Abstract

The oil yield, measured in oil extraction rate per hectare in the palm oil industry, is directly affected by the ripening levels of the oil palm fresh fruit bunches at the point of harvesting. A rapid, non-invasive and reliable method in assessing the maturity level of oil palm harvests will enable harvesting at an optimum time to increase oil yield. This study shows the potential of using Raman spectroscopy to assess the ripeness level of oil palm fruitlets. By characterizing the carotene components as useful ripeness features, an automated ripeness classification model has been created using machine learning. A total of 46 oil palm fruit spectra consisting of 3 ripeness categories; under ripe, ripe, and over ripe, were analyzed in this work. The extracted features were tested with 19 classification techniques to classify the oil palm fruits into the three ripeness categories. The Raman peak averaging at 1515 cm−1 is shown to be a significant molecular fingerprint for carotene levels, which can serve as a ripeness indicator in oil palm fruits. Further signal analysis on the Raman peak reveals 4 significant sub bands found to be lycopene (ν1a), β-carotene (ν1b), lutein (ν1c) and neoxanthin (ν1d) which originate from the C=C stretching vibration of carotenoid molecules found in the peel of the oil palm fruit. The fine KNN classifier is found to provide the highest overall accuracy of 100%. The classifier employs 6 features: peak intensities of bands ν1a to ν1d and peak positions of bands ν1c and ν1d as predictors. In conclusion, the Raman spectroscopy method has the potential to provide an accurate and effective way in determining the ripeness of oil palm fresh fruits.

Highlights

  • The oil yield, measured in oil extraction rate per hectare in the palm oil industry, is directly affected by the ripening levels of the oil palm fresh fruit bunches at the point of harvesting

  • The samples taken are from the Elaeis guineensis DxP species, which is a hybrid between the Elaeis guineensis fo. dura and the Elaeis guineensis fo. pisifera species

  • This was accomplished by peeling a thin layer of the skin from the oil palm fruitlet using a scalpel, which was transferred to a microscope slide so that it can be placed under the Raman microscope

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Summary

Introduction

The oil yield, measured in oil extraction rate per hectare in the palm oil industry, is directly affected by the ripening levels of the oil palm fresh fruit bunches at the point of harvesting. The Raman spectroscopy method has the potential to provide an accurate and effective way in determining the ripeness of oil palm fresh fruits. If the fruit mesocarp outer most layer turn to a yellowish orange color and if around 10 loose fruitlets have detached from their sockets and fallen on the ground, it means the fruit bunch is ready to be ­harvested[7]. This conventional method is highly dependent on the unchartered technique of the palm fruit grader’s experience and intuition to determine the ripeness accurately which is not repeatable and prone to significant human error. Measurement of the fluorescence property of the oil palm bunch using fluorescence sensor has been previously i­ntroduced[30]

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