Share

Export Citation

APA
MLA
Chicago
Harvard
Vancouver
BIBTEX
RIS
Universitas Hasanuddin
Research output:Contribution to journalArticlepeer-review

Increasing electrical grid stability classification performance using ensemble bagging of C4.5 and classification and regression trees

Aziz F.

International Journal of Electrical and Computer Engineering

Q3
Published: 2022Citations: 10

Abstract

<span>The increasing demand for electricity every year makes the electricity infrastructure approach the maximum threshold value, thus affecting the stability of the electricity network. The decentralized smart grid control (DSGC) system has succeeded in maintaining the stability of the electricity network with various assumptions. The data mining approach on the DSGC system shows that the decision tree algorithm provides new knowledge, however, its performance is not yet optimal. This paper poses an ensemble bagging algorithm to reinforce the performance of decision trees C4.5 and classification and regression trees (CART). To evaluate the classification performance, 10-fold cross-validation was used on the grid data. The results showed that the ensemble bagging algorithm succeeded in increasing the performance of both methods in terms of accuracy by 5.6% for C4.5 and 5.3% for CART.</span>

Other files and links

Fingerprint

CartSciences
Decision treeSciences
Computer scienceSciences
Ensemble learningSciences
Stability (learning theory)Sciences
ElectricitySciences
GridSciences
Data miningSciences
RegressionSciences
Smart gridSciences
Artificial intelligenceSciences
Ensemble forecastingSciences
Machine learningSciences
StatisticsSciences
MathematicsSciences
EngineeringSciences
GeometrySciences
Mechanical engineeringSciences
Electrical engineeringSciences