Awarded contract

Published

A Single Party and A Multi Party Framework Agreement For Low-Cost Internet-of-Things Solutions for Surface Water Monitoring in Drainage or Gully Systems

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Value

5,000,000 EUR

Close date

2024-11-11

Description

Dublin City Council’s scheduled gully-cleaning programme in recent years has significantly reduced the risk of flood associated with blocked gullies but additional challenges have now been identified. Some of these challenges are outlined below: • Identify drainages/gullies that are blocked or not performing correctly, of which to apply additional maintenance outside of existing inspection and cleaning programmes. • Determine when road gullies are severely surcharged indicating that the underlying surface-water network may be overloaded. • Access reliable monitoring data that can help with root cause analysis on issues faced during storm events. • Optimise responses to flooding incidents in real time while also better understanding historical data and potentially helping to predict future outcomes. . Please note that this project is subject to funding. For further information please refer to documentation available to download from www.etenders.gov.ie Resource ID 4396393.

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