Hydrological Process Surrogate Modelling and Simulation with Neural Networks

Conference Paper (2020)
Author(s)

Ruixi Zhang (National University of Singapore)

Remmy Zen (National University of Singapore)

Jifang Xing (National University of Singapore)

Dewa Made Sri Arsa (Udayana University)

Abhishek Saha (Hydroinformatics Institute, Singapore, TU Delft - Water Resources)

Stéphane Bressan (National University of Singapore)

DOI related publication
https://doi.org/10.1007/978-3-030-47436-2_34 Final published version
More Info
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Publication Year
2020
Language
English
Pages (from-to)
449-461
ISBN (print)
9783030474355
Event
Downloads counter
182

Abstract

Environmental sustainability is a major concern for urban and rural development. Actors and stakeholders need economic, effective and efficient simulations in order to predict and evaluate the impact of development on the environment and the constraints that the environment imposes on development. Numerical simulation models are usually computation expensive and require expert knowledge. We consider the problem of hydrological modelling and simulation. With a training set consisting of pairs of inputs and outputs from an off-the-shelves simulator, We show that a neural network can learn a surrogate model effectively and efficiently and thus can be used as a surrogate simulation model. Moreover, we argue that the neural network model, although trained on some example terrains, is generally capable of simulating terrains of different sizes and spatial characteristics.