Genetic Algorithm for Data Exchange Optimization

Abstract

Dynamic architectures have emerged to be a promising implementation platform to provide flexibility, high performance, and low power consumption for computing devices. They can bring unique capabilities to computational tasks and offer the performance and energy efficiency of hardware with the flexibility of software. This paper proposes a genetic algorithm to develop an optimum configuration that optimizes the routing among its communicating processing nodes by minimizing the path length and maximizing possible parallel paths. In addition, this paper proposes forward, virtually inverse, and hybrid data exchange approaches to generate dynamic configurations that achieve data exchange optimization. Intensive experiments and qualitative comparisons have been conducted to show the effectiveness of the presented approaches. Results show significant performance improvement in terms of total execution time of up to 370%, 408%, 477%, and 550% when using configurations developed based on genetic algorithm, forward, virtually inverse, and hybrid data exchange techniques, respectively.

Authors and Affiliations

Medhat H A Awadalla

Keywords

Related Articles

Qualitative Study of Existing Research Techniques on Wireless Mesh Network

Wireless Mesh Network (WMN) is one of the significant forms of the wireless mesh network that assists in creating highly interconnected communication node. Since a decade, there have been various studies towards enhancin...

A Comprehensive Survey on the Performance Analysis of Underwater Wireless Sensor Networks (UWSN) Routing Protocols

The probe of innovative technologies is a furious issue of the day for the improvement of underwater wireless sensor network devices. The undersea is a remarkable and mystical region which is still unexplored and inacces...

A Novel Framework for Drug Synergy Prediction using Differential Evolution based Multinomial Random Forest

An efficient prediction of drug synergy plays a significant role in the medical domain. Examination of different drug-drug interaction can be achieved by considering the drug synergy score. With an rapid increase in canc...

On the Projection Matrices Influence in the Classification of Compressed Sensed ECG Signals

In this paper the classification results of compressed sensed ECG signals based on various types of projection matrices is investigated. The compressed signals are classified using the KNN (K-Nearest Neighbour) algorithm...

Intruder Attacks on Wireless Sensor Networks: A Soft Decision and Prevention Mechanism

Because of the wide-ranging of applications in a variety of fields, such as medicine, environmental studies, robotics, warfare and security, and so forth, the research on wireless sensor networks (WSNs) has attracted muc...

Download PDF file
  • EP ID EP468753
  • DOI 10.14569/IJACSA.2019.0100278
  • Views 73
  • Downloads 0

How To Cite

Medhat H A Awadalla (2019). Genetic Algorithm for Data Exchange Optimization. International Journal of Advanced Computer Science & Applications, 10(2), 630-639. https://europub.co.uk/articles/-A-468753