A Neural Network-Based Intelligent Decision-Making in the Air-Offensive Campaign with Simulation

G. Hu, Chuhan Zhou, Xiaojie Zhang, Han Zhang, Zhihua Song, Zhongliang Zhou
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引用次数: 1

Abstract

Combat units in joint operations have huge decision space and many uncertain factors. Generally speaking, most of the traditional decision-making methods are based on rules, and it is impossible to establish a reliable mapping relationship between decision space and combat results. To promote the research of intelligent decision making in joint operations, the Equipment Development Department of the Central Military Commission held a challenge called ‘strategic plans on the computer, joint intelligent win’. In this challenge, the forces and the performance equipment are fixed at both the sides of the attack and defense. This setup helps the intelligent deci-sion-making agents to identify the scenarios which score high and have good learning scope in decision making. In the study, we propose an air offensive operations decision-making agent based on a neural network. To perform testing and analysis, we have used the neural network dataset available at a decision space. The decision space comprises of different decision-making rules and rando disturbances. The proposed model shows better results as compared to traditional rule-based operations and military expert decision-based operations in the test set.
基于神经网络的空袭作战智能决策仿真
联合作战中的作战单位决策空间大,不确定因素多。一般来说,传统的决策方法大多基于规则,无法在决策空间和作战结果之间建立可靠的映射关系。为推进联合作战智能决策研究,中央军委装备发展部举办了“计算机上的战略规划,联合智能制胜”挑战赛。在这个挑战中,部队和表演设备固定在攻防两侧。这种设置有助于智能决策代理识别决策中得分高且具有良好学习范围的场景。在研究中,我们提出了一种基于神经网络的空中进攻作战决策代理。为了进行测试和分析,我们使用了决策空间中可用的神经网络数据集。决策空间由不同的决策规则和随机干扰组成。在测试集中,与传统的基于规则的作战和基于军事专家决策的作战相比,该模型取得了更好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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