Manhattan Distance for two geolocations

半腔热情 提交于 2019-12-03 08:42:51

Given a plane with p1 at (x1, y1) and p2 at (x2, y2), it is, the formula to calculate the Manhattan Distance is |x1 - x2| + |y1 - y2|. (that is, the difference between the latitudes and the longitudes). So, in your case, it would be:

|126.978 - 126.973| + |37.5613 - 37.5776| = 0.0213

EDIT: As you have said, that would give us the difference in latitude-longitude units. Basing on this webpage, this is what I think you must do to convert it to the metric system. I haven't tried it, so I don't know if it's correct:

First, we get the latitude difference:

Δφ = |Δ2 - Δ1|
Δφ = |37.5613 - 37.5776| = 0.0163

Now, the longitude difference:

Δλ = |λ2 - λ1|
Δλ = |126.978 - 126.973| = 0.005

Now, we will use the haversine formula. In the webpage it uses a = sin²(Δφ/2) + cos φ1 ⋅ cos φ2 ⋅ sin²(Δλ/2), but that would give us a straight-line distance. So to do it with Manhattan distance, we will do the latitude and longitude distances sepparatedly.

First, we get the latitude distance, as if longitude was 0 (that's why a big part of the formula got ommited):

a = sin²(Δφ/2)
c = 2 ⋅ atan2( √a, √(1−a) )
latitudeDistance = R ⋅ c // R is the Earth's radius, 6,371km

Now, the longitude distance, as if the latitude was 0:

a = sin²(Δλ/2)
c = 2 ⋅ atan2( √a, √(1−a) )
longitudeDistance = R ⋅ c // R is the Earth's radius, 6,371km

Finally, just add up |latitudeDistance| + |longitudeDistance|.

For example, calculating Manhattan Distance of Point1 and Point2. Simply apply LatLng distance function by projecting the "Point2" on to the same Lat or Lng of the "Point1".

def distance(lat1, lng1, lat2, lng2, coordinates):

    lat1 = radians(lat1)
    lat2 = radians(lat2)
    lon1 = radians(lng1)
    lon2 = radians(lng2)
    d_lon = lon2 - lon1
    d_lat = lat2 - lat1

    if coordinates['LatLong']:
        r = 6373.0
        a = (np.sin(d_lat/2.0))**2 + np.cos(lat1) * \
            np.cos(lat2) * (np.sin(d_lon/2.0))**2
        c = 2 * np.arcsin(np.sqrt(a))
        total_distance = r * c

    if coordinates['XY']:
        total_distance = math.sqrt(d_lon * d_lon + d_lat * d_lat)
    return total_distance

def latlng2manhattan(lat1, lng1, lat2, lng2):
    coordinates = {"LatLong": True, "XY": False}
    # direction = 1
    if lat1 == 0:
        lat1 = lat2
        # if lng1 < lng2:
            # direction = -1
    if lng1 == 0:
        lng1 = lng2
        # if lat1 < lat2:
            # direction = -1
    # mh_dist = direction * distance(lat1, lng1, lat2, lng2, coordinates) * 3280.84 # km to ft
    mh_dist = distance(lat1, lng1, lat2, lng2, coordinates) * 3280.84
    return mh_dist

df["y_mh"] = df["y_lat"].apply(lambda x: latlng2manhattan(0, x, center_long, center_lat))
df["x_mh"] = df["x_long"].apply(lambda x: latlng2manhattan(x, 0, center_long, center_lat))
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