To Dredge or not To Dredge

Data-driven feature engineering of side channels

Student Report (2025)
Author(s)

M. Beeren (TU Delft - Architecture and the Built Environment)

L. Jonker (TU Delft - Architecture and the Built Environment)

Y.A.P. Roorda (TU Delft - Architecture and the Built Environment)

V.J.A. Vanderheeren (TU Delft - Architecture and the Built Environment)

Contributor(s)

E. Verbree – Mentor (TU Delft - Digital Technologies)

B.M. Meijers – Mentor (TU Delft - Digital Technologies)

Pam Sterkman – Mentor (Van Oord Dredging and Marine Contractors)

Irene Pleizier – Mentor (Van Oord Dredging and Marine Contractors)

Faculty
Architecture and the Built Environment
More Info
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Publication Year
2025
Language
English
Graduation Date
11-11-2025
Awarding Institution
Delft University of Technology
Project
channelsGEOIT1501: Synthesis Project
Programme
Geomatics
Faculty
Architecture and the Built Environment
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Abstract

To help prevent flooding of rivers and cities, Dutch maritime contractor Van Oord regularly dredged 52 side channels as part of the Dutch Department of Waterways and Public Works' (Rijkswaterstaat) "Room for Rivers" strategy. Side channels make rivers more resilient to flooding by providing increased flow capacity, buffer space, and a secondary path downstream for water. Van Oord wishes to know how they can better leverage their growing historical data collection to enable predictive maintenance of side channels in the form of dredging.
Instead of developing a complex hydrological model, which would require deep knowledge of river morphology. We, as Geomatics students, extracted insights directly from the available geospatial data. For our 10-week MSc Geomatics Synthesis Project, our main research question is as follows: "How can the features of a side channel be identified and extracted to enable predictive maintenance?"
In order to answer this question for our client Van Oord, we performed a literature review and interviewed domain experts to identify relevant characteristics of side channels. Then, we explored the available geo-spatial data to determine which characteristics can be modeled as features, before processing the data in an FME pipeline to calculate these feature values in an automated, extendible, and understandable way. These features were then stored in a geo-spatial database. Reading from this database, we created a prototype machine learning model that takes the features as input. The model enables analysis of the side channels to derive insights into the sedimentation of side channels, reaching 84% accuracy within a 5cm error for the Bakenhof channel.

The result is a robust FME-based data processing pipeline, a geo-spatial database with 19 unique features for 26 suitable side channels, and a prototype neural network showing significant predictive ability. The product enables the client to better estimate side channel behavior, enabling informed predictive maintenance, as well as allowing the client to better decide moments when expensive channel measurements can be skipped.

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