Repository logo
  • English
  • 中文
Log In
Have you forgotten your password?
  1. Home
  2. College of Electrical Engineering and Computer Science / 電機資訊學院
  3. Electrical Engineering / 電機工程學系
  4. Deep Learning-Aided NOMA Codebook Design with Improved Performance
 
  • Details

Deep Learning-Aided NOMA Codebook Design with Improved Performance

Journal
2023 35th General Assembly and Scientific Symposium of the International Union of Radio Science, URSI GASS 2023
ISBN
9789463968096
Date Issued
2023-01-01
Author(s)
Liu, Hsiang Yu
HSUAN-JUNG SU  
Takano, Yasuhiro
DOI
10.23919/URSIGASS57860.2023.10265593
URI
https://scholars.lib.ntu.edu.tw/handle/123456789/637200
URL
https://api.elsevier.com/content/abstract/scopus_id/85175158031
Abstract
Nonorthogonal multiple access (NOMA) techniques have drawn significant interest in recent years as the demand for high data rate and spectral efficiency increases. Among the NOMA designs, sparse code multiple access (SCMA) has been shown to achieve outstanding performance. How-ever, the SCMA performance highly depends on codebook construction, and it is difficult to construct codebooks that are optimal for different application scenarios in a hand-crafted manner. To address this issue, some solutions aided by deep learning were proposed to automate the codebook design. One of the solutions is to construct the codebook and decoder with the autoencoder structure. This paper further investigates this structure for codebook construction by proposing ideas to improve the performance of the constructed codebook and reduce the learning complexity. In addition to improving the performance by modifying different aspects of the training setting, we also show that the deep neural network (DNN) based encoder can be simplified to only one linear layer without sacrificing the performance. This result suggests that the DNN structure does not well exploit the potential of a general (possibly nonlinear) encoder, and a better structure may be needed to suit the NOMA application.
Type
conference paper

臺大位居世界頂尖大學之列,為永久珍藏及向國際展現本校豐碩的研究成果及學術能量,圖書館整合機構典藏(NTUR)與學術庫(AH)不同功能平台,成為臺大學術典藏NTU scholars。期能整合研究能量、促進交流合作、保存學術產出、推廣研究成果。

To permanently archive and promote researcher profiles and scholarly works, Library integrates the services of “NTU Repository” with “Academic Hub” to form NTU Scholars.

總館學科館員 (Main Library)
醫學圖書館學科館員 (Medical Library)
社會科學院辜振甫紀念圖書館學科館員 (Social Sciences Library)

開放取用是從使用者角度提升資訊取用性的社會運動,應用在學術研究上是透過將研究著作公開供使用者自由取閱,以促進學術傳播及因應期刊訂購費用逐年攀升。同時可加速研究發展、提升研究影響力,NTU Scholars即為本校的開放取用典藏(OA Archive)平台。(點選深入了解OA)

  • 請確認所上傳的全文是原創的內容,若該文件包含部分內容的版權非匯入者所有,或由第三方贊助與合作完成,請確認該版權所有者及第三方同意提供此授權。
    Please represent that the submission is your original work, and that you have the right to grant the rights to upload.
  • 若欲上傳已出版的全文電子檔,可使用Open policy finder網站查詢,以確認出版單位之版權政策。
    Please use Open policy finder to find a summary of permissions that are normally given as part of each publisher's copyright transfer agreement.
  • 網站簡介 (Quickstart Guide)
  • 使用手冊 (Instruction Manual)
  • 線上預約服務 (Booking Service)
  • 方案一:臺灣大學計算機中心帳號登入
    (With C&INC Email Account)
  • 方案二:ORCID帳號登入 (With ORCID)
  • 方案一:定期更新ORCID者,以ID匯入 (Search for identifier (ORCID))
  • 方案二:自行建檔 (Default mode Submission)
  • 方案三:學科館員協助匯入 (Email worklist to subject librarians)

Built with DSpace-CRIS software - Extension maintained and optimized by 4Science