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Modeling Bromus diandrus Seedling Emergence Using Nonparametric Estimation
Authors:R. Cao  M. Francisco-Fernández  A. Anand  F. Bastida  J. L. González-Andújar
Affiliation:1. Faculty of Computer Science, Department of Mathematics, University of A Coru?a, Campus de Evi?a, s/n, A Coru?a, 15071, Spain
2. Department of Mathematics, Indian Institute of Technology, Kharagpur, 721302, India
3. Polytechnic School, Department of Agroforestry Science, University of Huelva, Campus Universitario de La Rábida Carretera de Palos de la Frontera, s/n, 21071 La Rábida, Palos de la Frontera (Huelva), Spain
4. CSIC, Institute for Sustainable Agriculture, Córdoba, 4084, Spain
Abstract:Hydrothermal time (HTT) is a valuable environmental index to predict weed emergence. In this paper, we focus on the problem of predicting weed emergence given some HTT observations from a distribution point of view. This is an alternative approach to classical parametric regression, often employed in this framework. The cumulative distribution function (cumulative emergence) of the cumulative hydrothermal time (CHTT) is considered for this task. Due to the monitoring process, it is not possible to observe the exact emergence time of every seedling. On the contrary, these emergence times are observed in an aggregated way. To address these facts, a new nonparametric distribution function estimator has been proposed. A bootstrap bandwidth selection method is also presented. Moreover, bootstrap techniques are also used to develop simultaneous confidence intervals for the HTT cumulative distribution function. The proposed methods have been applied to an emergence data set of Bromus diandrus.
Keywords:
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