This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
C. Jung, N. Mahmoud, N. Qassimi, and G. Elsamanoudy, “Preliminary Study on the Emission Dynamics of TVOC and Formaldehyde in Homes with Eco-Friendly Materials: Beyond Green Building,” Buildings, Vol. 13, No. 11, 2023, pp. 2847.JungC.MahmoudN.QassimiN.ElsamanoudyG.“Preliminary Study on the Emission Dynamics of TVOC and Formaldehyde in Homes with Eco-Friendly Materials: Beyond Green Building,”Buildings131120232847Search in Google Scholar
M. Li, J. He, R. Zhou, et al., “Research on Prediction Model of Mixed Gas Concentration Based on CNN-LSTM Network,” Proceedings of the 3rd International Conference on Advanced Information Science and System, 2021, pp. 1–5.LiM.HeJ.ZhouR.“Research on Prediction Model of Mixed Gas Concentration Based on CNN-LSTM Network,”Proceedings of the 3rd International Conference on Advanced Information Science and System202115Search in Google Scholar
C. Zhao, J. Ma, W. Jia, et al., “An Apple Fungal Infection Detection Model Based on BPNN Optimized by Sparrow Search Algorithm,” Biosensors, Vol. 12, No. 9, 2022, pp. 692.ZhaoC.MaJ.JiaW.“An Apple Fungal Infection Detection Model Based on BPNN Optimized by Sparrow Search Algorithm,”Biosensors1292022692Search in Google Scholar
S. Mu, W.F. Shen, and D.W. Lu, “Research Progress of Electronic Nose Technology and Its Application,” Materials Review, 2024, pp. 1–34.MuS.ShenW.F.LuD.W.“Research Progress of Electronic Nose Technology and Its Application,”Materials Review2024134Search in Google Scholar
W.F. Wilkens and J.D. Hartman, “An Electronic Analog for the Olfactory Processes,” Journal of Food Science, Vol. 29, No. 3, 1964, pp. 372–378.WilkensW.F.HartmanJ.D.“An Electronic Analog for the Olfactory Processes,”Journal of Food Science2931964372378Search in Google Scholar
K. Persaud and G. Dodd, “Analysis of Discrimination Mechanisms in the Mammalian Olfactory System Using a Model Nose,” Nature, Vol. 299, No. 5881, 1982, pp. 352–355.PersaudK.DoddG.“Analysis of Discrimination Mechanisms in the Mammalian Olfactory System Using a Model Nose,”Nature29958811982352355Search in Google Scholar
S. Zaromb and J.R. Stetter, “Theoretical Basis for Identification and Measurement of Air Contaminants Using an Array of Sensors Having Partly Overlapping Selectivities,” Sensors and Actuators, Vol. 6, No. 4, 1984, pp. 225–243.ZarombS.StetterJ.R.“Theoretical Basis for Identification and Measurement of Air Contaminants Using an Array of Sensors Having Partly Overlapping Selectivities,”Sensors and Actuators641984225243Search in Google Scholar
J.W. Gardner and P.N. Bartlett, “A Brief History of Electronic Noses,” Sensors and Actuators B: Chemical, Vol. 18, Nos. 1-3, 1994, pp. 210–211.GardnerJ.W.BartlettP.N.“A Brief History of Electronic Noses,”Sensors and Actuators B: Chemical181-31994210211Search in Google Scholar
C. Zhan, J. He, and M. Pan, “Component Analysis of Gas Mixture Based on One-Dimensional Convolutional Neural Network,” Sensors, Vol. 21, No. 2, 2021, pp. 347.ZhanC.HeJ.PanM.“Component Analysis of Gas Mixture Based on One-Dimensional Convolutional Neural Network,”Sensors2122021347Search in Google Scholar
Z. Li, Z. Yao, A. Haidry, T. Plecenik, B. Grančič, T. Roch, M. Gregor, and A. Plecenik, “The Effect of Nb Doping on Hydrogen Gas Sensing Properties of Capacitor-Like Pt/Nb-TiO2/Pt Hydrogen Gas Sensors,” Journal of Alloys and Compounds, Vol. 803, 2019, pp. 225–233.LiZ.YaoZ.HaidryA.PlecenikT.GrančičB.RochT.GregorM.PlecenikA.“The Effect of Nb Doping on Hydrogen Gas Sensing Properties of Capacitor-Like Pt/Nb-TiO2/Pt Hydrogen Gas Sensors,”Journal of Alloys and Compounds8032019225233Search in Google Scholar
P. Li, Y. Xu, J. Yang, et al., “Research on Gas Recognition Method Based on One-Dimensional Convolutional Neural Network,” Electronic Devices, Vol. 45, No. 3, 2022, pp. 645–650.LiP.XuY.YangJ.“Research on Gas Recognition Method Based on One-Dimensional Convolutional Neural Network,”Electronic Devices4532022645650Search in Google Scholar
J. Wang, Y. Tao, and Z. Liang, “Electronic Nose Gas Concentration Detection Based on Improved Extreme Learning Machine,” Application of Electronic Technology, Vol. 47, No. 10, 2019, pp. 63–67.WangJ.TaoY.LiangZ.“Electronic Nose Gas Concentration Detection Based on Improved Extreme Learning Machine,”Application of Electronic Technology471020196367Search in Google Scholar
Q. Hu, S. Gong, and Z. Hu, “Air Quality Index Prediction Based on Improved Sparrow Search Algorithm,” Guangxi Science, Vol. 29, No. 4, 2022, pp. 642–651.HuQ.GongS.HuZ.“Air Quality Index Prediction Based on Improved Sparrow Search Algorithm,”Guangxi Science2942022642651Search in Google Scholar
Z. Zhu, B. Tian, X. Fan, M. Zeng, and Z. Yang, “Concentration Prediction of Multi-component Gases Based on Improved Sparrow Search Algorithm,” Journal of Physics: Conference Series, Vol. 2650, 2023.ZhuZ.TianB.FanX.ZengM.YangZ.“Concentration Prediction of Multi-component Gases Based on Improved Sparrow Search Algorithm,”Journal of Physics: Conference Series26502023Search in Google Scholar
Kupin and M. P. Kosei, “Analysis of Swarm Intelligence Algorithms,” System Technologies, 2024.KupinKoseiM. P.“Analysis of Swarm Intelligence Algorithms,”System Technologies2024Search in Google Scholar
X. Wang and M. Bi, “Greenhouse Gas Prediction Method Based on Particle Swarm Optimized SVR,” 12511, Vol. 12511, 2023, pp. 1251126–1251126-6.WangX.BiM.“Greenhouse Gas Prediction Method Based on Particle Swarm Optimized SVR,”1251112511202312511261251126-6Search in Google Scholar
J. Xue and B. Shen, “A Novel Swarm Intelligence Optimization Approach: Sparrow Search Algorithm,” Systems Science & Control Engineering, Vol. 8, No. 1, 2020, pp. 22–34.XueJ.ShenB.“A Novel Swarm Intelligence Optimization Approach: Sparrow Search Algorithm,”Systems Science & Control Engineering8120202234Search in Google Scholar
X. Lv, X. Mu, and J. Zhang, “Chaotic Sparrow Search Optimization Algorithm,” Journal of Beijing University of Aeronautics and Astronautics, Vol. 47, No. 8, 2021, pp. 1712–1720.LvX.MuX.ZhangJ.“Chaotic Sparrow Search Optimization Algorithm,”Journal of Beijing University of Aeronautics and Astronautics478202117121720Search in Google Scholar
K. Meng, C. Chen, and B. Xin, “MSSSA: A Multi-Strategy Enhanced Sparrow Search Algorithm for Global Optimization,” Frontiers of Information Technology & Electronic Engineering, Vol. 23, No. 12, 2022, pp. 1828–1847.MengK.ChenC.XinB.“MSSSA: A Multi-Strategy Enhanced Sparrow Search Algorithm for Global Optimization,”Frontiers of Information Technology & Electronic Engineering2312202218281847Search in Google Scholar
C. Xiang, H. Shi, et al., “Research on Bridge Damage Identification Method Based on Modal Frequency Strain Energy Entropy and Tent-SSA-BP Neural Network,” Highway, Vol. 68, No. 3, 2019, pp. 143–150.XiangC.ShiH.“Research on Bridge Damage Identification Method Based on Modal Frequency Strain Energy Entropy and Tent-SSA-BP Neural Network,”Highway6832019143150Search in Google Scholar
Z.Q. Bao, C. Lu, and S. Zhang, et al., “Research on Coke Quality Prediction Model Based on TSSA-SVR Model,” China Mining, Vol. 31, No. 6, 2022, pp. 86–92.BaoZ.Q.LuC.ZhangS.“Research on Coke Quality Prediction Model Based on TSSA-SVR Model,”China Mining31620228692Search in Google Scholar
J. Chen, Y. Fan, and X. Dai, “Research on Intelligent Vehicle Path Planning with Improved Sparrow Search Algorithm,” Journal of Chongqing University of Technology (Natural Science), Vol. 37, No. 4, 2023, pp. 50–56.ChenJ.FanY.DaiX.“Research on Intelligent Vehicle Path Planning with Improved Sparrow Search Algorithm,”Journal of Chongqing University of Technology (Natural Science)37420235056Search in Google Scholar
X. Wang and Q. Zhang, “Loss Prediction by Support Vector Machine with Improved Sparrow Search Algorithm,” Science Technology and Engineering, Vol. 22, No. 34, 2022, pp. 15115–15122.WangX.ZhangQ.“Loss Prediction by Support Vector Machine with Improved Sparrow Search Algorithm,”Science Technology and Engineering223420221511515122Search in Google Scholar
H. Zhang and Y. Han, “A New Mixed-Gas-Detection Method Based on a Support Vector Machine Optimized by a Sparrow Search Algorithm,” Sensors, Vol. 22, No. 22, 2022, pp. 8977.ZhangH.HanY.“A New Mixed-Gas-Detection Method Based on a Support Vector Machine Optimized by a Sparrow Search Algorithm,”Sensors222220228977Search in Google Scholar
L. Zhang, T. Wang, and H. Zhou, “Research Progress of SVR Parameter Optimization Based on Swarm Intelligence Algorithm,” Computer Engineering and Applications, Vol. 57, No. 16, 2019, pp. 50–64.ZhangL.WangT.ZhouH.“Research Progress of SVR Parameter Optimization Based on Swarm Intelligence Algorithm,”Computer Engineering and Applications571620195064Search in Google Scholar
Y. Tang, Q. Dai, and M.Y. Yang, “Improved Sparrow Search Algorithm to Optimize SVM Outlier Detection,” Computer Engineering and Science, Vol. 45, No. 2, 2023, pp. 346–354.TangY.DaiQ.YangM.Y.“Improved Sparrow Search Algorithm to Optimize SVM Outlier Detection,”Computer Engineering and Science4522023346354Search in Google Scholar
W. Song, S. Liu, X. Wang, et al., “An Improved Sparrow Search Algorithm,” Proceedings of the 2020 IEEE International Conference on Parallel & Distributed Processing with Applications, Big Data & Cloud Computing, Sustainable Computing & Communications, Social Computing & Networking (ISPA/BDCloud/SocialCom/SustainCom), IEEE, 2020, pp. 537–543.SongW.LiuS.WangX.“An Improved Sparrow Search Algorithm,”Proceedings of the 2020 IEEE International Conference on Parallel & Distributed Processing with Applications, Big Data & Cloud Computing, Sustainable Computing & Communications, Social Computing & Networking (ISPA/BDCloud/SocialCom/SustainCom)IEEE2020537543Search in Google Scholar
C. Zhang and S. Ding, “A Stochastic Configuration Network Based on Chaotic Sparrow Search Algorithm,” Knowledge-Based Systems, Vol. 220, 2021, pp. 106924.ZhangC.DingS.“A Stochastic Configuration Network Based on Chaotic Sparrow Search Algorithm,”Knowledge-Based Systems2202021106924Search in Google Scholar
Fonollosa, J.; Sheik, S.; Huerta, R.; Marco, S. Reservoir computing compensates slow response of chemosensor arrays exposed to fast varying gas concentrations in continuous monitoring. Sensors Actuators B Chem. 2015, 215, pp.618–629.FonollosaJ.SheikS.HuertaR.MarcoS.Reservoir computing compensates slow response of chemosensor arrays exposed to fast varying gas concentrations in continuous monitoringSensors Actuators B Chem.2015215618629Search in Google Scholar
Y. Zou and J. Lv, “Using Recurrent Neural Network to Optimize Electronic Nose System with Dimensionality Reduction,” Electronics, Vol. 9, No. 12, 2020, pp. 2205.ZouY.LvJ.“Using Recurrent Neural Network to Optimize Electronic Nose System with Dimensionality Reduction,”Electronics91220202205Search in Google Scholar
W. Wojnowski, T. Majchrzak, T. Dymerski, et al., “Electronic Noses: Powerful Tools in Meat Quality Assessment,” Meat Science, Vol. 131, 2017, pp. 119–131.WojnowskiW.MajchrzakT.DymerskiT.“Electronic Noses: Powerful Tools in Meat Quality Assessment,”Meat Science1312017119131Search in Google Scholar