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首页> 外文期刊>Communications in Biometry and Crop Science >Modeling sugar content of farmer-managed sugar beets (Beta vulgaris L.) .
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Modeling sugar content of farmer-managed sugar beets (Beta vulgaris L.) .

机译:对农民管理的甜菜(Beta vulgaris L.)的糖含量建模。

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We measured or estimated leaf and root physical and chemical traits of spatio-temporally heterogeneous field-grown sugar beet throughout its ontogeny during three growing seasons. The objective was to quantify the impact of temporal changes in these traits on root sugar content [S(R); g 100 g-1 root dry weight]. Artificial Neural Network (ANN), in conjunction with thermal time (oCd), adequately delineated the boundaries (mean ± standard deviation, S.D.) between S(R) during early (41.6 ± 6.2), med (54.5 ± 3.0), and late ontogeny (63.4 ± 2.4), corresponding, respectively to low, medium, and high S(R). Calibration and validation Partial Least Squares (PLS) regression models, using plant physical and chemical traits, predicted and validated sugar content of sugar beet leaves [S(L)] and roots [S(R)] throughout its ontogeny with significant probabilities. Most physical and all chemical traits exhibited dynamic changes throughout plant ontogeny and, consequently, negatively or positively impacted S(R). The positive impact of S(L) and root volume (RV) on S(R) diminished towards the end of the growing season; whereas, the positive impact of root density (RD) and carbon:nitrogen (C:N) ratio in leaves [C:N(L)] and roots [C:N(R)] persisted throughout plant ontogeny. Specific leaf area (SLA), in particular, exhibited negative, then positive impact on S(R). The utility of physical and chemical traits of field-grown sugar beets in building reliable PLS models was confirmed using multivariate analysis on secondary statistics (residual mean square errors, RMSE and validation coefficients of determination, Q2) which discriminated between and correctly classified low (100%), medium (95%) and high (97%) S(R) groups. The findings may have implications to design management practices that can enhance C:N ratio and C-sequestration in roots, maintain optimum, but not excessive, N level in developing leaves and roots, optimize root sugar content and minimize its variation under field conditionss.
机译:我们在三个生长季节的整个个体发育过程中,测量或估计了时空异质田间生长的甜菜的叶和根的理化特性。目的是量化这些性状的时间变化对根糖含量的影响[S(R); g 100 g -1 根干重]。人工神经网络(ANN)结合热时间(oCd)充分描绘了早期(41.6±6.2),中(54.5±3.0)和晚期S(R)之间的边界(平均值±标准差,SD)。个体发育(63.4±2.4),分别对应于低,中和高S(R)。校准和验证偏最小二乘(PLS)回归模型,利用植物的物理和化学特性,预测和验证了甜菜叶[S(L)]和根[S(R)]的整个个体发育中的糖含量,且概率很大。大多数物理和所有化学特征在整个植物个体发育过程中均表现出动态变化,因此对S(R)产生负面或正面影响。在生长季节快结束时,S(L)和根部体积(RV)对S(R)的积极影响减弱;而在整个植物个体中,根[R:]和根[C:N(L)]和根[C:N(R)]中的根密度(RD)和碳氮比(C:N)的积极影响仍然存在。比叶面积(SLA)尤其对S(R)表现出负面影响,然后是正面影响。田间甜菜的理化特性在建立可靠的PLS模型中的实用性通过二次统计的多元分析(残差均方差,RMSE和确定性验证系数Q 2 )得以证实。区分S(R)低(100%),中(95%)和高(97%)组并正确分类。该发现可能对设计管理实践具有影响,该管理实践可提高根中的C:N比和C隔离,在发育中的叶和根中保持最佳(但不过量)N水平,优化根糖含量并使田间条件下的糖变异最小化。

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