迈向适当的政策增强:一个人工智能驱动的决策树模型,用于通过多排放参数有效识别和分类EPA状态

IF 3.9 Q2 ENVIRONMENTAL SCIENCES City and Environment Interactions Pub Date : 2023-11-19 DOI:10.1016/j.cacint.2023.100127
Adeboye Awomuti , Philip Kofi Alimo , George Lartey-Young , Stephen Agyeman , Tosin Yinka Akintunde , Adebobola Ololade Agbeja , Olayinka Oderinde , Oluwarotimi Williams Samuel , Henry Otobrise
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引用次数: 0

摘要

由于传统的人工方法用于独立计算大多数排放参数,因此准确和及时地评价和评估排放数据及其对环境状况的影响一直是一个关键挑战。为了解决这个长期存在的问题,我们提出了一个人工智能(AI)驱动的决策树模型,以基于多个排放参数对环境保护局(EPA)的状态进行充分分类。使用从尼日利亚收集的二冲程摩托车数据集获得的多个排放参数,通过K-S统计、混淆矩阵、相关热图、决策树、验证曲线和阈值图等各种指标,对模型的性能进行了系统评估。K-S统计图的实验结果表明,HC、CO与目标变量之间存在相当大的相关性,其值范围为0.75 ~ 0.80。同时,CO2和O2与目标变量不相关,其值在0.00 ~ 0.09之间。混淆矩阵显示,所提出的模型的总体准确率为99.9%,有481个真正预测和75个真负预测,表明所提出的ai驱动模型的有效性。综上所述,我们提出的人工智能驱动模型可以基于多个排放参数有效地对EPA状态进行分类,并且准确率高,这可能会对政策的加强起到积极的推动作用,从而促进适当的环境管理。
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Towards adequate policy enhancement: An AI-driven decision tree model for efficient recognition and classification of EPA status via multi-emission parameters

Accurate and timely evaluation and assessment of emission data and its impact on environmental status has been a key challenge due to the conventional manual approach utilized for independently computing most emission parameters. To resolve this long-standing issue, we proposed an Artificial Intelligence (AI)-driven Decision Tree model to adequately classify Environmental Protection Agency (EPA) status based on multiple Emission Parameters. The model's performance was systematically evaluated using multiple emission parameters obtained from a two-stroke motorcycle dataset collected in Nigeria across various metrics such as K-S Statistics, Confusion Matrix, Correlation Heat Map, Decision Tree, Validation Curve, and Threshold Plot. The K-S Statistics plot's experimental results showed a considerable correlation between HC, CO, and the target variable, with values ranging from 0.75 to 0.80. At the same time, CO2 and O2 do not correlate with the target variable with values between 0.00 and 0.09. The Confusion Matrix revealed that the proposed model has an overall accuracy of 99.9% with 481 true positive predictions and 75 true negative predictions, indicating the effectiveness of the proposed AI-driven model. In conclusion, our proposed AI-driven model can effectively classify EPA status based on multiple emission parameters with high accuracy, which may spur positive advancement in policy enhancement for proper environmental management.

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来源期刊
City and Environment Interactions
City and Environment Interactions Social Sciences-Urban Studies
CiteScore
6.00
自引率
3.00%
发文量
15
审稿时长
27 days
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