Journal IJCRT UGC-CARE, UGCCARE( ISSN: 2320-2882 ) | UGC Approved Journal | UGC Journal | UGC CARE Journal | UGC-CARE list, New UGC-CARE Reference List, UGC CARE Journals, International Peer Reviewed Journal and Refereed Journal, ugc approved journal, UGC CARE, UGC CARE list, UGC CARE list of Journal, UGCCARE, care journal list, UGC-CARE list, New UGC-CARE Reference List, New ugc care journal list, Research Journal, Research Journal Publication, Research Paper, Low cost research journal, Free of cost paper publication in Research Journal, High impact factor journal, Journal, Research paper journal, UGC CARE journal, UGC CARE Journals, ugc care list of journal, ugc approved list, ugc approved list of journal, Follow ugc approved journal, UGC CARE Journal, ugc approved list of journal, ugc care journal, UGC CARE list, UGC-CARE, care journal, UGC-CARE list, Journal publication, ISSN approved, Research journal, research paper, research paper publication, research journal publication, high impact factor, free publication, index journal, publish paper, publish Research paper, low cost publication, ugc approved journal, UGC CARE, ugc approved list of journal, ugc care journal, UGC CARE list, UGCCARE, care journal, UGC-CARE list, New UGC-CARE Reference List, UGC CARE Journals, ugc care list of journal, ugc care list 2020, ugc care approved journal, ugc care list 2020, new ugc approved journal in 2020, ugc care list 2021, ugc approved journal in 2021, Scopus, web of Science.
How start New Journal & software Book & Thesis Publications
Submit Your Paper
Login to Author Home
Communication Guidelines

WhatsApp Contact
Click Here

  Published Paper Details:

  Paper Title

A STUDY OF THE BIODIESEL REACTIVE DISTILLATION UNIT USING THE MODEL OF CASCADE-FORWARD NEURAL NETWORK

  Authors

  Sayan Basak,  Dr. Kapil Gupta

  Keywords

Biodiesel, Reactive Distillation, Aspen HYSYS, Parametric Utility, Cascade-Forward Neural Network, Random Number Generator.

  Abstract


- In this work, a cascade-forward neural network model has been developed to represent a reactive distillation process used for the production of biodiesel from an esterification reaction between palmitic acid and methanol. In order to obtain data for the network, the parametric utility of an Aspen HYSYS prototype plant of the process developed using Distillation Column Sub- Flow sheet and Wilson model as the fluid package was utilized. The neural network model developed had six input parameters (palmitic acid feed temperature, palmitic acid feed pressure, methanol feed temperature, methanol feed pressure, reboiler heat duty and reflux ratio), and the output parameter was the molefractionofthebiodieselobtainedfromthebottomsectionofthereactive distillation column. For the training of the neural network model, six different random number generators (Messene twister, multiplicative congruential generator, multiplicative lagged Fibonacci generator, combined multiple recursive generator, shift-register generator summed with linear congruential generator, and modified subtract with borrow generator) were tried by varying their seed numbers from 0 to 70, and the one with best performance, together with the corresponding seed number, was selected for the development of the cascade-forward neural network. The results obtained from the training and simulation carried out for the developed model showed the good representation of the process by the developed model because the estimated sum of absolute error, mean of absolute error, sum of squared error and mean of squared error of the model, which were the performance criteria used, were found to be favourable and had values of 1.16E-02, 1.93E-05, 5.46E-07, and 9.10E-10, respectively. Also, the performance of the developed model in predicting the mole fractions of the produced biodiesel was found to be very good as the sum of absolute error, the mean of absolute error, the sum of squared error and the mean of squared error, in this case, were estimated to be 8.39E-03, 1.40E-05, 2.17E-07, and 3.62E- 10, respectively. In conclusion, cascade-forward neural network has been demonstrated to be very good in modelling this complex reactive distillation process for the production of biodiesel.

  IJCRT's Publication Details

  Unique Identification Number - IJCRT1807047

  Paper ID - 185974

  Page Number(s) - 430-445

  Pubished in - Volume 6 | Issue 2 | April 2018

  DOI (Digital Object Identifier) -   

  Publisher Name - IJCRT | www.ijcrt.org | ISSN : 2320-2882

  E-ISSN Number - 2320-2882

  Cite this article

  Sayan Basak,  Dr. Kapil Gupta,   "A STUDY OF THE BIODIESEL REACTIVE DISTILLATION UNIT USING THE MODEL OF CASCADE-FORWARD NEURAL NETWORK ", International Journal of Creative Research Thoughts (IJCRT), ISSN:2320-2882, Volume.6, Issue 2, pp.430-445, April 2018, Available at :http://www.ijcrt.org/papers/IJCRT1807047.pdf

  Share this article

  Article Preview

  Indexing Partners

indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
Call For Paper May 2024
Indexing Partner
ISSN and 7.97 Impact Factor Details


ISSN
ISSN
ISSN: 2320-2882
Impact Factor: 7.97 and ISSN APPROVED
Journal Starting Year (ESTD) : 2013
ISSN
ISSN and 7.97 Impact Factor Details


ISSN
ISSN
ISSN: 2320-2882
Impact Factor: 7.97 and ISSN APPROVED
Journal Starting Year (ESTD) : 2013
ISSN
DOI Details

Providing A Free digital object identifier by DOI.one How to get DOI?
For Reviewer /Referral (RMS) Earn 500 per paper
Our Social Link
Open Access
This material is Open Knowledge
This material is Open Data
This material is Open Content
Indexing Partner

Scholarly open access journals, Peer-reviewed, and Refereed Journals, Impact factor 7.97 (Calculate by google scholar and Semantic Scholar | AI-Powered Research Tool) , Multidisciplinary, Monthly, Indexing in all major database & Metadata, Citation Generator, Digital Object Identifier(DOI)

indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer
indexer