Predictive Neural Networks Model for Detection of Water Quality for Human Consumption

Renzo Chafloque, Ciro Rodríguez, Yuri Pomachagua, Manuel Hilario
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引用次数: 3

Abstract

Water is an important element that is related to the human being because drinking water is a necessary element for health, also drinking water is considered as an element that also participates in the economy of a society, since it has a defined and industrialized process. Due to the presence of drinking water in different aspects of society, it is important to carry out research that contributes to this topic. The present research work is focused on a predictive analysis using a neural network model, which will allow us to predict and detect whether a given body of water is suitable for human consumption. The proposed model is based on an architecture that uses neural networks that was developed in the Python language, and a dataset obtained from the Kaggle web page was also used. This data set was used for training and validation. Within the preprocessing, the MinMax scaling method obtained from the Sklearn library was used. For the development of the model, the Keras library was used, which provided the necessary methods for the implementation of the seven dense layers that make up the neural network. At the end of the development, a model with an accuracy of approximately 70% was obtained. Finally, we invite for future research, to consider new architectures based on neural networks or other models based on other machine learning classification algorithms.
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人类用水水质检测的预测神经网络模型
水是与人类有关的一个重要因素,因为饮用水是健康的必要因素,饮用水也被认为是参与社会经济的一个因素,因为它有一个明确的和工业化的过程。由于饮用水存在于社会的不同方面,因此开展有助于这一主题的研究非常重要。目前的研究工作集中在使用神经网络模型进行预测分析,这将使我们能够预测和检测给定的水体是否适合人类消费。所提出的模型基于使用Python语言开发的神经网络的架构,并且还使用了从Kaggle网页获得的数据集。该数据集用于训练和验证。在预处理中,使用Sklearn库中获得的MinMax缩放方法。对于模型的开发,使用了Keras库,它为实现组成神经网络的七个密集层提供了必要的方法。在开发结束时,获得了精度约为70%的模型。最后,我们邀请未来的研究,考虑基于神经网络的新架构或基于其他机器学习分类算法的其他模型。
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