波音游戏-波音娱乐城赌球打不开

CityUHK researchers unveil advanced terahertz neural network

 

An innovative planar spoof plasmonic neural network (SPNN) platform capable of directly detecting and processing terahertz (THz) electromagnetic signals has been unveiled by researchers at City University of Hong Kong (CityUHK) and Southeast University in Nanjing.

The study has enormous potential for fields such as intelligent communication, advanced computing systems, and terahertz on-chip integration, all of which are crucial for the future of 6G.

The research project is led by Professor Chan Chi-hou, Chair Professor of the Department of Electrical Engineering and Director of State Key Laboratory of Terahertz and Millimeter Waves (SKLTMW) at CityUHK and Academician Cui Tiejun, Director of State Key Laboratory of Millimeter Waves, Southeast University. 

The paper, “Terahertz spoof plasmonic neural network for diffractive information recognition and processing,” was recently published in Nature Communications

The team set out to address the challenges posed by the rapid evolution of artificial intelligence. Traditional space-diffractive neural networks suffer from low-space transmission efficiency and large spatial dimensions, limiting their miniaturisation and broader applications. This new SPNN platform overcomes these limitations by offering a compact, efficient, and easily integrable solution.

The new technology, composed of compact spoof surface plasmon polaritons diffraction layers and phase-shifting layers, introduces a compact method for building and utilising neural networks. It can efficiently handle complex tasks like handwriting recognition and multi-user distinction, offering potential applications in terahertz on-chip integration and intelligent communication systems.

“The SPNN can directly process different users’ directions on the THz platform, integrating the capability of classifying handwritten digits without relying on digital processing,” said Dr Gao Xinxin, the first author of the paper and a postdoctoral fellow at SKLTMW. 

The SPNN’s compactness, efficiency, and scalability make it an ideal candidate for artificial neural networks, addressing the power consumption and scalability issues of traditional digital computers. This network can directly process and recognise diffractive information with low power consumption and at the speed of light, broadening the application of terahertz plasmonic metamaterials.

“SKLTMW has excellent fabrication and measurement facilities supported by the Research Grants Council, the Innovation and Technology Commission of the HKSAR Government, and CityUHK,” said Professor Chan. “These facilities allow us to test our ideas promptly and generate unexpected results.”

Gu Ze and Dr Ma Qian, a PhD student and postdoctoral fellow, respectively, at Southeast University, are co-first authors of the paper. Other contributors are Cui Wenyi, PhD student, and Professor You Jianwei of Southeast University, and Dr Chen Baojie and Dr Shum Kam-man of SKLTMW. Dr Ma, Academician Cui, and Professor Chan are the corresponding authors.  


Media enquiries: 
Lilian Ip, Communications and Institutional Research Office, CityUHK (Tel: 3442 6304 or 6236 1727)
 

YOU MAY BE INTERESTED

Back to top
做生意门口怎么摆放| 百家乐官网怎么推算| 威尼斯人娱乐789399| 大发888在线娱乐城代理| 百家乐官网网投打法| 蓝盾百家乐娱乐场开户注册| 大发888充值平台| 百家乐官网北京| 德州扑克怎么发牌| 网上百家乐官网哪家较安全| 太阳城洋伞| 百家乐官网没有必胜| 百家乐棋牌公式| 百家乐官网真钱路怎么看| 威尼斯人娱乐网赌| 娱乐场百家乐官网大都| 百家乐加牌规| 澳门百家乐官网怎么下载| 大发888怎么进不去| 百家乐投注之对冲投注| 百家乐官网群柏拉图软件| 娱乐城官方网| 百家乐电话投注怎么玩| 百家乐官网游戏介绍与分析| 德州扑克发牌视频| 百家乐揽子打法| 百家乐官网一邱大师打法| 百家乐官网的关键技巧| 全讯网qtqnet| 澳门百家乐心| 百家乐官网可以作假吗| 肇源县| 大发888免费软件下载| 百家乐水浒传| 新彩百家乐官网的玩法技巧和规则 | 怎么看百家乐走势| 博之道百家乐技巧| 百家乐注册开户送彩金| 百家乐官网大赌城| 如何玩百家乐官网赚钱| 百家乐官网那里玩|