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In modern warfare, as important infrastructure in marine engineering, the airport runways on the reef islands are the primary targets to be struck in wartime. This paper aims to shed light on the damage problem under the working condition of initial penetration followed by explosion. The numerical simulation was conducted through the establishment of the coupled correlation model between the crater radius, effective damage radius, explosion cavity radius and crater depth, as well as the multi-objective optimization model of the damage field parameters using Non-dominated Sorting Genetic algorithm optimization (NSGA-III) to explore the optimal velocity and charge depth when the damage field parameters are maximized. The results indicate that the destruction pattern of the airport runway changed from an open crater pattern to an bulging pattern and eventually to a hidden crater pattern as the charge location moved downward. Moreover, the destruction type of the airport runways by initial penetration with the projectile velocity of 300m/s~330m/s and explosion was the bulge mode, which contributed to the best destructive effect. Additionally, the optimal velocity of projectile penetration and the mass of charge was determined to be 320.807 m/s and 2.144 kg through NSGA-III.
In modern warfare, as important infrastructure in marine engineering, the airport runways on the reef islands are the primary targets to be struck in wartime. This paper aims to shed light on the damage problem under the working condition of initial penetration followed by explosion. The numerical simulation was conducted through the establishment of the coupled correlation model between the crater radius, effective damage radius, explosion cavity radius and crater depth, as well as the multi-objective optimization model of the damage field parameters using Non-dominated Sorting Genetic algorithm optimization (NSGA-III) to explore the optimal velocity and charge depth when the damage field parameters are maximized. The results indicate that the destruction pattern of the airport runway changed from an open crater pattern to an bulging pattern and eventually to a hidden crater pattern as the charge location moved downward. Moreover, the destruction type of the airport runways by initial penetration with the projectile velocity of 300m/s~330m/s and explosion was the bulge mode, which contributed to the best destructive effect. Additionally, the optimal velocity of projectile penetration and the mass of charge was determined to be 320.807 m/s and 2.144 kg through NSGA-III.
As an important civil and military infrastructure, airport runway pavement is faced with threats from cluster munitions, since it is vulnerable to projectile impacts with internal explosions. Aiming at the damage assessment of an island airport runway pavement under impact, this work dealt with discrete modeling of rigid projectile penetration into concrete pavement and the calcareous sand subgrade multi-layer structure. First, the Discrete Element Method (DEM) is introduced to model concrete and calcareous sand granular material features, like cohesive fracture and strain hardening due to compression, with mesoscale constitutive laws governing the normal and shear interactions between adjacent particles. Second, the subsequent DEM simulations of uniaxial and triaxial compression were performed to calibrate the DEM parameters for pavement concrete, as well as subgrade calcareous sand. Prior to the multi-layer structure investigations, penetration into sole concrete or calcareous sand is validated in terms of projectile deceleration and depth of penetration (DOP) with relative error ≤ 5.6% providing a reliable numerical tool for deep penetration damage assessments. Third, projectile penetration into the airport runway structure with concrete pavement and calcareous sand subgrade was evaluated with validated DEM model. Penetration numerical simulations with various projectile weight, pavement concrete thickness as well as striking velocity, were performed to achieve the DOP. Moreover, the back-propagation (BP) neural network proxy model was constructed to predict the airport runway penetration data with good agreement realizing rapid and robust DOP forecasting. Finally, the genetic algorithm was coupled with the proxy model to realize intelligent optimization of pavement penetration, whereby the critical velocity projectile just perforates concrete pavement indicating the severest subsequent munition explosion damage.
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