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Featured researches published by Ángel Maresma.


Remote Sensing | 2016

Analysis of Vegetation Indices to Determine Nitrogen Application and Yield Prediction in Maize (Zea mays L.) from a Standard UAV Service

Ángel Maresma; Mar Ariza; Elías Martínez; Jaume Lloveras; J. A. Martínez-Casasnovas

The growing use of commercial unmanned aerial vehicles (UAV) and the need to adjust N fertilization rates in maize (Zea mays L.) currently constitute a key research issue. In this study, different multispectral vegetation indices (green-band and red-band based indices), SPAD and crop height (derived from a multispectral compact camera mounted on a UAV) were analysed to predict grain yield and determine whether an additional sidedress application of N fertilizer was required just before flowering. Seven different inorganic N rates (0, 100, 150, 200, 250, 300, 400 kg·N·ha−1), two different pig slurry manure rates (Ps) (150 or 250 kg·N·ha−1) and four different inorganic-organic N combinations (N100Ps150, N100Ps250, N200Ps150, N200Ps250) were applied to maize experimental plots. The spectral index that best explained final grain yield for the N treatments was the Wide Dynamic Range Vegetation Index (WDRVI). It identified a key threshold above/below 250–300 kg·N·ha−1. WDRVI, NDVI and crop height showed no significant response to extra N application at the economic optimum rate of fertilization (239.8 kg·N·ha−1), for which a grain yield of 16.12 Mg·ha−1 was obtained. This demonstrates their potential as yield predictors at V12 stage. Finally, a ranking of different vegetation indices and crop height is proposed to overcome the uncertainty associated with basing decisions on a single index.


Remote Sensing | 2018

Use of Multispectral Airborne Images to Improve In-Season Nitrogen Management, Predict Grain Yield and Estimate Economic Return of Maize in Irrigated High Yielding Environments

Ángel Maresma; Jaume Lloveras; J. A. Martínez-Casasnovas

Vegetation indices (VIs) derived from active or passive sensors have been used for maize growth monitoring and real-time nitrogen (N) management at field scale. In the present multilocation two-year study, multispectral VIs (green- and red-based), chlorophyll meter (SPAD) and plant height (PltH) measured at V12–VT stage of maize development, were used to distinguish among the N status of maize, to predict grain yield and economic return in high yielding environments. Moreover, linear plateau-models were performed with VIs, SPAD and PltH measurements to determine the amount of N needed to achieve maximum maize grain yields and economic return. The available N in the topsoil (0–30 cm) was measured, and its relationship with VIs, maize yield and maize N requirements was analyzed. Green-based VIs were the most accurate indices to predict grain yield and to estimate the grain yield optimum N rate (GYONr) (216.8 kg N ha−1), but underestimated the grain yield optimum N available (GYONa) (248.6 kg N ha−1). Red-based VIs slightly overestimated the GYONr and GYONa, while SPAD highly underestimated both of them. The determination of the available N did not improve the accuracy of the VIs to determine the grain yield. The green chlorophyll index (GCI) distinguished maize that would yield less than 84% of the maximum yield, showing a high potential to detect and correct maize N deficiencies at V12 stage. The economic optimum nitrogen rate (EONr) and economic optimum nitrogen available (EONa) were determined below the GYONr and the GYONa, demonstrating that maximum grain yield strategies in maize are not normally the most profitable for farmers. Further research is needed to fine-tune the response of maize to N applications when deficiencies are detected at V12 stage, but airborne imagery could be useful for practical farming implementation in irrigated high yielding environments.


Remote Sensing | 2018

Erratum: Maresma, A., et al. Analysis of Vegetation Indices to Determine Nitrogen Application and Yield Prediction in Maize (Zea mays L.) from a Standard UAV Service. Remote Sens. 2017, 9, 648

Ángel Maresma; Mar Ariza; Elías Martínez; Jaume Lloveras; J. A. Martínez-Casasnovas

After publication of the research paper [1], the authors noticed an error and wish to make the following correction.[...]


Agronomy Journal | 2017

Long-Term Effects of Mineral Nitrogen Fertilizer on Irrigated Maize and Soil Properties

Elías Martínez; Ángel Maresma; A. Biau; S. Cela; P. Berenguer; Francisca Santiveri; A. Michelena; Jaume Lloveras


Archive | 2015

Vegetation indices from unmanned aerial vehicles – mounted sensors to monitor the development of maize (Zea mays L.) under different N rates

J. A. Martínez-Casasnovas; M. Ariza-Sentís; Ángel Maresma; Elías Martínez; Jaume Lloveras


Vida rural | 2017

Evolución del incremento de rendimiento del maíz

Elías Martínez; Ángel Maresma; Francisca Santiveri Morata; Jaume Lloveras Vilamanya


Vida rural | 2016

Efecto residual de la fertilización nitrogenada del maíz sobre el trigo posterior en regadío

Javier Salomó; Elías Martínez; Ángel Maresma; Jaume Lloveras Vilamanya


Tierras de Castilla y León: Agricultura | 2016

Efecto residual de la fertilización nitrogenada del maíz sobre la cebada posterior en regadío

Javier Salomó; Ángel Maresma; Elías Martínez; Jaume Lloveras Vilamanya


Tierras de Castilla y León: Agricultura | 2016

Estrategias para una fertilización nitrogenada eficiente en maíz

Ángel Maresma; José Antonio Martínez Casasnovas; Jaume Lloveras Vilamanya


Vida rural | 2015

La fertilización nitrogenada del maíz y el nitrógeno residual del suelo: un factor clave tanto por su coste como por su influencia sobre el rendimiento final

E. Martínez de la Cuesta; Abdul Malek Yakoub; Ángel Maresma; Francisca Santiveri Morata; Jaume Lloveras Vilamanya

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A. Biau

University of Lleida

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S. Cela

University of Lleida

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