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Water quality forecast through application of BP neural network at Yuqiao reservoir 被引量:21
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作者 ZHAO Ying NAN Jun +1 位作者 CUI Fu-yi GUO Liang 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2007年第9期1482-1487,共6页
This paper deals with the study of a water quality forecast model through application of BP neural network technique and GUI (Graphical User Interfaces) function of MATLAB at Yuqiao reservoir in Tianjin. To overcome t... This paper deals with the study of a water quality forecast model through application of BP neural network technique and GUI (Graphical User Interfaces) function of MATLAB at Yuqiao reservoir in Tianjin. To overcome the shortcomings of traditional BP algorithm as being slow to converge and easy to reach extreme minimum value,the model adopts LM (Leven-berg-Marquardt) algorithm to achieve a higher speed and a lower error rate. When factors affecting the study object are identified,the reservoir's 2005 measured values are used as sample data to test the model. The number of neurons and the type of transfer functions in the hidden layer of the neural network are changed from time to time to achieve the best forecast results. Through simulation testing the model shows high efficiency in forecasting the water quality of the reservoir. 展开更多
关键词 Water quality forecast bp neural network MATLAB Graphical User Interfaces (GUI)
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An improved BP neural network based on evaluating and forecasting model of water quality in Second Songhua River of China 被引量:4
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作者 Bin ZOU Xiaoyu LIAO +1 位作者 Yongnian ZENG Lixia HUANG 《Chinese Journal Of Geochemistry》 EI CAS 2006年第B08期167-167,共1页
关键词 河流 水质 人工神经网络 水文化学
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The Prediction of Stock Prices Based on PCA and BP Neural Networks
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作者 Xiaoping Yang 《Chinese Business Review》 2005年第5期64-68,共5页
There are many factors to influence stock prices indeed. The research method combining models and examples is applied to study how the factors affect stock prices here. Firstly, the principal component analysis is use... There are many factors to influence stock prices indeed. The research method combining models and examples is applied to study how the factors affect stock prices here. Firstly, the principal component analysis is used to deal with a set of variables as the input of a BP Neural Network. Therefore, not only is the number of variables less, but also most of the information of original variables is kept. Then, the BP Neural Network is established to analyze and predict stock prices. Finally, the analysis of Chinese stock market illustrates that the method predicting stock prices is satisfying and feasible. 展开更多
关键词 bp neural networks prediction PCA stock prices
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A Short-Range Quantitative Precipitation Forecast Algorithm Using Back-Propagation Neural Network Approach 被引量:5
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作者 冯业荣 David H.KITZMILLER 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2006年第3期405-414,共10页
A back-propagation neural network (BPNN) was used to establish relationships between the shortrange (0-3-h) rainfall and the predictors ranging from extrapolative forecasts of radar reflectivity, satelliteestimate... A back-propagation neural network (BPNN) was used to establish relationships between the shortrange (0-3-h) rainfall and the predictors ranging from extrapolative forecasts of radar reflectivity, satelliteestimated cloud-top temperature, lightning strike rates, and Nested Grid Model (NGM) outputs. Quan- titative precipitation forecasts (QPF) and the probabilities of categorical precipitation were obtained. Results of the BPNN algorithm were compared to the results obtained from the multiple linear regression algorithm for an independent dataset from the 1999 warm season over the continental United States. A sample forecast was made over the southeastern United States. Results showed that the BPNN categorical rainfall forecasts agreed well with Stage Ⅲ observations in terms of the size and shape of the area of rainfall. The BPNN tended to over-forecast the spatial extent of heavier rainfall amounts, but the positioning of the areas with rainfall ≥25.4 mm was still generally accurate. It appeared that the BPNN and linear regression approaches produce forecasts of very similar quality, although in some respects BPNN slightly outperformed the regression. 展开更多
关键词 quantitative precipitation forecast bp neural network WSR-88D Doppler radar lightning strike rate infrared satellite data NGM model
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Electricity price forecasting using generalized regression neural network based on principal components analysis 被引量:1
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作者 牛东晓 刘达 邢棉 《Journal of Central South University》 SCIE EI CAS 2008年第S2期316-320,共5页
A combined model based on principal components analysis (PCA) and generalized regression neural network (GRNN) was adopted to forecast electricity price in day-ahead electricity market. PCA was applied to mine the mai... A combined model based on principal components analysis (PCA) and generalized regression neural network (GRNN) was adopted to forecast electricity price in day-ahead electricity market. PCA was applied to mine the main influence on day-ahead price, avoiding the strong correlation between the input factors that might influence electricity price, such as the load of the forecasting hour, other history loads and prices, weather and temperature; then GRNN was employed to forecast electricity price according to the main information extracted by PCA. To prove the efficiency of the combined model, a case from PJM (Pennsylvania-New Jersey-Maryland) day-ahead electricity market was evaluated. Compared to back-propagation (BP) neural network and standard GRNN, the combined method reduces the mean absolute percentage error about 3%. 展开更多
关键词 ELECTRICITY price forecasting GENERALIZED regression neural network principal COMPONENTS analysis
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Short-Term Electricity Price Forecasting Using a Combination of Neural Networks and Fuzzy Inference
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作者 Evans Nyasha Chogumaira Takashi Hiyama 《Energy and Power Engineering》 2011年第1期9-16,共8页
This paper presents an artificial neural network, ANN, based approach for estimating short-term wholesale electricity prices using past price and demand data. The objective is to utilize the piecewise continuous na-tu... This paper presents an artificial neural network, ANN, based approach for estimating short-term wholesale electricity prices using past price and demand data. The objective is to utilize the piecewise continuous na-ture of electricity prices on the time domain by clustering the input data into time ranges where the variation trends are maintained. Due to the imprecise nature of cluster boundaries a fuzzy inference technique is em-ployed to handle data that lies at the intersections. As a necessary step in forecasting prices the anticipated electricity demand at the target time is estimated first using a separate ANN. The Australian New-South Wales electricity market data was used to test the system. The developed system shows considerable im-provement in performance compared with approaches that regard price data as a single continuous time se-ries, achieving MAPE of less than 2% for hours with steady prices and 8% for the clusters covering time pe-riods with price spikes. 展开更多
关键词 ELECTRICITY price forecasting SHORT-TERM Load forecasting ELECTRICITY MARKETS Artificial neural networks Fuzzy LOGIC
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Gold Price Prediction Based on PCA-GA-BP Neural Network
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作者 Youchan Zhu Chaokun Zhang 《Journal of Computer and Communications》 2018年第7期22-33,共12页
Gold price is affected by a variety of factors and has highly nonlinear and random features. Some traditional forecast methods emphasize linear relations excessively and some ignore the price randomness. The predictiv... Gold price is affected by a variety of factors and has highly nonlinear and random features. Some traditional forecast methods emphasize linear relations excessively and some ignore the price randomness. The predictive error is relatively large. Therefore, a BP neural network model based on principal component analysis (PCA) and genetic algorithm (GA) was proposed for the short-term prediction of gold price. BP could establish the gold price forecasting model. The weights and thresholds of BP neural network are optimized by GA, which overcome the shortcoming that BP algorithm falls into local minimum easily. PCA can effectively simplify the network input variables and speed up the convergence. The results showed that, compared with GA-BP and BP, the convergence rate of PCA-GA-BP neural network model was faster and the prediction accuracy was higher in the prediction of gold price. 展开更多
关键词 PCA GENETIC Algorithm bp neural network GOLD price
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STUDY ON ARTIFICIAL NEURAL NETWORK FORECASTING METHOD OF WATER CONSUMPTION PER HOUR 被引量:5
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作者 刘洪波 张宏伟 +1 位作者 田林 王新芳 《Transactions of Tianjin University》 EI CAS 2001年第4期233-237,共5页
An artificial neural network (ANN) short term forecasting model of consumption per hour was built based on seasonality,trend and randomness of a city period of time water consumption series.Different hidden layer no... An artificial neural network (ANN) short term forecasting model of consumption per hour was built based on seasonality,trend and randomness of a city period of time water consumption series.Different hidden layer nodes,same inputs and forecasting data were selected to train and forecast and then the relative errors were compared so as to confirm the NN structure.A model was set up and used to forecast concretely by Matlab.It is tested by examples and compared with the result of time series trigonometric function analytical method.The result indicates that the prediction errors of NN are small and the velocity of forecasting is fast.It can completely meet the actual needs of the control and run of the water supply system. 展开更多
关键词 artificial neural network consumption per hour forecast bp algorithm MATLAB
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Real estate appraisal system based on GIS and BP neural network 被引量:12
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作者 LIU Xiao-sheng1, DENG Zhe1, WANG Ting-li2 1. School of Architecture and Survey Engineering, Jiangxi University of Science and Technology, Ganzhou 341000, China 2. School of Applied Science, Jiangxi University of Science and Technology, Ganzhou 341000, China 《中国有色金属学会会刊:英文版》 CSCD 2011年第S3期626-630,共5页
For the inefficiency and inaccuracy of appraisal method of traditional estate appraisal theory, the real estate appraisal system based on GIS and BP neural network was established. The structure of the system was desi... For the inefficiency and inaccuracy of appraisal method of traditional estate appraisal theory, the real estate appraisal system based on GIS and BP neural network was established. The structure of the system was designed which includes appraisal model, trade case, GIS database and query analysis module. With the help of the L-M algorithm in MATLAB software, BP neural network was improved and the trade cases were trained, then the BP neural network which has already been trained was tested. At the same time, the BP neural and GIS were put together to construct the hedonic price estimate model. The C# and ArcGIS9.3 were used to achieve the system in VS2008. City basic geographic data and real estate related information were used as the basic data in practice. The results show that the functions of querying, adding and editing the spatial data and attribute data are achieved and also the efficiency and accuracy of real estate are improved, so that the new method of real estate is provided by the system. 展开更多
关键词 bp neural network GIS HEDONIC price real ESTATE APPRAISAL
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A Prediction Model of Peasants’ Income in China Based on BP Neural Network 被引量:2
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作者 GUO Qing-chun1,HE Zhen-fang2,LI Li3,KONG Ling-jun1,ZHANG Xiao-yong1,KOU Li-qun1 1.Shaanxi Radio &TV University,Xi’an 710068,China 2.Cold and Arid Regions Environmental and Engineering Research Institute,Chinese Academy of Sciences,Lan’zhou 730000,China 3.Institute of Earth Environment,Chinese Academy of Sciences,Xi’an 710075,China 《Asian Agricultural Research》 2011年第4期88-90,94,共4页
According to the related data affecting the peasants’ income in China in the years 1978-2008,a total of 13 indices are selected,such as agricultural population,output value of primary industry,and rural employees.Bas... According to the related data affecting the peasants’ income in China in the years 1978-2008,a total of 13 indices are selected,such as agricultural population,output value of primary industry,and rural employees.Based on the standardized method and BP neural network method,the peasants’ income and the artificial neural network model are established and analyzed.Results show that the simulation value agrees well with the real value;the neural network model with improved BP algorithm has high prediction accuracy,rapid convergence rate and good generalization ability.Finally,suggestions are put forward to increase the peasants’ income,such as promoting the process of urbanization,developing small and medium-sized enterprises in rural areas,encouraging intensive operation,and strengthening the rural infrastructure and agricultural science and technology input. 展开更多
关键词 bp neural network Peasants’ INCOME forecast China
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A Hybrid Neural Network and Box-Jenkins Models for Time Series Forecasting 被引量:1
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作者 Mohammad Hadwan Basheer M.Al-Maqaleh +2 位作者 Fuad N.Al-Badani Rehan Ullah Khan Mohammed A.Al-Hagery 《Computers, Materials & Continua》 SCIE EI 2022年第3期4829-4845,共17页
Time series forecasting plays a significant role in numerous applications,including but not limited to,industrial planning,water consumption,medical domains,exchange rates and consumer price index.The main problem is ... Time series forecasting plays a significant role in numerous applications,including but not limited to,industrial planning,water consumption,medical domains,exchange rates and consumer price index.The main problem is insufficient forecasting accuracy.The present study proposes a hybrid forecastingmethods to address this need.The proposed method includes three models.The first model is based on the autoregressive integrated moving average(ARIMA)statistical model;the second model is a back propagation neural network(BPNN)with adaptive slope and momentum parameters;and the thirdmodel is a hybridization between ARIMA and BPNN(ARIMA/BPNN)and artificial neural networks and ARIMA(ARIMA/ANN)to gain the benefits of linear and nonlinearmodeling.The forecasting models proposed in this study are used to predict the indices of the consumer price index(CPI),and predict the expected number of cancer patients in the Ibb Province in Yemen.Statistical standard measures used to evaluate the proposed method include(i)mean square error,(ii)mean absolute error,(iii)root mean square error,and(iv)mean absolute percentage error.Based on the computational results,the improvement rate of forecasting the CPI dataset was 5%,71%,and 4%for ARIMA/BPNN model,ARIMA/ANN model,and BPNN model respectively;while the result for cancer patients’dataset was 7%,200%,and 19%for ARIMA/BPNNmodel,ARIMA/ANN model,and BPNNmodel respectively.Therefore,it is obvious that the proposed method reduced the randomness degree,and the alterations affected the time series with data non-linearity.The ARIMA/ANN model outperformed each of its components when it was applied separately in terms of increasing the accuracy of forecasting and decreasing the overall errors of forecasting. 展开更多
关键词 Hybrid model forecasting non-linear data time series models cancer patients neural networks box-jenkins consumer price index
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Using Feed Forward BPNN for Forecasting All Share Price Index
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作者 Donglin Chen Dissanayaka M. K. N. Seneviratna 《Journal of Data Analysis and Information Processing》 2014年第4期87-94,共8页
Use of artificial neural networks has become a significant and an emerging research method due to its capability of capturing nonlinear behavior instead of conventional time series methods. Among them, feed forward ba... Use of artificial neural networks has become a significant and an emerging research method due to its capability of capturing nonlinear behavior instead of conventional time series methods. Among them, feed forward back propagation neural network (BPNN) is the widely used network topology for forecasting stock prices indices. In this study, we attempted to find the best network topology for one step ahead forecasting of All Share Price Index (ASPI), Colombo Stock Exchange (CSE) by employing feed forward BPNN. The daily data including ASPI, All Share Total Return Index (ASTRI), Market Price Earnings Ratio (PER), and Market Price to Book Value (PBV) were collected from CSE over the period from January 2nd 2012 to March 20th 2014. The experiment is implemented by prioritizing the number of inputs, learning rate, number of hidden layer neurons, and the number of training sessions. Eight models were selected on basis of input data and the number of training sessions. Then the best model was used for forecasting next trading day ASPI value. Empirical result reveals that the proposed model can be used as an approximation method to obtain next day value. In addition, it showed that the number of inputs, number of hidden layer neurons and the training times are significant factors that can be affected to the accuracy of forecast value. 展开更多
关键词 Artificial neural networks (ANNs) FEED FORWARD Back Propagation (bp) STOCK Index forecasting
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Week Ahead Electricity Power and Price Forecasting Using Improved DenseNet-121 Method 被引量:2
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作者 Muhammad Irfan Ali Raza +10 位作者 Faisal Althobiani Nasir Ayub Muhammad Idrees Zain Ali Kashif Rizwan Abdullah Saeed Alwadie Saleh Mohammed Ghonaim Hesham Abdushkour Saifur Rahman Omar Alshorman Samar Alqhtani 《Computers, Materials & Continua》 SCIE EI 2022年第9期4249-4265,共17页
In the Smart Grid(SG)residential environment,consumers change their power consumption routine according to the price and incentives announced by the utility,which causes the prices to deviate from the initial pattern.... In the Smart Grid(SG)residential environment,consumers change their power consumption routine according to the price and incentives announced by the utility,which causes the prices to deviate from the initial pattern.Thereby,electricity demand and price forecasting play a significant role and can help in terms of reliability and sustainability.Due to the massive amount of data,big data analytics for forecasting becomes a hot topic in the SG domain.In this paper,the changing and non-linearity of consumer consumption pattern complex data is taken as input.To minimize the computational cost and complexity of the data,the average of the feature engineering approaches includes:Recursive Feature Eliminator(RFE),Extreme Gradient Boosting(XGboost),Random Forest(RF),and are upgraded to extract the most relevant and significant features.To this end,we have proposed the DensetNet-121 network and Support Vector Machine(SVM)ensemble with Aquila Optimizer(AO)to ensure adaptability and handle the complexity of data in the classification.Further,the AO method helps to tune the parameters of DensNet(121 layers)and SVM,which achieves less training loss,computational time,minimized overfitting problems and more training/test accuracy.Performance evaluation metrics and statistical analysis validate the proposed model results are better than the benchmark schemes.Our proposed method has achieved a minimal value of the Mean Average Percentage Error(MAPE)rate i.e.,8%by DenseNet-AO and 6%by SVM-AO and the maximum accurateness rate of 92%and 95%,respectively. 展开更多
关键词 Smart grid deep neural networks consumer demand big data analytics load forecasting price forecasting
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China futures price forecasting based on online search and information transfer
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作者 Jingyi Liang Guozhu Jia 《Data Science and Management》 2022年第4期187-198,共12页
The synchronicity effect between the financial market and online response for time-series forecasting is an important task with wide applications.This study combines data from the Baidu index(BDI),Google trends(GT),an... The synchronicity effect between the financial market and online response for time-series forecasting is an important task with wide applications.This study combines data from the Baidu index(BDI),Google trends(GT),and transfer entropy(TE)to forecast a wide range of futures prices with a focus on China.A forecasting model based on a hybrid gray wolf optimizer(GWO),convolutional neural network(CNN),and long short-term memory(LSTM)is developed.First,Baidu and Google dual-platform search data were selected and constructed as Internetbased consumer price index(ICPI)using principal component analysis.Second,TE is used to quantify the information between online behavior and futures markets.Finally,the effective Internet-based consumer price index(ICPI)and TE are introduced into the GWO-CNN-LSTM model to forecast the daily prices of corn,soybean,polyvinyl chloride(PVC),egg,and rebar futures.The results show that the GWO-CNN-LSTM model has a significant improvement in predicting future prices.Internet-based CPI built on Baidu and Google platforms has a high degree of real-time performance and reduces the platform and language bias of the search data.Our proposed framework can provide predictive decision support for government leaders,market investors,and production activities. 展开更多
关键词 Futures price forecasting Baidu index Google trends Transfer entropy Consumer price index Gray wolf optimizer Convolutional neural network Long short-term memory
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Research and Forecast of Egg Price Fluctuation in China
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作者 Shuai CHEN 《Asian Agricultural Research》 2019年第9期12-16,共5页
In recent years,the price of eggs fluctuates violently in China,and the fluctuation of egg price affects the interests of farmers directly.Egg is also an indispensable ingredient in our diet.This paper studies the egg... In recent years,the price of eggs fluctuates violently in China,and the fluctuation of egg price affects the interests of farmers directly.Egg is also an indispensable ingredient in our diet.This paper studies the egg price from January 2000 to February 2019 by using time series multiplier model to analyze seasonal factors of egg price,and then predicts the fluctuation of egg price by using neural network.The results show that the predicted value is consistent with the fluctuation cycle of egg price.Finally,some targeted suggestions are put forward on the basis of the existing problems in the egg market in China. 展开更多
关键词 price FLUCTUATION forecasting analysis neural network
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Day-ahead electricity price forecasting using back propagation neural networks and weighted least square technique 被引量:1
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作者 S. Surender REDDY Chan-Mook JUNG Ko Jun SEOG 《Frontiers in Energy》 SCIE CSCD 2016年第1期105-113,共9页
This paper proposes the day-ahead electricity price forecasting using the artificial neural networks (ANN) and weighted least square (WLS) technique in the restructured electricity markets. Price forecasting is ve... This paper proposes the day-ahead electricity price forecasting using the artificial neural networks (ANN) and weighted least square (WLS) technique in the restructured electricity markets. Price forecasting is very important for online trading, e-commerce and power system operation. Forecasting the hourly locational marginal prices (LMP) in the electricity markets is a very important basis for the decision making in order to maximize the profits/benefits. The novel approach pro- posed in this paper for forecasting the electricity prices uses WLS technique and compares the results with the results obtained by using ANNs. To perform this price forecasting, the market knowledge is utilized to optimize the selection of input data for the electricity price forecasting tool. In this paper, price forecasting for Pennsylvania-New Jersey-Maryland (PJM) interconnec- tion is demonstrated using the ANNs and the proposed WLS technique. The data used for this price forecasting is obtained from the PJM website. The forecasting results obtained by both methods are compared, which shows the effectiveness of the proposed forecasting approach. From the simulation results, it can be observed that the accuracy of prediction has increased in both seasons using the proposed WLS technique. Another important advantage of the proposed WLS technique is that it is not an iterative method. 展开更多
关键词 day-ahead electricity markets price forecast-ing load forecasting artificial neural networks load servingentities
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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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Wind Speed Prediction Based on Improved VMD-BP-CNN-LSTM Model
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作者 Chaoming Shu Bin Qin Xin Wang 《Journal of Power and Energy Engineering》 2024年第1期29-43,共15页
Amid the randomness and volatility of wind speed, an improved VMD-BP-CNN-LSTM model for short-term wind speed prediction was proposed to assist in power system planning and operation in this paper. Firstly, the wind s... Amid the randomness and volatility of wind speed, an improved VMD-BP-CNN-LSTM model for short-term wind speed prediction was proposed to assist in power system planning and operation in this paper. Firstly, the wind speed time series data was processed using Variational Mode Decomposition (VMD) to obtain multiple frequency components. Then, each individual frequency component was channeled into a combined prediction framework consisting of BP neural network (BPNN), Convolutional Neural Network (CNN) and Long Short-Term Memory Network (LSTM) after the execution of differential and normalization operations. Thereafter, the predictive outputs for each component underwent integration through a fully-connected neural architecture for data fusion processing, resulting in the final prediction. The VMD decomposition technique was introduced in a generalized CNN-LSTM prediction model;a BPNN model was utilized to predict high-frequency components obtained from VMD, and incorporated a fully connected neural network for data fusion of individual component predictions. Experimental results demonstrated that the proposed improved VMD-BP-CNN-LSTM model outperformed other combined prediction models in terms of prediction accuracy, providing a solid foundation for optimizing the safe operation of wind farms. 展开更多
关键词 Wind Speed forecast Long Short-Term Memory network bp neural network Variational Mode Decomposition Data Fusion
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Forecasting Winning Bid Prices in an Online Auction Market - Data Mining Approaches 被引量:1
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作者 KIM Hongil BAEK Seung 《Journal of Electronic Science and Technology of China》 2004年第3期6-11,共6页
To solve information asymmetry problem on online auction, this study suggests and validates a forecasting model of winning bid prices. Especially, it explores the usability of data mining approaches, such as neural ne... To solve information asymmetry problem on online auction, this study suggests and validates a forecasting model of winning bid prices. Especially, it explores the usability of data mining approaches, such as neural network and Bayesian network in building a forecasting model. This research empirically shows that, in forecasting winning bid prices on online auction, data mining techniques have shown better performance than traditional statistical analysis, such as logistic regression and multivariate regression. 展开更多
关键词 Bayesian network data mining neural network price forecasting
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基于GRU-CNN双网络输出构建BP模型的径流预测方法 被引量:1
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作者 张玥 姜中清 +2 位作者 周伊 周静姝 王宇露 《水力发电》 CAS 2024年第6期17-22,共6页
提高径流预测精度是避免洪水灾害发生的重要手段,由于预测阶段并无已知有效样本,给预测工作带来难度,因此,提出以双网络输出为预测阶段提供数据参考,结合训练阶段双网络输出与真实值之间的关系,对预测阶段采用二次多变量建模实现径流预... 提高径流预测精度是避免洪水灾害发生的重要手段,由于预测阶段并无已知有效样本,给预测工作带来难度,因此,提出以双网络输出为预测阶段提供数据参考,结合训练阶段双网络输出与真实值之间的关系,对预测阶段采用二次多变量建模实现径流预测。首先,构建GRU和CNN深度学习网络,同步输出2条径流预测序列;其次,在已知时段内,构建2条预测结果与实测值之间的多变量BP模型;最后,基于双网络输出预测值,通过确定的BP模型输出径流预测结果。经测试,该方法给预测时段提供了可靠的先验样本,高效学习了网络输出与真实值之间关系,预测精度显著提升。 展开更多
关键词 洪水预报 径流预测 双网络输出 GRU CNN bp神经网络
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