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Wednesday's Rare Super Blue Blood Moon: How To See It And What We Can Learn

Earth

Early Wednesday morning, there's a lunar event that hasn't been seen since 1866. And scientists say data gathered during the event could help them figure out where to land a rover on the moon.

(Image credit: Geert Vanden Wijngaert/AP)

News : NPR http://ift.tt/2Fw3gMB January 31, 2018 at 01:04AM

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