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Construction of multi-model ensemble prediction for ENSO based on neural network
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作者 Yuan Ou Ting Liu Tao Lian 《Acta Oceanologica Sinica》 2025年第8期10-19,共10页
In this study,we conducted an experiment to construct multi-model ensemble(MME)predictions for the El Niño-Southern Oscillation(ENSO)using a neural network,based on hindcast data released from five coupled oceana... In this study,we conducted an experiment to construct multi-model ensemble(MME)predictions for the El Niño-Southern Oscillation(ENSO)using a neural network,based on hindcast data released from five coupled oceanatmosphere models,which exhibit varying levels of complexity.This nonlinear approach demonstrated extraordinary superiority and effectiveness in constructing ENSO MME.Subsequently,we employed the leave-one-out crossvalidation and the moving base methods to further validate the robustness of the neural network model in the formulation of ENSO MME.In conclusion,the neural network algorithm outperforms the conventional approach of assigning a uniform weight to all models.This is evidenced by an enhancement in correlation coefficients and reduction in prediction errors,which have the potential to provide a more accurate ENSO forecast. 展开更多
关键词 El Niño-Southern Oscillation(ENSO) multi-model ensemble mean neural network
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Multi-Model Ensemble Projection of Precipitation Changes over China under Global Warming of 1.5 and 2℃ with Consideration of Model Performance and Independence 被引量:7
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作者 Tong LI Zhihong JIANG +1 位作者 Lilong ZHAO Laurent LI 《Journal of Meteorological Research》 SCIE CSCD 2021年第1期184-197,共14页
A weighting scheme jointly considering model performance and independence(PI-based weighting scheme) is employed to deal with multi-model ensemble prediction of precipitation over China from 17 global climate models. ... A weighting scheme jointly considering model performance and independence(PI-based weighting scheme) is employed to deal with multi-model ensemble prediction of precipitation over China from 17 global climate models. Four precipitation metrics on mean and extremes are used to evaluate the model performance and independence. The PIbased scheme is also compared with a rank-based weighting scheme and the simple arithmetic mean(AM) scheme. It is shown that the PI-based scheme achieves notable improvements in western China, with biases decreasing for all parameters. However, improvements are small and almost insignificant in eastern China. After calibration and validation, the scheme is used for future precipitation projection under the 1.5 and 2℃ global warming targets(above preindustrial level). There is a general tendency to wetness for most regions in China, especially in terms of extreme precipitation. The PI scheme shows larger inhomogeneity in spatial distribution. For the total precipitation PRCPTOT(95 th percentile extreme precipitation R95 P), the land fraction for a change larger than 10%(20%) is 22.8%(53.4%)in PI, while 13.3%(36.8%) in AM, under 2℃ global warming. Most noticeable increase exists in central and east parts of western China. 展开更多
关键词 model performance and independence multi-model ensemble mean and extreme precipitation future projection 1.5 and 2℃global warming
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Multimodel ensemble projection of photovoltaic power potential in China by the 2060s
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作者 Xu Zhao Xu Yue +6 位作者 Chenguang Tian Hao Zhou Bin Wang Yuwen Chen Yuan Zhao Weijie Fu Yihan Hu 《Atmospheric and Oceanic Science Letters》 CSCD 2023年第5期102-107,共6页
为了实现能源转型的目标,中国对太阳能的需求一直在极速增长.然而,太阳能发电潜力受到天气条件的影响并预期在气候变暖背景下发生改变.本文中,作者利用第六次国际耦合模式比较计划(CMIP6)24个气候模式的气象变量以及4个不同形式的光伏模... 为了实现能源转型的目标,中国对太阳能的需求一直在极速增长.然而,太阳能发电潜力受到天气条件的影响并预期在气候变暖背景下发生改变.本文中,作者利用第六次国际耦合模式比较计划(CMIP6)24个气候模式的气象变量以及4个不同形式的光伏模型,预估了在2060年代低排放或高排放情况下中国的光伏发电潜力.多模式集合平均光伏功率在2004-2014年为277.2KWhm-2yr-1,并呈现出从西到东的下降趋势.到2054-2064年,在低排放情景下,全国平均光伏发电潜力将增加2.29%,而在高排放情景下则减少0.43%.低排放情景的排放控制大大增强了地表太阳辐射,促进了东部的光伏发电.相反,在高排放情景下,强烈的变暖对光伏发电产生了抑制作用.极端暖事件使光伏发电潜力在低排放情景下降低0.28%,而高排放情景下降低0.44%,分别相当于当代损失量的两倍和三倍.预估表明排放控制带来的清洁空气和适度变暖对中国未来的太阳能利用是有益的. 展开更多
关键词 光伏发电 气候变化 极端暖事件 第六次国际耦合模式比较计划 集合预估
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Statistical Downscaling for Multi-Model Ensemble Prediction of Summer Monsoon Rainfall in the Asia-Pacific Region Using Geopotential Height Field 被引量:42
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作者 祝从文 Chung-Kyu PARK +1 位作者 Woo-Sung LEE Won-Tae YUN 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2008年第5期867-884,共18页
The 21-yr ensemble predictions of model precipitation and circulation in the East Asian and western North Pacific (Asia-Pacific) summer monsoon region (0°-50°N, 100° 150°E) were evaluated in ni... The 21-yr ensemble predictions of model precipitation and circulation in the East Asian and western North Pacific (Asia-Pacific) summer monsoon region (0°-50°N, 100° 150°E) were evaluated in nine different AGCM, used in the Asia-Pacific Economic Cooperation Climate Center (APCC) multi-model ensemble seasonal prediction system. The analysis indicates that the precipitation anomaly patterns of model ensemble predictions are substantially different from the observed counterparts in this region, but the summer monsoon circulations are reasonably predicted. For example, all models can well produce the interannual variability of the western North Pacific monsoon index (WNPMI) defined by 850 hPa winds, but they failed to predict the relationship between WNPMI and precipitation anomalies. The interannual variability of the 500 hPa geopotential height (GPH) can be well predicted by the models in contrast to precipitation anomalies. On the basis of such model performances and the relationship between the interannual variations of 500 hPa GPH and precipitation anomalies, we developed a statistical scheme used to downscale the summer monsoon precipitation anomaly on the basis of EOF and singular value decomposition (SVD). In this scheme, the three leading EOF modes of 500 hPa GPH anomaly fields predicted by the models are firstly corrected by the linear regression between the principal components in each model and observation, respectively. Then, the corrected model GPH is chosen as the predictor to downscale the precipitation anomaly field, which is assembled by the forecasted expansion coefficients of model 500 hPa GPH and the three leading SVD modes of observed precipitation anomaly corresponding to the prediction of model 500 hPa GPH during a 19-year training period. The cross-validated forecasts suggest that this downscaling scheme may have a potential to improve the forecast skill of the precipitation anomaly in the South China Sea, western North Pacific and the East Asia Pacific regions, where the anomaly correlation coefficient (ACC) has been improved by 0.14, corresponding to the reduced RMSE of 10.4% in the conventional multi-model ensemble (MME) forecast. 展开更多
关键词 summer monsoon precipitation multi-model ensemble prediction statistical downscaling forecast
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STUDY OF THE MODIFICATION OF MULTI-MODEL ENSEMBLE SCHEMES FOR TROPICAL CYCLONE FORECASTS 被引量:10
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作者 张涵斌 智协飞 +2 位作者 陈静 王亚男 王轶 《Journal of Tropical Meteorology》 SCIE 2015年第4期389-399,共11页
This study investigates multi-model ensemble forecasts of track and intensity of tropical cyclones over the western Pacific, based on forecast outputs from the China Meteorological Administration, European Centre for ... This study investigates multi-model ensemble forecasts of track and intensity of tropical cyclones over the western Pacific, based on forecast outputs from the China Meteorological Administration, European Centre for Medium-Range Weather Forecasts, Japan Meteorological Agency and National Centers for Environmental Prediction in the THORPEX Interactive Grand Global Ensemble(TIGGE) datasets. The multi-model ensemble schemes, namely the bias-removed ensemble mean(BREM) and superensemble(SUP), are compared with the ensemble mean(EMN) and single-model forecasts. Moreover, a new model bias estimation scheme is investigated and applied to the BREM and SUP schemes. The results showed that, compared with single-model forecasts and EMN, the multi-model ensembles of the BREM and SUP schemes can have smaller errors in most cases. However, there were also circumstances where BREM was less skillful than EMN, indicating that using a time-averaged error as model bias is not optimal. A new model bias estimation scheme of the biweight mean is introduced. Through minimizing the negative influence of singular errors, this scheme can obtain a more accurate model bias estimation and improve the BREM forecast skill. The application of the biweight mean in the bias calculation of SUP also resulted in improved skill. The results indicate that the modification of multi-model ensemble schemes through this bias estimation method is feasible. 展开更多
关键词 TIGGE data multi-model ensemble tropical cyclone biweight mean
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Ensemble Simulation of Land Evapotranspiration in China Based on a Multi-Forcing and Multi-Model Approach 被引量:6
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作者 Jianguo LIU Binghao JIA +1 位作者 Zhenghui XIE Chunxiang SHI 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2016年第6期673-684,共12页
In order to reduce the uncertainty of offline land surface model (LSM) simulations of land evapotranspiration (ET), we used ensemble simulations based on three meteorological forcing datasets [Princeton, ITPCAS (... In order to reduce the uncertainty of offline land surface model (LSM) simulations of land evapotranspiration (ET), we used ensemble simulations based on three meteorological forcing datasets [Princeton, ITPCAS (Institute of Tibetan Plateau Research, Chinese Academy of Sciences), Qian] and four LSMs (BATS, VIC, CLM3.0 and CLM3.5), to explore the trends and spatiotemporal characteristics of ET, as well as the spatiotemporal pattern of ET in response to climate factors over China's Mainland during 1982-2007. The results showed that various simulations of each member and their arithmetic mean (EnsAVlean) could capture the spatial distribution and seasonal pattern of ET sufficiently well, where they exhibited more significant spatial and seasonal variation in the ET compared with observation-based ET estimates (Obs_MTE). For the mean annual ET, we found that the BATS forced by Princeton forcing overestimated the annual mean ET compared with Obs_MTE for most of the basins in China, whereas the VIC forced by Princeton forcing showed underestimations. By contrast, the Ens_Mean was closer to Obs_MTE, although the results were underestimated over Southeast China. Furthermore, both the Obs_MTE and Ens_Mean exhibited a significant increasing trend during 1982-98; whereas after 1998, when the last big EI Nifio event occurred, the Ens_Mean tended to decrease significantly between 1999 and 2007, although the change was not significant for Obs_MTE. Changes in air temperature and shortwave radiation played key roles in the long-term variation in ET over the humid area of China, but precipitation mainly controlled the long-term variation in ET in arid and semi-arid areas of China. 展开更多
关键词 land evapotranspiration ensemble simulations multi-forcing and multi-model approach spatiotemporal varia-tion uncertainty
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Improving Multi-model Ensemble Probabilistic Prediction of Yangtze River Valley Summer Rainfall 被引量:5
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作者 LI Fang LIN Zhongda 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2015年第4期497-504,共8页
Seasonal prediction of summer rainfall over the Yangtze River valley(YRV) is valuable for agricultural and industrial production and freshwater resource management in China, but remains a major challenge. Earlier mu... Seasonal prediction of summer rainfall over the Yangtze River valley(YRV) is valuable for agricultural and industrial production and freshwater resource management in China, but remains a major challenge. Earlier multi-model ensemble(MME) prediction schemes for summer rainfall over China focus on single-value prediction, which cannot provide the necessary uncertainty information, while commonly-used ensemble schemes for probability density function(PDF) prediction are not adapted to YRV summer rainfall prediction. In the present study, an MME PDF prediction scheme is proposed based on the ENSEMBLES hindcasts. It is similar to the earlier Bayesian ensemble prediction scheme, but with optimization of ensemble members and a revision of the variance modeling of the likelihood function. The optimized ensemble members are regressed YRV summer rainfall with factors selected from model outputs of synchronous 500-h Pa geopotential height as predictors. The revised variance modeling of the likelihood function is a simple linear regression with ensemble spread as the predictor. The cross-validation skill of 1960–2002 YRV summer rainfall prediction shows that the new scheme produces a skillful PDF prediction, and is much better-calibrated, sharper, and more accurate than the earlier Bayesian ensemble and raw ensemble. 展开更多
关键词 probability density function seasonal prediction multi-model ensemble Yangtze River valley summer rainfall Bayesian scheme
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A Hybrid Neural Network Model for Marine Dissolved Oxygen Concentrations Time-Series Forecasting Based on Multi-Factor Analysis and a Multi-Model Ensemble 被引量:4
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作者 Hui Liu Rui Yang +1 位作者 Zhu Duan Haiping Wu 《Engineering》 SCIE EI 2021年第12期1751-1765,共15页
Dissolved oxygen(DO)is an important indicator of aquaculture,and its accurate forecasting can effectively improve the quality of aquatic products.In this paper,a new DO hybrid forecasting model is proposed that includ... Dissolved oxygen(DO)is an important indicator of aquaculture,and its accurate forecasting can effectively improve the quality of aquatic products.In this paper,a new DO hybrid forecasting model is proposed that includes three stages:multi-factor analysis,adaptive decomposition,and an optimizationbased ensemble.First,considering the complex factors affecting DO,the grey relational(GR)degree method is used to screen out the environmental factors most closely related to DO.The consideration of multiple factors makes model fusion more effective.Second,the series of DO,water temperature,salinity,and oxygen saturation are decomposed adaptively into sub-series by means of the empirical wavelet transform(EWT)method.Then,five benchmark models are utilized to forecast the sub-series of EWT decomposition.The ensemble weights of these five sub-forecasting models are calculated by particle swarm optimization and gravitational search algorithm(PSOGSA).Finally,a multi-factor ensemble model for DO is obtained by weighted allocation.The performance of the proposed model is verified by timeseries data collected by the pacific islands ocean observing system(PacIOOS)from the WQB04 station at Hilo.The evaluation indicators involved in the experiment include the Nash–Sutcliffe efficiency(NSE),Kling–Gupta efficiency(KGE),mean absolute percent error(MAPE),standard deviation of error(SDE),and coefficient of determination(R^(2)).Example analysis demonstrates that:①The proposed model can obtain excellent DO forecasting results;②the proposed model is superior to other comparison models;and③the forecasting model can be used to analyze the trend of DO and enable managers to make better management decisions. 展开更多
关键词 Dissolved oxygen concentrations forecasting Time-series multi-step forecasting Multi-factor analysis Empirical wavelet transform decomposition multi-model optimization ensemble
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A Bayesian Scheme for Probabilistic Multi-Model Ensemble Prediction of Summer Rainfall over the Yangtze River Valley 被引量:6
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作者 Li Fang Zeng Qing-Cun Li Chao-Fan 《Atmospheric and Oceanic Science Letters》 2009年第5期314-319,共6页
A Bayesian probabilistic prediction scheme of the Yangtze River Valley (YRV) summer rainfall is proposed to combine forecast information from multi-model ensemble dataset provided by ENSEMBLES project.Due to the low f... A Bayesian probabilistic prediction scheme of the Yangtze River Valley (YRV) summer rainfall is proposed to combine forecast information from multi-model ensemble dataset provided by ENSEMBLES project.Due to the low forecast skill of rainfall in dynamic models,the time series of regressed YRV summer rainfall are selected as ensemble members in the new scheme,instead of commonly-used YRV summer rainfall simulated by models.Each time series of regressed YRV summer rainfall is derived from a simple linear regression.The predictor in each simple linear regression is the skillfully simulated circulation or surface temperature factor which is highly linear with the observed YRV summer rainfall in the training set.The high correlation between the ensemble mean of these regressed YRV summer rainfall and observation benefit extracting more sample information from the ensemble system.The results show that the cross-validated skill of the new scheme over the period of 1960 to 2002 is much higher than equally-weighted ensemble,multiple linear regression,and Bayesian ensemble with simulated YRV summer rainfall as ensemble members.In addition,the new scheme is also more skillful than reference forecasts (random forecast at a 0.01 significance level for ensemble mean and climatology forecast for probability density function). 展开更多
关键词 multi-model ensemble BAYESIAN PROBABILISTIC seasonal prediction
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Validation of the effects of temperature simulated by multi-model ensemble and prediction of mean temperature changes for the next three decades in China
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作者 Ke Liu Jie Pan +1 位作者 ShengCai Tao YinLong Xu 《Research in Cold and Arid Regions》 2012年第1期56-64,共9页
Using series of daily average temperature observations over the period of 1961-1999 of 701 meteorological stations in China, and simulated results of 20 global climate models (such as BCCR_BCM2.0, CGCM3T47) during t... Using series of daily average temperature observations over the period of 1961-1999 of 701 meteorological stations in China, and simulated results of 20 global climate models (such as BCCR_BCM2.0, CGCM3T47) during the same period as the observation, we validate and analyze the simulated results of the models by using three factor statistical method, achieve the results of mul- ti-model ensemble, test and verify the results of multi-model ensemble by using the observation data during the period of 1991-1999. Finally, we analyze changes of the annual mean temperature result of multi-mode ensemble prediction for the period of 2011-2040 under the emission scenarios A2, A1B and B 1. Analyzed results show that: (1) Global climate models can repro- duce Chinese regional spatial distribution of annual mean temperature, especially in low latitudes and eastern China. (2) With the factor of the trend of annual mean temperature changes in reference period, there is an obvious bias between the model and the observation. (3) Testing the result of multi-model ensemble during the period of 1991-1999, we can simulate the trend of temper- ature increase. Compared to observation, the result of different weighing multi-model ensemble prediction is better than the same weighing ensemble. (4) For the period of 20ll-2040, the growth of the annual mean temperature in China, which results from multi-mode ensemble prediction, is above 1℃. In the spatial distribution of annual mean temperature, under the emission scenarios of A2, A1B and B 1, the trend of growth in South China region is the smallest, the increment is less than or equals to 0.8℃; the trends in the northwestern region and south of the Qinghai-Tibet Plateau are the largest, the increment is more than 1℃. 展开更多
关键词 global climate model different weighing multi-model ensemble same weighing multi-model ensemble wanning
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CMIP6 Evaluation and Projection of Temperature and Precipitation over China 被引量:53
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作者 Xiaoling YANG Botao ZHOU +1 位作者 Ying XU Zhenyu HAN 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2021年第5期817-830,共14页
This article evaluates the performance of 20 Coupled Model Intercomparison Project phase 6(CMIP6)models in simulating temperature and precipitation over China through comparisons with gridded observation data for the ... This article evaluates the performance of 20 Coupled Model Intercomparison Project phase 6(CMIP6)models in simulating temperature and precipitation over China through comparisons with gridded observation data for the period of 1995–2014,with a focus on spatial patterns and interannual variability.The evaluations show that the CMIP6 models perform well in reproducing the climatological spatial distribution of temperature and precipitation,with better performance for temperature than for precipitation.Their interannual variability can also be reasonably captured by most models,however,poor performance is noted regarding the interannual variability of winter precipitation.Based on the comprehensive performance for the above two factors,the“highest-ranked”models are selected as an ensemble(BMME).The BMME outperforms the ensemble of all models(AMME)in simulating annual and winter temperature and precipitation,particularly for those subregions with complex terrain but it shows little improvement for summer temperature and precipitation.The AMME and BMME projections indicate annual increases for both temperature and precipitation across China by the end of the 21st century,with larger increases under the scenario of the Shared Socioeconomic Pathway 5/Representative Concentration Pathway 8.5(SSP585)than under scenario of the Shared Socioeconomic Pathway 2/Representative Concentration Pathway 4.5(SSP245).The greatest increases of annual temperature are projected for higher latitudes and higher elevations and the largest percentage-based increases in annual precipitation are projected to occur in northern and western China,especially under SSP585.However,the BMME,which generally performs better in these regions,projects lower changes in annual temperature and larger variations in annual precipitation when compared to the AMME projections. 展开更多
关键词 CMIP6 evaluation and projection TEMPERATURE PRECIPITATION ensemble
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CMIP6 Evaluation and Projection of Precipitation over Northern China:Further Investigation 被引量:4
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作者 Xiaoling YANG Botao ZHOU +1 位作者 Ying XU Zhenyu HAN 《Advances in Atmospheric Sciences》 SCIE CAS CSCD 2023年第4期587-600,共14页
Based on 20 models from phase 6 of the Coupled Model Intercomparison Project(CMIP6),this article explored possible reasons for differences in simulation biases and projected changes in precipitation in northern China ... Based on 20 models from phase 6 of the Coupled Model Intercomparison Project(CMIP6),this article explored possible reasons for differences in simulation biases and projected changes in precipitation in northern China among the allmodel ensemble(AMME),“highest-ranked”model ensemble(BMME),and“lowest-ranked”model ensemble(WMME),from the perspective of atmospheric circulations and moisture budgets.The results show that the BMME and AMME reproduce the East Asian winter circulations better than the WMME.Compared with the AMME and WMME,the BMME reduces the overestimation of evaporation,thereby improving the simulation of winter precipitation.The three ensemble simulated biases for the East Asian summer circulations are generally similar,characterized by a stronger zonal pressure gradient between the mid-latitudes of the North Pacific and East Asia and a northward displacement of the East Asian westerly jet.However,the simulated vertical moisture advection is improved in the BMME,contributing to the slightly higher performance of the BMME than the AMME and WMME on summer precipitation in North and Northeast China.Compared to the AMME and WMME,the BMME projects larger increases in precipitation in northern China during both seasons by the end of the 21st century under the Shared Socioeconomic Pathway 5-8.5(SSP5-8.5).One of the reasons is that the increase in evaporation projected by the BMME is larger.The projection of a greater dynamic contribution by the BMME also plays a role.In addition,larger changes in the nonlinear components in the BMME projection contribute to a larger increase in winter precipitation in northern China. 展开更多
关键词 CMIP6 ensemble evaluation and projection moisture budget atmospheric circulation
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Application of Satellite Rainfall Estimates in Quantitative Forecasting of Monthly Rainfall Using a Multi-Model Ensemble Approach,Kafue River Basin
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作者 Miyanda M.Syabwengo Progress Nyanga Moses Chisola 《Atmospheric and Climate Sciences》 2025年第2期495-531,共37页
This study evaluates the reliability of North American Multi-Model Ensemble(NMME)models in forecasting monthly rainfall over the Kafue River Basin using a well-selected multi-model ensemble approach.Gridded monthly ra... This study evaluates the reliability of North American Multi-Model Ensemble(NMME)models in forecasting monthly rainfall over the Kafue River Basin using a well-selected multi-model ensemble approach.Gridded monthly rain-fall forecasts were derived from global NMME models and validated against satellite-based rainfall products(SRPs)over the basin.To establish a reliable gridded rainfall dataset,three SRPs—TAMSAT,CHIRPS,and ARC2—were assessed against observed station data.Historical data were divided into a calibration period(1983-2003)at the station level and a validation period(2004-2022)using gridded datasets.The NMME models—CMC2 CANSIPSv2,NASA-GEOSS2S,CANCM4i,GFDL-CM2p1,GFDL-CM2p5-FLOR-B01,GFDL-CM2p5,NCEP-CFSv2,and COLA-RSMAS-CCSM—were downscaled using the Canonical Correlation Analysis(CCA)algorithm and evaluated using Spearman’s correlation coefficient,mean bias,and root mean square error(RMSE).The Anomaly Correlation Coefficient(ACC)was used to assess fore-cast reliability.Results show that CHIRPS outperformed TAMSAT and ARC2 in representing observed rainfall and was used to generate a gridded time-se-ries dataset.NMME model performance improved when validated against gridded datasets rather than station-based point data.The ensemble forecast-ing approach demonstrated reliable monthly rainfall predictions for Decem-ber,January,and March(2004-2022).However,caution is advised when using NMME models for October and February,as these months exhibited negative ACC values(-1)over much of the basin.The study highlights spatial and tem-poral variability in the reliability of individual NMME models,emphasizing the importance of understanding model strengths and limitations for effective climate adaptation and water resource management. 展开更多
关键词 Satellite Rainfall Estimates Quantitative Forecasting Monthly Rainfall multi-model ensemble Kafue River Basin
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Multi Boost with ENN-based ensemble fault diagnosis method and its application in complicated chemical process 被引量:1
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作者 夏崇坤 苏成利 +1 位作者 曹江涛 李平 《Journal of Central South University》 SCIE EI CAS CSCD 2016年第5期1183-1197,共15页
Fault diagnosis plays an important role in complicated industrial process.It is a challenging task to detect,identify and locate faults quickly and accurately for large-scale process system.To solve the problem,a nove... Fault diagnosis plays an important role in complicated industrial process.It is a challenging task to detect,identify and locate faults quickly and accurately for large-scale process system.To solve the problem,a novel Multi Boost-based integrated ENN(extension neural network) fault diagnosis method is proposed.Fault data of complicated chemical process have some difficult-to-handle characteristics,such as high-dimension,non-linear and non-Gaussian distribution,so we use margin discriminant projection(MDP) algorithm to reduce dimensions and extract main features.Then,the affinity propagation(AP) clustering method is used to select core data and boundary data as training samples to reduce memory consumption and shorten learning time.Afterwards,an integrated ENN classifier based on Multi Boost strategy is constructed to identify fault types.The artificial data sets are tested to verify the effectiveness of the proposed method and make a detailed sensitivity analysis for the key parameters.Finally,a real industrial system—Tennessee Eastman(TE) process is employed to evaluate the performance of the proposed method.And the results show that the proposed method is efficient and capable to diagnose various types of faults in complicated chemical process. 展开更多
关键词 extension neural network multi-classifier ensembles margin discriminant projection affinity propagation FAULTDIAGNOSIS TE process
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Improving the simulation of terrestrial water storage anomalies over China using a Bayesian model averaging ensemble approach 被引量:1
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作者 LIU Jian-Guo JIA Bing-Hao +1 位作者 XIE Zheng-Hui SHI Chun-Xiang 《Atmospheric and Oceanic Science Letters》 CSCD 2018年第4期322-329,共8页
The ability to estimate terrestrial water storage(TWS)is essential for monitoring hydrological extremes(e.g.,droughts and floods)and predicting future changes in the hydrological cycle.However,inadequacies in model ph... The ability to estimate terrestrial water storage(TWS)is essential for monitoring hydrological extremes(e.g.,droughts and floods)and predicting future changes in the hydrological cycle.However,inadequacies in model physics and parameters,as well as uncertainties in meteorological forcing data,commonly limit the ability of land surface models(LSMs)to accurately simulate TWS.In this study,the authors show how simulations of TWS anomalies(TWSAs)from multiple meteorological forcings and multiple LSMs can be combined in a Bayesian model averaging(BMA)ensemble approach to improve monitoring and predictions.Simulations using three forcing datasets and two LSMs were conducted over China's Mainland for the period 1979–2008.All the simulations showed good temporal correlations with satellite observations from the Gravity Recovery and Climate Experiment during 2004–08.The correlation coefficient ranged between 0.5 and 0.8 in the humid regions(e.g.,the Yangtze river basin,Huaihe basin,and Zhujiang basin),but was much lower in the arid regions(e.g.,the Heihe basin and Tarim river basin).The BMA ensemble approach performed better than all individual member simulations.It captured the spatial distribution and temporal variations of TWSAs over China's Mainland and the eight major river basins very well;plus,it showed the highest R value(>0.5)over most basins and the lowest root-mean-square error value(<40 mm)in all basins of China.The good performance of the BMA ensemble approach shows that it is a promising way to reproduce long-term,high-resolution spatial and temporal TWSA data. 展开更多
关键词 Terrestrial water storage anomalies multi-forcing and multi-model ensemble simulation Bayesian model averaging spatiotemporal variation UNCERTAINTY
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Projections of temperature extremes based on preferred CMIP5 models:a case study in the Kaidu-Kongqi River basin in Northwest China
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作者 CHEN Li XU Changchun LI Xiaofei 《Journal of Arid Land》 SCIE CSCD 2021年第6期568-580,共13页
The extreme temperature has more outstanding impact on ecology and water resources in arid regions than the average temperature.Using the downscaled daily temperature data from 21 Coupled Model Inter-comparison Projec... The extreme temperature has more outstanding impact on ecology and water resources in arid regions than the average temperature.Using the downscaled daily temperature data from 21 Coupled Model Inter-comparison Project(CMIP)models of NASA Earth Exchange Global Daily Downscaled Projections(NEX-GDDP)and the observation data,this paper analyzed the changes in temporal and spatiotemporal variation of temperature extremes,i.e.,the maximum temperature(Tmax)and minimum temperature(Tmin),in the Kaidu-Kongqi River basin in Northwest China over the period 2020–2050 based on the evaluation of preferred Multi-Model Ensemble(MME).Results showed that the Partial Least Square ensemble mean participated by Preferred Models(PM-PLS)was better representing the temporal change and spatial distribution of temperature extremes during 1961–2005 and was chosen to project the future change.In 2020–2050,the increasing rate of Tmax(Tmin)under RCP(Representative Concentration Pathway)8.5 will be 2.0(1.6)times that under RCP4.5,and that of Tmin will be larger than that of Tmax under each corresponding RCP.Tmin will keep contributing more to global warming than Tmax.The spatial distribution characteristics of Tmax and Tmin under the two RCPs will overall the same;but compared to the baseline period(1986–2005),the increments of Tmax and Tmin in plain area will be larger than those in mountainous area.With the emission concentration increased,however,the response of Tmax in mountainous area will be more sensitive than that in plain area,and that of Tmin will be equivalently sensitive in mountainous area and plain area.The impacts induced by Tmin will be universal and farreaching.Results of spatiotemporal variation of temperature extremes indicate that large increases in the magnitude of warming in the basin may occur in the future.The projections can provide the scientific basis for water and land plan management and disaster prevention and mitigation in the inland river basin. 展开更多
关键词 temperature extremes multi-model ensemble RCP projection Kaidu-Kongqi River basin
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Climate Change Projections for Mediterranean Region with Focus over Alpine Region and Italy
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作者 Paola Faggian 《Journal of Environmental Science and Engineering(B)》 2015年第9期482-500,共19页
Climate change projections over the Mediterranean region have been elaborated by using the outputs of ten ENSEMBLES regional climate simulations with an horizontal resolution of 25 km under the SRES A1B emission scena... Climate change projections over the Mediterranean region have been elaborated by using the outputs of ten ENSEMBLES regional climate simulations with an horizontal resolution of 25 km under the SRES A1B emission scenario. The analysis concerns some surface atmospheric variables: mean sea level pressure, temperature, precipitation and wind speed. At first, model validations have been performed by comparing model results with E-OBS and ERA-Interim data in reproducing the last decades over some Italian sub-areas and the Alpine region. In spite of the considerable spread in the models' performances to represent the reference climate, a multi-model reconstruction has been computed and some seasonal climate change projections have been elaborated. About the mean climate changes, the more significant signals expected by 2050 are a maximum warming (about 2 ~C) and maximum drying (about 20%) in the southern Europe in summer. Moreover, the results indicate an increasing risk for some severe weather conditions: more days of extremely high temperature in summer over the whole area, a greater occurrence of flooding and storms over coasts during spring and autumn seasons and a more serious wet-snow event over Alpine region in winter. No significant signals of wind changes have been detected. 展开更多
关键词 ensembleS simulations Mediterranean climate change future multi-model projections.
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Intercomparison of multi-model ensemble-processing strategies within a consistent framework for climate projection in China 被引量:4
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作者 Huanhuan ZHU Zhihong JIANG +5 位作者 Laurent LI Wei LI Sheng JIANG Panyu ZHOU Weihao ZHAO Tong LI 《Science China Earth Sciences》 SCIE EI CAS CSCD 2023年第9期2125-2141,共17页
Climate change adaptation and relevant policy-making need reliable projections of future climate.Methods based on multi-model ensemble are generally considered as the most efficient way to achieve the goal.However,the... Climate change adaptation and relevant policy-making need reliable projections of future climate.Methods based on multi-model ensemble are generally considered as the most efficient way to achieve the goal.However,their efficiency varies and inter-comparison is a challenging task,as they use a variety of target variables,geographic regions,time periods,or model pools.Here,we construct and use a consistent framework to evaluate the performance of five ensemble-processing methods,i.e.,multimodel ensemble mean(MME),rank-based weighting(RANK),reliability ensemble averaging(REA),climate model weighting by independence and performance(ClimWIP),and Bayesian model averaging(BMA).We investigate the annual mean temperature(Tav)and total precipitation(Prcptot)changes(relative to 1995–2014)over China and its seven subregions at 1.5 and 2℃warming levels(relative to pre-industrial).All ensemble-processing methods perform better than MME,and achieve generally consistent results in terms of median values.But they show different results in terms of inter-model spread,served as a measure of uncertainty,and signal-to-noise ratio(SNR).ClimWIP is the most optimal method with its good performance in simulating current climate and in providing credible future projections.The uncertainty,measured by the range of 10th–90th percentiles,is reduced by about 30%for Tav,and 15%for Prcptot in China,with a certain variation among subregions.Based on ClimWIP,and averaged over whole China under 1.5/2℃global warming levels,Tav increases by about 1.1/1.8℃(relative to 1995–2014),while Prcptot increases by about 5.4%/11.2%,respectively.Reliability of projections is found dependent on investigated regions and indices.The projection for Tav is credible across all regions,as its SNR is generally larger than 2,while the SNR is lower than 1 for Prcptot over most regions under 1.5℃warming.The largest warming is found in northeastern China,with increase of 1.3(0.6–1.7)/2.0(1.4–2.6)℃(ensemble’s median and range of the 10th–90th percentiles)under 1.5/2℃warming,followed by northern and northwestern China.The smallest but the most robust warming is in southwestern China,with values exceeding 0.9(0.6–1.1)/1.5(1.1–1.7)℃.The most robust projection and largest increase is achieved in northwestern China for Prcptot,with increase of 9.1%(–1.6–24.7%)/17.9%(0.5–36.4%)under 1.5/2℃warming.Followed by northern China,where the increase is 6.0%(–2.6–17.8%)/11.8%(2.4–25.1%),respectively.The precipitation projection is of large uncertainty in southwestern China,even with uncertain sign of variation.For the additional half-degree warming,Tav increases more than 0.5℃throughout China.Almost all regions witness an increase of Prcptot,with the largest increase in northwestern China. 展开更多
关键词 multi-model ensemble simulation ensemble-processing strategy Global warming targets Climate projection uncertainty assessment Regional climate change in China
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AttBoost:一种针对在线教育的新型成绩综合评价模型
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作者 高瑞玲 侯英琦 +5 位作者 张金 谭文安 李丽萍 白双杰 申奥 邓晨欣 《上海第二工业大学学报》 2025年第2期191-201,共11页
针对在线教育的教学模式单一化、交互性差等问题,采用相关性分析验证学生过程学习数据与最终成绩的关联性,提出一种新型的学业预测模型AttBoost。该模型引入多头自注意力机制,以增强对关键特征的感知能力,并融合极致梯度提升(eXtreme Gr... 针对在线教育的教学模式单一化、交互性差等问题,采用相关性分析验证学生过程学习数据与最终成绩的关联性,提出一种新型的学业预测模型AttBoost。该模型引入多头自注意力机制,以增强对关键特征的感知能力,并融合极致梯度提升(eXtreme Gradient Boosting,XGBoost)集成学习算法结构,深度挖掘学生的真实过程学习数据进行成绩预测。实验结果表明,AttBoost模型在大规模真实数据集上表现出效果和性能的综合优势:AttBoost模型效果优于Kmeans-BP、XGBoost、随机森林、决策树、逻辑回归、支持向量机等传统机器学习模型;效果基本持平于深度学习模型,但是其性能显著优于深度学习模型。AttBoost模型可作为学生学情分析和学业预警系统的核心算法,为个性化教学提供有力支持。 展开更多
关键词 在线教育 成绩预测 注意力机制 集成学习
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亚洲中高纬区生态系统对高温热浪暴露度的多模式集合预估
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作者 孙晓玲 谢文欣 周波涛 《气候变化研究进展》 北大核心 2025年第5期659-670,共12页
基于8个CMIP6模式的逐日最高气温以及逐月叶面积指数(LAI)、总初级生产力(GPP)和净初级生产力(NPP)数据,预估了3种情景(SSP1-2.6、SSP2-4.5、SSP5-8.5)下亚洲中高纬区高温热浪日数(HWD)的未来变化以及该区生态系统对其暴露度的响应。多... 基于8个CMIP6模式的逐日最高气温以及逐月叶面积指数(LAI)、总初级生产力(GPP)和净初级生产力(NPP)数据,预估了3种情景(SSP1-2.6、SSP2-4.5、SSP5-8.5)下亚洲中高纬区高温热浪日数(HWD)的未来变化以及该区生态系统对其暴露度的响应。多模式集合(MME)预估结果表明:未来3种情景下整个亚洲中高纬区的HWD将增加。温室气体排放越多,HWD增加越显著。随着高温热浪的增加,未来LAI、GPP和NPP的暴露度也将增加。其中以SSP5-8.5情景下的增幅最大,LAI、GPP和NPP的暴露度到21世纪末期相比参考时期(1995—2014年)将分别增加12.1倍,14.9倍和14.3倍,特别是在勘察加半岛、中亚南部、中国新疆、韩国和日本等地。从影响陆地生态系统暴露度的因素来看,气候因子占主导作用,其次为非线性因子,生态因子的贡献最小。随着温室气体排放增多,从21世纪近期到末期,气候和生态因子的贡献逐渐减小,非线性因子的贡献不断增大,高温热浪对陆地生态系统的影响将更倾向于气候和生态系统的综合作用。 展开更多
关键词 高温热浪 生态系统暴露度 亚洲中高纬 SSP情景 多模式集合预估
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