Exploring Water Management Strategies for Mitigating Local Drought Impacts in the Netherlands using Data-Driven methods previously used for Simulations to Projections

Sandra Margrit Hauswirth*, Marc F.P. Bierkens, Vincent Beijk, Niko Wanders

*Corresponding author for this work

Research output: Contribution to conferenceAbstractAcademic

Abstract

Extreme events like droughts and floods can have significant impact on the environment and society. As a result effective water management strategies are necessary to limit and mitigate these impacts. In the past decade, the Netherlands has experienced several extreme drought events, raising increasing interest in adapting water management practices, traditionally focused on floods, to address droughts more directly and effectively.

Machine learning techniques have previously been tested for the same region in terms of seasonal forecasting1 and projections2 under different warming scenarios3, showing the additional benefit of these techniques in downscaling large-scale input data to local-scale relevant information for water managers.

This recent work aims to go a step further to explore water management options for drought mitigation by incorporating machine learning in a framework of hydrological simulations, water management scenarios and impact functions. By incorporating the insights gained from previous work, a closer focus is given on human aspects and its impact on local drought management.

We developed a Multi-Target Long Short-Term Memory (LSTM) model which facilitates the exploration of different water management options. An essential finding is that taking proactive actions earlier can further limit drought impacts and help to mitigate long recovery periods that would have been observed otherwise. With the Multi-LSTM water management model we can potentially reduce drought impact by 3-5% for the droughts in 2003, 2015 and 2018. As a results, this work yields valuable insights for operational water management and potential improvements in water management strategies with machine learning techniques to effectively address future drought events.
Original languageEnglish
DOIs
Publication statusPublished - 20 Jan 2025
EventEGU General Assembly 2024 - Vienna, Austria
Duration: 14 Apr 202419 Apr 2024
Conference number: 2024
https://www.egu24.eu/

Conference

ConferenceEGU General Assembly 2024
Abbreviated titleEGU
Country/TerritoryAustria
CityVienna
Period14/04/2419/04/24
Internet address

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