<i>Corrigendum to</i>: A method for soil management assessment in an unreplicated commercial field
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Published:2022-09-09
Issue:7
Volume:60
Page:755-755
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ISSN:1838-675X
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Container-title:Soil Research
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language:en
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Short-container-title:Soil Res.
Author:
Lee Juhwan,Plant Richard E.
Abstract
<sec> <b>Context</b>: Unreplicated trials are common in agriculture. However, statistical inferences differ from those of traditional experiments based on small, replicated plots. </sec> <sec> <b>Aims</b>: To present a method to assess management effects on soil carbon (C) storage from unreplicated, side-by-side field trials. </sec> <sec> <b>Methods</b>: Two estimates of means with spatially correlated errors are compared using a corrected <i>t</i>-statistic. Then causal inference is made by analysing a significant difference between the means (<i>P</i><0.05) and its changes over time. The use of the method is described in comparing yield and organic C stocks between two large fields. Yield was measured during 1997–2005 with a commercial yield monitor, and soil organic C stocks during 2003–2005. The fields experienced the same tillage practice until autumn 2003 and then with different tillage intensity. </sec> <sec> <b>Key results</b>: The results show that crop C yield did not differ between the fields when using the same tillage practice but was greater in the tilled than the no-till field. The results also suggest that total and particulate organic matter-C contents depend on tillage history. For comparative purposes, the data were also analysed using standard mixed model analysis with a semivariogram model for spatial autocorrelation among the residuals. The mixed model results were generally similar to those of the corrected <i>t</i>-statistic method. The mixed model was often, but not always, less conservative than the corrected <i>t</i>-statistic model. </sec> <sec> <b>Conclusions</b>: The method allows analysis of whole-field data and improves our understanding of soil C processes in commercial fields, where agricultural assessment cannot involve replication due to agronomic and economic constraints. </sec> <sec> <b>Implications</b>: The method complements observational data analyses and can offer a direction towards whole-field management. </sec>
Publisher
CSIRO Publishing
Subject
Earth-Surface Processes,Soil Science,Environmental Science (miscellaneous)