Abstract
Accuracy in IoT data acquisition has been an indispensable need to meet the increasing demand for time-sensitive data analysis, and real-time decision-making. Conspicuously, this study proposes a Quantum Computing inspired technique of temporal space optimization for real-time big IoT applications. For this purpose, quantification of IoT sensors is performed in terms of Sensors of Interest (SoI) and Degree of Aptness (DoA) measure to minimize IoT sensor-space in real-time. The proposed methodology incorporates quantum computing-based formalization of IoT sensor parameters to present a Quantum-Temporal Minimization Algorithm. Moreover, 2 key performance indicators in terms of Data Similarity Analysis and Energy Efficiency are estimated for optimized efficacy. To evaluate the presented technique, numerous simulations are performed in real-time scenario of vehicular traffic determination over 1km of Regional National Highway using 70 WiSense nodes comprising of noise sensors, vibration sensors, and Raspberry Pi device. Acquired data comprising of 28,586 segments are stored in the Amazon EC2 cloud database for evaluation. The performance enhancement is estimated based on comparative analysis with several state-of-the-art optimization techniques. Results registered depict that significant improvements are registered for the presented technique in terms of temporal effectiveness, and performance parameters like Accuracy, Correlation Analysis, and Reliability.
Similar content being viewed by others
Explore related subjects
Discover the latest articles, news and stories from top researchers in related subjects.Notes
References
Ajagekar A, Humble T, You F (2020) Quantum computing based hybrid solution strategies for large-scale discrete-continuous optimization problems. Comput Chem Eng 132:1–54
Bai L, Rossi L, Cui L, Cheng J, Hancock ER (2019) A quantum-inspired similarity measure for the analysis of complete weighted graphs. In: IEEE transactions on cybernetics pp. 1–14
Bandyopadhyay D, Sen J (2011) Internet of things: applications and challenges in technology and standardization. Wirel Personal Commun 58(1):49–69
Bhatia M, Sood SK, Kaur S (2019) Quantum-based predictive fog scheduler for iot applications. Comput Industry 111:51–67
Boveiri, H. and Elhoseny, M. (2018) A-coa: an adaptive cuckoo optimization algorithm for continuous and combinatorial optimization. Neural Comput Appl 32:1–25
Boveiri HR (2019) An enhanced cuckoo optimization algorithm for task graph scheduling in cluster-computing systems. Soft Comput 24:1–19
Boveiri HR, Javidan R, Khayami R, (2020) An intelligent hybrid approach for task scheduling in cluster computing environments as an infrastructure for biomedical applications. Expert Syst 2020:e12536
Boveiri HR, Khayami R, Elhoseny M, Gunasekaran M (2019) An efficient swarm-intelligence approach for task scheduling in cloud-based internet of things applications. J Ambient Intell Human Comput 10(9):3469–3479
Brous P, Janssen M, Herder P (2019) The dual effects of the internet of things (iot): A systematic review of the benefits and risks of iot adoption by organizations. Int J Inform Manag: 1–17
Chang Z, Cao J, Zhang Y (2018) A novel image segmentation approach for wood plate surface defect classification through convex optimization. J Forestry Res 29(6):1789–1795
Czyzewski, A., Marciniuk, K. and Kostek, B. (2016) Dynamic road traffic density estimation employing noise mapping with the use of grid supercomputing. J Acoustical Soc Am 139(4)
Dey, A., Bhattacharyya, S., Dey, S., Platos, J. and Snasel, V. (2019), Quantum-inspired bat optimization algorithm for automatic clustering of grayscale images. In: Recent Trends in Signal and Image Processing, Springer, pp. 89–101
Ebrahimi S, Bayat-Sarmadi S, Mosanaei-Boorani H (2019) Post-quantum cryptoprocessors optimized for edge and resource-constrained devices in iot. In: IEEE Internet of Things Journal pp 1–8
Fan D, Song Z, Jon S et al (2020) An improved quantum clustering algorithm with weighted distance based on pso and research on the prediction of electrical power demand. J Intell Fuzzy Syst (Preprint) 38:1–9
Fiasché, M., Liberati, D. E., Gualandi, S. and Taisch, M. (2018) Quantum-inspired evolutionary multiobjective optimization for a dynamic production scheduling approach. In: Multidisciplinary approaches to neural computing, Springer, pp 191–201
Gubbi J, Buyya R, Marusic S, Palaniswami M (2013) Internet of things (iot): a vision, architectural elements, and future directions. Future Generation Comput Syst 29(7):1645–1660
Hadfield S, Wang Z, O’Gorman B, Rieffel EG, Venturelli D, Biswas R (2019) From the quantum approximate optimization algorithm to a quantum alternating operator ansatz. Algorithms 12(2):1–45
Han K-H, Kim J-H (2002) Quantum-inspired evolutionary algorithm for a class of combinatorial optimization. IEEE Trans Evol Comput 6(6):580–593
Iwendi, C., Maddikunta, P. K. R., Gadekallu, T. R., Lakshmanna, K., Bashir, A. K. and Piran, M. J. (2020) A metaheuristic optimization approach for energy efficiency in the iot networks. Software: Practice and Experience pp 1–14
Jagatheesan K, Samanta S, Choudhury A, Dey N, Anand B, Ashour AS (2018) Quantum inspired evolutionary algorithm in load frequency control of multi-area interconnected thermal power system with non-linearity. In: Quantum computing: an environment for intelligent large scale real application, Springer, pp. 389–417
Jang J, Yang J, Hong A (2014) Measurement of knowledge potential in the ict service industry: a quantum mechanics view. In: International conference on intellectual capital and knowledge management and organisational learning, Academic Conferences International Limited, p 248
Khan AA, Rehmani MH, Rachedi A (2017) Cognitive-radio-based internet of things: applications, architectures, spectrum related functionalities, and future research directions. IEEE Wirel Commun 24(3):17–25
Li P, Zhu H. (n.d.) (2016) Parameter selection for ant colony algorithm based on bacterial foraging algorithm. Math Prob Eng 2016:1–12
Li Q, Gao L, Zhang W, Zhang B (2016) Requirements and optimization of sensor parameters for mineral extraction. In: Hyperspectral image and signal processing: evolution in remote sensing (WHISPERS), 2015 7th Workshop on. IEEE 1–4
Lin J, Yu W, Zhang N, Yang X, Zhang H, Zhao W (2017) A survey on internet of things: architecture, enabling technologies, security and privacy, and applications. IEEE Internet Things J 4(5):1125–1142
Liu Y, Yang C, Jiang L, Xie S, Zhang Y (2019) Intelligent edge computing for iot-based energy management in smart cities. IEEE Netw 33(2):111–117
Liu Z, Choo K-KR, Grossschadl J (2018) Securing edge devices in the post-quantum internet of things using lattice-based cryptography. IEEE Commun Mag 56(2):158–162
Luo T, Huang J, Kanhere SS, Zhang J, Das SK (2019) Improving iot data quality in mobile crowd sensing: a cross validation approach. IEEE Internet Things J 6:U1–14
Maarala AI, Su X, Riekki J (2017) Semantic reasoning for context-aware internet of things applications. IEEE Internet Things J 4(2):461–473
Manavalan E, Jayakrishna K (2019) A review of internet of things (iot) embedded sustainable supply chain for industry 4.0 requirements. Comput Industrial Eng 127:925–953
Mumtaz S, Alsohaily A, Pang Z, Rayes A, Tsang KF, Rodriguez J (2017) Massive internet of things for industrial applications: addressing wireless iiot connectivity challenges and ecosystem fragmentation. IEEE Industrial Electron Mag 11(1):28–33
Nguyen MT, Boveiri HR (2020) Energy-efficient sensing in robotic networks. Measurement: 107708
Niwattanakul S, Singthongchai J, Naenudorn E, Wanapu S (2013) Using of jaccard coefficient for keywords similarity. In: Proceedings of the international multiconference of engineers and computer scientists 1:380–384
Rajpurohit J, Sharma TK, Abraham A, Vaishali A (2017) Glossary of metaheuristic algorithms. Int J Comput Inform Syst Industrial Manag Appl 9:181–205
Song L, Chai KK, Chen Y, Loo J, Jimaa S, Iraqi Y (2019) Energy efficient cooperative coalition selection in cluster-based capillary networks for cmimo iot systems. Comput Netw 153:92–102
Srinidhi N, Kumar SD, Venugopal K (2019) Network optimizations in the internet of things: a review. Eng Sci Technol Int J 22(1):1–21
Steiger DS, Häner T, Troyer M (2018) Projectq: an open source software framework for quantum computing. Quantum 2(49):1–13
Talal M, Zaidan A, Zaidan B, Albahri A, Alamoodi A, Albahri O, Alsalem M, Lim C, Tan KL, Shir W et al (2019) Smart home-based iot for real-time and secure remote health monitoring of triage and priority system using body sensors: Multi-driven systematic review. J Med Syst 43(3):1–34
Tang Z, Zhang X, Li K, Li K (2018) An intermediate data placement algorithm for load balancing in spark computing environment. Future Generation Comput Syst 78:287–301
Thakkar MD, Vanzara RD (2020) Quantum internet and e-governance: a futuristic perspective. In: Quantum cryptography and the future of cyber security’. IGI Global 109–132
Xiong H, Wu Z, Fan H, Li G, Jiang G (2018) Quantum rotation gate in quantum-inspired evolutionary algorithm: a review, analysis and comparison study. Swarm Evol Comput pp 1–24
Zhao W, Guo S, Zhou Y, Zhang J (2018) A quantum-inspired genetic algorithm-based optimization method for mobile impact test data integration. Comput-Aided Civ Infrastructure Eng 33(5):411–422
Zhao W, Yan L, Zhang Y (2018) Geometric-constrained multi-view image matching method based on semi-global optimization. Geo-Spatial Inform Sci 21(2):115–126
Zhu Q, Sailhan F, Uddin Y, Issarny V, Venkatasubramanian N (2019) Multi-sensor calibration planning in iot-enabled smart space pp 722–731
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
Bhatia, M., Sood, S. & Sood, V. A novel quantum-inspired solution for high-performance energy-efficient data acquisition from IoT networks. J Ambient Intell Human Comput 14, 5001–5020 (2023). https://doi.org/10.1007/s12652-020-02494-x
Received:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s12652-020-02494-x