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Data errors in soil tests compromise large-scale assessment of soil organic matter in Koreaopen accessData errors in soil tests compromise largescale assessment of soil organic matter in Korea

Other Titles
Data errors in soil tests compromise largescale assessment of soil organic matter in Korea
Authors
Lee, Juhwan
Issue Date
Nov-2025
Publisher
한국응용생명화학회
Keywords
Soil test data; HeukToram; Human error; Data quality; Organic matter accounting
Citation
Applied Biological Chemistry, v.68, no.1, pp 1 - 12
Pages
12
Indexed
SCIE
SCOPUS
KCI
Journal Title
Applied Biological Chemistry
Volume
68
Number
1
Start Page
1
End Page
12
URI
https://scholarworks.gnu.ac.kr/handle/sw.gnu/81011
DOI
10.1186/s13765-025-01055-0
ISSN
2468-0834
2468-0842
Abstract
Soil test data, derived from laboratory analyses of chemical properties such as organic matter (OM), provide a critical foundation for soil management and guiding fertilizer use. In Korea, the Rural Development Administration (RDA) has maintained a national soil test database ("HeukToram") and associated soil attribute maps for commercial agricultural fields for several decades. However, the reliability of these data is often compromised by manual entry errors and reporting inconsistencies. This study evaluates the impact of error detection and correction on OM assessment at both sub-national and national scales. To address this, soil test records for paddy rice collected from the official dataset between 2022 and 2025 were analyzed and modeled (n = 913,984). The dataset was processed through systematic screening for apparent errors. At the national level, the most frequent issue was repeated soil test values across consecutive sampling dates (16.37% of records), followed by values outside agronomically valid ranges (0.81%), records with all variables missing (0.06%), and those with identical values across all variables (0.02%). Depending on the type and extent of these errors, mean OM estimates deviated by up to 0.153 g kg-1 between the datasets, potentially affecting field-level fertilizer recommendations. The results indicate that even relatively minor errors in large-scale soil test datasets can lead to substantial misestimations in OM stocks and nutrient management requirements, the magnitude of which often remains unknown. Continuous quality control is therefore essential to maintain reliable soil assessments and to guide effective crop and soil management.
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Lee, Ju Hwan
농업생명과학대학 (스마트농산업학과)
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