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      Vine water status mapping with multispectral UAV imagery and machine learning

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          Abstract

          Optimizing water management has become one of the biggest challenges for grapevine growers in California, especially during drought conditions. Monitoring grapevine water status and stress level across the whole vineyard is an essential step for precision irrigation management of vineyards to conserve water. We developed a unified machine learning model to map leaf water potential ( \[{\psi }_{\mathrm{leaf}}\] ), by combining high-resolution multispectral remote sensing imagery and weather data. We conducted six unmanned aerial vehicle (UAV) flights with a five-band multispectral camera from 2018 to 2020 over three commercial vineyards, concurrently with ground measurements of sampled vines. Using vegetation indices from the orthomosaiced UAV imagery and weather data as predictors, the random forest (RF) full model captured 77% of \[{\psi }_{\mathrm{leaf}}\] variance, with a root mean square error (RMSE) of 0.123 MPa, and a mean absolute error (MAE) of 0.100 MPa, based on the validation datasets. Air temperature, vapor pressure deficit, and red edge indices such as the normalized difference red edge index (NDRE) were found as the most important variables in estimating \[{\psi }_{\mathrm{leaf}}\] across space and time. The reduced RF models excluding weather and red edge indices explained 52–48% of \[{\psi }_{\mathrm{leaf}}\] variance, respectively. Maps of the estimated \[{\psi }_{\mathrm{leaf}}\] from the RF full model captured well the patterns of both within- and cross-field spatial variability and the temporal change of vine water status, consistent with irrigation management and patterns observed from the ground sampling. Our results demonstrated the utility of UAV-based aerial multispectral imaging for supplementing and scaling up the traditional point-based ground sampling of \[{\psi }_{\mathrm{leaf}}\] . The pre-trained machine learning model, driven by UAV imagery and weather data, provides a cost-effective and scalable tool to facilitate data-driven precision irrigation management at individual vine levels in vineyards.

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                Author and article information

                Contributors
                Journal
                Irrigation Science
                Irrig Sci
                Springer Science and Business Media LLC
                0342-7188
                1432-1319
                September 2022
                April 18 2022
                September 2022
                : 40
                : 4-5
                : 715-730
                Article
                10.1007/s00271-022-00788-w
                faaef0a4-6948-438f-b2b2-b6aa923ccc8b
                © 2022

                https://creativecommons.org/licenses/by/4.0

                https://creativecommons.org/licenses/by/4.0

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