...
首页> 外文期刊>Field Crops Research >Simulation of timothy nutritive value: A comparison of three process-based models
【24h】

Simulation of timothy nutritive value: A comparison of three process-based models

机译:拟计拟养营养价值:三种基于过程的模型的比较

获取原文
获取原文并翻译 | 示例
           

摘要

Different forage grass models are used to simulate forage yield and nutritive attributes, but these models are seldom compared, particularly those for timothy (Phlewn pratense L.), a widely grown forage grass species in agricultural regions with a cold temperate climate. We compared the models BASGRA, CATIMO and STICS for their predictions of timothy crude protein (CP) concentration, neutral detergent fibre (NDF) concentration and NDF digestibility (dNDF), three important forage nutritive attributes. Data on CP and NDF concentrations, and dNDF and the associated weather and soil data for seven cultivars, taken from eight field experiments in Canada, Finland, Norway, and Sweden, were divided into calibration and validation datasets. Model parameters were estimated for each cultivar separately (cultivar-specific calibration) and for all cultivars together (generic calibration), using different methods for the three models. Normalized root mean square error (RMSE) in prediction of CP concentration varied between 16 and 26% for BASGRA, 45 and 101% for CATIMO and 23 and 40% for STICS across the two calibration methods and the calibration and validation datasets. Normalised RMSE in prediction of NDF concentration varied between 8 and 13% for BASGRA, 14 and 21% for CATIMO and 8 and 12% for STICS, while for dNDF it varied between 7 and 22% for BASGRA, 7 and 38% for CATIMO and 5 and 6% for STICS. Cultivar-specific calibration improved the performance of CATIMO and STICS, but not BASGRA, compared with generic calibration. The prediction accuracy for NDF concentration and dNDF with the three models was within the same range or better than that for forage dry matter (DM) yield of timothy. Overall, the three models performed well in predicting some nutritive attributes and yield in Northern Europe and Canada, but improvements are required, particularly to increase the prediction accuracy of CP concentration.
机译:不同的饲料草模型用于模拟饲养产量和营养属性,但这些模型很少比较,特别是蒂莫西(Phlewn Pratense L.)的模型,农业地区广泛种植的牧草种类,具有冷水气候。我们将模特基础,Catimo和STICS进行了比较了硫酸粗蛋白(CP)浓度的预测,中性洗涤剂纤维(NDF)浓度和NDF消化率(DNDF),三个重要的饲料营养属性。 CP和NDF浓度的数据和七种品种的DNDF和DNDF和土壤数据,从加拿大,芬兰,挪威和瑞典的八个现场实验中占据了校准和验证数据集。分别为每种品种(种类特异性校准)和所有品种(通用校准)的模型参数估计,使用不同的三种模型。预测CP浓度的标准化均方均误差(RMSE)在两种校准方法和校准方法和校准和验证数据集中的CADIMO,45%和101%的基础和23%和40%之间变化。预测NDF浓度的标准化RMSE在血基的基础和31%之间的8%和13%之间变化,对于STIMO的8和12%,对于DNDF而言,对于CATIMO的基础,7和38%之间的7%和22%。图5和6%的STIC。与通用校准相比,品种特定校准改善了Catimo和STIC的性能,而不是基础。对于三种模型的NDF浓度和DNDF的预测精度在同一范围内或优于呋喃干物质(DM)产量的范围或更好。总体而言,这三种模型在预测欧洲北部和加拿大的一些营养素和产量方面表现良好,但需要改进,特别是提高CP浓度的预测精度。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号