Effect of Size and Initial Water Content on the Effective Diffusion Coefficient during Convective Drying of Sweet Potato Cut into Cubic and Cylindrical Shapes

Abstract

In this article, we investigated the influence of size and initial water content on the effective diffusion coefficient of sweet potatoes samples cut into cubic and cylindrical shapes. The sizes of the cubic samples are 0.5, 1, 1.5, 1.75, 2, 2.5 and 3 cm edge with a respective initial water content of 2.7, 3.76, 3.48, 2.68, 3.28, 2.17 and 2.29 kg/kgms. For cylindrical samples, the radius is set at 0.5 cm and sample heights are 1, 1.5, 2, 2.5, 3, 3.5 and 4 cm with respective water contents of 2.2, 3.19, 2.85, 2.1, 2.17, 2.39 and 2.03 kg/kgms. The effective diffusion coefficients of cubic samples are of the order of 1010 and 109 m2∙s1 grew with sample edge. As for the cylindrical samples, the effective diffusion coefficients were of the order of 109 m2∙s1 and there was no linear correlation between cylinder height and their effective diffusion coefficient. As for the examination of the initial water content on the effective diffusion coefficient, it turned out that the initial water content had no influence on the effective diffusion coefficient of the sweet potato samples.

Share and Cite:

Salam, I. , Honoré, O. , Désiré, B. , Yssa, T. , Karim, Z. and Salifou, O. (2024) Effect of Size and Initial Water Content on the Effective Diffusion Coefficient during Convective Drying of Sweet Potato Cut into Cubic and Cylindrical Shapes. Journal of Materials Science and Chemical Engineering, 12, 71-82. doi: 10.4236/msce.2024.126006.

1. Introduction

The sweet potato is a tuberized root plant. Cultivated in tropical and humid temperate zones, it ranks 14th in crops and 3rd in the tuberized root plant family after cassava and yam in West Africa, according to FAO 2022 data [1]. In Burkina Faso, sweet potatoes are the leading tuber crop. Both internationally and locally (Burkina Faso), the value of its agricultural production is increasing [2], so it is necessary to conserve the surplus production. Convective drying is one of the most widely used techniques for preserving agricultural produce, and has been the subject of several research projects.

Thematic models have been established to describe the evolution of drying kinetics for agri-food products [3] [4] [5]. Other researchers have shown that intrinsic parameters such as product composition and maturity [6] [7] or extrinsic parameters such as drying air velocity, temperature, relative humidity, pressure, product thickness and shape [8] [9] [10] [11] [12] influence drying kinetics and the effective diffusion coefficient.

Investigations carried out on sweet potatoes have shown that pre-treatment, sample size, exposure surface and temperature have an influence on drying kinetics [13] [14].

However, the effect of size and initial water content on the effective diffusion coefficient of sweet potatoes is unknown.

Thus, our work is to examine whether variation in sample size or differences in initial water content have an influence on the effective diffusion coefficient by cutting cylindrical and cubic shaped samples.

2. Materials and Methods

2.1. Materials

The sweet potato used in this study was purchased in the fruit market of Bobo Dioulasso (Burkina Faso). We focused on the sweet potato because it occupies first place in terms of root and tuber plant production in Burkina Faso [15]. In addition, unlike other tropical products, it has an almost uniform macrostructure, the initial water content within a sample is uniform and water and heat transfers are symmetrical [16]. In the GERME & TI laboratory (Groupe d’étude et de Recherche en Mécanique Energétique et Techniques Industrielles) at Nazi Boni University, we use a stainless steel knife to peel and cut potato samples into cubic and cylindrical shapes. We used a digital caliper (MITUTOYO, Japan, 2 × 105 m precision) as a measuring instrument, an electronic balance (SARTORIUS, 0.001 g precision) for mass measurement and an oven (AIR concept, temperature ranging from 40 to 250°C, digital display) for drying.

2.2. Methods

The aim is to examine whether the size and initial water content of the samples can influence the effective diffusion coefficient. To this end, we extracted cubic shapes from potatoes, with 0.5 cm, 1 cm, 1.5 cm, 1.75 cm, 2 cm, 2.5 cm and 3 cm edges. For cylindrical shapes, we set the radius (r = 0.5 cm) and the height at 1 cm, 1.5 cm, 2 cm, 2.5 cm, 3 cm, 3.5 cm and 4 cm. Three (3) samples were cut for each dimension of these geometric shapes for acceptable repeatability. Then, after taking the initial masses of the samples, we introduce them into the oven for a fixed drying temperature T = 70˚C.

Since air velocity and relative humidity influence drying kinetics [17] [18], we place all samples in the same oven. A mass sample is taken at each 15-minute interval, and the dry masses ms of the samples are determined when the difference between three (03) successive weighings does not exceed the value of 0.001 g [19].

At the end of drying, residual water content was determined using the AOAC method [20].

2.2.1. Establishing Drying Kinetics

The initial water content of the sample, X0, is calculated as the quotient of the total mass of water contained in the freshly cut product, divided by the mass of the dry matrix, as shown in the following relationship:

X 0 = m 0 m s m s (1)

where X0 is expressed in kilograms of water per kilogram of dry mass (kg/kgms)

m0 and ms are the initial mass and dry mass of the sample respectively, expressed in kilograms (kg).

The water content of the sample at time t is determined by the expression:

X( t )= m( t ) m s m s (2)

where X(t) is the water content at time t expressed in kilograms of water per kilogram of dry mass (kge/kgms)

m(t) is the mass of the sample at time t of drying.

We associate with each time value, the corresponding water content value i.e. the relation X( t )t that gives us the drying kinetics.

Note that for each dimension of a given shape, we have three (3) samples and each point of its drying kinetics represents the arithmetic mean of the water content X( t ) of its samples.

In order to have the same basis for comparison, we normalize the water content at time t by the initial water content X0 of the product determined according to equation (1). This gives us the curves X/ X 0 t .

2.2.2. Coefficient De Diffusion Effective

The initial water content of the potato being uniform [16] and assuming that the transfer is unidirectional, the effective diffusion coefficient is determined according to the shape of the sample from the solutions of the Fick equation developed by Crank and Hashemi [21] [22]. The solutions are:

Cylindrical shape: MR= X( t ) X eq X 0 X eq = 4 β 2 exp( β 2 D eff r c 2 t ) (3)

Spherical shape: MR= X( t ) X eq X 0 X eq = 6 π 2 exp( π 2 D eff r s 2 t ) (4)

Infinite plate: MR= X( t ) X eq X 0 X eq = 8 π 2 exp( π 2 4 D eff L 2 t ) (5)

where MR is the reduced water content, Xeq is the equilibrium water content per unit dried mass (kge/kgms).

Deff is the effective diffusion coefficient (m2∙s−1).

rc is the radius of the cylindrical sample.

rs is the radius of the spherical sample.

L is the length of the infinite plate sample.

β and π are constants.

From the curve of the function ln( MR )t , which has the form of a straight line, we determine from its slope the effective diffusion coefficients. Indeed, the equations can be put simply into the form [23] [24]:

ln( MR )=Ak.t (6)

where A and k are constants.

Thus, by equation (6), we determine the effective diffusion coefficient of the cylindrical shape by member-to-member identification as follows:

ln( MR )=ln( 4 β 2 )( β 2 D eff r c 2 ).t=Ak.t (7)

{ A=ln( 4 β 2 ) k=( β 2 D eff r c 2 ) { β 2 = 4 exp( A ) D eff =( k. r c 2 β 2 ) (8)

For the cubic form, we have not found a solution to Fick’s equation in the literature. Note that a sphere of radius a⁄2 has the same characteristic radius as a cube of edge a [10]. Thus, we have assimilated the cube to a sphere as shown in Figure 1. The values of the effective diffusion coefficient of this approximation are in agreement with the literature, i.e. of order 10−11 to 109 m2∙s−1 for food products [25].

Figure 1. Assimilation of a cube to a sphere.

ln( MR )=ln( 6 π 2 )( π 2 D eff ( a/2 ) 2 ).t=Ak.t (9)

{ A=ln( 6 π 2 ) k=( π 2 D eff ( a/2 ) 2 ) D eff =k ( a 2π ) 2 (10)

3. Results and Discussion

3.1. Drying Kinetics

The drying kinetics of the cubic and cylindrical samples shown in Figure 2 and Figure 3 respectively have the same appearance and are similar to the drying kinetics of agri-food products such as sweet potatoes [26], cassava and ginger [9], eggplant [27], okra [6] [28], etc. In addition, we note that, for both cubic and cylindrical samples, the smaller the sample size, the more its drying kinetics decrease.

In addition, we note that for both cylindrical and cubic samples, the smaller the sample size, the more its drying kinetics decrease. This means that smaller samples dry faster than larger ones. Indeed, the drying times for cubic samples with 0.5 to 3 cm edges are 90, 315, 495, 660, 885, 1005 and 1215 minutes (min) respectively. This suggests that the drying time increases as the dimensions (edges) or initial surface area of the cubic samples submitted to our study increase.

As for the cylindrical samples in Figure 3, we can see that the curves are closer together and tend to merge, as in the case of cylindrical samples with heights of 1, 1.5 cm and 3.5, 4 cm. This can be explained by the fact that the cylindrical samples have the same radius (r = 0.5 cm) and the difference in height between two successive samples is small (0.5 cm). In addition, the drying times for cylindrical samples with heights from 1 to 4 cm are 225, 240, 285, 315, 315, 375, 405 min respectively, which means that for cylindrical samples with the same radius, the drying time increases with cylinder height.

Figure 2. Drying kinetics of cubic samples at T = 70˚C.

Figure 3. Drying kinetics of cylindrical samples at T = 70˚C.

3.2. Effective Diffusion Coefficient for Cubic Samples

The curves of ln( MR ) as a function of time t for cubic-shaped samples are grouped together in Figure 4. We note that, with the exception of the curves for samples with 1 and 1.5 cm edges, which are linear, all the curves have a linear part and a hyperbolic branch. This can be explained by the fact that as sample thickness increases, the hyperbolic part, which reflects the phenomenon of diffusion, becomes more distinct from the linear part, where the withdrawal of liquid water by capillarity from the center to the surface of the sample is predominant.

Thus, we determine the linear trend curves corresponding to the hyperbolic part of each curve for the determination of the effective diffusion coefficient. The trend curves of the form ln( MR )=Ak.t grouped in Figure 5 show a good fit, as their coefficients of determination R 2 0.987 . The conditions for determining the effective diffusion coefficients defined above give us the values grouped in Table 1. From Table 1 we note that the values of the effective diffusion coefficients are of the order 10−10 or 109 m2∙s−1, which is in agreement with the values expected for food products.

Figure 4. Curve of ln(MR) of cubic samples as a function of time.

Figure 5. Linear fitting of ln(MR) curves for cubic samples as a function of time.

Table 1. Data from the ln(MR) curve and initial water content of cubic samples.

arête (cm)

Equation ln( MR )=k.t+A

R2

K

Deff (m2∙s−1)

X0 (kge/kgms)

0.5

ln( MR )=8× 10 4 t0.0407

0.9865

8E−4

5.07E−10

2.7

1

ln( MR )=2× 10 4 t0.1495

0.9947

2E−4

5.07E−10

3.76

1.5

ln( MR )=2× 10 4 +1.6169

0.9812

2E−4

1.14E−9

3.48

1.75

ln( MR )=2× 10 4 t+2.5189

0.9576

2E−4

1.55E−9

2.68

2

ln( MR )= 10 4 t+2.0703

0.9892

1E−4

1.01E−9

3.28

2.5

ln( MR )=2× 10 4 t+6.7365

0.9873

2E−4

3.17E−9

2.17

3

ln( MR )=3× 10 4 t+16.666

0.9743

3E−4

6.85 E−9

2.29

3.3. Effective Diffusion Coefficient and Size

From the analysis of Table 1, we can say that there is a linear correlation between the effective diffusion coefficient and the size of the cubic samples. Indeed when we observe the data in Table 1, we find that with the exception of the 2 cm edge sample where we observe a drop in the value of the effective diffusion coefficient from 1.55 × 109 to 1.01 × 109 m2∙s−1, the effective diffusion coefficient increases with the edges of our cubic samples.

This drop observed with the 2 cm edge sample can be explained by the fact that in addition to the size of any intrinsic parameters would have an influence on the effective diffusion coefficient. Note that the largest value of the effective diffusion coefficient (6.84 × 109 m2∙s−1) is obtained with the 3 cm sample which is the largest edge and the smallest value (5.07 × 109 m2∙s−1 is obtained with the smallest 0.5 cm edge sample and the 1 cm edge sample. This shows that the larger the size, the greater the effective diffusion coefficient.

So, in addition to the influence of temperature on the effective diffusion coefficient described by the Arrhenius law [29] [30], we can say that size, which is an extrinsic parameter, has an influence on the effective diffusion coefficient for sweet potato samples cut in cubic form.

3.4. Effective Diffusion Coefficient for Cylindrical Samples

Figure 6 shows the ln(MR) curves for the various cylindrical samples. We can see that the curves decrease linearly, as the diffusional phase is not distinguished from the phase of water withdrawal by capillarity inside the sample. This observation, which was made with the 0.5 and 1 cm cubic samples, is repeated with our cylindrical samples with a radius of 0.5 cm. Therefore, we can say that for thin samples, the ln(MR) curve is linear. The linear trend curve associated with the entire ln(MR) curve for each sample shown in Figure 6 has a coefficient of determination R 2 0.99 and therefore exhibits good regression. The values of the effective diffusion coefficients of the cylindrical samples grouped in Table 2 are of the order of 10−9 m2∙s−1and are within the range predicted by the literature.

Figure 6. Linear fitting of ln(MR) curves for cylindrical samples as a function of time.

Table 2. Data from the ln(MR) curve and initial water content of cylindrical samples.

hauteur (cm)

Equation ln( MR )=k.t+A

R2

β2

k

Deff (m2∙s−1)

X0 (kge/kgms)

1

ln( MR )=3× 10 4 t+0.0045

0.9941

3.982

3E−4

1.88E−9

2.2

1.5

ln( MR )=3× 10 4 t+0.0139

0.996

3.944

3E−4

1.9E−9

3.19

2

ln( MR )=3× 10 4 t+0.006

0.997

3.976

3E−4

1.89E−9

2.85

2.5

ln( MR )=2× 10 4 t0.0221

0.997

4.089

2E−4

1.22E−9

2.1

3

ln( MR )=2× 10 4 t0.0087

0.996

4.363

2E−4

1.15E−9

2.17

3.5

ln( MR )=2× 10 4 t+0.0129

0.994

3.948

2E−4

1.27E−9

2.39

4

ln( MR )=2× 10 4 t0.0098

0.993

4.039

2E−4

1.24E−9

2.03

3.5. Effective Diffusion Coefficient and Size

In contrast to cubic samples, we can see from Table 2 that there is no linear correlation between the height of cylindrical samples and the effective diffusion coefficient.

Indeed, when we consider cylindrical samples with heights of 1, 1.5 and 2 cm, we find that their effective diffusion coefficients have almost the same value, despite the increase in height.

Then we see a drop in the effective diffusion coefficient from 1.89 × 10−9 to 1.22 × 10−9 m2∙s−1, values associated with samples 2 and 2.5 cmrespectively, followed by an oscillation around 1.22 × 10−9 m2∙s−1 for samples 2.5 to 4 cm high. From these analyses, we can say that size (height) alone as an external parameter has no influence on the effective diffusion coefficient of cylindrical samples of the same radius.

Moreover, according to Fick’s law, all cylindrical samples of the same radius should have approximately the same effective diffusion coefficient, as in the case of samples 1, 1.5 and 2 cm, but this is not the case. Therefore, we can say that there are one or more parameters intrinsic to the sweet potato that influence its effective diffusion coefficient.

3.6. Effective Diffusion Coefficient and Initial Water Content

The initial water contents of our cubic and cylindrical samples range from 2.03 to 3.76 kge/kgms and Figure 7 shows the variation of the effective diffusion coefficient as a function of initial water content.

From observation of Figure 7 we note that the curve is not monotonic, showing the absence of linear correlation between the effective diffusion coefficient and initial water content. Indeed the largest value of the effective diffusion coefficient is obtained with the sample of water content 2.29 kge/kgms that is neither the largest nor the smallest initial water content of our samples. The lowest effective diffusion coefficient value (5.07 × 1010 m2∙s−1) was obtained with two samples (2.7 and 3.76 kge/kgms), one of which is the sample with the highest initial water content. This proves that the amount of initial water content does not determine the value of the sample's effective diffusion coefficient.

In addition, we noted large differences in effective diffusion coefficient for samples with almost the same initial water content. These are sample 2.7 and 2.68 kge/kgms where the difference in effective diffusion coefficient is of the order of 3.06; the two samples of 2.17 kge/kgms with an effective diffusion coefficient difference of order 2.75; the samples of 2.2 and 2.29 kge/kgms that have an effective diffusion coefficient difference of order 3.61.

On the other hand, we find that samples have almost the same effective diffusion coefficient with very large initial water content differences. The observation is made with samples of 2.17 and 3.48 kge/kgms, which respectively have an effective diffusion coefficient of 1.15 × 10−9 m2∙s−1, and 1.14 × 10−9 m2∙s−1; samples 2.7 and 3.76 kge/kgms with an effective diffusion coefficient of 5.07 × 1010 m2∙s−1, the samples 2.2 and 3.19 kge/kgms with respective coefficients of 1.88 × 10−9 and 1.9 × 10−9 m2∙s−1.

In view of the results of the curve analysis, we can say that the initial water content, which is an intrinsic parameter characterizing porosity on the one hand, has no influence on the effective diffusion coefficient for sweet potato.

Figure 7. Effective diffusion coefficient curves as a function of initial water content.

4. Conclusions

From this study of sweet potato samples, we know that the drying time of cubic samples increases with edge, and their drying kinetics are clearly distinguishable from each other with increasing edge in 0.5 cm steps. For cylindrical samples of the same radius (r = 0.5 cm), the drying time increases slightly with height in 0.5 cm steps, and the drying kinetics tend to merge for two samples whose height difference does not exceed 0.5 cm.

In addition, the curve of ln(MR) is linear for sweet potato samples whose thickness is less than 1 cm and has a hyperbolic shape for samples whose thickness exceeds 1 cm.

Furthermore we retain that the effective diffusion coefficient of our samples, which is of the order of 1010 m2∙s−1, and 10−9 m2∙s−1, increases with the edge of cubic samples, while for the case of cylindrical samples of the same radius (r = 0.5 cm), height has no influence on the effective diffusion coefficient.

Finally, we found that the initial water content of all our samples ranging from 2.03 to 3.76 kge/kgms has no influence on the effective diffusion coefficient of sweet potato samples.

Conflicts of Interest

The authors declare no conflicts of interest regarding the publication of this paper.

References

[1] FAO (2024) Cultures et produits animaux.
https://www.fao.org/faostat/fr/#data/QCL
[2] FAO (2024) Valeur de la Production Agricole.
https://www.fao.org/faostat/fr/#data/QV/visualize
[3] Akpinar, E., Midilli, A. and Bicer, Y. (2003) Single Layer Drying Behaviour of Potato Slices in a Convective Cyclone Dryer and Mathematical Modeling. Energy Conversion and Management, 44, 1689-1705.
https://doi.org/10.1016/s0196-8904(02)00171-1
[4] Alzamora, S.M., Chirife, J. and Voillaz, P. (1979) A Simplified Model for Predicting the Temperatures of Foods during Air Dehydration. International Journal of Food Science & Technology, 14, 369-380.
https://doi.org/10.1111/j.1365-2621.1979.tb00882.x
[5] Ghazanfari, A., Emami, S., Tabil, L.G. and Panigrahi, S. (2006) Thin-layer Drying of Flax Fiber: II. Modeling Drying Process Using Semi-Theoretical and Empirical Models. Drying Technology, 24, 1637-1642.
https://doi.org/10.1080/07373930601031463
[6] Honoré, O.K., Francois, Z. and Hélène, D. (2019) Effect of Farm Product Intrinsic Properties on Convective Drying: Case of Okra. American Journal of Plant Sciences, 10, 101-110.
https://doi.org/10.4236/ajps.2019.101009
[7] Honoré, O.K., François, Z., Raguilignaba, S., Aboubacar, T. and Hélène, D. (2014) Characterization of Okra Convective Drying, Influence of Maturity. Food and Nutrition Sciences, 5, 590-597.
https://doi.org/10.4236/fns.2014.56069
[8] Fahloul, D., Benmadi, F. and Boudraa, S. (2009) Estimation de la diffusivité massique et cinétique de séchage sous vide de la pomme de terre (variété Spunta). Journal of Renewable Energies, 12, 655-665.
https://doi.org/10.54966/jreen.v12i4.171
[9] Ahouannou, C., Jannot, Y., Lips, B. and Lallemand, A. (2000) Caractérisation et modélisation du séchage de trois produits tropicaux : manioc, gingembre et gombo. Sciences des Aliments, 20, 413-432.
https://doi.org/10.3166/sda.20.413-432
[10] Honore, O.K., Abdou-Salam, G., Salam, I.A., Désiré, B. and François, Z. (2023) Validation of a Characteristics Dimensions for Transfers during Convective Drying of Sweet Potato Cubic, Cylindrical and Spherical Shapes. Open Journal of Applied Sciences, 13, 1714-1722.
https://doi.org/10.4236/ojapps.2023.1310135
[11] Ertekin, C. and Yaldiz, O. (2004) Drying of Eggplant and Selection of a Suitable Thin Layer Drying Model. Journal of Food Engineering, 63, 349-359.
https://doi.org/10.1016/j.jfoodeng.2003.08.007
[12] Aghbashlo, M., kianmehr, M.H. and Samimi-Akhijahani, H. (2008) Influence of Drying Conditions on the Effective Moisture Diffusivity, Energy of Activation and Energy Consumption during the Thin-Layer Drying of Berberis Fruit (Berberidaceae). Energy Conversion and Management, 49, 2865-2871.
https://doi.org/10.1016/j.enconman.2008.03.009
[13] Honoré, O.K. (2013) Séchage des Produits Agroalimentaires: Influence de la Taille, de la Forme et de la Découpe. Master’s Thesis, Université de Ouagadougou.
[14] Onwude, D.I., Hashim, N., Abdan, K., Janius, R. and Chen, G. (2018) Investigating the Influence of Novel Drying Methods on Sweet Potato (Ipomoea batatas L.): Kinetics, Energy Consumption, Color, and Microstructure. Journal of Food Process Engineering, 41, e12686.
https://doi.org/10.1111/jfpe.12686
[15] Dabiré, R. and Belem, J. (2001) Plantes à Tubercules et Racines du Burkina Faso. WASNET News, 8, 12-16.
[16] Ouoba, H., Zougmore, F., Naon, B. and Desmorieux, H. (2012) Profils des Teneurs en Eau de la Patate Douce Durant son Séchage Convectif. Revue du CAMES-Série A, 13, 201-205.
[17] Idlimam, A., Ethmane Kane, C.S. and Kouhila, M. (2023) Single Layer Drying Behaviour of Grenade Peel in a Forced Convective Solar Dryer. Journal of Renewable Energies, 10, 191-203.
https://doi.org/10.54966/jreen.v10i2.782
[18] Velić, D., Planinić, M., Tomas, S. and Bilić, M. (2004) Influence of Airflow Velocity on Kinetics of Convection Apple Drying. Journal of Food Engineering, 64, 97-102.
https://doi.org/10.1016/j.jfoodeng.2003.09.016
[19] Belahmidi, E., Belghit, A., Mrani, A., Mir, A. and Kaoua, M. (1993) Approche Expérimentale de la Cinétique du Séchage des Produits Agro-alimentaires: Application aux Peaux d’oranges et à la Pulpe de Betterave. Revue générale de thermique, 32, 380-381.
[20] AOAC (1990) Official Methods of Analysis. Association of Official Chemists, No.934-06.
[21] Crank, J. (1979) The Mathematics of Diffusion. Oxford University Press.
[22] Hashemi, G., Mowla, D. and Kazemeini, M. (2009) Moisture Diffusivity and Shrinkage of Broad Beans during Bulk Drying in an Inert Medium Fluidized Bed Dryer Assisted by Dielectric Heating. Journal of Food Engineering, 92, 331-338.
https://doi.org/10.1016/j.jfoodeng.2008.12.004
[23] Hassini, L., Azzouz, S., Peczalski, R. and Belghith, A. (2007) Estimation of Potato Moisture Diffusivity from Convective Drying Kinetics with Correction for Shrinkage. Journal of Food Engineering, 79, 47-56.
https://doi.org/10.1016/j.jfoodeng.2006.01.025
[24] Jason, A. (1958) A Study of Evaporation and Diffusion Processes in the Drying of Fish Muscle. Metchim Galati.
[25] Madamba, P.S., Driscoll, R.H. and Buckle, K.A. (1996) The Thin-Layer Drying Characteristics of Garlic Slices. Journal of Food Engineering, 29, 75-97.
https://doi.org/10.1016/0260-8774(95)00062-3
[26] Diamante, L.M. and Munro, P.A. (1991) Mathematical Modelling of Hot Air Drying of Sweet Potato Slices. International Journal of Food Science & Technology, 26, 99-109.
https://doi.org/10.1111/j.1365-2621.1991.tb01145.x
[27] Abdou-Salam, G., Honore, O.K. and François, Z. (2020) Taking into Account the Complex Nature and the Intrinsic Parameters of Agro-Food. Journal of Biophysical Chemistry, 11, 1-13.
https://doi.org/10.4236/jbpc.2020.111001
[28] Honoré, O.K., Hélène, D. and François, Z. (2019) What Process Optimizes Convective Drying of Farm Products with Complex Constitution: Case of Okra (Abelmoschus esculentus). Journal of Agricultural Chemistry and Environment, 8, 14-22.
https://doi.org/10.4236/jacen.2019.81002
[29] Doymaz, İ. (2005) Drying Characteristics and Kinetics of Okra. Journal of Food Engineering, 69, 275-279.
https://doi.org/10.1016/j.jfoodeng.2004.08.019
[30] Doymaz, İ. (2004) Convective Air Drying Characteristics of Thin Layer Carrots. Journal of Food Engineering, 61, 359-364.
https://doi.org/10.1016/s0260-8774(03)00142-0

Copyright © 2025 by authors and Scientific Research Publishing Inc.

Creative Commons License

This work and the related PDF file are licensed under a Creative Commons Attribution 4.0 International License.