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首页> 外文期刊>Environmental Science and Pollution Research >Modeling the reactivities of hydroxyl radical and ozone towards atmospheric organic chemicals using quantitative structure-reactivity relationship approaches
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Modeling the reactivities of hydroxyl radical and ozone towards atmospheric organic chemicals using quantitative structure-reactivity relationship approaches

机译:使用定量结构-反应性关系方法模拟羟基自由基和臭氧对大气有机化学物质的反应性

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摘要

The persistence and the removal of organic chemicals from the atmosphere are largely determined by their reactions with the OH radical and O-3. Experimental determinations of the kinetic rate constants of OH and O-3 with a large number of chemicals are tedious and resource intensive and development of computational approaches has widely been advocated. Recently, ensemble machine learning (EML) methods have emerged as unbiased tools to establish relationship between independent and dependent variables having a nonlinear dependence. In this study, EML-based, temperature-dependent quantitative structure-reactivity relationship (QSRR) models have been developed for predicting the kinetic rate constants for OH (k(OH)) and O-3 (k(O3)) reactions with diverse chemicals. Structural diversity of chemicals was evaluated using a Tanimoto similarity index. The generalization and prediction abilities of the constructed models were established through rigorous internal and external validation performed employing statistical checks. In test data, the EML QSRR models yielded correlation (R (2)) of a parts per thousand yen0.91 between the measured and the predicted reactivities. The applicability domains of the constructed models were determined using methods based on descriptors range, Euclidean distance, leverage, and standardization approaches. The prediction accuracies for the higher reactivity compounds were relatively better than those of the low reactivity compounds. Proposed EML QSRR models performed well and outperformed the previous reports. The proposed QSRR models can make predictions of rate constants at different temperatures. The proposed models can be useful tools in predicting the reactivities of chemicals towards OH radical and O-3 in the atmosphere.
机译:有机化学物质的持久性和从大气中的去除很大程度上取决于它们与OH自由基和O-3的反应。用大量化学物质测定OH和O-3的动力学速率常数的实验繁琐且耗费资源,并且广泛提倡开发计算方法。最近,集成机器学习(EML)方法已成为一种无偏的工具,用于建立具有非线性相关性的自变量和因变量之间的关系。在这项研究中,已经开发了基于EML的,温度依赖性的定量结构反应性关系(QSRR)模型,用于预测不同反应下OH(k(OH))和O-3(k(O3))反应的动力学速率常数。化学药品。使用谷本相似度指数评估化学品的结构多样性。通过使用统计检查进行的严格的内部和外部验证,可以建立所构建模型的通用性和预测能力。在测试数据中,EML QSRR模型得出了测得的反应性与预测的反应性之间的相关性(R(2))/千日元份为0.91。使用基于描述符范围,欧几里得距离,杠杆作用和标准化方法的方法确定所构建模型的适用范围。较高反应性化合物的预测准确度相对低于低反应性化合物的预测准确度。拟议的EML QSRR模型表现良好,并且优于以前的报告。提出的QSRR模型可以预测不同温度下的速率常数。建议的模型可以用作预测化学物质对大气中OH自由基和O-3的反应性的有用工具。

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