基于机器学习方法的原位传感系统开发与水质分类

A. S. A. Sukor, Mohamad Naim Muhamad, M. N. Ab Wahab
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引用次数: 1

摘要

应用于农业部门的水质是农业生产成功的因素之一。使用劣质灌溉水会造成土壤问题。一般来说,确定水质模型是众多兴趣之一,因为它可以用来对水的条件进行分类。本项目重点开发水质传感器原位传感系统,能够检测水质的pH值、电导率、温度、总溶解固形物等参数。为了验证该方法,在收集的数据集中有三种类型的水样,包括水管,肥皂水和排水。用于分类过程的机器学习模型类型有人工神经网络(ANN)、支持向量机(SVM)和决策树。结果表明,支持向量机模型表现最好,人工神经网络表现居中,决策树表现最差。这说明机器学习方法的SVM模型最适合作为分类模型对水质状态进行分类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of In-situ Sensing System and Classification of Water Quality using Machine Learning Approach
Quality of water applied to the agriculture sector is one of the factors for agriculture farming to be successful. The use of bad quality irrigation water can cause soil problems. In general, determining water quality model is one of the many interests as it can be used to classify the conditions of water. This project focuses on developing the in-situ sensing system of water quality sensors that can detect parameters of water quality such as pH level, electric conductivity, temperature and total dissolved solid. To validate the approach, there are three types of water samples in a dataset that was collected which include water pipes, soap water and drain water. The types of machine learning models used for classification process are Artificial Neural Network (ANN), Support Vector Machine (SVM), and Decision Tree. The performance showed that SVM model was the highest, ANN was intermediate, and Decision Tree was the lowest. This shows that the SVM model of machine learning approach is the most suitable to be used as the classification model to classify the status of water quality.
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