Environmental factors related to biophysical suitability and agronomic effects of biodegradable mulch applications: Benchmarking key variables using machine learning

Q2 Environmental Science
Michael Madin , Douglas Goodin , Laura Moley , Katherine Nelson
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引用次数: 0

Abstract

The agricultural sector faces unprecedented challenges in sustaining food production amidst rising population and environmental change. These environmental changes include droughts, rising temperatures, soil erosion, and weed invasion. Prior research has explored the potential of biodegradable mulch to help address these challenges while also reducing microplastic pollution associated with plastic mulch. Despite numerous research efforts on biodegradable mulch, there is limited evidence on how environmental factors influence the effectiveness of biodegradable mulch across diverse sites. This study uses machine learning models to examine how biophysical environmental conditions relate to the agronomic impacts and degradation rates of biodegradable mulch. The results of Random Forest, Support Vector Machine, and Decision Tree models confirm that precipitation and temperature are relevant in predicting the effects of biodegradable mulches, with hot and arid climate conditions associated with positive mulch effects. Soil attributes, including texture, organic carbon, and pH levels, are also identified as key variables. Notably, Decision Tree models indicate that maintaining soil pH levels between 6.2–7.8 and ensuring minimum monthly temperatures exceed 3.4 °C are identified as benchmark values for achieving positive mulch effects on agronomic performance. Meanwhile, monthly precipitation above 78 mm is associated with high degradation rates that exceed regulatory standards and reduce the effectiveness of mulch application. Despite variations in overall accuracy, the Random Forest and Decision Tree models demonstrated robustness in their potential reliability in classifying mulch effect outcomes. These results serve as a useful guide to identifying potential suitable sites for biodegradable mulch application and suggest further product development is needed to meet the needs of diverse environmental contexts in efforts to scale up adoption.
与生物可降解地膜应用的生物物理适宜性和农艺效应相关的环境因素:使用机器学习对关键变量进行基准测试
在人口增长和环境变化的背景下,农业部门在维持粮食生产方面面临着前所未有的挑战。这些环境变化包括干旱、气温上升、土壤侵蚀和杂草入侵。之前的研究已经探索了可生物降解地膜的潜力,以帮助解决这些挑战,同时减少与塑料地膜相关的微塑料污染。尽管对生物可降解地膜进行了大量的研究,但关于环境因素如何影响不同地点生物可降解地膜的有效性的证据有限。本研究使用机器学习模型来研究生物物理环境条件与可生物降解地膜的农艺影响和降解率之间的关系。随机森林、支持向量机和决策树模型的结果证实,降水和温度与预测生物可降解地膜的效果有关,炎热和干旱的气候条件与积极的地膜效应相关。土壤属性,包括质地、有机碳和pH值,也被确定为关键变量。值得注意的是,决策树模型表明,将土壤pH值保持在6.2-7.8之间,并确保最低月温度超过3.4°C,被确定为实现覆盖对农艺性能的积极影响的基准值。同时,月降水量超过78毫米会导致土壤的高降解率,超过监管标准,降低覆盖的效果。尽管总体准确性存在差异,但随机森林和决策树模型在分类覆盖效果结果方面显示出其潜在可靠性的稳健性。这些结果为确定生物可降解地膜应用的潜在合适地点提供了有用的指导,并建议需要进一步开发产品以满足扩大采用的不同环境背景的需求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Environmental Challenges
Environmental Challenges Environmental Science-Environmental Engineering
CiteScore
8.00
自引率
0.00%
发文量
249
审稿时长
8 weeks
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