This vignette contains solutions to various geographical position calculations. It is inspired and follows the 10 examples given at https://www.navlab.net/nvector/ .
Most of the content is based on (Gade 2010).
The color scheme in the Figures is as follows:
Given two positions \(A\) and \(B\), find the exact vector from \(A\) to \(B\) in meters north, east and down, and find the direction (azimuth/bearing) to \(B\), relative to north. Use WGS-84 ellipsoid.
Transform the positions \(A\) and \(B\) to (decimal) degrees and depths:
# Position A:
lat_EA <- rad(1)
lon_EA <- rad(2)
z_EA <- 3
# Position B:
lat_EB <- rad(4)
lon_EB <- rad(5)
z_EB <- 6
Step 1: Convert to n-vectors, \(\mathbf{n}_{EA}^E\) and \(\mathbf{n}_{EB}^E\)
(n_EA_E <- lat_lon2n_E(lat_EA, lon_EA))
#> [1] 0.99923861 0.03489418 0.01745241
(n_EB_E <- lat_lon2n_E(lat_EB, lon_EB))
#> [1] 0.99376802 0.08694344 0.06975647
Step 2: Find \(\mathbf{p}_{AB}^E\) (delta decomposed in E). WGS-84 ellipsoid is default
(p_AB_E <- n_EA_E_and_n_EB_E2p_AB_E(n_EA_E, n_EB_E, z_EA, z_EB))
#> [1] -34798.44 331985.66 331375.96
Step 3: Find \(\mathbf{R}_{EN}\) for position \(A\)
(R_EN <- n_E2R_EN(n_EA_E))
#> [,1] [,2] [,3]
#> [1,] -0.0174417749 -0.0348995 -0.99923861
#> [2,] -0.0006090802 0.9993908 -0.03489418
#> [3,] 0.9998476952 0.0000000 -0.01745241
Step 4: Find \(\mathbf{p}_{AB}^N = \mathbf{R}_{NE} \mathbf{p}_{AB}^E\)
# (Note the transpose of R_EN: The "closest-rule" says that when
# decomposing, the frame in the subscript of the rotation matrix that is
# closest to the vector, should equal the frame where the vector is
# decomposed. Thus the calculation R_NE*p_AB_E is correct, since the vector
# is decomposed in E, and E is closest to the vector. In the above example
# we only had R_EN, and thus we must transpose it: base::t(R_EN) = R_NE)
(p_AB_N <- base::t(R_EN) %*% p_AB_E %>%
as.vector())
#> [1] 331730.23 332997.87 17404.27
The vector \(\mathbf{p}_{AB}^N\) connects A to B in the North-East-Down framework. The line-of-sight distance, in meters, from A to B is
(los_distance <- norm(p_AB_N, type = "2"))
#> [1] 470356.7
while the altitude (elevation above the horizon), in decimal degrees, is
(elevation <- atan2(-p_AB_N[3], p_AB_N[2]) %>% deg())
#> [1] -2.991865
Step 5: Also find the direction to \(B\) (azimuth), in decimal degrees, relative to true North
(azimuth <- atan2(p_AB_N[2], p_AB_N[1]) %>% # positive angle about down-axis
deg())
#> [1] 45.10926
A radar or sonar attached to a vehicle \(B\) (Body coordinate frame) measures the distance and direction to an object \(C\).
We assume that the distance and two angles (typically bearing and elevation relative to \(B\)) are already combined to the vector \(\mathbf{p}_{BC}^B\) (i.e. the vector from \(B\) to \(C\), decomposed in B).
The position of \(B\) is given as \(\mathbf{n}_{EB}^E\) and \(z_{EB}\), and the orientation (attitude)
of \(B\) is given as \(\mathbf{R}_{NB}\) (this rotation matrix can be found from
roll/pitch/yaw by using zyx2R
).
Find the exact position of object \(C\) as n-vector and depth (\(\mathbf{n}_{EC}^E\) and \(z_{EC}\)), assuming Earth ellipsoid with semi-major axis \(a\) and flattening \(f\).
For WGS-72, use \(a = 6378135~\mathrm{m}\) and \(f = \dfrac{1}{298.26}\).
p_BC_B <- c(3000, 2000, 100)
# Position and orientation of B is given:
(n_EB_E <- unit(c(1, 2, 3))) # unit() to get unit length of vector
#> [1] 0.2672612 0.5345225 0.8017837
z_EB <- -400
(R_NB <- zyx2R(rad(10),rad(20),rad(30))) # the three angles are yaw, pitch, and roll
#> [,1] [,2] [,3]
#> [1,] 0.9254166 0.01802831 0.3785223
#> [2,] 0.1631759 0.88256412 -0.4409696
#> [3,] -0.3420201 0.46984631 0.8137977
# A custom reference ellipsoid is given (replacing WGS-84):
# (WGS-72)
a <- 6378135
f <- 1 / 298.26
Step 1: Find \(\mathbf{R}_{EN}\)
(R_EN <- n_E2R_EN(n_EB_E))
#> [,1] [,2] [,3]
#> [1,] -0.3585686 -0.8944272 -0.2672612
#> [2,] -0.7171372 0.4472136 -0.5345225
#> [3,] 0.5976143 0.0000000 -0.8017837
Step 2: Find \(\mathbf{R}_{EB}\) from \(\mathbf{R}_{EN}\) and \(\mathbf{R}_{NB}\)
(R_EB <- R_EN %*% R_NB) # Note: closest frames cancel
#> [,1] [,2] [,3]
#> [1,] -0.3863656 -0.9214254 0.04119242
#> [2,] -0.4078587 0.1306225 -0.90365318
#> [3,] 0.8272684 -0.3659411 -0.42627939
Step 3: Decompose the delta vector \(\mathbf{p}_{BC}^B\) in E
(p_BC_E <- R_EB %*% p_BC_B) # no transpose of R_EB, since the vector is in B)
#> [,1]
#> [1,] -2997.828
#> [2,] -1052.696
#> [3,] 1707.295
Step 4: Find the position of \(C\), using the functions that goes from one position and a delta, to a new position
l <- n_EA_E_and_p_AB_E2n_EB_E(n_EB_E, p_BC_E, z_EB, a, f)
(n_EB_E <- l[['n_EB_E']])
#> [1] 0.2667916 0.5343565 0.8020507
(z_EB <- l[['z_EB']])
#> [1] -406.0072
Convert to latitude and longitude, and height
lat_lon_EB <- n_E2lat_lon(n_EB_E)
(latitude <- lat_lon_EB[1])
#> [1] 0.9307209
(longitude <- lat_lon_EB[2])
#> [1] 1.107728
# height (= - depth)
(height <- -z_EB)
#> [1] 406.0072
Position \(B\) is given as an “ECEF-vector” \(\mathbf{p}_{EB}^E\) (i.e. a vector from E, the center of the Earth, to \(B\), decomposed in E).
Find the geodetic latitude, longitude and height (latEB
, lonEB
and hEB
),
assuming WGS-84 ellipsoid.
Position \(B\) is given as \(\mathbf{p}_{EB}^E\), i.e. “ECEF-vector”
(p_EB_E <- 6371e3 * c(0.9, -1, 1.1)) # m
#> [1] 5733900 -6371000 7008100
Find n-vector from the p-vector
l <- p_EB_E2n_EB_E(p_EB_E)
(n_EB_E <- l[['n_EB_E']])
#> [1] 0.5170890 -0.5745433 0.6344439
(z_EB <- l[['z_EB']])
#> [1] -4702060
Convert to latitude and longitude, and height
lat_lon_EB <- n_E2lat_lon(n_EB_E)
(latEB <- lat_lon_EB[1])
#> [1] 0.6872888
(lonEB <- lat_lon_EB[2])
#> [1] -0.8379812
# height (= - depth)
(hEB <- -z_EB)
#> [1] 4702060
Find the ECEF-vector \(\mathbf{p}_{EB}^E\) for the geodetic position \(B\) given as latitude \(lat_{EB}\), longitude \(lon_{EB}\) and height \(h_{EB}\).
lat_EB <- rad(1)
lon_EB <- rad(2)
h_EB <- 3
Step 1: Convert to n-vector
(n_EB_E <- lat_lon2n_E(lat_EB, lon_EB))
#> [1] 0.99923861 0.03489418 0.01745241
Step 2: Find the ECEF-vector p_EB_E
(p_EB_E <- n_EB_E2p_EB_E(n_EB_E, -h_EB))
#> [1] 6373290.3 222560.2 110568.8
Given two positions \(A\) \(\mathbf{n}_{EA}^E\) and \(B\) \(\mathbf{n}_{EB}^E\), find the surface distance \(s_{AB}\) (i.e. great circle distance). The heights of \(A\) and \(B\) are not relevant (i.e. if they don’t have zero height, we seek the distance between the points that are at the surface of the Earth, directly above/below \(A\) and \(B\)). Also find the Euclidean distance (chord length) \(d_{AB}\) using nonzero heights.
Assume a spherical model of the Earth with radius \(r_{Earth} = 6371~\mathrm{km}\).
Compare the results with exact calculations for the WGS-84 ellipsoid.
n_EA_E <- lat_lon2n_E(rad(88), rad(0));
n_EB_E <- lat_lon2n_E(rad(89), rad(-170))
r_Earth <- 6371e3
The great circle distance is given by equations (16) in (Gade 2010) (the \(\arccos\) is ill conditioned for small angles; the \(\arcsin\) is ill-conditioned for angles near \(\pi/2\), and not valid for angles greater than \(\pi/2\)) where \(r_{roc}\) is the radius of curvature, i.e. Earth radius + height:
\(\begin{align} s_{AB} & = r_{roc} \cdot \arccos \!\big(\mathbf{n}_{EA}^E \boldsymbol{\cdot} \mathbf{n}_{EB}^E\big)\\ & = r_{roc} \cdot \arcsin \!\big(\big|\mathbf{n}_{EA}^E \boldsymbol{\times} \mathbf{n}_{EB}^E\big|\big) \tag{16} \end{align}\)
The formulation via \(\operatorname{atan2}\) of equation (6) in (Gade 2010) is instead well conditioned for all angles:
\(s_{AB} = r_{roc} \cdot \operatorname{atan2}\big(\big|\mathbf{n}_{EA}^E \boldsymbol{\times} \mathbf{n}_{EB}^E\big|, \mathbf{n}_{EA}^E \boldsymbol{\cdot} \mathbf{n}_{EB}^E\big) \tag{6}\)
(s_AB <- (atan2(base::norm(pracma::cross(n_EA_E, n_EB_E), type = "2"),
pracma::dot(n_EA_E, n_EB_E)) * r_Earth))
#> [1] 332456.4
The Euclidean distance is given by
\(d = r_{roc} \cdot \big| \mathbf{n}_{EB}^E - \mathbf{n}_{EA}^E \big|\)
(d_AB <- base::norm(n_EB_E - n_EA_E, type = "2") * r_Earth)
#> [1] 332418.7
The distance between \(A\) and \(B\) ca be calculated via geosphere
package
geosphere::distGeo(c(0, 88), c(-170, 89))
#> [1] 333947.5
Given the position of \(B\) at time \(t_0\) and \(t_1\), \(\mathbf{n}_{EB}^E(t_0)\) and \(\mathbf{n}_{EB}^E(t_1)\).
Find an interpolated position at time \(t_i\), \(\mathbf{n}_{EB}^E(t_i)\). All positions are given as n-vectors.
Standard interpolation can be used directly with n-vector as
\[ \mathbf{n}_{EB}^E(t_i) = \operatorname{unit}\Bigg(\mathbf{n}_{EB}^E(t_0) + \frac{t_i − t_0}{t_1 − t_0} \Big(\mathbf{n}_{EB}^E(t_1) − \mathbf{n}_{EB}^E(t_0)\Big)\Bigg) \]
n_EB_E_t0 <- lat_lon2n_E(rad(89.9), rad(-150))
n_EB_E_t1 <- lat_lon2n_E(rad(89.9), rad(150))
# The times are given as:
t0 <- 10
t1 <- 20
ti <- 16 # time of interpolation
Using the expression above
t_frac <- (ti - t0) / (t1 - t0)
(n_EB_E_ti <- unit(n_EB_E_t0 + t_frac * (n_EB_E_t1 - n_EB_E_t0) ))
#> [1] -0.0015114993 0.0001745329 0.9999988425
and converting back to longitude and latitude
(l <- n_E2lat_lon(n_EB_E_ti) %>% deg())
#> [1] 89.91282 173.41322
(latitude <- l[1])
#> [1] 89.91282
(longitude <- l[2])
#> [1] 173.4132
Given three positions \(A\), \(B\), and \(C\) as n-vectors \(\mathbf{n}_{EA}^E\), \(\mathbf{n}_{EB}^E\), and \(\mathbf{n}_{EC}^E\), find the mean position, \(M\), as n-vector \(\mathbf{n}_{EM}^E\).
Note that the calculation is independent of the depths of the positions.
The (geographical) mean position \(B_{GM}\) is simply given equation (17) in (Gade 2010) (assuming spherical Earth)
\[ \mathbf{n}_{EB_{GM}}^E = \operatorname{unit}\Big( \sum_{i = 1}^{m} \mathbf{n}_{EB_i}^E \Big) \tag{17} \]
and specifically for the three given points
\[ \mathbf{n}_{EM}^E = \mathrm{unit}\Big(\mathbf{n}_{EA}^E + \mathbf{n}_{EB}^E + \mathbf{n}_{EC}^E \Big) = \frac{\mathbf{n}_{EA}^E + \mathbf{n}_{EB}^E + \mathbf{n}_{EC}^E}{\Big | \mathbf{n}_{EA}^E + \mathbf{n}_{EB}^E + \mathbf{n}_{EC}^E \Big| } \] Given the three n-vectors
n_EA_E <- lat_lon2n_E(rad(90), rad(0))
n_EB_E <- lat_lon2n_E(rad(60), rad(10))
n_EC_E <- lat_lon2n_E(rad(50), rad(-20))
find the horizontal mean position
(n_EM_E <- unit(n_EA_E + n_EB_E + n_EC_E))
#> [1] 0.38411717 -0.04660241 0.92210749
and convert to longitude/latitude
(l <- n_E2lat_lon(n_EM_E) %>% deg())
#> [1] 67.236153 -6.917511
(latitude <- l[1])
#> [1] 67.23615
(longitude <- l[2])
#> [1] -6.917511
Given a position \(A\) as n-vector \(\mathbf{n}_{EA}^E\), an initial direction of travel as an azimuth (bearing), \(\alpha\), relative to north (clockwise), and finally the distance to travel along a great circle, \(s_{AB}\) find the destination point \(B\), given as \(\mathbf{n}_{EB}^E\).
Use Earth radius \(r_{Earth}\).
In geodesy this is known as “The first geodetic problem” or “The direct geodetic problem” for a sphere, and we see that this is similar to Example 2, but now the delta is given as an azimuth and a great circle distance. (“The second/inverse geodetic problem” for a sphere is already solved in Examples 1 and 5.)
Given the initial values
n_EA_E <- lat_lon2n_E(rad(80),rad(-90))
azimuth <- rad(200)
s_AB <- 1000 # distance (m)
r_Earth <- 6371e3 # mean Earth radius (m)
Step 1: Find unit vectors for north and east as per equations (9) and (10) in (Gade 2010)
$$ \[\begin{align} \mathbf{k}_{east}^E & = \begin{bmatrix} 1 \\ 0 \\ 0 \end{bmatrix} \times \mathbf{n}^E \tag{9} \\ \mathbf{k}_{north}^E & = \mathbf{n}^E \times \begin{bmatrix} 1 \\ 0 \\ 0 \end{bmatrix} \times \mathbf{n}^E \tag{10} \end{align}\] $$
k_east_E <- unit(pracma::cross(base::t(R_Ee()) %*% c(1, 0, 0) %>% as.vector(), n_EA_E))
k_north_E <- pracma::cross(n_EA_E, k_east_E)
Step 2: Find the initial direction vector \(d_E\)
d_E <- k_north_E * cos(azimuth) + k_east_E * sin(azimuth)
Step 3: Find \(\mathbf{n}_{EB}^E\)
n_EB_E <- n_EA_E * cos(s_AB / r_Earth) + d_E * sin(s_AB / r_Earth)
Convert to longitude/latitude
(l <- n_E2lat_lon(n_EB_E) %>% deg())
#> [1] 79.99155 -90.01770
(latitude <- l[1])
#> [1] 79.99155
(longitude <- l[2])
#> [1] -90.0177
Define a path from two given positions (at the surface of a spherical Earth), as the great circle that goes through the two points.
Path A is given by \(A_1\) and \(A_2\), while path B is given by \(B_1\) and \(B_2\).
Find the position C where the two great circles intersect.
n_EA1_E <- lat_lon2n_E(rad(50), rad(180))
n_EA2_E <- lat_lon2n_E(rad(90), rad(180))
n_EB1_E <- lat_lon2n_E(rad(60), rad(160))
n_EB2_E <- lat_lon2n_E(rad(80), rad(-140))
# These are from the python version (results are the same ;-)
# n_EA1_E <- lat_lon2n_E(rad(10), rad(20))
# n_EA2_E <- lat_lon2n_E(rad(30), rad(40))
# n_EB1_E <- lat_lon2n_E(rad(50), rad(60))
# n_EB2_E <- lat_lon2n_E(rad(70), rad(80))
Find the intersection between the two paths, \(\mathbf{n}_{EC}^E\)
n_EC_E_tmp <- unit(pracma::cross(
pracma::cross(n_EA1_E, n_EA2_E),
pracma::cross(n_EB1_E, n_EB2_E)))
\(\mathbf{n}_{{EC}_{tmp}}^E\) is one of two solutions, the other is \(-\mathbf{n}_{{EC}_{tmp}}^E\). Select the one that is closest to \(\mathbf{n}_{EA_1}^E\), by selecting sign from the dot product between \(\mathbf{n}_{{EC}_{tmp}}^E\) and \(\mathbf{n}_{EA_1}^E\)
n_EC_E <- sign(pracma::dot(n_EC_E_tmp, n_EA1_E)) * n_EC_E_tmp
Convert to longitude/latitude
(l <- n_E2lat_lon(n_EC_E) %>% deg())
#> [1] 74.16345 180.00000
(latitude <- l[1])
#> [1] 74.16345
(longitude <- l[2])
#> [1] 180
Path A is given by the two positions \(A_1\) and \(A_2\) (similar to the previous example).
Find the cross track distance \(s_{xt}\) between the path A (i.e. the great circle through \(A_1\) and \(A_2\)) and the position \(B\) (i.e. the shortest distance at the surface, between the great circle and \(B\)).
Also find the Euclidean distance \(d_{xt}\) between \(B\) and the plane defined by the great circle.
Use Earth radius \(6371~\mathrm{km}\).
Given
n_EA1_E <- lat_lon2n_E(rad(0), rad(0))
n_EA2_E <- lat_lon2n_E(rad(10),rad(0))
n_EB_E <- lat_lon2n_E(rad(1), rad(0.1))
r_Earth <- 6371e3 # mean Earth radius (m)
Find the unit normal to the great circle between n_EA1_E and n_EA2_E as shown in the Figure 11.
c_E <- unit(pracma::cross(n_EA1_E, n_EA2_E))
Find the great circle cross track distance
(s_xt <- (acos(pracma::dot(c_E, n_EB_E)) - pi / 2) * r_Earth)
#> [1] 11117.8
Find the Euclidean cross track distance
(d_xt <- -pracma::dot(c_E, n_EB_E) * r_Earth)
#> [1] 11117.79
Path A is given by the two positions \(A_1\) and \(A_2\) (similar to the previous example).
Find the cross track intersection point \(C\) between the path A (i.e. the great circle through \(A_1\) and \(A_2\)) and the position \(B\), i.e. the shortest distance point at the surface, between the great circle and \(B\).
Given (note that \(B\) doesn’t necessarily need to lie in between \(A_1\) and \(A_2\) as per Figure above)
n_EA1_E <- lat_lon2n_E(rad(0), rad(3))
n_EA2_E <- lat_lon2n_E(rad(0),rad(10))
n_EB_E <- lat_lon2n_E(rad(-1), rad(-1))
Find the normal to the great circle between n_EA1_E and n_EA2_E:
n_EN_E <- unit(pracma::cross(n_EA1_E, n_EA2_E))
Find the intersection points (one antipodal to the other):
n_EC_E_tmp <- unit(
pracma::cross(
n_EN_E,
pracma::cross(n_EN_E, n_EB_E)
)
)
Choose the one closest to B:
n_EC_E <- sign(pracma::dot(n_EC_E_tmp, n_EB_E)) * n_EC_E_tmp
Convert to longitude/latitude
(l <- n_E2lat_lon(n_EC_E) %>% deg())
#> [1] 0 -1
(latitude <- l[1])
#> [1] 0
(longitude <- l[2])
#> [1] -1
Gade, Kenneth. 2010. “A Nonsingular Horizontal Position Representation.” The Journal of Navigation 63 (03): 395–417. https://www.navlab.net/Publications/A_Nonsingular_Horizontal_Position_Representation.pdf.