Title :
A comparative analysis of neural and fuzzy cluster techniques applied to the characterization of electric load in substations
Author :
Marques, Daniela Zanon ; De Almeida, Kennedy Arantes ; De Deus, Ana Maria ; Da Silva Paulo, Assis R G ; Lima, Wagner Da Silva
Author_Institution :
Goias State Energy Co., Goiania, Brazil
Abstract :
The hourly electric load behavior is necessary information to execute planning and operation activities of power systems. This information can be obtained through load characterization consisting of measurement and analysis of several load profiles aiming to find the typical profile that reflects consumer´s behavior served by a certain utility or even the profiles of the consumers served by a specific substation. In this work, six techniques were used to perform clustering and classification of bus load profile in utilities substations: K-means, four variations of self organizing maps and fuzzy C-means. Many simulations with different parameters were used to improve clustering performance. Merit indexes of clustering performance (intracluster and intercluster) were used to compare these techniques. These indexes were not sufficient to guarantee satisfactory results but indicate reasonable performance. The combination of all techniques helps decision maker to understand results and increase the possibility to extract from data implicit information and potentially useful.
Keywords :
consumer behaviour; fuzzy logic; load forecasting; pattern classification; pattern clustering; power distribution planning; power system simulation; self-organising feature maps; substations; consumer behavior; data implicit information; fuzzy C-means; fuzzy clustering; fuzzy logic; hourly electric load behavior; load analysis; load characterization; load forecasting; load modelling; load profiles measurement; neural network; pattern classification; pattern clustering; power distribution planning; power system operation; power system planning; self organizing map; substation; Clustering algorithms; Information analysis; Investments; Load forecasting; Neural networks; Power distribution; Power system analysis computing; Power system measurements; Power system planning; Substations;
Conference_Titel :
Transmission and Distribution Conference and Exposition: Latin America, 2004 IEEE/PES
Print_ISBN :
0-7803-8775-9
DOI :
10.1109/TDC.2004.1432503