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基于案例推理的认知自学习引擎
引用本文:刘怡静,汪李峰,魏胜群.基于案例推理的认知自学习引擎[J].电子技术应用,2011,37(12):98-101,105.
作者姓名:刘怡静  汪李峰  魏胜群
作者单位:1. 解放军理工大学通信工程学院研究生管理大队四队,江苏南京210007;中国电子系统设备工程公司,北京100141
2. 中国电子系统设备工程公司,北京,100141
基金项目:国家重点基础研究发展规划("973"计划)项目
摘    要:认知无线电与传统无线电的最大区别在于其能够感知环境,主动去学习、适应环境.近年来,对于认知无线电的研究主要集中于多目标优化的配置决策问题.但实际的通信系统可观测到的环境参数有限,且输入输出关系复杂,需要认知无线电通过学习来理解并适应环境.针对上述问题,提出了一种基于案例推理和模拟退火思想的认知决策引擎算法.仿真结果表明...

关 键 词:认知无线电  认知引擎  人工智能  案例推理  模拟退火算法

A self-learning method for cognitive engine based on CBR
Liu Yijing,Wang Lifeng,Wei Shengqun.A self-learning method for cognitive engine based on CBR[J].Application of Electronic Technique,2011,37(12):98-101,105.
Authors:Liu Yijing  Wang Lifeng  Wei Shengqun
Abstract:The essential difference of cognitive radio from traditional radio lies in its ability to sense,learn and adapt to the environment.Recently,the research for cognitive radio has focused on the configuration problems of multi-objective optimization. However,in actual communication systems,the observable environment parameters are limited.Besides,the relationship between the system's inputs and outputs is often complicated.Thus,CR needs to understand and adapt to the environment through learning.To solve the problem mentioned above,a self-learning method for cognitive radio decision engine based on CBR and simulated annealing is proposed.The simulation results show that the proposed method has the advantages of self-learning,multi-objective adaptation and rapid convergence.
Keywords:cognitive radio  cognitive engine  artificial intelligence  case-based reasoning  simulated annealing
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