Study Spray Draying Modeling by Artifitual Neural Network

DOI : 10.17577/IJERTV3IS030446

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Study Spray Draying Modeling by Artifitual Neural Network

A. S. Ghasemi , A. Siami, M. Lotfi

Dept. Chemistry, Payame Noor University Payame Noor University

Tehran, Iran

Abstractconsidering the large Caspian Sea water source have caused to propose a plan for the salt production from salt water by spray dryer. 300 ml salt water with %8 concentrate has been used during 56 experiments. The experiments have done with

%35 efficiency for water product and %75 of that for the humid salt. Also, the data have been used for Artifitual Nerual Network (ANN) modeling and has been found in well agreement between the experiments result and predicted one by ANN.

Keywords spray dryer; moisture; salt water; Artifitual Nerual Network

  1. INTRODUCTION

    Drying is the oldest method of preserving food [1]. The main purpose of drying is to allow longer periods of storage, minimize packaging requirements and reduce shipping weights [2]. Open-air sun drying has been used since ancient times to dry grain, vegetables, fruits and other agricultural products. However, this method of drying is not always suited to large-scale production. There are some problems, the most important ones are: lack of ability to control the drying operation properly, the length of the drying time, weather uncertainties, high labor costs, large area requirement, insect infestation, mixing with dust and other foreign materials and so on [3].The industrial drying processes have been established to overcome these problems [4]. Drying is defined as a process of moisture removal due to simultaneous heat and mass transfer [5]. This complicated process depends on different factors such as air temperature and velocity, relative humidity of air, air flow rate, physical nature and initial moisture content of the drying material, exposed area and pressure [6]. Knowledge of drying behavior is important in the design, simulation and optimization of drying process [7]. Drying behavior of different natural materials has been studied by several investigators [5,8]. Spray dryers are used to obtain a dry powder from a liquid feed. Although the process equipment is very bulky and operation is expensive, it is an ideal process for drying heat sensitive materials. Spray dryers have been used for nearly a century now, but it is still very difficult to model the performance of this type of process equipment, especially with respect to the quality of the dried product [9]. Some years ago, Bahu (1992) made the question of whether enough modeling of spray dryers had actually been done or not [10]. The rapid expansion of interest in spray

    drying research appears to indicate that there is still much to do [11]. At first sight, it might appear that the spray drying process is a simple one, with a liquid solution or slurry being fed through an atomizing device into a hot gas stream, with dried particles then being separated from the gas. However, the complexity of the process is that it includes many aspects of fluid mechanics, heat and mass-transfer, particle technology, reaction engineering, and materials science, in other words a large part of chemical, mechanical and process engineering [12]. The analysis of the process may also include many aspects of numerical analysis and mathematical modeling [13]. Spray drying consists of atomizing a solution into liquid drops in a hot air flow to get dry solid particles after solvent evaporation. The convective drying at the drop surface leads to a very fast evolution of temperature and water content due to initial high differences of temperature and water vapor pressure between the drop surface and the drying air [14]. One of the problems often encountered in the operation of spray dryers is wall deposition, which potentially causes fire hazards, reduced product quality and lower production efficiency. The characteristics of airflow significantly affect the drying process of atomized droplets, where recirculation of the droplets affects their drying times and histories. Understanding the features of the airflow inside a spray dryer is essential for the investigation of the resulting complicated droplet trajectories [15]. Several researchers have also developed simulation models for drying processes [16- 18]. Artificial neural networks (ANN) models have been successfully used in the prediction of problems in bio- processing and chemical engineering [19]. Artificial neural network (ANN) is a general non-linear model based on a simplified model of human brain function and this technique is particularly useful when a phenomenological model of a process is not available or would be too far complex. Several studies have been reported ANN on modeling of drying [20- 24]. ANN technique has also been applied for modeling of water sorption isotherms of black tea [25] and corn starch [26] and the ANN models were found to be better than other mathematical models [27].

  2. MATERIAL AND METHODS

    1. Experiments with Spray drying

      We used an experimental spray dryer for the separation. In the dryer, the feed flow through pumped to the reduced (low) atomizer and then a chamber dryer is driven. A magnetic stirrer and a magnet for feed to remain consistent and not precipitated salt in a measuring cylinder is used during testing. With the help of air compressor inlet air flow ranging Debye 1.3 to 4 m3/min, which is directed into the dryer chamber. Dryer in a room with a temperature of about 25 ° C was constant environmental conditions. In this study, the salt water (use the unrefined salt) at a concentration of 8% and no additives are used.56 tests in three Debye different feed flow and different temperature of inlet air flow is done, that the table (1) is given. During experiments, a magnetic stirrer is used to maintain uniform concentration of the feed brine. In each experiment, 300 ml of brine was

      used, it can be stated that an average of about 25% feed in each test, of liquid products were collected. Also, an average of 75% of salt in the input feed was seen as a solid product. Part of the water contained in the feed as moisture with salt output out of the system and much of it was evacuated with exhaust air from the dryer, with the placing a cooling metal plate on the front of the vapor output, we were able to collect some of the water vapor condenses and in each experiment, approximately 35% of the feed liquid product was collected.

      In some experiments, the salt stick to the walls of the dryer due to high temperature or high Debye air flow, no salt product but the amount of liquid water output increased. Parts of the ultrafine particles of salt with exhaust air were removed from the tank. In each test sample of salt with polymeric tubes insulator heat and moisture collected and hygrometry were tested in the laboratory.

      The amount of salt water just to gather information for the simulation of neural network was measured. The results are visible in Table (2).

      TABLE (1): Details the conditions tested

      Number of tests

      Temperature (oC)

      feed Debye (m3/min)

      air Debye (m3/min)

      Number of tests

      Temperature (oC)

      feed Debye (m3/min)

      air Debye (m3/min)

      1

      150

      8.64

      1.4

      29

      180

      13.95

      3

      2

      150

      8.64

      1.8

      30

      210

      13.95

      1.4

      3

      150

      8.64

      2.2

      31

      210

      13.95

      1.8

      4

      150

      8.64

      2.6

      32

      210

      13.95

      2.2

      5

      150

      8.64

      3

      33

      210

      13.95

      2.6

      6

      150

      8.64

      3.4

      34

      210

      13.95

      3

      7

      180

      8.64

      1.4

      35

      240

      13.95

      1.4

      8

      180

      8.64

      1.8

      36

      240

      13.95

      1.8

      9

      180

      8.64

      2.2

      37

      240

      13.95

      2.2

      10

      180

      8.64

      2.6

      38

      240

      13.95

      2.6

      11

      180

      8.64

      3

      39

      240

      13.95

      3

      12

      210

      8.64

      1.4

      40

      150

      13.95

      1.4

      13

      210

      8.64

      1.8

      41

      150

      22.1

      3

      14

      210

      8.64

      2.2

      42

      180

      22.1

      1.4

      15

      210

      8.64

      2.6

      43

      180

      22.1

      1.8

      16

      210

      8.64

      3

      44

      180

      22.1

      2.2

      17

      240

      8.64

      1.4

      45

      180

      22.1

      2.6

      18

      240

      8.64

      1.8

      46

      180

      22.1

      3

      19

      240

      8.64

      2.2

      47

      210

      22.1

      1.4

      20

      240

      8.64

      2.6

      48

      210

      22.1

      1.8

      21

      240

      8.64

      3

      49

      210

      22.1

      2.2

      22

      150

      13.95

      1.4

      50

      210

      22.1

      2.6

      23

      150

      13.95

      2.6

      51

      210

      22.1

      3

      24

      150

      13.95

      3

      52

      240

      22.1

      1.4

      25

      180

      13.95

      1.4

      53

      240

      22.1

      1.8

      26

      180

      13.95

      1.8

      54

      240

      22.1

      2.2

      27

      180

      13.95

      2.2

      55

      240

      22.1

      2.6

      28

      180

      13.95

      2.6

      56

      240

      22.1

      3

      TABLE (2): Results of measuring moisture content of salt in each test

      Number of

      tests

      Percent of

      Moisture

      Number of

      tests

      Percent of

      Moisture

      Number

      of tests

      Percent of

      Moisture

      Number of

      tests

      Percent of

      Moisture

      1

      2.15

      15

      1.14

      29

      2.07

      43

      3.01

      2

      2.31

      16

      1.05

      30

      3

      44

      3.46

      3

      1.34

      17

      1.43

      31

      2.56

      45

      6.54

      4

      1.27

      18

      2.19

      32

      2.24

      46

      12.06

      5

      1.93

      19

      1.26

      33

      1.9

      47

      10.22

      6

      1.11

      20

      1.49

      34

      2.39

      48

      5.26

      7

      1.36

      21

      1.34

      35

      1.39

      49

      2.35

      8

      3.12

      22

      4.79

      36

      1.49

      50

      1.60

      9

      1.85

      23

      9.29

      37

      1.51

      51

      1.35

      10

      2.11

      24

      6.2

      38

      3.27

      52

      2.64

      11

      1.96

      25

      2.82

      39

      5.61

      53

      4.05

      12

      0.99

      26

      3.26

      40

      4.18

      54

      2.83

      13

      2.9

      27

      4.53

      41

      7.03

      55

      2.13

      14

      1.41

      28

      3.13

      42

      1.93

      56

      1.90

    2. The characteristics of neural network and input data.

      56 tests were performed and in total 224 data for four sets were collected. Initially, all data that including parameters: air temperature, air Debye, feed Debye and the moisture in the form of dimensionless numbers were changed. Sample of dimensionless at the temperature of 210

      ° C is expressed in the following calculations. Thus, all parameters were in the range of zero to one. This has increased the speed of network convergence.

      Maximum temperature interval is 90 ° C.

      Minimum temperature is 150 ° C.

      Dimensionless temperature at 210 ° C. (210-150)/90= 0.666

      Experimental data were divided randomly into two groups. one group for training and another group for testing. Overall, 70% of data were used for training. In fact, the number of neurons depends on the number of independent variables in the input, and dependent variables in the output. In these experiments, the dependent variable (the amount of salt water output) and three independent variables (air temperature, air Debye and brine inlet Debye) and the one- and three neurons were assigned to the input and output layers. The number of hidden layers and their neurons are dependent on the complexity of the problem. Leading (Ahead) network and its input data is descried in the following tables.

      TABLE (3) Input data and dimensionless of them

      Number of

      Tests

      Temperature

      (oC)

      Dimensionless

      temperature

      feed Debye

      (m3/min)

      Dimensionless

      feed Debye

      air Debye

      (m3/min)

      Dimensionless

      air Debye

      Percent Of

      Moisture

      Dimensionless

      Moisture

      1

      150

      0

      8.64

      0

      1.4

      0

      2.15

      0.104

      2

      150

      0

      8.64

      0

      1.8

      0.2

      2.31

      0.119

      3

      150

      0

      8.64

      0

      2.2

      0.4

      1.34

      0.031

      4

      150

      0

      8.64

      0

      2.6

      0.6

      1.27

      0.025

      5

      150

      0

      8.64

      0

      3

      0.8

      1.93

      0.084

      6

      150

      0

      8.64

      0

      3.4

      1

      1.11

      0.010

      7

      180

      0.333

      8.64

      0

      1.4

      0

      1.36

      0.033

      8

      180

      0.333

      8.64

      0

      1.8

      0.2

      3.12

      0.192

      9

      180

      0.333

      8.64

      0

      2.2

      0.4

      1.85

      0.077

      10

      180

      0.333

      8.64

      0

      2.6

      0.6

      2.11

      0.010

      11

      180

      0.333

      8.64

      0

      3

      0.8

      1.96

      0.087

      12

      210

      0.666

      8.64

      0

      1.4

      0

      0.99

      0

      13

      210

      0.666

      8.64

      0

      1.8

      0.2

      2.9

      0.172

      14

      210

      0.666

      8.64

      0

      2.2

      0.4

      1.41

      0.037

      15

      210

      0.666

      8.64

      0

      2.6

      0.6

      1.14

      0.013

      16

      210

      0.666

      8.64

      0

      3

      0.8

      1.05

      0.005

      17

      240

      1

      8.64

      0

      1.4

      0

      1.43

      0.039

      18

      240

      1

      8.64

      0

      1.8

      0.2

      2.19

      0.108

      19

      240

      1

      8.64

      0

      2.2

      0.4

      1.26

      0.024

      20

      240

      1

      8.64

      0

      2.6

      0.6

      1.49

      0.045

      21

      240

      1

      8.64

      0

      3

      0.8

      1.34

      0.031

      22

      150

      0

      13.95

      0.394

      1.4

      0

      4.79

      0.343

      23

      150

      0

      13.95

      0.394

      2.6

      0.6

      9.29

      0.749

      24

      150

      0

      13.95

      0.394

      3

      0.8

      6.2

      0.470

      25

      180

      0.333

      13.95

      0.394

      1.4

      0

      2.82

      0.165

      26

      180

      0.333

      13.95

      0.394

      1.8

      0.2

      3.26

      0.205

      27

      180

      0.333

      13.95

      0.394

      2.2

      0.4

      4.53

      0.319

      28

      180

      0.333

      13.95

      0.394

      2.6

      0.6

      3.13

      0.193

      29

      180

      0.333

      13.95

      0.394

      3

      0.8

      2.07

      0.097

      30

      210

      0.666

      13.95

      0.394

      1.4

      0

      3

      0.181

      31

      210

      0.666

      13.95

      0.394

      1.8

      0.2

      2.56

      0.141

      32

      210

      0.666

      13.95

      0.394

      2.2

      0.4

      2.24

      0.112

      33

      210

      0.666

      13.95

      0.394

      2.6

      0.6

      1.9

      0.082

      34

      210

      0.666

      13.95

      0.394

      3

      0.8

      2.39

      0.126

      35

      240

      1

      13.95

      0.394

      1.4

      0

      1.39

      0.036

      36

      240

      1

      13.95

      0.394

      1.8

      0.2

      1.49

      0.045

      37

      240

      1

      13.95

      0.394

      2.2

      0.4

      1.51

      0.046

      38

      240

      1

      13.95

      0.394

      2.6

      0.6

      3.27

      0.205

      39

      240

      1

      13.95

      0.394

      3

      0.8

      5.61

      0.417

      40

      150

      0

      13.95

      0.394

      1.4

      0

      4.18

      0.288

      41

      150

      0

      22.1

      1

      3

      0.8

      7.03

      0.545

      42

      180

      0.333

      22.1

      1

      1.4

      0

      1.93

      0.084

      43

      180

      0.333

      22.1

      1

      1.8

      0.2

      3.01

      0.182

      44

      180

      0.333

      22.1

      1

      2.2

      0.4

      3.46

      0.223

      45

      180

      0.333

      22.1

      1

      2.6

      0.6

      6.54

      0.501

      46

      180

      0.333

      22.1

      1

      3

      0.8

      12.06

      1

      47

      210

      0.666

      22.1

      1

      1.4

      00

      10.22

      0.8330

      48

      210

      0.666

      22.1

      1

      1.8

      0.2

      5.26

      0.385

      49

      210

      0.666

      22.1

      1

      2.2

      0.4

      2.35

      0.122

      50

      210

      0.666

      22.1

      1

      2.6

      0.6

      1.6

      0.055

      51

      210

      0.666

      22.1

      1

      3

      0.8

      1.35

      0.032

      52

      240

      1

      22.1

      1

      1.4

      0

      2.64

      0.149

      53

      240

      1

      22.1

      1

      1.8

      0.2

      4.05

      0.276

      54

      240

      1

      22.1

      1

      2.2

      0.4

      2.83

      0.166

      55

      240

      1

      22.1

      1

      2.6

      0.6

      2.13

      0.102

      56

      240

      1

      22.1

      1

      3

      0.8

      1.9

      0.082

      TABLE (4): Percent of training data

      Train

      70%

      Valid

      15%

      Test

      15%

    3. Simulation output data.

    In this study, many hidden layers were examined, and finally, a hidden layer of 18 neurons was suggested as the

    best mode. To find the best state, at each step of the regression and least square error was evaluated. The case that the higher regression and least-square error is less, Conditions is desirable.

    MSE

    0.00482

    Regression

    0.94451

    TABLE (5): least squared error and the final regression

    TABLE (6): humidity was calculated by the software

    Num

    ANN result

    for humidity

    Num

    ANN result

    for humidity

    Num

    ANN result

    for humidity

    Num

    ANN result

    for humidity

    1

    0.053

    15

    0.031

    29

    0.186

    43

    0.229

    2

    0.030

    16

    0.005

    30

    0.099

    44

    0.279

    3

    0.061

    17

    0.015

    31

    0.128

    45

    0.414

    4

    0.071

    18

    0.023

    32

    0.104

    46

    0.625

    5

    0.059

    19

    0.024

    33

    0.102

    47

    0.559

    6

    0.059

    20

    0.023

    34

    0.112

    48

    0.336

    7

    0.003

    21

    0.032

    35

    0.079

    49

    0.175

    8

    0.105

    22

    0.294

    36

    0.069

    50

    0.112

    9

    0.095

    23

    0.565

    37

    0.098

    51

    0.167

    10

    0.047

    24

    0.6

    38

    0.186

    52

    0.205

    11

    0.037

    25

    0.172

    39

    0.294

    53

    0.201

    12

    0.052

    26

    0.219

    40

    0.294

    54

    0.159

    13

    0.084

    27

    0.229

    41

    0.570

    55

    0.112

    14

    0.061

    28

    0.195

    42

    0.167

    56

    0.150

  3. Discussion and Conclusion

During the experiments, in areas where moisture was lower, more salt and more liquid product was collected. Namely, at higher Debye due to the shorter contact time feed with hot air, less salt and more humid were obtained. According to tests done in four temperature ranges, to compare the efficiency of the dryer, considering the low moisture in the solid salt product is more desirable, moisture curves are plotted (graphs (1) to (4)).

The average moisture content of the product, graphs (3) and

  1. are very similar and in both graphs, about 87% experiments show moisture below 20%.

    Sudden maximum points in each of the graphs are due to an increase in both the feed Debye and hot air Debye, or are only due to an increase in feed Debye.

    It can be stated that the increase in feed Debye is due to liquid surface contact time with the hot air and thus reduces mass transfer and heat and increases the moisture content.

    Graph (1): Moisture content at 150 ° C.

    Graph (2): Moisture content at 180 ° C.

    Graph (3): Moisture content at 210 ° C.

    Graph (4): Moisture content at 240 ° C.

    The results for each of the three areas identified for feed Debye are shown as diagrams (5) to (7).

    Graph: (5) Moisture in Debye 64/8 (m3/min).

    Graph: (6) Moisture in Debye 13.95 (m3/min).

    Graph (7): Moisture in Debye 22.1 (m3/min).

    In the diagram (8) measurement of moisture content during 56 tests were compared with the values predicted by the software, as it was shown, there is a good agreement.

    Graph (8): Measuring Moisture in the 56 experiments.

    Experiments 46, 23 and 41 respectively show the greatest amount of salt moisture, and are related to conditions that there are almost simultaneously the high feed Debye and the air Debye.

    The best state is diagram (5), that there are humidity under 20% to almost 100% of the samples, and test 12 with low feed Debye and air Debye in 210 ° C temperature, has the

    best conditions during testing. In this case, there is sufficient time for heat and mass transfer.

    The lower simulation lines than experimental lines in graph

  2. is partly due to the openness of the system, low feed Debye and also measurement errors.

This networks solve problems that simulation is difficult through logical, analytical techniques and advanced systems.

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