Abstract
Foreign-material content determination in uncleaned peanuts based on dielectric properties and bulk density measurements by microwave techniques is presented in this paper. A microwave free-space transmission technique was used at 10 GHz. Two measurement systems for measuring the dielectric properties of cleaned unshelled peanuts (nine-peanut pods) and uncleaned unshelled peanuts placed in polycarbonate sample holder (12.1 cm × 21 cm × 20.5 cm) were developed and integrated in one single measuring unit. The nine-peanut-pods system provided the cleaned unshelled peanuts moisture content which was used in the algorithms for foreign material content determination. The dielectric properties and bulk density measurements of the uncleaned unshelled peanut sample were related to the foreign-material content. These parameters, namely bulk density and dielectric properties of uncleaned peanuts and cleaned unshelled moisture content were supplied to machine learning algorithms, linear regression technique and artificial neural network algorithms. Results obtained with the artificial neural network algorithm showed the best estimate of foreign material content with a standard error of performance of 1.36% compared to that obtained with the linear regression algorithm with a standard of performance of 2.39%.
Acknowledgements
This research was funded by the Georgia Federal-State Inspection Service/Georgia Institute of Technology (Agreement Number 58-6040-7-018). This research was supported by the U.S. Department of Agriculture, Agricultural Research Service (USDA-ARS) under contract for service with the Oak Ridge Institute for Science and Education, managed by Oak Ridge Associate University under the ARS Research Participation Program. The authors would like to thank Dr. Stuart O. Nelson for his insightful comments and suggestions. The authors also express their appreciation to Anna Thurmond, student worker, University of Georgia, for conscientious effort in helping with the measurements.