Article ID: | iaor19972503 |
Country: | United Kingdom |
Volume: | 33 |
Issue: | 3 |
Start Page Number: | 95 |
End Page Number: | 103 |
Publication Date: | Feb 1997 |
Journal: | Computers & Mathematics with Applications |
Authors: | Kukolj D. |
Keywords: | energy, artificial intelligence |
In this paper, a method of unsupervised learning is proposed for the purposes of reducing large-scale complex dynamic systems. Reduction of a system is carried out through the division of state variables into groups and through the selection of the characteristic representatives of each group. The proposed methodology is tested on an electric power system. The obtained results indicate that the model of the dynamic system can be significantly simplified while retaining its basic dynamic characteristics.