Factorial Experimental Modelling of Ball Milling Response for Baban Tsauni (Nigeria) Lead-Gold Ore

DOI : 10.17577/IJERTV2IS4848

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Factorial Experimental Modelling of Ball Milling Response for Baban Tsauni (Nigeria) Lead-Gold Ore

E. A. P. Egbe1,1*

1Mechanial Engineering Department, Federal University of Technology, Minna, Nigeria.

Abstract

An empirical model of the ball milling response of Baban Tsauni (Nigeria) lead-gold ore was developed in this work by applying factorial experimental design. The four factors considered were, mill speed, steel ball diameter, grinding time and the ratio of mass of ball to mass of ore samples. The factors were treated at two levels and the measurable ball milling response was the size reduction ratio. The student t-test was used for determining the significance of the factors. All the factors were found to have both main and interactive effect on ball milling response. Predicted values calculated using model equation were in good

agreement with experimental values of the response (R2 = 0.997). The mathematical model indicated that ball milling output increased with increase in grinding time, ball mass to ore sample mass ratio and very slowly with increase in mill speed. The response decreased with increase in ball size. This work established a model for selecting the parameters required for a desired size reduction ratio. The work also indicated that ball milling response is a function of the feed particle size.

Key words: four factors at two levels, ball milling response, model equation, experimental design.

1.0 Introduction

Energy consumption in cumminution is the highest in mineral dressing processes [13], [19] and conservation of energy can be achieved by controlling the conditions that affect grinding response.

A well structured factorial experimental design makes it possible for effects of several variables on the performance of a system to be determined with a few

experimental runs and a line of action for product or process improvement is identified. The effects of interactions between factors can also be examined. The data generated from the designed experiment are used to develop a modelling equation which is subjected to significance test and analysis of variance to determine quality of the model before validation and optimization [1], [14], [11] [3].

2.0 Literature review

The resistance of materials to breakage is often expressed as its grindability and the Bonds Work index has generally been accepted as the measure of grindability in the mineral industry [2], [20], [4], [8]. The effects of operating conditions on the performance of mills have been observed over the years [15], [10], [19]. It has also been indicated that the product size, the power consumption and

production rate are influenced by the size of the ball utilised in a ball milling operation [6], [9], [18]. The number of balls and particle density have also been indicated as factors that affect the performance of a ball mill [15].

In a factorial design at two levels each of the factors are taken at two treatment levels: low (-1) and high (+1). The numbers of factors which are perceived to influence the process determine the number of

experimental runs for a full factorial design at two

levels. When three factors are considered to be of importance the factorial design denoted by 23 will require eight experimental runs [11], [15]. As a rule each of the runs must be unique and the order of run is usually random in order to avoid structural error. The modelling equation for the 23 factorial experiments above is given by:

Y=b0+b1X1+b2X2+b3X3+b12X1X2+b13X1X3+b23X2X3+b

123X1X2X3 1

where b0, b1, b2 to b123 are coefficients which are determined from measurable responses of eight runs; X1, X2, X3 are the coded values of the factors of interest and Y is a measurable performance indicator [15]. A well designed experiment provides the eight responses required to solve eight simultaneous equations that are obtainable from Equation 1.

It is indicated that a good modelling information can be obtained from a half factorial design of experiments[11]. Particularly when a large number of factors appear to be of interest, a half factorial design provides a means of screening out the insignificant factors by carrying out smaller number of test runs. It is a subset of full experimental design. Further improvement design at more levels with only significant factors from the screening stage experiment leads to optimum conditions.

3.0 Experimental Procedures

Y b0 b1X1 b2 X2 b3 X3 b4 X4

b12X1X2 b13X1X3 b14X1X4 b23X2 X3

b24X2 X4 b34X3X4 2

where all the parameters are same as defined for Equation 1. Table 1 shows the coded and actual values of the factors for the test runs. To avoid structured error, the experimental runs were performed in a random order. There are eleven unknown parameters in Equation 1 and twelve unique responses were obtained for the simulation of a modelling equation while the replicated test runs were used for analysis of variance. The response that was measured was breakage reduction ratio given by, 80% passing size of feed divided by 80% passing size of the product (F80/P80 [5]). The set of twelve unique responses were used with Equation 1 on a MATLAB programme to generate the coefficients for the modelling equation. The significance of main effects was tested with student t-test. The validation and optimum test runs were carried out and the responses were subjected to residual analysis.

Table 1: The coded and actual values of the factors

for the test runs.

The cylindrical mill that was used has internal diameter of 125mm and length of 175mm. The mill did not have lifters. An initial sample

Coded values

x1= Speed (rpm)

x2= Ball diameter (mm)

x3= Grinding time

x4= MB/MO

preparation aimed at ensuring a homogeneous feed for

(minutes)

subsequent test runs was carried out. Crushed ore

-1

90.6

20

5

2

samples from jaw crusher and roll crusher ( in that

+1

131.1

40

15

6

order) were subjected to the same grinding conditions of mill speed, ore mass to ball mass ratio, ball size and grinding time of 10minutes [5]. The products of this

batch milling operations were mixed thoroughly and passed through a Jones riffling sampler, until sets of 0.51kg samples were obtained.

Four factors were considered in this work, namely; mill speed (x1), ball diameter (x2), holding time (x3) and Mass of ball to mass of ore ratio (x4). The factors were considered at two levels. The high level was coded +1 and the low level -1. The form of the modelling equation adopted for this work is given by,

4.0 Results and Discussion

The results of particle size analyses for the feeds used for factorial experimental design of the effects of grinding conditions are presented in Figure

1. The 80% passing size was determined from the equation of the line. The equation of the line in Figure 1 is,

y = -0.00002×2 + 0.0958x-26.849 3

The eighty per cent passing size of the feed (F80) was calculated by substituting y =80 into Equation 3.

Therefore,

x2 -4790x + 5342450 = 0. 4

Solving the quadratic equation yielded, x = F80 = 1767.644m.

The products of each unique grinding condition were subjected to particle size analyses and the 80% passing sizes (P80) were calculated in the same way as for the fed above.

The summary of the responses in terms of ratio of F80/P80 for twelve unique grinding conditions, which

S 2 = (0.000441+0.000169+0.001089)/(3-1) = (0.001699)/2 = 0.0008495

1

1

p

p

By a similar calculation, the variance in the replicated test run condition G8 was found to be 0.0009. The pooled variance (S 2) is the mean of all variance from

replicated test runs. Thus,

p

p

S 2 = (0.0008495 +0.0009)/2

= 0.000875

According to Devor et al. (2007) the sample variance of an effect is calculated by,

were required for the calculation of the eleven coefficients of Equation 2, are presented in Table 2.

S 2

4(S 2

)

)

p

p

8

E N

where N = the total number of test runs used for the model. In this work N = 16 and hence,

There are eleven unknown parameters in Equation 2 and matrix methods yielded easy solution.

y =X 5

2 4(0.000875)

S

S

E 16

= 0.00021875

where y = column matrix of the responses (column 13 on Table 2 )

X = an m by n calculation matrix of coded values of xk deduced from Equation 1 (Table 3, column 2 to 12 by row 2 to 13 ), with b0 represented by one and = column matrix of the coefficients. Multiplying Equation 2 by XT and rearranging yielded,

= (XTX)-1XTy 6

The calculation matrix (Table 3) was used with Equation 6 in a MATLAB programme to generate the coefficients of the modelling equation (Equation 2) and these coefficients are presented in Table 4.

In order to test for the significance of the coefficients by using students t-test, the variance of the effect estimates and the average effect were calculated from the variance of the replicated observations [17], [12], [5]. The calculated variance for the replicated test runs are presented in Table 5.

.

The standard error (s.e) of the effects is the square root of the sample variance and hence,

2

2

s.e = (0.00021875) = 0.0147902

The sample variance of the average (Sav ) is given by,

Sav p

Sav p

2=S 2/N 9

= 0.000875/16 = 0.0000547.

Therefore,

sav = (0.0000547) = 0.0073959

    1. Hypotheses test

      The t-statistics was calculated for each effect estimate (under the hypothesis; H0:effect =0) by,

      t=(Ei-effect)/s.e 10

      where Ei = effect estimate = 2xbi for i = 1, 2, 3,34 and the bi are the coefficients of the anticipated model equation.

      The alternative hypothesis is, H0:effect 0. Substituting for b1 = -0.1107 yielded E1 = -0.221 and by Equation 4.20,

      t= (E1-effect)/(0.0147902) = (-0.221- 0)/(0.0147902) = -14.942.

      For the average effect, b0= 2.2908 = E0 and the t-value is,

      Adopting the expression given by [3], the variance in the test run condition G1 became,

      E0 effect

      t=

      S

      2.2902 309.735 11

      0.0073959

      1

      1

      11

      11

      S 2 (u

      – u1

      2 n

      av.

      The null hypothesis requires that effect should be 0.

      u12 – u n

      2

      1

      1

      u – u 2 n

      7 The null hypothesis was rejected when the calculated t-value of an effect or average effect was greater than

      the corresponding t-distribution at a desired

      13 1

      where u1i = individual responses in G1i for i = a, b and c, 1 = mean of the responses in G1 and n = number of replicates. Substituting the responses yielded,

      confidence level [17], [12], [3]. A 95% confidence level was considered adequate in this work. The corresponding t-distribution value for four degrees of freedom (t4,0.975 or t4,0.025) was read from standard t-test

      table [11] as 2.776. Table 6 presents the calculated associated t-values for all the estimated effects.

      The results obtained when the estimated effects were subjected to T-test (Table 6) showed that the calculated absolute t values for all the effects were higher than t4,0.975 (or t4,0.025). This implied that the main effects and interaction effects affected the grinding outputs which were measured in terms of size reduction ratio- F80/P80 at a confidence level of 95% [3], [11]. This meant that interactions between the four factors under consideration were important in addition to the individual effects of the factors.

    2. The equation for the model

      The implication of rejecting the null hypothesis for all the effects was that the model equation should contain all the coefficients of Table 5. The resulting modelling equation for predicting future grinding outputs then became Equation 12.

      Y 2.2908 0.1107 X1 0.0572X 2

      0.6941X 3 0.8131X 4 0.0258X1 X 2

      0.0663X1 X 3 0.1536 X1 X 4

      0.1424 X 2 X 3 0.2072 X 2 X 4 12

      0.4491X 3 X 4

      An empirical model is normally checked for possible presence of structured error before validation and adoption for future prediction. This was done by subjecting the model to residual analysis. The calculated residuals of all the responses used for generating the model and their percentages are presented on Table 7.

      The actual residuals and their percentages (as functions of the actual responses) are shown on the tenth and eleventh columns of Table 7 respectively. It was observed that the per cent residuals varied from – 0.737% to a maximum of 4.884%. The levels of these residuals were quite low and more so when the complex environment in a grinding mill is considered. Figure 2 shows a plot of predicted responses against the actual responses. A correlation of 0.997 was found column of Table 8). This observation supported the submission above on the effect of feed size. Moreover a considerable change in the grinding time from the initial mean value caused a shift in the mean particle size in the bulk sample. This explained the slight

      between the predicted values and the actual values.

      The modelling equation indicated that positive coded values of X1 (grinding speed), X3 (grinding time) and X4 (MB/MO) enhanced grinding output. This implied that grinding output increased as grinding speed, holding time and mass of ball to mass of ore ratio increased above 110.5rpm (or 0.849Vc), 10 minutes and ratio of 4 respectively. On the contrary negative values of X2 improved the grinding response. Positive (or negative) coded value is relative to the mean values used in the experiments.

      Figure 3 show the predicted responses as each factor was varied within a feasible range while the other three factors were kept at the highest level of their experimental values. The responses converged to 3.975 which marks the best response within the range of values used in the experiment.

    3. Model validation

The results of breakage responses of nine model validation test runs are shown in Table 8.

The results of the first three validation test runs showed very small deviation from the predicted values with residuals ranging from 0.97% to 2.225%. The results showed reasonable deviation from the predicted values when the feed sizes (V4, V5,.V9) were altered from the value used in generating the model.

Two reasons were most likely responsible for this increase in deviation: (1) the difference in the feed size and (2) the effect of grinding time on the mean particle size in the bulk samples in the mill. It is fairly well known that the grindability of an ore increases with decrease in particle size [16], [7], [20]. A change in feed size directly implied a change in the bulk particle size if all other conditions (ball size, mill speed, grinding time and ball mass to sample mass ratio) were kept constant. The 80% feed size for the factorial grinding experiment was 1767.644m. The divergence between predicted and actual responses increased with decrease in the 80% passing size of the feed (last

difference in residuals recorded for samples ground for 25minutes and 20minutes.

When te complex environment in grinding mills was considered, the model gave a good prediction of ball milling response of Baban Tsauni ore.

5.0 Conclusion

This research work has established a mathematical relationship between the grinding response of Baban Tsauni lead gold ore and ball milling conditions. All the factors investigated in this work have direct and interactive effect on the grindability of the ore. The model equation will serve as a valuable tool for

comminution flow sheet design and production planning. The effect of feed size on breakage response was observed in this work. An adequate correction factor that will account for the effect of feed size on grindability is desired to make the model more versatile.

References

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Appendix: Figures and Tables.

100

y = -2E-05×2 + 0.0958x – 26.849

80

Cumulative mass passing(%).

Cumulative mass passing(%).

60

40

20

0

0 500 1000 1500 2000 2500

-20

Particle size of feed (microns).

Figure 1: Particle size analysis for factorial experimental design feeds

Table 2: The grinding conditions and summary of responses for 24** factorial grinding experiments.

Test Coded values Y= F80/ P80

X1

X2

(Ball

X3

X4

P80

(microns)

(speed)

size)

(grinding

(MB/MO)

Time)

G1a

-1

-1

-1

-1

1350.01

1.309356

G1b

-1

-1

-1

-1

1342.51

1.316671

G1c

-1

-1

-1

-1

1296.61

1.363281

G2

1

-1

-1

1

883.97

1.999665

G3

-1

1

-1

1

980.25

1.803258

G4

1

1

-1

-1

1489.18

1.186991

G5

-1

-1

1

1

389.6

4.537074

G6

1

-1

1

-1

1212.02

1.458428

G7

-1

1

1

-1

945.66

1.869217

G8a

1

1

1

1

459.76

3.84471

G8b

1

1

1

1

452.68

3.904842

G8c

1

1

1

1

456.21

3.874628

G9

1

1

1

-1

1088.06

1.624583

G10

1

1

-1

1

926.24

1.908408

G11

1

-1

1

1

367.93

4.804294

G12

-1

1

1

1

468.63

3.771939

Table 3: Calulation matrix for factorial experimental design of grinding conditions.

Test b0 X1 X2 X3 X4 X1X2 X1X3 X1X4 X2X3 X2X4 X3X4 Y=

F80/P80

G1av

1

-1

-1

-1

-1

1

1

1

1

1

1

1.33

G2

1

1

-1

-1

1

-1

-1

1

1

-1

-1

2.000

G3

1

-1

1

-1

1

-1

1

-1

-1

1

-1

1.803

G4

1

1

1

-1

-1

1

-1

-1

-1

-1

1

1.187

G5

1

-1

-1

1

1

1

-1

-1

-1

-1

1

4.537

G6

1

1

-1

1

-1

-1

1

-1

-1

1

-1

1.458

G7

1

-1

1

1

-1

-1

-1

1

1

-1

-1

1.869

G8av

1

1

1

1

1

1

1

1

1

1

1

3.875

G9

1

1

1

1

-1

1

1

-1

1

-1

-1

1.625

G10

1

1

1

-1

1

1

-1

1

-1

1

-1

1.908

G11

1

1

-1

1

1

-1

1

1

-1

-1

1

4.804

G12

1

-1

1

1

1

-1

-1

-1

1

1

1

3.772

Table 4: The calculated coefficients of Equation 1

Coefficients b0 b1 b2 b3 b4 b12 b13 b14 b23 b24 b34

Values 2.29 -0.111 -0.057 0.694 0.8131 0.0258 0.0663 0.1536 -0.142 – 0.4491

0.207

Table 6: Coefficients, effect estimates and associated t values for grinding experiment.

Coefficients Values Effects Effect

estimate

Associated t value

t4,0.025 t4,0.975

b0

2.2908

E0

2.291

309.7392 -2.776

b1

-0.1107

E1

-0.221

-14.942 or+2.776

b2

-0.0572

E2

-0.114

-7.7078

b3

0.6941

E3

1.388

93.8459

b4

0.8131

E4

1.626

109.9377

b12

0.0258

E12

0.052

3.5158

b13

0.0663

E13

0.133

8.9924

b14

0.1536

E14

0.307

20.7570

b23

-0.1424

E23

-0.285

-19.2695

b24

-0.2072

E24

-0.414

-27.9915

b34

0.4491

E34

0.898

60.7159

Table 7 Residuals of grinding experiment responses.

Test Run Coded values y= Y= F80/y Y' Residuals Per cent

order

X1

X2

X3

X4

(P80)

(Actual response)

(Predicted response)

Y-Y'

residuals

G1a

5

-1

-1

-1

-1

1350.01

1.309

1.3

0.0127 0.967

G1b

4

-1

-1

-1

-1

1342.51

1.317

1.3

0.02 1.517

G1c

1

-1

-1

-1

-1

1296.61

1.363

1.3

0.0666 4.884

G2

9

1

-1

-1

1

883.97

2.000

2.03

-0.034 -1.692

G3

10

-1

1

-1

1

980.25

1.803

1.84

-0.033 -1.832

G4

3

1

1

-1

-1

1489.18

1.187

1.22

-0.033 -2.806

G5

8

-1

-1

1

1

389.6

4.537

4.57

-0.033 -0.737

G6

2

1

-1

1

-1

1212.02

1.458

1.49

-0.033 -2.254

G7

6

-1

1

1

-1

945.66

1.869

1.9

-0.033 -1.781

G8a

11

1

1

1

1

459.76

3.845

3.98

-0.131 -3.397

G8b

13

1

1

1

1

452.68

3.905

3.98

-0.07 -1.804

G8c

16

1

1

1

1

456.21

3.875

3.98

-0.101 -2.598

G9

7

1

1

1

-1

1088.06

1.625

1.56

0.0665 4.092

G10

12

1

1

-1

1

926.24

1.908

1.84

0.0673 3.527

G11

15

1

-1

1

1

367.93

4.804

4.74

0.067 1.394

G12

14

-1

1

1

1

468.63

3.772

3.71

0.0666 1.767

6

5 R² = 0.997

Predicted responses

Predicted responses

4

3

2

1

0

0 1 2 3 4 5 6

Actual responses

Figure 2: Correlation between the predicted and the actual grinding responses

X2 5

4.5

Grinding response (Y)

Grinding response (Y)

4

3.5

X1 3

X3 2.5

2

X4 1.5

1

0.5

0

-1.5 -1 -0.5

Values0of factors 0.5 1 1.5

Figure 3: Response plot of the effect of each factor when others remain constant.

Test

Coded values

(F80)

y= (P80)

Y= F80/y

X1

X2

X3

X4

V1

1

-1

1

1

1767.644

369.5

4.783881

V2

-1

1

1

1

1767.644

466.447

3.789595

V3

1

1

1

1

1767.644

452.55

3.905964

V4

1

-1

3

1.515

1350

218

6.19271

V5

1

-1

3

1.504

1342.5

220.35

6.09258

V6

1

-1

3

1.524

1489.2

211.98

7.0251

V7

1

-1

2

1.506

1296.6

228.463

5.67536

V8

1

-1

2

2.005

883.97

221.72

3.98688

V9

1

-1

2

1.89

926.24

213.87

4.33086

Test

Coded values

(F80)

y= (P80)

Y= F80/y

X1

X2

X3

X4

V1

1

-1

1

1

1767.644

369.5

4.783881

V2

-1

1

1

1

1767.644

466.447

3.789595

V3

1

1

1

1

1767.644

452.55

3.905964

V4

1

-1

3

1.515

1350

218

6.19271

V5

1

-1

3

1.504

1342.5

220.35

6.09258

V6

1

-1

3

1.524

1489.2

211.98

7.0251

V7

1

-1

2

1.506

1296.6

228.463

5.67536

V8

1

-1

2

2.005

883.97

221.72

3.98688

V9

1

-1

2

1.89

926.24

213.87

4.33086

Table 8: Summary of grinding model validation and optimum test runs results.

Y' Residuals

Y-Y'

4.7373 0.046581

3.7053 0.084295

3.9753 -0.06934

8.74 -2.547

8.711 -2.618

8.761 -1.736

7.138 -1.462

8.171 -4.184

7.933 -3.603

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