Title :
Rough Set Incremental Reduction Algorithm and Its Application in Dynamic Choosing Input Variable of Short Term Load Forecasting Model
Author_Institution :
Chongqing Normal Univ., Chongqing
Abstract :
In this paper a reduction algorithm based on rough set theory is presented due to too much factors that influence accuracy in the power load forecasting. The reduction algorithm introduced to mine more correlative attributes in the pending forecasting components, ensures not only the rationality of input parameters of forecasting model but also the selection of input parameters of ANN model. An RAPHF (reduction algorithm through prior heuristic function) algorithm based on attributes-prior algorithm is introduced because reduction Algorithm based on dipartite matrix reduction algorithm is a NP-hard problem. On the basis of RAPHF, a rough set incremental algorithm with dynamic mining ability, namely, RAPHF-I is proposed when considering the updating samples. The efficiency and advantage of our method is proved by prediction results of short-term load based on the RAPFF and RAPHF-I.
Keywords :
load forecasting; matrix algebra; neural nets; power system analysis computing; rough set theory; NP-hard problem; artificial neural network; dipartite matrix reduction algorithm; dynamic choosing input variable; power load forecasting; prior heuristic function; rough set incremental reduction algorithm; short term load forecasting model; Heuristic algorithms; Information systems; Input variables; Load forecasting; Load modeling; NP-hard problem; Neural networks; Predictive models; Set theory; Weather forecasting;
Conference_Titel :
Fuzzy Systems and Knowledge Discovery, 2007. FSKD 2007. Fourth International Conference on
Conference_Location :
Haikou
Print_ISBN :
978-0-7695-2874-8
DOI :
10.1109/FSKD.2007.499