111 lines
4.8 KiB
Python
111 lines
4.8 KiB
Python
# 数据结构定义:存储订单、企业、供应商数据及算法配置
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class OrderData:
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"""订单数据类:存储物料需求、交货期、成本等信息"""
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def __init__(self):
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self.I = 5 # 物料种类数
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self.Q = [6000, 12000, 20000, 7500, 13500] # 各物料的需求数量(整数)
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self.Dd = 30 # 需求交货期(单位:时间,整数)
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self.P0 = [45, 30, 30, 50, 40] # 风险企业的单位采购价(整数)
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self.T0 = [5, 8, 6, 7, 9] # 风险企业的单位运输成本(整数)
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self.transport_speed = 10 # 运输速度(单位:距离/时间,整数)
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class RiskEnterpriseData:
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"""风险企业数据类:存储风险企业的产能、距离等信息"""
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def __init__(self):
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self.I = 5 # 物料种类数(与订单一致)
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self.C0_i_min = [50, 100, 150, 80, 100] # 单物料的单位时间最小产能(整数)
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self.C0_total_max = 900 # 总产能上限(单位时间,整数)
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self.distance = 20 # 与需求点的距离(整数)
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class SupplierData:
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"""供应商数据类:存储各供应商的产能、价格、距离等信息"""
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def __init__(self, I=5):
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self.I = I # 物料种类数
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self.supplier_count = 4 # 供应商数量
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self.names = ["S0", "S1", "S2", "S3"] # 供应商名称
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# 能否生产某物料的矩阵(supplier_count × I),1=能生产,0=不能
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self.can_produce = [
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[1, 1, 1, 1, 1],
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[1, 0, 1, 0, 1],
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[0, 1, 0, 1, 0],
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[0, 0, 1, 1, 1]
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]
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# 单物料单位时间最小产能(supplier_count × I),0表示不能生产该物料(整数)
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self.Cj_i_min = [
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[30, 80, 100, 60, 80],
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[60, 0, 180, 0, 120],
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[0, 150, 0, 120, 0],
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[0, 0, 170, 105, 115]
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]
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# 供应商单位时间的最大总产能(supplier_count,整数)
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self.Cj_total_max = [700, 800, 600, 850]
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# 最小起订量(supplier_count × I,整数)
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self.MinOrder = [
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[800, 1500, 3000, 800, 1500],
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[1000, 0, 3500, 0, 1800],
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[0, 1700, 0, 1000, 0],
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[0, 0, 2500, 500, 1000]
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]
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# 最大供应量(supplier_count × I,整数)
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self.MaxOrder = [
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[5000, 10000, 18000, 6500, 11000],
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[8000, 0, 25000, 0, 15000],
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[0, 8000, 0, 6000, 0],
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[0, 0, 20000, 7500, 13500]
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]
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# 单位采购价格(supplier_count × I,整数)
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self.P_ij = [
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[50, 35, 28, 47, 38],
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[43, 0, 28, 0, 36],
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[0, 31, 0, 52, 0],
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[0, 0, 32, 52, 43]
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]
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# 单位运输成本(supplier_count × I,整数)
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self.T_ij = [
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[6, 9, 8, 9, 12],
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[4, 0, 5, 0, 15],
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[0, 10, 0, 7, 0],
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[0, 0, 8, 9, 11]
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]
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# 供应商与需求点的距离(supplier_count,整数)
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self.distance = [60, 50, 70, 40]
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class Config:
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"""算法参数配置类:存储NSGA-II的各类参数"""
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def __init__(self):
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# 种群参数
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self.pop_size = 300 # 种群大小
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self.N1_ratio = 0.2 # 优先成本的种群比例
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self.N2_ratio = 0.2 # 优先延期的种群比例
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self.N3_ratio = 0.3 # 强制风险企业的种群比例
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self.N4_ratio = 0.3 # 随机种群比例
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# 遗传操作参数
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self.crossover_prob = 0.8 # 交叉概率
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self.mutation_prob = 0.3 # 变异概率
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self.max_generations = 500 # 最大进化代数
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# 惩罚系数
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self.delta = 1.3 # 变更惩罚系数
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# 早停参数
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self.early_stop_patience = 50 # 连续多少代无改进则早停
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# 目标函数数量
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self.objective_num = 2 # 双目标(成本+延期)
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self.duplicate_threshold = 0.1 # 重复解保留数量
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self.print_top_n = 5 # 打印前N个最优解
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class DataStructures:
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"""数据结构工具类:提供评价指标计算等功能"""
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@staticmethod
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def calculate_evaluation_index(objectives, optimal_cost, optimal_tardiness):
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"""
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计算评价指标
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:param objectives: 解的目标值 (成本, 延期)
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:param optimal_cost: 最优成本值
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:param optimal_tardiness: 最优延期值
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:return: 评价指标值
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"""
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cost, tardiness = objectives
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# 避免除以零(成本最优值为0时的保护)
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if optimal_cost == 0:
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cost_ratio = 0 if cost == 0 else float('inf')
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else:
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cost_ratio = cost / optimal_cost
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# 延期处理(+1避免除以零)
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tardiness_ratio = (tardiness + 1) / (optimal_tardiness + 1)
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return cost_ratio + tardiness_ratio |