计算机科学 ›› 2014, Vol. 41 ›› Issue (3): 149-152.

• 网络与信息安全 • 上一篇    下一篇

积分离散引导的物联网中离散系统差异数据融合

左延红,张克仁   

  1. 合肥工业大学机械与汽车学院 合肥230009;安徽建筑大学机械与电气工程学院 合肥230601
  • 出版日期:2018-11-14 发布日期:2018-11-14
  • 基金资助:
    本文受国家自然科学基金(71071046/G0110),安徽省自然基金(KJ2013B051)资助

Discrete Data Fusion with Integral Discrete Guidance in Internet of Things

ZUO Yan-hong and ZHANG Ke-ren   

  • Online:2018-11-14 Published:2018-11-14

摘要: 研究一种积分离散引导的物联网中离散系统差异数据融合。对物联网中离散型制造系统下各个物联网节点的差异数据进行融合处理是离散型制造系统需要解决的重要问题。在传统的离散型制造系统中,数据采用分布式处理方法,每个节点的数据做单独处理,所以无法融合所有数据的优点,达到较好的全局效率。提出一种积分离散引导的物联网中离散系统差异数据融合,即采用物联网技术将分布式系统下各个离散制造系统的终端数据进行统一收集和综合,然后采用积分离散引导的方法对获取的所有差异化数据进行处理,从而达到所有数据的有效融合。采用一组100节点的6类型数据进行实验,结果显示,采用积分离散引导的物联网中离散系统差异数据融合,数据被很好地融合起来,且数据的谱平均分布,所以算法具有很好的应用价值。

关键词: 积分离散引导,物联网,差异化数据融合 中图法分类号TP391文献标识码A

Abstract: The discrete data fusion with integral discrete guidance in internet of things was researched.The data fusion process in discrete manufacturing system was the first problem that should be solved under various different things node.In traditional discrete based manufacturing system,the data was processed with distributed method,and data of each node was treated alone,so it cannot integrate all the advantages of data to achieve better overall efficiency.The discrete data fusion with integral discrete guidance in internet of things was proposed,the networking technology in distributed system was used for discrete manufacturing system under unified data collection terminals and integrated,and then the method of discrete points was taken out to acquire all the differential data processing,with which the effective integration of all data was achieved.A group of 100nodes six types of data was taken as target to test the performance,and the experimental result shows that under discrete data fusion with integral discrete guidance,the data is fused well,and the spectral distribution of the data is even,so the algorithm has good application value.

Key words: Integral discrete guidance,Internet of things,Discrete data fusion

[1] 贺国祥.物联网技术在石油装备制造业中的应用[J].科技通报,2013,29(4):193-195
[2] 张峰,张晓鹏,吴高成.基于物联网的机场集成行李处理系统及其应用研究[J].计算机应用研究,2010(10):3771-3774
[3] Ding J L,Chen Z Q,Yuan Z Z.On the combination of genetic algorithm and ant algorithm[J].Journal of Computer Research and Development,2003,40(9):1351-1356
[4] 刘秀菊.基于嵌入式系统物联网的智能监测系统设计[J].计算机测量与控制,2012,20(9):2375-2378
[5] He R,Wang Y J,Wang Q,et al.An improved particle swarm optimization based on self-adaptive escape velocity[J].Journal of Software,2005,6(12):2036-2044
[6] Trelea I C.The particle swarm optimization algorithm:Convergence analysis and parameter selection[J].Information Proces-sing Letters,2003,85(6):317-325
[7] Stutzle T,Hoos H H.MAX-MIN ant system[J].Future Genera-tion Computer System,2000,16(8):889-914
[8] Lin D,Li M Q,Kou JS.A GA-based method for solving constrained optimization problems[J].Journal of Software,2001,2(4):628-632
[9] 吴建平,林嵩,徐恪,等.可演进的新一代互联网体系结构研究进展[J].计算机学报,2012,6(4):203-212
[10] 丁治明,高需.面向物联网海量传感器采样数据管理的数据库集群系统框架[J].计算机学报,2012,6(21):213-229
[11] 沈国华,张伟,黄志球,等.基于描述逻辑的特征语义建模及验证[J].计算机研究与发展,2012,6(4):1501-1512
[12] Yin Guo-fu.Research on The CORBA Standard-Based Distributed Radiation Source and Platform Identification Data Fusion[J].JDCTA(J),2013,7(2):518-524
[13] 李慧贤,陈绪宝,巨龙飞,等.改进的多接收者签密方案[J].计算机研究与发展,2013,7(10):1418-1425
[14] Liu Xue-xia.Application Research of The Fault Diagnosis Based on Backward Reasoning of Fuzzy Petri net[J].JDCTA(J),2013,7(2):549-557
[15] 胡永利,孙艳丰,尹宝才,等.物联网信息感知与交互技术[J].计算机学报,2012,8(4):213-229
[16] 李梦源,刘宴兵,尚云鹏.云计算下用户行为特征的服务选择策略[J].重庆邮电大学学报:自然科学版,2013,25(5):639-643

No related articles found!
Viewed
Full text


Abstract

Cited

  Shared   
  Discussed   
No Suggested Reading articles found!