SYLGRONov 4, 2025

Many-vs-Many Missile Guidance via Virtual Targets

arXiv:2511.02526v1h-index: 1
Originality Incremental advance
AI Analysis

This addresses missile defense scenarios for military applications, offering an incremental enhancement over existing methods by leveraging probabilistic predictions.

The paper tackles the problem of many-vs-many missile guidance by using virtual targets generated via Normalizing Flows to predict maneuvering trajectories, resulting in interception probability improvements of 0-4.1% when interceptors equal targets and 5.8-14.4% when interceptors outnumber targets.

This paper presents a novel approach to many-vs-many missile guidance using virtual targets (VTs) generated by a Normalizing Flows-based trajectory predictor. Rather than assigning n interceptors directly to m physical targets through conventional weapon target assignment algorithms, we propose a centralized strategy that constructs n VT trajectories representing probabilistic predictions of maneuvering target behavior. Each interceptor is guided toward its assigned VT using Zero-Effort-Miss guidance during midcourse flight, transitioning to Proportional Navigation guidance for terminal interception. This approach treats many-vs-many engagements as many-vs-distribution scenarios, exploiting numerical superiority (n > m) by distributing interceptors across diverse trajectory hypotheses rather than pursuing identical deterministic predictions. Monte Carlo simulations across various target-interceptor configurations (1-6 targets, 1-8 interceptors) demonstrate that the VT method matches or exceeds baseline straight-line prediction performance by 0-4.1% when n = m, with improvements increasing to 5.8-14.4% when n > m. The results confirm that probabilistic VTs enable effective exploitation of numerical superiority, significantly increasing interception probability in many-vs-many scenarios.

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