基于改进蜂群算法的解搜索方法的发展

Q3 Engineering
A. Shyshatskyi, A. Ishchenko, Serhii Salnyk, Oleksandr Trotsko, L. Shabanova-Kushnarenko, V. Velychko, Ruslan Kornienko
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引用次数: 0

摘要

人们日常生活的积极数字化导致决策支持系统(DMSS)的使用。DMSS积极应用于数据处理,预测各个过程的进程,为决策者的决策过程提供信息支持。然而,在对监测对象进行评估的过程中出现了一些问题,即:大量的不稳定因素影响了信息采集、处理和传输过程的效率;敌对行动(行动)期间异构监测对象的状态和组成的高度动态变化;开展敌对行动(行动)的积极性很高;初始情况的不确定性和初始数据的噪声。本文提出了一种基于改进蜂群算法的求解方法。通过学习人工神经网络的结构来提高信息处理的效率;考虑到待评价信息的不确定性类型;采用一种改进的蜂群算法,采用一种无序语言尺度的测量方法,对初始数据的感知程度和噪声程度进行调整系数。以评估部队(部队)作战分组状态为例,对所提出方法的使用进行了认可。提出的方法是用于部队和武器自动化控制系统软件的开发,即用于现有部队和武器自动化控制系统的现代化和开发。对所提出方法的有效性评价表明,在信息处理效率方面,评价效率提高了21 - 28%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The development of the solution search method based on the improved bee colony algorithm
Active digitization of people's daily life leads to the use of the decision-making support systems (DMSS). DMSS is actively used in data processing, forecasting the course of various processes, providing informational support for the decision-making process by decision makers. However, a number of problems arise while evaluating monitoring objects, namely: a large number of destabilizing factors affecting the efficiency of the processes of information collection, processing and transmission; high dynamism of changes in the state and composition of heterogeneous monitoring objects during the conduct of hostilities (operations); high dynamism of conducting hostilities (operations); the uncertainty of the initial situation and the noise of the initial data. In this article, a method of finding solutions based on an improved bee colony algorithm was developed. The efficiency of information processing is achieved by learning the architecture of artificial neural networks; taking into account the type of uncertainty of the information to be evaluated; the use of an improved algorithm of the bee colony, the use of an unordered linguistic scale of measurements with adjustment coefficients for the degree of awareness and the degree of noise of the initial data. An approbation of the use of the proposed method was carried out on the example of assessing the state of the operational grouping of troops (forces). The method is proposed to be used in the development of software for automated systems of control of troops and weapons, namely, in the modernization of existing and development of new automated systems of control of troops and weapons. The evaluation of the effectiveness of the proposed method showed an increase in the efficiency of the evaluation at the level of 21–28 % in terms of the efficiency of information processing
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来源期刊
EUREKA: Physics and Engineering
EUREKA: Physics and Engineering Engineering-Engineering (all)
CiteScore
1.90
自引率
0.00%
发文量
78
审稿时长
12 weeks
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