Modeling and optimization of the process parameters in vacuum drying of culinary banana (Musa ABB) slices by application of artificial neural network and genetic algorithm

被引:38
|
作者
Khawas, Prerna [1 ]
Dash, Kshirod Kumar [1 ]
Das, Arup Jyoti [1 ]
Deka, Sankar Chandra [1 ]
机构
[1] Tezpur Univ, Dept Food Engn & Technol, Napaam 784028, Assam, India
关键词
Artificial neural network; culinary banana; genetic algorithm; optimization; quality attributes; response surface methodology; PHYSICOCHEMICAL PROPERTIES; ANTIOXIDANT CAPACITY; RESPONSE-SURFACE; KINETICS; TEMPERATURE; DESIGN;
D O I
10.1080/07373937.2015.1060605
中图分类号
TQ [化学工业];
学科分类号
0817 ;
摘要
The influence of drying temperature, sample slice thickness, and pretreatment on quality attributes like rehydration ratio, scavenging activity, color (in terms of nonenzymatic browning), and texture (in terms of hardness) of culinary banana (Musa ABB) has been evaluated in the present study. A comparative approach was made between artificial neural network (ANN) and response surface methodology (RSM) to predict various parameters for vacuum drying of culinary banana. The effect of process variables on responses during dehydration were investigated using general factorial experimental design. This design was used to train feed-forward back-propagation ANN. The predictive capabilities of these two methodologies for optimization of process parameters were compared in terms of relative deviation (R-d). Results revealed that a properly trained ANN model is found to be more accurate in prediction as compared to RSM. The optimum condition selected from ANN/GA responses on the basis of highest fitness value revealed that culinary banana slices of 6mm thickness pretreated with 1% citric acid and dried at 76 degrees C resulted in a maximum rehydration ratio of 6.20, scavenging activity of 48.63% with minimum nonenzymatic browning of 25%, and hardness of 43.63N. Results further revealed that, in the case of rehydration ratio, temperature and pretreatment showed a positive effect while thickness had a negative effect. On the contrary, for scavenging activity, temperature showed the highest negative effect followed by slice thickness and positive effect with pretreatment. For nonenzymatic browning, thickness showed the highest negative effect but temperature and pretreatment showed a positive effect. Similarly, for hardness, all three parameters showed a negative effect.
引用
收藏
页码:491 / 503
页数:13
相关论文
共 50 条
  • [21] Application Of Artificial Neural Network Modeling For Machining Parameters Optimization In Drilling Operation
    Kannan, T. Deepan Bharathi
    Kannan, G. Rajesh
    Kumar, B. Suresh
    Baskar, N.
    INTERNATIONAL CONFERENCE ON ADVANCES IN MANUFACTURING AND MATERIALS ENGINEERING (ICAMME 2014), 2014, 5 : 2242 - 2249
  • [22] Predictive Modelling and Optimization of Machining Parameters to Minimize Surface Roughness using Artificial Neural Network Coupled with Genetic Algorithm
    Kant, Girish
    Sangwan, Kuldip Singh
    15TH CIRP CONFERENCE ON MODELLING OF MACHINING OPERATIONS (15TH CMMO), 2015, 31 : 453 - 458
  • [23] Preparation of agar nanospheres: Comparison of response surface and artificial neural network modeling by a genetic algorithm approach
    Zaki, Mohammad Reza
    Varshosaz, Jaleh
    Fathi, Milad
    CARBOHYDRATE POLYMERS, 2015, 122 : 314 - 320
  • [24] Artificial neural network based modeling and optimization of refined palm oil process
    Tehlah, N.
    Kaewpradit, P.
    Mujtaba, I. M.
    NEUROCOMPUTING, 2016, 216 : 489 - 501
  • [25] Parameters Optimization of Plasma Hardening Process Using Genetic Algorithm and Neural Network
    Liu Gu
    Wang Liu-ying
    Chen Gui-ming
    Hua Shao-chun
    JOURNAL OF IRON AND STEEL RESEARCH INTERNATIONAL, 2011, 18 (12) : 57 - 64
  • [26] Parameters Optimization of Plasma Hardening Process Using Genetic Algorithm and Neural Network
    Gu Liu
    Liu-ying Wang
    Gui-ming Chen
    Shao-chun Hua
    Journal of Iron and Steel Research International, 2011, 18 : 57 - 64
  • [27] Parameters Optimization of Plasma Hardening Process Using Genetic Algorithm and Neural Network
    LIU Gu~1
    2.Key Laboratory of Electronic Ceramics and Devices of Ministry of Education
    Journal of Iron and Steel Research(International), 2011, 18 (12) : 57 - 64
  • [28] Microencapsulation of Dragon Fruit Peel Extract by Freeze-Drying Using Hydrocolloids: Optimization by Hybrid Artificial Neural Network and Genetic Algorithm
    Raj, G. V. S. Bhagya
    Dash, Kshirod K.
    FOOD AND BIOPROCESS TECHNOLOGY, 2022, 15 (09) : 2035 - 2049
  • [29] Modeling the Drying Process of Onion Slices Using Artificial Neural Networks
    Francik, Slawomir
    Lapczynska-Kordon, Boguslawa
    Hajos, Michal
    Basista, Grzegorz
    Zawislak, Agnieszka
    Francik, Renata
    ENERGIES, 2024, 17 (13)
  • [30] Optimization of Culture Medium for Maximal Production of Spinosad Using an Artificial Neural Network - Genetic Algorithm Modeling
    Lan, Zhou
    Zhao, Chen
    Guo, Weiqun
    Guan, Xiong
    Zhang, Xiaolin
    JOURNAL OF MOLECULAR MICROBIOLOGY AND BIOTECHNOLOGY, 2015, 25 (04) : 253 - 261