Title :
Predictive Model Based on Improved BP for Purity of the Mg, Al-hydrotalcite
Author :
Qiang, Luo ; Qingli, Ren ; Li, Luo ; Hongjun, He
Author_Institution :
Second Artillery Eng. Coll., Xi´´an
Abstract :
A prediction model for purity of the Mg,Al-hydrotalcite under varied process parameters based on artificial neural net was developed. And the non-linear relationship between the hydrotalcite purity and the raw material amount of NaOH, Mg2+, Al3+ was established based on BP learning algorithm analysis and convergence improvement. The hydrotalcite purity can be predicted by means of the trained neural net from the testing data. The learning algorithm for neural net is BP (back-propagation) algorithm with 3-2-1 structure. The results show that, for multi-factor synthesis prediction, the prediction model based on BP learning algorithm for hydrotalcite purity of the prio-synthesis hydrotalcite is feasible and effective. Thus, by virtue of the prediction model, the future Mg,Al-hydrotalcite purity can be evaluated under random complicated raw material amounts.
Keywords :
backpropagation; chemical engineering; neural nets; Al; Mg; NaOH; artificial neural net; backpropagation learning algorithm analysis; hydrotalcite purity; multifactor synthesis prediction; prediction model; predictive model; priosynthesis hydrotalcite;
Conference_Titel :
Information Science and Engineering, 2008. ISISE '08. International Symposium on
Conference_Location :
Shanghai
Print_ISBN :
978-1-4244-2727-4
DOI :
10.1109/ISISE.2008.337