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A two-factor empirical deterministic response surface calibration model for site-specific predictions of lime requirement.

机译:针对石灰需求的特定地点预测的两因素经验确定性响应面校准模型。

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This paper describes the development of an empirical deterministic two-factor response surface model for the Woodruff lime-requirement buffer (WRF). The model may be used to produce variable-rate lime requirement maps, or to predict lime requirements in real-time. Hence it may be suitable as a component of a decision support system (DSS) for the site-specific management of acid soil. The models' predictions were compared to those of a one-factor response surface, and those of a linear regression. The models tested were validated against soil-CaCO3 incubations using a statistical jackknifing procedure for error and bias estimations. The Akaike Information Criterion (AIC) was used to ascertain the best model in terms of goodness of fit and parsimony. The two-factor response surface model produced the best lime requirement estimates, followed by the single-factor model, then the conventional linear regression. The advantages of the response surface models are their improved prediction accuracy, andtheir flexibility in the choice of any target pH (from pH 5.5 to 7) without the need for excessive calibrations. The uncertainty of the model was assessed using data from an agricultural field in Kelso, New South Wales, Australia. Block kriged maps of soil pH measured in 0.01 M CaCl2 (pH CaCl2), WRF buffer pH (pHbuffer) and lime requirements to a target pH of 7 were produced, to compare their spatial distributions. Finally the economic and agronomic benefits of site-specific liming were considered.
机译:本文介绍了伍德拉夫石灰需求缓冲液(WRF)的经验确定性两因素响应面模型的开发。该模型可用于生成可变速率的石灰需求图,或实时预测石灰需求。因此,它可能适合作为决策支持系统(DSS)的组件,用于酸性土壤的特定地点管理。将模型的预测与单因素响应面的预测和线性回归的预测进行比较。使用用于误差和偏差估计的统计顶升程序,针对土壤CaCO3孵育验证了测试的模型。 Akaike信息准则(AIC)用于确定最佳拟合度和简约性模型。两因素响应面模型产生了最佳的石灰需求量估计值,随后是单因素模型,然后是传统的线性回归。响应表面模型的优势在于其改进的预测精度,以及它们在选择任何目标pH(pH 5.5至7)时的灵活性,而无需进行过多的校准。该模型的不确定性是使用澳大利亚新南威尔士州凯尔索市一个农田的数据进行评估的。绘制了以0.01 M CaCl2(pH CaCl2),WRF缓冲液pH(pHbuffer)和石灰需求量至目标pH值7测得的土壤pH的块状kriged图,以比较它们的空间分布。最后,考虑了特定地点限制的经济和农艺效益。

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