首页> 外文期刊>Transactions of The Institution of Chemical Engineers. Process Safety and Environmental Protection, Part B >Environmental assessment based surface water quality prediction using hyper-parameter optimized machine learning models based on consistent big data
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Environmental assessment based surface water quality prediction using hyper-parameter optimized machine learning models based on consistent big data

机译:基于环境评估的基于表面水质预测,基于一致大数据使用超参数优化机器学习模型

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摘要

Prediction of dissolved oxygen (DO) and total dissolved solids (TDS) are of paramount importance for water environmental protection and analysis of the ecosystem. The traditional methods for water quality prediction are suffering from unadjusted hyper-parameters. To effectively solve the hyper-parameter setting problem, the present study proposes a framework for tuning the hyper-parameters of feed forward neural network (FFNN) and gene expression programming (GEP) with particle swarm optimization (PSO). Thereafter, the PSO coupled hybrid feed forward neural network (PSO-FFNN) and hybrid gene expression programming (PSO-GEP) were used to predict DO and TDS levels in the upper Indus River. Based on thirty years consistent dataset, the most influential input parameters for DO and TDS prediction were determined using principal component analysis (PCA). The impact on the model performance was evaluated employing five statistical evaluation techniques. Modeling results indicated excellent searching efficiency of the PSO algorithm in optimizing the structure and hyper-parameters of the FFNN and GEP. Results of PCA revealed that magnesium, chloride, sulphate, bicarbonates, specific conductivity, and water temperature are appropriate inputs for DO modeling, whereas; calcium, magnesium, sodium, chloride, bicarbonates and specific conductivity remained the influential parameters for TDS. Both the proposed hybrid models showed better accuracy in predicting DO and TDS, however, the hybrid PSO-GEP model achieves better accuracy than the PSO-FFNN with R value above 0.85, the root mean squared error (RMSE) below 3 mg/l and performance index value close to 1. The external validation criteria confirmed the resolved overfitting issue and generalized results of the models. Cross-validation of the model output attained the best statistical metrics i.e. (R = 0.87, RMSE = 2.67) and (R = 0.895, RMSE = 2.21) for PSO-FFNN and PSO-GEP model, respectively. The research findings demonstrated that the implementation of artificial intelligence models with optimization routine can lead to optimized models for accurate prediction of water quality.
机译:溶解氧(DO)和总溶解固体(TDS)的预测对于水环境保护和生态系统分析至关重要。传统的水质预测方法存在未经调整的超参数问题。为了有效解决超参数设置问题,本研究提出了一个用粒子群优化(PSO)调整前馈神经网络(FFNN)和基因表达式编程(GEP)超参数的框架。随后,使用PSO耦合混合前馈神经网络(PSO-FFNN)和混合基因表达编程(PSO-GEP)预测印度河上游的DO和TDS水平。基于30年一致性数据集,利用主成分分析(PCA)确定了DO和TDS预测的最有影响的输入参数。采用五种统计评估技术评估了对模型性能的影响。建模结果表明,PSO算法在优化FFNN和GEP的结构和超参数方面具有良好的搜索效率。PCA结果表明,镁、氯化物、硫酸盐、碳酸氢盐、比电导率和水温是DO建模的合适输入,而;钙、镁、钠、氯化物、碳酸氢盐和比电导率仍然是影响TDS的参数。这两种混合模型在预测DO和TDS方面都表现出更好的准确性,然而,混合PSO-GEP模型在R值大于0.85、均方根误差(RMSE)小于3 mg/l、性能指标值接近1的情况下比PSO-FFNN具有更好的准确性。外部验证标准确认了已解决的过度拟合问题和模型的一般结果。模型输出的交叉验证分别获得了PSO-FFNN和PSO-GEP模型的最佳统计指标(R=0.87,RMSE=2.67)和(R=0.895,RMSE=2.21)。研究结果表明,实施带有优化程序的人工智能模型可以产生用于准确预测水质的优化模型。

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