Hubei Province Key Laboratory of Intelligent Robots, Wuhan Institute of Technology, Wuhan 430000, People's Republic of China and School of Computer Science and Engineering, Wuhan Institute of Technology, Wuhan 430000, People's Republic of China.
Chaos. 2019 Jan;29(1):013114. doi: 10.1063/1.5085430.
The use of mathematical methods has become an indispensable research tool and method in the establishment and improvement of many disciplines. Therefore, mathematical methods have also been included in the intelligence analysis system of public security information science. Intelligence is a summary of information that exists in all aspects of our lives. This information is distributed according to time based on certain rules. The application of mathematical analysis methods can more accurately extract effective information and predict future trends. As we all know, classical calculus is a powerful tool for dealing with many dynamic processes in the field of applied science. However, there are many complex systems in nature that cannot be characterized by classical integer-order calculus models, especially in information processing analysis. The fractional-order system model can better describe its system performance. This paper introduces the time series analysis method into the public security intelligence analysis system, combines the fractional differential operator to construct the mathematical model, analyzes the network intelligence, predicts the future occurrence of the case, and compares the predicted data with the actual data to verify. The method is predictive of the true credibility of the results.
数学方法的使用已成为许多学科的建立和完善中不可或缺的研究工具和方法。因此,数学方法也被纳入公共安全信息科学的智能分析系统中。智能是我们生活各个方面存在的信息的总结。这些信息根据时间和某些规则分布。应用数学分析方法可以更准确地提取有效信息并预测未来趋势。众所周知,经典微积分是处理应用科学领域许多动态过程的有力工具。然而,自然界中有许多复杂的系统无法用经典整数阶微积分模型来描述,特别是在信息处理分析中。分数阶系统模型可以更好地描述其系统性能。本文将时间序列分析方法引入公共安全智能分析系统中,结合分数微分算子构建数学模型,对网络智能进行分析,预测案件未来的发生,并将预测数据与实际数据进行比较,验证方法的预测结果的真实可信度。