LGAINov 4, 2021

Weapon Engagement Zone Maximum Launch Range Estimation Using a Deep Neural Network

arXiv:2111.04474v217 citations
AI Analysis

This provides a faster and more comprehensive method for pilots to assess missile engagement zones, though it is incremental as it builds on prior simulation-based research.

This work tackled the problem of estimating the Weapon Engagement Zone (WEZ) maximum launch range for missiles using a Deep Neural Network trained on 50,000 simulated launches, achieving a coefficient of determination of 0.99.

This work investigates the use of a Deep Neural Network (DNN) to perform an estimation of the Weapon Engagement Zone (WEZ) maximum launch range. The WEZ allows the pilot to identify an airspace in which the available missile has a more significant probability of successfully engaging a particular target, i.e., a hypothetical area surrounding an aircraft in which an adversary is vulnerable to a shot. We propose an approach to determine the WEZ of a given missile using 50,000 simulated launches in variate conditions. These simulations are used to train a DNN that can predict the WEZ when the aircraft finds itself on different firing conditions, with a coefficient of determination of 0.99. It provides another procedure concerning preceding research since it employs a non-discretized model, i.e., it considers all directions of the WEZ at once, which has not been done previously. Additionally, the proposed method uses an experimental design that allows for fewer simulation runs, providing faster model training.

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