Study on Battle Damage Level Prediction Using Hybrid-learning Algorithm

Cheng Zhang, Quan Shi, T. Liu, W. Zhao
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引用次数: 1

Abstract

It is important to predict battle damage level timely and accurately for operation commander to adjust firing action intent, issue command, control situations, and make decisions correctly. Adaptive neural fuzzy inference system (ANFIS) architecture and the hybrid-learning algorithm by applying back-propagation and least mean squares procedure are studied. ANFIS model for battle damage level prediction is established based on the analysis of the main influence factors of battle damage level. The prediction of battle damage level being consistent with the factual damage level is achieved by training the proposed ANFIS model using damage test data. Simulations comparing analysis for battle damage level prediction results are conducted using the proposed method and BP neutral network respectively. Simulation results demonstrate that the proposed method can predict battle damage level correctly and the precision is higher than that of BP neutral network, and thus may provide an effective method for battle damage level prediction.
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基于混合学习算法的战斗损伤水平预测研究
及时准确地预测战损等级,对作战指挥员调整射击动作意图、发布指挥控制态势、正确决策具有重要意义。研究了自适应神经模糊推理系统(ANFIS)的体系结构以及基于反向传播和最小均二乘法的混合学习算法。在分析影响战损等级主要因素的基础上,建立了战损等级预测的ANFIS模型。利用损伤试验数据对所提出的ANFIS模型进行训练,实现了与实际损伤水平一致的战斗损伤水平预测。分别用该方法和BP神经网络对作战损伤等级预测结果进行了仿真对比分析。仿真结果表明,该方法能够正确预测战斗损伤等级,且精度高于BP神经网络,为战斗损伤等级预测提供了一种有效的方法。
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