Title :
Enhancing optimal transmission or subtransmission planning by using decision trees
Author :
Peco, J. ; Sanchez-Ubeda, E.F. ; Gomez, T.
Author_Institution :
Inst. de Investigacion Tecnologica, Univ. Pontificia Comillas, Madrid, Spain
Abstract :
Due to the large size of electric power systems, there is a very high computational burden when obtaining the optimum network by using classical optimization techniques. Several authors have used heuristics and/or sensitivities in order to guide the search of optimal network investments. This paper proposes an automatic learning approach in order to decide whether a network change will improve the overall costs or not. More specifically, decision trees methods are used to identify a set of simple and reliable rules which combine criteria based on both heuristics and sensitivities. These decision trees are integrated in a subtransmission planning tool, improving dramatically both the "optimality" of the resultant network and the computational time.
Keywords :
decision trees; power transmission planning; automatic learning approach; classical optimization techniques; genetic algorithms; heuristics; optimal network investments; optimal subtransmission planning enhancement; optimal transmission planning enhancement; planning rules; subtransmission planning tool; Computer aided software engineering; Computer networks; Cost function; Decision trees; Genetic algorithms; Investments; Power system planning; Propagation losses; Space exploration; Testing;
Conference_Titel :
Electric Power Engineering, 1999. PowerTech Budapest 99. International Conference on
Conference_Location :
Budapest, Hungary
Print_ISBN :
0-7803-5836-8
DOI :
10.1109/PTC.1999.826607