---
library_name: hivex
original_train_name: WindFarmControl_pattern_4_task_1_run_id_1_train
tags:
- hivex
- hivex-wind-farm-control
- reinforcement-learning
- multi-agent-reinforcement-learning
model-index:
- name: hivex-WFC-PPO-baseline-task-1-pattern-4
results:
- task:
type: sub-task
name: avoid_damage
task-id: 1
pattern-id: 4
dataset:
name: hivex-wind-farm-control
type: hivex-wind-farm-control
metrics:
- type: cumulative_reward
value: 4816.654519042969 +/- 48.309486675816395
name: Cumulative Reward
verified: true
- type: avoid_damage_reward
value: 4816.70017578125 +/- 50.83180378290865
name: Avoid Damage Reward
verified: true
- type: individual_performance
value: 0.0 +/- 0.0
name: Individual Performance
verified: true
---
This model serves as the baseline for the **Wind Farm Control** environment, trained and tested on task 1
with pattern 4
using the Proximal Policy Optimization (PPO) algorithm.
Environment: **Wind Farm Control**
Task: 1
Pattern: 4
Algorithm: PPO
Episode Length: 5000
Training max_steps
: 8000000
Testing max_steps
: 8000000
Train & Test [Scripts](https://github.com/hivex-research/hivex)
Download the [Environment](https://github.com/hivex-research/hivex-environments)