Overnight road closures for carriageway reconstruction in Grimsby

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Overnight road closures for carriageway reconstruction in Grimsby
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The works will begin on October 10 and will take approximately eight weeks to complete Grimsby

North East Lincolnshire Council and its regeneration partner, EQUANS, are carrying out works on Great Coates Road, between Larmour Road / Wybers Way junction and Yarborough Road / Little Coates Road junction.The installation of a new parallel crossing adjacent to the River Freshney, replacement of the existing bridge parapet, fencing, and footway resurfacing.

Following the removal of the traffic island, the main civil works will begin. This will include kerbing, gully replacements, the construction of a new section of footpath, existing footpath resurfacing, installation of beacons for the new parallel crossing and the installation of a new bridge parapet.

From Monday 10 October to Wednesday 16 November, there will be 24-hour temporary traffic signals. And from Thursday 17 November to Friday 25 November, there will be daytime temporary traffic signals between 6am and 7pm.

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Overnight road closures for carriageway reconstruction in GrimsbyOvernight road closures for carriageway reconstruction in GrimsbyThe works will begin on October 10 and will take approximately eight weeks to complete Grimsby
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