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Information Entropy-Based Intention Prediction of Aerial Targets under Uncertain and Incomplete Information

Tongle Zhou, Mou Chen, Yuhui Wang, Jianliang He, Chenguang Yang

2020Entropy58 citationsDOIOpen Access PDF

Abstract

To improve the effectiveness of air combat decision-making systems, target intention has been extensively studied. In general, aerial target intention is composed of attack, surveillance, penetration, feint, defense, reconnaissance, cover and electronic interference and it is related to the state of a target in air combat. Predicting the target intention is helpful to know the target actions in advance. Thus, intention prediction has contributed to lay a solid foundation for air combat decision-making. In this work, an intention prediction method is developed, which combines the advantages of the long short-term memory (LSTM) networks and decision tree. The future state information of a target is predicted based on LSTM networks from real-time series data, and the decision tree technology is utilized to extract rules from uncertain and incomplete priori knowledge. Then, the target intention is obtained from the predicted data by applying the built decision tree. With a simulation example, the results show that the proposed method is effective and feasible for state prediction and intention recognition of aerial targets under uncertain and incomplete information. Furthermore, the proposed method can make contributions in providing direction and aids for subsequent attack decision-making.

Topics & Concepts

Computer scienceDecision treeArtificial intelligenceEntropy (arrow of time)A priori and a posterioriMachine learningData miningComplete informationMathematicsEpistemologyQuantum mechanicsMathematical economicsPhilosophyPhysicsGuidance and Control SystemsAnomaly Detection Techniques and ApplicationsMilitary Defense Systems Analysis
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