CPLUOS Astrophysics team meeting

Asia/Seoul
물리학과

물리학과

Zoom Meeting https://uos-ac-kr.zoom.us/j/8264902652 Meeting ID: 826 490 2652
Description

https://uos-ac-kr.zoom.us/j/8264902652

    • COSMOLOGY
      • 1
        Hyeonmo's Report
        Speaker: Hyeonmo Koo (University of Seoul)

        Introduction of GALIC code

        • Use DICE code.
      • 2
        Young's report. FoF and MST algorithm
        Speaker: Young Ju

        FoF and MST Algorithm

        • Made Mulguisin repository.
        • In last meeting, one of the topological  information MGS is weird.
        • This time, only plot 50 largest cluster with polar angle.
        • There is another variable that is little bit changed form 'Polar angle'.
        • In the last meeting, one of the topological information from MGS is weird.
      • 3
        Hannah's Report
        Speaker: Hannah Jhee (University of Seoul)

        Halos infalling a cluster through filaments

        • No progress
      • 4
        Seyeon's Report - CLML
        Speaker: Se Yeon Hwang (Universe of Seoul)

        Predicting Cosmological Parameters Using CNN and ViT from Large Scale Simulation

        • Large scale structure
          • Cosmological parameter → Simulation → Output (Large scale structure) → Methodology (2 pt, Machine learning ...)
        • Use PINOCCHIO code
          • Ωm, σ8, w0, wa, ns, h
        • Data
          • Box size = 2 Gpc,
          • Number of particles = 10243
          • Light cone data
          • Made 3-d histogram.
          • Bin size = 64
        • Algorithm
          • CNN (Convolution Neural Newwork)
          • Vit (Vision Transformer)
          • Cvit (Convolution Neural Newwork+Vision Transformer)
        • Result with argumentation
      • 5
        Sumi's report
        Speaker: Sumi Kim (University of Seoul)

        Cosmology of High-Order Statistics (CHOA)

        • Calculation from LSS
        • N-point correlation function
          • 1. N-point result
          • 2. Regressor
          • 3. Estimation
          • 4. Contour
            • Goal: Showing the higher order statistics gains more information than the lower ones.
      • 6
        John Suarez's report

        Physical features from Photo+Spect with DL

        • Spectroscopic data models
          • z < 0.5
          • (Model, Learning rate, Batch size, Epochs, r2)
            • (resnet50, 0.1, 16, 300, 0.849)
          • p = 0.3
            • Dropout before last linear layer
              • Weights from first 6 layer freezed
            • Resnet50 (6 first layers freezed+3 linearlayers [in_features, 512, 256, 1] → Redshift, log_luminosity
        • Deep galaxy net
          • Photometric+spectroscopic data models
            • (Model, Learning rate, Batch size, Epochs, r2)
              • (resnet50, 0.1, 16, 300, 0.909)
        • Contrasting with a machine learning method.
      • 7
        Dr.Sabiu's Report
        Speaker: Dr Cristiano Sabiu (University of Seoul)

        Deep Learning the Deep Sky: Recovering low surface brightness objects with machine learning

        • No progress
    • 8
      Discussion