2021
DOI: 10.1007/978-3-030-60135-5_19
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A Genetic Programming Framework for Novel Behaviour Discovery in Air Combat Scenarios

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Cited by 4 publications
(2 citation statements)
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“…However, ACE0 was specifically designed to accommodate different types of agent reasoning models. It has been used with a range of agent reasoning technologies, including automated planning (Ramirez et al, 2017(Ramirez et al, , 2018, evolutionary algorithms (Masek et al, 2018;Lam et al, 2019;Masek et al, 2021), reinforcement learning (Kurniawan et al, 2019(Kurniawan et al, , 2020 and Generative Adversarial Networks (Hossam et al, 2020). In this work, we build upon the work of (Ramirez et al, 2017(Ramirez et al, , 2018 using an automated hybrid planning approach combined with Model Predictive Control (MPC) to define and generate the behaviours in ACE0.…”
Section: Simulation Environmentmentioning
confidence: 99%
“…However, ACE0 was specifically designed to accommodate different types of agent reasoning models. It has been used with a range of agent reasoning technologies, including automated planning (Ramirez et al, 2017(Ramirez et al, , 2018, evolutionary algorithms (Masek et al, 2018;Lam et al, 2019;Masek et al, 2021), reinforcement learning (Kurniawan et al, 2019(Kurniawan et al, , 2020 and Generative Adversarial Networks (Hossam et al, 2020). In this work, we build upon the work of (Ramirez et al, 2017(Ramirez et al, , 2018 using an automated hybrid planning approach combined with Model Predictive Control (MPC) to define and generate the behaviours in ACE0.…”
Section: Simulation Environmentmentioning
confidence: 99%
“…However, ACE0 was specifically designed to accommodate different types of agent reasoning models. It has been used with a range of agent reasoning technologies, including automated planning (Ramirez et al, 2017(Ramirez et al, , 2018, evolutionary algorithms (Masek et al, 2018;Lam et al, 2019;Masek et al, 2021), reinforcement learning (Kurniawan et al, 2019(Kurniawan et al, , 2020 and Generative Adversarial Networks (Hossam et al, 2020). In this work, we build upon the work of (Ramirez et al, 2017(Ramirez et al, , 2018 using an automated hybrid planning approach combined with Model Predictive Control (MPC) to define and generate the behaviours in ACE0.…”
Section: Simulation Environmentmentioning
confidence: 99%