عنوان مقاله :
Modeling Distillation Column Using ARX Model Structure and Artificial Neural Networks
عنوان فرعي :
مدلسازي ستون تقطير با استفاده از ساختار مدل ARX و شبكههاي عصبي مصنوعي
پديد آورندگان :
پيرمرادي، رضا نويسنده دانشگاه آزاد اسلامي علوم و تحقيقات تهران, , , كارگر، سيد محمد علي نويسنده عضو هيات علمي دانشگاه آزاد اسلامي واحد كرمانشاه kargar, seyed mohammad ali , زارع بيدكي، امير نويسنده مربي- دانشگاه آزاد اسلامي، واحد علوم و تحقيقات تهران Zare Bidaki, Amir
اطلاعات موجودي :
فصلنامه سال 1391 شماره 10
كليدواژه :
NEURAL NETWORKS , ARX model structure , MODELING , Distillation column
چكيده فارسي :
Distillation is a complex and highly nonlinear industrial process. In general it is not always possible to obtain accurate first principles models for high-purity distillation columns. On the other hand the development of first principles models is usually time consuming and expensive. To overcome these problems, empirical models such as neural networks can be used. One major drawback of empirical models is that the prediction is valid only inside the data domain that is sufficiently covered by measurement data. Modeling distillation columns by means of neural networks is reported in literature by using recursive networks. The recursive networks are proper for modeling purpose, but such models have the problems of high complexity and high computational cost. The objective of this paper is to propose a simple and reliable model for distillation column. The proposed model uses feed forward neural networks which results in a simple model with less parameters and faster training time. Simulation results demonstrate that predictions of the proposed model in all regions are close to outputs of the dynamic model and the error in negligible. This implies that the model is reliable in all regions.
چكيده لاتين :
Distillation is a complex and highly nonlinear industrial process. In general it is not always possible to obtain accurate first principles models for high-purity distillation columns. On the other hand the development of first principles models is usually time consuming and expensive. To overcome these problems, empirical models such as neural networks can be used. One major drawback of empirical models is that the prediction is valid only inside the data domain that is sufficiently covered by measurement data. Modeling distillation columns by means of neural networks is reported in literature by using recursive networks. The recursive networks are proper for modeling purpose, but such models have the problems of high complexity and high computational cost. The objective of this paper is to propose a simple and reliable model for distillation column. The proposed model uses feed forward neural networks which results in a simple model with less parameters and faster training time. Simulation results demonstrate that predictions of the proposed model in all regions are close to outputs of the dynamic model and the error in negligible. This implies that the model is reliable in all regions.
عنوان نشريه :
روشهاي هوشمند در صنعت برق
عنوان نشريه :
روشهاي هوشمند در صنعت برق
اطلاعات موجودي :
فصلنامه با شماره پیاپی 10 سال 1391
كلمات كليدي :
#تست#آزمون###امتحان