Improved Ozone Level Detection through Feature Selection with Modified Whale Optimization Algorithm

Li Yu Yab, Noorhaniza Wahid, Rahayu A Hamid
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Abstract

This study presents a new approach for ozone level detection through feature selection by the modified Whale Optimization Algorithm (mWOA). This study aims to enhance the accuracy and efficiency of ozone level prediction models by selecting the most informative features from the dataset. As air quality deterioration poses significant risks to both human health and ecological equilibrium, pinpointing relevant features becomes essential for boosting prediction accuracy. The scope of the research includes comparing the performance of mWOA with the original WOA in two feature selection techniques: filter-based and wrapper-based. The experiments run proposed approaches on a multivariate time-series dataset with 20 repetitions. The evaluation criteria include processing time, number of features selected, and classification accuracy obtained by the kNN classifier. The statistical results demonstrate the effectiveness of the proposed mWOA approach, outperforming WOA due to the modified control parameter that enables a more precise exploration of the search area. The findings of this study reveal the improved performance of mWOA in selecting informative features, resulting in better prediction on average: 93.75% for filter-based and 94.49% for wrapper-based. In conclusion, the wrapper-based feature selection using the mWOA approach proves to be a valuable asset in enhancing the accuracy and efficiency of ozone level detection models. In the future, the proposed technique can be used for more applications in environmental science and engineering research.
利用修改后的鲸鱼优化算法进行特征选择,改进臭氧浓度检测
本研究提出了一种通过改进的鲸鱼优化算法(mWOA)进行特征选择的臭氧水平检测新方法。该研究旨在通过从数据集中选择信息量最大的特征来提高臭氧水平预测模型的准确性和效率。由于空气质量恶化会对人类健康和生态平衡造成重大风险,因此准确定位相关特征对于提高预测精度至关重要。研究范围包括比较 mWOA 与原始 WOA 在两种特征选择技术中的性能:基于过滤器的特征选择技术和基于包装的特征选择技术。实验在一个具有 20 次重复的多元时间序列数据集上运行所提出的方法。评估标准包括处理时间、选择的特征数量以及 kNN 分类器获得的分类准确率。统计结果证明了所提出的 mWOA 方法的有效性,由于修改了控制参数,可以更精确地探索搜索区域,因此其性能优于 WOA。研究结果表明,mWOA 在选择信息特征方面的性能有所提高,平均预测效果更好:基于过滤器的预测效果为 93.75%,基于包装器的预测效果为 94.49%。总之,使用 mWOA 方法进行基于包装的特征选择被证明是提高臭氧水平检测模型准确性和效率的宝贵财富。未来,所提出的技术可在环境科学和工程研究中得到更多应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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