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Researchers Introduce AI Tool to Help Olive Farmers Predict Harvest Timing

Using machine learning to analyze a range of data points from model farms, researchers were able to predict the timing of the olive harvest with 90 percent accuracy.
Abstract representation of green binary code with flowing patterns and numbers in a digital landscape. - Olive Oil Times
By Simon Roots
Jul. 29, 2024 16:03 UTC
Summary Summary

The Predic 1 Operational Group suc­cess­fully devel­oped a plat­form to pre­dict olive har­vests up to an entire sea­son in advance with up to 90 per­cent accu­racy, using data min­ing method­olo­gies and machine learn­ing algo­rithms. The project, funded by European agri­cul­tural funds, aims to pro­vide a freely avail­able web-based appli­ca­tion to improve farm man­age­ment and resource opti­miza­tion in the olive sec­tor, with the poten­tial to enhance deci­sion-mak­ing and sus­tain­abil­ity in the indus­try.

Following more than three years of devel­op­ment, the results of the Predic 1 Operational Group’s work were pre­sented last month at a con­fer­ence in Mengíbar, Jaén.

The group’s remit was to deliver a plat­form capa­ble of pre­dict­ing olive har­vests an entire sea­son in advance, a goal they said they accom­plished with an accu­racy of up to 90 per­cent.

The work was car­ried out by a con­sor­tium com­pris­ing the University of Jaén, Cetemet, Citoliva, Cooperativas Agro-ali­men­ta­rias de Andalucía, a farm­ers’ union, and Nutesca, using tra­di­tional Picual olive groves in Jaén, Córdoba and Granada as test cases.

See Also:Researchers in Andalusia Develop AI Tool to Improve Irrigation Efficiency

According to María Isabel Ramos, a pro­fes­sor at the University of Jaén’s Department of Cartographic, Geodetic and Photogrammetric Engineering and cor­re­spond­ing author of a 2022 study about the tech­nol­ogy, pre­dic­tive sys­tems are cru­cial to the future of the olive sec­tor.

At the sci­en­tific level, crop har­vest pre­dic­tion is one of the most com­plex prob­lems within pre­ci­sion agri­cul­ture,” she said. There are sev­eral stud­ies that make these pre­dic­tions based on the close rela­tion­ship between the emis­sion of pollen and fruit pro­duc­tion, oth­ers from aer­o­bi­o­log­i­cal, phe­no­log­i­cal and mete­o­ro­log­i­cal vari­ables, all with effi­cient and accept­able accu­ra­cies from July onwards.”

We intend to advance this pre­dic­tion and be able to make opti­mal pre­dic­tions in the period before flow­er­ing… long before the farmer car­ries out their strate­gic plan­ning and eco­nomic invest­ment in the farm,” Ramos added.

The group used data min­ing method­olo­gies pre­vi­ously used in pre­dic­tive health­care projects to cre­ate regres­sion mod­els from mete­o­ro­log­i­cal data and his­tor­i­cal har­vest data from across the ini­tial tar­get area.

This was com­bined with cur­rent data from drones equipped with ther­mo­graphic sen­sors and mul­ti­spec­tral cam­eras, satel­lite imagery, phe­no­log­i­cal assess­ments, foliar and soil analy­ses and data col­lected from model farms.

The model uti­lizes machine learn­ing, the best-estab­lished field of arti­fi­cial intel­li­gence and one with a proven track record in agri­cul­ture, to pre­dict crop yields as accu­rately as pos­si­ble.

Using a sup­port vec­tor machine algo­rithm made it pos­si­ble to use mul­ti­ple ker­nels, namely the lin­ear and Gaussian ker­nels. This makes it eas­ier for the algo­rithm to adapt to the nature of the data, allow­ing infi­nite trans­for­ma­tions to be car­ried out.

The plat­form will be freely avail­able as a web-based appli­ca­tion sim­i­lar to SIGPAC, the Spanish government’s geo­graphic infor­ma­tion sys­tem for agri­cul­tural parcels.

See Also:Researchers Develop Algorithm to Predict Harvest Potential from Climate Data

Users can view an inter­ac­tive graph­i­cal rep­re­sen­ta­tion of the requested infor­ma­tion and export the data.

Francisco Ramón Feito Higueruela, chair of com­puter graph­ics and geo­mat­ics at the University of Jaén and tech­ni­cal coor­di­na­tor of the project, explained that as the num­ber of users increases and the results of future har­vests are fed back into the sys­tem, the accu­racy of pre­dic­tions will improve. More effi­cient mod­els tai­lored to each area will be pos­si­ble.

José Menar Pacheco of the Cooperativas Agro-ali­men­ta­rias de Andalucía high­lighted the impor­tance of his organization’s role in dis­sem­i­nat­ing the project results and knowl­edge to stake­hold­ers.

He hopes to ensure broad aware­ness and adop­tion of the pro­jec­t’s find­ings to improve his mem­bers’ farm man­age­ment and resource opti­miza­tion. Those mem­bers account for more than €11 mil­lion in annual turnover and over 70 per­cent of Andalusia’s total olive oil pro­duc­tion.

The project is financed through the European agri­cul­tural funds for rural devel­op­ment and the Andalusian regional gov­ern­ment as part of the call for regional oper­a­tional groups of the European Innovation Partnership in agri­cul­tural pro­duc­tiv­ity and sus­tain­abil­ity in the olive sec­tor.

Within the Common Agricultural Policy, a series of new reforms are being imple­mented, includ­ing the fight against cli­mate change with these envi­ron­men­tal objec­tives, as well as the achieve­ment of a sus­tain­able and com­pet­i­tive agri­cul­tural sec­tor by sup­port­ing farm­ers, and all this with a strong com­mit­ment to the dig­i­tal­iza­tion of the olive sec­tor to achieve these objec­tives,” Ramos said.

She added, The ful­fill­ment of these objec­tives depends on the appro­pri­ate deci­sion-mak­ing by each of the actors involved in the sec­tor. Therefore, pre­dic­tive sys­tems are a cru­cial tool in man­age­ment and deci­sion-mak­ing.”



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