PART41 » History » Version 27
COLIN, Tony, 03/20/2016 11:48 AM
1 | 3 | COLIN, Tony | h1. PART 4 : Position Estimation. |
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2 | 2 | COLIN, Tony | |
3 | 2 | COLIN, Tony | {{toc}} |
4 | 2 | COLIN, Tony | |
5 | 13 | COLIN, Tony | p(. Once the navigation bits from at least 4 satellites have been retrieved from the acquisition/tracking part, it is possible to estimate the desired position of the receiver. |
6 | 2 | COLIN, Tony | |
7 | 2 | COLIN, Tony | --- |
8 | 2 | COLIN, Tony | |
9 | 7 | COLIN, Tony | h2. 1 - Ephemeris. |
10 | 2 | COLIN, Tony | |
11 | 16 | COLIN, Tony | GPS uses a particular algorithm in order to characterise satellite position. In comparison with GLONASS, this method requires more parameters, but less complexity. |
12 | 16 | COLIN, Tony | |
13 | 14 | COLIN, Tony | h3. a - GPS satellite ephemeris data. |
14 | 9 | COLIN, Tony | |
15 | 9 | COLIN, Tony | p=. !Eph12min.png! |
16 | 27 | COLIN, Tony | *Figure 4.1 :* |
17 | 9 | COLIN, Tony | |
18 | 14 | COLIN, Tony | h3. b - GPS satellite position calculation algorithm. |
19 | 9 | COLIN, Tony | |
20 | 1 | COLIN, Tony | p=. !Alg12min.png! |
21 | 27 | COLIN, Tony | *Figure 4.1 :* |
22 | 1 | COLIN, Tony | |
23 | 18 | COLIN, Tony | These tables are extracted from GPS Interface Control Document *[2]* |
24 | 11 | COLIN, Tony | |
25 | 7 | COLIN, Tony | --- |
26 | 1 | COLIN, Tony | |
27 | 7 | COLIN, Tony | h2. 2 - Navigation computation. |
28 | 7 | COLIN, Tony | |
29 | 19 | COLIN, Tony | h3. a - Reminder about the range impairments. |
30 | 7 | COLIN, Tony | |
31 | 4 | COLIN, Tony | The following figure gives the impairments affecting the range in case of the GPS system as well as the correction process : |
32 | 4 | COLIN, Tony | |
33 | 4 | COLIN, Tony | p=. !003.PNG! |
34 | 26 | COLIN, Tony | *Figure 4.3 :* Pseudo-range measurement extracted from *[3]* |
35 | 7 | COLIN, Tony | |
36 | 7 | COLIN, Tony | h3. b - Demonstration of the Pseudo-ranges with Least Square method. |
37 | 7 | COLIN, Tony | |
38 | 7 | COLIN, Tony | Starting from the fact that can determine most of the elements within the pseudo-range measurement PR_sat(i) from the information provided by each satellite, we have the equation : |
39 | 7 | COLIN, Tony | |
40 | 7 | COLIN, Tony | p=. !Pos1.png! |
41 | 7 | COLIN, Tony | *Equation 1* |
42 | 7 | COLIN, Tony | |
43 | 7 | COLIN, Tony | or put in another way, |
44 | 7 | COLIN, Tony | |
45 | 7 | COLIN, Tony | p=. !Pos2.png! |
46 | 7 | COLIN, Tony | *Equation 2* |
47 | 7 | COLIN, Tony | |
48 | 7 | COLIN, Tony | Indeed 4 measurements are needed, providing 4 equations with 4 unknows which are the receiver coordinates and the clock bias of the receiver. As the equation is highly non-linear, it is important to proceed to a linearization such as the Taylor expansion : |
49 | 7 | COLIN, Tony | |
50 | 7 | COLIN, Tony | p=. !Pos3.png! |
51 | 7 | COLIN, Tony | *Equation 3* |
52 | 7 | COLIN, Tony | |
53 | 7 | COLIN, Tony | Hence, |
54 | 7 | COLIN, Tony | |
55 | 7 | COLIN, Tony | p=. !Pos4.png! |
56 | 7 | COLIN, Tony | *Equation 4* |
57 | 7 | COLIN, Tony | |
58 | 24 | COLIN, Tony | In practise, for a receiver located e.g. in France PR (t_0) can be described by Paris location as initialization for the algorithm. |
59 | 21 | COLIN, Tony | In vectorial form the equation becomes : |
60 | 7 | COLIN, Tony | |
61 | 7 | COLIN, Tony | p=. !Pos5.png! |
62 | 7 | COLIN, Tony | *Equation 5* |
63 | 7 | COLIN, Tony | |
64 | 7 | COLIN, Tony | which can be expressed as : |
65 | 7 | COLIN, Tony | |
66 | 7 | COLIN, Tony | p=. !Pos6.png! |
67 | 7 | COLIN, Tony | *Equation 6* |
68 | 7 | COLIN, Tony | |
69 | 7 | COLIN, Tony | with the Least Square solution : |
70 | 7 | COLIN, Tony | |
71 | 7 | COLIN, Tony | p=. !Pos7.png! |
72 | 7 | COLIN, Tony | *Equation 7* |
73 | 7 | COLIN, Tony | |
74 | 8 | COLIN, Tony | Thus, it is possible to retrieve the receiver position. |
75 | 8 | COLIN, Tony | |
76 | 8 | COLIN, Tony | _Note that all unknowns are depicted in red color._ |
77 | 5 | COLIN, Tony | |
78 | 25 | COLIN, Tony | |
79 | 25 | COLIN, Tony | h3. c - Kalman filter. |
80 | 25 | COLIN, Tony | |
81 | 25 | COLIN, Tony | Another position estimation method is Kalman filter i.e. an algorithm that uses a series of measurements observed over time, containing statistical noise and other inaccuracies, and produces estimates of unknown variables that tend to be more precise than those based on a single measurement alone. |
82 | 25 | COLIN, Tony | In this project, a single measurement will be used for "simplicity" purposes, therefore, the Least Square method is more appropriate for this issue. |
83 | 25 | COLIN, Tony | |
84 | 5 | COLIN, Tony | --- |
85 | 5 | COLIN, Tony | |
86 | 5 | COLIN, Tony | *References :* |
87 | 5 | COLIN, Tony | *[1]* K. Borre, D. M. Akos, N. Bertelsen, P. Rinder, S. H. Jensen, A software-defined GPS and GALILEO receiver |
88 | 17 | COLIN, Tony | *[2]* GPS Interface Control Document under http://www.gps.gov/technical/icwg/IS-GPS-200H.pdf |
89 | 17 | COLIN, Tony | *[3]* Position Estimation Workshop, March 2016 |