
Assessment of the Promotional Effects of New Energy Fitness Equipment on Sports Economics and Management
DOI:
https://doi.org/10.30564/jees.v7i7.8132Abstract
The Internet of Things (IoT) technology offers significant advancements in fitness trackers and AI-driven health management systems and presents practical applications for monitoring health and performance. New energy composites, which improve the performance of traditional metals, have been widely used in automotive manufacturing but have limited application in the sports industry. To bridge this gap, the study proposes integrating these advanced composites into sports equipment and facilities, utilizing IoT technology as the foundation for intelligent health monitoring. The research explores how IoT technology can enhance the promotional impact of fitness equipment within the sports industry. Additionally, the communication process for data assessment is conducted using the Priority-based Congestion-avoidance Routing Protocol (PCRP) to ensure efficient data transmission. The analysis of sports activities is performed by utilizing the data transferred through PCRP. Experimental results show that the proposed mechanism outperforms conventional models, achieving an energy efficiency of 0.502 joules (J), a delay of 0.407 seconds (s), and a throughput of 0.620. These results demonstrate the potential of combining IoT technology and new energy composites to revolutionize sports equipment and enhance fitness monitoring systems. These findings highlight the potential of combining IoT and advanced composite materials to revolutionize sports equipment, improve fitness monitoring, and contribute to the growth of the sports industry through enhanced data management and energy-efficient technologies.
Keywords:
Energy; IoT; Sports Fitness Equipment; Sports Economics; Health ManagementReferences
[1] Song, Y., Cheng, Y., 2020. Exploration on the conversion path of the new and old kinetic energy of Chinese sports industry. Frontiers in Sport Research. 2(6), 50–58. Updated on April 30, 2023. DOI: https://doi.org/10.25236/FSR.2020.020607
[2] Zhang, K., Yang, K., Liang, X., et al., 2015. Security and privacy for mobile healthcare networks: from a quality of protection perspective. IEEE Wireless Communications. 22(4), 104–112. DOI: https://doi.org/10.1109/MWC.2015.7224734
[3] Li, H., Wu, J., Gao, Y., et al., 2016. Examining individuals' adoption of healthcare wearable devices: An empirical study from privacy calculus perspective. International Journal of Medical Informatics. 88, 8–17. DOI: https://doi.org/10.1016/j.ijmedinf.2015.12.010
[4] Lee, Y.H., Watanabe, N., 2019. Sports economics and management of Asian sports business. Journal of Global Sport Management. 4(2), 121–127. DOI: https://doi.org/10.1080/24704067.2018.1553023
[5] Ganesan, T., Devarajan, M.V., 2021. Integrating IoT, Fog, and Cloud Computing for Real-Time ECG Monitoring and Scalable Healthcare Systems Using Machine Learning-Driven Signal Processing Techniques. International Journal of Information Technology and Computer Engineering. 9(1), 202–217.
[6] Abedin, A., Rosen, M.A., 2011. A critical review of thermochemical energy storage systems. The Open Renewable Energy Journal. 4(1), 42–46.
[7] Galli, R., 1998. The relationship between energy intensity and income levels: Forecasting long term energy demand in Asian emerging countries. The Energy Journal. 19(4), 85–105.
[8] Gately, D., Huntington, H.G., 2002. The asymmetric effects of changes in price and income on energy and oil demand. The Energy Journal. 23(1), 19–55.
[9] Huang, Z., Chen, Q., Zhang, L., et al., 2019. Research on intelligent monitoring and analysis of physical fitness based on the Internet of Things. IEEE Access. 7, 177297–177308. DOI: https://doi.org/10.1109/ACCESS.2019.2956835
[10] Yong, Z., 2023. Intelligent system simulation and data accuracy of physical fitness training for sports majors based on real-time status update of wearable Internet of Things. Soft Computing. 27(14), 10145–10154.
[11] Chen, L., Zhu, H., 2022. Importance of National Fitness Sports Relying on Virtual Reality Technology in the Development of Sports Economy. Computational Intelligence and Neuroscience. 2022(1), 4128981. DOI: https://doi.org/10.1155/2022/4128981
[12] Awan, K.M., Ashraf, N., Saleem, M.Q., et al., 2019. A priority-based congestion-avoidance routing protocol using IoT-based heterogeneous medical sensors for energy efficiency in healthcare wireless body area networks. International Journal of Distributed Sensor Networks. 15(6), 1550147719853980.
[13] Zhu, J., Liang, Z., Zhang, C., et al., 2023. How are sports management, renewable energy, and green finance related? Survey evidence. Renewable Energy. 206, 39–46.
[14] Ang, B.W., Choi, K.H., 1997. Decomposition of aggregate energy and gas emission intensities for industry: A refined Divisia index method. The Energy Journal. 18(3), 59–73.
[15] Quy, V.K., Hoai Nam, V., Manh Linh, D., et al., 2022. Routing algorithms for MANET-IoT networks: a comprehensive survey. Wireless Personal Communications. 125(4), 3501–3525.
[16] Rohloff, K., Polyakov, Y., 2015. An end-to-end security architecture to collect, process, and share wearable medical device data. Proceedings of the 2015 17th International Conference on E-health Networking, Application & Services (HealthCom); 14–17 October 2015; Boston, MA, USA. pp. 615–620.
[17] Morgulev, E., Azar, O.H., Lidor, R., 2018. Sports analytics and the big-data era. International Journal of Data Science and Analytics. 5(4), 213–222.
[18] Zhang, J., Mi, Y., 2022. Application of New Energy Composites in Sports Facilities and Fitness Equipment. Journal of Nanomaterials. 2022(1), 7712859.
[19] Lv, Z., Halawani, A., Feng, S., et al., 2015. Touch-less interactive augmented reality game on vision-based wearable device. Personal and Ubiquitous Computing. 19, 551–567.
[20] AlShahwan, F., Alshamrani, M., Amer, A.A., 2018. Dynamic novel cross-layer performance enhancement approach for SIP over OLSR. IEEE Access. 6, 71947–71964.
[21] Manne, A.S., Richels, R.G., 1991. Global CO2 emission reductions - The impacts of rising energy costs. The Energy Journal. 12(1), 87–108.
[22] Shah, S.C., Kumar, S., 2018. A Markov chain-based link lifetime prediction in mobile ad hoc networks. Proceedings of the 2018 6th International Conference on Future Internet of Things and Cloud Workshops; 06–08 August 2018; Barcelona, Spain. pp. 28–33.
[23] Medlock III, K.B., Soligo, R., 2001. Economic development and end-use energy demand. The Energy Journal. 22(2), 77–105.
[24] Xie, J., Murase, T., 2020. Multiple user cooperative mobility in mobile ad hoc networks: An interaction position game. IEEE Access. 8, 126297–126314.
[25] Thompson, W.R., 2017. Worldwide survey of fitness trends for 2018: the CREP edition. ACSM's Health & Fitness Journal. 21(6), 10–19.
[26] Cao, H., 2022. Application of Smart Wearable Fitness Equipment and Smart Health Management Based on the Improved Algorithm. Computational Intelligence and Neuroscience. 2022(1), 1654460.
[27] Dimitriadis, K.A., Koursaros, D., Savva, C.S., 2024. The influence of the 'environmentally-friendly' character through asymmetries on market crash price of risk in major stock sectors. Journal of Climate Finance. 9, 100052.
[28] Dimitriadis, K.A., Koursaros, D., Savva, C.S., 2024. The influential impacts of international dynamic spillovers in forming investor preferences: a quantile-VAR and GDCC-GARCH perspective. Applied Economics. 1–21. DOI: https://doi.org/10.1080/00036846.2024.2387868
[29] Klöcker, J.A., Daumann, F., 2024. A stochastic-demographic model to explain success and dominance in international sports. Research in Economics. 78(4), 100990.
Downloads
How to Cite
Issue
Article Type
License
Copyright © 2025 Shaoai Wu, Dan Du

This is an open access article under the Creative Commons Attribution-NonCommercial 4.0 International (CC BY-NC 4.0) License.