INTELLIGENT DECISION FOR JOINT OPERATIONS BASED ON IMPROVED PROXIMAL POLICY OPTIMIZATION

Intelligent decision for joint operations based on improved proximal policy optimization

Intelligent decision for joint operations based on improved proximal policy optimization

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Abstract To tackle challenges such as convergence difficulties and suboptimal performance in the application of reinforcement learning veuve ambal rose to intelligent decision-making for joint operations, this study introduces an enhanced decision-making approach for joint operations utilizing an improved Proximal Policy Optimization (PPO) algorithm.We propose a structured intelligent decision-making model designed to execute decision-making functions effectively.The strategy loss mechanism is improved by constraining the upper limit of the strategy loss function.

Furthermore, a priority sampling mechanism, is developed to assess sample values, thereby enhancing the efficiency of sampling training.Additionally, a network structure facilitating distributed interaction and centralized learning is designed to expedite the training process.The proposed method is then applied to a joint operations simulation platform for intelligent decision-making.

Simulation results demonstrate that our algorithm successfully addresses goat guns nz the aforementioned issues, enabling autonomous decisions based on battlefield dynamics, and ultimately leading to victory.

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