Follow
Dilhani I. Jayathilake, Ph.D.
Dilhani I. Jayathilake, Ph.D.
Verified email at tamucc.edu
Title
Cited by
Cited by
Year
Metal oxide based multisensor array and portable database for field analysis of antioxidants
E Sharpe, R Bradley, T Frasco, D Jayathilaka, A Marsh, S Andreescu
Sensors and Actuators B: Chemical 193, 552-562, 2014
592014
Real-time forecasting of time series in financial markets using sequentially trained dual-LSTM
K Gajamannage, Y Park, DI Jayathilake
Expert Systems with Applications, 119879, 2023
242023
Understanding the role of hydrologic model structures on evapotranspiration-driven sensitivity
DI Jayathilake, T Smith
Hydrological Sciences Journal 65 (9), 1474-1489, 2020
142020
Assessing the impact of PET estimation methods on hydrologic model performance
DI Jayathilake, T Smith
Hydrology Research 52 (2), 373-388, 2021
132021
Recurrent neural networks for dynamical systems: Applications to ordinary differential equations, collective motion, and hydrological modeling
K Gajamannage, DI Jayathilake, Y Park, EM Bollt
Chaos: An Interdisciplinary Journal of Nonlinear Science 33 (1), 013109, 2023
92023
Recurrent Neural Networks for Dynamical Systems: Applications to Ordinary Differential Equations, Collective Motion, and Hydrological Modeling
Y Park, K Gajamannage, DI Jayathilake, EM Bollt
arXiv preprint arXiv:2202.07022, 2022
92022
Predicting the temporal transferability of model parameters through a hydrological signature analysis
DI Jayathilake, T Smith
Frontiers of Earth Science 14 (1), 110-123, 2020
62020
Identifying the Influence of Systematic Errors in Potential Evapotranspiration on Rainfall–Runoff Models
DI Jayathilake, T Smith
Journal of Hydrologic Engineering 27 (2), 04021047, 2022
22022
Exploring the Sensitivity of Hydrologic Models to Potential Evapotranspiration Inputs
DI Jayathilake
Clarkson University, 2019
2019
Multi-Model Analysis to Understand the Sensitivity of Rainfall-Runoff Model Structure to Potential Evapotranspiration Inputs.
DI Jayathilake, TJ Smith
AGU Fall Meeting Abstracts 2018, H43D-2425, 2018
2018
Sensitivity of Rainfall-runoff Model Parametrization and Performance to Potential Evaporation Inputs
DI Jayathilake, TJ Smith
AGU Fall Meeting Abstracts 2017, H23C-1675, 2017
2017
Can Signatures Predict Hydrologic Model Performance in Validation Mode?
DI Jayathilake, TJ Smith
2015 AGU Fall Meeting, 2015
2015
An Alternative View of the Calibration-validation Problem: Seeking to Identify Predictive Hydrologic Signatures: A Thesis
D Jayathilake
Clarkson University, 2014
2014
The system can't perform the operation now. Try again later.
Articles 1–13