Deep Neural Network-Based Guidance Law Using Supervised Learning
Minjeong Kim, Daseon Hong, Sungsu Park
Abstract
This paper proposes that the deep neural network-based guidance (DNNG) law replace the proportional navigation guidance (PNG) law. This approach is performed by adopting a supervised learning (SL) method using a large amount of simulation data from the missile system with PNG. Then, the proposed DNNG is compared with the PNG, and its performance is evaluated via the hitting rate and the energy function. In addition, the DNN-based only line-of-sight (LOS) rate input guidance (DNNLG) law, in which only the LOS rate is an input variable, is introduced and compared with the PN and DNNG laws. Then, the DNNG and DNNLG laws examine behavior in an initial position other than the training data.
Topics & Concepts
MissileLawComputer scienceArtificial neural networkArtificial intelligencePosition (finance)Proportional navigationControl theory (sociology)EngineeringPolitical scienceControl (management)Aerospace engineeringFinanceEconomicsGuidance and Control SystemsMilitary Defense Systems AnalysisTarget Tracking and Data Fusion in Sensor Networks