Ejemplo n.º 1
0
    def get_data(self):
        """ Get the houses for rent """
        try:
            data = urllib2.urlopen(self.url)

            #Tricky part
            result = json.load(data)
            aux = json.dumps(result)
            aux2 = json.dumps(json.loads(aux))

            #Data Frame
            data_frame = pd.read_json(aux2)
            data_frame = data_frame.dropna()
            distances = []
            #Compute the distance between two points useing harvesine formule
            #print(data_frame)
            for i, r in data_frame.iterrows():
                ans = haversine(r['longitude'], r['latitude'])
                distances.append(ans)
            data_frame['distance'] = pd.Series(distances,
                                               index=data_frame.index)
            return data_frame
        except Exception as e:
            print("error", str(e))
            return []
Ejemplo n.º 2
0
print("================ Extracting gps locations===================")
max_latitude = -500
min_latitude = 500
max_longitude = -500
min_longitude = 500
lon_lat_list = []
for file in gpx_files:
    gpx_file = open(file,'r')
    gpx = gpxpy.parse(gpx_file)
    lon = []
    lat = []
    last_point = (0,0)
    for track in gpx.tracks:
        for segment in track.segments:
            for gps_point in segment.points:
                if(functions.haversine(last_point, (gps_point.longitude, gps_point.latitude)) > 2):#to avoid bias in heat in uphills, when you move slower, the haversine distance between two points has to be at least 2 meters
                    lon.append(gps_point.longitude)
                    lat.append(gps_point.latitude)
                    if(max_latitude < gps_point.latitude):
                        max_latitude = gps_point.latitude
                    if(min_latitude > gps_point.latitude):
                        min_latitude = gps_point.latitude
                    if(max_longitude < gps_point.longitude):
                        max_longitude = gps_point.longitude
                    if(min_longitude > gps_point.longitude):
                        min_longitude = gps_point.longitude
                last_point = (gps_point.longitude, gps_point.latitude)
    lon_lat_list.append((lon,lat))
print("Done in: ", time.time() - lap, " s")
lap = time.time()
lon1 = 283.90
lat1 = -14.37  # SAm 1
lon2 = 286.76
lat2 = -33.01  # SAm 2
lon3 = 143.07
lat3 = 25.33  # Mariana
rad_km = 6378.
thresh_dist = 200.

# every-so-often case
num = 0
for n in range(len(dips)):
    lon = dips[n, 0]
    lat = dips[n, 1]
    dist1 = haversine(lon, lat, lon1, lat1, rad_km)
    dist2 = haversine(lon, lat, lon2, lat2, rad_km)
    dist3 = haversine(lon, lat, lon3, lat3, rad_km)
    if dist1 < thresh_dist or dist2 < thresh_dist or dist3 < thresh_dist:
        pass
    else:
        num = num + 1

dips_new = np.zeros((num, 3))
num = 0
for i in range(len(dips)):
    lon = dips[i, 0]
    lat = dips[i, 1]
    dist1 = haversine(lon, lat, lon1, lat1, rad_km)
    dist2 = haversine(lon, lat, lon2, lat2, rad_km)
    dist3 = haversine(lon, lat, lon3, lat3, rad_km)
Ejemplo n.º 4
0
num_obs = len(dips_lall)
slab2_dips_LallLocations = np.zeros((num_obs, 4))
for i in range(num_obs):

    lon_obs = dips_lall[i, 0]
    lat_obs = dips_lall[i, 1]

    dist_max = 5000.0
    dist_ind = 1e6
    for j in range(len(dips_slab2_full)):

        lon_calc = dips_slab2_full[j, 0]
        lat_calc = dips_slab2_full[j, 1]

        dist = haversine(lon_obs, lat_obs, lon_calc, lat_calc, 6378.)
        if dist < dist_max:
            dist_max = dist
            dist_ind = j

    if dist_ind != 1e6:
        slab2_dips_LallLocations[i, 0] = dips_slab2_full[dist_ind, 0]
        slab2_dips_LallLocations[i, 1] = dips_slab2_full[dist_ind, 1]
        slab2_dips_LallLocations[i, 2] = dips_slab2_full[dist_ind, 2]
    slab2_dips_LallLocations[i, 3] = dist_max

slab2cont_dips_LallLocations = np.zeros((num_obs, 4))
for i in range(num_obs):

    lon_obs = dips_lall[i, 0]
    lat_obs = dips_lall[i, 1]
seg_dist = np.zeros((num_obs))
is_trench_fixed = np.zeros((num_obs))
is_just_upper_mant = np.zeros((num_obs))
num_good_subds = 0
for i in range(num_obs):

    lon_obs = dips_obs_tmp[i, 0]
    lat_obs = dips_obs_tmp[i, 1]

    dist_max = 1000.0
    for j in range(num_DPs):

        lon_mod = DPs_mod[j, 0]
        lat_mod = DPs_mod[j, 1]

        dist = haversine(lon_obs, lat_obs, lon_mod, lat_mod, 6378.)
        if dist < dist_max and iwall[j] == 1:
            dist_max = dist
            dist_ind = j

    lon_mod = DPs_mod[dist_ind, 0]
    lat_mod = DPs_mod[dist_ind, 1]
    DP = DPs_mod[dist_ind, 4]
    age = sp_ages[dist_ind, 2]
    vc = DPs_mod[dist_ind, 5]
    vt = DPs_mod[dist_ind, 6]

    crust_density = 3450  # rho_eclogite [kg/m3], C-T Lee, W-P Chen, 2007, EPSL
    crust_thick = 7.5e3  # m

    # fill array...
Ejemplo n.º 6
0
	# get age coordinates
	if iwall[i] == 1:
		if polarity[i] == 1: # dipping to left
			age_azim = alpha[i] + (np.pi/2.)
		else:				 # dipping to right 
			age_azim = alpha[i] - (np.pi/2.)
		lon_age_rad , lat_age_rad = project_to_point(np.deg2rad(lono[i]), np.deg2rad(lato[i]), age_azim, age_len_ratio)
		if lon_age_rad < 0.:
			lon_age_rad = (2.*np.pi) + lon_age_rad
		sp_ages[i,0] = math.degrees(lon_age_rad)
		sp_ages[i,1] = math.degrees(lat_age_rad)

		dist_max = 1.e9
		for j in range(0,len(age_txt)):
			dist_pt = haversine(sp_ages[i,0], sp_ages[i,1], age_txt[j,0], age_txt[j,1],6378.)
			if dist_pt < dist_max:
				dist_max = dist_pt
				closest_ind = j
		print i
	
		sp_ages[i,2] = age_txt[closest_ind,2]

print "getting rid of nans..."
for i in range(len(sp_ages)):

	if np.isnan(sp_ages[i,2]):

		dist_max = 1.e9
		for k in range(0,len(sp_ages)):
			dist_pt = haversine(sp_ages[i,0], sp_ages[i,1], sp_ages[k,0], sp_ages[k,1],6378.)
Ejemplo n.º 7
0
import json

sys.path.append("..")

from functions import generate_random_string, haversine
from app import app
from models import db, Stops, Links, Edges, Routes

index = 0.0
with app.app_context():
    stops = Stops.query.all()
    num_stops = len(stops) * 1.0
    for begin_stop in stops:
        index += 1.0
        print(begin_stop.id)
        print(str(index / num_stops))
        for end_stop in stops:
            if begin_stop.id != end_stop.id:
                distance = haversine(begin_stop.lng, begin_stop.lat,
                                     end_stop.lng, end_stop.lat)
                existing_edge = Edges.query.filter_by(
                    beginning_stop=begin_stop.id).filter_by(
                        ending_stop=end_stop.id).first()
                if existing_edge == None:
                    if distance < 1:
                        new_edge = Edges(generate_random_string(10, 20),
                                         begin_stop.id, end_stop.id, distance)
                        db.session.add(new_edge)
                        db.session.commit()

print("Finished")