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回收函数与函数的性态研究
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作者 王炜 袁笑宇 冯雪 《汕头大学学报(自然科学版)》 2012年第2期1-4,共4页
本文通过研究正常凸函数的回收函数,讨论了正常凸函数的回收方向与极小值之间的关系,并得到了函数的性态及极值存在性的刻画.借助回收方向得出了该函数在无约束集合和约束集合上是否取得的极小值的一些相关结果.
关键词 回收方向 水平集 回收函数 极小值
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无界域上凹二次规划的一个算法
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作者 单锋 《沈阳航空工业学院学报》 1993年第2期218-223,共6页
关键词 无界域 凹二次规划 回收方向
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Precise Transceiver-Free Localization in Complex Indoor Environment 被引量:3
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作者 Rui Mao Peng Xiang Dian Zhang 《China Communications》 SCIE CSCD 2016年第5期28-37,共10页
Transceiver-free object localization can localize target through using Radio Frequency(RF) technologies without carrying any device, which attracts many researchers' attentions. Most traditional technologies usual... Transceiver-free object localization can localize target through using Radio Frequency(RF) technologies without carrying any device, which attracts many researchers' attentions. Most traditional technologies usually first deploy a number of reference nodes which are able to communicate with each other, then select only some wireless links, whose signals are affected the most by the transceiver-free target, to estimate the target position. However, such traditional technologies adopt an ideal model for the target, the other link information and environment interference behavior are not considered comprehensively. In order to overcome this drawback, we propose a method which is able to precisely estimate the transceiver-free target position. It not only can leverage more link information, but also take environmental interference into account. Two algorithms are proposed in our system, one is Best K-Nearest Neighbor(KNN) algorithm, the other is Support Vector Regression(SVR) algorithm. Our experiments are based on Telos B sensor nodes and performed in different complex lab areas which have many different furniture and equipment. The experiment results show that the average localization error is round 1.1m. Compared with traditional methods, the localization accuracy is increased nearly two times. 展开更多
关键词 indoor localization transceiver-free radio map support vector regression
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