Information on the grass growth over a year is essential for some models simulating the use of this resource to feed animals on pasture or at barn with hay or grass silage. Unfortunately, this information is rarely available. The challenge is to reconstruct grass growth from two sources of information: usual daily climate data (rainfall, radiation, etc.) and cumulative growth over the year. We have to be able to capture the effect of seasonal climatic events which are known to distort the growth curve within the year. In this paper, we formulate this challenge as a problem of disaggregating the cumulative growth into a time series. To address this problem, our method applies time series forecasting using climate information and grass growth from previous time steps. Several alternatives of the method are proposed and compared experimentally using a database generated from a grassland process-based model. The results show that our method can accurately reconstruct the time series, independently of the use of the cumulative growth information.
翻译:有关一年来草草生长的信息对于模拟利用这一资源在牧场或谷仓用干草或草泥浆喂养牲畜的一些模型至关重要。 不幸的是,这种信息很少。 挑战在于从两个信息来源重建草生长:日常的日常气候数据(降雨量、辐射等)和一年的累积增长。 我们必须能够捕捉季节性气候事件的影响,因为人们知道季节性气候事件会扭曲本年度的生长曲线。 在本文中,我们将此挑战描述为将累积增长分成一个时间序列的问题。 为了解决这一问题,我们的方法采用使用气候信息进行时间序列的预测,以及从以前的时间步骤对草生长进行预测。 方法的几种替代办法是使用基于草原过程模型的数据库进行实验性比较。 结果显示,我们的方法可以准确地重建时间序列,而不必使用累积增长信息。