Invited perspectives : how machine learning will change flood risk and impact assessment
Increasing amounts of data, together with more computing power and better machine learning algorithms to analyse the data, are causing changes in almost every aspect of our lives. This trend is expected to continue as more data keep becoming available, computing power keeps improving and machine lea...
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sg-ntu-dr.10356-1439012020-10-03T20:10:59Z Invited perspectives : how machine learning will change flood risk and impact assessment Wagenaar, Dennis Curran, Alex Balbi, Mariano Bhardwaj, Alok Soden, Robert Hartato, Emir Mestav Sarica, Gizem Ruangpan, Laddaporn Molinario, Giuseppe Lallemant, David Institute of Catastrophe Risk Management Earth Observatory of Singapore Engineering::Environmental engineering Machine Learning Flood Increasing amounts of data, together with more computing power and better machine learning algorithms to analyse the data, are causing changes in almost every aspect of our lives. This trend is expected to continue as more data keep becoming available, computing power keeps improving and machine learning algorithms keep improving as well. Flood risk and impact assessments are also being influenced by this trend, particularly in areas such as the development of mitigation measures, emergency response preparation and flood recovery planning. Machine learning methods have the potential to improve accuracy as well as reduce calculating time and model development cost. It is expected that in the future more applications will become feasible and many process models and traditional observation methods will be replaced by machine learning. Examples of this include the use of machine learning on remote sensing data to estimate exposure and on social media data to improve flood response. Some improvements may require new data collection efforts, such as for the modelling of flood damages or defence failures. In other components, machine learning may not always be suitable or should be applied complementary to process models, for example in hydrodynamic applications. Overall, machine learning is likely to drastically improve future flood risk and impact assessments, but issues such as applicability, bias and ethics must be considered carefully to avoid misuse. This paper presents some of the current developments on the application of machine learning in this field and highlights some key needs and challenges. National Research Foundation (NRF) Published version This research has been supported in part by Deltares and the National Research Foundation, Prime Minister’s Office, Singapore, under the NRF-NRFF2018-06 award. 2020-09-30T06:40:18Z 2020-09-30T06:40:18Z 2020 Journal Article Wagenaar, D., Curran, A., Balbi, M., Bhardwaj, A., Soden, R., Hartato, E., . . . Lallemant, D. (2020). Invited perspectives : how machine learning will change flood risk and impact assessment. Natural Hazards and Earth System Sciences, 20(4), 1149-1161. doi:10.5194/nhess-20-1149-2020 1561-8633 https://hdl.handle.net/10356/143901 10.5194/nhess-20-1149-2020 4 20 1149 1161 en Natural Hazards and Earth System Sciences © 2020 The Author(s). This work is distributed under the Creative Commons Attribution 4.0 License. application/pdf |
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Engineering::Environmental engineering Machine Learning Flood Wagenaar, Dennis Curran, Alex Balbi, Mariano Bhardwaj, Alok Soden, Robert Hartato, Emir Mestav Sarica, Gizem Ruangpan, Laddaporn Molinario, Giuseppe Lallemant, David Invited perspectives : how machine learning will change flood risk and impact assessment |
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Increasing amounts of data, together with more computing power and better machine learning algorithms to analyse the data, are causing changes in almost every aspect of our lives. This trend is expected to continue as more data keep becoming available, computing power keeps improving and machine learning algorithms keep improving as well. Flood risk and impact assessments are also being influenced by this trend, particularly in areas such as the development of mitigation measures, emergency response preparation and flood recovery planning. Machine learning methods have the potential to improve accuracy as well as reduce calculating time and model development cost. It is expected that in the future more applications will become feasible and many process models and traditional observation methods will be replaced by machine learning. Examples of this include the use of machine learning on remote sensing data to estimate exposure and on social media data to improve flood response. Some improvements may require new data collection efforts, such as for the modelling of flood damages or defence failures. In other components, machine learning may not always be suitable or should be applied complementary to process models, for example in hydrodynamic applications. Overall, machine learning is likely to drastically improve future flood risk and impact assessments, but issues such as applicability, bias and ethics must be considered carefully to avoid misuse. This paper presents some of the current developments on the application of machine learning in this field and highlights some key needs and challenges. |
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Institute of Catastrophe Risk Management Wagenaar, Dennis Curran, Alex Balbi, Mariano Bhardwaj, Alok Soden, Robert Hartato, Emir Mestav Sarica, Gizem Ruangpan, Laddaporn Molinario, Giuseppe Lallemant, David |
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Wagenaar, Dennis Curran, Alex Balbi, Mariano Bhardwaj, Alok Soden, Robert Hartato, Emir Mestav Sarica, Gizem Ruangpan, Laddaporn Molinario, Giuseppe Lallemant, David |
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Wagenaar, Dennis |
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Invited perspectives : how machine learning will change flood risk and impact assessment |
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Invited perspectives : how machine learning will change flood risk and impact assessment |
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Invited perspectives : how machine learning will change flood risk and impact assessment |
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Invited perspectives : how machine learning will change flood risk and impact assessment |
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Invited perspectives : how machine learning will change flood risk and impact assessment |
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invited perspectives : how machine learning will change flood risk and impact assessment |
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2020 |
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https://hdl.handle.net/10356/143901 |
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