标题: | 用于多用户侦测之适应性盲蔽平行式干扰消除接收机 New Adaptive Blind PIC Receivers for Multiuser Detection |
作者: | 吴文榕 WU WEN-RONG 交通大学电信工程系 |
关键字: | 平行式干扰消除法;部分消除因子;最小均方差;parallel interference cancellation;partial cancellation factor;least mean square. |
公开日期: | 2004 |
摘要: | 直接序列码分进接 (DS-CDMA) 是第三代行动通讯中标准的多重进接技术。众所周知, 此通讯技术之系统效能常受限于多用户干扰 (MAI),因此有多种多用户侦测 (MUD) 技 术用来改善此问题。平行式干扰消除法 (PIC) 藉由其低复杂度与优良表现之故,已成为 一深具潜力的改善方案。再者,藉着引进部分消除因子 (PCF),一PIC 的改良架构也在 发展中,称之为部分平行式干扰消除法。虽然最佳部分消除因子可用于增加系统效能, 但其最佳值并不易求得。在本计画中我们提出一新型之适应性滤波器来克服此难题。我 们设计一具滤波效果之接收机,藉由最小均方差之适应性理论求得最佳部分消除因子。 此法之最大优点在于不需要训练序列且其复杂度很低。初步的实验结果显示,我们提出 之方法可大幅提升传统适应性部分平行式干扰消除器之系统效能。 Direct-sequence code-division multiple-access (DS-CDMA) has been adopted as the standard multi-access technique for the third generation wireless communications. It is well known that he performance a DS-CDMA system is limited by multiple-access interference (MAI). Many multiuser detection (MUD) algorithms were proposed to alleviate this problem. Due to its simplicity and good performance, parallel interference cancellation (PIC) has been considered a promising MUD algorithm. By introducing partial cancellation factors (PCFs), a variant of PIC called partial PIC was also developed. Although the partial PIC can have improved performance, the optimal PCFs are difficult to derive. In this project, a new type of adaptive filtering approach is proposed to overcome this problem. Special designed filtering architectures are developed and optimal PCFs are trained using the least mean square (LMS) adaptive algorithm. The distinct features of the approach are that it does not require any training sequences and the computational complexity is low. Primitive simulation results show that the proposed algorithm can significantly outperform the conventional adaptive partial PIC approach |
官方说明文件#: | NSC93-2213-E009-104 |
URI: | http://hdl.handle.net/11536/91408 https://www.grb.gov.tw/search/planDetail?id=1007075&docId=189802 |
显示于类别: | Research Plans |
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