Jenn-Tsong Horng,Shih-Fong Chang,T. Y. Wu,Po-Li Chen,Ying-Huei Hung
出处
期刊:IEEE Transactions on Components and Packaging Technologies [Institute of Electrical and Electronics Engineers] 日期:2008-05-29卷期号:31 (2): 449-460被引量:5
标识
DOI:10.1109/tcapt.2008.921644
摘要
An effective artificial neural network together with a genetic algorithm have been demonstrated for predicting the optimal thermal performance of plain plate-fin heat sinks in a ducted flow under multi-constraints such as pressure drop, mass, and space limitations. A series of constrained optimal designs can be efficiently performed. Comparisons of the optimal results between the artificial neural network with genetic algorithm (ANN-GA) and the response surface methodology with sequential quadratic programming (RSM-SQP) methods are made. Although more training patterns are needed for the ANN-GA method as compared to that for the RSM-SQP method, the ANN-GA method which has randomly uniform-distributed training patterns in the whole solving domain can be applied to the global region of interest, not just in the region of operability. Consequently, a globally precise optimal solution can be achieved with the ANN-GA method; while the solution obtained with the RSM-SQP method may cause a significant error if the optimal values of the design variables happen to be located beyond the region of operability.