Network Traffic Statistics Method for Resource-Constrained Industrial Project Group Scheduling under Big Data

With the advent of the Internet era, the demand for network in various fields is growing, and network applications are increasingly rich, which brings new challenges to network traffic statistics. How to carry out network traffic statistics efficiently and accurately has become the focus of research...

Full description

Bibliographic Details
Main Authors: Zongjie Huo, Wei Zhu, Pei Pei
Format: Article
Language:English
Published: Hindawi-Wiley 2021-01-01
Series:Wireless Communications and Mobile Computing
Online Access:http://dx.doi.org/10.1155/2021/5594663
id doaj-9e1c90d79fad401888343cc07758fe1c
record_format Article
spelling doaj-9e1c90d79fad401888343cc07758fe1c2021-06-21T02:24:37ZengHindawi-WileyWireless Communications and Mobile Computing1530-86772021-01-01202110.1155/2021/5594663Network Traffic Statistics Method for Resource-Constrained Industrial Project Group Scheduling under Big DataZongjie Huo0Wei Zhu1Pei Pei2School of Economics and ManagementSchool of EconomicsSchool of Economics and ManagementWith the advent of the Internet era, the demand for network in various fields is growing, and network applications are increasingly rich, which brings new challenges to network traffic statistics. How to carry out network traffic statistics efficiently and accurately has become the focus of research. Although the current research results are many, they are not very ideal. Based on the era background of big data and machine learning algorithm, this paper uses the ant colony algorithm to solve the typical resource-constrained project scheduling problem and finds the optimal solution of network traffic resource allocation problem. Firstly, the objective function and mathematical model of the resource-constrained project scheduling problem are established, and the ant colony algorithm is used for optimization. Then, the project scheduling problem in PSPLIB is introduced, which contains 10 tasks and 1 renewable resource. The mathematical model and ant colony algorithm are used to solve the resource-constrained project scheduling problem. Finally, the data quantity and frequency of a PCU with a busy hour IP of 112.58.14.66 are analyzed and counted. The experimental results show that the algorithm can get the unique optimal solution after the 94th generation, which shows that the parameters set in the solution method are appropriate and the optimal solution can be obtained. The schedule of each task in the optimal scheduling scheme is very compact and reasonable. The peak time of network traffic is usually between 9 : 00 and 19 : 00-21 : 00. We can reasonably schedule the network resources according to these time periods. Therefore, the network traffic statistics method based on the solution of resource constrained industrial project group scheduling problem under big data can effectively carry out network traffic statistics and trend analysis.http://dx.doi.org/10.1155/2021/5594663
collection DOAJ
language English
format Article
sources DOAJ
author Zongjie Huo
Wei Zhu
Pei Pei
spellingShingle Zongjie Huo
Wei Zhu
Pei Pei
Network Traffic Statistics Method for Resource-Constrained Industrial Project Group Scheduling under Big Data
Wireless Communications and Mobile Computing
author_facet Zongjie Huo
Wei Zhu
Pei Pei
author_sort Zongjie Huo
title Network Traffic Statistics Method for Resource-Constrained Industrial Project Group Scheduling under Big Data
title_short Network Traffic Statistics Method for Resource-Constrained Industrial Project Group Scheduling under Big Data
title_full Network Traffic Statistics Method for Resource-Constrained Industrial Project Group Scheduling under Big Data
title_fullStr Network Traffic Statistics Method for Resource-Constrained Industrial Project Group Scheduling under Big Data
title_full_unstemmed Network Traffic Statistics Method for Resource-Constrained Industrial Project Group Scheduling under Big Data
title_sort network traffic statistics method for resource-constrained industrial project group scheduling under big data
publisher Hindawi-Wiley
series Wireless Communications and Mobile Computing
issn 1530-8677
publishDate 2021-01-01
description With the advent of the Internet era, the demand for network in various fields is growing, and network applications are increasingly rich, which brings new challenges to network traffic statistics. How to carry out network traffic statistics efficiently and accurately has become the focus of research. Although the current research results are many, they are not very ideal. Based on the era background of big data and machine learning algorithm, this paper uses the ant colony algorithm to solve the typical resource-constrained project scheduling problem and finds the optimal solution of network traffic resource allocation problem. Firstly, the objective function and mathematical model of the resource-constrained project scheduling problem are established, and the ant colony algorithm is used for optimization. Then, the project scheduling problem in PSPLIB is introduced, which contains 10 tasks and 1 renewable resource. The mathematical model and ant colony algorithm are used to solve the resource-constrained project scheduling problem. Finally, the data quantity and frequency of a PCU with a busy hour IP of 112.58.14.66 are analyzed and counted. The experimental results show that the algorithm can get the unique optimal solution after the 94th generation, which shows that the parameters set in the solution method are appropriate and the optimal solution can be obtained. The schedule of each task in the optimal scheduling scheme is very compact and reasonable. The peak time of network traffic is usually between 9 : 00 and 19 : 00-21 : 00. We can reasonably schedule the network resources according to these time periods. Therefore, the network traffic statistics method based on the solution of resource constrained industrial project group scheduling problem under big data can effectively carry out network traffic statistics and trend analysis.
url http://dx.doi.org/10.1155/2021/5594663
work_keys_str_mv AT zongjiehuo networktrafficstatisticsmethodforresourceconstrainedindustrialprojectgroupschedulingunderbigdata
AT weizhu networktrafficstatisticsmethodforresourceconstrainedindustrialprojectgroupschedulingunderbigdata
AT peipei networktrafficstatisticsmethodforresourceconstrainedindustrialprojectgroupschedulingunderbigdata
_version_ 1721369259031920640