--- library_name: hivex original_train_name: DroneBasedReforestation_difficulty_4_task_2_run_id_1_train tags: - hivex - hivex-drone-based-reforestation - reinforcement-learning - multi-agent-reinforcement-learning model-index: - name: hivex-DBR-PPO-baseline-task-2-difficulty-4 results: - task: type: sub-task name: pick_up_seed_at_base task-id: 2 difficulty-id: 4 dataset: name: hivex-drone-based-reforestation type: hivex-drone-based-reforestation metrics: - type: out_of_energy_count value: 0.5909523957967758 +/- 0.09171894105446358 name: Out of Energy Count verified: true - type: recharge_energy_count value: 125.54469884961844 +/- 115.46428296295271 name: Recharge Energy Count verified: true - type: cumulative_reward value: 12.542430520057678 +/- 7.328528013270426 name: Cumulative Reward verified: true --- This model serves as the baseline for the **Drone-Based Reforestation** environment, trained and tested on task 2 with difficulty 4 using the Proximal Policy Optimization (PPO) algorithm.

Environment: **Drone-Based Reforestation**
Task: 2
Difficulty: 4
Algorithm: PPO
Episode Length: 2000
Training max_steps: 1200000
Testing max_steps: 300000

Train & Test [Scripts](https://github.com/hivex-research/hivex)
Download the [Environment](https://github.com/hivex-research/hivex-environments)