| نویسندگان | پروانه نخستین پناهی-علیقلی نیایی-Hui-Hsin Tseng-داریوش سالاری-سیدمهدی موسوی بفروئیه |
| نشریه | NEURAL COMPUT APPL |
| تاریخ انتشار | 2015-1-01 |
| نمایه نشریه | ISI ,SCOPUS |
چکیده مقاله
This paper presents an artificial neural network
(ANN) for modeling the relationship between catalyst
composition and catalytic performance in the NH3-SCR of
NO process. The supported catalysts with different transition
metals (Mn, Fe, Co and Cu) and (c-Al2O3, ZSM5 and
SAPO-34) supports were prepared and tested in NH3–NOSCR
reaction to generate required data for neural network
development. The ANN was constructed using the experimental
dataset, and all the data were integrated using
support and metal atomic descriptors for the construction
of general catalyst design model. The statistical analysis of
the results indicated that the R2 values for the training and
test data were high, more than 0.9, and this indicates that
ANN-based model developed in this work can predict
catalyst performance correctly. More evaluation of the
obtained model revealed that metal has more influence than
support on catalyst activity at supported catalysts.