iterative cumulative sum of squares(ICSS)algorithm to decompose the index returns and identify the structural breakpoints.Furthermore,it combines the least-square support vector machine approach with the particle swarm optimization method(PSO-LSSVM)and the generalized autoregressive conditional heteroskedasticity(GARCH)type models to construct innovative hybrid forecasting methods.On the one hand,the empirical results indicate that the AIRO index returns have complex structural characteristics,and present time-varying and nonlinear characteristics with high complexity and mutability;on the other hand,the newly proposed hybrid forecasting method(i.e.,the EEMD-PSO-LSSVM-ICSS-GARCH models)which considers these complex structural characteristics,can yield the optimal forecasting performance for the AIRO index returns. 展开更多
关键词 Artificial Intelligence and Robotics index return forecasting PSO-LSSVM model GARCH model Decomposition and integration model combination model
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基于极点对称模态分解的中长期径流预报组合模型
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作者 李继清 刘洋 +1 位作者 张鹏 陈景 《水力发电学报》 CSCD 北大核心 2024年第7期30-40,共11页
为提高径流预报精度,解决径流序列分解后高频分量波动范围大、预报精度差的问题,基于极点对称模态分解法(ESMD)平稳化处理技术将径流序列分解,通过分析不同频率分量特征,择优选取预报方法,结合粒子群优化最小二乘支持向量机(PSO-LSSVM)... 为提高径流预报精度,解决径流序列分解后高频分量波动范围大、预报精度差的问题,基于极点对称模态分解法(ESMD)平稳化处理技术将径流序列分解,通过分析不同频率分量特征,择优选取预报方法,结合粒子群优化最小二乘支持向量机(PSO-LSSVM)全局优化和非线性建模能力及适应性强的特点,对高频分量进行预测,利用BP神经网络非线性映射能力和逼近任意非线性函数的优势对中低频分量和趋势分量进行预报,构建了ESMD-PSO-LSSVM-BP组合预报模型,对西江干流上中下游三座水文站的年、月尺度径流开展中长期径流预报。结果表明,对不同频率分量采用不同预报方法的组合模型可以有效提高径流预报精度。 展开更多
关键词 西江流域 径流预报 非平稳序列 组合预报模型 极点对称模态分解
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合流制溢流污染的影响及其控制技术发展
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作者 李俊奇 李小静 +2 位作者 王文亮 王二松 蔡然 《给水排水》 CSCD 北大核心 2024年第4期46-53,共8页
合流制溢流即未经处理的雨污废水直接流入受纳水体,是造成受纳水体污染和城市内涝的主要来源。首先,对合流制溢流的污染特征及其影响因素进行了总结,简要梳理了源头控制、处理设施、调蓄设施、雨天合流雨污水处理最新技术及其控制效果,... 合流制溢流即未经处理的雨污废水直接流入受纳水体,是造成受纳水体污染和城市内涝的主要来源。首先,对合流制溢流的污染特征及其影响因素进行了总结,简要梳理了源头控制、处理设施、调蓄设施、雨天合流雨污水处理最新技术及其控制效果,以及合流制溢流控制实时控制、监测和预测的智能控制方法。合流制溢流灰色和绿色基础设施都是必要的,随着监测、降水预报、城市水文和水力模型及实时控制技术的成熟,合流制溢流系统向实时控制和模型优化预测策略发展。 展开更多
关键词 合流制溢流 实时控制 监测与预报
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基于CEEMDAN-GRU组合模型的碳排放交易价格预测研究
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作者 傅魁 钱素彬 徐尚英 《武汉理工大学学报(信息与管理工程版)》 CAS 2024年第1期62-66,共5页
准确的碳价格预测有助于监管部门观测碳交易市场运行状况及投资者进行科学决策,对实现碳达峰和碳中和具有重要作用。但碳价序列具有非线性、非平稳性和高噪声的特性,很难对其进行准确预测。将完全自适应噪声集合经验模态分解(CEEMDAN)... 准确的碳价格预测有助于监管部门观测碳交易市场运行状况及投资者进行科学决策,对实现碳达峰和碳中和具有重要作用。但碳价序列具有非线性、非平稳性和高噪声的特性,很难对其进行准确预测。将完全自适应噪声集合经验模态分解(CEEMDAN)方法与门控循环单元(GRU)相结合,构建一个碳排放交易价格预测模型。该模型基于分解、集成思想,利用CEEMDAN将原始碳价序列分解,获得不同频率的本征模函数(IMF)和残差序列,使用GRU神经网络分别为各子序列建立预测模型,最后集成预测结果得到碳价预测值。以湖北省碳交易市场的日度成交价为例进行实证分析,结果表明:相较于其他5种基准模型,CEEMDAN-GRU模型具有更小的预测误差和更高的拟合优度,在碳价格预测上具有一定的优势。 展开更多
关键词 碳价格预测 组合模型 CEEMDAN GRU 机器学习
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基于Theil不等系数IOWAO组合模型的黑龙江省秸秆还田机械化程度预测
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作者 乔金友 闫思梦 +2 位作者 孙健 荆玉冰 陈海涛 《中国农机化学报》 北大核心 2024年第4期258-265,共8页
玉米、水稻等作物收后秸秆处理一直是农业生产中亟待解决的问题,机械化秸秆还田是作物收后秸秆处理的重要手段,也是保护黑土资源的重要措施。结合相关文献,提出基于协整性检验的单一预测模型选择和基于误差指标最小的最优组合预测模型... 玉米、水稻等作物收后秸秆处理一直是农业生产中亟待解决的问题,机械化秸秆还田是作物收后秸秆处理的重要手段,也是保护黑土资源的重要措施。结合相关文献,提出基于协整性检验的单一预测模型选择和基于误差指标最小的最优组合预测模型选择关键环节;运用协整性检验方法确定二次函数模型、ARIMA模型、H-W无季节模型作为秸秆还田机械化程度预测的单一模型;依据误差绝对值和最小法、Shapley法和基于Theil不等系数IOWAO法构建三种组合预测模型,采用误差平方和(SSE)、平均绝对误差(MAE)、均方误差(MSE)、平均绝对百分比误差(MAPE)、均方百分比误差(MSPE)五个误差指标比较模型精度,确定采用基于Theil不等系数IOWAO的组合模型为最优预测作物秸秆还田机械化程度模型。结果表明,2022-2026年黑龙江省秸秆还田机械化程度将稳步提升,平均每年增加4.52%,2026年将达到74.19%,比2021年提升22.62%;2022年以后,黑龙江省秸秆还田机械化程度将进入快速发展期。为制定和实施机械化秸秆处理政策提供理论依据,为保护和恢复黑土资源生产能力提供重要支撑。 展开更多
关键词 黑龙江省 秸秆还田机械化 黑土资源保护 变权重组合预测
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基于联系数投影的三角模糊数组合预测模型及其应用
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作者 田成诗 袁宏俊 相瑞兵 《运筹与管理》 CSCD 北大核心 2024年第1期115-122,共8页
在模糊预测中,三角模糊数比区间数更能准确刻画不确定信息。针对三角模糊数组合预测,本文首先引入集对分析中联系数,找出三角模糊数与三元联系数的转换关系,巧妙回避三角模糊数组合预测运算的模糊性和复杂性。其次定义三元联系数运算规... 在模糊预测中,三角模糊数比区间数更能准确刻画不确定信息。针对三角模糊数组合预测,本文首先引入集对分析中联系数,找出三角模糊数与三元联系数的转换关系,巧妙回避三角模糊数组合预测运算的模糊性和复杂性。其次定义三元联系数运算规则,构建联系数投影作为最优准则,建立联系数投影的定权系数三角模糊数组合预测模型。然后依据高精度预测方法应赋予较大权系数的原则,构建联系数广义诱导有序加权平均(CNGIOWA)算子,研究其性质定理,再结合联系数投影的最优准则,建立基于联系数投影和CNGIOWA算子的变权系数三角模糊数组合预测模型。最后将两类三角模糊数组合预测模型应用到模糊预测实证分析中,结果显示两类组合预测模型都能有效提高预测准确性。 展开更多
关键词 三角模糊数 三元联系数 组合预测 联系数投影 CNGIOWA算子
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白条猪价格预测模型构建
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作者 刘合兵 华梦迪 +1 位作者 席磊 尚俊平 《河南农业大学学报》 CAS CSCD 北大核心 2024年第1期123-131,共9页
【目的】增强农产品价格预测准确度,为农产品价格的有效预测提供参考。【方法】以河南省白条猪每周平均批发价格为研究对象,提出一种基于序列分解、主成分分析和神经网络(CEEMDAN-PCA-CNN-LSTM)的白条猪价格预测方法。首先,使用自适应... 【目的】增强农产品价格预测准确度,为农产品价格的有效预测提供参考。【方法】以河南省白条猪每周平均批发价格为研究对象,提出一种基于序列分解、主成分分析和神经网络(CEEMDAN-PCA-CNN-LSTM)的白条猪价格预测方法。首先,使用自适应白噪声完全集合模态分解方法(CEEMDAN)对白条猪价格序列进行分解;其次,选用皮尔逊相关系数筛选影响价格波动的相关因素;再次,利用主成分分析(PCA)对影响因素及分解得到的子序列降维处理并作为原始价格序列的特征值,并行输入到作为编码器的卷积神经网络(CNN)中进行特征提取;最后,引入长短期记忆网络(LSTM)作为解码器输出得到预测结果。将该方法应用于河南省白条猪每周平均价格数据,与LSTM、门控循环单元(GRU)、CNN、基于卷积的长短期记忆网络(ConvLSTM)模型进行比较。【结果】CEEMDAN-PCA-CNN-LSTM组合模型预测方法得到的平均绝对误差分别降低了44.95%、27.30%、28.13%、43.17%。【结论】CEEMDAN-PCA-CNN-LSTM模型对于河南省白条猪市场价格的预测性能更优,有助于相关部门针对河南省白条猪价格波动做出科学决策。 展开更多
关键词 价格预测 自适应白噪声完全集合模态分解 主成分分析 神经网络 组合模型
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