Abstract
Due to the nature of the continuous and large volume of data transmission, energy conservation appears particularly tedious at WSN. This exhausts the energy faster, leading to failure of the sensor network. With the increase in the number of applications, there is high complexity in data transmission and more extensive accuracy requirements over the last few years, extended use of sensors challenges on the increase in sensors battery life-time too. In leveraging the display and control of the sensor operation, the multisensor data fusion technique plays a vital role. In the Condition-based Environment Monitoring System application, the proposed ADKF-DT-MF for the multisensor data fusion is implemented to detect natural and human disturbances to provide accurate and rapid environmental awareness. This paper describes the energy conservation module of the proposed system in concern to accuracy, processing efficiency, energy consumption, and the overall network operational life-time. The simulation results show a better accuracy of 97% with an energy consumption of 0.95 compared with the existing FIM, VWFFA, and Fuzzy algorithms.
Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.References
Ahmadi-Pour M, Ludwig T, Olaverri-Monreal C (2017) Statistical modelling of multisensor data fusion. In: 2017 IEEE international conference on vehicular electronics and safety (ICVES). IEEE, pp 196–201
Álvarez R, Díez-González J, Alonso E, Fernández-Robles L, Castejón-Limas M, Perez H (2019) Accuracy analysis in sensor networks for asynchronous positioning methods. Sensors 19(13):3024
Cauteruccio F, Fortino G, Guerrieri A, Terracina G (2014). Discovery of hidden correlations between heterogeneous wireless sensor data streams. In: International conference on internet and distributed computing systems. Springer, Cham, pp 383–395
Chauhan V, Soni S (2019) Mobile sink-based energy efficient cluster head selection strategy for wireless sensor networks. J Ambient Intell Hum Comput 11:4453–4466
Das S, Barani S, Wagh S, Sonavane SS (2017) Extending life-time of wireless sensor networks using multisensor data fusion. Sādhanā 42(7):1083–1090
de Farias CM, Pirmez L, Delicato FC, Pires PF, Guerrieri A, Fortino G et al. (2017) A multisensor data fusion algorithm using the hidden correlations in Multiapplication Wireless Sensor data streams. In: 2017 IEEE 14th international conference on networking, sensing and control (ICNSC). IEEE, pp 96–102
De Paola A, Ferraro P, Gaglio S, Re GL (2016) Context-awareness for multisensor data fusion in smart environments. In: Conference of the Italian Association for Artificial Intelligence. Springer, Cham, pp. 377–391
Eddine-Boubiche D, Trejo-Sánchez JA, Toral-Cruz H, López-Martínez JL, Hidoussi F (2018) Wireless sensor technology for intelligent data sensing: Research trends and challenges. Intelligent data sensing and processing for health and well-being applications. Academic Press, Oxford, pp 41–58
Farias CMD, Li W, Delicato FC, Pirmez L, Zomaya AY, Pires PF, Souza JND (2016) A systematic review of shared sensor networks. ACM Comput Surv (CSUR) 48(4):1–50
Ferrer-Cid P, Barcelo-Ordinas JM, Garcia-Vidal J, Ripoll A, Viana M (2020) Multisensor data fusion calibration in IoT air pollution platforms. IEEE IoT J 7(4):3124–3132
Foresti GL, Farinosi M, Vernier M (2015) Situational awareness in smart environments: socio-mobile and sensor data fusion for emergency response to disasters. J Ambient Intell Hum Comput 6(2):239–257
Khaleghi B, Khamis A, Karray FO, Razavi SN (2013) Multisensor data fusion: a review of the state-of-the-art. Inf Fus 14(1):28–44
Liu B (2016) Optimization of hierarchical data fusion in Wireless Sensor Networks. In: 2016 6th international conference on electronics information and emergency communication (ICEIEC). IEEE, pp 85–88
Muzammal M, Talat R, Sodhro AH, Pirbhulal S (2020) A multi-sensor data fusion enabled ensemble approach for medical data from body sensor networks. Inf Fus 53:155–164
Tang Y, Zhou D, Xu S, He Z (2017) A weighted belief entropy-based uncertainty measure for multisensor data fusion. Sensors 17(4):928
Ullah I, Youn HY (2020) Intelligent data fusion for smart IoT environment: a survey. Wirel Pers Commun 114:409–430
Wagner A, Speiser S, Harth A (2010) Semantic web technologies for a smart energy grid: requirements and challenges. In: Proceedings of 9th international semantic web conference (ISWC2010), pp 33–37
Wang Q, Liao H, Wang K, Sang Y (2011) A variable weight based fuzzy data fusion algorithm for WSN. In: International conference on ubiquitous intelligence and computing. Springer, Berlin, pp 490–502
Zhao X, Xiong X, Sun Z, Zhang X, Sun Z (2019) An immune clone selection based power control strategy for alleviating energy hole problems in wireless sensor networks. J Ambient Intell Hum Comput 11:2505–2518
Author information
Authors and Affiliations
Corresponding author
Additional information
Publisher's Note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Rights and permissions
About this article
Cite this article
Reyana, A., Vijayalakshmi, P. Multisensor data fusion technique for energy conservation in the wireless sensor network application “condition-based environment monitoring”. J Ambient Intell Human Comput (2021). https://doi.org/10.1007/s12652-020-02687-4
Received:
Accepted:
Published:
DOI: https://doi.org/10.1007/s12652-020-02687-4