HPCC2025/GA/utils.py

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import numpy as np
from ga import GA
def if_valid_partition(row_boundaries, col_boundaries, params):
H = params['H']
W = params['W']
k = params['num_cars']
flight_time_factor = params['flight_time_factor']
comp_time_factor = params['comp_time_factor']
trans_time_factor = params['trans_time_factor']
car_time_factor = params['car_time_factor']
bs_time_factor = params['bs_time_factor']
flight_energy_factor = params['flight_energy_factor']
comp_energy_factor = params['comp_energy_factor']
trans_energy_factor = params['trans_energy_factor']
battery_energy_capacity = params['battery_energy_capacity']
# 根据分割边界生成所有矩形任务
rectangles = []
for i in range(len(row_boundaries) - 1):
for j in range(len(col_boundaries) - 1):
r1 = row_boundaries[i]
r2 = row_boundaries[i + 1]
c1 = col_boundaries[j]
c2 = col_boundaries[j + 1]
d = (r2 - r1) * H * (c2 - c1) * W # 任务的照片数量(矩形面积)
# 求解rho
rho_time_limit = (flight_time_factor - trans_time_factor) / \
(comp_time_factor - trans_time_factor)
rho_energy_limit = (battery_energy_capacity - flight_energy_factor * d - trans_energy_factor * d) / \
(comp_energy_factor * d - trans_energy_factor * d)
if rho_energy_limit < 0:
return []
rho = min(rho_time_limit, rho_energy_limit)
flight_time = flight_time_factor * d
comp_time = comp_time_factor * rho * d
trans_time = trans_time_factor * (1 - rho) * d
bs_time = bs_time_factor * (1 - rho) * d
# 计算任务矩形中心,用于后续车辆移动时间计算
center_r = (r1 + r2) / 2.0 * H
center_c = (c1 + c2) / 2.0 * W
rectangles.append({
# 'r1': r1, 'r2': r2, 'c1': c1, 'c2': c2,
'd': d,
'rho': rho,
'flight_time': flight_time,
'comp_time': comp_time,
'trans_time': trans_time,
'bs_time': bs_time,
'center': (center_r, center_c)
})
return rectangles
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def GA_solver(rectangles, params):
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num_city = len(rectangles) + 1 # 划分好的区域中心点+整个区域的中心
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k = params['num_cars']
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# 初始化坐标 (第一个点是整个区域的中心)
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center_data = [[params['H'] / 2.0, params['W'] / 2.0]]
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for rec in rectangles:
center_data.append(rec['center'])
center_data = np.array(center_data)
# 关键有k架无人机则再增加N-1个`点` (坐标是起始点)这些点之间的距离是inf
for d in range(k - 1):
center_data = np.vstack([center_data, center_data[0]])
num_city += 1 # 增加欺骗城市
to_process_idx = [0]
# print("start point:", location[0])
for d in range(1, k): # 1, ... drone-1
# print("added base point:", location[num_city - d])
to_process_idx.append(num_city - d)
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model = GA(num_drones=k, num_city=num_city, num_total=20, data=center_data.copy(
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), to_process_idx=to_process_idx, rectangles=rectangles)
Best_path, Best = model.run()
# 根据最佳路径计算各系统任务分配
if Best_path[0] not in to_process_idx:
Best_path.insert(0, 0)
if Best_path[-1] not in to_process_idx:
Best_path.append(0)
return Best_path, Best, to_process_idx