Exemplo n.º 1
0
def retry( retries, delaySecs, fn, *args, **keywords ):
    """Try something several times before giving up.
       n: number of times to retry
       delaySecs: wait this long between tries
       fn: function to call
       args: args to apply to function call"""
    tries = 0
    while not fn( *args, **keywords ) and tries < retries:
        sleep( delaySecs )
        tries += 1
    if tries >= retries:
        lg.error( "*** gave up after %i retries\n" % tries )
        exit( 1 )
Exemplo n.º 2
0
def moveIntfNoRetry( intf, node, printError=False ):
    """Move interface to node, without retrying.
       intf: string, interface
       node: Node object
       printError: if true, print error"""
    cmd = 'ip link set ' + intf + ' netns ' + repr( node.pid )
    quietRun( cmd )
    links = node.cmd( 'ip link show' )
    if not intf in links:
        if printError:
            lg.error( '*** Error: moveIntf: ' + intf +
                ' not successfully moved to ' + node.name + '\n' )
        return False
    return True
Exemplo n.º 3
0
def planning():
    start_time = datetime.now()
    random.seed(2)
    mdl = Model("Charging-cluster_Management")

    # Sets
    space_range = range(50)
    connector_range = range(4)
    vehicle_range = range(500)
    time_range = range(24)

    # Parameters
    SOC_0 = {}
    F = {}
    for j in vehicle_range:
        SOC_0[j] = random.randint(20, 70)
        F[j] = random.randint(SOC_0[j] + 10, 100)

    A = {}
    U = {}
    D = {}
    for j in vehicle_range:
        A[j] = random.randint(1, time_range[-1] - 2)
        D[j] = random.randint(A[j] + 1, time_range[-1] - 1)
        for t in time_range:
            if A[j] <= t <= D[j]:
                U[j, t] = 1
            else:
                U[j, t] = 0

    SOC_0 = {}
    F = {}
    for j in vehicle_range:
        SOC_0[j] = random.randint(20, 70)
        F[j] = min(
            random.randint(SOC_0[j] + 10, SOC_0[j] + 10 + (D[j] - A[j]) * 5),
            100)

    # Variables
    x = mdl.binary_var_dict(space_range, name='x')
    y = mdl.binary_var_matrix(connector_range, space_range, name='y')
    h = mdl.continuous_var_matrix(space_range, time_range, name='h')
    z = mdl.binary_var_cube(space_range, vehicle_range, time_range, name='z')
    b = mdl.binary_var_cube(space_range, range(0, 5), time_range, name='b')
    w = mdl.binary_var_cube(space_range, vehicle_range, time_range, name='w')
    p = mdl.continuous_var_cube(space_range,
                                vehicle_range,
                                time_range,
                                lb=0,
                                name='p')
    SOC = {}
    P = 22

    # Constraints
    for j in vehicle_range:
        SOC[j] = mdl.integer_var_dict(range(A[j], D[j] + 1),
                                      lb=0,
                                      name=f'SOC_{j}')

    mdl.add_constraint(mdl.sum(x[k] for k in space_range) <= 300, 'C1')
    mdl.add_constraint(
        mdl.sum(y[i, k] for i in connector_range for k in space_range) <= 500,
        'C2')
    for k in space_range:
        mdl.add_constraint(
            mdl.sum(y[i, k] for i in connector_range) <= 4 * x[k], 'C3')
    for j in vehicle_range:
        mdl.add_constraint(SOC[j][A[j]] == SOC_0[j], 'C4')

    for j in vehicle_range:
        for t in range(A[j] + 1, D[j] + 1):
            mdl.add_constraint(
                SOC[j][t] == SOC[j][t - 1] + mdl.sum(p[k, j, t]
                                                     for k in space_range),
                'C5')

    for j in vehicle_range:
        for k in space_range:
            for t in range(A[j] + 1, D[j] + 1):
                mdl.add_constraint(p[k, j, t] <= h[k, t], 'C6')

    for j in vehicle_range:
        for k in space_range:
            for t in range(A[j] + 1, D[j] + 1):
                mdl.add_constraint(p[k, j, t] <= z[k, j, t] * P, 'C20')

    # IF static power
    '''for j in vehicle_range:
        for t in range(A[j] + 1, D[j] + 1):
            mdl.add_constraint(SOC[j][t] == SOC[j][t - 1] + mdl.sum(10 * z[k, j, t] for k in space_range), 'C5')'''
    # IF SOC is a full matrix
    '''for j in vehicle_range:
        for t in range(D[j] + 1, time_range[-1] + 1):
            mdl.add_constraint(SOC[j][t] == SOC[j][t - 1], 'C6')'''

    for k in space_range:
        for t in time_range:
            mdl.add_constraint(
                mdl.sum(z[k, j, t] for j in vehicle_range) == mdl.sum(
                    i * b[k, i, t] for i in range(0, 5)), 'C7')

    for k in space_range:
        for t in time_range:
            mdl.add_constraint(
                mdl.sum(b[k, i, t] for i in range(0, 5)) == 1, 'C8')

    for k in space_range:
        for t in time_range:
            mdl.add_constraint(h[k, t] <= P, 'C9')

    for k in space_range:
        for i in range(0, 5):
            for t in time_range:
                mdl.add_constraint((i * h[k, t] - 100 * (1 - b[k, i, t])) <= P,
                                   'C10')

    for k in space_range:
        for j in vehicle_range:
            for t in time_range:
                mdl.add_constraint(w[k, j, t] <= x[k], 'C11')
    for k in space_range:
        for t in time_range:
            mdl.add_constraint(
                mdl.sum(w[k, j, t] for j in vehicle_range) <= mdl.sum(
                    y[i, k] for i in connector_range), 'C7')
    for j in vehicle_range:
        for t in time_range:
            mdl.add_constraint(
                mdl.sum(w[k, j, t] for k in space_range) <= 1, 'C12')
    for k in space_range:
        for j in vehicle_range:
            for t in time_range:
                mdl.add_constraint(w[k, j, t] <= U[j, t], 'C13')
    for k in space_range:
        for j in vehicle_range:
            for t in time_range:
                mdl.add_constraint(z[k, j, t] <= w[k, j, t], 'C14')

    for j in vehicle_range:
        mdl.add_constraint(F[j] - SOC[j][D[j]] <= 20, 'C15')

    for k in space_range:
        for j in vehicle_range:
            for t in range(A[j] + 1, D[j] + 1):
                mdl.add_constraint(w[k, j, t] == w[k, j, t - 1], 'C16')

    mdl.minimize(
        mdl.sum(1000 * x[k]
                for k in space_range) + mdl.sum(100 * y[i, k]
                                                for k in space_range
                                                for i in connector_range))
    # + mdl.sum(F[j] - SOC[j][D[j]] for j in vehicle_range) * 1 )

    mdl.print_information()

    # assert mdl.solve(), "!!! Solve of the model fails"
    mdl.solve()
    mdl.report()
    for k in space_range:
        if x[k].solution_value != 0:
            lg.error(f'x_{k} = {x[k].solution_value}')
    for i in connector_range:
        for k in space_range:
            if y[i, k].solution_value != 0:
                lg.error(f'y_{i, k} = {y[i, k].solution_value}')

    for j in vehicle_range:
        for t in time_range:
            for k in space_range:
                if w[k, j, t].solution_value != 0:
                    lg.error(
                        f'w_{k, j, t} = {w[k, j, t].solution_value} , '
                        f'z_{k, j, t} = {z[k, j, t].solution_value}, A_{j}={A[j]}, D_{j}={D[j]}'
                    )

    for i in range(0, 5):
        for t in time_range:
            for k in space_range:
                if b[k, i, t].solution_value != 0:
                    lg.error(
                        f'b_{k, i, t} = {b[k, i, t].solution_value}, '
                        f'z = {mdl.sum(z[k, j, t].solution_value for j in vehicle_range)}'
                        f', w = {mdl.sum(w[k, j, t].solution_value for j in vehicle_range)}'
                    )

    for t in time_range:
        for k in space_range:
            if h[k, t].solution_value != 0:
                lg.error(
                    f'h_{k, t} = {h[k, t].solution_value}, '
                    f'sum = {mdl.sum(z[k, j, t].solution_value for j in vehicle_range)}'
                )

    for j in vehicle_range:
        lg.error(
            f'SOC_0_{j} = {SOC_0[j]}, SOC_{j, D[j]} = {SOC[j][D[j]].solution_value}, F_{j}={F[j]}'
        )

    # print(sum([F[j] - SOC[j][D[j]].solution_value]))
    end_time = datetime.now()
    lg.error('Duration: {}'.format(end_time - start_time))
Exemplo n.º 4
0
def planning():
    start_time = datetime.now()
    random.seed(2)
    mdl = Model("Charging-cluster_Management")

    # Sets
    space_range = range(20)
    connector_range = range(4)
    vehicle_range = range(100)
    time_range = range(24)

    # Parameters
    S = 50
    N = 4
    C_plug = 100
    C_EVSE = 1000
    C_grid = 10
    P_EVSE = 22
    P_grid = 10000
    n_s = 0.9
    l_star = 150

    T_e = {}
    l = {}
    for t in time_range:
        T_e[t] = random.randint(25, 80) / 100
        l[t] = 100

    e_d = {}
    A = {}
    U = {}
    D = {}
    for j in vehicle_range:
        e_d[j] = random.randint(20, 40)
        A[j] = random.randint(1, time_range[-1] - 2)
        D[j] = random.randint(A[j] + 1, time_range[-1] - 1)
        for t in time_range:
            if A[j] <= t <= D[j]:
                U[j, t] = 1
            else:
                U[j, t] = 0

    # Variables
    x = mdl.binary_var_dict(space_range, name='x')
    y = mdl.binary_var_matrix(connector_range, space_range, name='y')
    h = mdl.continuous_var_cube(space_range, vehicle_range, time_range, name='h')
    w = mdl.binary_var_cube(space_range, vehicle_range, time_range, name='w')
    e = mdl.continuous_var_cube(space_range, vehicle_range, time_range, lb=0, name='e')
    p_plus = mdl.continuous_var(ub=0, name='p_plus')
    p_star = mdl.continuous_var(ub=0, name='p_star')

    # Constraints

    mdl.add_constraint(mdl.sum(x[k] for k in space_range) <= S, 'C1')
    # mdl.add_constraint(mdl.sum(y[i, k] for i in connector_range for k in space_range) <= S * N, 'C2')
    for k in space_range:
        mdl.add_constraint(mdl.sum(y[i, k] for i in connector_range) <= N * x[k], 'C3')

    mdl.add_constraint(mdl.sum(h[k, j, t] for k in space_range for j in vehicle_range for t in time_range)
                       >= n_s * mdl.sum(e_d[j] for j in vehicle_range), 'C4')
    for j in vehicle_range:
        mdl.add_constraint(mdl.sum(h[k, j, t] for k in space_range for t in time_range)
                           <= e_d[j], 'C5')

    for t in time_range:
        mdl.add_constraint(mdl.sum(h[k, j, t] for k in space_range for j in vehicle_range) + l[t] <=
                           P_grid + p_plus, 'C6')

    '''for k in space_range:
        for j in vehicle_range:
            mdl.add_constraint(w[k, j, A[j]] <= 0, 'C7')
            mdl.add_constraint(w[k, j, D[j]] <= 0, 'C8')'''

    for k in space_range:
        for j in vehicle_range:
            for t in range(A[j] + 1, D[j] + 1):
                mdl.add_constraint(w[k, j, t] <= x[k], 'C9')
    for k in space_range:
        for t in time_range:
            mdl.add_constraint(mdl.sum(w[k, j, t] for j in vehicle_range) <= mdl.sum(y[i, k] for i in connector_range)
                               , 'C10')
    for j in vehicle_range:
        for t in range(A[j], D[j] + 1):
            mdl.add_constraint(mdl.sum(w[k, j, t] for k in space_range) <= 1, 'C11')
    for k in space_range:
        for j in vehicle_range:
            for t in time_range:
                mdl.add_constraint(w[k, j, t] <= U[j, t], 'C12')

    for k in space_range:
        for j in vehicle_range:
            for t in range(A[j] + 1, D[j] + 1):
                mdl.add_constraint(w[k, j, t] >= w[k, j, t - 1], 'C13')
                mdl.add_constraint(w[k, j, t] <= w[k, j, t - 1], 'C13')
    for k in space_range:
        for j in vehicle_range:
            for t in time_range:
                mdl.add_constraint(h[k, j, t] <= w[k, j, t] * P_EVSE, 'C14')

    for k in space_range:
        for t in time_range:
            mdl.add_constraint(mdl.sum(h[k, j, t] for j in vehicle_range) <= P_EVSE, 'C15')

    mdl.minimize(mdl.sum(C_EVSE * x[k] for k in space_range) + mdl.sum(C_plug * y[i, k] for k in space_range
                                                                       for i in connector_range) + C_grid * p_plus +
                 mdl.sum(T_e[t] * h[k, j, t] for k in space_range for j in vehicle_range for t in time_range))
    # + mdl.sum(F[j] - SOC[j][D[j]] for j in vehicle_range) * 1 )

    mdl.print_information()

    # assert mdl.solve(), "!!! Solve of the model fails"
    mdl.solve()
    mdl.report()
    for k in space_range:
        if x[k].solution_value != 0:
            lg.error(f'x_{k} = {x[k].solution_value}')
    for i in connector_range:
        for k in space_range:
            if y[i, k].solution_value != 0:
                lg.error(f'y_{i, k} = {y[i, k].solution_value}')

    for j in vehicle_range:
        for t in time_range:
            for k in space_range:
                if w[k, j, t].solution_value != 0 or h[k, j, t].solution_value != 0:
                    lg.error(f'w_{k, j, t} = {w[k, j, t].solution_value}, '
                             f'h_{k, j, t} = {h[k, j, t].solution_value}, '
                             f'A_{j} = {A[j]}, D_{j} = {D[j]}')

    end_time = datetime.now()
    lg.error('Duration: {}'.format(end_time - start_time))
Exemplo n.º 5
0
Arquivo: users.py Projeto: ifczt/py-oa
def server_error(e):
    lg.error(e)
    raise e