Surrogate Model-Based Near-Optimal Gain Selection for Approach-Angle-Constrained Two-Phase Pure Proportional Navigation
arXiv cs.RO / 4/7/2026
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Key Points
- The paper studies how to select two-phase Pure Proportional Navigation (2pPPN) gains so a vehicle can achieve a desired approach angle while respecting approach-angle constraints.
- It formulates two near-optimal gain-selection problems: optimizing the orientation-phase gain given a fixed final-phase gain, and jointly optimizing both phase gains to minimize total guidance effort.
- Because analytic solutions for arbitrary engagement geometries are intractable, the authors observe that optimal gains vary smoothly with engagement conditions.
- They train a neural-network regression surrogate to learn the nonlinear mapping from initial/terminal engagement geometry to optimal gain values, enabling efficient generation of a near-optimal gains manifold.
- Simulation results indicate the NN predicts optimal gains with high accuracy, reporting a coefficient of determination close to 0.9, supporting near-optimal 2pPPN performance.
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