Improving oil palm fresh fruit bunch grading system via software and hardware modifications

An improved technique is proposed on how to increase the quality of oil palm ripeness grading in the Real Time Fresh Fruit Bunch (FFB) Oil Palm Grading System. This technique improvised the existing prototype grading system into a higher level “towards commercialization” grading machine. The i...

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Main Author: Shabdin, Muhammad Kashfi
Format: Thesis
Language:English
Published: 2016
Online Access:http://psasir.upm.edu.my/id/eprint/66960/1/FS%202016%2075%20IR.pdf
http://psasir.upm.edu.my/id/eprint/66960/
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spelling my.upm.eprints.669602019-02-13T00:56:12Z http://psasir.upm.edu.my/id/eprint/66960/ Improving oil palm fresh fruit bunch grading system via software and hardware modifications Shabdin, Muhammad Kashfi An improved technique is proposed on how to increase the quality of oil palm ripeness grading in the Real Time Fresh Fruit Bunch (FFB) Oil Palm Grading System. This technique improvised the existing prototype grading system into a higher level “towards commercialization” grading machine. The improved grading machine changed the hardware design and system. Previously, the grading system used two software platforms which were MATLAB and LabVIEW and this was time consuming problem. This problem is due to the size of the image captured which is 1Gb per image. Therefore, the algorithm was migrated to a standalone software using LabVIEW. In this improved implementation, correctly human graded samples of oil palm bunches were image captured and analyzed for two categories. As a result, two sets of low resolved intensity images are captured by the Charged Coupled Device (CCD) camera. The grading system involves the hardware component which is the CCD camera and the software algorithm that is, the LabVIEW software for imaging purposes. The image analysis uses Artificial Neural Network (ANN) technique which includes training and testing of data. Model for the ANN is created based on the training data which is stored in the software memory. The ANN model is then used in the testing process where the software decides the grade of the oil palm fruit bunch. A significant improvement in the design specifications is made between the prototype and the new grading machine, which include weight measurement, sorting process, grip belting and feeder system. In the new machine, the speed for grading 60 bunches per minute is obtained compared to the existing system which is 10 bunches per minute. The design specification shows that the machine completes this process in one minute 33 seconds. 2016-12 Thesis NonPeerReviewed text en http://psasir.upm.edu.my/id/eprint/66960/1/FS%202016%2075%20IR.pdf Shabdin, Muhammad Kashfi (2016) Improving oil palm fresh fruit bunch grading system via software and hardware modifications. Masters thesis, Universiti Putra Malaysia.
institution Universiti Putra Malaysia
building UPM Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Putra Malaysia
content_source UPM Institutional Repository
url_provider http://psasir.upm.edu.my/
language English
description An improved technique is proposed on how to increase the quality of oil palm ripeness grading in the Real Time Fresh Fruit Bunch (FFB) Oil Palm Grading System. This technique improvised the existing prototype grading system into a higher level “towards commercialization” grading machine. The improved grading machine changed the hardware design and system. Previously, the grading system used two software platforms which were MATLAB and LabVIEW and this was time consuming problem. This problem is due to the size of the image captured which is 1Gb per image. Therefore, the algorithm was migrated to a standalone software using LabVIEW. In this improved implementation, correctly human graded samples of oil palm bunches were image captured and analyzed for two categories. As a result, two sets of low resolved intensity images are captured by the Charged Coupled Device (CCD) camera. The grading system involves the hardware component which is the CCD camera and the software algorithm that is, the LabVIEW software for imaging purposes. The image analysis uses Artificial Neural Network (ANN) technique which includes training and testing of data. Model for the ANN is created based on the training data which is stored in the software memory. The ANN model is then used in the testing process where the software decides the grade of the oil palm fruit bunch. A significant improvement in the design specifications is made between the prototype and the new grading machine, which include weight measurement, sorting process, grip belting and feeder system. In the new machine, the speed for grading 60 bunches per minute is obtained compared to the existing system which is 10 bunches per minute. The design specification shows that the machine completes this process in one minute 33 seconds.
format Thesis
author Shabdin, Muhammad Kashfi
spellingShingle Shabdin, Muhammad Kashfi
Improving oil palm fresh fruit bunch grading system via software and hardware modifications
author_facet Shabdin, Muhammad Kashfi
author_sort Shabdin, Muhammad Kashfi
title Improving oil palm fresh fruit bunch grading system via software and hardware modifications
title_short Improving oil palm fresh fruit bunch grading system via software and hardware modifications
title_full Improving oil palm fresh fruit bunch grading system via software and hardware modifications
title_fullStr Improving oil palm fresh fruit bunch grading system via software and hardware modifications
title_full_unstemmed Improving oil palm fresh fruit bunch grading system via software and hardware modifications
title_sort improving oil palm fresh fruit bunch grading system via software and hardware modifications
publishDate 2016
url http://psasir.upm.edu.my/id/eprint/66960/1/FS%202016%2075%20IR.pdf
http://psasir.upm.edu.my/id/eprint/66960/
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score 13.160551