Early warning and detection of geological disasters based on intelligent genetic algorithm
Author:
Sun Dan1, Zhou ZhiMin2, Liao ZhiWu3
Affiliation:
1. 1 Aba Teachers University , School of Computer Science and Technology , Aba , , China 2. 2 Aba Teachers University , School of Resources and Environment , Aba , , China 3. 3 Sichuan Normal University , School of Computer Science , Chengdu , , China
Abstract
Abstract
In recent years, the frequent occurrence of earthquakes, landslides, debris flow and other geological disasters worldwide is endangering people's production and life, which not only causes serious damage to infrastructure, but also creates a certain degree of fear for people. Geological disaster is an open nonlinear complex system, which has extraordinary complex geological process, formation conditions, and causes. Therefore, it makes difficulty in capturing the dynamic information and searching for the global optimal solution. Meanwhile, traditional geological disaster warning system has the deficiencies of single disaster warning and low accuracy. In order to improve the level of early warning and detection of geological disasters, this paper combined the genetic algorithm with superior performance and Support Vector Regression (SVR) algorithm to establish a feasible and credible early warning and monitoring model for geological disasters. The experimental results show that the early warning and monitoring model proposed in this paper can greatly improve the ability of geological disaster prevention and early warning, and greatly improve the level of disaster prevention and early warning, with good engineering application value.
Publisher
Walter de Gruyter GmbH
Subject
Applied Mathematics,Engineering (miscellaneous),Modeling and Simulation,General Computer Science
Reference35 articles.
1. Del Ventisette, C., Garfagnoli, F., Ciampalini, A., Battistini, A., Gigli, G., Moretti, S., & Casagli, N. (2012). An integrated approach to the study of catastrophic debris-flows: geological hazard and human influence. Natural Hazards and Earth System Sciences, 12(9), 2907-2922. 2. TU, S., ZHANG, Z., FU, H., XU, S., DENG, M., HE, L., & LIU, J. (2022). Geological hazard susceptibility evaluation based on CF and CF-LR model. The Chinese Journal of Geological Hazard and Control, 33(2), 96-104. 3. Lixin, Y., Lingling, G., Dong, Z., Junxue, Z., & Zhanwu, G. (2012). An analysis on disasters management system in China. Natural hazards, 60, 295-309. 4. Shi, P., Xu, W., & Wang, J. A. (2016). Natural disaster system in China (pp. 1-36). Springer Berlin Heidelberg. 5. Yao, Z. (2020, May). Characteristics, challenges and suggestions of geological disaster prevention and control in China. In IOP conference series: Earth and environmental science (Vol. 514, No. 2, p. 022025). IOP Publishing.
|
|