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基于AI的5G技术——研究方向与范例 被引量:64
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作者 尤肖虎 张川 +2 位作者 谈晓思 金石 邬贺铨 《中国科学:信息科学》 CSCD 北大核心 2018年第12期1589-1602,共14页
第5代移动通信(5G)技术将为移动互联网的快速发展提供无所不在的基础性业务能力,在满足未来10年移动互联网流量增加1000倍发展需求的同时,为全行业、全生态提供万物互联的基础网络技术.相对已有的移动通信技术, 5G技术适用面更为广泛,... 第5代移动通信(5G)技术将为移动互联网的快速发展提供无所不在的基础性业务能力,在满足未来10年移动互联网流量增加1000倍发展需求的同时,为全行业、全生态提供万物互联的基础网络技术.相对已有的移动通信技术, 5G技术适用面更为广泛,系统设计也更为复杂.重新复兴的人工智能(AI)技术为5G系统的设计与优化提供了一种超越传统理念与性能的可能性.本文在概述5G移动通信关键技术的基础上,梳理了AI技术在5G系统设计与优化方面富有发展前景的若干发展方向,并给出了有关5G网络优化、资源最优分配、5G物理层统一加速运算以及端到端物理层联合优化等若干典型范例. 展开更多
关键词 5G移动通信 AI技术 网络优化 资源分配 统一加速 端到端联合优化
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Multilevel Markov Chain Monte Carlo Method for High-Contrast Single-Phase Flow Problems
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作者 Yalchin Efendiev Bangti Jin +1 位作者 Michael Presho xiaosi tan 《Communications in Computational Physics》 SCIE 2015年第1期259-286,共28页
In this paper we propose a general framework for the uncertainty quantification of quantities of interest for high-contrast single-phase flow problems.It is based on the generalized multiscale finite element method(GM... In this paper we propose a general framework for the uncertainty quantification of quantities of interest for high-contrast single-phase flow problems.It is based on the generalized multiscale finite element method(GMsFEM)and multilevel Monte Carlo(MLMC)methods.The former provides a hierarchy of approximations of different resolution,whereas the latter gives an efficient way to estimate quantities of interest using samples on different levels.The number of basis functions in the online GMsFEM stage can be varied to determine the solution resolution and the computational cost,and to efficiently generate samples at different levels.In particular,it is cheap to generate samples on coarse grids but with low resolution,and it is expensive to generate samples on fine grids with high accuracy.By suitably choosing the number of samples at different levels,one can leverage the expensive computation in larger fine-grid spaces toward smaller coarse-grid spaces,while retaining the accuracy of the final Monte Carlo estimate.Further,we describe a multilevel Markov chain Monte Carlo method,which sequentially screens the proposal with different levels of approximations and reduces the number of evaluations required on fine grids,while combining the samples at different levels to arrive at an accurate estimate.The framework seamlessly integrates the multiscale features of the GMsFEM with the multilevel feature of the MLMC methods following the work in[26],and our numerical experiments illustrate its efficiency and accuracy in comparison with standard Monte Carlo estimates. 展开更多
关键词 Generalized multiscale finite element method multilevel Monte Carlo method multilevel Markov chain Monte Carlo uncertainty quantification
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