Please use this identifier to cite or link to this item: https://scholarbank.nus.edu.sg/handle/10635/112218
Title: Application of genetic algorithms to determine worst-case switching overvoltage of MRT systems
Authors: Chang, W.Q.
Jiang, S. 
Eiangovan
Issue Date: 1999
Citation: Chang, W.Q.,Jiang, S.,Eiangovan (1999). Application of genetic algorithms to determine worst-case switching overvoltage of MRT systems. IEE Proceedings: Electric Power Applications 146 (1) : 81-87. ScholarBank@NUS Repository.
Abstract: Genetic algorithms (GAs) are applied to determine the worst-case overvoltage caused by non-simultaneous energisation of mass rapid transit (MRT) power distribution systems. Two GA-based optimisation methods are compared, using case studies performed on a typical MRT system. Simulation results show that the objective function of the GA problem is highly multimodal, discontinuous and noisy, which makes it difficult for the traditional sequential search method to obtain global optimisation. Although the effectiveness of the GA approach is verified, one drawback of the approach is that it can be CPU time-intensive. The GA approach performs many executions of the electromagnetic transient program for function evaluations. The micro-GA (uGA) is proposed as an alternative to the simple GA. Results show that the uGA performs fewer function evaluations as it searches over the response surface more efficiently than the simple GA. © IEE, 1999.
Source Title: IEE Proceedings: Electric Power Applications
URI: http://scholarbank.nus.edu.sg/handle/10635/112218
ISSN: 13502352
Appears in Collections:Staff Publications

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