Numéro |
OCL
Volume 30, 2023
Palm and palm oil / Palmier et huile de palme
|
|
---|---|---|
Numéro d'article | 15 | |
Nombre de pages | 8 | |
Section | Agronomy | |
DOI | https://doi.org/10.1051/ocl/2023014 | |
Publié en ligne | 4 août 2023 |
Research Article
Labor productivity assessment of three different mechanized harvest systems in Colombian oil palm crops☆
Évaluation de la productivité de la main-d’œuvre de trois systèmes de récolte dans la culture du palmier à huile en Colombie
1
Research Results Validation Unit, Colombian Oil Palm Research Center (Cenipalma), Bogotá D.C., Colombia
2
Research Results Validation Unit, Colombian Oil Palm Research Center (Cenipalma), Barrancabermeja, Santander, Colombia
3
Research Results Validation Unit, Colombian Oil Palm Research Center (Cenipalma), Villavicencio, Meta, Colombia
4
University of Tennessee, Knoxville, United States
5
Investments and Plots of Meta (INPARME), Cabuyaro, Meta, Colombia
* Correspondence: mmosquera@cenipalma.org
Received:
11
August
2022
Accepted:
4
July
2023
Labor shortages are increasingly problematic in rural areas worldwide and, in particular, in the oil palm sector in Colombia. Therefore, alternative methods and systems that increase labor productivity, such as using machines for collecting and lifting fresh fruit bunches (FFB), are needed. In oil palm cultivation, the most labor-intensive process is harvesting. We aimed to assess the labor productivity (in t · FFB/person/day) of three harvesting systems using mechanized lifting systems (harvest A: manual cutting, manual harvesting using meshes, carts, and livestock and lifting using a hydraulic arm; harvest B: manual cutting, manual harvest using a tractor, and lifting using a side-turning container; and harvest C: manual cutting, mechanized harvest using a tractor-grabber, and lifting using a side-turning container). Two bunch density scenarios were considered. Data were collected from adult palm crops in three oil palm plantations in the Eastern Plains of Colombia, and similar crop yields were obtained. Labor productivity was 1.20–2.53 t · FFB/person/day depending on the FFB density and the harvest system. Finally, the cost per ton harvested was $ 8.9–$ 16.6 per ton, being lower in the systems that demanded fewer personnel. The highest labor productivity and the lowest cost per ton harvested were obtained for harvest C.
Résumé
La pénurie de main-d’œuvre est de plus en plus problématique dans les zones rurales du monde entier et, en particulier, dans le secteur du palmier à huile en Colombie. Par conséquent, les méthodes et systèmes alternatifs qui augmentent la productivité de la main-d’œuvre, comme l’utilisation de machines pour la collecte et le levage des régimes de fruits frais (FFB), sont nécessaires. Dans la culture du palmier à huile, le processus le plus demandeur en main-d’œuvre est la récolte. Nous avons cherché à évaluer la productivité de la main-d’œuvre (en t · FFB/personne/jour) de trois systèmes de récolte utilisant des systèmes de levage mécanisés (récolte A : coupe manuelle, récolte manuelle à l’aide de filets, de chariots et de bétail et levage à l’aide d’un bras hydraulique ; récolte B : coupe manuelle, récolte manuelle à l’aide d’un tracteur et levage à l’aide d’un conteneur à retournement latéral et récolte C : coupe manuelle, récolte mécanisée à l’aide d’un tracteur à pince et levage à l’aide d’un conteneur à rotation latérale). Deux scénarios de densité de FFB ont été envisagés. Les données ont été collectées pour des palmiers adultes dans trois plantations des plaines orientales de Colombie, et des rendements similaires ont été obtenus. La productivité du travail était de 1,20–2,53 t · FFB/personne/jour en fonction de la densité de FFB et du système de récolte. Enfin, le coût par tonne récoltée était de 8,9 à 16,6 dollars par tonne, étant plus bas dans les systèmes qui nécessitaient moins de personnel. La productivité du travail la plus élevée et le coût le plus bas par tonne récoltée ont été obtenus pour la récolte C.
Key words: yield / mechanization / E. guineensis / labor yield
Mots clés : rendement / mécanisation / E. guineensis / rendement du travail
© M. Mosquera-Montoya et al., Published by EDP Sciences, 2023
This is an Open Access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
Highlight
Labor shortages are increasingly problematic in rural areas worldwide and the Colombian oil palm sector is not an exception. This study presents results from a comparison among three mechanized harvesting systems implemented in Colombian oil palm crops and, it provides useful insights on harvest labor productivity.
1 Introduction
Oil palm harvest is a very difficult task, requiring specialized labor (Yusuff et al., 2007; Azman et al., 2015; Ruíz Álvarez et al., 2020). The harvest in oil palm crops comprises a set of sub-processes whose objective is to cut fresh fruit bunches (FFB) and deposits them in containers or trucks, which will transport them to the palm oil mill. Overall, these sub-processes are defined as FFB cutting, FFB collection (until the FFB are delivered to the stockpile areas), and the lifting of the FFB to the containers or trucks in these stockpile areas.
FFB cutting is a critical process because it determines the oil content and acidity of the raw material (FFB) from which palm oil is extracted (Caicedo et al., 2017; Hernández et al., 2020; Sinambela et al., 2020). Likewise, both FFB lifting and the transportation to the palm oil mill must be carried out as soon as possible. This is because once the FFB are cut, the acidification process of the oil contained in the fruit begins, thus affecting the quality of the final product (i.e., palm oil). The acidification of the oil contained in the fruits only stops when the FFB are treated in autoclaves (Corley and Tinker, 2016).
The harvest cost constitutes 18%–20% of the production costs in Colombian oil palm crops. The workforce responsible for the harvest represents about 85% of the total labor cost and this is the cultivation activity in the palm oil agribusiness that requires the most workers (Mosquera-Montoya et al., 2021, 2022; Ruíz Álvarez et al., 2022). Indeed, in Colombia, of the 28 average person days required for the cultivation of one hectare of oil palms per year, 17 are needed for the harvest (Ruíz Álvarez et al., 2022). It must be noted that the price of labor in Colombia is quite high with a daily payment of $ 17 to field workers, which threatens Colombian oil palm competitivenes (Ruíz Álvarez et al., 2022).
This scenario is worsened by the gradual decrease in the labor supply in rural areas. In fact, the rural population has been aging and decreasing due to the migration of young adults out of these areas (Urdinola, 2014; Otero-Cortés, 2019; Coronel, 2020). This explains the search for mechanized harvest systems by the managers of oil palm cultivation companies in Colombia.
Notably, most mechanized technologies adopted in Colombia have been developed in Malaysia, where the shortage of workers also afflicts oil palm cultivation. The Malaysian Palm Oil Board has developed technologies such as mechanized knifes for FFB cutting and mini-tractors, hydraulic arms (grabber), and mechanized loose fruit pickers for FFB lifting (Hitam et al., 1994; Shuib et al., 2004; Jelani et al., 2008; Aramide et al., 2015; Jelani, 2018; Ruíz Álvarez et al., 2020). Although mechanization leverages the agricultural labor, its implementation depends on the characteristics of the soil, the availability of financial resources, the area to be served, the crop yield, among other factors (Ortiz-Martínez et al., 2016; Mosquera-Montoya, 2022).
Regarding the harvest of FFB in the Eastern Plains of Colombia, some companies that are leaders in the adoption of good management practices and have some of the highest yields in the market have implemented the use of machines to complement manual labor.
Here, we show the results of the time and motion studies performed to compare the costs and labor productivity of the harvest systems previously mentioned. The effect of seasonality on the labor productivity and harvest costs was also considered. This work is relevant because our results will help the managers of oil palm companies making decisions about the adoption of mechanized technologies to increase the labor productivity of FFB harvest.
2 Materials and methods
2.1 Harvest systems assessed
The harvest process was documented through field observations of the different sub-processes comprising the harvest. For every system, the time was recorded over the whole working day. For the analysis, the harvest was defined as being comprised of FFB cutting, FFB collecting, and FFB lifting. In all cases, the assessed operators were chosen together with the plantation managers, considering the historical records of payments received as a starting point because the amount of FFB harvested are considered for payroll. We aimed to characterize the selected operators by obtaining a labor yield as close as possible to the average labor yield value of the plantation. We addressed three different harvest systems, whose main operations are described below. It is important to highlight that this study was undertaken at plantations with timely harvest cycles, so loose fruit picking was not a task to be performed by an extra-worker.
2.1.1 Harvest with manual cutting, manual FFB collection using meshes, carts, and buffaloes, and lifting using a hydraulic arm (harvest A)
In this system, the harvest begins by cutting the mature FFB using an oil palm harvesting sickle. Then, one must prepare the bunches (peduncle cutting) and picking loose fruit in sacks. Afterwards, FFB are collected from the ground, and placed on a mesh located inside a cart. This cart is pulled by a buffalo. Once the mesh is filled with the FFB, the cart is taken from inside the lot to the stockpile area. There, the lifting process is performed using a hydraulic arm that collects the FFB-filled meshes from the ground and places them in the containers/trucks that will transport the FFB to the oil palm mill. A time study was performed during 15 working days in two contrasting crop yield scenarios: peak (8 days) and off-peak (7 days) harvest.
2.1.2 Harvest with manual cutting, manual FFB collection using a tractor, and lifting using a side-turning container (harvest B)
In this system, the harvest begins by cutting the mature FFB using a Malay knife. Then, one must prepare the bunches and place them along the harvesting paths inside the lots, so it makes it easier for the FFB to be collected. Also, this operator picks loose fruits in sacks and once the sack is full it is placed next to the FFB to be picked. Afterwards, FFB are collected from the ground and are deposited in a side-turning container pulled by a tractor. The side turning container has a hydraulic scissor that allows the operator to lift the container vertically and once at the required height the containers turn to the side, so it dumps FFB to a truck container. Once the side-turning container is full, the tractor transports it to the stockpile area. There, the FFB lifting consists of transferring the bunches from the side-turning container into the containers/trucks that will transport the FFB to the oil palm mill. A time study was performed during 13 working days in two contrasting crop yield scenarios: peak (7 days) and off-peak (6 days) harvest.
2.1.3 Harvest with manual cutting, mechanized FFB collection using a tractor-grabber, and lifting using a side-turning container (harvest C)
In this system, the harvest begins by cutting the mature FFB using a Malay knife. Then, one must prepare the bunches and place them along the traffic rows inside the lots, so it makes it easier for the FFB to be collected. Additionally, this operator picks loose fruits in sacks and once the sack is full it is placed next to the FFB to be picked. Afterwards, with the help of the grabber, FFB are collected and deposited in the side-turning container. Once the side-turning container is full, the tractor transports it to the stockpile area. There, FFB lifting, which consists of depositing the bunches in the containers/trucks, is performed. A time study was performed during 24 working days in two contrasting crop yield scenarios: peak (16 days) and off-peak (8 days) harvest.
2.1.3.1 Location
The three plantations included in the study are at the Eastern Plains (Meta Department) and have above average crop yield. Geographically, they share the same landscape and climate variables are alike. The study was performed in oil palm lots in the adult stage (with more than 7 years). Table 1 summarizes some characteristics of interest of the plantations included in the study and the corresponding predominant harvesting system, which can also be seen in Figure 1.
Characteristics of interest of the plantations studied.
Fig. 1 Bunch harvesting and lifting systems studied. |
2.2 Estimation of the personnel required for each harvesting system
Each plantation has its own harvest system design based on the resources available; therefore, the logistics, job design, labor requirements, and equipment used vary from plantation to plantation.
2.2.1 Harvest A
One operator is devoted to cutting the FFB (using a Malay knife) and another one to collecting the FFB (using a mesh, cart, and buffalos) and picking loose fruit in sacks. This second operator is responsible for taking the FFB to the stockpile area where the mesh is filled in (the buffalos pull the cart). Once the mesh is released, it returns to the lots to continue the collection of the FFB until the end of the working day. At the stockpile area, a third operator is responsible for weighing and recording the weight of each mesh; a fourth operator uses the hydraulic arm to collect each meshes with the FFB from the ground and deposit them in a container. Another operator is responsible for handling each mesh to allow the emptying of its content into the container (Fig. 1).
2.2.2 Harvest B
An operator is devoted to cutting the FFB (using a Malay knife). Another operator prepares the FFB (the peduncle of each bunch is cut and the FFB are placed at the edge of the traffic system). Additionally, this operator picks loose fruits in sacks and once the sack is full it is placed next to the FFB to be picked. A third operator loads the FFB manually and deposits them in the side-turning container. A fourth operator drives the tractor that pulls the side-turning container. Once the side-turning container is full, the FFB are transferred to the stockpile area. Once the FFB are deposited in the vehicle that will take them to the extraction plant, the tractor-side-turning container returns to the lots to continue the collection of the FFB until the end of the working day.
2.2.3 Harvest C
An operator is devoted to cutting the FFB (using a Malay knife). Another operator prepares the FFB (cutting the peduncle of each bunch and placing it on the edge of the traffic system). Additionally, this operator picks loose fruits in sacks and once the sack is full it is placed next to the FFB to be picked. Another operator drives the tractor and operates the grabber to fill the side-turning container. Once the side-turning container is full, the FFB are transported to the stockpile area. Once the FFB are deposited in the vehicle that will take them to the extraction plant, the tractor-grabber-side-turning container returns to the lots to continue the collection of the bunches, until the end of the working day.
The quantification of the labor requirements was carried out considering the performance of every operator involved in each of the harvesting systems assessed. The results are reported as tons of FFB harvested per man per day, divided by subprocess. In other words, the number of people required for FFB cutting, collection, and lifting was determined.
2.3 Estimation of the labor productivity by harvesting system
The yield of the harvest was estimated from the time and movement studies. Following the methodology for the time and movement studies performed in oil palm crops by Hernández et al. (2022), a process diagram was first elaborated and then we recorded the times for each of the processes comprising the diagram (Tab. 2)
To estimate the standard yield of all the harvesting systems, an overtime factor of 9% was considered to compensate for the basic fatigue and the time needed for the personal needs of the workers (Hernández et al., 2022). A variable value, depending on the nature of each system, was also estimated to compensate for the effect of environmental factors, such as temperature, the use of body strength, and noise on the resulting yield (Hernández et al., 2022).
To determine the impact of fruit availability on the yield, two bunch density scenarios (30% and 60%) were considered. These refer to the relationship between the number of bunches harvested and the number of palms planted in the harvested area during a working day (number FFB/number of sown palms). A 100% density indicates that the number of bunches harvested was equal to the number of palms planted, i.e., that an average of one bunch was obtained per palm.
Labor yield was estimated as tons of bunches harvested per day (understood as one working day) and hectares harvested per day. Data analysis was performed using descriptive statistics. Finally, to corroborate the performance of the harvesting equipment, the payment reports of each plantation were considered. The results involving the harvest system, considering the area covered in one day and the tons harvested in one day, are also shown.
Harvest steps and their corresponding functions.
2.4 Cost analysis
For the cost estimate, we considered that the investment in capital goods (CAPEX) and the operating expenses of the harvest work (OPEX) were constant during 2022. The CAPEX was estimated considering the price of the machine, the tools required, and the financing cost (assuming that the machine is 100% financed). The annual value necessary for the replacement of the machinery was determined by considering that the useful life of the tractors, hydraulic arms, side-turning containers, carts, livestock, and tools is 15, 10, 10, 10, and 10 years and 1 year, respectively (Srivastava et al., 2013). For machines, tools and buffaloes the depreciation was calculated in a straight-line manner. Regarding, salvage value at the end of useful life, we considered a 10% value with respect to the buying price and, the price data come from plantation records. In Colombia, there is market for old machinery and even for old male buffaloes that reached the end of their working life. The former are bought by growers lacking financial resources to buy new equipment and the latter are bought at informal meat markets for human consumption in rural areas. It must be noted that in Colombia plantations tend to buy male buffaloes that are already trained to work at oil palm fields. Other entrepreneurs oversee raising and training buffaloes.
The financial cost was estimated using the interest rate offered by FINAGRO, the main source of subsidized funding for the agroindustry in Colombia, corresponding to the annual effective rate for fixed-term deposits plus 7% (DTF + 7%). The mean annual effective DTF for 2022 was 8.92%.
The OPEX was estimated considering the labor and implements required yearly for harvesting. The labor cost was calculated considering the number of workers required by the harvest teams and the daily wage corresponding to each process. The maintenance costs for operating the machinery and equipment paid by the companies were also considered, as were the fuel costs (fuel oil). The US gallon price of fuel oil was defined as the average 2022 value in the area ($ 2.21/gallon).
3 Results and discussion
3.1 Team conformation according to harvesting system
The data in Table 3 reflects the team required to operate the whole harvesting system, so one may require more than one team to harvest the entire plantation. The conformation of the harvest and lifting teams depended on the capacity of the lifting equipment. Table 3 shows the number of operators required for each of the sub-processes that comprise the harvest process for each harvest system. Note that the harvest A system has the capacity to harvest between 92.4 t · FFB/day, in times of low bunch density, and 111.6 t · FFB/day, in times of high bunch density (Tab. 4). This implies that the harvest work force that must be available in the field in a working day is composed of 77 and 87 operators during low and high bunch density seasons, respectively (Tab. 3).
The harvest B system has the capacity to harvest between 15.3 t · FFB/day, in low bunch density times, and 20 t · FFB/day, in high bunch density times (Tab. 4). This implies a requirement of nine workers, both in low and high bunch density times (Tab. 3).
Finally, the harvest C system has the capacity to harvest between 20.3 t · FFB/day, in low bunch density times, and 30 t · FFB/day, in high bunch density times (Tab. 4). This implies that the harvest team consists of 11 and 12 workers in low and high bunch density times, respectively.
Personnel required in the harvesting teams according to the harvesting system.
Work performance and harvest system indicators.
3.2 Labor yield
Depending on the harvest system used, the labor yield may depend on the bunch density. Table 4 summarizes the yields reported for each type of operator that belongs to the harvest team in each of the assessed systems. During the high bunch density season, each worker can obviously harvest more bunches (up to 43% more) than during the low season (Tab. 4). However, the difference in yield between the productivity scenarios was greater in the harvest B and C systems (36% and 46%) than in the harvest C system because the work specialization required was greater, resulting in a higher labor productivity. This coincides with the results reported by Diamantidis and Chatzoglou (2019) (Tab. 3).
The results obtained are consistent with those reported in previous studies. For example, for manual cutting with bunch collection using carts, a value of 1.16 t · FFB/person/day was reported and for manual cutting with collection using buffalos, a maximum of 2.5 t · FFB/person/day (Shuib et al., 2010; Corley and Tinker, 2016) (Tab. 4) was reported. Finally, the yield per person obtained using the grabber lifting harvesting system was similar to that reported in previous studies (Shuib et al., 2010; Sierra and Alfonso, 2010; Pebrian and Yahya, 2013; Ho and Subramaniam, 2018; Shuib et al., 2020).
Note that the yield per operator ranges from 1.2 to 2.32 t · FFB/person/day, i.e., the harvest systems studied show a labor productivity that was within the range reported in studies on adult oil palm crops (Tab. 4).
Finally, in low bunch density times, more hectares can be harvested than that in high bunch density times, i.e., the coverage area was greater (Tab. 4); however, the harvest teams took longer to move around the lots during the harvest rather than using that time for the actual harvest. Therefore, the harvest objectives should not be set in terms of the area covered but instead in terms of the tons to be harvested per day. The indicator of the hectares harvested per person per day (Tab. 4) sheds light on this, i.e., the lower the crop yield, the greater the area that an operator can cover.
3.3 Cost of harvest
Among all systems, the harvest A system showed the highest cost per day in both bunch density scenarios: $ 1.533 and $ 1.698 in low and high bunch density scenarios, respectively (Tab. 5). This was due to the large number of cutters and collectors who ensured the loading of the meshes with FFB throughout the working day, so that the use of the hydraulic arm was feasible. Consequently, labor stood out as the costliest category (82.4% and 84% of the total cost). Likewise, the harvest A system showed the highest daily capital cost ($ 69 and $ 78 per day), which was derived from the investment in the meshes, trucks, hydraulic arm, carts, and livestock. Consequently, the financing, maintenance, and fuel costs were also the highest for the harvest system.
The harvest B system showed the lowest daily cost among the three assessed systems, being $ 239 and $ 236 in the low and high bunch density seasons, respectively. In the harvest B system, labor was the costliest item (62% of the total cost) in both productivity scenarios. The investment in machinery and equipment was concentrated on the tractor, side-turning container, and FFB cutting tools. The behavior of the cost of the harvest B system indicated that the estimated daily cost in the low bunch density season was higher than that in the high bunch density season. This is a consequence of the fact that the harvesting operations are more efficient when more FFB are available and that the number of operators comprising the team is constant.
Conversely, the harvest C system showed a daily cost of $ 250 in the low bunch density season and $ 268 in the high bunch density season. Notably, the cost was higher than that of the harvest B system due to the capital cost associated with purchasing the grabber and because two more people are required in the harvest team. The harvest C system reports a labor force share ranging from 72%, in low bunch density times, to 74%, in high bunch density times.
Finally, to make a fair comparison the three assessed harvest systems in terms of cost, the cost per ton harvested should be investigated (Tab. 5). During times of high availability of bunches, the harvest B and harvest C systems showed the lowest unit costs: $ 11.8 and $ 8.9, respectively (Tab. 5). Specifically, the cost of the harvest C system was 21.3% lower than that of the harvest B system and 41.5% lower than that of the harvest A system.
Daily harvest system cost and cost per ton.
4 Conclusions
The labor productivity of harvesting systems depends on the crop yield, which is reflected in the density of bunches that the harvesting teams encounter when performing their job. Thus, the low yield of the crop translates into a higher harvest cost, especially in the lower bunch density season. Therefore, increasing the productivity in terms of the mean bunch weight and the number of bunches per hectare by ensuring proper agronomic management, is important.
Under high productivity conditions, which are associated with a higher bunch density, the harvest B and C systems were found to be economically feasible and resulted in yields greater than 2 t · FFB/person/day and in costs per ton of less than $ 12/t · FFB, even when labor availability was limited.
The performance of the harvesting system depended on guaranteeing the logistics and infrastructure requirements, the existence of passable roads, and work teams designs that ensured the lack of downtime in the harvest process, which is especially important in systems requiring high work specialization.
This study did not consider the effect of the traffic conditions inside the lots (well-drained soils, good management of covers, and plates) and bunch visibility (proper pruning) on the work performance. All these aspects should be addressed in our future research work. Finally, this study was performed in well-managed plantations with timely harvest cycles that do not incur in significant extra costs associated with collecting loose fruit. In plantations with longer harvest cycles, studying the process of collecting loose fruit may be necessary.
Conflicts of interest
The authors declare that there is no conflict of interests in relation to this article.
Acknowledgements
The authors express their gratitude to the Fondo de Fomento Palmero (FFP) for providing the financial resources required to conduct this study.
References
- Aramide BP, Owolarafe OK, Adeyemi NA. 2015. Comparative evaluation of the performance of motorized and pole and knife oil palm fruit bunch harvester. Agric Eng Int: CIGR J 17(4): 165–172. [Google Scholar]
- Azman I, Siti A, Zuraihan S. 2015. Labour productivity in the Malaysian oil palm plantation sector. Oil Palm Ind Econ J 15(2): 10. [Google Scholar]
- Caicedo A, Millán E, Ruiz-Romero R, Romero H. 2017. Pocket guide Harvest criteria in hybrid cultivars: Characteristics aimed at assessing the optimum harvest point in oil palm. In: Moreno Muñoz Y, Mantilla E, eds. Fedepalma (Cenipalma, Vol. 1, Issue 118). [Google Scholar]
- Corley RH, Tinker PB. 2016. The palm oil, 5th ed. [Google Scholar]
- Coronel J. 2020. Rural backwardness in Colombia. Nat Union School 112: 60. [Google Scholar]
- Diamantidis AD, Chatzoglou P. 2019. Factors affecting employee performance: An empirical approach. Int J Prod Perform Manage 68(1): 171–193. https://doi.org/10.1108/IJPPM-01-2018-0012. [CrossRef] [Google Scholar]
- Hernández D, Rodríguez J, Daza ES, Lemus L, Mosquera M. 2020. Optimum bunch harvest point for interspecific OxG (Coari x La Mé) hybrids sprayed with growth regulators. Palm Grow 2018: 16–17. [Google Scholar]
- Hernández D, Daza ES, Acosta Y, Mosquera-Montoya M. 2022. Assessing the labor productivity of two methods of artificial pollination in oil palm crops from Colombia. OCL 29(12): 1–10. [CrossRef] [EDP Sciences] [Google Scholar]
- Hitam A, Shuib AR, Jalani BS. 1994. Mechanical loader of oil palm bunches – The grabber. Palmas 15(19): 45–48. https://publicaciones.fedepalma.org/index.php/palmas/article/view/422/422. [Google Scholar]
- Ho SO, Subramaniam K. 2018. The future of mechanization in oil palm plantations (a Malaysian experience). In: XIX International Conference on Oil Palm International Conference on Oil Palm. https://web.fedepalma.org/conferenciainternacional/wp-content/uploads/2022/09/5-THE-FUTURE-IN-OIL-PALM-MECHANISATION-Columbia-Conf-2018-R2_compressed.pdf. [Google Scholar]
- Jelani A. 2018. Development and evaluation of a new generation oil palm motorised cutter (Cantas Evo). J Oil Palm Res. https://doi.org/10.21894/jopr.2017.0000. [Google Scholar]
- Jelani AR, Hitam A, Jamak J, Noor M, Gono Y, Ariffin O. 2008. CantasTM – A tool for the efficient harvesting of oil palm fresh fruit bunches. J Oil Palm Res 20: 548–558. [Google Scholar]
- Mosquera-Montoya M. 2022. Is Colombian palm oil growing able to be more competitive? Palm Grow 603: 942. [Google Scholar]
- Mosquera-Montoya M, Ruíz Álvarez E, Munévar D, et al. 2021. 2020 production costs study on benchmark companies from Colombian palm oil agribusiness. Palms 42(2020): 8–20. [Google Scholar]
- Mosquera-Montoya M, Ruíz Álvarez E, Munévar-Martínez DE, Estupiñán M, Guerrero ÁE, Cala S. 2022. 2021 production costs study on benchmark companies from Colombian palm oil agribusiness. Palms 43(4): 26–39. [CrossRef] [Google Scholar]
- Ortiz-Martínez G, Palacios-Rangel M, Cervantes-Escoto F. 2016. Agricultural mechanization. In: 5th National Conference on Social Sciences. https://doi.org/10.13140/RG.2.1.5030.6968. [Google Scholar]
- Otero-Cortés CA. 2019. The rural labor market in Colombia, 2010–2019. In: Working Papers on Local and Urban Economy (vol. 281). https://doi.org/10.1017/CBO9781107415324.004. [Google Scholar]
- Pebrian D, Yahya A. 2013. Mechanized system for in-field oil palm fresh fruit bunches collection-transportation. AMA, Agric Mech Asia, Afr Latin Am 44: 7–14. [Google Scholar]
- Ruíz Álvarez E, Banguera J, Toro WP, Hernández, JH, Arévalo J, Montoya MM. 2020. Technical and economic assessment of two harvesting tools for young Elaeis oleifera x E. guineensis oil palms. Colombian Agron 38(3): 418–428. https://doi.org/10.15446/agroncolomb.v38n3.85303. [CrossRef] [Google Scholar]
- Ruíz Álvarez E, Mosquera-Montoya M, Munevar DE, Vargas LE, Vélez ZJC. 2022. Labor productivity in oil palm plantations in Colombia. Boletín Técnico 43. https://doi.org/10.56866/9789588360966. [Google Scholar]
- Shuib AR, Jelani AR, Jahis S, et al. 2004. Development of a machine for harvesting tall palms. MPOB TT 217: 1–2. http://palmoilis.mpob.gov.my/publications/TOT/TT-217.pdf. [Google Scholar]
- Shuib AR, Mohd RK, Mohd SD. 2010. Enhancing field mechanization in oil palm management. Oil Palm Bull 61: 1–10. http://palmoilis.mpob.gov.my/publications/OPB/opb61-Rahim.pdf. [Google Scholar]
- Shuib AR, Radzi MKFM, Bakri MAM, Khalid MRM. 2020. Development of a harvesting and transportation machine for oil palm plantations. J Saudi Soc Agric Sci 19(5): 365–373. https://doi.org/10.1016/j.jssas.2020.05.001. [Google Scholar]
- Sierra M, Alfonso O. 2010. Mechanical lifting of oil palm bunches in Colombia’s Eastern Zone. Palms 31(4): 60–67. [Google Scholar]
- Sinambela R, Mandang T, Subrata IDM, Hermawan W. 2020. Application of an inductive sensor system for identifying ripeness and forecasting harvest time of oil palm. Sci Hortic (Amsterdam) 265: 109231. https://doi.org/10.1016/j.scienta.2020.109231. [CrossRef] [Google Scholar]
- Srivastava AK, Goering CE, Rohrbach RP, Buckmaster DR. 2013. Engineering principles of agricultural machines, 2nd ed. https://doi.org/10.13031/epam.2013. [Google Scholar]
- Urdinola P. 2014. Demographic characterization of the rural Colombian migrant population and identification of information needs on domestic migration. [Google Scholar]
- Yusuff RM, Doi MAC, Khalid MR, Chia YP, Muslim MAM. 2007. Work posture risk analysis of mechanical loader operators in oil palm plantations. In: Proceedings of Agriculture Ergonomics Develpoment Conference, January 2017, pp. 118–123. http://agris.upm.edu.my:8080/dspace/handle/0/8027. [Google Scholar]
Cite this article as: Mosquera-Montoya M, Munévar Martínez DE, Ruíz Álvarez E, Fontanilla-Díaz CA, Salamanca ÓH, Obregón Esguerra JM. 2023. Labor productivity assessment of three different mechanized harvest systems in Colombian oil palm crops. OCL 30: 15.
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Fig. 1 Bunch harvesting and lifting systems studied. |
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