Moon Camp Challenge 2020-2021 Winners

Cortez Deacetis

Agency

18/05/2021
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The European Place Company, Airbus Basis and Autodesk are delighted to announce the winning assignments of the Moon Camp Problem 2020-2021. 

This 12 months, a report quantity of groups acknowledged the obstacle to 3D design and style an progressive and futuristic Moon Camp to host the upcoming space explorers. The 3rd edition of the Moon Camp Challenge concerned the participation of 4173 pupils from 53 nations around the world across the globe, such as 22 from ESA Member States, Canada, Slovenia and Latvia. 

ESA, Airbus Basis and Autodesk congratulate all teams that completed this challenging problem! Perfectly completed!

1336 groups from 46 countries, for a full of 2541 pupils, joined the non-competitive newcomers group, Moon Camp Discovery, and intended a rocket, a rover, a lunar lander, an orbital area station or astronaut’s quarters. 

Moon Camp design and style by Mona Astra team from Usa

For the intermediate Moon Camp Explorers category, 323 teams from 31 nations around the world (which include 15 ESA Member States, Canada and Latvia), for a full of 1112 pupils, developed a entire Moon base working with Tinkercad. 

The jury composed of a panel of specialists in 3D layout, place technologies and lunar exploration was incredibly impressed with the good quality of the jobs. They had the tricky endeavor of deciding upon the three greatest entries from ESA Member States and the three ideal from non-ESA Member States in each and every group. All the entries ended up judged on their creativeness and innovation, feasibility, good quality of the 3D design and the adaptability of the style to the lunar natural environment.

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