一个初步模型,用于确定土壤质量指数,包括通过QR码应用程序实现的生物数据

IF 5.7 Q1 AGRICULTURAL ENGINEERING
Simone Figorilli , Loredana Canfora , Andrea Manfredini , Simona Violino , Lavinia Moscovini , Federico Pallottino , Francesca Antonucci , Corrado Costa , Ewa M. Furmanczyk , Wioletta Popińska , Antonio Gerardo Pepe , Eligio Malusà
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引用次数: 0

摘要

土壤在提供多种生态系统服务方面发挥着核心作用。然而,土壤过程的复杂性、空间变异性和时间尺度使得量化农艺实践导致的土壤质量变化具有挑战性。因此,需要一种综合指标,包括来自不同土壤性质类别的参数,使农民和土地管理者能够容易地解释土壤质量。在此背景下,基于数据驱动的类类比软独立模型(DD-SIMCA)的类建模方法进行了测试,以建立基于物理、化学和生物参数的土壤质量指数。基于农业土壤常用的数值范围,建立了由土壤物理、化学和生物参数组成的数据集,建立了三个模型。因此,该算法被应用于从大约9800个土壤样本中获得的真实数据集。模型表现出非常高的性能(灵敏度= 1),允许将样本分类为质量组。模型的输出被整合到一个彩色的qr码中,它允许用基于土壤质量指数的比色尺度来表达土壤样品的质量。该工具的初步版本可通过web平台(https://agritechlab.crea.gov.it/model/ddsimcasoil/ddsimcasoil.html)进行进一步测试和验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A preliminary model for determining a soil quality index including biological data implemented through a QR code application
Soil plays a central role in delivering several ecosystem services. However, its complex nature, the spatial variability and the timescale of soil processes make it challenging to quantify shifts in soil quality as a result of agronomical practices. A comprehensive indicator that includes parameters from different categories of soil properties, allowing an easy interpretation of soil quality by farmers and land managers, is thus needed. In this context, a class-modelling approach based on the Data-Driven Soft Independent Model of Class Analogy (DD-SIMCA) was tested to develop a soil quality index based on physical, chemical and biological parameters. Three models were built on a dataset composed by physical, chemical and biological soil parameters, which was created basing on ranges of values common to agricultural soils. The algorithm was thus applied to a real dataset obtained from about 9800 soil samples. The models showed very high performance (sensitivity = 1), allowing to classify the samples into quality groups. The model output was incorporated into a coloured QR-code, which allowed to express the quality of a soil sample with a colorimetric scale based on a soil quality index. A preliminary version of the tool is available for further testing and validation through a web platform (https://agritechlab.crea.gov.it/model/ddsimcasoil/ddsimcasoil.html).
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CiteScore
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