fancy_gym/alr_envs/alr/mujoco/hopper_jump/hopper_jump.py

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from gym.envs.mujoco.hopper_v3 import HopperEnv
import numpy as np
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import os
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MAX_EPISODE_STEPS_HOPPERJUMP = 250
class ALRHopperJumpEnv(HopperEnv):
"""
Initialization changes to normal Hopper:
- healthy_reward: 1.0 -> 0.1 -> 0
- healthy_angle_range: (-0.2, 0.2) -> (-float('inf'), float('inf'))
- healthy_z_range: (0.7, float('inf')) -> (0.5, float('inf'))
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- exclude current positions from observatiosn is set to False
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"""
def __init__(
self,
xml_file='hopper_jump.xml',
forward_reward_weight=1.0,
ctrl_cost_weight=1e-3,
healthy_reward=0.0,
penalty=0.0,
context=True,
terminate_when_unhealthy=False,
healthy_state_range=(-100.0, 100.0),
healthy_z_range=(0.5, float('inf')),
healthy_angle_range=(-float('inf'), float('inf')),
reset_noise_scale=5e-3,
exclude_current_positions_from_observation=False,
max_episode_steps=250
):
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self.current_step = 0
self.max_height = 0
self.max_episode_steps = max_episode_steps
self.penalty = penalty
self.goal = 0
self.context = context
self.exclude_current_positions_from_observation = exclude_current_positions_from_observation
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self._floor_geom_id = None
self._foot_geom_id = None
self.contact_with_floor = False
self.init_floor_contact = False
self.has_left_floor = False
self.contact_dist = None
xml_file = os.path.join(os.path.dirname(__file__), "assets", xml_file)
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super().__init__(xml_file, forward_reward_weight, ctrl_cost_weight, healthy_reward, terminate_when_unhealthy,
healthy_state_range, healthy_z_range, healthy_angle_range, reset_noise_scale,
exclude_current_positions_from_observation)
def step(self, action):
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self.current_step += 1
self.do_simulation(action, self.frame_skip)
height_after = self.get_body_com("torso")[2]
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site_pos_after = self.sim.data.site_xpos[self.model.site_name2id('foot_site')].copy()
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self.max_height = max(height_after, self.max_height)
ctrl_cost = self.control_cost(action)
costs = ctrl_cost
done = False
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rewards = 0
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if self.current_step >= self.max_episode_steps:
hight_goal_distance = -10 * np.linalg.norm(self.max_height - self.goal) if self.context else self.max_height
healthy_reward = 0 if self.context else self.healthy_reward * 2 # self.current_step
height_reward = self._forward_reward_weight * hight_goal_distance # maybe move reward calculation into if structure and define two different _forward_reward_weight variables for context and episodic seperatley
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rewards = height_reward + healthy_reward
observation = self._get_obs()
reward = rewards - costs
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info = {
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'height': height_after,
'x_pos': site_pos_after,
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'max_height': self.max_height,
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'height_rew': self.max_height,
'healthy_reward': self.healthy_reward * 2,
'healthy': self.is_healthy
}
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return observation, reward, done, info
def _get_obs(self):
return np.append(super()._get_obs(), self.goal)
def reset(self):
self.goal = self.np_random.uniform(1.4, 2.16, 1)[0] # 1.3 2.3
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self.max_height = 0
self.current_step = 0
return super().reset()
# overwrite reset_model to make it deterministic
def reset_model(self):
qpos = self.init_qpos # + self.np_random.uniform(low=noise_low, high=noise_high, size=self.model.nq)
qvel = self.init_qvel # + self.np_random.uniform(low=noise_low, high=noise_high, size=self.model.nv)
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self.set_state(qpos, qvel)
observation = self._get_obs()
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self.has_left_floor = False
self.contact_with_floor = False
self.init_floor_contact = False
self.contact_dist = None
return observation
def _contact_checker(self, id_1, id_2):
for coni in range(0, self.sim.data.ncon):
con = self.sim.data.contact[coni]
collision = con.geom1 == id_1 and con.geom2 == id_2
collision_trans = con.geom1 == id_2 and con.geom2 == id_1
if collision or collision_trans:
return True
return False
class ALRHopperXYJumpEnv(ALRHopperJumpEnv):
def step(self, action):
self._floor_geom_id = self.model.geom_name2id('floor')
self._foot_geom_id = self.model.geom_name2id('foot_geom')
self.current_step += 1
self.do_simulation(action, self.frame_skip)
height_after = self.get_body_com("torso")[2]
site_pos_after = self.sim.data.site_xpos[self.model.site_name2id('foot_site')].copy()
self.max_height = max(height_after, self.max_height)
# floor_contact = self._contact_checker(self._floor_geom_id, self._foot_geom_id) if not self.contact_with_floor else False
# self.init_floor_contact = floor_contact if not self.init_floor_contact else self.init_floor_contact
# self.has_left_floor = not floor_contact if self.init_floor_contact and not self.has_left_floor else self.has_left_floor
# self.contact_with_floor = floor_contact if not self.contact_with_floor and self.has_left_floor else self.contact_with_floor
floor_contact = self._contact_checker(self._floor_geom_id,
self._foot_geom_id) if not self.contact_with_floor else False
if not self.init_floor_contact:
self.init_floor_contact = floor_contact
if self.init_floor_contact and not self.has_left_floor:
self.has_left_floor = not floor_contact
if not self.contact_with_floor and self.has_left_floor:
self.contact_with_floor = floor_contact
if self.contact_dist is None and self.contact_with_floor:
self.contact_dist = np.linalg.norm(self.sim.data.site_xpos[self.model.site_name2id('foot_site')]
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- np.array([self.goal, 0, 0]))
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ctrl_cost = self.control_cost(action)
costs = ctrl_cost
done = False
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goal_dist = np.linalg.norm(site_pos_after - np.array([self.goal, 0, 0]))
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rewards = 0
if self.current_step >= self.max_episode_steps:
# healthy_reward = 0 if self.context else self.healthy_reward * self.current_step
healthy_reward = self.healthy_reward * 2 # * self.current_step
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contact_dist = self.contact_dist if self.contact_dist is not None else 5
dist_reward = self._forward_reward_weight * (-3 * goal_dist + 10 * self.max_height - 2 * contact_dist)
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rewards = dist_reward + healthy_reward
observation = self._get_obs()
reward = rewards - costs
info = {
'height': height_after,
'x_pos': site_pos_after,
'max_height': self.max_height,
'goal': self.goal,
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'goal_dist': goal_dist,
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'height_rew': self.max_height,
'healthy_reward': self.healthy_reward * 2,
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'healthy': self.is_healthy,
'contact_dist': self.contact_dist if self.contact_dist is not None else 0
}
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return observation, reward, done, info
def reset_model(self):
self.init_qpos[1] = 1.5
self._floor_geom_id = self.model.geom_name2id('floor')
self._foot_geom_id = self.model.geom_name2id('foot_geom')
noise_low = -np.zeros(self.model.nq)
noise_low[3] = -0.5
noise_low[4] = -0.2
noise_low[5] = 0
noise_high = np.zeros(self.model.nq)
noise_high[3] = 0
noise_high[4] = 0
noise_high[5] = 0.785
rnd_vec = self.np_random.uniform(low=noise_low, high=noise_high, size=self.model.nq)
qpos = self.init_qpos + rnd_vec
qvel = self.init_qvel
self.set_state(qpos, qvel)
observation = self._get_obs()
self.has_left_floor = False
self.contact_with_floor = False
self.init_floor_contact = False
self.contact_dist = None
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return observation
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def reset(self):
super().reset()
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self.goal = self.np_random.uniform(0.3, 1.35, 1)[0]
self.sim.model.body_pos[self.sim.model.body_name2id('goal_site_body')] = np.array([self.goal, 0, 0])
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return self.reset_model()
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def _get_obs(self):
goal_diff = self.sim.data.site_xpos[self.model.site_name2id('foot_site')].copy() \
- np.array([self.goal, 0, 0])
return np.concatenate((super(ALRHopperXYJumpEnv, self)._get_obs(), goal_diff))
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def set_context(self, context):
# context is 4 dimensional
qpos = self.init_qpos
qvel = self.init_qvel
qpos[-3:] = context[:3]
self.goal = context[-1]
self.set_state(qpos, qvel)
self.sim.model.body_pos[self.sim.model.body_name2id('goal_site_body')] = np.array([self.goal, 0, 0])
return self._get_obs()
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class ALRHopperXYJumpEnvStepBased(ALRHopperXYJumpEnv):
def __init__(
self,
xml_file='hopper_jump.xml',
forward_reward_weight=1.0,
ctrl_cost_weight=1e-3,
healthy_reward=0.0,
penalty=0.0,
context=True,
terminate_when_unhealthy=False,
healthy_state_range=(-100.0, 100.0),
healthy_z_range=(0.5, float('inf')),
healthy_angle_range=(-float('inf'), float('inf')),
reset_noise_scale=5e-3,
exclude_current_positions_from_observation=False,
max_episode_steps=250,
height_scale=10,
dist_scale=3,
healthy_scale=2
):
self.height_scale = height_scale
self.dist_scale = dist_scale
self.healthy_scale = healthy_scale
super().__init__(xml_file, forward_reward_weight, ctrl_cost_weight, healthy_reward, penalty, context,
terminate_when_unhealthy, healthy_state_range, healthy_z_range, healthy_angle_range,
reset_noise_scale, exclude_current_positions_from_observation, max_episode_steps)
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def step(self, action):
self._floor_geom_id = self.model.geom_name2id('floor')
self._foot_geom_id = self.model.geom_name2id('foot_geom')
self.current_step += 1
self.do_simulation(action, self.frame_skip)
height_after = self.get_body_com("torso")[2]
site_pos_after = self.sim.data.site_xpos[self.model.site_name2id('foot_site')].copy()
self.max_height = max(height_after, self.max_height)
ctrl_cost = self.control_cost(action)
healthy_reward = self.healthy_reward * self.healthy_scale
height_reward = self.height_scale * height_after
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goal_dist = np.atleast_1d(np.linalg.norm(site_pos_after - np.array([self.goal, 0, 0], dtype=object)))[0]
goal_dist_reward = -self.dist_scale * goal_dist
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dist_reward = self._forward_reward_weight * (goal_dist_reward + height_reward)
reward = -ctrl_cost + healthy_reward + dist_reward
done = False
observation = self._get_obs()
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###########################################################
# This is only for logging the distance to goal when first having the contact
##########################################################
floor_contact = self._contact_checker(self._floor_geom_id,
self._foot_geom_id) if not self.contact_with_floor else False
if not self.init_floor_contact:
self.init_floor_contact = floor_contact
if self.init_floor_contact and not self.has_left_floor:
self.has_left_floor = not floor_contact
if not self.contact_with_floor and self.has_left_floor:
self.contact_with_floor = floor_contact
if self.contact_dist is None and self.contact_with_floor:
self.contact_dist = np.linalg.norm(self.sim.data.site_xpos[self.model.site_name2id('foot_site')]
- np.array([self.goal, 0, 0]))
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info = {
'height': height_after,
'x_pos': site_pos_after,
'max_height': self.max_height,
'goal': self.goal,
'goal_dist': goal_dist,
'height_rew': self.max_height,
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'healthy_reward': self.healthy_reward * self.healthy_reward,
'healthy': self.is_healthy,
'contact_dist': self.contact_dist if self.contact_dist is not None else 0
}
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return observation, reward, done, info
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if __name__ == '__main__':
render_mode = "human" # "human" or "partial" or "final"
# env = ALRHopperJumpEnv()
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# env = ALRHopperXYJumpEnv()
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np.random.seed(0)
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env = ALRHopperXYJumpEnvStepBased()
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env.seed(0)
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# env = ALRHopperJumpRndmPosEnv()
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obs = env.reset()
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for k in range(1000):
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obs = env.reset()
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print('observation :', obs[:])
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for i in range(200):
# objective.load_result("/tmp/cma")
# test with random actions
ac = env.action_space.sample()
obs, rew, d, info = env.step(ac)
# if i % 10 == 0:
# env.render(mode=render_mode)
env.render(mode=render_mode)
if d:
print('After ', i, ' steps, done: ', d)
env.reset()
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env.close()