A Genetic-Firefly Hybrid Algorithm to Find the Best Data Location in a Data Cube

Journal Title: Engineering, Technology & Applied Science Research - Year 2016, Vol 6, Issue 5

Abstract

Decision-based programs include large-scale complex database queries. If the response time is short, query optimization is critical. Users usually observe data as a multi-dimensional data cube. Each data cube cell displays data as an aggregation in which the number of cells depends on the number of other cells in the cube. At any given time, a powerful query optimization method can visualize part of the cells instead of calculating results from raw data. Business systems use different approaches and positioning of data in the data cube. In the present study, the data is trained by a neural network and a genetic-firefly hybrid algorithm is proposed for finding the best position for the data in the cube.

Authors and Affiliations

M. Faridi Masouleh, M. A. Afshar Kazemi, M. Alborzi, A. Toloie Eshlaghy

Keywords

Related Articles

Preparation of Bimetallic Pd-Co Nanoparticles on Graphene Support for Use as Methanol Tolerant Oxygen Reduction Electrocatalysts

Graphene-supported (40-x) wt% Pd x wt% Co (0≤x≤13.33) alloys/composites have been prepared by a microwave-assisted polyol reduction method and been investigated for their structural and electrocatalytic properties for th...

A Comparative Analysis Between Optimized and Baseline High Pressure Compressor Stages Using Tridimensional Computational Fluid Dynamics

Re-vamping of industrial turbo-machinery is commonplace in the oil and gas industry in applications where subterranean combustion is used for oil extraction. The current case study refers to such an industrial compressor...

Design and Performance Analysis of Multi-tier Heterogeneous Network through Coverage, Throughput and Energy Efficiency

The unprecedented acceleration in wireless industry strongly compels wireless operators to increase their data network throughput, capacity and coverage on emergent basis. In upcoming 5G heterogeneous networks inclusion...

A Quantitative Measure For Evaluating Project Uncertainty Under Variation And Risk Effects

The effects of uncertainty on a project and the risk event as the consequence of uncertainty are analyzed. The uncertainty index is proposed as a quantitative measure for evaluating the uncertainty of a project. This is...

Motivation Factors for Adopting Building Information Modeling (BIM) in Iraq

Building information modeling (BIM) is an integrated and comprehensive system including whatever is related to a construction project and its stages. It represents a unified database for all project data through which pr...

Download PDF file
  • EP ID EP110616
  • DOI -
  • Views 281
  • Downloads 0

How To Cite

M. Faridi Masouleh, M. A. Afshar Kazemi, M. Alborzi, A. Toloie Eshlaghy (2016). A Genetic-Firefly Hybrid Algorithm to Find the Best Data Location in a Data Cube. Engineering, Technology & Applied Science Research, 6(5), -. https://europub.co.uk/articles/-A-110616