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http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/97276| Title: | 通過基於評分的擴散模型實現快速HGCal探測器模擬 在雙光子衰變通道中搜尋頂夸克味變中性希格斯耦合 Fast HGCal Detector Simulation via Score-Based Diffusion Models Searching for Top Quark Flavor Changing Neutral Higgs Couplings in H → γγ Decay Channel at √s = 13.6 TeV within CMS Experiment |
| Authors: | 徐振華 Chen-Hua Hsu |
| Advisor: | 陳凱風 Kai-Feng Chen |
| Keyword: | 快速模擬,擴散模型,Transformer,CaloChallenge,HGCal,頂夸克, Fast Simulation,Diffusion Model,Transformer,CaloChallenge,HGCal,Top Quark,Flavor-Changing Neutral Higgs,BSM Physics, |
| Publication Year : | 2025 |
| Degree: | 碩士 |
| Abstract: | 隨著對撞機的不斷擴建和升級,物理學家面臨著越來越複雜的實驗需求,這導致對計算資源的需求急劇增加。現有的計算能力將難以持續支撐Geant4軟體完成精確且大規模的全套物理計算模擬,因此,尋求一種更加高效、快速的模擬方法已成為當前的研究重點。在此論文中,我們提出了使用擴散模型作為核心演算法,並結合transformer模型,嘗試模擬粒子能量在探測器內部的空間分佈。這一方法不僅能夠顯著加速模擬過程,還保持了與Geant4模擬結果相似的精度。本研究的最大特色在於其能夠生成與Geant4預測高度一致的三維能量分佈圖,而不僅僅是如同大多數類似研究所展示的在一維空間上的能量分佈。
除此之外,我也探討了頂夸克味變中性希格斯耦合(TopFCNH)的搜尋作為一個副專案。這種耦合在標準模型中被高度抑制,但在各種新物理理論中可以被顯著增強。通過分析CMS實驗中的雙光子衰變通道,本研究為探測罕見的頂夸克過程做出了貢獻。 As particle colliders continue to expand and upgrade, physicists face increasingly complex experimental demands, which in turn have led to a sharp rise in the need for computational resources. The current computational power will struggle to support full-scale and precise simulations using Geant4 software, especially as the scale of experiments grows. Therefore, finding a more efficient and fast simulation method has become a pressing priority in current research. In this thesis, we propose using a diffusion model as the core algorithm, coupled with a transformer model, to simulate the spatial distribution of particle energy within the detector. This approach not only significantly accelerates the simulation process but also maintains a level of accuracy comparable to Geant4 simulations. The key feature of this research lies in its ability to generate three-dimensional energy distributions that closely match those predicted by Geant4, rather than the one-dimensional energy distributions typical of most similar studies. Besides this machine learning-based simulation project, I also explore the search for top quark flavor-changing neutral Higgs (TopFCNH) interactions as a side project. These interactions are highly suppressed in the Standard Model but can be significantly enhanced in various new physics scenarios. By analyzing the H to r r decay channel at s = 13.6 TeV within the CMS experiment, this study contributes to the ongoing effort to probe rare top quark processes. |
| URI: | http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/97276 |
| DOI: | 10.6342/NTU202500790 |
| Fulltext Rights: | 同意授權(全球公開) |
| metadata.dc.date.embargo-lift: | 2025-04-03 |
| Appears in Collections: | 物理學系 |
Files in This Item:
| File | Size | Format | |
|---|---|---|---|
| ntu-113-2.pdf | 15.13 MB | Adobe PDF | View/Open |
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