![]() Method for measuring a moving vehicle
专利摘要:
Method for measuring a vehicle (3) traveling on a roadway (1), in particular a bridge (1 '), by means of at least one sensor (2) measuring the load deformation of the roadway (1), comprising: recording the time profile (x (t) ) of the sensor reading (x) during the passage of the vehicle (3) past the sensor (2); Repeating a minimization in which a measure (em) of the deviation of a parameterized reference function (xref, m (t)), which comprises a sum of a number (Nm) of rational functions (fm, n (t)), from the recorded history ( x (t)) is minimized by adjusting its parameters (am, n, tm, n, am, n), each using a different number (Nm) in each repetition, u.zw. until the deviation measure (£ m) falls below a threshold value (S) and then selecting the reference function (xref, m (t)) associated with this deviation measure (sp) as the selected reference function (xref, p (t)); and determining the number (Np) of rational functions (fP, n (t)) of the selected reference function (xref (P (t)) as the number of axles (C) of the vehicle (3). 公开号:AT513258A4 申请号:T50586/2012 申请日:2012-12-13 公开日:2014-03-15 发明作者: 申请人:Univ Wien; IPC主号:
专利说明:
PATENT OFFICER DIPL.-ING. Dr.techn. ANDREAS WEISER EUROPEAN PATENT AND TRADEMARK ATTORNEY A-l 130 VIENNA · KOPFGASSE 7 05419 University of Vienna A-1010 Vienna (AT) The present invention relates to a method for measuring a vehicle traveling on a roadway, in particular a bridge, with the aid of at least one sensor measuring the load deformation of the roadway. Systems for measuring moving vehicles by measuring the load deformation of the roadway are known by the term BWIM (bridge weigh in motion). The BWIM method can be used to determine the vehicle weights, axle loads, center distances, number of axles etc. of passing vehicles. Originally, strain sensors were used in bridge structures to detect early damage or fatigue on the bridge. In Moses, F., Weigh-in-Motion System Using Instrumented Bridges, ASCE, Transportation Engineering Journal, 1979, Vol. 105, No. 3, pp. 233-249, it has been proposed to also determine axle loads and vehicle weights with the aid of such bridge sensors for which vehicle speed and center distances must be known in advance. According to US Pat. No. 5,111,897, for this purpose, axle spacings and vehicle speed are determined using separate sensors which are installed in front of the bridge. Znidaric et al., Weigh-in-Motion of Axles and Vehicles for Europe (WAVE), Report of Work Package 1.2, Bridge WIM Systems, TEL.: (+43 1) 879 17 06 FAX: (+43 1) 879 17 07 EMAIL: MAIL@PATENTE.NET WEB: WWW.PATENTE.NET FIRST BANK: 038-56704 BLZ: 20111 IBAN: AT102011100003856704 BIG GIBAATWW -VAT: AT U 5383290 «2 4th Framework Program Transport, RTD Project RO-96-SC 403, Dublin, 2001, describe a BWIM vehicle survey method with a sophisticated Powell optimization algorithm, where a difference is formed from calculated and measured structural responses; This requires extensive preliminary measurements for modeling and computation-intensive optimization steps for vehicle measurement. The document WO 2012/139145 A1 discloses arrangements and data network architectures for distributed bridge sensors and a central evaluation device, wherein a camera is mounted for detecting the vehicles and their axes and dimensions on the bridge. The object of the invention is to provide a method for measuring a moving vehicle, which does not require any additional sensors beyond BWIM sensors and offers high accuracy without great preparation and computation effort. This object is achieved according to the invention with a method of the initially mentioned type, which is distinguished by: Recording the time course of the sensor reading while the vehicle is passing by the sensor; Repeating a minimization in which a measure of the deviation of a parameterized reference function comprising a sum of a number of rational functions from the recorded history is minimized by adjusting its parameters, each using a different number in each one 3 Repetition, u.zw. until the deviation measure falls below a limit value, and then selects the reference function belonging to this deviation measure as a selected reference function; and Determining the number of rational functions of the selected reference function as the number of axles of the vehicle. Using these rational functions, the load deformation of the road can be simulated very easily by adjusting a few parameters. By superimposing two or more such rational functions on a parametrized reference function, it is possible to approximate any courses of the sensor measured value which occur in reality. By minimizing different reference functions in their deviation from the recorded time course, until a suitable reference function can be selected and used to determine the axes, the method is particularly robust and provides excellent results in determining number of axes, even with simple optimization algorithms, since not every The reference functions must reproduce the recorded time history down to the last detail. Preferably, amplitude peaks in the recorded history are counted between said steps of recording and repeating, and the count value is used as the first number of rational functions. This reduces the number of repetitions of the minimization since the first reference function already starts from a realistic starting value and only a few further repetitions are necessary to approximate the time course of the sensor measured value. To further improve the accuracy of the method, it is advantageous if the minimization is repeated until at least one of the parameters is within predetermined limits. This avoids cases in which, due to unfavorable overlaps in the time course of the sensor reading, a possibly good approximation of the sensor measured value curve could lead to a wrong conclusion. More preferably, each of the reference functions has the Form £ Zn = l n = l 1 + t-tm < σ ">,") with Nm .................... Number of rational functions fm, n (t) of the mth reference function xref, m (t); and on, n, tm # n, om, n "" parameters of the n-th rational function of the m-th reference function xref, m (t). A reference function composed of rational functions of this form facilitates adjusting to the recorded time course by varying only three parameters in each rational function, the three parameters corresponding respectively to the maximum amplitude, half width, and the timing of the rational function. 5 It is particularly advantageous, if the mentioned deviations are determined according to ε * = | K0-, with x (t) recorded time history of Sen sormesswerts; and I I LI or L2 norm operator. Both standards represent a mathematically simple, standardized method for determining the deviation measures. According to an advantageous embodiment of the invention, said minimizing is effected by means of the gradient method. This optimization process requires little computation and provides robust results. Even if only the number of axes is to be determined, an early termination of an iterative minimization method is possible if the changes from one to the following iteration step fall below a predetermined limit value, whereby computational effort is saved. Preferably, the passage of a vehicle is detected when the time profile of the sensor measured value exceeds a predetermined threshold value. Thus, even without additional sensors, driving past a vehicle can be reliably detected and the method applied. According to a further advantageous embodiment of the invention, the load deformation of the roadway is measured by at least two sensors distributed across the roadway, using the sensor measurement value of that sensor which delivers the greatest amplitude. The method is thus less sensitive to the lane selected by a passing vehicle: the time profile with the more pronounced amplitude can be approximated more easily and precisely by reference functions. In addition to the number of axles, further characteristics of the vehicles can be measured by the method according to the invention. Thus, an axle load of the vehicle is preferably determined from at least one parameter of a rational function of the selected reference function. Particularly preferably, said parameter represents the maximum amplitude of this rational function. So not only the load on the road or the bridge can be determined and an overload can be detected, but also the vehicle weight and even the distribution of the cargo in the vehicle measured and reported if desired. Likewise, it is advantageous if the speed of the passing vehicle is measured and an axle spacing of the vehicle is determined in each case from at least one parameter of two rational functions of the selected reference function in conjunction with the measured speed, in particular if said parameter is the time length of the maximum amplitude of the respective rational one Function represents. This allows additional control or measurement of the vehicles by determining their center distances. 7 In a further advantageous embodiment of the invention, the determined number of axles, center distances and / or axle loads of a vehicle are compared with reference values of known types of vehicles, and the vehicle type with the largest match is determined. Such recognition of the vehicle type enables statistical evaluations as well as the application of the method in access authorizations, in some cases even for individual vehicle recognition, if these differ in the abovementioned characteristics of the axles. Furthermore, it is thus possible to detect the direction of travel of a vehicle of a specific type on the basis of the arrangement of the determined axles or to detect its loading state. The inventive method is flexible and can be used advantageously in different areas. On the one hand, the roadway may be a road, in particular a road bridge, and the vehicle may be a truck, on the other hand, it may also be used when the roadway is a track, in particular a railway bridge, and the vehicle is a train. According to a further advantageous embodiment of the invention for use on tracks, the number of axles of a train can each be determined when entering a predetermined track sector and when it leaves the track, and a lack of agreement can be reported. Thus, in addition to an axle counting and an optional supplementary load recognition, with the aid of which the load distribution can be determined, it is also possible to generate free or busy signals for track sectors on the basis of the difference between incoming and outgoing axles. Installation of additional axle sensors and evaluation devices is eliminated. The invention will be explained in more detail with reference to embodiments illustrated in the accompanying drawings. In the drawings show: 1 shows a bridge with sensor for measuring the load deformation according to the invention in a side view. Fig. 2 is a flow chart of the method of the invention for measuring a moving vehicle by means of the arrangement of Fig. 1; FIG. 3 shows an example of a time course of the measured value of the sensor of FIG. 1 during the passage of the vehicle; FIG. Figs. 4a and 4b are examples of reference functions for approximating the timing of Fig. 3; FIGS. 5a and 5b show the determination of the deviation of the reference functions of FIG. 4 from the time profile of FIG. 3; and Fig. 6 is a roadway with a plurality of sensors for measuring the load deformation according to the invention in a plan view. According to FIG. 1, a roadway 1, here a bridge 1 ', is provided with a sensor 2. On the lane 1, a vehicle 3 travels at a speed v in a direction of travel 4. The sensor 2 measures the deformation of the lane 1 by the loading of the vehicle 1 passing over it. The output of the sensor 2 is the sensor measured value x representing the load deformation an evaluation device 5 is supplied. The sensor 2 may be a train or pressure responsive sensor in the substructure of the lane 1 or bridge 1 ', e.g. a strain gauge, but it may also be determined by distance determination from a fixed location, e.g. optically, measure the load deformation of lane 1. The lane 1 may be instead of the illustrated road bridge 1 ', a road, a track or a railway bridge for a train or the like. The vehicle 3 has in the example of FIG. 1 a single front axle 6 and in the rear region a multi-axle group 7 of two rear axles 7 ', 7 ", ie an axle number C = 3. The front axle S has an exemplary axle load 1, and the both rear axles 7 ', 7 " an example shown center distance r. According to FIG. 2, in a first step 8, the time profile x (t) of the sensor measured value x over the time t during the passage of the vehicle 3 past the sensor 2 is recorded by the evaluation device 5. The recording 8 can be continuous, e.g. take place in a ring buffer memory of the evaluation device 5, or only during the passage of the vehicle 3 past the sensor 2. In order to control the recording in the latter case, e.g. the sensor measured value x are continuously monitored, the passing of a vehicle 3 being detected when a predetermined threshold value is exceeded. Alternatively, a separate detector may be mounted on the lane 1 to detect a passing vehicle 3 and initiate the recording. FIG. 3 shows an exemplary time course x {t) of the sensor measured value x over the time t, which is simultaneously proportional to the path or the position s along the vehicle 3 at a known speed v. The course x (t) {resp. x (s)) reflects the arrangement of the axes 6, 7 ', 7 " of Vehicle 3 by first a single amplitude peak 9 of the sensor measured value x at the time of occurrence ti {or Location Si) of the front axle 6 and, in the further course, two temporally short amplitude peaks 10 ', 10 " at the times t2, t3 (or locations s2, s3) of the rear axle 7 ', 7 " were recorded with each other partially overlapping rising or falling edges. In a step 11, the recorded curve x (t) is then approximated or formed by one or more reference functions Xtef, i (t), Xref, 2 (t), generally xre £, tn (t). Each of the reference functions xre £, m (t) comprises a sum of Nm pieces of rational functions fi, n (t), f2, n (t), ..., general f, n, n {t), i. (1) 11 In Equation (1), n, n, tm, n, am, n denote parameters of the n-th rational function fm, n {t) in the m-th reference function Xref, m (t) · Each of the rational functions fm, n (t) may have one of the amplitude peaks 9, 10 ', 10 " of the course x (t); the parameter am, n determines the amplitude, the parameter tm, n the time position and the parameter σ, η, η the half-width of the amplitude peak modeled by the rational function fmfn (t). Different reference functions xref, m (t) each have different numbers of rational functions fm, n (t), so that they can respectively model time courses x (t) with different numbers of amplitude peaks. Between the steps of recording 8 and approaching 11, in an optional step 8 ', the amplitude peaks 9, 10', 10 " and the count value as the starting value for the number Nm of rational functions fm, n {t}, i. are used as the first number Ni of the first reference function xref, i {t), for the following approximation 11 of the recorded curve x (t). Fig. 4a shows an example of a first reference function Xref, i (t) with Ni = 2 rational functions fl (l (t) and fil2 (t). Fig. 4b shows an example of a second reference function Xref, 2 (t) with N2 = 3 rational functions f2, i {t), f2,2 (t) and f2,3 (t). It will be appreciated that the reference functions xref, m (t) may also have other summands with optional parameters, for example, to make an offset adjustment to the curve x (t) 12 or known effects, e.g. due to unevenness of the lane 1, in the course x (t) to emulate. In step 11, a measure em is now determined for the deviation of the reference function xref, m {t) from the recorded curve x (t) In equation (2), | | a LI or L2 standard Operator; however, instead of a LI or L2 standard, any other operation known to those skilled in the art for determining deviation measures between two functions {or between a sample sequence and a function when the course x {t) is discretized). In order to approximate the time profile x (t), the parameters aM, n / tm, n, om, n of the rational functions ftn, n (t) in the reference function xref, m (t) are varied in step 11 until the degree of deviation is minimized in each case; The step 11 can therefore also be referred to as a minimization step or minimization 11 in the following. To minimize, any optimization method known in mathematics, e.g. the iterative gradient method, the downhi11 simplex method, the secant method, the Newton method, or the like are used. An iterating minimization may e.g. aborted prematurely if the change in the deviation measure 13 em from a to the next iteration falls below a predetermined minimum value. In addition, since each rational function fm, n (t) emulates an axis of the vehicle 3, the variation of the parameters at # I1, tm, n, öm, n can be limited to realistic geometries of common vehicle types. For example, the timings tmjIl of the amplitude peaks 9, 10 ', 10 " not completely arbitrary, but on the speed v and the center distances r of the vehicle 3 dependent. The result of the minimization step 11 is a reference function Xref, m (t), which approximates as closely as possible to the sensor measured value curve x (t), with its minimum deviation measure sm. FIGS. 5a and 5b show this by way of example for two different reference functions xref, i {t) and xref, 2 (t), u.zw. 5a and N2 = 3 rational functions in FIG. 5b, and their deviation measures ei and ε2 compared with the curve x (t) of FIG. 3. As deviation measure here an L2 standard was used, ie a surface difference, which is shown hatched. As can be seen, the deviation measure ε2 of the second reference function xref, 2 (t) of FIG. 5b with three rational functions f2 (1 {t), f2 / 2 (t), f2 (3 (t), which is the course of x (FIG. t) approaches three amplitude peaks 9, 10 ', 10 " smaller than the dimension Zi of Fig. 5a. In a subsequent decision 12, it is checked whether the deviation measure sm minimized in step 11 of the reference function xref (ni (t) falls below a threshold value S. If this is not true, a decision is made to branch to a step 13 in FIG where the number Nra of rational functions is changed, eg incremented, for a further reference function xref, m + i (t), whereupon the minimization step 11 with the changed reference function xref, m + i (t) is repeated. Step 11 is repeated through the loop 11-12-13 until, in decision 12, a reference function Xref, m (t) with a minimized deviation measure em below the threshold S, i. with a good approximation to the sensor measured value curve x (t). In this case, a branch is made to a step 14 in which the reference function corresponding to this deviation amount Eta functions as Xref, m (t) as " selected " Reference function xref, p (t) is used. The number Np (here: N2 * 3) of rational functions fp, n (t) can now be taken as the number of axles C of the vehicle 3 from the selected reference function xre £ iP (t) (here: x ^^ it)) represents a first result of the vehicle surveying process. In decision 12, in addition to checking the deviation measure εΆ, it is also possible to check whether at least one of the parameters on & n, tm, n, om, n lies within predefined limits, and this as an additional condition for the branch to step 14 be used. For example, it may be desired that the parameter σ, η, η determining the half-width of a rational function fm, n (t) is not too large, since e.g. It would be possible for more than just one vehicle axis to be concealed below the amplitude peak even with a good approximation of a broad amplitude peak with only one rational function fm, n (t). In addition to the number of axes C, using the selected reference function xref, p (t) can be added to each axis 6, 7 ', 7 " also the associated axle load 1 - at least approximately - can be determined by the amplitude parameter ap, n of the respective rational function fp, n (t) e.g. with known load deformations of the lane 1 from a table - possibly with additional interpolation or extrapolation - is compared. From the individual axle loads 1 of the axles 6, 7 ', 7 " Furthermore, the total weight of the vehicle 3 or its load distribution can be determined. Furthermore, the center distance r of two axes 6, 7 ', 7 " using the timing parameters tp, "of the rational functions fp, n (t) of the selected reference function Xref, P (t) are determined. For this, the speed v of the passing vehicle 3 is e.g. according to the method described below in connection with Figure 6 or another method known to those skilled in the art. Using the determined speed v and the parameter tp, n, the center distance r can then be determined according to r = v * [tP (n + i-tp, n]. The determined number of axles C, center distances r and / or axle loads 1 of a vehicle 3 can also be used to determine the Vehicle type are used by comparing them with reference values 16 of known vehicle types, while the vehicle type is determined with the largest match. Fig. 6 shows the use of a plurality of sensors 2 distributed across the lane 1. The amplitude peaks 9, 10 ', 10 " in the course x (t) of the sensor measured value x of a sensor 2, the closer the lane of the vehicle 3 passes over a sensor 2, the more markedly pronounced. In a sensor arrangement according to FIG. 6, the sensor measured value x of that sensor 2 whose time characteristic x (t) has the largest amplitude peaks 9, 10 ', 10 "is used for the method according to FIGS. 2-5. shows. When determining the axle load 1 or the total weight of the vehicle 3, e.g. Also measured values x of a second or further of the sensors 2 are used for calibration. It is also possible to provide more or fewer than four sensors 2 for each lane 15 of the lane 1, the sensors 2 also being able to be distributed asymmetrically over each lane 15. Fig. 6 also shows other sensors 16 which are offset from the sensors 2 in the direction of travel 4, 4 '. Based on a time offset of the curves x {t) of the measured values x of the sensors 2, 16, the speed v of the vehicle 3 can be determined. If the lane 1 is a track, the present method can also be used for the free or busy message of train trackers by 17 each determines the number of axles C of a train and when entering a given track and extracting the train and the track in the case of a lack of agreement, it is said to be occupied and, in the other case, to be vacant. Also, the loss of single or multiple wagons of a train can be detected and reported. The invention is not limited to the illustrated embodiments, but includes all variants and modifications that fall within the scope of the appended claims. Thus, for example, the time profile x (t) of the sensor measured value x is first rescaled to the location s using the measured velocity v, in order to use the entire method on the basis of the distance s instead of the time t. Likewise, damage or signs of fatigue on roadways and in particular bridges as a result of the weight load can be determined.
权利要求:
Claims (16) [1] 18. A method for measuring a vehicle (3) traveling on a roadway (1), in particular a bridge (1 ·), by means of at least one sensor (2) measuring the load deformation of the roadway (1), comprising: recording the time profile (x (t)) of the sensor reading (x) while the vehicle (3) is passing by the sensor (2); Repeating a minimization in which a measure (em) for the deviation of a parameterized reference function (xre £, ni (t)), which comprises a sum of a number (Nm) of rational functions, from the recorded history (x {t)) by fitting their parameters (am, n, t ", (n, am, n) is minimized, using a different number {Nm) in each repetition, u.zw. until the deviation measure (em) falls below a threshold value <S) and then selects the reference function {xref, m (t) associated with this deviation measure (sm) as a selected reference function (Xref, p (t)); and determining the number (Np) of rational functions {fp, n (t)) of the selected reference function (xref, p (t)) as the number of axles (C) of the vehicle (3). [2] A method according to claim 1, characterized in that between said steps of recording and repetition amplitude peaks {9, 10 ', 10 ") are recorded 19 history (x {t)) are counted and the count is used as the first number (Nm) of rational functions (fmrn (t)). [3] 3. The method of claim 1 or 2, characterized in that the minimization is repeated until at least one of the parameters (am, n, tm, n, om, n) is within predetermined limits. [4] 4. The method according to any one of claims 1 to 3, characterized in that each of the reference functions (xr * f, m {t)) the form it. *. a where = Σ / "(0 = Σ, ~ V J, with Nm Number of rational functions fm, n (t) of the m-th reference function xref, m {t); and aff1, n, tm, n, om, n are parameters of the n-th rational function fm, n (t) of the m-th reference function xref, m (t). [5] 5. The method according to claim 4, characterized in that said deviation measures {sm) are determined according to = 1 ^ (0 - ^, / ^ ,, / ,, ^ ,,) 1, with x (t) recorded time course of the Sen sormesswerts; and LI or L2 norm operator. 20 [6] 6. The method according to any one of claims 1 to 5, characterized in that said minimizing takes place by means of the gradient method. [7] 7. The method according to any one of claims 1 to 6, characterized in that the passing of a vehicle (3) is de-tektiert when the time course (x (t)) of the sensor measured value (x) exceeds a predetermined threshold. [8] 8. The method according to any one of claims 1 to 7, characterized in that the load deformation of the roadway (1) by at least two across the roadway (1) distributed sensors (2) is measured, wherein the sensor measured value (x) that sensor (2 ) which provides the largest amplitude (9, 10 ', 10 "). [9] 9. Method according to claim 1, wherein an axle load (1 ) of the vehicle (3) is determined. [10] A method according to claim 9, characterized in that said parameter (ap, n) represents the maximum amplitude of this rational function (fp, n (t)). [11] 11. The method according to any one of claims 1 to 10, characterized in that the speed (v) of the passing vehicle (3) measured and from each at least one parameter (tp, n + 1, tp, n) of two rational functions (fp, n (t), fp, n + i (t)) of the selected reference function (xref, P {t)) in conjunction with the measured speed (v) an axial distance (r) of the vehicle (3) is determined. [12] 12. The method according to claim 11, characterized in that said parameter (tp, n) represents the timing of the maximum amplitude of the respective rational function (fp, n {t)). [13] 13. The method according to any one of claims 1 to 12, characterized in that the determined number of axles (C), center distances (r) and / or axle loads (1) of a vehicle (3) compared with reference values of known vehicle types and the vehicle type with the largest match is determined. [14] 14. The method according to any one of claims 1 to 13, characterized in that the roadway (1) is a road, in particular road bridge (1 *) # and the vehicle (3) is a truck. [15] 15. The method according to any one of claims 1 to 13, characterized in that the roadway (1) a track, in particular railway bridge (1 '}, and the vehicle (3) is a train. [16] 16. The method according to claim 15, characterized in that when entering a predetermined track sector and when extending out of this track sector each determines the number of axles (C) of a train and a lack of agreement is reported.
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同族专利:
公开号 | 公开日 EP2932490B1|2017-02-22| CA2889777A1|2014-06-19| AT513258B1|2014-03-15| EP2932490A1|2015-10-21| WO2014089591A1|2014-06-19| US20150316426A1|2015-11-05|
引用文献:
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2018-08-15| MM01| Lapse because of not paying annual fees|Effective date: 20171213 |
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申请号 | 申请日 | 专利标题 ATA50586/2012A|AT513258B1|2012-12-13|2012-12-13|Method for measuring a moving vehicle|ATA50586/2012A| AT513258B1|2012-12-13|2012-12-13|Method for measuring a moving vehicle| CA2889777A| CA2889777A1|2012-12-13|2013-12-11|Method for measuring a moving vehicle| EP13821788.0A| EP2932490B1|2012-12-13|2013-12-11|Method for measuring a moving vehicle| US14/651,432| US20150316426A1|2012-12-13|2013-12-11|Method for Measuring a Moving Vehicle| PCT/AT2013/050243| WO2014089591A1|2012-12-13|2013-12-11|Method for measuring a moving vehicle| 相关专利
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