Exemplo n.º 1
0
def clean_metro(metro):
    # Rename some attributes
    utility.rename_node_attribute(metro, old='Latitude', new='lat')
    utility.rename_node_attribute(metro, old='Longitude', new='lon')
    utility.rename_edge_attribute(metro, old='Time (s)', new='time_s')

    # delete extraneous attributes

    # utility.del_edge_attribute(metro, 'To')
    # utility.del_edge_attribute(metro, 'From')
    # utility.del_node_attribute(metro, 'Station')

    # compute time in minutes
    time_m = {(e[0], e[1]): metro.edge[e[0]][e[1]]['time_s'] / 60
              for e in metro.edges_iter()}

    # mark whether a given edge is a transfer edge to another metro line.
    transfer = {key: 'transfer' for key in time_m if time_m[key] == 5.0}
    nx.set_edge_attributes(metro, 'transfer', transfer)

    nx.set_edge_attributes(metro, 'free_flow_time_m', time_m)
    nx.set_edge_attributes(metro, 'uniform_time_m',
                           nx.get_edge_attributes(metro, 'free_flow_time_m'))

    # -----------------------------------------------------------
    # ZEYAD: please delete the below three lines when you update the metro data set. Replace them with whatever is necessary to appropriate set a distance attribute in kilometers.
    dists = {(e[0], e[1]): analysis.distance(
        (metro.node[e[0]]['lat'], metro.node[e[0]]['lon']),
        (metro.node[e[1]]['lat'], metro.node[e[1]]['lon']))
             for e in metro.edges_iter()}
    nx.set_edge_attributes(metro, 'dist_km', dists)
    # -----------------------------------------------------------

    # assume metro has unlimited capacity
    nx.set_edge_attributes(metro, 'capacity', 100000000000000000000000)

    # don't need time_s anymore
    utility.del_edge_attribute(metro, 'time_s')

    return metro
def clean_metro(metro):
	# Rename some attributes
	utility.rename_node_attribute(metro, old = 'Latitude', new = 'lat')
	utility.rename_node_attribute(metro, old = 'Longitude', new = 'lon')
	utility.rename_edge_attribute(metro, old = 'Time (s)', new = 'time_s')
	
	# delete extraneous attributes
	
	# utility.del_edge_attribute(metro, 'To')
	# utility.del_edge_attribute(metro, 'From')
	# utility.del_node_attribute(metro, 'Station')

	# compute time in minutes
	time_m = {(e[0], e[1]) : metro.edge[e[0]][e[1]]['time_s'] / 60 for e in metro.edges_iter()}

	# mark whether a given edge is a transfer edge to another metro line.  
	transfer = {key : 'transfer' for key in time_m if time_m[key] == 5.0}
	nx.set_edge_attributes(metro, 'transfer', transfer)

	nx.set_edge_attributes(metro, 'free_flow_time_m', time_m)
	nx.set_edge_attributes(metro, 'uniform_time_m', nx.get_edge_attributes(metro, 'free_flow_time_m'))

	# -----------------------------------------------------------
	# ZEYAD: please delete the below three lines when you update the metro data set. Replace them with whatever is necessary to appropriate set a distance attribute in kilometers. 
	dists = {(e[0], e[1]) : analysis.distance((metro.node[e[0]]['lat'],metro.node[e[0]]['lon']) , 
							  (metro.node[e[1]]['lat'],metro.node[e[1]]['lon'])) for e in metro.edges_iter()}
	nx.set_edge_attributes(metro, 'dist_km', dists)
	# -----------------------------------------------------------

	# assume metro has unlimited capacity
	nx.set_edge_attributes(metro, 'capacity', 100000000000000000000000)
	
	# don't need time_s anymore
	utility.del_edge_attribute(metro, 'time_s')
	
	return metro
Exemplo n.º 3
0
def clean_streets(streets):

    # Rename attributes
    utility.rename_edge_attribute(streets, 'cost_time_m', 'free_flow_time_m')
    utility.rename_edge_attribute(streets, 'len_km', 'dist_km')

    utility.rename_node_attribute(streets, old='st_x', new='lon')
    utility.rename_node_attribute(streets, old='st_y', new='lat')

    # Delete some extraneous attributes
    utility.del_edge_attribute(streets, 'gid')
    utility.del_edge_attribute(streets, 'source')
    utility.del_edge_attribute(streets, 'target')

    # compute uniform time
    dists = nx.get_edge_attributes(streets, 'dist_km')
    total_dist = np.array(dists.values()).sum()
    total_time_free = np.array(
        nx.get_edge_attributes(streets, 'free_flow_time_m').values()).sum()
    uniform_speed = total_time_free / total_dist
    uniform_times = {key: dists[key] * uniform_speed for key in dists}
    nx.set_edge_attributes(streets, 'uniform_time_m', uniform_times)

    # Delete edges with zero capacity. to impute capacity for them instead, uncomment block below.
    for e in streets.copy().edges_iter():
        if streets.edge[e[0]][e[1]]['capacity'] == 0:
            streets.remove_edge(*e)

    # impute capacity -- just use the mean of all the other capacities.
    # cap = [streets.edge[e[0]][e[1]]['capacity'] for e in streets.edges_iter()]
    # cap = np.array(cap)
    # mean = cap.mean()
    # for e in streets.edges_iter():
    # 	if streets.edge[e[0]][e[1]]['capacity'] == 0:
    # 		streets.edge[e[0]][e[1]]['capacity'] = mean

    return streets
def clean_streets(streets):

	# Rename attributes
	utility.rename_edge_attribute(streets,'cost_time_m', 'free_flow_time_m')
	utility.rename_edge_attribute(streets, 'len_km', 'dist_km')

	utility.rename_node_attribute(streets, old = 'st_x', new = 'lon')
	utility.rename_node_attribute(streets, old = 'st_y', new = 'lat')

	# Delete some extraneous attributes
	utility.del_edge_attribute(streets, 'gid')
	utility.del_edge_attribute(streets, 'source')
	utility.del_edge_attribute(streets, 'target')

	# compute uniform time
	dists = nx.get_edge_attributes(streets, 'dist_km')
	total_dist = np.array(dists.values()).sum()
	total_time_free = np.array(nx.get_edge_attributes(streets, 'free_flow_time_m').values()).sum()
	uniform_speed = total_time_free/total_dist
	uniform_times = {key : dists[key] * uniform_speed  for key in dists}
	nx.set_edge_attributes(streets, 'uniform_time_m', uniform_times)

	# Delete edges with zero capacity. to impute capacity for them instead, uncomment block below. 
	for e in streets.copy().edges_iter():
		if streets.edge[e[0]][e[1]]['capacity'] == 0:
			streets.remove_edge(*e)

	# impute capacity -- just use the mean of all the other capacities. 
	# cap = [streets.edge[e[0]][e[1]]['capacity'] for e in streets.edges_iter()]
	# cap = np.array(cap)
	# mean = cap.mean()
	# for e in streets.edges_iter():
	# 	if streets.edge[e[0]][e[1]]['capacity'] == 0:
	# 		streets.edge[e[0]][e[1]]['capacity'] = mean
	
	return streets