Abstract
Due to advancements in information and communication technology, the Internet of Things has gained popularity in a variety of academic fields. In IoT-based healthcare systems, numerous wearable sensors are employed to collect various data from patients. The healthcare system has been challenged by the increase in the number of people living with chronic and infectious diseases. There are several existing IoT-based healthcare systems and ontology-based methods to judiciously diagnose, and monitor patients with chronic diseases in real-time and for a very long term. This was done to drastically minimize the vast manual labor in healthcare monitoring and recommendation systems. The current monitoring and recommendation systems generally utilised Type-1 Fuzzy Logic (T1FL) or ontology that is unsuitable owing to uncertainty and inconsistency in the processing, and analysis of observed data. Due to the expansion of risk and unpredictable factors in chronic and infectious patients such as diabetes, heart attacks, and COVID-19, these healthcare systems cannot be utilized to collect thorough physiological data about patients. Furthermore, utilizing the current T1FL ontology-based method to extract the ideal membership value of risk factors becomes challenging and problematic, resulting in unsatisfactory outcomes. Therefore, this chapter discusses the applicability of IoT-based enabled Type-2 Fuzzy Logic (T2FL) in the healthcare system, and the challenges and prospects of their applications were also reviewed. The chapter proposes an IoT-based enabled T2FL system for monitoring patients with diabetes by extracting the physiological factors from patients’ bodies. The wearable sensors were used to capture the physiological factors of the patients, and the data capture was used for the monitoring of patients. The results from the experiment reveal that the model is very efficient and effective for diabetes patient monitoring, using patient risk factors.
Access this chapter
Tax calculation will be finalised at checkout
Purchases are for personal use only
Similar content being viewed by others
References
Awotunde, J.B., Ayoade, O.B., Ajamu, G.J., AbdulRaheem, M., Oladipo, I.D.: Internet of Things and cloud activity monitoring systems for elderly healthcare. Stud. Comput. Intell. 2022(1011), 181–207 (2022)
Ullah, I., Youn, H.Y., Han, Y.H.: Integration of type-2 fuzzy logic and Dempster-Shafer theory for accurate inference of IoT-based healthcare system. Futur. Gener. Comput. Syst. 124, 369–380 (2021)
Awotunde, J.B., Jimoh, R.G., AbdulRaheem, M., Oladipo, I.D., Folorunso, S.O., Ajamu, G.J.: IoT-based wearable body sensor network for COVID-19 pandemic. In: Advances in Data Science and Intelligent Data Communication Technologies for COVID-19, pp. 253–275 (2022)
Qiu, T., Chen, N., Li, K., Atiquzzaman, M., Zhao, W.: How can heterogeneous internet of things build our future: a survey. IEEE Commun. Surv. Tutor. 20(3), 2011–2027 (2018)
Awotunde, J.B., Jimoh, R.G., Ogundokun, R.O., Misra, S., Abikoye, O.C.: Big data analytics of IoT-based cloud system framework: smart healthcare monitoring systems. Internet of Things 2022, 181–208 (2022)
Wu, C.H., Lam, C.H., Xhafa, F., Tang, V., Ip, W.H.: IoT for Elderly, Aging and EHealth: Quality of Life and Independent Living for the Elderly, vol. 108. Springer Nature (2022)
Guo, X., Lin, H., Wu, Y., Peng, M.: A new data clustering strategy for enhancing mutual privacy in healthcare IoT systems. Futur. Gener. Comput. Syst. 113, 407–417 (2020)
Uscher-Pines, L., Sousa, J., Raja, P., Mehrotra, A., Barnett, M.L., Huskamp, H.A.: Suddenly becoming a “virtual doctor”: experiences of psychiatrists transitioning to telemedicine during the COVID-19 pandemic. Psychiatr. Serv. 71(11), 1143–1150 (2020)
Aceto, G., Persico, V., Pescapé, A.: Industry 4.0 and health: Internet of things, big data, and cloud computing for healthcare 4.0. J. Indus. Inform. Integr. 18, 100129 (2020)
Awotunde, J.B., Folorunso, S.O., Bhoi, A.K., Adebayo, P.O., Ijaz, M.F.: Disease diagnosis system for IoT-based wearable body sensors with machine learning algorithm. In: Hybrid Artificial Intelligence and IoT in Healthcare, pp. 201–222. Springer, Singapore (2021)
Ivanov, M., Markova, V., Ganchev, T.: An overview of network architectures and technology for wearable sensor-based health monitoring systems. In: 2020 International Conference on Biomedical Innovations and Applications (BIA), pp. 81–84. IEEE (2020)
Awotunde, J.B., Jimoh, R.G., Folorunso, S.O., Adeniyi, E.A., Abiodun, K.M., Banjo, O.O.: Privacy and security concerns in IoT-based healthcare systems. In: The Fusion of Internet of Things, Artificial Intelligence, and Cloud Computing in Health Care, pp. 105–134. Springer, Cham (2021)
Li, W., Chai, Y., Khan, F., Jan, S.R.U., Verma, S., Menon, V.G., Li, X.: A comprehensive survey on machine learning-based big data analytics for IoT-enabled smart healthcare systems. Mob. Netw. Appl. 26(1), 234–252 (2021)
Chiang, T.C., Liang, W.H.: A context-aware interactive health care system based on ontology and fuzzy inference. J. Med. Syst. 39(9), 1–25 (2015)
Du, J., Jing, H., Choo, K.K.R., Sugumaran, V., Castro-Lacouture, D.: An ontology and multi-agent-based decision support framework for prefabricated component supply chain. Inf. Syst. Front. 22(6), 1467–1485 (2020)
Kalamkar, S., Geetha Mary, A.: Heterogeneous data fusion for healthcare monitoring: a survey. In: Big Data, IoT, and Machine Learning, pp. 205–232. CRC Press (2020)
Selvan, N.S., Vairavasundaram, S., Ravi, L.: Fuzzy ontology-based personalized recommendation for internet of medical things with linked open data. J. Intell. Fuzzy Syst. 36(5), 4065–4075 (2019)
Collotta, M., Pau, G., Bobovich, A.V.: A fuzzy data fusion solution to enhance the QoS and the energy consumption in wireless sensor networks. In: Wireless Communications and Mobile Computing (2017)
Rasi, D., Deepa, S.N.: Energy optimization of Internet of Things in wireless sensor network models using type-2 fuzzy neural systems. Int. J. Commun. Syst. 34(17), e4967 (2021)
Jana, D.K., Basu, S.: Novel Internet of Things (IoT) for controlling indoor temperature via Gaussian type-2 fuzzy logic. Int. J. Model. Simul. 41(2), 92–100 (2021)
Ogundokun, R.O., Awotunde, J.B., Adeniyi, E.A., Misra, S.: Application of the Internet of Things (IoT) to fight the COVID-19 Pandemic. Internet of Things 2022, 83–103 (2022)
Sennan, S., Ramasubbareddy, S., Balasubramaniyam, S., Nayyar, A., Abouhawwash, M., Hikal, N.A.: T2FL-PSO: Type-2 fuzzy logic-based particle swarm optimization algorithm used to maximize the lifetime of Internet of Things. IEEE Access 9, 63966–63979 (2021)
Awotunde, J.B., Abiodun, K.M., Adeniyi, E.A., Folorunso, S.O., Jimoh, R.G.: (2021) A deep learning-based intrusion detection technique for a secured IoMT system. Commun. Comput. Inform. Sci. 1547 CCIS, 50–62
Adeniyi, E.A., Ogundokun, R.O., Awotunde, J.B.: IoMT-based wearable body sensors network healthcare monitoring system. Stud. Comput. Intell. 2021(933), 103–121 (2021)
Awotunde, J.B., Bhoi, A.K., Barsocchi, P.: Hybrid cloud/fog environment for healthcare: an exploratory study, opportunities, challenges, and future prospects. In: Hybrid Artificial Intelligence and IoT in Healthcare, pp. 1–20. Springer, Singapore (2021)
Tang, J.: Discussion on health service system of mobile medical institutions based on Internet of Things and cloud computing. J. Healthc. Eng. (2022)
Alreshidi, E.J.: Introducing Fog Computing (FC) technology to Internet of Things (IoT) cloud-based anti-theft vehicles solutions. Int. J. Syst. Dyn. Appl. (IJSDA) 11(3), 1–21 (2022)
Firouzi, F., Farahani, B., Marinšek, A.: The convergence and interplay of edge, fog, and cloud in the AI-driven Internet of Things (IoT). Inf. Syst. 107, 101840 (2022)
Tang, Q., Xie, R., Yu, F.R., Chen, T., Zhang, R., Huang, T., Liu, Y.: Distributed task scheduling in serverless edge computing networks for the Internet of Things: a learning approach. IEEE Internet of Things J. (2022)
Ali, O., Ishak, M.K., Bhatti, M.K.L., Khan, I., Kim, K.I.: A comprehensive review of internet of things: technology stack, middlewares, and fog/edge computing interface. Sensors 22(3), 995 (2022)
Malik, S., Gupta, D.: Examining the adoption and application of Internet of Things for smart cities. In: IoT and IoE Driven Smart Cities, pp. 97–119. Springer, Cham (2022)
Abiodun, M.K., Adeniyi, E.A., Awotunde, J.B., Bhoi, A.K., AbdulRaheem, M., Oladipo, I.D.: A framework for the actualization of green cloud-based design for smart cities. In: IoT and IoE Driven Smart Cities, pp. 163–182. Springer, Cham (2022)
Kamruzzaman, M.M., Alrashdi, I., Alqazzaz, A.: New opportunities, challenges, and applications of edge-AI for connected healthcare in internet of medical things for smart cities. J. Healthc. Eng. (2022)
Dogra, A.K., Kaur, J.: Moving towards smart transportation with machine learning and Internet of Things (IoT): a review. J. Smart Environ. Green Comput. 2(1), 3–18 (2022)
Shamshuddin, K., Jayalaxmi, G.N.: Privacy-preserving scheme for smart transportation in 5G integrated IoT. In: ICT with Intelligent Applications, pp. 59–67. Springer, Singapore (2022)
Sinha, B.B., Dhanalakshmi, R.: Recent advancements and challenges of Internet of Things in smart agriculture: a survey. Futur. Gener. Comput. Syst. 126, 169–184 (2022)
Rehman, A., Saba, T., Kashif, M., Fati, S.M., Bahaj, S.A., Choudhary, H.: A revisit of Internet of Things technologies for monitoring and control strategies in smart agriculture. Agronomy 12(1), 127 (2022)
Dhaou, I.S.B., Kondoro, A., Kakakhel, S.R.U., Westerlund, T., Tenhunen, H.: Internet of Things technologies for smart grid. In: Research Anthology on Smart Grid and Microgrid Development, pp. 805–832. IGI Global (2022)
Krishnan, P.R., Jacob, J.: An IOT based efficient energy management in smart grid using DHOCSA technique. Sustain. Cities Soc. 79, 103727 (2022)
Prajapati, D., Chan, F.T., Chelladurai, H., Lakshay, L., Pratap, S.: An Internet of Things embedded sustainable supply chain management of B2B e-commerce. Sustainability 14(9), 5066 (2022)
Hrouga, M., Sbihi, A., Chavallard, M.: The potentials of combining Blockchain technology and Internet of Things for digital reverse supply chain: a case study. J. Clean. Prod. 130609 (2022)
Abikoye, O.C., Bajeh, A.O., Awotunde, J.B., Ameen, A.O., Mojeed, H.A., Abdulraheem, M., ... & Salihu, S.A.: Application of internet of thing and cyber physical system in Industry 4.0 smart manufacturing. Adv. Sci. Technol. Innov. 2021, pp. 203–217 (2021)
Hagras, H., Wagner, C.: Towards the wide spread use of type-2 fuzzy logic systems in real world applications. IEEE Comput. Intell. Mag. 7(3), 14–24 (2012)
Hagras, H., Wagner, C.: Introduction to interval type-2 fuzzy logic controllers-towards better uncertainty handling in real world applications. IEEE Syst. Man Cybern. eNewsl. 27 (2009)
Dalpe, A.J., Thein, M.W.L., Renken, M.: PERFORM: a metric for evaluating autonomous system performance in marine testbed environments using interval type-2 fuzzy logic. Appl. Sci. 11(24), 11940 (2021)
Mittal, K., Jain, A., Vaisla, K.S., Castillo, O., Kacprzyk, J.: A comprehensive review on type 2 fuzzy logic applications: past, present and future. Eng. Appl. Artif. Intell. 95, 103916 (2020)
Melin, P., Castillo, O.: A review on type-2 fuzzy logic applications in clustering, classification and pattern recognition. Appl. Soft Comput. 21, 568–577 (2014)
Karnik, N.N., Mendel, J.M.: Introduction to type-2 fuzzy logic systems. In: 1998 IEEE International Conference on Fuzzy Systems Proceedings. IEEE world congress on Computational Intelligence (Cat. No. 98CH36228), vol. 2, pp. 915–920. IEEE (1998)
Castillo, O., Melin, P., Kacprzyk, J., Pedrycz, W.: Type-2 fuzzy logic: theory and applications. In: 2007 IEEE International Conference on Granular Computing (GRC 2007), pp. 145–145). IEEE (2007)
Hagras, H.A.: A hierarchical type-2 fuzzy logic control architecture for autonomous mobile robots. IEEE Trans. Fuzzy Syst. 12(4), 524–539 (2004)
Wijayasekara, D. S.: Improving understandability and uncertainty modeling of data using Fuzzy Logic Systems. Virginia Commonwealth University (2016)
Hagras, H.: Type-2 FLCs: a new generation of fuzzy controllers. IEEE Comput. Intell. Mag. 2(1), 30–43 (2007)
Zhou, Y.S., Lai, L.Y.: Optimal design for fuzzy controllers by genetic algorithms. IEEE Trans. Ind. Appl. 36(1), 93–97 (2000)
Folorunso, S.O., Awotunde, J.B., Ayo, F.E., Abdullah, K.K.A.: RADIoT: the unifying framework for IoT, radiomics and deep learning modeling. Intell. Syst. Ref. Libr. 2021(209), 109–128 (2021)
Bajeh, A.O., Mojeed, H.A., Ameen, A.O., Abikoye, O.C., Salihu, S.A., Abdulraheem, M., ... & Awotunde, J.B.: Internet of robotic things: its domain, methodologies, and applications. Adv. Sci. Technol. Innov. 2021, 135–146 (2021)
Papaioannou, M., Karageorgou, M., Mantas, G., Sucasas, V., Essop, I., Rodriguez, J., Lymberopoulos, D.: A survey on security threats and countermeasures in internet of medical things (IoMT). Trans. Emerg. Telecommun. Technol. e4049 (2020)
RM, S.P., Maddikunta, P.K.R., Parimala, M., Koppu, S., Gadekallu, T.R., Chowdhary, C.L., Alazab, M.: An effective feature engineering for DNN using hybrid PCA-GWO for intrusion detection in IoMT architecture. Comput. Commun. 160, 139–149
Awotunde, J.B., Oluwabukonla, S., Chakraborty, C., Bhoi, A.K., Ajamu, G.J.: Application of artificial intelligence and big data for fighting COVID-19 pandemic. Decis. Sci. COVID-19, 3–26 (2022)
Haghi, M., Neubert, S., Geissler, A., Fleischer, H., Stoll, N., Stoll, R., Thurow, K.: A flexible and pervasive IoT-based healthcare platform for physiological and environmental parameters monitoring. IEEE Internet Things J. 7(6), 5628–5647 (2020)
Muhammad, L.J., Algehyne, E.A.: Fuzzy based expert system for diagnosis of coronary artery disease in Nigeria. Heal. Technol. 11(2), 319–329 (2021)
Yew, H.T., Ng, M.F., Ping, S.Z., Chung, S.K., Chekima, A., Dargham, J.A.: Iot based real-time remote patient monitoring system. In: 2020 16th IEEE International Colloquium On Signal Processing & Its Applications (CSPA), pp. 176–179. IEEE
Wang, X., Cai, S.: Secure healthcare monitoring framework integrating NDN-based IoT with edge cloud. Futur. Gener. Comput. Syst. 112, 320–329 (2020)
Reddy, G.T., Khare, N.: Hybrid firefly-bat optimized fuzzy artificial neural network based classifier for diabetes diagnosis. Int. J. Intell. Eng. Syst. 10(4), 18–27 (2017)
Lee, C.S., Wang, M.H., Hagras, H.: A type-2 fuzzy ontology and its application to personal diabetic-diet recommendation. IEEE Trans. Fuzzy Syst. 18(2), 374–395 (2010)
Habib, C., Makhoul, A., Darazi, R., Salim, C.: Self-adaptive data collection and fusion for health monitoring based on body sensor networks. IEEE Trans. Industr. Inf. 12(6), 2342–2352 (2016)
Muzammal, M., Talat, R., Sodhro, A.H., Pirbhulal, S.: A multi-sensor data fusion enabled ensemble approach for medical data from body sensor networks. Inform. Fus. 53, 155–164 (2020)
Wu, T., Wu, F., Redoute, J.M., Yuce, M.R.: An autonomous wireless body area network implementation towards IoT connected healthcare applications. IEEE Access 5, 11413–11422 (2017)
Pinto, A.R., Montez, C., Araújo, G., Vasques, F., Portugal, P.: An approach to implement data fusion techniques in wireless sensor networks using genetic machine learning algorithms. Inform. Fus. 15, 90–101 (2014)
Liu, K., Yang, T., Ma, J., Cheng, Z.: Fault-tolerant event detection in wireless sensor networks using evidence theory. KSII Trans. Internet Inform. Syst. (TIIS) 9(10), 3965–3982 (2015)
Awotunde, J.B., Chakraborty, C., Adeniyi, A.E.: Intrusion detection in industrial internet of things network-based on deep learning model with rule-based feature selection.Wirel. Commun. Mob. Comput. (2021)
Awotunde, J.B., Misra, S., Ayoade, O.B., Ogundokun, R.O., Abiodun, M.K.: Blockchain-based framework for secure medical information in Internet of Things system. In: Blockchain Applications in the Smart Era, pp. 147–169. Springer, Cham (2022)
Awotunde, J.B., Chakraborty, C., Folorunso, S.O.: A secured smart healthcare monitoring systems using blockchain technology. In: Intelligent Internet of Things for Healthcare and Industry, pp. 127–143. Springer, Cham (2022)
Sajid, A., Abbas, H., Saleem, K.: Cloud-assisted IoT-based SCADA systems security: a review of the state of the art and future challenges. IEEE Access 4, 1375–1384 (2016)
Rizvi, S., Orr, R.J., Cox, A., Ashokkumar, P., Rizvi, M.R.: Identifying the attack surface for IoT network. Internet of Things 9, 100162 (2020)
Awotunde, J.B., Misra, S.: Feature extraction and artificial intelligence-based intrusion detection model for a secure Internet of Things networks. In: Illumination of Artificial Intelligence in Cybersecurity and Forensics, pp. 21–44. Springer, Cham (2022)
Mendel, J.M., John, R.B.: Type-2 fuzzy sets made simple. IEEE Trans. Fuzzy Syst. 10(2), 117–127 (2002)
Author information
Authors and Affiliations
Corresponding author
Editor information
Editors and Affiliations
Rights and permissions
Copyright information
© 2023 The Author(s), under exclusive license to Springer Nature Switzerland AG
About this chapter
Cite this chapter
Awotunde, J.B., Folorunsho, O., Mustapha, I.O., Olusanya, O.O., Akanbi, M.B., Abiodun, K.M. (2023). An Enhanced Internet of Things Enabled Type-2 Fuzzy Logic for Healthcare System Applications. In: Castillo, O., Kumar, A. (eds) Recent Trends on Type-2 Fuzzy Logic Systems: Theory, Methodology and Applications. Studies in Fuzziness and Soft Computing, vol 425. Springer, Cham. https://doi.org/10.1007/978-3-031-26332-3_9
Download citation
DOI: https://doi.org/10.1007/978-3-031-26332-3_9
Published:
Publisher Name: Springer, Cham
Print ISBN: 978-3-031-26331-6
Online ISBN: 978-3-031-26332-3
eBook Packages: Intelligent Technologies and RoboticsIntelligent Technologies and Robotics (R0)