2023
DOI: 10.1038/s41598-023-49899-0
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A comparative analysis of linear regression, neural networks and random forest regression for predicting air ozone employing soft sensor models

Zheng Zhou,
Cheng Qiu,
Yufan Zhang

Abstract: The proposed methodology presents a comprehensive analysis of soft sensor modeling techniques for air ozone prediction. We compare the performance of three different modeling techniques: LR (linear regression), NN (neural networks), and RFR (random forest regression). Additionally, we evaluate the impact of different variable sets on prediction performance. Our findings indicate that neural network models, particularly the RNN (recurrent neural networks), outperform the other modeling techniques in terms of pr… Show more

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Cited by 14 publications
(1 citation statement)
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“…For instance, Fienberg developed a network of 20 sensor pods to study air quality at the Shelby Farm monitoring site, where three sensors never operated, six failed during operation, and with R 2 threshold of 0.5, only six sensor pods met the data quality objective. Such sensor failure and data loss has been detected from other sensor networks as well [ 48 , 113 , 114 , 115 ]. Outlier detection is defined as the detection of values that are statistically significantly distinct from the other normal values at a given time and location [ 113 ].…”
Section: Calibration Techniques and Developments In Their Accuracymentioning
confidence: 99%
“…For instance, Fienberg developed a network of 20 sensor pods to study air quality at the Shelby Farm monitoring site, where three sensors never operated, six failed during operation, and with R 2 threshold of 0.5, only six sensor pods met the data quality objective. Such sensor failure and data loss has been detected from other sensor networks as well [ 48 , 113 , 114 , 115 ]. Outlier detection is defined as the detection of values that are statistically significantly distinct from the other normal values at a given time and location [ 113 ].…”
Section: Calibration Techniques and Developments In Their Accuracymentioning
confidence: 99%