Deep Learning on Type Ia Supernovae
暫譯: 超新星 Ia 的深度學習
Chen, Xingzhuo
- 出版商: Springer
- 出版日期: 2026-04-02
- 售價: $5,800
- 貴賓價: 9.5 折 $5,510
- 語言: 英文
- 頁數: 126
- 裝訂: Hardcover - also called cloth, retail trade, or trade
- ISBN: 303213031X
- ISBN-13: 9783032130310
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相關分類:
DeepLearning
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商品描述
The thesis presents the design of an Artificial Intelligence Assisted Inversion (AIAI) method to estimate type Ia supernova (SN Ia) ejecta structure based on the observed optical spectral time sequence. The research applied neural networks to 126 SNe Ia and found a correlation between the 3700 Å spectral feature and the 56Ni elemental abundance. To further adapt the AIAI method to the SNe Ia 3D structure estimate, the author developed an integral-based technique to significantly increase the signal-to-noise ratio in the polarized time-dependent 3D radiative transfer computations. To understand the SNe Ia progenitors, the spatially resolved SN Ia host galaxy spectra from MUSE and MaNGA were employed to estimate the delay time distribution (DTD). By using a grouping algorithm based on k-means and earth mover's distances, the research separated the host galaxy stellar population age distributions into spatially distinct regions and used the maximum likelihood method to constrain the DTD. It was found that the DTD is consistent to the double-degenerate progenitor models.
商品描述(中文翻譯)
這篇論文提出了一種人工智慧輔助反演(Artificial Intelligence Assisted Inversion, AIAI)方法,旨在根據觀測到的光學光譜時間序列來估計 Ia 型超新星(SN Ia)噴發物結構。研究應用了神經網絡於 126 顆 Ia 型超新星,並發現 3700 Å 光譜特徵與 56Ni 元素豐度之間存在相關性。為了進一步調整 AIAI 方法以適應 Ia 型超新星的三維結構估計,作者開發了一種基於積分的技術,以顯著提高偏振時間依賴的三維輻射傳輸計算中的信噪比。為了理解 Ia 型超新星的前驅星,研究使用了來自 MUSE 和 MaNGA 的空間解析 SN Ia 主星系光譜來估計延遲時間分佈(Delay Time Distribution, DTD)。通過使用基於 k-means 和地球搬運者距離的分組算法,研究將主星系恆星族群年齡分佈分離為空間上不同的區域,並使用最大似然法來約束 DTD。結果發現 DTD 與雙退化前驅模型一致。
作者簡介
作者簡介(中文翻譯)
陳興卓博士是一位理論天體物理學家,任職於德州農工大學數據科學研究所。他的研究專注於超新星的輻射傳輸模擬以及在磁流體動力學模擬中的科學機器學習。他在德州農工大學獲得天文學博士學位。在攻讀博士學位期間,他利用深度學習和輻射傳輸模擬研究了Ia型超新星的噴射物結構。