Effective cosmic density field reconstruction with convolutional neural network

被引:8
|
作者
Chen, Xinyi [1 ]
Zhu, Fangzhou [2 ]
Gaines, Sasha [3 ]
Padmanabhan, Nikhil [1 ,3 ]
机构
[1] Yale Univ, Dept Phys, POB 208120, New Haven, CT 06511 USA
[2] Google LLC, Mountain View, CA USA
[3] Yale Univ, Dept Astron, POB 208101, New Haven, CT 06511 USA
基金
美国国家科学基金会;
关键词
methods: numerical; methods: statistical; cosmology: large-scale structure of Universe; BARYON ACOUSTIC-OSCILLATIONS; DEEP LEARNING APPROACH; MEASURING D-A; INITIAL CONDITIONS; SCALE; BAO; GALAXIES; DISTANCE; Z=0.35;
D O I
10.1093/mnras/stad1868
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
We present a cosmic density field reconstruction method that augments the traditional reconstruction algorithms with a convolutional neural network (CNN). Following previous work, the key component of our method is to use the reconstructed density field as the input to the neural network. We extend this previous work by exploring how the performance of these reconstruction ideas depends on the input reconstruction algorithm, the reconstruction parameters, and the shot noise of the density field, as well as the robustness of the method. We build an eight-layer CNN and train the network with reconstructed density fields computed from the QUIJOTE suite of simulations. The reconstructed density fields are generated by both the standard algorithm and a new iterative algorithm. In real space at z = 0, we find that the reconstructed field is 90 per cent correlated with the true initial density out to k similar to 0.5 h Mpc(-1), a significant improvement over k similar to 0.2 h Mpc (-1) achieved by the input reconstruction algorithms. We find similar improvements in redshift space, including an improved removal of redshift space distortions at small scales. We also find that the method is robust across changes in cosmology . Additionally , the CNN remo v es much of the variance from the choice of different reconstruction algorithms and reconstruction parameters. Ho we ver, the ef fecti veness decreases with increasing shot noise, suggesting that such an approach is best suited to high density samples. This work highlights the additional information in the density field beyond linear scales as well as the power of complementing traditional analysis approaches with machine learning techniques.
引用
收藏
页码:6272 / 6281
页数:10
相关论文
共 50 条
  • [1] Infinite Limits of Convolutional Neural Network for Urban Electromagnetic Field Exposure Reconstruction
    Mallik, Mohammed
    Allaert, Benjamin
    Egea-Lopez, Esteban
    Gaillot, Davy P.
    Wiart, Joe
    Clavier, Laurent
    IEEE ACCESS, 2024, 12 : 49476 - 49488
  • [2] Numerical investigation of the effective receptive field and its relationship with convolutional kernels and layers in convolutional neural network
    Jiang, Longyu
    Jin, Quan
    Hua, Feng
    Jiang, Xingjie
    Wang, Zeyu
    Gao, Wei
    Huang, Fuhua
    Fang, Can
    Yang, Yongzeng
    FRONTIERS IN MARINE SCIENCE, 2024, 11
  • [3] Fast Light Field Reconstruction Using Convolutional Neural Network to Double Angular Resolution
    Salem, Ahmed
    Ibrahem, Hatem
    Kang, Hyun Soo
    2020 IEEE INTERNATIONAL CONFERENCE ON CONSUMER ELECTRONICS (ICCE), 2020, : 281 - 284
  • [4] High-Dimensional Dense Residual Convolutional Neural Network for Light Field Reconstruction
    Meng, Nan
    So, Hayden K. -H.
    Sun, Xing
    Lam, Edmund Y.
    IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2021, 43 (03) : 873 - 886
  • [5] Electron density profile reconstruction with convolutional neural networks
    Lan, Ting
    Liu, Haiqing
    Ren, Qilong
    Zhu, Xiang
    Mao, Wenzhe
    Yuan, Yi
    Wang, Yunfei
    PLASMA PHYSICS AND CONTROLLED FUSION, 2022, 64 (12)
  • [6] Convolutional Neural Network for Honeybee Density Estimation
    Luneckas, Tomas
    Luneckas, Mindaugas
    Salem, Ziad
    Szopek, Martina
    Schmickl, Thomas
    2020 IEEE SYMPOSIUM SERIES ON COMPUTATIONAL INTELLIGENCE (SSCI), 2020, : 2558 - 2566
  • [7] Estimation and counting of wheat ears density in field based on deep convolutional neural network
    Bao W.
    Zhang X.
    Hu G.
    Huang L.
    Liang D.
    Lin Z.
    Nongye Gongcheng Xuebao/Transactions of the Chinese Society of Agricultural Engineering, 2020, 36 (21): : 186 - 193
  • [8] Velocity Field Estimation on Density-Driven Solute Transport With a Convolutional Neural Network
    Kreyenberg, Philipp J.
    Bauser, Hannes H.
    Roth, Kurt
    WATER RESOURCES RESEARCH, 2019, 55 (08) : 7275 - 7293
  • [9] IMAGE RECONSTRUCTION USING DEEP CONVOLUTIONAL NEURAL NETWORK
    Shireesha, Muthineni
    Yadav, Gargi
    Chandra, Saroj Kumar
    Bajpai, Manish Kumar
    2020 INTERNATIONAL CONFERENCE ON ARTIFICIAL INTELLIGENCE AND SIGNAL PROCESSING (AISP), 2020,
  • [10] Accelerated SPECT Image Reconstruction with a Convolutional Neural Network
    Dietze, Martijn
    Branderhorst, Woutjan
    Viergever, Max
    De Jong, Hugo
    JOURNAL OF NUCLEAR MEDICINE, 2019, 60