Low carbon energy industry and network economy prediction based on sensors and real-time data processing
DOI:
https://doi.org/10.4108/ew.6554Keywords:
Sensor, Real-time data processing, Low-carbon energy industry, Network economic forecastingAbstract
The widespread use of sensors provides a large amount of real-time data for enterprises and decision-makers, providing more accurate information support for the prediction and decision-making of the network economy. With the help of Internet of Things technology, the data collected by sensors is transmitted in real time to data centers or cloud platforms. Real time data processing technology is used to clean, denoise, and analyze the data in real time, ensuring the accuracy and timeliness of the data. Perform pattern recognition and trend analysis on historical data, discover hidden patterns and correlations in the data, construct predictive and decision-making models to predict future economic trends and make reasonable decisions, continuously optimize and adjust the model to adapt to real-time data changes and dynamic changes in the economic environment, and improve the accuracy and efficiency of the model. The experimental results show that the network economy prediction and decision-making model based on sensor networks and Internet of Things technology can more accurately predict economic development trends, improve decision-making efficiency and accuracy. The large amount of data provided by sensor networks provides sufficient support for the construction and optimization of models.
Downloads
References
[1] Z. Lv, A. K. Singh, Big data analysis of internet of things system. ACM Transactions on Internet Technology 21(2) (2021) 1-15.
[2] C. Anand, Comparison of stock price prediction models using pre-trained neural networks. Journal of Ubiquitous Computing and Communication Technologies 3(2) (2021) 122-134.
[3] S. Kumar, P. Tiwari, M. Zymbler, Internet of Things is a revolutionary approach for future technology enhancement: a review. Journal of Big data 6(1) (2019) 1-21.
[4] X. Lv, M. Li, Application and research of the intelligent management system based on internet of things technology in the era of big data. Mobile Information Systems 2021 (2021) 1-6.
[5] K. Gulati, R. S. K. Boddu, D. Kapila, S. L. Bangare, N. Chandnani, G. Saravanan, A review paper on wireless sensor network techniques in Internet of Things (IoT). Materials Today: Proceedings 51 (2022) 161-165.
[6] H. Landaluce, L. Arjona, A. Perallos, F. Falcone, I. Angulo, F. Muralter, A review of IoT sensing applications and challenges using RFID and wireless sensor networks. Sensors 20(9) (2020) 2495.
[7] C. Worlu, A. A. Jamal, N. A. Mahiddin, Wireless sensor networks, internet of things, and their challenges. International Journal of Innovative Technology and Exploring Engineering 8(12S2) (2019) 556-566.
[8] W. Li, S. Kara, Methodology for monitoring manufacturing environment by using wireless sensor networks (WSN) and the internet of things (IoT). Procedia CIRP 61 (2017) 323-328.
[9] M. Koripi, A review on architectures and needs in advanced wireless-communication technologies. A Journal Of Composition Theory 13 (2020) 208-214.
[10] S. Khan, M. Rashid, F. Javaid, A high performance processor architecture for multimedia applications. Computers & Electrical Engineering 66 (2018) 14-29.
[11] K. Pothuganti, A. Haile, S. Pothuganti, A comparative study of real time operating systems for embedded systems. International Journal of Innovative Research in Computer and Communication Engineering 4(6) (2016) 12008.
[12] P. Wang, F. Ye, X. Chen, A smart home gateway platform for data collection and awareness. IEEE Communications magazine 56(9) (2018) 87-93.
[13] J. O. Burns, B. Mellinkoff, M. Spydell, et al., Science on the lunar surface facilitated by low latency telerobotics from a Lunar Orbital Platform-Gateway. Acta Astronautica 154 (2019) 195-203.
[14] M. S. BenSaleh, R. Saida, Y. H. Kacem, M. Abid, Wireless sensor network design methodologies: A survey. Journal of Sensors 2020 (2020) 1-13.
[15] S. Al-Sodairi, R. Ouni, Reliable and energy-efficient multi-hop LEACH-based clustering protocol for wireless sensor networks. Sustainable computing: informatics and systems 20 (2018) 1-13.
[16] S. F. Chang, C. F. Chen, J. H. Wen, J. H. Liu, J. H. Weng, J. L. Dong, Application and development of Zigbee technology for smart grid environment. Journal of Power and Energy Engineering 3(4) (2015) 356-361.
[17] M. J. Faber, K. M. van der Zwaag, W. G. V. dos Santos, H. R. D. O. Rocha, M. E. Segatto, J. A. Silva, A theoretical and experimental evaluation on the performance of LoRa technology. IEEE Sensors Journal 20(16) (2020) 9480-9489.
[18] J. Dongyao, Z. Shengxiong, L. Meng, Z. Huaihua, Adaptive multi-path routing based on an improved leapfrog algorithm. Information Sciences 367 (2016) 615-629.
[19] H. P. Hsu, S. W. Yang, Optimization of component sequencing and feeder assignment for a chip shooter machine using shuffled frog-leaping algorithm. IEEE Transactions on Automation Science and Engineering 17(1) (2019) 56-71.
[20] K. Derr, M. Manic, Wireless sensor networks—Node localization for various industry problems. IEEE Transactions on Industrial Informatics 11(3) (2015) 752-762.
Downloads
Published
How to Cite
Issue
Section
License
Copyright (c) 2024 EAI Endorsed Transactions on Energy Web
This work is licensed under a Creative Commons Attribution 3.0 Unported License.
This is an open-access article distributed under the terms of the Creative Commons Attribution CC BY 3.0 license, which permits unlimited use, distribution, and reproduction in any medium so long as the original work is properly cited.
Funding data
-
Guangxi University of Chinese Medicine
Grant numbers 2023BS001