{"title":"Mitigation of saturation in satellite pasture measurement via incorporation of a statistical pasture growth model","authors":"G. Anderson, M. Rawlings, G. Ogle","doi":"10.33584/jnzg.2020.82.435","DOIUrl":null,"url":null,"abstract":"Measurement of pasture biomass is useful to farmers, as it enables timely and accurate management decisions. Satellite pasture measurement allows this information to be obtained with minimal time and labour on the part of the farmer. However, the accuracy of satellite measurements for high levels of pasture biomass can be impacted by a phenomenon called saturation, in which the response of the satellite estimate to increased biomass is diminished in situations of high biomass. In this investigation, a statistical pasture growth model was combined with satellite pasture measurements, with the aim of mitigating the effect of saturation on estimation accuracy. Data were captured for five farms, across two regions and an 18–21 month measurement period. Where satellite measurements appeared to be saturated, the growth model estimate was substituted. This process resulted in improved accuracy (R2 improved from 0.672 to 0.703; RMSE improved from 334 to 309 kg DM/ha; and average bias improved from -62 to -9 kg DM/ha). The statistical improvements were more pronounced where terrestrial estimates were higher so the impact of saturation would be greatest. These results indicate that the problem of saturation in satellite pasture measurement can be addressed by the incorporation of modelled data. \nPrior research has predicted that improved accuracy of pasture measurement would be associated with increased profitability, and this work helps achieve that goal for farmers using satellite measurement services.","PeriodicalId":36573,"journal":{"name":"Journal of New Zealand Grasslands","volume":" ","pages":""},"PeriodicalIF":0.0000,"publicationDate":"2020-10-18","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"1","resultStr":null,"platform":"Semanticscholar","paperid":null,"PeriodicalName":"Journal of New Zealand Grasslands","FirstCategoryId":"1085","ListUrlMain":"https://doi.org/10.33584/jnzg.2020.82.435","RegionNum":0,"RegionCategory":null,"ArticlePicture":[],"TitleCN":null,"AbstractTextCN":null,"PMCID":null,"EPubDate":"","PubModel":"","JCR":"Q3","JCRName":"Environmental Science","Score":null,"Total":0}
引用次数: 1
Abstract
Measurement of pasture biomass is useful to farmers, as it enables timely and accurate management decisions. Satellite pasture measurement allows this information to be obtained with minimal time and labour on the part of the farmer. However, the accuracy of satellite measurements for high levels of pasture biomass can be impacted by a phenomenon called saturation, in which the response of the satellite estimate to increased biomass is diminished in situations of high biomass. In this investigation, a statistical pasture growth model was combined with satellite pasture measurements, with the aim of mitigating the effect of saturation on estimation accuracy. Data were captured for five farms, across two regions and an 18–21 month measurement period. Where satellite measurements appeared to be saturated, the growth model estimate was substituted. This process resulted in improved accuracy (R2 improved from 0.672 to 0.703; RMSE improved from 334 to 309 kg DM/ha; and average bias improved from -62 to -9 kg DM/ha). The statistical improvements were more pronounced where terrestrial estimates were higher so the impact of saturation would be greatest. These results indicate that the problem of saturation in satellite pasture measurement can be addressed by the incorporation of modelled data.
Prior research has predicted that improved accuracy of pasture measurement would be associated with increased profitability, and this work helps achieve that goal for farmers using satellite measurement services.
牧草生物量的测量对农民很有用,因为它有助于及时和准确的管理决策。卫星牧场测量可以使农民以最少的时间和劳动获得这些信息。然而,卫星测量牧草高生物量的准确性可能受到一种称为饱和的现象的影响,即在高生物量的情况下,卫星估计值对增加的生物量的响应减弱。在本研究中,将统计牧草生长模型与卫星牧草测量相结合,以减轻饱和度对估算精度的影响。数据来自两个地区的五个农场,测量期为18-21个月。在卫星测量似乎已经饱和的地方,就用增长模型估计代替。这一过程提高了精度(R2从0.672提高到0.703;RMSE由334 kg DM/ha提高到309 kg DM/ha;平均偏倚从-62 kg DM/ha提高到-9 kg DM/ha)。在陆地估计值较高的地方,统计上的改进更为明显,因此饱和度的影响将最大。这些结果表明,卫星牧场测量中的饱和问题可以通过模型数据的结合来解决。先前的研究预测,牧场测量精度的提高将与盈利能力的增加有关,这项工作有助于使用卫星测量服务的农民实现这一目标。