2023-02-24 15:16:28 +08:00
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import agentpy as ap
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2023-03-14 12:53:49 +08:00
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import math
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2023-02-24 15:16:28 +08:00
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class FirmAgent(ap.Agent):
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def setup(self, code, name, type_region, revenue_log, a_lst_product):
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self.firm_network = self.model.firm_network
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self.product_network = self.model.product_network
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# self para
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self.code = code
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self.name = name
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self.type_region = type_region
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self.size_stat = []
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self.dct_prod_up_prod_stat = {}
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self.dct_prod_capacity = {}
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# para in trial
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self.dct_n_trial_up_prod_disrupted = {}
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self.dct_cand_alt_supp_up_prod_disrupted = {}
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self.dct_request_prod_from_firm = {}
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# external variable
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self.is_prf_size = self.model.is_prf_size
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self.is_prf_conn = bool(self.p.prf_conn)
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self.str_cap_limit_prob_type = str(self.p.cap_limit_prob_type)
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self.flt_cap_limit_level = float(self.p.cap_limit_level)
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self.flt_diff_new_conn = float(self.p.diff_new_conn)
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self.flt_crit_supplier = float(self.p.crit_supplier)
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# init size_stat (self para)
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# (size, time step), ts -1 denotes initialization
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self.size_stat.append((revenue_log, -1))
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# init dct_prod_up_prod_stat (self para)
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for prod in a_lst_product:
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self.dct_prod_up_prod_stat[prod] = {
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# (Normal / Disrupted / Removed, time step)
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'status': [('N', -1)], # ts -1 denotes initialization
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# have or have no supply
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'supply': dict.fromkeys(prod.a_predecessors(), True)
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}
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# init extra capacity (self para)
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for product in a_lst_product:
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# init extra capacity based on discrete uniform distribution
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assert self.str_cap_limit_prob_type in ['uniform', 'normal'], \
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"cap_limit_prob_type other than uniform, normal"
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if self.str_cap_limit_prob_type == 'uniform':
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extra_cap_mean = \
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self.size_stat[0][0] / self.flt_cap_limit_level
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extra_cap = self.model.nprandom.integers(extra_cap_mean-2,
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extra_cap_mean+2)
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extra_cap = 0 if round(extra_cap) < 0 else round(extra_cap)
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# print(firm_agent.name, extra_cap)
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self.dct_prod_capacity[product] = extra_cap
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elif self.str_cap_limit_prob_type == 'normal':
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extra_cap_mean = \
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self.size_stat[0][0] / self.flt_cap_limit_level
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extra_cap = self.model.nprandom.normal(extra_cap_mean, 1)
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extra_cap = 0 if round(extra_cap) < 0 else round(extra_cap)
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# print(firm_agent.name, extra_cap)
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self.dct_prod_capacity[product] = extra_cap
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def remove_edge_to_cus_disrupt_cus_up_prod(self, disrupted_prod):
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# para disrupted_prod is the product that self got disrupted
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lst_out_edge = list(
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self.firm_network.graph.out_edges(
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self.firm_network.positions[self], keys=True, data='Product'))
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for n1, n2, key, product_code in lst_out_edge:
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if product_code == disrupted_prod.code:
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# remove edge to customer
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self.firm_network.graph.remove_edge(n1, n2, key)
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# customer up product affected conditionally
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customer = ap.AgentIter(self.model, n2).to_list()[0]
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lst_in_edge = list(
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self.firm_network.graph.in_edges(n2,
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keys=True,
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data='Product'))
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lst_select_in_edge = [
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edge for edge in lst_in_edge
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if edge[-1] == disrupted_prod.code
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]
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prob_lost_supp = math.exp(-1 * self.flt_crit_supplier *
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len(lst_select_in_edge))
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if self.model.nprandom.choice([True, False],
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p=[prob_lost_supp,
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1 - prob_lost_supp]):
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customer.dct_n_trial_up_prod_disrupted[disrupted_prod] = 0
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for prod in customer.dct_prod_up_prod_stat.keys():
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if disrupted_prod in \
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customer.dct_prod_up_prod_stat[
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prod]['supply'].keys():
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customer.dct_prod_up_prod_stat[
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prod]['supply'][disrupted_prod] = False
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customer.dct_prod_up_prod_stat[
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prod]['status'].append(('D', self.model.t))
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print(self.name, disrupted_prod.code, 'disrupt',
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customer.name, prod.code)
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def seek_alt_supply(self, product):
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# para product is the product that self is seeking
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print(f"{self.name} seek alt supply for {product.code}")
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if self.dct_n_trial_up_prod_disrupted[
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product] <= self.model.int_n_max_trial:
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if self.dct_n_trial_up_prod_disrupted[product] == 0:
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# select a list of candidate firm that has the product
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self.dct_cand_alt_supp_up_prod_disrupted[product] = \
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self.model.a_lst_total_firms.select([
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firm.is_prod_in_current_normal(product)
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for firm in self.model.a_lst_total_firms
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])
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if self.dct_cand_alt_supp_up_prod_disrupted[product]:
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# select based on connection
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lst_firm_connect = []
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if self.is_prf_conn:
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for firm in \
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self.dct_cand_alt_supp_up_prod_disrupted[product]:
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out_edges = self.model.firm_network.graph.out_edges(
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self.model.firm_network.positions[firm], keys=True)
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in_edges = self.model.firm_network.graph.in_edges(
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self.model.firm_network.positions[firm], keys=True)
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lst_adj_firm = []
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lst_adj_firm += \
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[ap.AgentIter(self.model, edge[1]).to_list()[
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0].code for edge in out_edges]
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lst_adj_firm += \
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[ap.AgentIter(self.model, edge[0]).to_list()[
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0].code for edge in in_edges]
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if self.code in lst_adj_firm:
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lst_firm_connect.append(firm)
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if len(lst_firm_connect) == 0:
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# select based on size or not
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if self.is_prf_size:
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lst_size = \
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[firm.size_stat[-1][0] for firm in
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self.dct_cand_alt_supp_up_prod_disrupted[
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product]]
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lst_prob = [size / sum(lst_size)
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for size in lst_size]
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select_alt_supply = self.model.nprandom.choice(
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self.dct_cand_alt_supp_up_prod_disrupted[product],
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p=lst_prob)
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else:
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select_alt_supply = self.model.nprandom.choice(
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self.dct_cand_alt_supp_up_prod_disrupted[product])
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elif len(lst_firm_connect) > 0:
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# select based on size of connected firm or not
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if self.is_prf_size:
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lst_firm_size = \
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[firm.size_stat[-1][0]
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for firm in lst_firm_connect]
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lst_prob = \
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[size / sum(lst_firm_size)
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for size in lst_firm_size]
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select_alt_supply = \
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self.model.nprandom.choice(lst_firm_connect,
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p=lst_prob)
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else:
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select_alt_supply = \
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self.model.nprandom.choice(lst_firm_connect)
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print(
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f"{self.name} selct alt supply for {product.code} "
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f"from {select_alt_supply.name}"
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)
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assert select_alt_supply.is_prod_in_current_normal(product), \
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f"{select_alt_supply} \
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does not produce requested product {product}"
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if product in select_alt_supply.dct_request_prod_from_firm.\
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keys():
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select_alt_supply.dct_request_prod_from_firm[
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product].append(self)
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else:
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select_alt_supply.dct_request_prod_from_firm[product] = [
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self
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]
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print(
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select_alt_supply.name, 'dct_request_prod_from_firm', {
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key.code: [v.name for v in value]
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for key, value in
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select_alt_supply.dct_request_prod_from_firm.items()
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})
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self.dct_n_trial_up_prod_disrupted[product] += 1
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def handle_request(self):
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print(self.name, 'handle_request')
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for product, lst_firm in self.dct_request_prod_from_firm.items():
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if self.dct_prod_capacity[product] > 0:
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if len(lst_firm) == 0:
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continue
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elif len(lst_firm) == 1:
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self.accept_request(lst_firm[0], product)
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elif len(lst_firm) > 1:
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# handling based on connection
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lst_firm_connect = []
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if self.is_prf_conn:
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for firm in lst_firm:
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out_edges = \
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self.model.firm_network.graph.out_edges(
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self.model.firm_network.positions[firm],
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keys=True)
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in_edges = \
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self.model.firm_network.graph.in_edges(
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self.model.firm_network.positions[firm],
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keys=True)
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lst_adj_firm = []
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lst_adj_firm += \
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[ap.AgentIter(self.model, edge[1]).to_list()[
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0].code for edge in out_edges]
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lst_adj_firm += \
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[ap.AgentIter(self.model, edge[0]).to_list()[
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0].code for edge in in_edges]
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if self.code in lst_adj_firm:
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lst_firm_connect.append(firm)
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if len(lst_firm_connect) == 0:
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# handling based on size or not
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if self.is_prf_size:
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lst_firm_size = \
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[firm.size_stat[-1][0] for firm in lst_firm]
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lst_prob = \
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[size / sum(lst_firm_size)
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for size in lst_firm_size]
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select_customer = \
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self.model.nprandom.choice(lst_firm,
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p=lst_prob)
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else:
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select_customer = \
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self.model.nprandom.choice(lst_firm)
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self.accept_request(select_customer, product)
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elif len(lst_firm_connect) > 0:
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# handling based on size of connected firm or not
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if self.is_prf_size:
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lst_firm_size = \
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[firm.size_stat[-1][0]
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for firm in lst_firm_connect]
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lst_prob = \
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[size / sum(lst_firm_size)
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for size in lst_firm_size]
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select_customer = \
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self.model.nprandom.choice(lst_firm_connect,
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p=lst_prob)
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else:
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select_customer = \
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self.model.nprandom.choice(lst_firm_connect)
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self.accept_request(select_customer, product)
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2023-02-27 22:02:46 +08:00
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def accept_request(self, down_firm, product):
|
2023-06-18 17:29:11 +08:00
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# para product is the product that self is selling
|
2023-06-11 15:06:50 +08:00
|
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|
prod_accept = self.flt_diff_new_conn
|
2023-03-14 18:53:00 +08:00
|
|
|
if self.model.nprandom.choice([True, False],
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|
|
p=[prod_accept, 1 - prod_accept]):
|
2023-03-14 12:53:49 +08:00
|
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|
self.firm_network.graph.add_edges_from([
|
|
|
|
(self.firm_network.positions[self],
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2023-03-14 18:53:00 +08:00
|
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|
self.firm_network.positions[down_firm], {
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|
|
|
'Product': product.code
|
2023-05-15 13:37:05 +08:00
|
|
|
})
|
2023-03-14 12:53:49 +08:00
|
|
|
])
|
|
|
|
self.dct_prod_capacity[product] -= 1
|
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|
|
self.dct_request_prod_from_firm[product].remove(down_firm)
|
2023-06-18 17:29:11 +08:00
|
|
|
|
|
|
|
for prod in down_firm.dct_prod_up_prod_stat.keys():
|
|
|
|
if product in down_firm.dct_prod_up_prod_stat[
|
|
|
|
prod]['supply'].keys():
|
|
|
|
down_firm.dct_prod_up_prod_stat[
|
|
|
|
prod]['supply'][product] = True
|
|
|
|
down_firm.dct_prod_up_prod_stat[
|
|
|
|
prod]['status'].append(('N', self.model.t))
|
2023-06-18 21:39:15 +08:00
|
|
|
del down_firm.dct_n_trial_up_prod_disrupted[product]
|
|
|
|
del down_firm.dct_cand_alt_supp_up_prod_disrupted[product]
|
2023-06-18 17:29:11 +08:00
|
|
|
|
|
|
|
print(
|
|
|
|
f"{self.name} accept {product.code} request "
|
|
|
|
f"from {down_firm.name}"
|
|
|
|
)
|
2023-05-15 13:37:05 +08:00
|
|
|
else:
|
2023-06-18 21:39:15 +08:00
|
|
|
down_firm.dct_cand_alt_supp_up_prod_disrupted[product].remove(self)
|
2023-02-27 22:02:46 +08:00
|
|
|
|
2023-07-02 13:00:13 +08:00
|
|
|
print(
|
|
|
|
f"{self.name} denied {product.code} request "
|
|
|
|
f"from {down_firm.name}"
|
|
|
|
)
|
|
|
|
|
2023-02-27 22:02:46 +08:00
|
|
|
def clean_before_trial(self):
|
|
|
|
self.dct_request_prod_from_firm = {}
|
2023-03-07 12:29:27 +08:00
|
|
|
|
|
|
|
def clean_before_time_step(self):
|
2023-06-18 21:39:15 +08:00
|
|
|
self.dct_n_trial_up_prod_disrupted = \
|
|
|
|
dict.fromkeys(self.dct_n_trial_up_prod_disrupted.keys(), 0)
|
|
|
|
self.dct_cand_alt_supp_up_prod_disrupted = {}
|
2023-06-05 10:47:37 +08:00
|
|
|
|
|
|
|
def get_firm_network_node(self):
|
|
|
|
return self.firm_network.positions[self]
|
2023-06-18 22:12:47 +08:00
|
|
|
|
|
|
|
def is_prod_in_current_normal(self, prod):
|
|
|
|
if prod in self.dct_prod_up_prod_stat.keys():
|
|
|
|
if self.dct_prod_up_prod_stat[prod]['status'][-1][0] == 'N':
|
|
|
|
return True
|
|
|
|
else:
|
|
|
|
return False
|
|
|
|
else:
|
|
|
|
return False
|