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Artificial intelligence models to predict acute phytotoxicity in petroleum contaminated soils

机译:人工智能模型预测石油污染土壤中急性植物毒性

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Environment pollutants, especially those from total petroleum hydrocarbons (TPH), have a highly complex chemical, biological and physical impact on soils. Here we study this influence via modelling the TPH acute phytotoxicity effects on eleven samples of soils from Sakhalin island in greenhouse conditions. The soils were contaminated with crude oil in different doses ranging from the 3.0-100.0 g kg(-1). Measuring the Hordeum vulgare root elongation, the crucial ecotoxicity parameter, we have estimated. We have also investigated the contrast effect in different soils. To predict TPH phytotoxicity different machine learning models were used, namely artificial neural network (ANN) and support vector machine (SVM). The models under discussion were proved to be valid using the mean absolute error method (MAE), the root mean square error method (RMSE), and the coefficient of determination (R-2). We have shown that ANN and SVR can successfully predict barley response based on soil chemical properties (pH, LOI, N, P, K, clay, TPH). The best achieved accuracy was as following: MAE - 8.44, RMSE -11.05, and R-2 -0.80.
机译:环境污染物,尤其是来自石油碳氢化合物(TPH)的环境污染物,具有高度复杂的化学品,生物和身体影响土壤。在这里,我们通过在温室条件下对来自Sakhalin Island岛的11个土壤样本进行建模的TPH急性植物毒性影响来研究这种影响。在3.0-100.0g kg(-1)的不同剂量范围内,土壤被原油污染。测量Hordeum Vulgare根伸长,至关重要的生态毒性参数,我们估计。我们还研究了不同土壤中的对比效果。为了预测TPH植物毒性,使用不同的机器学习模型,即人工神经网络(ANN)和支持向量机(SVM)。经过讨论的模型被证明是使用平均绝对误差法(MAE)的有效性,根均方误差方法(RMSE)和确定系数(R-2)。我们已经表明,基于土壤化学性质(pH,LOI,N,P,K,粘土,TPH),ANN和SVR可以成功地预测大麦响应。最佳达到的准确性如下:MAE - 8.44,RMSE -11.05和R-2 -0.80。

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