Chaudhry Hiba, Vasava Hiteshkumar Bhogilal, Chen Songchao, Saurette Daniel, Beri Anshu, Gillespie Adam, Biswas Asim
School of Environmental Sciences, University of Guelph, Guelph, ON N1G 2W1, Canada.
ZJU-Hangzhou Global Scientific and Technological Innovation Center, Xiaoshan District, Hangzhou 311215, China.
Sensors (Basel). 2024 Jan 29;24(3):864. doi: 10.3390/s24030864.
Soil health plays a crucial role in crop production, both in terms of quality and quantity, highlighting the importance of effective methods for preserving soil quality to ensure global food security. Soil quality indices (SQIs) have been widely utilized as comprehensive measures of soil function by integrating multiple physical, chemical, and biological soil properties. Traditional SQI analysis involves laborious and costly laboratory analyses, which limits its practicality. To overcome this limitation, our study explores the use of visible near-infrared (vis-NIR) spectroscopy as a rapid and non-destructive alternative for predicting soil properties and SQIs. This study specifically focused on seven soil indicators that contribute to soil fertility, including pH, organic matter (OM), potassium (K), calcium (Ca), magnesium (Mg), available phosphorous (P), and total nitrogen (TN). These properties play key roles in nutrient availability, pH regulation, and soil structure, influencing soil fertility and overall soil health. By utilizing vis-NIR spectroscopy, we were able to accurately predict the soil indicators with good accuracy using the Cubist model (R = 0.35-0.93), offering a cost-effective and environmentally friendly alternative to traditional laboratory analyses. Using the seven soil indicators, we looked at three different approaches for calculating and predicting the SQI, including: (1) measured SQI (SQI_m), which is derived from laboratory-measured soil properties; (2) predicted SQI (SQI_p), which is calculated using predicted soil properties from spectral data; and (3) direct prediction of SQI (SQI_dp), The findings demonstrated that SQI_dp exhibited a higher accuracy (R = 0.90) in predicting soil quality compared to SQI_p (R = 0.23).
土壤健康在作物生产中,无论是在质量还是数量方面都起着至关重要的作用,这凸显了采用有效方法保持土壤质量以确保全球粮食安全的重要性。土壤质量指标(SQIs)通过整合多种土壤物理、化学和生物学特性,已被广泛用作土壤功能的综合衡量指标。传统的土壤质量指标分析涉及繁琐且成本高昂的实验室分析,这限制了其实际应用。为克服这一限制,我们的研究探索使用可见近红外(vis-NIR)光谱作为一种快速且无损的替代方法来预测土壤特性和土壤质量指标。本研究特别关注了七个有助于土壤肥力的土壤指标,包括pH值、有机质(OM)、钾(K)、钙(Ca)、镁(Mg)、有效磷(P)和总氮(TN)。这些特性在养分有效性、pH值调节和土壤结构方面发挥着关键作用,影响着土壤肥力和整体土壤健康。通过使用可见近红外光谱,我们能够使用Cubist模型以良好的准确性准确预测土壤指标(R = 0.35 - 0.93),为传统实验室分析提供了一种经济高效且环保的替代方法。利用这七个土壤指标,我们研究了三种不同的计算和预测土壤质量指标的方法,包括:(1)实测土壤质量指标(SQI_m),它源自实验室测量的土壤特性;(2)预测土壤质量指标(SQI_p),它使用光谱数据预测的土壤特性来计算;以及(3)直接预测土壤质量指标(SQI_dp)。研究结果表明,与预测土壤质量指标(R = 0.23)相比,直接预测土壤质量指标在预测土壤质量方面表现出更高的准确性(R = 0.90)。