E. Haque
Kansas State University
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Featured researches published by E. Haque.
Journal of Near Infrared Spectroscopy | 2001
Melchor C. Pasikatan; J. L. Steele; C. K. Spillman; E. Haque
The cross-sensitivity of near infrared (NIR) reflectance to the particle size of powders or ground materials has long been documented but not fully exploited for particle size estimation. Diffuse reflectance of a powder sample is dependent on light scattering within its layers, and a powders absorption and scattering coefficient are related to its particle size. This is the basis of NIR reflectance–particle size calibrations. The availability of fibre optic probes and the speed of NIR spectrometers make them suitable for remote and online sensing of particle size, in addition to providing chemical information of a powder sample. The basics of NIR reflectance spectroscopy relevant to particle size determination and its relation to sample preparations, methods of presentation, reference methods, calibration development and validation are reviewed in this paper.
Cereal Chemistry | 1998
Qi Fang; Gerald Biby; E. Haque; Milford A. Hanna; C. K. Spillman
ABSTRACT Physical properties of ground materials from roller mills are affected by the characteristics of wheat and the operational parameters of the roller mill. Backpropagation neural networks were designed, trained, and tested for the prediction of three physical properties of ground wheat: geometric mean diameter (GMD), specific surface area increase (SSAI), and break release (BR). Eight independent variables were used as input data. Compared to conventional statistical models, the accuracy of prediction was improved substantially, as reflected by the significant reduction in root mean squared error (RMS), relative error (RE), and the increase in coefficient of determination R2 (>0.98). The neural network models are, therefore, capable of predicting the physical properties of the ground wheat.
Applied Engineering in Agriculture | 1997
Qi Fang; I. Bölöni; E. Haque; C. K. Spillman
AIt is generally believed that roller mills utilize energy more efficiently than hammer mills (Silver, 1931; Puckett and Daum, 1968; Appel, 1987). To verify this, a completely randomized factorial experimental design (CRD) with two replications was constructed: a total of 72 grinding tests was conducted to compare the energy efficiency between a roller mill and a hammer mill. Energy data were collected using a computerized data acquisition system and a watt-hour meter for the roller mill and the hammer mill, respectively. A mixture of hard red winter wheat (HRW) varieties was used to conduct the experiment. To make the comparison meaningful, the parameters for the two machines were set so that the ground material characteristics from both were almost identical. For roller mill grinding, roll gap was the most significant factor affecting energy requirement, followed by the roll speed differential. For hammer mill grinding, screen opening size had the most significant effect. For both mills, feed rate was not significant; and energy efficiencies were about the same.
Transactions of the ASABE | 1978
E. Haque; G. H. Foster; D. S. Chung; p s. Lai
ABSTRACT THE static pressure drop across a column of corn mixed with fines (broken grain and other matter that will pass through a 4.76 mm (12/64 in.) diameter round-hole sieve) was measured for determination of the effect of fines on the resistance to airflow. The re-lationship was determined for a range of airflows. In experiments with a loosely filled column of corn mixed with uniformly distributed fines, the pressure drop increased linearly with increases in fines up to about 20 percent. A modification of the relationship between pressure drop and airflow through clean corn, found by Hukill and Shedd (1955), and an equation which is easier to use than the modified Hukill-Shedd equation are presented. Pressure drops predicted by both equations agreed closely with those observed across beds com-posed of various percentages of fines and whole corn.
Transactions of the ASABE | 1998
Qi Fang; E. Haque; C. K. Spillman; P. V. Reddy; J. L. Steele
An experimental two-roll mill was developed and instrumented for computerized data acquisition. Milling tests were performed on three classes of wheat. Included in the study were six independent variables each with three levels, namely, class of wheat, moisture content, feed rate, fast roll speed, roll speed differential, and roll gap. Two covariates, single kernel hardness and single kernel weight, were also included in the statistical analysis. Prediction models were constructed for five dependent variables (fast roll power, slow roll power, net power, energy per unit mass and specific energy). The prediction models fitted the experimental data well (r2 = 0.88 ~ 0.95). The power and energy requirements for size reduction of wheat were highly correlated with the single kernel characteristics of wheat. Feed rate affected fast roll power, slow roll power and net power significantly. Roll gap had a significant effect on roller mill grinding. Additional milling tests were conducted by randomly selecting independent variables and covariates to verify the robustness and validity of the prediction models.
Transactions of the ASABE | 1982
E. Haque; Y. N. Ahmed; C. W. Deyoe
ABSTRACT DROPS in static pressure across columns of corn, sorghum, and wheat at various moisture contents were measured to determine the effect of grain moisture content at filling on resistance to airflow. Resistance to airflow decreased with increased grain moisture. The square of the correlation coefficient, R2, between the static pressure drops calculated by using a model and values measured experimentally were 0.99 for all grain tested. This means that the model fit very well with the experiment data. The result of this study enhances our knowledge about the effects of at-filling grain moisture content on the static pressure drop in grain and should help designers of high moisture-grain-aeration systems.
Transactions of the ASABE | 2001
M. C. Pasikatan; George A. Milliken; J. L. Steele; C. K. Spillman; E. Haque
The potential of single kernel properties of wheat (mean and standard deviation of hardness, size, and mass) and roller mill’s roll gap in modeling the size properties of first–break ground wheat was investigated. Full (seven variables) and reduced models (six variables) for break release (BR in log scale, or L_BR) and geometric mean diameter (GMD) were developed based on milling data from six wheat classes ground at five roll gaps. The models explained most of the variability in the experimental data and relationships obtained were consistent with previous research and millers’ experience. Roll gap and single kernel hardness had the most significant effects on L_BR and GMD. Reduced models that used a variable combining single kernel size and roll gap reduced some collinearities among single kernel properties and isolated the effect of single kernel mass from that of single kernel size. The effect of single kernel mass became significant in the reduced models. The models performed well in validation tests. Predictions using the L_BR model were better than an equation based only on roll gap. L_BR was linearly related to GMD. Because the L_BR model was wheat class–specific, it has potential for online roll gap control.
Transactions of the ASABE | 2000
Qi Fang; Milford A. Hanna; E. Haque; C. K. Spillman
Power and energy requirements for size reduction of wheat are affected by the physical and mechanical characteristics of wheat, and the operational parameters of the roller mill. Wheat milling tests were conducted using 204 samples of six classes and various varieties collected from around the United States. Backpropagation neural network models were designed, trained and validated for the prediction of power and energy requirements of wheat milling using a roller mill: fast roll power (Pf), slow roll power (Ps), net power (Pn), energy per unit mass (Em), and specific energy (Ea). Nine variables including physical properties of wheat samples and operational parameters of the roller mill were used as inputs of the networks. Each of the networks had only one layer of hidden neurons. Sensibility studies also were carried out to investigate effects of input variables on the output variables. The developed network models performed well during validation. Compared to the experimental data, the values of the root mean square error (RMS) and relative error (RE) of the predicted values were small, ranging from 0.34 to 0.73 for the RE values. The r2 values were higher than 0.98 for all five networks. The prediction accuracies of the neural network models were significantly improved compared to statistical models.
Transactions of the ASABE | 1994
p. Guritno; E. Haque
The net specific energy consumption, NSEC (energy per unit mass of milled product) and energy utilization, EU (energy per unit surface area of milled product) of a three-roller mill for grinding sorghum, wheat, and corn were evaluated. Four mill variables, namely fast roll speed, differential, roll gap setting, and corrugation configuration were considered. The NSEC and EU both decreased as the fast roll speed increased. They increased as the roller gap setting was reduced and as the differential speed decreased. When the rolls were set on dull-to-dull rather than sharp-to-sharp configuration, the NSEC increased, but the EU decreased. Dimensional analysis was used to develop a mathematical relationship between energy and size reduction for each type of grain in a three-roller mill based on particle sizes of the material and milled products. The experimental data correlated well with the model.
Cereal Chemistry | 2001
M. C. Pasikatan; E. Haque; J. L. Steele; C. K. Spillman; George A. Milliken
ABSTRACT In flour milling, a granulation sensor for ground wheat is needed for automatic control of a roller mills roll gap. A near-infrared (NIR) reflectance spectrometer was evaluated as a potential granulation sensor of first-break ground wheat using offline methods. Sixty wheat samples, ground independently, representing six classes and five roller mill gaps, were each used for calibration and validation sets. Partial least squares regression was used to develop the models with cumulative mass of size fraction as the reference value. Combinations of four data pretreatments (log (1/R), baseline correction, unit area normalization, and derivatives) and three wavelength regions (700–1,500, 800–1,600, and 600–1,700 nm) were evaluated. Unit area normalization combined with baseline correction or second derivative yielded models that predicted well each size fraction of first-break ground wheat. Standard errors of performance of 4.07, 1.75, 1.03, and 1.40 and r2 of 0.93, 0.90, 0.88, and 0.38 for the >1,041...