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Intelligent Spectroscopy System Used for Physicochemical Variables Estimation in Sugar Cane Soils

机译:用于甘蔗土壤理化变量估算的智能光谱系统

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摘要

The current condition of soils is a major area of interest due to the lack of certainty in their physicochemical properties, which can guarantee the quality and the production of a specific crop. Additionally, methodologies to improve land management must be implemented in order to address the consequences of many environmental issues. To date, many techniques have been implemented to improve the accuracy—and more recently the speed—of analysis, in order to obtain results while in the field. Among those, Near Infrared (NIR) spectroscopy has been widely used to achieve the objectives mentioned above. Nevertheless, it requires particular knowledge, and the cost might be high for farmers who own the fields and crops. Thus, the present work uses a system that implements capacitance spectroscopy plus artificial intelligence algorithms to estimate the physicochemical variables of soil used to grow sugar cane. The device uses the frequency response of the soil to determine its magnitude and phase values, which are used by artificial intelligence algorithms that are capable of estimating the soil properties. The obtained results show errors below 8% in the estimation of the variables compared to the analysis results of the soil in laboratories. Additionally, it is a portable system, with low cost, that is easy to use and could be implemented to test other types of soils after evaluating the necessary algorithms or proposing alternatives to restore soil properties.
机译:由于土壤理化特性缺乏确定性,土壤的当前状况成为人们关注的主要领域,这无法保证特定作物的质量和产量。另外,必须实施改善土地管理的方法,以解决许多环境问题的后果。迄今为止,为了在现场获得结果,已经实施了许多技术来提高分析的准确性,并提高分析的速度。其中,近红外(NIR)光谱已被广泛用于实现上述目的。但是,这需要特殊的知识,拥有土地和农作物的农民的成本可能很高。因此,本工作使用一种系统,该系统实现了电容光谱法和人工智能算法,以估算用于种植甘蔗的土壤的物理化学变量。该设备利用土壤的频率响应来确定其大小和相位值,这些算法可以由能够估算土壤性质的人工智能算法使用。与实验室中土壤的分析结果相比,所获得的结果表明变量估计的误差低于8%。另外,它是一种低成本的便携式系统,易于使用,可以在评估必要的算法或提出替代方案以恢复土壤特性后用于测试其他类型的土壤。

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