School of Chemistry and Chemical Engineering, South China University of Technology, Guangzhou 510640, China.
Bioresour Technol. 2011 Oct;102(19):8907-13. doi: 10.1016/j.biortech.2011.06.046. Epub 2011 Jul 2.
A hybrid artificial neural network - genetic algorithm numerical technique was successfully developed to model, and to simulate the biodegradation process of di-n-butyl phthalate in an anaerobic/anoxic/oxic (AAO) system. The fate of DnBP was investigated, and a removal kinetic model including sorption and biodegradation was formulated. To correlate the experimental data with available models or some modified empirical equations, the steady state model equations describing the biodegradation process have been solved using genetic algorithm (GA) and artificial neural network (ANN) from the water quality characteristic parameters. Compared with the kinetic model, the performance of the GA-ANN for modeling the DnBP was found to be more impressive. The results show that the predicted values well fit measured concentrations, which was also supported by the relatively low RMSE (0.2724), MAPE (3.6137) and MSE (0.0742)and very high R (0.9859) values, and which illustrates the GA-ANN model predicting effluent DnBP more accurately than the mechanism model forecasting.
一种混合人工神经网络-遗传算法数值技术成功地被开发出来,用于模拟和模拟在厌氧/缺氧/好氧(AAO)系统中二丁基邻苯二甲酸酯(DnBP)的生物降解过程。研究了 DnBP 的命运,并制定了包括吸附和生物降解在内的去除动力学模型。为了将实验数据与可用模型或一些修改后的经验方程相关联,使用遗传算法(GA)和人工神经网络(ANN)从水质特征参数中求解了描述生物降解过程的稳态模型方程。与动力学模型相比,GA-ANN 对 DnBP 的建模性能更为出色。结果表明,预测值与实测浓度吻合良好,这也得到了相对较低的 RMSE(0.2724)、MAPE(3.6137)和 MSE(0.0742)以及非常高的 R(0.9859)值的支持,这表明 GA-ANN 模型比机制模型更能准确地预测出水中的 DnBP。