Follow
Jangho Park
Title
Cited by
Cited by
Year
Surrogate optimization of deep neural networks for groundwater predictions
J Müller, J Park, R Sahu, C Varadharajan, B Arora, B Faybishenko, ...
Journal of Global Optimization 81, 203-231, 2021
722021
A new multivariate EWMA control chart via multiple testing
J Park, CH Jun
Journal of Process Control 26, 51-55, 2015
312015
Impact of input feature selection on groundwater level prediction from a multi-layer perceptron neural network
RK Sahu, J Müller, J Park, C Varadharajan, B Arora, B Faybishenko, ...
Frontiers in Water 2, 573034, 2020
292020
Long-term missing value imputation for time series data using deep neural networks
J Park, J Müller, B Arora, B Faybishenko, G Pastorello, C Varadharajan, ...
Neural Computing and Applications 35 (12), 9071-9091, 2023
222023
An exponentially weighted moving average chart controlling false discovery rate
SH Lee, JH Park, CH Jun
Journal of Statistical Computation and Simulation 84 (8), 1830-1840, 2014
222014
A multistage distributionally robust optimization approach to water allocation under climate uncertainty
J Park, G Bayraksan
European Journal of Operational Research 306 (2), 849-871, 2023
162023
Multivariate process control chart for controlling the false discovery rate
JH Park, CH Jun
Industrial Engineering and Management Systems 11 (4), 385-389, 2012
142012
Variance reduction for sequential sampling in stochastic programming
J Park, R Stockbridge, G Bayraksan
Annals of Operations Research, 2021
52021
Analysis of backwash settings to maximize net water production in an engineering-scale ultrafiltration system for water reuse
MA Alhussaini, ZM Binger, BM Souza-Chaves, OO Amusat, J Park, ...
Journal of Water Process Engineering 53, 103761, 2023
22023
Data-Model Integration and Machine Learning Approaches for Hydrobiogeochemical Modeling Applications
C Varadharajan, D Agarwal, B Arora, M Burrus, D Christianson, ...
AGU Fall Meeting Abstracts 2021, B15J-1551, 2021
2021
Sensitivity Analysis of Input Feature Selection in Multi-Layer Perceptron Neural Network to Predict Groundwater Levels
R Sahu, J Müller, J Park, C Varadharajan, B Arora, B Faybishenko, ...
AGU Fall Meeting 2020, 2020
2020
A data-driven approach to predicting the impacts of streamflow disturbance on water quality in river corridors
C Varadharajan, VC Hendrix, DS Christianson, H Weierbach, J Müller, ...
AGU Fall Meeting Abstracts 2020, H103-10, 2020
2020
Predicting Daily Groundwater Levels with Deep Learning Models
R Sahu, J Müller, J Park, C Varadharajan, B Arora, B Faybishenko, ...
AGU Fall Meeting Abstracts 2019, H31I-1839, 2019
2019
Utilizing Diverse Data in Scientific Analysis and Modeling for Water Resource Management
C Varadharajan, B Arora, S Cholia, DS Christianson, J Damerow, ...
AGU Fall Meeting Abstracts 2019, IN51A-01, 2019
2019
Data-Driven Stochastic Optimization with Application to Water Resources Management
J Park
The Ohio State University, 2019
2019
The system can't perform the operation now. Try again later.
Articles 1–15