1. Field of the Invention
The present invention relates to a method and a system for selecting a plurality of base stations to position a mobile device, and more particularly, to a method and a system which utilize a plurality of artificial neural network units for selecting a plurality of base stations to be to a plurality of base station sets, so as to position a mobile device.
2. Description of the Prior Art
In the development of wireless communications and the mobile device, it has become an important issue to accurately estimate a current position of the mobile device and to correspondingly provide wireless communication services from a plurality of base stations. In the prior art, the mobile device and its neighboring base stations are utilized to generate a plurality of line-of-sight (LOS) vectors to be taken into an artificial neural network, such as a back-propagation neural network (BPNN), to position the mobile device. Please refer to
A method and a system for selecting a plurality of base stations to position a mobile device are provided, which can effectively lower the calculation complexity of the ANN and broaden practical application of the position method.
According to an aspect of the disclosure, a method for selecting a plurality of base stations to position a mobile device is provided. The method includes selecting a plurality of base station sets from the plurality of base stations, wherein each of the plurality of base station sets corresponds to a distance matrix, utilizing a first artificial neural network (ANN) unit to select a predefined number of the plurality of base station sets from the plurality of base station sets according to a plurality of distance matrixes corresponding to the plurality of base station sets; and utilizing a second ANN unit to position the mobile device according to the predefined number of the plurality of base station sets.
According to another aspect of the disclosure, a method for selecting a plurality of base stations to position a mobile device is provided. The method includes selecting a plurality of base station sets from the plurality of base stations, wherein each of the plurality of base station sets corresponds to a distance matrix, utilizing a geometric dilution of precision (GDOP) or a weighted geometric dilution of precision (WGDOP) to process a conversion calculation for a first artificial neural network (ANN) unit so as to select a predefined number of the plurality of base station sets from the plurality of base station sets according to a plurality of distance matrixes corresponding to the plurality of base station sets, and utilizing a GDOP or a WGDOP to process a conversion calculation for a second ANN unit so as to position the mobile device according to the predefined number of the plurality of base station sets.
According to further another aspect of the disclosure, a computer system is provided to include a central processing unit, a detection module coupled to the central processing unit for detecting a plurality of base stations neighboring to the computer system, and a storage device coupled to the central processing unit for storing a software and a programming code, wherein the programming code is utilized to instruct the central processing unit to process a method for selecting a plurality of base stations to position a mobile device.
These and other objectives of the present invention will no doubt become obvious to those of ordinary skill in the art after reading the following detailed description of the preferred embodiment that is illustrated in the various figures and drawings.
Please refer to
Please refer to
Please refer to
Suppose the positioning system 20 is a three dimensional space including the X-axis, the Y-axis and the Z-axis, and the three axis variables will be considered in the following process. Certainly, if the positioning system 20 is a two dimensional space including the X-axis and the Y-axis, the corresponding two axis variables will be considered for the following process instead.
First of all, it begins to define the GDOP calculation. Suppose the base station BS7 is a serving base station to provide a wireless communication service for the mobile device, and each of the base stations BS1-BS7 corresponding to the mobile device derives a relative distance ri, as shown in equation (1)
ri=√{square root over ((x−Xi)2+(y−Yi)2+(z−Zi)2)}{square root over ((x−Xi)2+(y−Yi)2+(z−Zi)2)}{square root over ((x−Xi)2+(y−Yi)2+(z−Zi)2)}+C·tb+vri (1),
wherein the coordinates (x, y, z) and (X, Y, Z) represent the position of the mobile device and the i-th base station, C represents the light speed, tb represents a time offset, and vri represents a pseudo-range measurements noise. Further, equation (1) can be linearized by taking Taylor series expansion around an approximate mobile device position ({circumflex over (x)} ŷ, {circumflex over (z)}) and correspondingly neglecting higher order terms, such that equation (2) is obtained:
Δr=ri−{circumflex over (r)}i≅ei1δx+ei2δy+ei3δz+C·tb+vri (2),
wherein (δx, δy, δz) are coordinate offsets of coordinate (x, y, z), respectively, symbols shown in equation (2) are
and {circumflex over (r)}i=√{square root over (({circumflex over (x)}−Xi)2+(ŷ−Yi)2+({circumflex over (z)}−Zi)2)}, and (ei1, ei2, ei3) with i=1, 2, . . . , n can represent the LOS vectors between the mobile device
and the base stations. Next, applying z=Hδ+v with
to have
equation (3) of the GDOP is obtained:
GDOP=√{square root over (tr(HTH)−1)} (3).
Noticeably, if a user chooses the WGDOP for replacing the GDOP to process the calculation, a weighting matrix,
can be added into equation (3), wherein σi2 represents a variance of measurement error, such that equation (4) is obtained for representing the WGDOP:
WGDOP=√{square root over (tr(HTWH)−1)} (4).
In the embodiment, n=7 (i.e. BS1-BS7), the positioning system 20 is in the three dimensional space, and the first ANN unit 200 is operated via the WGDOP calculation. Thus, the base stations BS1-BS7 are divided into different groups by C47 to have 35 base station sets, i.e. every four base stations form a base station set to have 35 base station sets in all. Each of the base station sets corresponds to a distance matrix H shown in equation (3), and each of the distance matrixes corresponds to a matrix eigenvalue λ. Then, the first ANN unit 200 is operated to process a conversion calculation via equations (5)-(10).
Accordingly, please refer to
Process 1:
Input (f1, f2, f3, f4)T, output (λ1−1, λ2−1, λ3−1, λ4−1)T;
Process 2:
Input (f1, f2, f3, f4)T, output WGDOP;
Process 3:
Input (B11, B12, B13, B14, B22, B23, B24, B33, B34, B44)T, output (λ1−1, λ2−1, λ3−1, λ4−1)T;
Process 4:
Input (B11, B12, B13, B14, B22, B23, B24, B33, B34, B44)T, output WGDOP;
Process 5:
Input (e11, e12, e13, e21, e22, e23, e31, e32, e33, e41, e42, e43, k1, k2, k3, k4)T, output (λ1−1, λ2−1, λ3−1, λ4−1)T;
Process 6:
Input (e11, e12, e13, e21, e22, e23, e31, e32, e33, e41, e42, e43, k1, k2, k3, k4)T, output WGDOP.
Therefore, the first ANN unit 200 can be operated to finish one of the six training processes according to different users' requirements, so as to obtain the trained first ANN unit 200 which has finished the conversion calculation. Accordingly, WGDOP values corresponding to the 35 base station sets are obtained. Next, the 35 WGDOP values are sequentially arranged from the small to the big in order to choose the smallest three WGDOP values and the three base station sets thereof. For example, the three base station sets can be (BS1, BS2, BS3, BS7), (BS2, BS3, BS5, BS7) and (BS1, BS3, BS6, BS7). Since the base station BS7 is the serving base station, the base station BS7 will certainly be chosen by the first ANN unit 200 and inputted into the second ANN unit 202 under the pre-selection operation. In other words, the pre-selection operation eliminates the base station BS7 from the seven base stations BS1-BS7 for simplicity, and chooses three base stations from the six base stations BS1-BS6, i.e. processing the division by C36 to have twenty base station sets. Next, the twenty base station sets with the base station BS7 are inputted into the first ANN unit 200 for the same arrangement process to choose the three smallest WGDOP values and the three base station sets thereof, such as (BS1, BS2, BS3, BS7), (BS1, BS3, BS4, BS7) and (BS2, BS3, BS4, BS7), so as to simplify the calculation complexity. As can be see, the selected base stations as well as the serving base station are combined to be the three base station sets including five different base stations. Noticeably, the embodiment demonstrates a predefined number as three hereinafter, and those skilled in the arts can arbitrarily choose other predefined number according to different requirements.
Please refer to
In addition, the first ANN unit 200 and the second ANN unit 202 include an input layer, a hidden layer and an output layer. The hidden layer further includes a plurality of hidden sub-layers and a plurality of hidden neurons, and a plurality of epochs are utilized to determine a conversion period of the first ANN unit 200 and the second ANN unit 202. Those skilled in the art can adaptively modify different conditions of the hidden layer to combine with the embodiment of the invention, so as to obtain the proper calculation result for different requirements, which is also in the scope of the invention.
The method applying to the positioning system 20 for positioning the mobile device can be derived into a positioning process 60, as shown in
Step 600: Start.
Step 602: Selecting a plurality of base station sets from the plurality of base stations, wherein each of the plurality of base station sets corresponds to a distance matrix H and each of the plurality of distance matrixes corresponds to a matrix eigenvalue.
Step 604: Processing training for the first ANN unit 200 according to the plurality of distance matrixes corresponding to the base station sets and the plurality of matrix eigenvalues thereof, so as to select the predefined number (such as three) of the base station sets from the plurality of base station sets.
Step 606: Processing training for the second ANN unit 202 according to the selected base station sets and utilizing the SCG algorithm to position the mobile device.
Step 608: End.
In the embodiment, the positioning process 60 is applied to the cellular communication system shown in
Moreover, the user can utilize the positioning process 60 with other algorithms or related hardware devices, so as to apply to a global positioning system (GPS), a wireless sensor network (WSN) or a femtocell, which is also in the scope of the invention.
Additionally, the above positioning method shown in
The positioning system 20 and the positioning process 60 of the invention utilize the trained first ANN unit 200 and the trained second ANN unit 202 to cooperate with the SCG algorithm, so as to estimate the position of the mobile device. To compare with the prior art like the BPNN, the embodiment of the invention has provided a better accurate position estimation as well as a shorter calculation period. Please refer to
Furthermore, please refer to
wherein N represents the number of epochs. As shown in
Please refer to
Besides, the positioning system 20 and the positioning process 60 of the invention are both applied to the three dimensional space including the X-axis, the Y-axis and the Z-axis for practical realization. Certainly, the user can modify the similar conception for the positioning system 20 and the positioning process 60 to be applied to the two dimensional space including such as the X-axis and the Y-axis. Under such circumstances, adjustments for the distance matrixes corresponding to the base station sets are needed to eliminate the related Z-axis parameters, such that the plurality of adjusted distance matrixes and the plurality of matrix eigenvalues are obtained, which is also in the scope of the invention.
Preferably, the embodiment of the invention simultaneously utilizes the first ANN unit 200 and the second ANN unit 202 of the positioning system 20 for positioning, and the calculation of the first ANN unit 200 and the second ANN unit 202 can also be derived into another programming code (not shown in the figure) to be combined with the programming code CP stored in the storage device 404, so as to cooperate with the software SF of the computer system 40 for positioning the mobile device. Further, the embodiment of the invention can also directly utilize the look-up table TB as well as the second ANN unit 202, so as to cooperate with the software SF of the computer system 40 for positioning the mobile device. In the storage device 404, the positioning system 20 can periodically encode the trained first ANN unit 200 and the trained second ANN unit 202, i.e. both the first ANN unit 200 and the second ANN unit 202 have finished the conversion calculation, into a conversion programming code (not shown in the figure) to periodically refresh the programming code CP in the storage device 404, so as to increase the calculation efficiency as well as range of application, which is also in the scope of the invention.
Further, the computer system 40 in the invention can be summarized as a positioning process 90, as shown in
Step 900: Start.
Step 902: The central processing unit 400 generates the control signal.
Step 904: The detection module 402 detects the available base stations neighboring to the computer system 40 according to the control signal.
Step 906: The storage device 404 initiates the programming code CP of the first ANN unit 200 and the second ANN unit 202 to be cooperated with the software SF stored in the computer system 40 according to the control signal and the neighboring base stations, so as to process the calculation of the first ANN unit 200 and the second ANN unit 202.
Step 908: The output module 406 outputs the calculation result of the second ANN unit 202 to position the mobile device.
Step 910: End.
Since details of the positioning process 90 can be referenced from the positioning system 20, the computer system 40,
Noticeably, the mentioned embodiments mainly focus on construction of two ANN units to position the mobile device. Certainly, more ANN units serially coupled to each other can also be utilized in other embodiments, and each of the ANN units can be operated to choose a predefined number of the base stations. Until the last ANN unit receives the predefined number of the base stations, the position of the mobile device can be obtained.
In summary, the embodiments provide a positioning method including double layers in a artificial neural network (ANN), wherein a first ANN unit is utilized to process a pre-selection to choose the proper base station sets from the plurality of base stations, and a second ANN unit is utilized to receive the proper base station sets to position the mobile device. Moreover, the embodiments of the invention combine multiple training processes to adaptively train the first ANN unit as well as the second ANN unit, and cooperate with the SCG algorithm for mobile device positioning. Also, the positioning method can be interpreted into a programming code to be combined with a computer system for the positioning. In comparison with the prior art, the embodiments can effectively lower the calculation complexity of the ANN units to correspondingly reduce the calculation periods as well as the conversion periods, so as to broaden the application field of the positioning method.
Those skilled in the art will readily observe that numerous modifications and alterations of the device and method may be made while retaining the teachings of the invention. Accordingly, the above disclosure should be construed as limited only by the metes and bounds of the appended claims.
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