ISSN 2074-9414 (Print),
ISSN 2313-1748 (Online)

Neuron Network Modeling of Intensification of Isogumulone Extraction in a Rotary Pulse Generator

Abstract
Introduction. Artificial neural networks are a popular tool of contemporary research and technology, including food science, where they can be used to model various technological processes. The present research objective was to develop an artificial neural network capable of predicting the content of isogumulone in a hop extract at given technological parameters of the rotary pulse generator. Study objects and methods. The mathematical modeling was based on experimental data. The isogumulone content in the hop extract I (mg/dm3) served as an output parameter. The input variables included: processing temperature t (°C), rotor speed n (rpm), processing time  (min), and the gap between the rotor teeth and stator s (mm). Results and discussion. The resulting model had the following parameters: two hidden layers, 30 neurons each; neuron activation function – GELU; loss function – MSELoss; learning step – 0.001; optimizer – Adam; L2 regularization at 0.00001; training set of four batches, 16 records each; 9,801 epochs. The accuracy of the artificial neural network (1.67%) was defined as the mean relative error. The error of the regression model was also low (2.85%). The neural network proved to be more accurate than the regression model and had a better ability to predict the value of the output variable. The accuracy of the artificial neural network was higher because it used test data not included in the training. The regression model when tested on test data showed much worse results. Conclusion. Artificial neural networks proved extremely useful as a means of technological modeling and require further research and application.
Keywords
Artificial neural network, modeling, rotary-pulsating apparatus, beer, hop
REFERENCES
  1. Ali A, Qadri S, Mashwani WK, Belhaouari SB, Naeem S, Rafique S, et al. Machine learning approach for the classification of corn seed using hybrid features. International Journal of Food Properties. 2020;23(1):1110–1124. https://doi.org/10.1080/10942912.2020.1778724.
  2. An T, Yu H, Yang C, Liang G, Chen J, Hu Z, et al. Black tea withering moisture detection method based on convolution neural network confidence. Journal of Food Process Engineering. 2020;43(7). https://doi.org/10.1111/jfpe.13428.
  3. Bhargava A, Barisal A. Automatic detection and grading of multiple fruits by machine learning. Food Analytical Methods. 2020;13(3):751–761. https://doi.org/10.1007/s12161-019-01690-6.
  4. Chen J, Zhang D, Nanehkaran YA, Li D. Detection of rice plant diseases based on deep transfer learning. Journal of the Science of Food and Agriculture. 2020;100(7):3246–3256. https://doi.org/10.1002/jsfa.10365.
  5. Chen X, Chai Q, Lin N, Li X, Wang W. 1D convolutional neural network for the discrimination of aristolochic acids and their analogues based on near-infrared spectroscopy. Analytical Methods. 2019;11(40):5118–5125. https://doi.org/10.1039/c9ay01531k.
  6. Codina GG, Dabija A, Oroian M. Prediction of pasting properties of dough from mixolab measurements using artificial neuronal networks. Foods. 2019;8(10). https://doi.org/10.3390/foods8100447.
  7. Ekiz B, Baygul O, Yalcintan H, Ozcan M. Comparison of the decision tree, artificial neural network and multiple regression methods for prediction of carcass tissues composition of goat kids. Meat Science. 2020;161. https://doi.org/10.1016/j.meatsci.2019.108011.
  8. Ikonic B, Bera O, Pavlicevic J, Kojic P, Jokic A, Ikonic P, et al. Artificial neural network modeling and optimization of wheat starch suspension microfiltration using twisted tape as a turbulence promoter. Journal of Food Processing and Preservation. 2019;43(11). https://doi.org/10.1111/jfpp.14219.
  9. Lu A, Wei X, Cai R, Xiao S, Yuan H, Gong J, et al. Modeling the effect of vibration on the quality of stirred yogurt during transportation. Food Science and Biotechnology. 2020;29(7):889–896. https://doi.org/10.1007/s10068-020-00741-7.
  10. Sadeghi E, Haghighi Asl A, Movagharnejad K. Mathematical modelling of infrared-dried kiwifruit slices under natural and forced convection. Food Science and Nutrition. 2019;7(11):3589–3606. https://doi.org/10.1002/fsn3.1212.
  11. Sadeghi E, Movagharnejad K, Haghighi Asl A. Mathematical modeling of infrared radiation thin-layer drying of pumpkin samples under natural and forced convection. Journal of Food Processing and Preservation. 2019;43(12). https://doi.org/10.1111/jfpp.14229.
  12. Stangierski J, Weiss D, Kaczmarek A. Multiple regression models and Artificial Neural Network (ANN) as prediction tools of changes in overall quality during the storage of spreadable processed Gouda cheese. European Food Research and Technology. 2019;245(11):2539–2547. https://doi.org/10.1007/s00217-019-03369-y.
  13. Tarafdar A, Kaur BP, Nema PK, Babar OA, Kumar D. Using a combined neural network – genetic algorithm approach for predicting the complex rheological characteristics of microfluidized sugarcane juice. LWT. 2020;123. https://doi.org/10.1016/j.lwt.2020.109058.
  14. Torshizi MV, Asghari A, Tabarsa F, Danesh P, Akbarzadeh A, et al. Classification by artificial neural network for mushroom color changing under effect UV-A irradiation. Carpathian Journal of Food Science and Technology. 2020;12(2):157–167. https://doi.org/10.34302/crpjfst/2020.12.2.16.
  15. Vakula A, Pavlic B, Pezo L, Tepic Horecki A, Danicic T, Raicevic L, et al. Vacuum drying of sweet cherry: Artificial neural networks approach in process optimization. Journal of Food Processing and Preservation. 2020;44(11). https://doi.org/10.1111/jfpp.14863.
  16. Vasighi-Shojae H, Gholami-Parashkouhi M, Mohammadzamani D, Soheili A. Predicting mechanical properties of golden delicious apple using ultrasound technique and Artificial Neural Network. Food Analytical Methods. 2020;13(3):699–705. https://doi.org/10.1007/s12161-019-01689-z.
  17. Mosher M, Trantham K. Brewing science: A multidisciplinary approach. Cham: Springer; 2017. 408 p. https://doi.org/10.1007/978-3-319-46394-0.
  18. Borodulin DM, Safonova EA, Ivanets VN, Lapina TP, Milenkij IO. Method for hopping beer wort. Russia patent RU 2634870C1. 2017.
  19. Kukhlenko AA, Orlov SE, Ivanova DB, Vasilishin MS. Process of dissolution of polydisperse materials in a unit with a rotary pulsation apparatus. Journal of Engineering Physics and Thermophysics. 2015;88(1):25–36. (In Russ.). https://doi.org/10.1007/s10891-015-1164-z.
  20. Ivanov EV, Matveeva NA. Plant raw material extraction with periodic intensive hydrodynamic regime. Journal of International Academy of Refrigeration. 2015;(4):16–22. (In Russ.).
  21. Romanova NK, Kitaevskaya SV, Reshetnik OA. Optimization of cranberry extraction in the rotor-pulsating machine. Bulletin of the Technological University. 2018;21(10):166–170. (In Russ.).
  22. Safonova EA, Potapov AN, Vagaytseva EA. Intensification of technological processes of beer production using rotary-pulsation apparatus. Food Processing: Techniques and Technology. 2015;36(1):74–81. (In Russ.).
  23. Teleshev AT, Chagava YaD, Asaturyan ZhM, Kaziev GZ, Kudryavtsev AB. Improvement of the process of producing plant oil from grape seeds. Scientific Review. 2015;(15):219–225. (In Russ.).
  24. Gutova SG, Novoseltseva MA, Kagan ES. Mathematical modeling of isohumulone extraction process in beer wort hoppingn. Proceedings – 2019 International Russian Automation Conference; 2019; Sochi. Sochi: Institute of Electrical and Electronics Engineers Inc.; 2019. https://doi.org/10.1109/RUSAUTOCON.2019.8867778.
  25. Borodulin DM, Sukhorukov DV, Musina ON, Shulbaeva MT, Zorina TV, Kiselev DI, et al. Flour baking mixes: Optimal operating parameters for vibration mixers. Food Processing: Techniques and Technology. 2021;51(1):196–208. (In Russ.). https://doi.org/10.21603/2074-9414-2021-1-196-208.
  26. Prosekov AYu. Rolʹ mezhfaznykh poverkhnostnykh yavleniy v proizvodstve dispersnykh produktov s pennoy strukturoy (obzor) [The role of interfacial surface phenomena in the production of dispersed products with a foam structure (review)]. Storage and Processing of Farm Products. 2001;(8):24–27. (In Russ.).
  27. Prosekov AYu. Fiziko-khimicheskie osnovy polucheniya pishchevykh produktov s pennoy strukturoy [Physico-chemical foundations for obtaining food products with a foam structure]. Kemerovo: Kemerovo Technological Institute of Food Industry; 2001. 172 p. (In Russ.).
How to quote?
Shafrai AV, Safonova EA, Borodulin DM, Golovacheva YaS, Ratnikov SA, Kerlos WBW. Neuron Network Modeling of Intensification of Isogumulone Extraction in a Rotary Pulse Generator. Food Processing: Techniques and Technology. 2021;51(3):593–603. (In Russ.). https://doi.org/10.21603/2074-9414-2021-3-593-603.
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