DiTEC-project/DiTEC_WDN_dataset
This repository contains parameter generation, simulation, and encapsulation code for the DiTEC-WDN dataset. Feel free to use it on your "private" WDN!
This project helps water utility managers and hydraulic engineers create comprehensive simulated scenarios for their specific water distribution networks. You provide details about your network, and it generates a wide range of operational conditions and demands. This allows you to thoroughly test and analyze the performance of your water system under various circumstances.
Use this if you need to generate diverse and realistic hydraulic scenarios to evaluate or optimize the performance of your own water distribution network.
Not ideal if you are looking for an existing dataset of water distribution network scenarios without needing to generate new ones for your specific network.
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Language
Python
License
MIT
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Last pushed
Mar 10, 2026
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