{"title":"利用堆叠集合变模分解进行基于深度学习的水质指数分类","authors":"Karpagam V, Christy S, M. Edeh","doi":"10.1088/2515-7620/ad549e","DOIUrl":null,"url":null,"abstract":"Water is crucial to human survival in general, and determining the WQI (water quality index) is one of the primary aspects. The existing water quality classification models are facing various challenges and gaps that are impeding their effectiveness. These challenges include limited data availability, the intricate nature of water systems, spatial and temporal variability, non-linear relationships, sensor noise, and error, interpretability, and explainability. It is imperative to address these challenges to improve the accuracy and efficacy of the models and to ensure that they continue to serve as reliable tools for monitoring and safeguarding water quality. To solve the issues, this paper proposes a Stacked Ensemble efficient long short-term memory (StackEL) model for an efficient water quality index classification. At first, the raw input data is pre-processed to rescale the input data using data normalization and one-hot encoding. After that, the process known as variational mode decomposition (VMD) is applied to get at the intrinsic mode functions (IMFs). Consequently, feature selection is performed using an extended coati optimization (EX-CoA) algorithm to select the most significant attributes from the feature selection. Here, publicly available datasets, namely the water quality dataset from Kaggle, are used for classification and performed using are used to perform the Stacked Ensemble efficient long short-term memory (StackEL) classification process effectively. To further perfect the proposed prediction model, the Dwarf Mongoose optimization (DMO) method is implemented. Several measures of effectiveness are examined. 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引用次数: 0
摘要
总体而言,水对人类的生存至关重要,而确定水质指数(WQI)则是其中一个主要方面。现有的水质分类模型面临着各种挑战和差距,这些挑战和差距阻碍了模型的有效性。这些挑战包括有限的数据可用性、水系统错综复杂的性质、时空可变性、非线性关系、传感器噪声以及误差、可解释性和可说明性。当务之急是应对这些挑战,以提高模型的准确性和有效性,确保它们继续成为监测和保护水质的可靠工具。为了解决这些问题,本文提出了一种用于高效水质指数分类的堆叠集合高效长短期记忆(Stacked Ensemble efficient long short-term memory,StackEL)模型。首先,对原始输入数据进行预处理,利用数据归一化和单次编码对输入数据进行重新缩放。然后,应用变异模式分解(VMD)过程来获取内在模式函数(IMF)。然后,使用扩展协同优化(EX-CoA)算法进行特征选择,从特征选择中选出最重要的属性。在这里,公开可用的数据集,即来自 Kaggle 的水质数据集,被用来进行分类,并使用堆叠集合高效长短期记忆(StackEL)分类过程有效地执行。为了进一步完善所提出的预测模型,我们采用了矮獴优化(DMO)方法。对几种有效性措施进行了检验。与其他现有模型相比,所建议的模型在水质数据集上的准确率高达 98.85%。
Deep learning-based water quality index classification using stacked ensemble variational mode decomposition
Water is crucial to human survival in general, and determining the WQI (water quality index) is one of the primary aspects. The existing water quality classification models are facing various challenges and gaps that are impeding their effectiveness. These challenges include limited data availability, the intricate nature of water systems, spatial and temporal variability, non-linear relationships, sensor noise, and error, interpretability, and explainability. It is imperative to address these challenges to improve the accuracy and efficacy of the models and to ensure that they continue to serve as reliable tools for monitoring and safeguarding water quality. To solve the issues, this paper proposes a Stacked Ensemble efficient long short-term memory (StackEL) model for an efficient water quality index classification. At first, the raw input data is pre-processed to rescale the input data using data normalization and one-hot encoding. After that, the process known as variational mode decomposition (VMD) is applied to get at the intrinsic mode functions (IMFs). Consequently, feature selection is performed using an extended coati optimization (EX-CoA) algorithm to select the most significant attributes from the feature selection. Here, publicly available datasets, namely the water quality dataset from Kaggle, are used for classification and performed using are used to perform the Stacked Ensemble efficient long short-term memory (StackEL) classification process effectively. To further perfect the proposed prediction model, the Dwarf Mongoose optimization (DMO) method is implemented. Several measures of effectiveness are examined. When compared to other existing models, the suggested model can achieve a high accuracy of 98.85% of the water quality dataset.
期刊介绍:
ACS Applied Bio Materials is an interdisciplinary journal publishing original research covering all aspects of biomaterials and biointerfaces including and beyond the traditional biosensing, biomedical and therapeutic applications.
The journal is devoted to reports of new and original experimental and theoretical research of an applied nature that integrates knowledge in the areas of materials, engineering, physics, bioscience, and chemistry into important bio applications. The journal is specifically interested in work that addresses the relationship between structure and function and assesses the stability and degradation of materials under relevant environmental and biological conditions.