4.7 Article

Impact of nitrogen and environmental conditions on corn as detected by hyperspectral reflectance

Journal

REMOTE SENSING OF ENVIRONMENT
Volume 80, Issue 2, Pages 213-224

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/S0034-4257(01)00299-1

Keywords

hyperspectral reflectance; precision agriculture; stress detection; corn field; radiation use efficiency; chlorophyll; leaf area index; crop water content

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Indices derived from hyperspectral reflectance spectra have the potential to be used as indicators of environmental stress in crops, This study uses canopy-scale. ground-based measurements of hyperspectral reflectance to demonstrate the temporal patterns in corn development under imposed fertility (N rate) and environmental (water availability) stresses. In 1998. two large areas in a 30-ha corn (Zea mays, L.) field near Ottawa. Canada (45degrees 18'N. 75degrees44'W) were supplied with 99 and 17 kg N ha(-1), while the balance of the field received the recommended rate of 155 kg N ha(-1). Reflectance measurements, ere taken time times using a portable spectroradiometer at georeferenced locations within these areas. Individual reflectance-based indices demonstrated the relative differences between application rates and identified both nitrogen and water stresses at various times in the growing season. No single index was able to describe the status of the corn crop throughout the season. Canonical discriminant analysis provided accurate classification of samples by N rate during early, mid, and late season conditions with overall success rates of 70%. 88%. and 93%', respectively. A shift in importance from green-based derivatives to red-based derivatives was noted from mid to late season and attributed to the natural reduction in green pigments as the crop entered senescence. Canopy-scale photochemical reflectance index (PRI) was shown to be cot-related with canopy radiation use efficiency (RUE). Mid-season water stress affected the relationship. Multiple years of data are required to demonstrate robust relationships between hyperspectral indices and corn ecophysiological status because of the interaction between environmental and nutrient stresses. Identifying areas of fields sensitive to weather-induced stresses will allow better management of N application. Timing the collection of hyperspectral image data at early and late vegetative phase could enhance precision agriculture by allowing supplemental nutrient application. identifying stress patterns and aid in yield forecasting. (C) 2002 Elsevier Science Inc. All rights reserved.

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