Author:
Lingming Meng,Fei Peng,Peng Zhang,Shuang Jiang,Yun Chen
Abstract
Abstract
With the Internet of Things, the rapid development of the Internet and the rising number of online users, IPv4 addresses used today have been allocated, and IP addresses have become scarce, unable to meet the growing demand for IP addresses. This paper provides a basic theory of big data analysis and research on social relationships and sense of location information based on the relevant information of a model and functions of the business processing layer, transmission layer, information processing and application layer extracted from the network and social material basis. The results show that this method has better fitting and prediction effect by using ipv6 technology of ant colony algorithm. It lays a foundation for further research in the future. It can be seen from the experimental results that the performance of the algorithm decreases obviously with the increase of feature proportion. This is because the increase of feature proportion makes the algorithm select redundant and irrelevant features, resulting in the decline of classification accuracy. The results show that the accuracy of eACO-GA algorithm is 0.98 to determine the optimal feature selection ratio of the current data set, and better classification results can be obtained.
Subject
General Physics and Astronomy
Reference12 articles.
1. Parallel disassembly sequence planning using improved ant colony algorithm[J];Xing;The International Journal of Advanced Manufacturing Technology,2021
2. Contactless Distribution Path Optimization Based on Improved Ant Colony Algorithm[J];Wu;Mathematical Problems in Engineering,2021
3. Task optimization and scheduling of distributed cyber–physical system based on improved ant colony algorithm[J];Yi;Future Generation Computer Systems,2020
4. Routing optimizationin wireless sensor network based on improved ant colony algorithm[J];Lv;International Core Journal of Engineering,2020
5. Optimisation of dangerous goods transport based on the improved ant colony algorithm[J];He;International journal of computing science and mathematics,2017