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Identifying hazardousness of sewer pipeline gas mixture using classification methods: a comparative study

机译:使用分类方法识别下水管道气体混合物的危害性:一项比较研究

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摘要

In this work, we formulated a real-world problem related to sewer pipeline gas detection using the classification-based approaches. The primary goal of this work was to identify the hazardousness of sewer pipeline to offer safe and non-hazardous access to sewer pipeline workers so that the human fatalities, which occurs due to the toxic exposure of sewer gas components, can be avoided. The dataset acquired through laboratory tests, experiments, and various literature sources was organized to design a predictive model that was able to identify/classify hazardous and non-hazardous situation of sewer pipeline. To design such prediction model, several classification algorithms were used and their performances were evaluated and compared, both empirically and statistically, over the collected dataset. In addition, the performances of several ensemble methods were analyzed to understand the extent of improvement offered by these methods. The result of this comprehensive study showed that the instance-based learning algorithm performed better than many other algorithms such as multilayer perceptron, radial basis function network, support vector machine, reduced pruning tree. Similarly, it was observed that multi-scheme ensemble approach enhanced the performance of base predictors.
机译:在这项工作中,我们使用基于分类的方法制定了与下水道管道气体检测相关的现实问题。这项工作的主要目的是确定下水道管道的危险性,以便为下水道管道工人提供安全和无危险的通道,从而避免由于下水道气体成分的有毒暴露而造成的人员伤亡。通过实验室测试,实验和各种文献资料获得的数据集被组织起来,以设计一种预测模型,该模型能够识别/分类下水道的危险和非危险状况。为了设计这样的预测模型,使用了几种分类算法,并对收集的数据集进行了经验和统计上的评估和比较。此外,分析了几种集成方法的性能,以了解这些方法提供的改进程度。这项全面研究的结果表明,基于实例的学习算法的性能优于多层感知器,径向基函数网络,支持向量机,缩减的修剪树等许多其他算法。类似地,观察到多方案集成方法增强了基本预测变量的性能。

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