This work is licensed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International License.
Kocakulak, M., & Butun, I. (2017, January). An overview of Wireless Sensor Networks towards internet of things. In 2017 IEEE 7th annual computing and communication workshop and conference (CCWC) (pp. 1-6). Ieee.KocakulakM. & ButunI. (2017, January). An overview of Wireless Sensor Networks towards internet of things. In 2017 IEEE 7th annual computing and communication workshop and conference (CCWC) (pp. 1-6). Ieee.Search in Google Scholar
Paolesse, R., Nardis, S., Monti, D., Stefanelli, M., & Di Natale, C. (2017). Porphyrinoids for chemical sensor applications. Chemical reviews, 117(4), 2517-2583.PaolesseR.NardisS.MontiD.StefanelliM. & Di NataleC. (2017). Porphyrinoids for chemical sensor applications. Chemical reviews, 117(4), 2517-2583.Search in Google Scholar
Majumder, S., Mondal, T., & Deen, M. J. (2017). Wearable sensors for remote health monitoring. Sensors, 17(1), 130.MajumderS.MondalT. & DeenM. J. (2017). Wearable sensors for remote health monitoring. Sensors, 17(1), 130.Search in Google Scholar
Zhou, F., & Chai, Y. (2020). Near-sensor and in-sensor computing. Nature Electronics, 3(11), 664-671.ZhouF. & ChaiY. (2020). Near-sensor and in-sensor computing. Nature Electronics, 3(11), 664-671.Search in Google Scholar
De Farias, C. M., Pirmez, L., Fortino, G., & Guerrieri, A. (2019). A multi-sensor data fusion technique using data correlations among multiple applications. Future generation computer systems, 92, 109-118.De FariasC. M.PirmezL.FortinoG. & GuerrieriA. (2019). A multi-sensor data fusion technique using data correlations among multiple applications. Future generation computer systems, 92, 109-118.Search in Google Scholar
Vidya, B., & Sasikumar, P. (2022). Wearable multi-sensor data fusion approach for human activity recognition using machine learning algorithms. Sensors and Actuators A: Physical, 341, 113557.VidyaB. & SasikumarP. (2022). Wearable multi-sensor data fusion approach for human activity recognition using machine learning algorithms. Sensors and Actuators A: Physical, 341, 113557.Search in Google Scholar
Fei, S., Hassan, M. A., Xiao, Y., Su, X., Chen, Z., Cheng, Q., ... & Ma, Y. (2023). UAV-based multi-sensor data fusion and machine learning algorithm for yield prediction in wheat. Precision agriculture, 24(1), 187-212.FeiS.HassanM. A.XiaoY.SuX.ChenZ.ChengQ. ... & MaY. (2023). UAV-based multi-sensor data fusion and machine learning algorithm for yield prediction in wheat. Precision agriculture, 24(1), 187-212.Search in Google Scholar
Liu, Z., Xiao, G., Liu, H., & Wei, H. (2022). Multi-sensor measurement and data fusion. IEEE Instrumentation & Measurement Magazine, 25(1), 28-36.LiuZ.XiaoG.LiuH. & WeiH. (2022). Multi-sensor measurement and data fusion. IEEE Instrumentation & Measurement Magazine, 25(1), 28-36.Search in Google Scholar
Din, S., Ahmad, A., Paul, A., Rathore, M. M. U., & Jeon, G. (2017). A cluster-based data fusion technique to analyze big data in wireless multi-sensor system. IEEE Access, 5, 5069-5083.DinS.AhmadA.PaulA.RathoreM. M. U. & JeonG. (2017). A cluster-based data fusion technique to analyze big data in wireless multi-sensor system. IEEE Access, 5, 5069-5083.Search in Google Scholar
Ma, K., Zhang, H., Wang, R., & Zhang, Z. (2017, December). Target tracking system for multi-sensor data fusion. In 2017 IEEE 2nd Information Technology, Networking, Electronic and Automation Control Conference (ITNEC) (pp. 1768-1772). IEEE.MaK.ZhangH.WangR. & ZhangZ. (2017, December). Target tracking system for multi-sensor data fusion. In 2017 IEEE 2nd Information Technology, Networking, Electronic and Automation Control Conference (ITNEC) (pp. 1768-1772). IEEE.Search in Google Scholar
Muzammal, M., Talat, R., Sodhro, A. H., & Pirbhulal, S. (2020). A multi-sensor data fusion enabled ensemble approach for medical data from body sensor networks. Information Fusion, 53, 155-164.MuzammalM.TalatR.SodhroA. H. & PirbhulalS. (2020). A multi-sensor data fusion enabled ensemble approach for medical data from body sensor networks. Information Fusion, 53, 155-164.Search in Google Scholar
Garcia Plaza, E., Nunez Lopez, P. J., & Beamud Gonzalez, E. M. (2018). Multi-sensor data fusion for real-time surface quality control in automated machining systems. Sensors, 18(12), 4381.Garcia PlazaE.Nunez LopezP. J. & Beamud GonzalezE. M. (2018). Multi-sensor data fusion for real-time surface quality control in automated machining systems. Sensors, 18(12), 4381.Search in Google Scholar
Jing, L., Wang, T., Zhao, M., & Wang, P. (2017). An adaptive multi-sensor data fusion method based on deep convolutional neural networks for fault diagnosis of planetary gearbox. Sensors, 17(2), 414.JingL.WangT.ZhaoM. & WangP. (2017). An adaptive multi-sensor data fusion method based on deep convolutional neural networks for fault diagnosis of planetary gearbox. Sensors, 17(2), 414.Search in Google Scholar
Kashinath, S. A., Mostafa, S. A., Mustapha, A., Mahdin, H., Lim, D., Mahmoud, M. A., ... & Yang, T. J. (2021). Review of data fusion methods for real-time and multi-sensor traffic flow analysis. IEEE Access, 9, 51258-51276.KashinathS. A.MostafaS. A.MustaphaA.MahdinH.LimD.MahmoudM. A. ... & YangT. J. (2021). Review of data fusion methods for real-time and multi-sensor traffic flow analysis. IEEE Access, 9, 51258-51276.Search in Google Scholar
Zhang, W., Ning, Y., & Suo, C. (2019). A method based on multi-sensor data fusion for UAV safety distance diagnosis. Electronics, 8(12), 1467.ZhangW.NingY. & SuoC. (2019). A method based on multi-sensor data fusion for UAV safety distance diagnosis. Electronics, 8(12), 1467.Search in Google Scholar
Tran, M. Q., Liu, M. K., & Elsisi, M. (2022). Effective multi-sensor data fusion for chatter detection in milling process. ISA transactions, 125, 514-527.TranM. Q.LiuM. K. & ElsisiM. (2022). Effective multi-sensor data fusion for chatter detection in milling process. ISA transactions, 125, 514-527.Search in Google Scholar
Li, N., Gebraeel, N., Lei, Y., Fang, X., Cai, X., & Yan, T. (2021). Remaining useful life prediction based on a multi-sensor data fusion model. Reliability Engineering & System Safety, 208, 107249.LiN.GebraeelN.LeiY.FangX.CaiX. & YanT. (2021). Remaining useful life prediction based on a multi-sensor data fusion model. Reliability Engineering & System Safety, 208, 107249.Search in Google Scholar
Xiao, F. (2020). Evidence combination based on prospect theory for multi-sensor data fusion. ISA transactions, 106, 253-261.XiaoF. (2020). Evidence combination based on prospect theory for multi-sensor data fusion. ISA transactions, 106, 253-261.Search in Google Scholar
Deng, Z., & Wang, J. (2020). Multi-sensor data fusion based on improved analytic hierarchy process. IEEE Access, 8, 9875-9895.DengZ. & WangJ. (2020). Multi-sensor data fusion based on improved analytic hierarchy process. IEEE Access, 8, 9875-9895.Search in Google Scholar
Kong, L., Peng, X., Chen, Y., Wang, P., & Xu, M. (2020). Multi-sensor measurement and data fusion technology for manufacturing process monitoring: a literature review. International journal of extreme manufacturing, 2(2), 022001.KongL.PengX.ChenY.WangP. & XuM. (2020). Multi-sensor measurement and data fusion technology for manufacturing process monitoring: a literature review. International journal of extreme manufacturing, 2(2), 022001.Search in Google Scholar
Sun, G., Zhang, Z., Zheng, B., & Li, Y. (2019). Multi-sensor data fusion algorithm based on trust degree and improved genetics. Sensors, 19(9), 2139.SunG.ZhangZ.ZhengB. & LiY. (2019). Multi-sensor data fusion algorithm based on trust degree and improved genetics. Sensors, 19(9), 2139.Search in Google Scholar
Xiao, F. (2019). Multi-sensor data fusion based on the belief divergence measure of evidences and the belief entropy. Information Fusion, 46, 23-32.XiaoF. (2019). Multi-sensor data fusion based on the belief divergence measure of evidences and the belief entropy. Information Fusion, 46, 23-32.Search in Google Scholar