update without blocking errors

This commit is contained in:
2026-01-17 22:48:11 +01:00
parent fc22af69b8
commit 7d55ba0840

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@@ -1,5 +1,6 @@
import random as rd
from .particle import Particle
import copy
class MOPSO():
def __init__(self, f_weights:list, A_max:float, price_mean:float, price_std:float, capacities:list, n:int, t:int, w:float, c1:float, c2:float, archive_size:int=10, nb_vehicles:int=10, delta_t:int=60, nb_of_ticks:int=72, x_min=-100, x_max=100, v_alpha=0.1, surrogate=False):
@@ -18,16 +19,27 @@ class MOPSO():
self.A_max = A_max # Network's power limit
self.socs, self.socs_req = self.generate_state_of_charges(nb_vehicles,nb_of_ticks)
self.times = self.generate_times(nb_vehicles, nb_of_ticks, delta_t)
self.prices = self.generates_prices(price_mean,price_std) #TODO: Use RTE France prices for random prices generation according to number of ticks
self.prices = self.generates_prices(nb_of_ticks,price_mean,price_std) #TODO: Use RTE France prices for random prices generation according to number of ticks
self.capacities = capacities
# Particles of the simulation
self.particles = [Particle(nb_vehicles=nb_vehicles, nb_of_ticks=nb_of_ticks, delta_t=delta_t, x_min=x_min, x_max=x_max, alpha=v_alpha) for _ in range(self.n)]
self.particles = [
Particle(
socs=copy.deepcopy(self.socs),
times=self.times, # Ajouté ici
nb_vehicles=nb_vehicles,
nb_of_ticks=nb_of_ticks,
delta_t=delta_t,
x_min=x_min,
x_max=x_max,
alpha=v_alpha
) for _ in range(self.n)
]
self.archive = []
self.leader = self.particles[0] # it doesnt matter as the first thing done is choosing a new leader
for i in range(self.n):
self.particles[i].evaluate(self.f_weights, self.prices, self.socs, self.socs_req, self.times)
self.particles[i].evaluate(self.prices, self.socs, self.socs_req, self.times)
self.update_archive()
def iterate(self):
@@ -78,46 +90,48 @@ class MOPSO():
# Genrates the coordinated states of charges requested and initial (duplicated initially for other ticks)
def generate_state_of_charges(self, nb_vehicles:int, nb_of_ticks:int):
socs = []
# Structure souhaitée : socs[tick][vehicle] pour être cohérent avec self.x[tick][vehicle]
socs = [[0.0 for _ in range(nb_vehicles)] for _ in range(nb_of_ticks)]
socs_req = []
# We ensure soc_req is greater than what the soc_init is (percentage transformed into floats)
for _ in range(nb_vehicles):
soc_init = rd.randrange(0,100,1)
soc_req = rd.randrange(soc_init+1, 101,1)
# Creating states of charges for each tick in time
for _ in range(nb_of_ticks):
socs.append(soc_init/100)
for i in range(nb_vehicles):
soc_init = rd.randrange(0, 100, 1)
soc_req = rd.randrange(soc_init + 1, 101, 1)
# Remplissage de la matrice 2D
for tick in range(nb_of_ticks):
socs[tick][i] = soc_init / 100.0
socs_req.append(soc_req / 100.0)
# Adding the requested state of charge
socs_req.append(soc_req/100)
return socs, socs_req
# True if a dominates b, else false
def dominates(a:Particle, b:Particle):
dominates = (a.f_current[0] >= b.f_current[0]) and (a.f_current[1] >= b.f_current[1]) and (a.f_current[2] >= b.f_current[2])
def dominates(self, a:Particle, b:Particle):
dominates = (a.f_current[0] <= b.f_current[0]) and (a.f_current[1] <= b.f_current[1]) and (a.f_current[2] <= b.f_current[2])
if dominates:
# Not strict superiority yet
dominates = (a.f_current[0] > b.f_current[0]) or (a.f_current[1] > b.f_current[1]) or (a.f_current[2] > b.f_current[2])
dominates = (a.f_current[0] < b.f_current[0]) or (a.f_current[1] < b.f_current[1]) or (a.f_current[2] < b.f_current[2])
return dominates
def update_archive(self):
candidates = self.archive + self.particles
length = len(candidates)
non_dominated = []
for i in range(length):
candidate_i = candidates[i]
dominates = True
is_dominated = False
for j in range(length):
if i!=j:
if i != j:
candidate_j = candidates[j]
dominates = dominates and self.dominates(candidate_i, candidate_j)
if dominates:
if self.dominates(candidate_j, candidate_i):
is_dominated = True
break
if not is_dominated:
non_dominated.append(candidate_i)
# Keeping only a certain number of solutions depending on archive_size (to avoid overloading the number of potential directions for particles)
if len(non_dominated) > self.archive_size:
final_non_dominated = []
while len(final_non_dominated) < self.archive_size: