Calamitas vehiculi aeris

Multi tool use

Gubernator ex aeroplano F-14 eicitur.
Calamitas vehiculi aeris est calamitas vehiculi aeris sicut sinister casus aeroplani
occurens aut in terra aut in volatu. Praecipue definitur in spatio abhinc vector vehiculo inscendat usque exeat et operans vehiculi securitatem affecit aut vectorem nocet. [1]
Fons |
↑ AirSafe.com (23 Ianuariis, 2009). "Definitions of Key Terms Used by AirSafe.com"

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Vicimedia Communia plura habent quae ad Calamitates vehiculorum aerium spectant.
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