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Research on the Effect of Artificial Intelligence Real Estate Forecasting Using Multiple Regression Analysis and Artificial Neural Network: A Case Study of Ghana 被引量:2
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作者 Madami Michael Ishaku Hill Isaac Lewu 《Journal of Computer and Communications》 2021年第10期1-14,共14页
To transition from conventional to intelligent real estate, the real estate industry must enhance its embrace of disruptive technology. Even though the real estate auction market has grown in importance in the financi... To transition from conventional to intelligent real estate, the real estate industry must enhance its embrace of disruptive technology. Even though the real estate auction market has grown in importance in the financial, economic, and investment sectors, few artificial intelligence-based research has tried to predict the auction values of real estate in the past. According to the objectives of this research, artificial intelligence and statistical methods will be used to create forecasting models for real estate auction prices. A multiple regression model and an artificial neural network are used in conjunction with one another to build the forecasting models. For the empirical study, the study utilizes data from Ghana apartment auctions from 2016 to 2020 to anticipate auction prices and evaluate the forecasting accuracy of the various models available at the time. Compared to the conventional Multiple Regression Analysis, using artificial intelligence systems for real estate appraisal is becoming a more viable option (MRA). The Artificial Neural network model exhibits the most outstanding performance, and efficient zonal segmentation based on the auction evaluation price enhances the model’s prediction accuracy even more. There is a statistically significant difference between the two models when it comes to forecasting the values of real estate auctions. 展开更多
关键词 Real Estate forecasting Artificial Intelligence Artificial Neural Networks multiple Regression Analysis
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An optimal strategy for coordinating and dispatching “source-load” in power system based on multiple time scales 被引量:2
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作者 LIU Yan-feng DONG Hai-ying +1 位作者 WANG Ning-bo MA Ming 《Journal of Measurement Science and Instrumentation》 CAS CSCD 2018年第4期388-396,共9页
Due to the phenomenon of abandoning wind power and photo voltage(PV)power in the“Three Northern Areas”in China,this paper presents an optimal strategy for coordinating and dispatching“source-load”in power system b... Due to the phenomenon of abandoning wind power and photo voltage(PV)power in the“Three Northern Areas”in China,this paper presents an optimal strategy for coordinating and dispatching“source-load”in power system based on multiple time scales.On the basis of the analysis of the uncertainty of wind power and PV power as well as the characteristics of load side resource dispatching,the optimal model of coordinating and dispatching“source-load”in power system based on multiple time scales is established.It can simultaneously and effectively dispatch conventional generators,wind plant,PV power station,pumped-storage power station and load side resources by optimally using three time scales:day-ahead,intra-day and real-time.According to the latest predicted information of wind power,PV power and load,the original generation schedule can be rolled and amended by using the corresponding time scale.The effectiveness of the model can be verified by a real system.The simulation results show that the proposed model can make full use of“source-load”resources to improve the ability to consume wind power and PV power of the grid-connected system. 展开更多
关键词 multiple time scales "source-load"coordination pumped-storage power station wind plant photovoltaic(PV)power station
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Optimized Lagged Multiple Linear Regression Model for MJO Prediction:Considering the Surface and Subsurface Oceanic Processes over the Maritime Continent
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作者 LU Kecheng LI Yiran +1 位作者 HU Haibo WANG Ziyi 《Journal of Ocean University of China》 2025年第4期840-850,共11页
The Madden-Julian Oscillation(MJO)is a key atmospheric component connecting global weather and climate.It func-tions as a primary source for subseasonal forecasts.Previous studies have highlighted the vital impact of ... The Madden-Julian Oscillation(MJO)is a key atmospheric component connecting global weather and climate.It func-tions as a primary source for subseasonal forecasts.Previous studies have highlighted the vital impact of oceanic processes on MJO propagation.However,few existing MJO prediction approaches adequately consider these factors.This study determines the critical region for the oceanic processes affecting MJO propagation by utilizing 22-year Climate Forecast System Reanalysis data.By intro-ducing surface and subsurface oceanic temperature within this critical region into a lagged multiple linear regression model,the MJO forecasting skill is considerably optimized.This optimization leads to a 12 h enhancement in the forecasting skill of the first principal component and efficiently decreases prediction errors for the total predictions.Further analysis suggests that,during the years in which MJO events propagate across the Maritime Continent over a more southerly path,the optimized statistical forecasting model obtains better improvements in MJO prediction. 展开更多
关键词 Madden-Julian Oscillation statistical forecasting Maritime Continent oceanic processes lagged multiple linear re-gression model
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A multiple template approach for robust tracking of fast motion target 被引量:6
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作者 SUN Jun HE Fa-zhi +1 位作者 CHEN Yi-lin CHEN Xiao 《Applied Mathematics(A Journal of Chinese Universities)》 SCIE CSCD 2016年第2期177-197,共21页
Target tracking is very important in computer vision and related areas. It is usually difficult to accurately track fast motion target with appearance variations. Sometimes the tracking algorithms fail for heavy appea... Target tracking is very important in computer vision and related areas. It is usually difficult to accurately track fast motion target with appearance variations. Sometimes the tracking algorithms fail for heavy appearance variations. A multiple template method to track fast motion target with appearance changes is presented under the framework of appearance model with Kalman filter. Firstly, we construct a multiple template appearance model, which includes both the original template and templates affinely transformed from original one. Generally speaking, appearance variations of fast motion target can be covered by affine transformation. Therefore, the affine tr templates match the target of appearance variations better than conventional models. Secondly, we present an improved Kalman filter for approx- imate estimating the motion trail of the target and a modified similarity evaluation function for exact matching. The estimation approach can reduce time complexity of the algorithm and keep accuracy in the meantime. Thirdly, we propose an adaptive scheme for updating template set to alleviate the drift problem. The scheme considers the following differences: the weight differences in two successive frames; different types of affine transformation applied to templates. Finally, experiments demonstrate that the proposed algorithm is robust to appearance varia- tion of fast motion target and achieves real-time performance on middle/low-range computing platform. 展开更多
关键词 Target tracking Fast motion target multiple template match Kalman filter forecast.
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Quantitative method for evaluating detailed volatility of wind power at multiple temporal-spatial scales 被引量:6
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作者 Yongqian Liu Han Wang +3 位作者 Shuang Han Jie Yan Li Li Zixin Chen 《Global Energy Interconnection》 2019年第4期318-327,共10页
With the increasing proportion of wind power integration, the volatility of wind power brings huge challenges to the safe and stable operation of the electric power system. At present, the indexes commonly used to eva... With the increasing proportion of wind power integration, the volatility of wind power brings huge challenges to the safe and stable operation of the electric power system. At present, the indexes commonly used to evaluate the volatility of wind power only consider its overall characteristics, such as the standard deviation of wind power, the average of power variables, etc., while ignoring the detailed volatility of wind power, that is, the features of the frequency distribution of power variables. However, how to accurately describe the detailed volatility of wind power is the key foundation to reduce its adverse influences. To address this, a quantitative method for evaluating the detailed volatility of wind power at multiple temporal-spatial scales is proposed. First, the volatility indexes which can evaluate the detailed fluctuation characteristics of wind power are presented, including the upper confidence limit, lower confidence limit and confidence interval of power variables under the certain confidence level. Then, the actual wind power data from a location in northern China is used to illustrate the application of the proposed indexes at multiple temporal(year–season–month–day) and spatial scales(wind turbine–wind turbines–wind farm–wind farms) using the calculation time windows of 10 min, 30 min, 1 h, and 4 h. Finally, the relationships between wind power forecasting accuracy and its corresponding detailed volatility are analyzed to further verify the effectiveness of the proposed indexes. The results show that the proposed volatility indexes can effectively characterize the detailed fluctuations of wind power at multiple temporal-spatial scales. It is anticipated that the results of this study will serve as an important reference for the reserve capacity planning and optimization dispatch in the electric power system which with a high proportion of renewable energy. 展开更多
关键词 Wind power Detailed VOLATILITY Frequency distribution multiple temporal-spatial scales TYPICAL DAYS forecasting accuracy
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Modeling and forecasting time series of precious metals:a new approach to multifractal data 被引量:1
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作者 Emrah Oral Gazanfer Unal 《Financial Innovation》 2019年第1期407-434,共28页
We introduce a novel approach to multifractal data in order to achieve transcended modeling and forecasting performances by extracting time series out of local Hurst exponent calculations at a specified scale.First,th... We introduce a novel approach to multifractal data in order to achieve transcended modeling and forecasting performances by extracting time series out of local Hurst exponent calculations at a specified scale.First,the long range and co-movement dependencies of the time series are scrutinized on time-frequency space using multiple wavelet coherence analysis.Then,the multifractal behaviors of the series are verified by multifractal de-trended fluctuation analysis and its local Hurst exponents are calculated.Additionally,root mean squares of residuals at the specified scale are procured from an intermediate step during local Hurst exponent calculations.These internally calculated series have been used to estimate the process with vector autoregressive fractionally integrated moving average(VARFIMA)model and forecasted accordingly.In our study,the daily prices of gold,silver and platinum are used for assessment.The results have shown that all metals do behave in phase movement on long term periods and possess multifractal features.Furthermore,the intermediate time series obtained during local Hurst exponent calculations still appertain the co-movement as well as multifractal characteristics of the raw data and may be successfully re-scaled,modeled and forecasted by using VARFIMA model.Conclusively,VARFIMA model have notably surpassed its univariate counterpart(ARFIMA)in all efficacious trials while re-emphasizing the importance of comovement procurement in modeling.Our study’s novelty lies in using a multifractal de-trended fluctuation analysis,along with multiple wavelet coherence analysis,for forecasting purposes to an extent not seen before.The results will be of particular significance to finance researchers and practitioners. 展开更多
关键词 Continuous wavelet transform multiple wavelet coherence Multifractal de-trended fluctuation analysis Vector autoregressive fractionally integrated moving average forecast
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Impact of festival factor on electric quantity multiplication forecast model
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作者 Chen, Jianhua Sun, Jingchun Hou, Junhu 《Journal of Southeast University(English Edition)》 EI CAS 2008年第S1期94-98,共5页
This research aims to improve the forecasting precision of electric quantity. It is discovered that the total electricity consumption considerably increased during the Spring Festival by the analysis of the electric q... This research aims to improve the forecasting precision of electric quantity. It is discovered that the total electricity consumption considerably increased during the Spring Festival by the analysis of the electric quantity time series from 2002 to 2007 in Shandong province. The festival factor is ascertained to be one of the important seasonal factors affecting the electric quantity fluctuations, and the multiplication model for forecasting is improved by introducing corresponding variables and parameters. The computational results indicate that the average relative error of the new model decreases from 4.31% to 1.93% and the maximum relative error from 14.05% to 6.52% compared with those of the model when the festival factor is not considered. It shows that introducing the festival factor into the multiplication model for electric quantity forecasting evidently improves the precision. 展开更多
关键词 forecast electric power production TENDENCY seasonal periods multiplication model
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Better use of experience from other reservoirs for accurate production forecasting by learn-to-learn method
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作者 Hao-Chen Wang Kai Zhang +7 位作者 Nancy Chen Wen-Sheng Zhou Chen Liu Ji-Fu Wang Li-Ming Zhang Zhi-Gang Yu Shi-Ti Cui Mei-Chun Yang 《Petroleum Science》 SCIE EI CAS CSCD 2024年第1期716-728,共13页
To assess whether a development strategy will be profitable enough,production forecasting is a crucial and difficult step in the process.The development history of other reservoirs in the same class tends to be studie... To assess whether a development strategy will be profitable enough,production forecasting is a crucial and difficult step in the process.The development history of other reservoirs in the same class tends to be studied to make predictions accurate.However,the permeability field,well patterns,and development regime must all be similar for two reservoirs to be considered in the same class.This results in very few available experiences from other reservoirs even though there is a lot of historical information on numerous reservoirs because it is difficult to find such similar reservoirs.This paper proposes a learn-to-learn method,which can better utilize a vast amount of historical data from various reservoirs.Intuitively,the proposed method first learns how to learn samples before directly learning rules in samples.Technically,by utilizing gradients from networks with independent parameters and copied structure in each class of reservoirs,the proposed network obtains the optimal shared initial parameters which are regarded as transferable information across different classes.Based on that,the network is able to predict future production indices for the target reservoir by only training with very limited samples collected from reservoirs in the same class.Two cases further demonstrate its superiority in accuracy to other widely-used network methods. 展开更多
关键词 Production forecasting multiple patterns Few-shot learning Transfer learning
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Time Series Forecasting of Hong Kong Inter-bank Offered Rate(HIBOR)using Exponential Smoothing State Space Model
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作者 Andy Tai Ka-ming Lam 《Economics World》 2023年第1期43-48,共6页
This paper set out to analyze and forecast the Hong Kong Interbank Interest Rate(HIBOR)for a period 2006 to 2018.The main objective of this study is to propose an appropriate time series forecasting model for HIBOR.HI... This paper set out to analyze and forecast the Hong Kong Interbank Interest Rate(HIBOR)for a period 2006 to 2018.The main objective of this study is to propose an appropriate time series forecasting model for HIBOR.HIBOR conceptually captures the interaction between demand and supply of Hong Kong dollar in the interbank market.The volatility of HIBOR reflects market sentiment,changes in underlying macroeconomic environment,random events and even political climate.Thus,the time series data of HIBOR appears to have multiple seasonality during the aforesaid period.The TBATS model,the state space modeling framework developed by De Livera,Hyndman and Snyder(2010)is adopted for this study to improve the accuracy and efficiency of the time series modeling and forecasting of HIBOR.The TBATS model incorporates Box-Cox transformations,Fourier representations with time varying coefficients,and ARMA error correction.Likelihood evaluation and analytical expressions for point forecasts and interval predictions under the assumption of Gaussian errors are derived,leading to a simple,comprehensive approach to forecasting complex seasonal time series.In addition,the trigonometric formulation is used as a means of decomposing complex seasonal time series,which helps to identify and extract seasonal components which are otherwise not apparent in the time series plot itself.The performance of the TBATS model as evaluated by measures of forecast error are presented. 展开更多
关键词 HIBOR forecast multiple seasonal
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Load Forecasting Technique for System Expansion in Isolated Area Using Time Invariant Socio-Economic Factors of Identical Agglomerations
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作者 Asif Islam Mohammad Shariful Islam +1 位作者 Kanica Rani Mondal Mohammad Mahabub Hossain 《Journal of Energy and Power Engineering》 2013年第9期1778-1785,共8页
Load forecasting is a critical issue for operational planning as well as grid expansion to ensure an uninterruptable electric power system. Being a small but densely populated country in South Asia, Bangladesh has man... Load forecasting is a critical issue for operational planning as well as grid expansion to ensure an uninterruptable electric power system. Being a small but densely populated country in South Asia, Bangladesh has many isolated places which are not connected to national grid yet. If concern authority opts to expand grid to those areas, they need reliable demand data for designing and dimensioning of different power system entities, e.g., capacity, overhead line capacity, tie line capacity, spinning reserve, load-shedding scheduling, etc., for reliable operation and to prevent possible obligatory redesigning. This paper represents an analysis to forecast the electricity demand of an isolated island in Bangladesh where past history of electrical load demand is not available. The analysis is based on the identification of factors, e.g., population, literacy rate, per capita income, occupation, communication, etc., on which electrical load growth of an area depends. Data has been collected from the targeted isolated area and form a grid connected area which is similar to target area from social and geographical perspective. Weights of those factors on load have been calculated by matrix inversion. Demand of the new area is forecasted using these weights factors by matrix multiplication. 展开更多
关键词 Load forecasting socio-economic factors isolated area matrices multiplication matrices inversion.
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Forecasting Typhoon Damage Scale with SOM Trained by Selective Presentation Learning
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作者 KazuhiroKohara Isao Sugiyama 《通讯和计算机(中英文版)》 2013年第9期1237-1246,共10页
关键词 学习技术 SOM 台风 损害 自组织特征映射 大规模数据 平均精度 演示
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基于改进Informer的多指标发电机定子过热故障预警
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作者 黄浩 茅大钧 曹熠云 《中国测试》 北大核心 2026年第1期120-130,共11页
针对目前电厂发电机定子过热故障预警模型预测效果不佳、预警策略不全面而导致的故障误报率高、预警时间晚的问题,提出一种改进Informer与多指标预警相结合的发电机定子故障预警方法。该方法通过斯皮尔曼相关系数筛选输入特征,利用融合... 针对目前电厂发电机定子过热故障预警模型预测效果不佳、预警策略不全面而导致的故障误报率高、预警时间晚的问题,提出一种改进Informer与多指标预警相结合的发电机定子故障预警方法。该方法通过斯皮尔曼相关系数筛选输入特征,利用融合梯度中心化和多层残差连接的Informer模型进行定子绕组温度预测;建立包括冷却温差动态阈值和指数加权移动平均(EWMA)残差阈值与K-S检验相结合的预警机制,以上海某电厂660 MW机组发电机为对象进行验证。实验结果表明:所提模型的预测精度优于其他模型,且预警方法与故障记录相比能够提前1.6~2.75 h发出预警,与其他预警方法相比更及时。 展开更多
关键词 故障预警 发电机定子 长序列时间序列预测 多指标阈值
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基于多气象指标的气象负荷预测模型构建与应用
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作者 吴丹 雷珽 +5 位作者 戴媛媛 张蕊 赵婉茹 王晴 薛书倩 杨景仁 《电工技术》 2026年第2期116-118,122,共4页
准确的负荷预测是实现电网安全、经济运行的重要保障,气象因素对负荷预测的影响显著。以上海市为研究对象,提出一种改进的CEEMDAN气象负荷剥离技术,并对剥离出的气象负荷进行相关分析。同时应用LSTM模型构建多气象指标的气象负荷预测模... 准确的负荷预测是实现电网安全、经济运行的重要保障,气象因素对负荷预测的影响显著。以上海市为研究对象,提出一种改进的CEEMDAN气象负荷剥离技术,并对剥离出的气象负荷进行相关分析。同时应用LSTM模型构建多气象指标的气象负荷预测模型,该模型结合了温度、湿度、风速等气象因素。研究结果表明,LSTM模型同多元回归模型、支持向量机模型相比预测误差更小,提高了负荷预测的准确率,为电力系统在迎峰度冬度夏期间的负荷保供工作提供了科学依据。 展开更多
关键词 改进的CEEMDAN技术 多气象指标 LSTM模型 负荷预测
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A Model Output Machine Learning Method for Grid Temperature Forecasts in the Beijing Area 被引量:21
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作者 Haochen LI Chen YU +3 位作者 Jiangjiang XIA Yingchun WANG Jiang ZHU Pingwen ZHANG 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2019年第10期1156-1170,共15页
In this paper, the model output machine learning (MOML) method is proposed for simulating weather consultation, which can improve the forecast results of numerical weather prediction (NWP). During weather consultation... In this paper, the model output machine learning (MOML) method is proposed for simulating weather consultation, which can improve the forecast results of numerical weather prediction (NWP). During weather consultation, the forecasters obtain the final results by combining the observations with the NWP results and giving opinions based on their experience. It is obvious that using a suitable post-processing algorithm for simulating weather consultation is an interesting and important topic. MOML is a post-processing method based on machine learning, which matches NWP forecasts against observations through a regression function. By adopting different feature engineering of datasets and training periods, the observational and model data can be processed into the corresponding training set and test set. The MOML regression function uses an existing machine learning algorithm with the processed dataset to revise the output of NWP models combined with the observations, so as to improve the results of weather forecasts. To test the new approach for grid temperature forecasts, the 2-m surface air temperature in the Beijing area from the ECMWF model is used. MOML with different feature engineering is compared against the ECMWF model and modified model output statistics (MOS) method. MOML shows a better numerical performance than the ECMWF model and MOS, especially for winter. The results of MOML with a linear algorithm, running training period, and dataset using spatial interpolation ideas, are better than others when the forecast time is within a few days. The results of MOML with the Random Forest algorithm, year-round training period, and dataset containing surrounding gridpoint information, are better when the forecast time is longer. 展开更多
关键词 temperature forecasts MOS machine learning multiple linear regression Random FOREST WEATHER CONSULTATION FEATURE engineering data structures
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Forecasting complex group behavior via multiple plan recognition 被引量:2
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作者 Xiaochen LI Wenji MAO Daniel ZENG 《Frontiers of Computer Science》 SCIE EI CSCD 2012年第1期102-110,共9页
Group behavior forecasting is an emergent re- search and application field in social computing. Most of the existing group behavior forecasting methods have heavily re- lied on structured data which is usually hard to... Group behavior forecasting is an emergent re- search and application field in social computing. Most of the existing group behavior forecasting methods have heavily re- lied on structured data which is usually hard to obtain. To ease the heavy reliance on structured data, in this paper, we pro- pose a computational approach based on the recognition of multiple plans/intentions underlying group behavior. We fur- ther conduct human experiment to empirically evaluate the effectiveness of our proposed approach. 展开更多
关键词 group behavior forecasting multiple planrecognition graph search
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外周血T淋巴细胞亚群表达水平对多发性骨髓瘤患儿预后的预测价值 被引量:2
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作者 张小丽 李样 高慧娟 《实用癌症杂志》 2025年第2期337-340,344,共5页
目的探究外周血T淋巴细胞亚群表达水平对多发性骨髓瘤(MM)患儿预后的预测价值。方法收集90例MM患儿临床资料进行回顾性分析。根据患儿预后情况将其分为良好组(n=68例)和不良组(n=22例)。比较两组患儿的一般资料、CD3^(+)、CD4^(+)、CD8^... 目的探究外周血T淋巴细胞亚群表达水平对多发性骨髓瘤(MM)患儿预后的预测价值。方法收集90例MM患儿临床资料进行回顾性分析。根据患儿预后情况将其分为良好组(n=68例)和不良组(n=22例)。比较两组患儿的一般资料、CD3^(+)、CD4^(+)、CD8^(+)、CD4^(+)/CD8^(+)、NK细胞的表达情况,并分析外周血T淋巴细胞亚群相关指标表达水平对MM患儿预后的评估价值。结果两组患儿年龄、性别、M蛋白、血肌酐比较差异不显著(P>0.05)。不良组CD3^(+)、CD4^(+)、CD4^(+)/CD8^(+)、NK细胞均显著低于良好组(t=3.276,P=0.002、t=6.635,P=0.000、t=2.242,P=0.028、t=6.271,P=0.000),CD8^(+)高于良好组,差异有统计学意义(t=3.603,P=0.001)。外周血T淋巴细胞亚群相关指标CD3^(+)、CD4^(+)、CD8^(+)、CD4^(+)/CD8^(+)、NK细胞的表达水平在MM患儿预后的评估中有良好的应用价值,AUC分别为0.701、0.880、0.711、0.621、0.860、0.959,上述指标联合应用对MM患儿预后的预测效能最高,AUC最大,为0.959,灵敏度为0.935,特异度为0.921。CD3^(+)、CD4^(+)、CD8^(+)、CD4^(+)/CD8^(+)、NK细胞的预测阈值分别为57.252%、34.255%、42.241%、0.847、22.144%。结论外周血T淋巴细胞亚群表达水平对MM患儿预后有良好的预测价值,可将外周血T淋巴细胞亚群检测作为临床上MM患儿预后的评估方法。 展开更多
关键词 T淋巴细胞亚群 多发性骨髓瘤 预后 预测
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基于3种时间序列模型的北京市每日花粉浓度预测
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作者 张鑫 杨华 +1 位作者 董玲玲 张宏远 《北京林业大学学报》 北大核心 2025年第6期90-100,共11页
【目的】分析花粉高峰期持续时间和浓度峰值,构建北京市每日花粉浓度的最优预测模型,为科学预测未来每日花粉浓度提供数据支持。【方法】采用多重插补法处理2015—2020年北京市每日花粉浓度时间序列中的缺失数据,2015—2019年数据用于建... 【目的】分析花粉高峰期持续时间和浓度峰值,构建北京市每日花粉浓度的最优预测模型,为科学预测未来每日花粉浓度提供数据支持。【方法】采用多重插补法处理2015—2020年北京市每日花粉浓度时间序列中的缺失数据,2015—2019年数据用于建立SARIMA、LSTM和Prophet 3种时间序列模型,预测未来一年(2020年,共计182 d)的花粉浓度变化。【结果】(1)随机森林法、贝叶斯线性回归法、观测值中随机取样法和加权预测均值匹配法4种多重插补法中,随机森林法的第3个插补数据集P值最小(P=0.002),为最优插补数据集。(2)2015—2020年每日平均花粉浓度数据显示,春季高峰期集中在3—6月,4月初达到峰值(792粒/(103 mm^(2)));秋季高峰期集中在8月至9月末,在9月初达到峰值(449粒/(103 mm^(2)))。2015—2019年花粉浓度总体呈逐年下降趋势,2020年呈现阶跃式上升;其中,2015年高峰期持续时间最长(春季107 d,秋季65 d),2018年最短(春季60 d,秋季46 d);2020年花粉浓度峰值达到最高水平,而2019年花粉浓度峰值最低。(3)3种时间序列模型中,LSTM模型对北京市每日花粉浓度时间序列的描述和预测效果最佳。当LSTM模型的时间步长(look_back)为60时,模型预测效果最佳,RMSE、MAE均为最小,R^(2)=0.78。相比之下,Prophet模型效果较差,无法灵敏捕捉浓度峰值,预测值存在负数情况,预测效果不佳。SARIMA模型拟合效果尚可,但预测效果不理想,预测值存在为负的情况。【结论】与SARIMA和Prophet模型相比,LSTM模型更适用于北京市每日花粉浓度时间序列模型的建立与长期预测。未来研究应完善花粉浓度数据,优化模型性能,以更准确地预测花粉高峰期的起止时间、持续时间及高峰浓度,为过敏性疾病的防控提供更可靠的依据。 展开更多
关键词 多重插补法 花粉浓度 长短期记忆神经网络 长期预测
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多尺度路由时空注意力的综合能源多元负荷预测
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作者 王德文 张林飞 +2 位作者 苗庆健 李成浩 赵文清 《智能系统学报》 北大核心 2025年第6期1379-1391,共13页
多元负荷预测是保障综合能源系统(integrated energy systems,IES)稳定运行的关键。现有方法缺乏对电、冷、热等多元负荷的深度挖掘与分析,限制了预测性能。为解决此问题,本文深入剖析多元负荷的统计特征、季节-日内耦合性及与天气因素... 多元负荷预测是保障综合能源系统(integrated energy systems,IES)稳定运行的关键。现有方法缺乏对电、冷、热等多元负荷的深度挖掘与分析,限制了预测性能。为解决此问题,本文深入剖析多元负荷的统计特征、季节-日内耦合性及与天气因素的相关性,进而提出一种基于多尺度路由时空注意力机制的综合能源多元负荷预测模型。该模型通过多核局域分解以捕获多元负荷的多尺度周期与趋势特征;针对多元负荷间的复杂耦合性及负荷与天气的相关性,设计路由时空注意力机制与多尺度编解码器,生成多尺度周期预测结果,并融合循环神经网络的趋势预测结果以输出最终预测值。基于实测数据集的耦合性分析、消融实验及对比实验表明:相较于LSTM(long short-term memory)、Transformer、CNN-GRU(convolutional neural network gated recurrent unit)、Autoformer、FEDformer等主流模型,所提模型在不同多元负荷耦合强度下均具备更优的预测精度。 展开更多
关键词 综合能源 多元负荷预测 多尺度 多核局域分解 路由时空注意力 周期性 趋势性 耦合性 相关性
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渐进式分层特征提取的综合能源多任务负荷预测
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作者 王德文 安涵 +1 位作者 张林飞 赵文清 《智能系统学报》 北大核心 2025年第4期858-870,共13页
针对综合能源系统中电、冷、热负荷存在复杂耦合关系,传统多任务学习模型难以学习到有效的多元负荷耦合特征可能导致预测精度降低的问题,本文充分考虑多元负荷复杂耦合关系,提出一种渐进式分层特征提取的综合能源多任务负荷预测模型。... 针对综合能源系统中电、冷、热负荷存在复杂耦合关系,传统多任务学习模型难以学习到有效的多元负荷耦合特征可能导致预测精度降低的问题,本文充分考虑多元负荷复杂耦合关系,提出一种渐进式分层特征提取的综合能源多任务负荷预测模型。将全年数据按季节划分,分析各季节下电、冷、热负荷间耦合强度;采用变分模态分解将历史负荷序列分解为多个不同频率的分量,可以更好挖掘多元负荷的深层时序特征;渐进式分层提取多元负荷的耦合特征,并动态分配耦合特征对预测结果的影响权重,避免耦合特征无效时模型预测精度下降。实验结果证明,在不同的多元负荷耦合强度下,渐进式分层特征提取的多任务负荷预测在精度上有更好表现。研究结论可用于指导综合能源多元负荷预测过程。 展开更多
关键词 负荷预测 综合能源 多任务学习 多元负荷 渐进式分层 特征提取 最大信息系数 变分模态分解
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基于奇异谱分析和双向LSTM的多元负荷同时预测
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作者 刘永福 张天颖 +1 位作者 霍殿阳 张立梅 《科学技术与工程》 北大核心 2025年第19期8099-8107,共9页
开展多元负荷的准确预测对提高新能源消纳、实现节能减排、确保电网安全可靠运行具有重要意义。为了提高多元负荷同时预测的精度,构建了奇异谱分析与双向长短期记忆网络相结合的多元负荷同时预测模型。首先,利用皮尔逊相关系数进行耦合... 开展多元负荷的准确预测对提高新能源消纳、实现节能减排、确保电网安全可靠运行具有重要意义。为了提高多元负荷同时预测的精度,构建了奇异谱分析与双向长短期记忆网络相结合的多元负荷同时预测模型。首先,利用皮尔逊相关系数进行耦合特征提取,以识别多元负荷数据中的内在关联和依赖关系;其次,使用奇异谱分析进行特征提取,以便更全面地捕捉多元负荷数据的动态特性,降低预测难度。最后,针对所提模型引入多任务学习,利用多个负荷预测任务之间的共享信息,相互辅助进行预测,提升预测精度。实验分别通过多区域多元负荷和柔性负荷及风光发电数据进行仿真分析,结果表明,在多区域中电、热、冷负荷预测平均绝对百分比误差平均提高0.41%,均方根误差平均提高0.02 MW。 展开更多
关键词 多元负荷同时预测 奇异谱分析 双向长短期记忆网络 多任务学习模型 皮尔逊相关系数
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