Affiliation:
1. School of Information Science and Engineering, Hebei University of Science and Technology, Shijiazhuang 050018, China
2. Department of Acupuncture Hebei Provincial Hospital of Traditional Chinese Medicine, Shijiazhuang 050011, China
Abstract
With the increasing aging of the global population, the efficiency and accuracy of the elderly monitoring system become crucial. In this paper, a sensor layout optimization method, the Fusion Genetic Gray Wolf Optimization (FGGWO) algorithm, is proposed which utilizes the global search capability of Genetic Algorithm (GA) and the local search capability of Gray Wolf Optimization algorithm (GWO) to improve the efficiency and accuracy of the sensor layout in elderly monitoring systems. It does so by optimizing the indoor infrared sensor layout in the elderly monitoring system to improve the efficiency and coverage of the sensor layout in the elderly monitoring system. Test results show that the FGGWO algorithm is superior to the single optimization algorithm in monitoring coverage, accuracy, and system efficiency. In addition, the algorithm is able to effectively avoid the local optimum problem commonly found in traditional methods and to reduce the number of sensors used, while maintaining high monitoring accuracy. The flexibility and adaptability of the algorithm bode well for its potential application in a wide range of intelligent surveillance scenarios. Future research will explore how deep learning techniques can be integrated into the FGGWO algorithm to further enhance the system’s adaptive and real-time response capabilities.
Funder
Key Research and Development Program of Hebei Province, China
Reference44 articles.
1. U.N.ESCAP (2024, April 30). Asia-Pacific Report on Population Ageing 2022: Trends, Policies and Good Practices Regarding Older Persons and Population Ageing. Available online: https://repository.unescap.org/handle/20.500.12870/4963.
2. The global demography of aging: Facts, explanations, future;Bloom;Handbook of the Economics of Population Aging,2016
3. Padeiro, M., Santana, P., and Grant, M. (2023). Global aging and health determinants in a changing world. Aging, Academic Press.
4. Safety of older people at home: An integrative literature review;Stolt;Int. J. Older People Nurs.,2020
5. Cantone, A.A., Esposito, M., Perillo, F.P., Romano, M., Sebillo, M., and Vitiello, G. (2023). Enhancing Elderly Health Monitoring: Achieving Autonomous and Secure Living through the Integration of Artificial Intelligence, Autonomous Robots, and Sensors. Electronics, 12.