4 novembre 2019 | International, Terrestre

Multimillion-euro contract: International customer orders air defence systems from Rheinmetall

October 30, 2019 - Rheinmetall has won an order from an international customer for state-of-the-art air defence systems. The contract, which is now official, is worth a total of around €210 million. Delivery is to be complete by 2022.

Among other items, the order encompasses Skymaster command and control systems, X-TAR 3D radars, Oerlikon Revolver Gun MK3-automatic cannon as well as an ammunition package that includes airburst-capable AHEAD rounds. Spare parts, technical documentation and service support round out the order.

As the world's leading supplier of comprehensive ground-based air defence solutions, Rheinmetall combines all relevant sensors, effectors, platforms and C4I assets in overarching, scalable networks. This results in highly effective, modularly configurable ground-based air defence systems that assure maximum operational flexibility throughout the military mission spectrum.

View source version on Rafael Advanced Defense systems Ltd. : https://www.rheinmetall.com/en/rheinmetall_ag/press/news/latest_news/index_18752.php

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