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Research on the optimum synchronous network search data extraction based on swarm intelligence algorithm

机译:基于群智能算法的最优同步网络搜索数据提取研究

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Existing synchronous network search data extraction techniques suffer from load unbalance in the face of increasing number of concurrent users. For this reason, this paper presents the research on the optimum synchronous network search data extraction based on swarm intelligence algorithm. A traffic balancing model is constructed to determine the node balance state according to the traffic variation and influence factors of network nodes. Under the condition that the node state is known, the swarm intelligence algorithm is used to cluster the data to be synchronized and adjust the node state so that it is kept stable throughout the synchronization process. The clustered data act as the target to connect the user with the server side to achieve the optimum network search data extraction and synchronization. The experimental results show that when the number of concurrent network users is increasing, the designed technique features stable load balancing, and achieves optimum data extraction performance and low execution cost when the task completion time is less than 0.5 s.
机译:现有的同步网络搜索数据提取技术在越来越多的并发用户越来越多地受到负载不平衡。出于这个原因,本文介绍了基于群智能算法的最优同步网络搜索数据提取研究。构建流量平衡模型以根据网络节点的流量变化和影响因素来确定节点平衡状态。在已知节点状态的条件下,群体智能算法用于聚类要同步的数据并调整节点状态,使其在整个同步过程中保持稳定。聚类数据充当将用户与服务器端连接以实现最佳网络搜索数据提取和同步的目标。实验结果表明,当并发网络用户的数量增加时,设计技术具有稳定的负载平衡,并且当任务完成时间小于0.5秒时,实现最佳数据提取性能和低执行成本。

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