학술논문

Deep Learning-based Decision-Making Model for the Submarine Evade Movement
Document Type
Conference
Source
OCEANS 2021: San Diego – Porto. :1-6 Sep, 2021
Subject
Bioengineering
Communication, Networking and Broadcast Technologies
Computing and Processing
Engineering Profession
General Topics for Engineers
Geoscience
Power, Energy and Industry Applications
Robotics and Control Systems
Signal Processing and Analysis
Transportation
Analytical models
Oceans
Decision making
Neural networks
Estimation
Predictive models
Underwater acoustics
Underwater Acoustic Countermeasure
Submarine Evasion
Intelligent Decision-Making
Deep Learning
Language
Abstract
It is of great significance to study the intelligent countermeasure decision of submarine eluding torpedo for the successful defense precision of underwater acoustic warfare. In this paper, the problem in view of the traditional submarine evasion decision-making which excessively relies on the previous combat experience, a deep learning-based decision-making model is proposed for the submarine’s evasive movement. Submarine evasion confrontation model and underwater acoustic antagonism system (UAAS) are used to establish a depth neural network (DNN) which with initial course, speed and depth of torpedo and submarine as input predict the best evaded course, speed and depth of submarine. Taking four different battlefield situations as examples, the simulation analysis shows that the model can increase the success rate of submarine evasion by about 19.7% compared with the randomly selected evasion decision which conforms to the actual attack, which indicates that the model has high accuracy and strong feasibility, and it provides a reference for the intelligent decision of submarine underwater acoustic countermeasure.