Chiachung Chen1. 1. Department of Bio-industrial Mechatronics Engineering, National Chung Hsing University, 250 Kuokuang Road, Taichung 4022, Taiwan. ccchen@dragon.nchu.edu.tw.
Abstract
Sorption isotherm is an essential property for the processing of biological materials. In this study, a component model for the prediction of the sorption isotherm was evaluated. In order to validate this component model, the moisture sorption isotherms for Chrysanthemum morifolium flowers and the orchid Anoectochilus formosanus Hayata were determined. The sorption isotherm was measured by using the equilibrium relative humidity technique for five temperatures. Seven sorption isotherm models were selected with four quantitative criteria and residual plots to evaluate fitting ability and prediction performance for these products. The results indicated that the sorption temperature did not significantly affect the adsorption isotherm. The Caurie and Henderson equations could be used for C. morifolium flowers and A. formosanus Hayata. The isotherm data of raw bamboo, elecampe and three varieties of corn kernels from the literature were adopted to validate the component model. Comparing with the predicted values of component values and actual isotherm moisture, the component model has good predictive ability at the aw range smaller than 0.7. Considering the practical application, the aw range below 0.7 is the main range for the processing of agricultural products, and the predictive values of this component model could be helpful for food engineering and for the food industry.
Sorption isotherm is an essential property for the processing of biological materials. In this study, a component model for the prediction of the sorption isotherm was evaluated. In order to validate this component model, the moisture sorption isotherms for Chrysanthemum morifolium flowers and the orchid Anoectochilus formosanus Hayata were determined. The sorption isotherm was measured by using the equilibrium relative humidity technique for five temperatures. Seven sorption isotherm models were selected with four quantitative criteria and residual plots to evaluate fitting ability and prediction performance for these products. The results indicated that the sorption temperature did not significantly affect the adsorption isotherm. The Caurie and Henderson equations could be used for C. morifolium flowers and A. formosanus Hayata. The isotherm data of raw bamboo, elecampe and three varieties of corn kernels from the literature were adopted to validate the component model. Comparing with the predicted values of component values and actual isotherm moisture, the component model has good predictive ability at the aw range smaller than 0.7. Considering the practical application, the aw range below 0.7 is the main range for the processing of agricultural products, and the predictive values of this component model could be helpful for food engineering and for the food industry.
Entities:
Keywords:
Anoectochilus formosanus Hayata; Chrysanthemum morifolium; Sorption isotherms; component model
Living plants need to be processed after harvesting. Processing operations include drying, packaging, handling, and storing. The physical, chemical and biological conditions such as microbial growth of plant materials are affected by moisture content, temperature and relative humidity (RH) of the ambient environment and treatment methods [1,2].At fixed temperatures and pressures, the relationship between the relative humidity (RH) of ambient air and moisture content is called sorption isotherm. The definition of the water activity (aw) is the ratio between the partial vapor pressure of water in the biological materials and the partial vapor pressure of pure water at the same temperature. The equilibrium relative humidity is called water activity in food science field. The sorption isotherm dictates the corresponding water content at the same temperature for each humidity. Sorption isotherm properties include desorption and adsorption according to the adsorption or dehydration of moisture content. The sorption isotherm is essential information for the predicting drying and storage of materials. The design of packaging materials and the method are also related to these properties.There are several methods to determine the sorption isotherms of biological materials [1]. For the gravimetric method, the RH is maintained with different saturated salt solutions or sulphuric acid dilutions at different concentrations. The samples are enclosed in this RH environment at content temperature until its weight is balanced with ambient RH [3,4,5]. This equilibrium moisture content (EMC) method is simple, inexpensive and can be performed in most laboratories. However, the equilibrium time is longer, especially at higher RH. These samples could be contaminated if the ambient RH value is higher than 75 %. The other method is called the hygrometric or equilibrium relative humidity method. The samples at a given moisture content and fixed temperature are placed in an enclosed container. The RH in the container is measured as the humidity environment reaches the equilibrate state [6,7,8]. The key points for this technique are the uniform moisture distribution of samples and the accuracy of the hygrometer.Crapiste and Rotstein [9] predicted the sorption isotherms of potatoes based on the magnitude and sorption properties of individual constituents. By equating the chemical potential of water in each component and that of water in the surrounding air, equations were derived to calculate the moisture content occupied by each component. In this study, their model was modified to calculate the sorption isotherms of herbs.Empirical models are useful to quantify the relationship between equilibrium moisture content and equilibrium relative humidity of biological materials. Basu et al. [1] and Al-Muhtaseb et al. [10] provided a detail review of widely used sorption models.Literature on moisture sorption isotherm for agricultural and food products is abundant. Bonner and Kenney [11] reported the moisture sorption characteristics of energy sorghum, and Oyelade et al. [5] investigated maize flour. The EMC/aw properties of various plants with medical functions or industrial crops were reported. Argyropoulos et al. [12] introduced the sorption isotherms of leaves and stems of lemon balm (Melissa officinalis. L), Bahloul et al. [13] examined Tunisian olive leaves (Oleu europaea L.), Choudbury et al. [14] investigated raw bamboo (Dendrocalamus longispathus) shoots and Ait Mohamed et al. [3] determined sorption properties of Gelidium sesquipedale. The EMC/aw data of conidia of Beauveria bassiana (Balsam) Vuillemin was studied by Hong et al. [15].The flower of C. morifolium, one of varieties for making chrysanthemum flower tea, is popularly used as a medicine and is a healthy beverage. The anti-oxidation and anti-ischemia-reperfusion injury action have been shown proved with animal tests and clinic studies [16]. A. formosanus Hayata is a folk medicine in Taiwan. According to studies by Shih et al. [17], this herb has anti-inflammation and liver protection effects and could be used to treat hypertension, diabetes mellitus and tuberculosis.The objectives of this study were to (1) determine the moisture adsorption behavior for three biological products at five temperature by using the equilibrium relative humidity technique, and, (2) evaluate the fitting ability of six sorption isotherm models to describe the experimental data, (3) evaluate the predictive ability of the component model for two herbs and other agricultural products.
2. The Component Model
2.1. Development of the Component Model
There are six components are considered: protein, starch, fiber, oil, sugar, and ash. Sugars and ash were combined as the vacuole component. The effect of oil component on the sorption isotherms is omitted due to its insignificance.The total moisture content is:
Hwhere Hi = the water content (g of water)Xi = the weight content (decimal)t, v, f, s and p denote the total materials, vacuole, fiber, starch, and protein.
2.2. The Isotherm Equation of Each Component
2.2.1. The Vacuolar Component
The aw (water activity) values of the vacuolar component was calculated by the Ross equation [18],
awhere aw g = the aw of glucoseaw s = the aw of sucroseaw a = the aw of ashesFrom the study of Crapiste and Rotstein [9],
a
a
awhere Xg, Xs and Xa are the water mole fractions of glucose, sucrose, and ashes.The water mole fraction can be calculated by:
Awhere Mw = The molecular mass (g/mol) of waterMi = The molecular mass (g/mol) of componentWi = The weight fraction of componentTherefore, Xg, Xs and Xa are calculated as follows:aw and Xv can then be evaluated with Equations (2)–(10).
2.2.2. Fiber Component
The Kelsey correction equation [19] was used to express the relationship in the water-cellulose-moist air system.The relationship for Xf and aw fber was computed by Equations (11) and (12).
2.2.3. Starch Component
Original isotherm data for starch have been presented by Chung and Pfost [20]. The Henderson equation was used to describe the relation of Xs and aw.
X
2.2.4. Protein Component
Two sets of protein isotherm data were calculated and proposed [21].
XFor a given aw value, the moisture content of each component can be obtained. The relationship between aw and moisture content of different herbs could be calculated.
3. Materials and Methods
3.1. Materials
The biological materials, used for this study was purchased at a local herb market, in Taichung, Taiwan. The initial moistures of C. Morifolium flower and A. formosanus Hayata were 2.05 % and 1.98 % (on dry basis), respectively.The desired determination moisture content ranged from 2 % to 20 %, the moisture content for packaging, storing, handling and processing. The samples were rewetted by adding predetermining amount of the water to obtain the desire moisture content. The preparation followed the procedure of Shen and Chen [22]. Samples were mixed with water and stored in plastic containers. After mixing, samples were stored at 5 °C for two weeks to ensure uniform distribution of moisture content. Because of the lower storage temperature, no microbial growth was found during the two weeks’ storage.
3.2. Temperature and RH Sensors
The temperature and RH probes of the Shinyei THT-V2-112-73-A2 transmitter (Shinyei Technology, Kobe, Japan) was used. The specifications of this sensor are in Table 1.
Table 1
Specifications of the Shinyei THT-V2-112-73-A2 transmitter.
Specification
Temperature Sensor
RH Meter
Sensing element
RTD Pt 100 Ohm
Micro-molecule HP-MQ
Operating range
0–50 °C
10–100 % RH
Accuracy before calibrating
±0.5 °C
±2 % RH
Precision
0.1 °C
0.1 % RH
Accuracy after calibrating
±0.15 °C
±0.7 % RH
RH: relative humidity.
3.3. Calibration of Sensors
The temperature and RH transmitter was calibrated. The temperature sensing element was calibrated by the TC-2000 temperature calibrator (Instutek AS, Scan-Sense AS, Bekkeveien 163, N-3173 Vear, Norway) and the humidity sensing element was calibrated by several saturated salt solutions. The detail method included the saturated salts that were used, solution volume to air volume ratio and the stable of the temperature were according to the requirement of Organization Internationale De Metrologie Legale (OMIL) [23].
3.4. The Equilibrium Relative Humidity Method
The moisture sorption isotherms of C. Morifolium C. flower, and A. formosanus Hayata at five temperatures (i.e., 5 °C, 15 °C, 25 °C, 35 °C, and 45 °C) was determined by the equilibrium relative humidity method. Samples of known moisture content were placed in a 350 mL container. RH/temperature probes were inserted into the containers and surrounded with samples. These sensors and containers were placed in a temperature-controlled chamber. When the RH and temperature within the sample containers reached the equilibrate state, RH and temperature were recorded. The samples were taken out and the moisture content was determined again. Then new samples and containers were placed into a temperature-controlled chamber for the next temperature level. The reading of RH and temperature of these probes was transformed into actual values with pre-established equations to ensure measured accuracy. The set-up for the measurement is presented in Figure 1. This technique has been used to determinate sorption isotherm for peanuts [6], sweet potato slices [24], pea seeds [25], Oolong tea [7] and autoclaved aerated concrete [8].
Figure 1
Sketch of experimental set-up.
The moisture content of the samples was determined by using a drying oven at 105 °C for 24 h.
3.5. Moisture Sorption Isotherm Models
Seven sorption isotherm equations were used to evaluate the fitting ability and prediction performance of sorption isotherms of C. Morifolium flower and A. formosanus Hayata at five temperatures. These models are in Table 2. The statistical analysis involved linear and nonlinear regression. The parameters were estimated with use of SigmaPlot v12.2 (SPSS Inc., Chicago, IL, USA).
Table 2
Moisture sorption isotherms models fitted to the sorption data.
Model
Equations
References
Henderson
M=a0(−ln(1−aw)a1
Henderson [26]
Chung-Pfost
M=b0+b1ln(−lnaw)
Chung and Pfost [20]
Halsey
M=c0(−1lnaw)c1
Halsey [27]
Oswin
M=d0(aw1−aw)d1
Oswin [28]
White & Eirig
M=1e0+e1∗aw
Castillo et al. [29]
Caurie
M=f0Exp(f1∗aw)
Castillo et al. [29]
GAB
M=A∗B∗C∗aw(1−b∗aw)(1−B∗aw+B∗C∗aw)
Van der Berg, [30]
Where a0, …, f0, a1, …, f1, A, B, and C are parameters of the equation, M is equilibrium moisture content (%, dry basis), and aw is the water activity in decimal.
3.6. Comparison Criteria for Sorption Models
Four quantitative criteria were used.a. The coefficient of determination (R2)b. The standard error of the model (s)
where is the measured value, is the predicted value from model, and n is the number of data.c. The mean relative error (MRE)d. Predicted errors sum of square (PRESS)The PRESS was used to evaluate the predictive performance of sorption models [31]. The criterion was derived from the predictive error, e-i. When a dataset was used to compare the predictive ability of a model, the i observation was withdrawn, and the remaining n-1 data were used to estimate the parameters of the model. The i data was substituted into this regression model to calculated the predicted value -i. The difference between the original yi value and y-i value was called the predictive error, e-i. The sum of the square e-i, is called the PRESS.Residual plots were used as the criterion to evaluate the adequacy of the models. If the residual plots presented a clean pattern, the model was considered inadequate. If the residual plots exhibited a uniform distribution, the model was considered adequate for these sorption data.
4. Results and Discussion
4.1. Sorption Isotherm of C. Morifolium Flowers
The adsorption data for C. morifolium flowers at three temperatures is shown in Figure 2.
Figure 2
Sorption data for C. morifolium flowers obtained at 5 °C, 25 °C and 45 °C by the equilibrium relative humidity method.
The equilibrium time for each equilibrium relative humidity test was 12 h. The required time to reach the weight balance of the EMC method was 40–60 days for withered leaves, black and green tea [32] and 60–80 days for persimmon leaves [33]. The equilibrium relative humidity method could save the required experimental time.The sorption isotherms of C. morifolium flower was a sigmoid form and reflected a type II BET classification [1,10].The sorption temperature had a marginal effect on the adsorption isotherm (Figure 2). The reason may be explained by its rewetting history from fried samples [1].Table 3 lists the estimated parameters and comparison statistics for seven models. The residual plots are shown in Figure 3. The Caurie equation had higher value for R2 and lower value for s, MRE and PRESS. The residual plots at five temperatures all showed a uniform distribution with the Henderson and Caurie equations. The Chung-Pfost, Halsey, Oswin, White & Eirig and GAB equations gave lower R2 and higher value for s, MRE and PRESS. The residual plots all showed a systematic pattern. These five equations could not be served as adequate equations for adsorption data of C. morifolium flowers.
Table 3
Estimated parameters and evaluating criteria of six models used for adsorption data at five temperatures for C. morifolium flowers.
Temp.
5 °C
15 °C
25 °C
35 °C
45 °C
Henderson
a0
9.8934
10.1609
10.1559
10.4075
10.8141
a1
0.8358
0.9196
0.8595
0.9956
1.0105
R2
0.9386
0.9788
0.9821
0.9806
0.9789
s
0.6393
0.8606
0.7764
0.7938
0.8120
MRE
6.0383
8.5932
8.7059
10.2933
10.0554
PRESS
4.9916
12.1870
8.1442
8.2361
8.9443
Residualplot
Uniform
Uniform
Uniform
Uniform
Uniform
Chung-Pfost
b0
5.5080
5.7531
5.8960
5.9260
6.1290
b1
−6.1120
−6.4110
−6.0820
−6.6020
−6.7451
R2
0.9790
0.9531
0.9661
0.9361
0.9250
s
0.8660
1.2861
1.1630
1.4422
1.5306
MRE
13.0605
17.5566
16.5122
19.6941
21.4310
PRESS
11.7280
28.5011
23.4440
41.1900
52.1751
Residualplot
Pattern
Pattern
Pattern
Pattern
Pattern
Halsey
c0
5.9427
5.7082
5.9209
5.4476
5.5654
c1
1.5704
0.6639
0.6126
0.7576
0.7842
R2
0.9438
0.9536
0.9526
0.9764
0.9737
s
1.4243
1.2710
1.2632
0.8753
0.9080
MRE
19.2776
13.2668
13.9556
7.6251
7.5905
PRESS
25.6329
42.4362
27.9405
16.7586
17.7869
Residualplot
Pattern
Pattern
Pattern
Pattern
Pattern
Oswin
d0
7.3971
7.3641
7.5094
7.2905
7.5193
d1
0.4731
0.5396
0.4994
0.6045
0.6214
R2
0.9687
0.9702
0.9715
0.9826
0.9794
s
1.0622
1.0188
0.9788
0.7514
0.8034
MRE
11.8940
6.7995
7.5281
7.0538
8.7580
PRESS
14.4665
24.8822
16.3209
10.6988
11.9955
Residualplot
Pattern
Pattern
Pattern
Pattern
Pattern
White & Eirig
e0
0.2472
0.2560
0.2483
0.2698
0.2648
e1
−0.2208
−0.2389
−0.2263
−0.2632
−0.2116
R2
0.9399
0.9397
0.9420
0.9576
0.9516
s
1.4737
1.4493
1.3964
1.1739
1.2312
MRE
22.6821
19.4736
18.9198
14.9920
15.3631
PRESS
24.9283
63.0580
31.8313
31.8209
34.7616
Residualplot
Pattern
Pattern
Pattern
Pattern
Pattern
Caurie
f0
1.8739
1.6968
1.8784
1.5901
1.6464
f1
2.6012
2.7997
2.6398
2.9493
2.9602
R2
0.9926
0.9862
0.9904
0.9908
0.9908
s
0.5195
0.6927
0.5697
0.5455
0.5370
MRE
8.8299
4.6566
3.8838
4.8482
4.2159
PRESS
3.3214
8.4673
4.8398
4.7978
5.1792
Residualplot
Uniform
Uniform
Uniform
Uniform
Uniform
GAB
A
6.1289
2.8515
2.8434
1.4477
3.1852
B
1.3142
2.0917
2.1447
3.3973
1.9537
C
0.6442
0.7811
0.7457
0.8807
0.8257
R2
0.9923
0.9805
0.9835
0.9833
0.9803
s
0.5634
0.8815
0.7959
0.786
0.839
MRE
6.7162
8.7490
9.3550
8.2197
9.4683
PRESS
3.7444
28.4023
10.4076
16.6284
16.3538
Residualplot
Pattern
Pattern
Pattern
Pattern
Pattern
MRE, mean relative error; PRESS, predicted errors sum of square.
Figure 3
Residual plots for the sorption isotherm equations for sorption data of C. morifolium flowers obtained at three temperatures. (a) Henderson eq., (b) Chung-Pfost eq., (c) Halsey eq., (d) Oswin eq., (e) White & Eirig eq., (f) Caurie eq., (g) GAB eq.
4.2. Sorption Isotherm of A. Formosanus HAYATA
Figure 4 displays the adsorption EMC data for A. formosanus Hayata at three temperatures. The sorption isotherms of this product have a sigmoid form and display the type II on BET classification [1,10].
Figure 4
Sorption data for A. formosanus Hayata obtained at 5 °C, 25 °C and 45 °C by the equilibrium relative humidity method.
The sorption temperature only had a little effect on the adsorption data. Table 4 indicates the estimated parameters and comparison statistics for seven models. The results are similar to those of C. morifolium flowers. The Chung-Pfost, Halsey, Oswin, White & Eirig and GAB equations had lower R2 and higher value for s, MRE and PRESS. The residual plots all presented a systematic pattern.
Table 4
Estimated parameters and evaluating criteria of six models used for adsorption data at five temperatures for A. formosanus Hayata.
Temp.
5 °C
15 °C
25 °C
35 °C
45 °C
Henderson
a0
11.1085
11.2013
11.7819
11.9449
12.1878
a1
1.0682
1.1939
1.0687
1.1718
1.1162
R2
0.9771
0.9915
0.9841
0.9930
0.9876
s
1.0785
0.6406
0.8610
0.5601
0.7261
MRE
4.1659
4.3288
5.0736
6.4703
7.3331
PRESS
36.7479
8.3019
19.5555
4.7611
10.3204
Residualplot
Uniform
Uniform
Uniform
Uniform
Uniform
Chung-Pfost
b0
4.1801
4.1701
5.1377
5.422
5.813
b1
−9.5630
−10.0561
−9.328
−9.368
−8.993
R2
0.9766
0.9711
0.9710
0.9540
0.9501
s
1.1071
1.1751
1.1800
1.4240
1.4502
MRE
10.3642
12.8435
13.0605
17.7778
19.8735
PRESS
17.5531
22.1391
21.831
37.8920
40.4921
Residualplot
Pattern
Pattern
Pattern
Pattern
Pattern
Halsey
c0
6.3600
5.6542
6.2743
5.7114
5.9771
c1
0.6749
0.8224
0.7433
0.8781
0.8446
R2
0.9200
0.9647
0.9411
0.9779
0.9638
s
2.0171
1.3065
1.6567
0.9920
1.2398
MRE
20.8838
14.0305
18.1594
10.9186
13.6242
PRESS
189.6994
54.1043
11.6067
28.4231
54.7304
Residualplot
Pattern
Pattern
Pattern
Pattern
Pattern
Oswin
d0
7.9799
7.5396
8.1977
7.8989
8.1917
d1
0.5792
0.6871
0.6177
0.7013
0.6802
R2
0.9045
0.9795
0.9634
0.9890
0.9791
s
2.0171
0.9951
1.3052
0.6993
0.9417
MRE
15.8019
9.1047
12.1321
5.3923
7.0749
PRESS
119.8241
29.7879
63.4608
13.2440
28.1725
Residualplot
Pattern
Pattern
Pattern
Pattern
Pattern
White & Eirig
e0
0.2248
0.2476
0.2266
0.2492
0.2394
e1
−0.2099
−0.2434
−0.2172
−0.2522
−0.2396
R2
0.9161
0.9435
0.9220
0.9423
0.9304
s
2.0653
1.6539
1.9283
1.5002
1.7178
MRE
24.0033
20.7259
24.6922
20.7785
24.2669
PRESS
268.41
106.2321
206.2235
77.7422
149.9925
Residualplot
Pattern
Pattern
Pattern
Pattern
Pattern
Caurie
f0
1.3805
1.1989
1.5561
1.3618
1.5218
f1
3.2662
3.5179
3.1850
3.4184
3.2744
R2
0.9864
0.9938
0.9884
0.9956
0.9905
s
0.8298
0.5459
0.7366
0.4442
0.6335
MRE
6.5503
4.7103
6.3682
4.6476
5.6618
PRESS
18.0125
5.1170
14.0032
3.2240
8.8902
Residualplot
Uniform
Uniform
Uniform
Uniform
Uniform
GAB
A
156146.6
9696.467
11806.88
7.9452
65.9138
B
0.007007
0.0269
0.0269
1.0877
0.3634
C
0.5401
0.5952
0.5232
0.8255
0.6303
R2
0.9875
0.9933
0.9895
0.9941
0.9894
s
0.8451
0.6023
0.7433
0.5455
0.7122
MRE
4.7524
4.6051
5.3836
5.3507
6.9848
PRESS
132.6791
14.4521
65.4748
12.0731
34.3074
Residualplot
Pattern
Pattern
Pattern
Pattern
Pattern
The Henderson and Caurie equations all conferred a uniform distribution of residual plots. However, the quantitative criteria were not consistent. For example, for the adsorption data at 5 °C, 15 °C and 25 °C, the Caurie equation had larger values of R2 and smaller value of s and PRESS. The Henderson equation, on the other hand, had a smaller value for MRE. Both equations could describe well the adsorption data for A. formosanus Hayata.
4.3. Predictive Ability of Component Model for Two Herbs
The chemical composition of C. morifolium flower and A. formosanus Hayata is listed in Table 5. The prediction curves calculated from equation (8–13) and the fitting curves of actual measurement values are shown in Figure 5 and Figure 6.
Table 5
Chemical composition of C. morifolium flower and A. formosamus Hayata.
Component
C. Morifolium Flower (16)
A. formosamus Hayata (17)
Sugar
0.4923
0.098
Ash
0.077
0.02
Fiber
0.13384
0.23
Starch
0.07692
0.0
Protein
0.1892
0.07
Oil
0.0311
0.01
Note: The unit of components is decimal.
Figure 5
Comparing of the predictive values from the component model and the actual isotherm moisture of A. formosanus Hayata.
Figure 6
Comparing of the predictive values from the component model and the actual isotherm moisture of C. Morifolium flower.
Figure 5 shows that component model exhibits a good agreement with the sorption isotherms of A. formusanus Hayata below 0.7 aw. Above 0.7 aw, the predicted values by component model was lower than that of measurement values.A comparison of predictive values of component model and actual sorption isotherm of C. morifolium flower is shown in Figure 6. Below 0.65 aw, both values were close. However, the predictive values of component model increase rapidly due to the high moisture value of the vacuolar component.
4.4. Predictive Ability of Component Model for Other Products
The chemical composition of five agricultural products is listed in Table 6. These ratios of chemical compositions were taken from the literature, as was the sorption isotherm of these products.
Table 6
Chemical composition of several agricultural products.
Component
Raw Bamboo[14]
Elecampe[34]
Corm VR[35]
Corm Vn[35]
Corm VA[35]
Sugar
0.1964
0.0
0.03965
0.01508
0.02674
Ash
0.1265
0.053
0.01925
0.01607
0.015394
Fiber
0.1429
0.01
0.03579
0.03946
0.036445
Starch
0.4688
0.874
0.75185
0.77221
0.73766
Protein
0.0045
0.0775
0.11147
0.10573
0.12969
Oil
0.0
0.0
0.04199
0.05144
0.05408
Note: The unit of components is decimal.
The predictive values and actual isotherm of raw bamboo are shown in Figure 7. Below 60 % RH, the predictive value and sorption isotherm is closed. As the RH increases, the discrepancy of the moisture content between the predictive values increased.
Figure 7
Comparing of the predictive values from the component model and the actual isotherm moisture of raw bamboo.
The comparison results of the predictive values and actual isotherm of elecampe (Inula helenium L.) [34] are given in Figure 8. Below 0.65 aw, the predictive value and actual values of sorption isotherm are closed. In the higher aw range, the discrepancy of the moisture content between predictive values increased.
Figure 8
Comparing of the predictive values from the component model and the actual isotherm moisture of elecampe (Inula helenium L.).
The results of comparison for three corn varieties is presented in Figure 9. Below 0.7 aw, predictive values of component model were close to the sorption isotherms [34]. The moisture of predictive value increased rapidly for three corn varieties.
Figure 9
Comparing of the predictive values from the component model and the actual isotherm moisture of three varieties of corn kernel. (a. VR corn kernels; b. VN corn kernels; c. VA corn kernels).
The results of the comparison between predictive values of component model and sorption isotherm of two herbs and five products were similar. As aw higher than 0.7, the component model showed a good predictive ability. When aw was higher than 0.7, the predictive moisture content increased rapidly with an increase of aw.Crapiste and Rotstein [9] proposed a starchy-component model to predict isotherms from components. They suggested that their model could be applied over the entire range of moisture content. However, the results of this study indicated that this component model was valid in the aw range below 0.7. The failure is the higher aw range of this component model might be due to the interaction of these components is the higher aw range.From the viewpoint of practical application, the aw range below 0.7 is the main range for the processing of agricultural products and food stuffs. Pathogenic microorganisms cannot develop at aw smaller than 0.6. With aw at 0.3, the products is in stable with respect to non-enzymatic browning, lipid oxidation, enzyme activity and other microbial parameters [10], so the good predictive ability of component model at the aw range smaller than 0.7 could be helpful for food engineering and for the food industry.
5. Conclusions
A component model was proposed to predict the moisture sorption isotherm data. The moisture sorption isotherm of C. morifolium flowers and A. formosanus Hayata was determined using an equilibrium relative humidity method at five temperatures. Seven sorption isotherm models were selected to evaluate the fitting ability and prediction performance for these products. Sorption temperature did not have a significant effect on the adsorption isotherms for the three samples. The Caurie and Henderson equations could be used for C. morifolium flowers. Considering the quantitative criteria, the Caurie equation is the best. The Henderson and Caurie equations were adequate for sorption isotherms of A. formosanus Hayata, but the quantitative criteria were not consistent. The isotherm data of raw bamboo, elecampe and three varieties of corn kernels from the literature were adopted to validate the component model. The component model showed a good predictive ability within an aw range smaller than 0.7. Considering the practical application, the aw range below 0.7 is the main range for the processing of agricultural products, so the predictive values of this component model could be helpful for food engineering and for the food industry.
Authors: David Choque-Quispe; Betsy S Ramos-Pacheco; Yudith Choque-Quispe; Rolando F Aguilar-Salazar; Antonieta Mojo-Quisani; Miriam Calla-Florez; Aydeé M Solano-Reynoso; Miluska M Zamalloa-Puma; Ybar G Palomino-Malpartida; Tarcila Alcarraz-Alfaro; Alan Zamalloa-Puma Journal: Foods Date: 2022-03-14