An Evolutionary Multi-Objective Approach for Resource Scheduling in Mobile Cloud Computing
Journal Title: International Journal of Intelligent Engineering and Systems - Year 2017, Vol 10, Issue 1
Abstract
Mobile cloud computing (MCC) is one of the evolving fields in recent years. The complexity of MCC made researchers to concentrate on efficient application development. In MCC, resource scheduling is treated as one of the major issues. Genetic Algorithms (GAs) are efficient search techniques to find the optimal solution for the scheduling problem. GAs has the ability to optimize the resource scheduling in both homogeneous and heterogeneous environments. This paper presents the multi objective genetic algorithm for MCC (MOGAMCC) environment. To implement the MOGAMCC, the cloudsim toolkit was extended with the MOGA and its task scheduling approach determines the optimal scheduling policy. A single point crossover model is employed for the generation of new population. Mutation process is carried by randomly changing the bit positions in the chromosomes. The experimental results show that the proposed model finds the optimal trade-off between the defined objectives and which ultimately reduces the makespan.
Authors and Affiliations
Dasari Nagaraju
Energy-Aware Fruitfly Optimisation Algorithm for Load Balancing in Cloud Computing Environments
An effective task scheduling is one of the vital aspects for effectually hitching the potential of cloud computing. The most important aspect of task scheduling focuses on balancing the load of tasks among virtual machi...
Grey Fuzzy Neural Network-Based Hybrid Model for Missing Data Imputation in Mixed Database
Nowadays, the missing data imputation is the novel paradigm to replace with the imputed value of the missing attribute. The missing data occurs due to bias information, non-response of the system. In the medical domain,...
Evolutionary Programming Approach for Deregulated Power Systems to Optimal Positioning of FACTS Devices
From past decade, the major issues involved in deregulated power systems are branch loading and voltage stability. To address this issue, in this paper an evolutionary programming algorithm was proposed for optimal posit...
Multi Agent Based Diabetes Diagnosing and Classification with the Aid of Hybrid Firefly-Neural Network
A multi agent distributed data mining system for diagnosing diabetes and classification is proposed. Here we are introducing four agents namely user agent, connection agent, updation agent, and security agent. In which e...
Routing for Center Concentrated Mesh
As the number of cores increases this affects the performance of the mesh and leads to investigation of new topological concept that is center concentrated Mesh. The topology designed seems to be efficient but the routin...