摘要: 为解决云服务选择过程中的局部极值化问题,利用逼近于理想解的排序技术(TOPSIS),设计一种云服务选择算法。采用熵赋值法简化决策准则的权重选取,基于可用云服务对各时段内的QoS特征构建决策矩阵,并通过模糊TOPSIS等级选取和时变权重获得较优质的云服务进行融合决策,实现云服务的合理选择。仿真实验结果表明,该算法在云服务选择成功率和鲁棒性方面均优于对比算法,能有效遏制不良QoS数据干扰,提高诚信服务的共享性。
关键词:
逼近于理想解的排序技术,
模糊时变权重,
云服务,
熵赋值法,
融合决策
Abstract: In order to solve the local extremum problem in cloud service selection process,this paper designs a cloud service selection algorithm based on Technique for Order Preference by Similarity to an Ideal Solution(TOPSIS).The entropy value assignment method is used to simplify the criteria weights selection,and then decision matrix for each period of QoS characteristics is built based on the available cloud service,and fuzzy TOPSIS rank selection and time-varying weight are made fusion decision to obtain a high quality of cloud services,by which a reasonable choice of cloud service is realized.Simulation experimental results show that the proposed algorithm is better than contrast algorithm in success rate and robustness of cloud service selection,it can effectively curb the bad QoS data interference,and strengthen well faith service sharing.
Key words:
Technique for Order Preference by Similarity to an Ideal Solution(TOPSIS),
fuzzy time-variable weight,
cloud service,
entropy assignment method,
fusion decision making
中图分类号:
肖建琼,高江锦,周晓庆. 结合模糊TOPSIS法与时变权重的云服务选择[J]. 计算机工程.
XIAO Jianqiong,GAO Jiangjin,ZHOU Xiaoqing. Cloud Service Selection Combined with Fuzzy TOPSIS Method and Time-variable Weight[J]. Computer Engineering.