Revolutio Februaria Russica

Multi tool use
Revolutio Februaria Russica (Russice Февральская революция, tr. Fevral'skaja revoljucija) fuit rerum publicarum commutatio in Imperio Russico anno 1917, quae causa Russia facta est res publica.
Revolutio Petropoli in urbe, tunc metropoli Russiae, die 23 Februarii secundum Calendarium Iulianum (8 Martii secundum Gregorianum) anno 1917 incepit. Tumultus operariorum officinarum, manifestatio ex die inter gentes feminarum atque militum Petropoli acciderunt. Die 2 Martii (15 Martii Calendarii Gregoriani) Nicolaus II, Russorum Imperator, Pscoviae abdicavit thronum ut frater eius iuvenis, magnus dux Michael, fiat imperator. Die consequente Michael etiam abdicavit, et auctoritas suprema transmissa est ad Gubernationem Temporalem Russiae.
Nexus interni
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Vicimedia Communia plura habent quae ad Revolutionem Februariam Russicam spectant.
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