Please use this identifier to cite or link to this item: https://scholarbank.nus.edu.sg/handle/10635/62641
DC FieldValue
dc.titlePower system security assessment and enhancement using artificial neural network
dc.contributor.authorSrinivasan, D.
dc.contributor.authorChang, C.S.
dc.contributor.authorLiew, A.C.
dc.contributor.authorLeong, K.C.
dc.date.accessioned2014-06-17T06:53:18Z
dc.date.available2014-06-17T06:53:18Z
dc.date.issued1998
dc.identifier.citationSrinivasan, D.,Chang, C.S.,Liew, A.C.,Leong, K.C. (1998). Power system security assessment and enhancement using artificial neural network. Proceedings of the International Conference on Energy Management and Power Delivery, EMPD 2 : 582-587. ScholarBank@NUS Repository.
dc.identifier.urihttp://scholarbank.nus.edu.sg/handle/10635/62641
dc.description.abstractA power system is continually subjected to external and internal disturbances that are capable of causing instability in the system. The process of determining the stability of the system following the disturbances is known as security assessment. In particular, dynamic security assessment evaluates the stability of the power system with the time-dependent transition from pre-fault to post-fault states taken into consideration. For large disturbances, critical clearing time is a measure of the stability of the power system. The critical clearing time is a complex function of many variables, and its determination using conventional methods such as numerical integration is generally a time consuming and computationally intensive task. As an alternative approach, the artificial neural network is used in this paper to predict the critical clearing time. In particular, multilayered feedforward neural network with error backpropagation algorithm has used to predict the critical clearing time of 2 different electric power systems; a 2 machine 5 bus system and a 3 machine 8 bus system. For the former power system, the optimal result of a percentage mean absolute error of 0.6% was obtained with a neural network structure of 1 hidden layer, 18 hidden neurons and the logistic activation function. The larger system had an optimal result of percentage mean absolute error of 2% with a neural network structure of 3 hidden layers, 30 hidden neurons and the logistic activation function.
dc.sourceScopus
dc.typeArticle
dc.contributor.departmentELECTRICAL ENGINEERING
dc.description.sourcetitleProceedings of the International Conference on Energy Management and Power Delivery, EMPD
dc.description.volume2
dc.description.page582-587
dc.description.coden00235
dc.identifier.isiutNOT_IN_WOS
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