Primum bellum sinus Persici

Multi tool use
Bellum Sinus Persici Primum inter Iraquiam et Iraniam gerebatur ab 22 Septembris 1980 usque ad 20 Augusti 1988.
Neutra natio vicit, sed multi necati sunt et magnum damnum oeconomicum factum est.
Iraquenses duce Saddamo Hussein gasum venenatum in bello adhibuebant etiam in Kurdos. Fama detulit Iraquenses hoc gasum a populis occidentalibus sicut Germanico accepisse.
Irani liberos in proelium miserunt qui autocineta cataphracta Iraquensia diruerent.
Fortasse Irani vicissent nisi Civitates Foederatae Americae gradatim Iraquenses adiuvissent. Magna classis enim CFAae in sinu Persico erat petrolei protegendi causa.
Nexus interni
- Secundum bellum sinus Persici
- Secundum bellum Iracense
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