ARTICLE
TITLE

A Self-organizing Wireless Sensor Networks Based on Quantum Ant Colony Evolutionary Algorithm

SUMMARY

Aiming at the coverage problem of self-organizing wireless sensor networks, a target coverage method for wireless sensor networks based on Quantum Ant Colony Evolutionary Algorithm (QACEA) is put forward. This method introduces quantum state vector into the coding of ant colony algorithm, and realizes the dynamic adjustment of ant colony through quantum rotation port. The simulation results show that the quantum ant colony evolutionary algorithm proposed in this paper can effectively improve the target coverage of wireless sensor networks, and has obvious advantages compared with the other two methods in detecting the number of targets and the convergence speed. Based on the above findings, it is concluded that the algorithm proposed plays an essential role in the improvement of target coverage and it can be widely used in the similar fields, which has great and significant practical value.

 Articles related

Jalal Qais Jameel,, et al. Tareq Nasser Mahdi    

The article presents the development of a mathematical model of video monitoring based on a self-organizing network of unmanned aerial vehicles. The necessity of developing models and algorithms for providing geoecological monitoring using a wireless sel... see more


Kostiantyn Polshchykov,Alateewe Hussein Turki Shabeeb,Sergey Lazarev    

The article presents the development and research results of a support decision-making algorithm forobtaining the recommended channel bandwidth to achieve the required probability values of satisfactory requests service for audio communication sessions i... see more


Huda Abdalkaream Mardan,Suad Kakil Ahmed    

The existence of Artificial Intelligence (AI) can be seen in everyday scenarios. Nowadays, the produced data by both machine and human is overwhelming in which exceeded the ability of humans to understand and digest to make decisions depending on that da... see more