Convective Drying of the Zucchini Slices; Impact of Pretreatments on the Drying Characteristics and Color Properties, Evaluation of Artificial Neural Network Modeling and Thin-Layer Modeling
Author:
TEPE Tolga Kağan1ORCID, AZARABADİ Negin2ORCID, TEPE Fadime Begüm1ORCID
Affiliation:
1. GİRESUN ÜNİVERSİTESİ, ŞEBİNKARAHİSAR MESLEK YÜKSEKOKULU 2. İSTANBUL GELİŞİM ÜNİVERSİTESİ, SAĞLIK HİZMETLERİ MESLEK YÜKSEKOKULU
Abstract
This study focused on the impact of citric acid, hot water blanching, and ultrasound pretreatment on the drying of zucchini slices, color properties, and the comparison of artificial neural network (ANN) and thin-layer modeling. The pretreatments enhanced the drying rate and reduced drying time. Ultrasound pretreatment was observed as the most effective, with a reduction rate of the drying time as 40%. Besides, mass transfer and moisture diffusion phenomena were positively affected by pretreatments, depending on the increment of the drying rate. The highest mass transfer coefficient (hm), moisture diffusivity (D) by the Dincer and Dost model, and effective moisture diffusivity (Deff) by the Crank equation were obtained with ultrasound pretreatment. On the other hand, Midilli and Kucuk, Parabolic, and Page gave the best predictions among the thin-layer models. However, ANN modeling had a better performance than thin-layer modeling due to a higher determination coefficient (R2) and lower root mean square error (RMSE) values. Color properties of the zucchini slices were affected by drying processes. In general, the redness and yellowness of the zucchini slices increased; however, lightness did not show statistical significance. Additionally, citric acid pretreatment gave the lowest total color difference (∆E).
Publisher
Karadeniz Fen Bilimleri Dergisi
Reference102 articles.
1. Abbaspour-Gilandeh, Y., Kaveh, M., Fatemi, H., Khalife, E., Witrowa-Rajchert, D., & Nowacka, M. (2021). Effect of Pretreatments on Convective and Infrared Drying Kinetics, Energy Consumption and Quality of Terebinth. Applied Sciences, 11(16), 7672. 2. Adnan, M., Gul, S., Batool, S., Fatima, B., Rehman, A., Yaqoob, S., Shabir, H., Yousaf, T., Mussarat, S., & Ali, N. (2017). A review on the ethnobotany, phytochemistry, pharmacology and nutritional composition of Cucurbita pepo L. The Journal of Phytopharmacology, 6(2), 133-139. 3. Aghbashlo, M., Hosseinpour, S., & Mujumdar, A. S. (2015). Application of artificial neural networks (ANNs) in drying technology: a comprehensive review. Drying technology, 33(12), 1397-1462. 4. Agrawal, S. G., & Methekar, R. N. (2017). Mathematical model for heat and mass transfer during convective drying of pumpkin. Food and Bioproducts Processing, 101, 68-73. 5. Akar, G., & Barutçu Mazı, I. (2019). Color change, ascorbic acid degradation kinetics, and rehydration behavior of kiwifruit as affected by different drying methods. Journal of food process engineering, 42(3), e13011.
|
|