Published December 4, 2025 | Version v1
Poster Open

Teaching Sun, Moon and Star Spectra Through Authentic Datasets

Authors/Creators

  • 1. OŠ Pantovčak

Description

This is a poster presented at the 7th Shaw-IAU Workshop on Astronomy for Education, organised by the IAU Office of Astronomy for Education (OAE, https://astro4edu.org/shaw-iau/7th-shaw-iau-workshop/).

Title
Teaching Sun, Moon and Star Spectra Through Authentic Datasets

Presenter:
Danijela Takač (OŠ Pantovčak)

Practical activities for middle/high school students using authentic data to explore astrophysical phenomena. Students analyze real spectral data to identify star types and compositions, understanding spectroscopy's role in revealing stellar properties. They observe sunspots through solar images to study solar cycles, calculate the Wolf number, and determine solar rotation velocity, deepening knowledge of solar activity like flares. Additionally, students calculate the Moon’s phase angle from actual images to understand lunar phases. These activities, using authentic datasets from SDSS, NASA, IRIS, and SOHO, connect theory with real astrophysical data for experiential learning.

Collaborators:
Ana Marija Zaninović (high school physics and astronomy teacher in Zagreb Croatia, member of NAEC Croatia team)

 

About the 7th Shaw-IAU Workshop:
The 7th Shaw-IAU Workshop took place 18 - 21 November 2025. The Shaw-IAU workshops focus on astronomy education for primary and secondary school students and teacher training both in universities and in service. This year's Education focus session on Teaching with authentic data and the Science focus is on Galaxies.

More details can be found on: https://astro4edu.org/shaw-iau/

Keep up to date with future Shaw-IAU Workshops and other opportunities at the IAU Office of Astronomy for Education by joining our mailing list https://astro4edu.org/mailing-list/

Follow the IAU OAE on Bluesky and Facebook under @astro4edu

Files

Danijea Takac- 7th Shaw-IAU Workshop 2025.pdf

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