Defence Technology (Oct 2024)

Adaptive optimisation of explosive reactive armour for protection against kinetic energy and shaped charge threats

  • Philipp Moldtmann,
  • Julian Berk,
  • Shannon Ryan,
  • Andreas Klavzar,
  • Jerome Limido,
  • Christopher Lange,
  • Santu Rana,
  • Svetha Venkatesh

Journal volume & issue
Vol. 40
pp. 1 – 12

Abstract

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We evaluate an adaptive optimisation methodology, Bayesian optimisation (BO), for designing a minimum weight explosive reactive armour (ERA) for protection against a surrogate medium calibre kinetic energy (KE) long rod projectile and surrogate shaped charge (SC) warhead. We perform the optimisation using a conventional BO methodology and compare it with a conventional trial-and-error approach from a human expert. A third approach, utilising a novel human-machine teaming framework for BO is also evaluated. Data for the optimisation is generated using numerical simulations that are demonstrated to provide reasonable qualitative agreement with reference experiments. The human-machine teaming methodology is shown to identify the optimum ERA design in the fewest number of evaluations, outperforming both the stand-alone human and stand-alone BO methodologies. From a design space of almost 1800 configurations the human-machine teaming approach identifies the minimum weight ERA design in 10 samples.

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