Wali Khan, Khan Haris Ahmad, Farrell Mark, Henten Eldert J Van, Meers Erik
Farm Technology Group, Wageningen University & Research, 6708 PB Wageningen, The Netherlands.
CSIRO Agriculture and Food, Kaurna Country, Locked Bag 2, Glen Osmond, SA 5064, Australia.
Sensors (Basel). 2022 Aug 8;22(15):5919. doi: 10.3390/s22155919.
Application of bio-based fertilizers is considered a practical solution to enhance soil fertility and maintain soil quality. However, the composition of bio-based fertilizers needs to be quantified before their application to the soil. Non-destructive techniques such as near-infrared (NIR) and mid-infrared (MIR) are generally used to quantify the composition of bio-based fertilizers in a speedy and cost-effective manner. However, the prediction performances of these techniques need to be quantified before deployment. With this motive, this study investigates the potential of these techniques to characterize a diverse set of bio-based fertilizers for 25 different properties including nutrients, minerals, heavy metals, pH, and EC. A partial least square model with wavelength selection is employed to estimate each property of interest. Then a model averaging, approach is tested to examine if combining model outcomes of NIR with MIR could improve the prediction performances of these sensors. In total, 17 of the 25 elements could be predicted to have a good performance status using individual spectral methods. Combining model outcomes of NIR with MIR resulted in an improvement, increasing the number of properties that could be predicted from 17 to 21. Most notably the improvement in prediction performance was observed for Cd, Cr, Zn, Al, Ca, Fe, S, Cu, Ec, and Na. It was concluded that the combined use of NIR and MIR spectral methods can be used to monitor the composition of a diverse set of bio-based fertilizers.
施用生物基肥料被认为是提高土壤肥力和保持土壤质量的切实可行的解决方案。然而,在将生物基肥料施用于土壤之前,需要对其成分进行量化。通常使用近红外(NIR)和中红外(MIR)等无损技术,以快速且经济高效的方式量化生物基肥料的成分。然而,在部署这些技术之前,需要对其预测性能进行量化。出于这个目的,本研究调查了这些技术用于表征多种生物基肥料的25种不同特性(包括养分、矿物质、重金属、pH值和电导率)的潜力。采用具有波长选择的偏最小二乘模型来估计每种感兴趣的特性。然后测试一种模型平均方法,以检验将近红外与中红外的模型结果相结合是否可以提高这些传感器的预测性能。总体而言,使用单独的光谱方法,可以预测25种元素中的17种具有良好的性能状态。将近红外与中红外的模型结果相结合带来了改进,可预测特性的数量从17种增加到21种。最显著的是,在镉、铬、锌、铝、钙、铁、硫、铜、电导率和钠的预测性能方面观察到了改进。得出的结论是,近红外和中红外光谱方法的联合使用可用于监测多种生物基肥料的成分。