Examination of Various Feature Selection Approaches for Daily Precipitation Downscaling in Different Climates
Published 2021 View Full Article
- Home
- Publications
- Publication Search
- Publication Details
Title
Examination of Various Feature Selection Approaches for Daily Precipitation Downscaling in Different Climates
Authors
Keywords
-
Journal
WATER RESOURCES MANAGEMENT
Volume -, Issue -, Pages -
Publisher
Springer Science and Business Media LLC
Online
2021-01-07
DOI
10.1007/s11269-020-02701-6
References
Ask authors/readers for more resources
Related references
Note: Only part of the references are listed.- Evaluating the Sensitivity of Projected Reservoir Reliability to the Choice of Climate Projection: A Case Study of Bull Run Watershed, Portland, Oregon
- (2020) Nima Fayaz et al. WATER RESOURCES MANAGEMENT
- A Robust Method to Update Local River Inundation Maps Using Global Climate Model Output and Weather Typing Based Statistical Downscaling
- (2020) M. Bermúdez et al. WATER RESOURCES MANAGEMENT
- LASSO as a tool for downscaling summer rainfall over the Yangtze River Valley
- (2019) Ran-Ran He et al. HYDROLOGICAL SCIENCES JOURNAL-JOURNAL DES SCIENCES HYDROLOGIQUES
- Stepwise extreme learning machine for statistical downscaling of daily maximum and minimum temperature
- (2019) Mahsa MoradiKhaneghahi et al. STOCHASTIC ENVIRONMENTAL RESEARCH AND RISK ASSESSMENT
- An evaluation of two statistical downscaling models for downscaling monthly precipitation in the Heihe River basin of China
- (2019) Haifeng Su et al. THEORETICAL AND APPLIED CLIMATOLOGY
- Performance of Post-Processed Methods in Hydrological Predictions Evaluated by Deterministic and Probabilistic Criteria
- (2019) Xiang-Quan Li et al. WATER RESOURCES MANAGEMENT
- Combination of Multiple Data-Driven Models for Long-Term Monthly Runoff Predictions Based on Bayesian Model Averaging
- (2019) Huaping Huang et al. WATER RESOURCES MANAGEMENT
- Identify optimal predictors of statistical downscaling of summer daily precipitation in China from three-dimensional large-scale variables
- (2019) Yonghe Liu et al. ATMOSPHERIC RESEARCH
- Development of a time-varying downscaling model considering non-stationarity using a Bayesian approach
- (2018) Subbarao Pichuka et al. INTERNATIONAL JOURNAL OF CLIMATOLOGY
- Optimal Selection of Predictor Variables in Statistical Downscaling Models of Precipitation
- (2018) Ramesh S. V. Teegavarapu et al. WATER RESOURCES MANAGEMENT
- Response of vegetation cover to climate variability in protected and grazed arid rangelands of South Australia
- (2018) Xunjian Long et al. JOURNAL OF ARID ENVIRONMENTS
- Advances in projection of climate change impacts using supervised nonlinear dimensionality reduction techniques
- (2016) Ali Sarhadi et al. CLIMATE DYNAMICS
- Reconstructed Regional Mean Climate with Bayesian Model Averaging: A Case Study for Temperature Reconstruction in the Yunnan–Guizhou Plateau, China
- (2016) Xianliang Zhang et al. JOURNAL OF CLIMATE
- Performance comparison of three predictor selection methods for statistical downscaling of daily precipitation
- (2016) Chunli Yang et al. THEORETICAL AND APPLIED CLIMATOLOGY
- A new statistical precipitation downscaling method with Bayesian model averaging: a case study in China
- (2015) Xianliang Zhang et al. CLIMATE DYNAMICS
- Using multi-model ensembles to improve the simulated effects of land use/cover change on temperature: a case study over northeast China
- (2015) Xianliang Zhang et al. CLIMATE DYNAMICS
- Probabilistic Multisite Statistical Downscaling for Daily Precipitation Using a Bernoulli–Generalized Pareto Multivariate Autoregressive Model
- (2015) M. A. Ben Alaya et al. JOURNAL OF CLIMATE
- Input selection for long-lead precipitation prediction using large-scale climate variables: a case study
- (2015) Azadeh Ahmadi et al. JOURNAL OF HYDROINFORMATICS
- Projections of the Ganges–Brahmaputra precipitation—Downscaled from GCM predictors
- (2014) Md Shahriar Pervez et al. JOURNAL OF HYDROLOGY
- Statistical downscaling of temperature using three techniques in the Tons River basin in Central India
- (2014) Darshana Duhan et al. THEORETICAL AND APPLIED CLIMATOLOGY
- Statistical downscaling of precipitation using quantile regression
- (2013) Reza Tareghian et al. JOURNAL OF HYDROLOGY
- Performance assessment of different data mining methods in statistical downscaling of daily precipitation
- (2013) M. Nasseri et al. JOURNAL OF HYDROLOGY
- Assessment of hydrologic impacts of climate change in Tunga-Bhadra river basin, India with HEC-HMS and SDSM
- (2012) R. Meenu et al. HYDROLOGICAL PROCESSES
- Downscaling of precipitation on a lake basin: evaluation of rule and decision tree induction algorithms
- (2012) Manish Kumar Goyal et al. HYDROLOGY RESEARCH
- Comparison and evaluation of multiple GCMs, statistical downscaling and hydrological models in the study of climate change impacts on runoff
- (2012) Hua Chen et al. JOURNAL OF HYDROLOGY
- A comparison of three methods for downscaling daily precipitation in the Punjab region
- (2011) Deepashree Raje et al. HYDROLOGICAL PROCESSES
- Evaluation of two statistical downscaling models for daily precipitation over an arid basin in China
- (2011) Zhaofei Liu et al. INTERNATIONAL JOURNAL OF CLIMATOLOGY
- Uncertainty of downscaling method in quantifying the impact of climate change on hydrology
- (2011) Jie Chen et al. JOURNAL OF HYDROLOGY
- AIC model selection and multimodel inference in behavioral ecology: some background, observations, and comparisons
- (2010) Kenneth P. Burnham et al. BEHAVIORAL ECOLOGY AND SOCIOBIOLOGY
- Statistical Downscaling of Precipitation Using Machine Learning with Optimal Predictor Selection
- (2010) Mohammad Reza Najafi et al. JOURNAL OF HYDROLOGIC ENGINEERING
- Automated regression-based statistical downscaling tool
- (2007) Masoud Hessami et al. ENVIRONMENTAL MODELLING & SOFTWARE
Add your recorded webinar
Do you already have a recorded webinar? Grow your audience and get more views by easily listing your recording on Peeref.
Upload NowBecome a Peeref-certified reviewer
The Peeref Institute provides free reviewer training that teaches the core competencies of the academic peer review process.
Get Started