Korea Biochar Research Center, Association of Pacific Rim Universities (APRU) Sustainable Waste Management Program & Division of Environmental Science and Ecological Engineering, Korea University, Seoul, 02841, Republic of Korea; International ESG Association (IESGA), Seoul, 06621, Republic of Korea.
CAS Key Laboratory of Urban Pollutant Conversion, Institute of Urban Environment, Chinese Academy of Sciences, Xiamen, 361021, China.
Environ Pollut. 2024 Jan 15;341:122833. doi: 10.1016/j.envpol.2023.122833. Epub 2023 Nov 5.
The annual microplastic (MP) release into soils is 4-23 times higher than that into oceans, significantly impacting soil quality. However, the mechanisms underlying how MPs impact soil properties remain largely unknown. Soil-MP interactions are complex because of soil heterogeneity and varying MP properties. This lack of understanding was exacerbated by the diverse experimental conditions and soil types used in this study. Predicting changes in soil properties in the presence of MPs is challenging, laborious, and time-consuming. To address these issues, machine learning was applied to fit datasets from peer-reviewed publications to predict and interpret how MPs influence soil properties, including pH, dissolved organic carbon (DOC), total P, NO-N, NH-N, and acid phosphatase enzyme activity (acid P). Among the developed models, the gradient boost regression (GBR) model showed the highest R (0.86-0.99) compared to the decision tree and random forest models. The GBR model interpretation showed that MP properties contributed more than 50% to altering the acid P and NO-N concentrations in soils, whereas they had a negligible impact on total P and 10-20% impact on soil pH, DOC, and NH-N. Specifically, the size of MPs was the dominant factor influencing acid P (89.3%), pH (71.6%), and DOC (44.5%) in soils. NO-N was mainly affected by the MP type (52.0%). The NH-N was mainly affected by the MP dose (46.8%). The quantitative insights into the impact of MPs on soil properties of this study could aid in understanding the roles of MPs in soil systems.
每年进入土壤的微塑料(MP)释放量是进入海洋的 4-23 倍,对土壤质量有重大影响。然而,MP 如何影响土壤特性的机制在很大程度上仍然未知。由于土壤的非均质性和 MP 性质的变化,土壤与 MP 的相互作用非常复杂。由于本研究中使用的实验条件和土壤类型多种多样,这种缺乏了解的情况更加严重。预测存在 MPs 时土壤性质的变化具有挑战性、费力且耗时。为了解决这些问题,应用机器学习来拟合来自同行评议出版物的数据集,以预测和解释 MPs 如何影响土壤特性,包括 pH 值、溶解有机碳 (DOC)、总磷 (TP)、硝态氮 (NO-N)、氨态氮 (NH-N) 和酸性磷酸酶活性 (酸 P)。在所开发的模型中,梯度提升回归 (GBR) 模型与决策树和随机森林模型相比,表现出最高的 R(0.86-0.99)。GBR 模型的解释表明,MP 特性对改变土壤中酸 P 和 NO-N 浓度的贡献超过 50%,而对总磷的影响可以忽略不计,对土壤 pH 值、DOC 和 NH-N 的影响在 10-20%之间。具体而言,MP 的大小是影响土壤中酸 P(89.3%)、pH 值(71.6%)和 DOC(44.5%)的主要因素。NO-N 主要受 MP 类型(52.0%)影响。NH-N 主要受 MP 剂量(46.8%)影响。本研究对 MPs 对土壤性质影响的定量见解有助于理解 MPs 在土壤系统中的作用。