CN102242872A - Oil transportation pipeline network leakage detection method based on generalized fuzzy hyperbolic model - Google Patents

Oil transportation pipeline network leakage detection method based on generalized fuzzy hyperbolic model Download PDF

Info

Publication number
CN102242872A
CN102242872A CN2011101698271A CN201110169827A CN102242872A CN 102242872 A CN102242872 A CN 102242872A CN 2011101698271 A CN2011101698271 A CN 2011101698271A CN 201110169827 A CN201110169827 A CN 201110169827A CN 102242872 A CN102242872 A CN 102242872A
Authority
CN
China
Prior art keywords
suction wave
pipeline
leakage
formula
wave
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Granted
Application number
CN2011101698271A
Other languages
Chinese (zh)
Other versions
CN102242872B (en
Inventor
冯健
刘金海
张化光
马大中
魏向向
李健
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Northeastern University China
Original Assignee
Northeastern University China
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Northeastern University China filed Critical Northeastern University China
Priority to CN 201110169827 priority Critical patent/CN102242872B/en
Publication of CN102242872A publication Critical patent/CN102242872A/en
Application granted granted Critical
Publication of CN102242872B publication Critical patent/CN102242872B/en
Expired - Fee Related legal-status Critical Current
Anticipated expiration legal-status Critical

Links

Images

Landscapes

  • Examining Or Testing Airtightness (AREA)

Abstract

The invention provides an oil transportation pipeline network leakage detection method based on a generalized fuzzy hyperbolic model, belonging to the technical field of pipeline detection. The method comprises the following steps: 1, a negative pressure wave signal is collected and sent to a signal conditioning plate for calculating an initial position generated by the negative pressure wave; 2, the negative pressure wave source can be classified by using the generalized fuzzy hyperbolic model, and whether the generation of the negative pressure wave is caused by leakage, pressure beyond station or working condition adjustment can be judged; 3, if the negative pressure wave comes from the pressure beyond station, the previous section pipeline can be detected for leaks, and the step 1 is returned; if the negative pressure wave comes from leakage, and the step 4 is implemented; if the negative pressure wave comes from the working condition adjustment, and the step 5 is implemented; 4, a leakage alarm is provided. The invention has the following advantages: the generalized fuzzy hyperbolic model is used to distinguish the source of the negative pressure wave; valve opening, pump state, flow, temperature, pressure and density are taken as the input variables for the generalized fuzzy hyperbolic model and the input values can be used to judge if a leakage happens, thus false alarms can be avoided.

Description

Flow circuit leakage detection method based on generalized fuzzy hyperbolic model
Technical field:
The invention belongs to the pipe detection technical field, relate to a kind of flow circuit leakage detection method based on generalized fuzzy hyperbolic model.
Background technique:
Using the pipeline transport fluid is a kind of economy, means of transportation easily, compares with other means of transportation, and it has efficiently, safety, economy, be convenient to multiple advantages such as control and management, so occupies an important position in oil and other FLUID TRANSPORTATION.Petroleum pipeline is not only long, and the overlay area is also very big.Annual because pipe-line equipment is aging, the geographical conditions variation causes crude oil leakage and artificial drilling hole of oil stolen to bring massive losses for country and enterprise, and causes environmental pollution.The way that early stage pipeline adopts manual segmentation to make an inspection tour mostly although the shortcoming of this method is constantly to make an inspection tour round the clock, because pipeline is long, still can not in time be found to leak; And, carry out the Leak testtion of oil transport pipeline in the mode of artificial enquiry, also expended great amount of manpower and material resources and financial resource.
In recent decades, the development of pipeline industry is very fast, and it is particularly important that the research topic of pipe monitoring aspect seems, and the major issue of pipe monitoring is the Leak testtion and the location of system.It is early stage that pipeline industry develops, and leakage detection method biases toward hardware approach, as detecting ball method, pipe section pressure test method etc. in magnaflux, the pipe.According to the Leak testtion principle, the method that is used for Leak testtion at present can be divided into direct Detection Method and indirect detection method: direct Detection Method promptly detects according to the medium that leaks, and face of land vestige that is spilt during for example according to oil and gas leakage and the smell that distributes etc. detect; The indirect detection rule is that the variation of the relevant parameter of the line transportation medium that causes according to leakage is inferred.Existing in the world detection and localization method are divided into hardware based method and substantially based on the method two big classes of software.Hardware based method is meant leakage is directly detected, as direct observational method, leak detection cables method, radioactive-tracer method, light leak detecting etc.Be meant based on the method for software and utilize modern control theory, signal processing and computer technology etc. that the influence (as pressure, flow etc.) that causes because of leakage is gathered, handled and estimates, leakage is detected and locatees.
Summary of the invention
At the deficiencies in the prior art, the invention provides a kind of flow circuit leakage detection method based on generalized fuzzy hyperbolic model.
The hardware system that the present invention relied on is the SCADA system, the SCADA system comprises DSP unit, A/D module, electrical level transferring chip, signal regulating panel and upper-position unit, and wherein the DSP unit comprises dsp chip, power circuit, reset circuit, clock circuit, jtag interface and memory interface;
Power circuit connects dsp chip, is chip power supply; Reset circuit, clock circuit, memory interface, jtag interface are connected with dsp chip respectively; The serial peripheral interface of DSP connects A/D module output terminal; The A/D module input connects the signal regulating panel output terminal; The signal regulating panel input end connects the data acquisition module output terminal; The serial communication interface of DSP connects level switch module; Level switch module connects upper-position unit.
A kind of flow circuit leakage detection method of the present invention based on generalized fuzzy hyperbolic model, as follows:
Step 1, the pressure transducer that is installed in the data acquisition unit at segment pipe two ends in the pipe network pick up negative pressure wave signal, pass to signal regulating panel, and the time difference that arrives two ends according to suction wave is calculated the initial position that suction wave produces;
The time difference that arrives the single conduit two ends according to suction wave is calculated the initial position that suction wave produces;
X = L - α ( t 2 - t 1 ) 2 - - - ( 1 )
The distance of X-oil transport pipeline leakage point head end in the formula, m;
L-oil transport pipeline length, m;
The velocity of propagation of α-suction wave in oil transport pipeline, m/s;
t 1-suction wave arrives head end time, s;
t 2-suction wave arrives terminal time, s;
Exist diesel oil, gasoline to mix defeated situation in the pipeline, the speed of velocity of wave this moment in two kinds of liquid is different, calculates the initial position formula that suction wave produces when detecting suction wave in this case and existing and is converted to:
X = ( t 1 - t 2 - S α 1 ) α 2 + S + L 2 - - - ( 2 )
T in the formula 1-suction wave arrives head end time, s;
t 2-suction wave arrives terminal time, s;
Gasoline length in the S-oil transport pipeline, m;
α 1-suction wave is velocity of propagation in gasoline, m;
α 2-suction wave is velocity of propagation in diesel oil, m;
L-oil transport pipeline length, m;
X-oil transport pipeline leakage point is apart from the distance of head end, m;
Suction wave is to go up pressure overreach or the operating mode adjustment that certain point leaks, other pipeline sections leak generation by this section to produce on step 2, a certain pipeline section, utilize generalized fuzzy hyperbolic model to be classified in the suction wave source, the generation of judging suction wave is because leakage, pressure overreach or operating mode adjustment;
It is as follows that generalized fuzzy hyperbolic model is carried out assorting process to suction wave source:
1), the model output value is 1 o'clock, representative is leaked and is taken place, suction wave derives from leakage;
2), the model output value is 0.5 o'clock, represents suction wave to derive from the pressure overreach;
3), the model output value is 0 o'clock, represents suction wave to derive from the operating mode adjustment.
The form of generalized fuzzy hyperbolic model l bar fuzzy rule is:
R l : IF ( x 1 - d 11 ) is F x 11 and ( x 1 - d 12 ) is F x 12 and . . . and ( x 1 - d 1 w 1 ) is F x 1 w 1 and
( x 2 - d 21 ) is F x 21 and ( x 2 - d 22 ) if F x 22 and . . . and ( x 2 - d 2 w 2 ) is F x 2 w 2 and . . .
and ( x n - d n 1 ) is F x n 1 and ( x n - d n 2 ) is F x n 2 and . . . and ( x n - d nw n ) is F x n w n
THEN y l = c F 11 + c F 12 + . . . c F 1 w 1 + c F 21 + c F 22 + . . . c F 2 w 2 + . . .
+ c F n 1 + c F n 2 + . . . c F n w n - - - ( 3 )
In the formula, w iFor with x iThe number of linear transformation, i=1 ..., n; d IjBe x iThe linear transformation point, i=1 ..., n; J=1 ... w i
Figure BDA0000070256420000036
For with
Figure BDA0000070256420000037
Corresponding fuzzy subset comprises two language values of positive P and negative N, when
Figure BDA0000070256420000038
During for positive P,
Figure BDA0000070256420000039
For
Figure BDA00000702564200000310
When
Figure BDA00000702564200000311
During for negative N,
Figure BDA00000702564200000312
For
Figure BDA00000702564200000314
Be with
Figure BDA00000702564200000315
Corresponding output constant, among the IF among input variable and the THEN output constant item all be optionally, but output item
Figure BDA00000702564200000316
With input variable be one to one, if promptly partly comprise at IF
Figure BDA00000702564200000317
Then should comprise in the THEN part
Figure BDA00000702564200000318
; On the contrary, if IF part do not comprise Then do not comprise in the THEN part yet
Figure BDA00000702564200000320
;
Given one group of broad sense hyperbolic tangential type fuzzy rule base, definition broad sense input variable
x i=x z-d zj (4)
d ZjBe x zThe linear transformation point, j=1 ..., w zIf W in the formula zFor with x zThe number of linear transformation, z=1 wherein ..., n gets the fuzzy set of broad sense input variable correspondence
Figure BDA00000702564200000322
With
Figure BDA00000702564200000323
Membership function be
Figure BDA00000702564200000324
With
Figure BDA00000702564200000325
μ P x i ( x i ) = e - 1 2 ( x i - k x i ) 2 μ N x i ( x i ) = e - 1 2 ( x i + k x i ) 2 - - - ( 5 )
In the formula, Be constant, will
Figure BDA00000702564200000328
Be abbreviated as
Figure BDA00000702564200000329
Figure BDA00000702564200000330
Be abbreviated as
Figure BDA00000702564200000331
Be abbreviated as k i, draw as generalized fuzzy hyperbolic model according to the fuzzy rule base:
f ( x ) = Σ i = 1 m c P i e k i x i + c N i e - k i x i e k i x i + e - k i x i - - - ( 6 )
In the formula, Be the regular number that adds up to,
Figure BDA00000702564200000334
Be with
Figure BDA00000702564200000335
Corresponding output constant,
Figure BDA00000702564200000336
With Corresponding output constant;
x 1, Λ, x nBe the data that collection from pipeline comes, the change amount of the state of pressure, flow, temperature, valve opening, pump etc., f (x) is model output, judges suction wave source in the pipe network according to f (x);
Step 3, if suction wave derive from the pressure overreach, then detect on pipeline the last period and whether leak, get back to step 1; If suction wave derives from and leaks then execution in step 4; If suction wave derives from operating mode and adjusts then execution in step 5;
Step 4, provide leakage alarms;
Step 5, end.
Working principle of the present invention: leak the suction wave that produces because pressure overreach that other pipeline sections leakages produce and station internal pressure-regulating can produce to be similar to, and also the initial position of suction wave is located and the pipeline end points according to formula (1) or (2).So when detecting suction wave in a certain single hop pipeline in the pipe network and the suction wave initial position is positioned pipeline end points (promptly in the station), can not judge that the internal leakage that takes place to stand, the internal pressure-regulating of standing still are suction wave pressure overreach, this moment is in conjunction with generalized fuzzy hyperbolic model, detect suc as formula (3), (4), (5), (6), classified in the suction wave source.This testing process can effectively reduce the probability of false alarm, the warning degree of accuracy that improves system.
Advantage of the present invention: adopt generalized fuzzy hyperbolic model to distinguish the source of suction wave.With valve opening, the state of pump, flow, temperature, pressure, density is as the input variable of generalized fuzzy hyperbolic model, and judges whether to leak by output value, prevents false alarm.
Description of drawings
Fig. 1 is a pipe network structure simplified schematic diagram of the present invention;
Fig. 2 is that gasoline of the present invention, diesel oil mix defeated schematic representation;
Fig. 3 is the present invention's detected suction wave waveform of pipe ends when leaking;
Fig. 4 is the flow chart that detects the suction wave source in the pipe network of the present invention;
Fig. 5 is a hardware circuit diagram of the present invention;
Fig. 6 is AD of the present invention and TMS320F2812 communication interface catenation principle figure;
Embodiment
The present invention is described in detail with Figure of description in conjunction with specific embodiments.
To choose model be AD7656 to the A/D module in the present embodiment; It is TMS320F2812 that dsp chip is chosen model; It is MAX232 that electrical level transferring chip is chosen model.
The support of the inventive method system is the SCADA system, the SCADA system comprises DSP unit, A/D module, electrical level transferring chip, signal regulating panel and upper-position unit, and wherein the DSP unit comprises dsp chip, power circuit, reset circuit, clock circuit, jtag interface, memory interface.The signal that inserts signal regulating panel is a voltage signal, be to comprise valve opening, the state of pump, pipeline flow, mean temperature, pressure, field datas such as density, the process signal regulating panel amplifies, filtering, inputs to AD7656, and the AD chip carries out analog-to-digital conversion, and digital quantity passed to TMS320F2812, DSP utilizes its powerful data-handling capacity, and data are compressed and a digital filtering, and the SCI serial communication interface that utilizes DSP at last will be handled the back data by electrical level transferring chip MAX232 and pass to PC.Wherein AD communicates by letter with DSP and adopts the spi bus agreement.This system's lower-position unit circuit block diagram as shown in Figure 5.
The spi bus interface scheme: the SPI interface is made up of 4 signaling lines: serial data input (the SPISOMIA pin of DSP), serial data output (the SPISIMOA pin of DSP), SCK (the SPICLKA pin of DSP), SS (the SPISTEA pin of DSP).Main equipment is by providing shift clock and coming control data to flow from enable signal.From enable signal is an optional control interface signal, if do not have special in enable signal, can by whether existing effective shift clock to decide, must always keep enabled state from equipment this moment, and have only one from equipment, block diagram is as shown in Figure 6.
The present invention is a kind of flow circuit leakage detection method based on generalized fuzzy hyperbolic model, can effectively prevent the generation of false alarm.Its step is as follows:
Step 1, the pressure transducer that is installed in the data acquisition unit at segment pipe two ends in the pipe network pick up negative pressure wave signal, pass to signal regulating panel, and upper-position unit calculates the initial position that suction wave produces according to the time difference that suction wave arrives two ends;
When pipeline takes place to leak, will produce transient pressure in leak and fall, form a suction wave, this ripple is propagated to the pipeline upper and lower end with the velocity of wave in the pipeline, and is received by the pressure transducer that is arranged on two sections of pipeline sections.Propagate into the time difference of upstream and downstream and the position that pipe internal pressure velocity of wave propagation just can calculate leakage point according to suction wave.Line construction complicated in the pipe network is different from single conduit, and its Leak testtion and location be many than the one-pipe complexity also, however, still can adopt negative pressure wave method that the pipeline network leak point is monitored and located.In pipe network, (convergence point is two sections a tie point in the pipeline to the pressure wave that leak to produce by the pipeline convergence point, as B, D, E point) time can pass to next pipeline section (or following several pipeline sections), there is pressure overreach phenomenon, therefore one section generation is leaked and is just had the existence that multistage can detect suction wave, and the pipeline section that so takes place to leak just might be given the warning message that makes mistake.
With Fig. 1 is example, supposes that a point leaks, and notes the time t that suction wave arrives B, D two stations B, t D, just can carry out leakage positioning and calculate, suc as formula (7)
X = L - α ( t D - t B ) 2 - - - ( 7 )
X-oil transport pipeline leakage point is to the distance of B end, m in the formula;
L-oil transport pipeline length, m;
The velocity of propagation of α-suction wave in oil transport pipeline, m/s;
t B-suction wave arrives B end time, s;
t D-suction wave arrives D end time, s.
Velocity of wave α is prerequisite with the constant in the formula (7).Velocity of wave is relevant with specific heat, density, pressure and the pipe material of media, and the oil density that normal temperature is carried changes little along pipeline, and velocity of wave can be regarded as constant.Because the line transportation distance, temperature variation is big, and the transmission speed of pressure wave might not be a constant.Consider factors such as density of liquid, elasticity and pipe material character, the suction wave velocity of propagation is revised.The negative pressure velocity of wave propagation can be calculated by following formula:
α = k / ρ 1 + kD Ee c 1 - - - ( 8 )
K-liquid volume elasticity coefficient in the formula, m/s;
ρ-fluid density, kg/m 3
E-tubing Young's modulus, Pa;
The D-caliber, m;
The e-pipe thickness, m;
c 1-pipeline constraint factor.
Exist gasoline, diesel oil to mix defeated situation in the reality, promptly in the pipeline preceding half section be that the diesel oil second half section is a gasoline, perhaps opposite.Because two kinds of oil densities are different, velocity of wave α just can not be considered as constant more so.Gasoline, diesel oil mix defeated simplified schematic diagram as shown in Figure 2 in the single hop pipeline, and at this moment, leakage point location Calculation formula is converted to:
X = ( t 1 - t 2 - S α 1 ) α 2 + S + L 2 - - - ( 9 )
T in the formula 1-suction wave arrives B station time, s;
t 2-suction wave arrives D station time, s;
Gasoline length in the S-oil transport pipeline, m;
α 1-suction wave is velocity of propagation in gasoline, m;
α 2-suction wave is velocity of propagation in diesel oil, m;
L-oil transport pipeline length, m;
X-oil transport pipeline leakage point is apart from the distance of head end B, m;
Figure 3 shows that two detected suction wave waveforms in station when leaking, can try to achieve the leakage point position by the pairing time difference of two suction wave trailing edges and by formula (7), (8) or (9).
Step 2, utilize generalized fuzzy hyperbolic model that suction wave is classified.
Leak at certain some a place on BD section among Fig. 1, and suction wave propagates into the time difference that B, D order and manages the position that the internal pressure velocity of wave propagation just can calculate leakage point.Because whole pipe is communicated with, and has pressure overreach phenomenon, suction wave can pass in other pipeline sections (as DE, BC, EF).Propagate into time difference and the formula (7), (8) or (9) of two stations between the DE according to suction wave and can locate " leakage point " at the D point; In like manner propagate into two time differences of station between the BC and can locate " leakage point " at the B point according to suction wave, but this moment be not because D point and the caused suction wave of B point leakage, so just false alarm might appear.
Operating mode is very complicated in the actual pipe network, the reason that causes the pressure parameter fluctuation is diversified, the change of the change of the adjustment of the adjustment of valve opening, pump state, the change of flow, temperature, pipeline pressurization, density etc. all can make suction wave change, and suction wave is propagated in pipeline and is also had loss, and the pressure surge of transferring pump, transferring valve, termination of pumping to cause is similar with the pressure surge that leakage causes, therefore need make a distinction leaking, prevent the generation of reporting by mistake, failing to report and leakage point is accurately located with complicated, normal operating mode adjustment.
Adopt generalized fuzzy hyperbolic model to differentiate to above two kinds of situations, distinguish with leakage.The form of generalized fuzzy hyperbolic model l bar fuzzy rule is:
R l : IF ( x 1 - d 11 ) is F x 11 and ( x 1 - d 12 ) is F x 12 and . . . and ( x 1 - d 1 w 1 ) is F x 1 w 1 and
( x 2 - d 21 ) is F x 21 and ( x 2 - d 22 ) if F x 22 and . . . and ( x 2 - d 2 w 2 ) is F x 2 w 2 and . . .
and ( x n - d n 1 ) is F x n 1 and ( x n - d n 2 ) is F x n 2 and . . . and ( x n - d nw n ) is F x n w n
THEN y l = c F 11 + c F 12 + . . . c F 1 w 1 + c F 21 + c F 22 + . . . c F 2 w 2 + . . .
+ c F n 1 + c F n 2 + . . . c F n w n - - - ( 10 )
In the formula, w i(i=1 ..., be n) with x iThe number of linear transformation; d Ij(i=1 ..., n; J=1 ... w i) be x iThe linear transformation point;
Figure BDA0000070256420000076
For with
Figure BDA0000070256420000077
Corresponding fuzzy subset is just comprising (P) and negative (N) two language values, when
Figure BDA0000070256420000078
During for just (P),
Figure BDA0000070256420000079
For
Figure BDA00000702564200000710
When
Figure BDA00000702564200000711
During for negative (N),
Figure BDA00000702564200000712
For
Figure BDA00000702564200000713
Figure BDA00000702564200000714
Be with
Figure BDA00000702564200000715
Corresponding output constant.Among the IF among input variable and the THEN output constant item all be optionally, but output item
Figure BDA00000702564200000716
With input variable be one to one, if promptly partly comprise at IF
Figure BDA00000702564200000717
Then should comprise in the THEN part ; On the contrary, if IF part do not comprise
Figure BDA00000702564200000719
Then do not comprise in the THEN part yet
Figure BDA00000702564200000720
.
If given one group of broad sense hyperbolic tangential type fuzzy rule base at first defines the broad sense input variable
x i=x z-d zj (11)
d Zj(j=1 ..., w z) be x zThe linear transformation point; If
Figure BDA00000702564200000721
W in the formula z(z=1 ..., be n) with x zThe number of linear transformation.Get the fuzzy set of broad sense input variable correspondence
Figure BDA00000702564200000722
With Membership function be
Figure BDA00000702564200000724
With
Figure BDA00000702564200000725
μ P x i ( x i ) = e - 1 2 ( x i - k x i ) 2 μ N x i ( x i ) = e - 1 2 ( x i + k x i ) 2 - - - ( 12 )
In the formula,
Figure BDA00000702564200000727
Be constant.Will
Figure BDA00000702564200000728
Be abbreviated as Be abbreviated as
Figure BDA00000702564200000731
Figure BDA00000702564200000732
Be abbreviated as k i, draw as generalized fuzzy hyperbolic model according to the fuzzy rule base:
f ( x ) = Σ i = 1 m c P i e k i x i + c N i e - k i x i e k i x i + e - k i x i - - - ( 13 )
In the formula,
Figure BDA0000070256420000082
Be the regular number that adds up to,
Figure BDA0000070256420000083
Be with Corresponding output constant, With
Figure BDA0000070256420000086
Corresponding output constant.
With pipe network structure shown in Figure 1 is example, as for the DE section, establishes x 1Be D station valve opening change amount, x 2Be E station valve opening change amount, x 3Be the state change amount of D station pump, x 4Be the state change amount of E station pump, x 5Be DE section mean flowrate change amount, x 6Be DE section mean temperature change amount; x 7Be DE section hydrodynamic pressure change amount, x 8Be DE section average fluid density change amount.Output y is a DE segment pipe operation conditions, and y represented to have to leak to take place in 1 o'clock, represented not leak generation during y=0.Every section has 8 input variables, an output variable.Can obtain following broad sense hyperbolic tangential type fuzzy rule base according to formula (10):
R 1 : IF x 1 - d 11 is P x 11 and x 1 - d 12 is P x 12 and
x 2 - d 21 is P x 21 and x 2 - d 22 is P x 22 and
. . .
x 8 - d 81 is P x 81 and x 2 - d 82 is P x 82
THEN y 1 = c P 11 + c P 12 + c P 21 + c P 22 . . . . . . + c P 81 + c P 82
R 2 : IF x 1 - d 11 is N x 11 and x 1 - d 12 is P x 12 and
x 2 - d 21 is P x 21 and x 2 - d 22 is P x 22 and
. . .
x 8 - d 81 is P x 81 and x 2 - d 82 is P x 82
THEN y 2 = c N 11 + c P 12 + c P 21 + c P 22 . . . . . . + c P 81 + c P 82
. . .
. . .
R 2 16 : IF x 1 - d 11 is N x 11 and x 1 - d 12 is N x 12 and
x 2 - d 21 is N x 21 and x 2 - d 22 is N x 22 and
. . .
x 8 - d 81 is N x 81 and x 2 - d 82 is N x 82
THEN y 2 16 = c N 11 + c N 12 + c N 21 + c N 22 . . . . . . + c N 81 + c N 82 - - - ( 14 )
Get
Figure BDA0000070256420000091
With
Figure BDA0000070256420000092
(m=1,2......, 8; N=1,2) membership function is
μ P m n ( x mn ) = e - 1 2 ( x m - k mn ) 2 μ P m n ( x mn ) = e - 1 2 ( x m + k mn ) 2 - - - ( 15 )
D in the formula (14) Ij(i=1,2......, 8; J=1,2) get suitable value,
Figure BDA0000070256420000094
With
Figure BDA0000070256420000095
(i=1,2 ... 8; J=1,2) value rule of thumb,
Constant k in the formula (15) MnGet appropriate value, can obtain output value y as the formula (16).
Size according to output value y is judged leakage, pressure overreach or operating mode adjustment.
Step 3, for the suction wave that is positioned at the pipeline end points, if generalized fuzzy hyperbolic model output is 1, then expression is leaked and is occurred in end points; If model is output as 0, then represent the operating mode adjustment; If model is output as 0.5, illustrate that then suction wave derives from the pressure overreach, then detect on pipeline the last period whether to leak, get back to step 1; If pump and valve etc. carried out adjustment, then suction wave derives from the operating mode adjustment, forwards step 5 to.
Step 4, provide leakage alarms.
Step 5, end.
The implementation of the inventive method is as follows:
When a point leaked among Fig. 1, A, C, E, F, G point all may detect the suction wave trailing edge, owing to have loss in the suction wave propagation process, therefore far away more apart from the leakage point distance, the suction wave loss is just big more.Suppose that A point, C point, E point, F point, G point have all detected the existence of trailing edge.Detecting trailing edge with the G point now is example, detect the time difference t of suction wave by E, G two ends, and follow according to formula (7) (8) and leakage point can be navigated to near the E point, this moment is in conjunction with generalized fuzzy hyperbolic model, each state of EG pipeline section as input variable, is judged that according to the model output variable it is that this section leakage, operating mode adjustment or other pipeline sections leak the pressure wave overreach that causes on earth that suction wave produces.When detecting is this section leakage, then provides warning message; When detecting, then be failure to actuate to the operating mode adjustment; If detect to the front pipeline section leaks the pressure overreach that causes, whether the pipeline section that rejudges E point front that then uses the same method leaks, up to finding leakage point.This example should be the pressure overreach according to the output judged result.Flow chart as shown in Figure 4.

Claims (2)

1. the flow circuit leakage detection method based on generalized fuzzy hyperbolic model is characterized in that, as follows:
Step 1, the pressure transducer that is installed in the data acquisition unit at segment pipe two ends in the pipe network pick up negative pressure wave signal, pass to signal regulating panel, and the time difference that arrives two ends according to suction wave is calculated the initial position that suction wave produces;
The time difference that arrives the single conduit two ends according to suction wave is calculated the initial position that suction wave produces; Formula is as follows,
X = L - α ( t 2 - t 1 ) 2 - - - ( 1 )
The distance of X-oil transport pipeline leakage point head end in the formula, m;
L-oil transport pipeline length, m;
The velocity of propagation of α-suction wave in oil transport pipeline, m/s;
t 1-suction wave arrives head end time, s;
t 2-suction wave arrives terminal time, s;
Exist diesel oil, gasoline to mix defeated situation in the pipeline, the speed of velocity of wave this moment in two kinds of liquid is different, calculates the initial position formula that suction wave produces when detecting suction wave in this case and existing and is converted to:
X = ( t 1 - t 2 - S α 1 ) α 2 + S + L 2 - - - ( 2 )
T in the formula 1-suction wave arrives head end time, s;
t 2-suction wave arrives terminal time, s;
Gasoline length in the S-oil transport pipeline, m;
α 1-suction wave is velocity of propagation in gasoline, m;
α 2-suction wave is velocity of propagation in diesel oil, m;
L-oil transport pipeline length, m;
X-oil transport pipeline leakage point is apart from the distance of head end, m;
Suction wave is to go up pressure overreach or the operating mode adjustment that certain point leaks, other pipeline sections leak generation by this section to produce on step 2, a certain pipeline section, utilize generalized fuzzy hyperbolic model to be classified in the suction wave source, the generation of judging suction wave is because leakage, pressure overreach or operating mode adjustment;
Step 3, if suction wave derive from the pressure overreach, then detect on pipeline the last period and whether leak, get back to step 1; If suction wave derives from and leaks then execution in step 4; If suction wave derives from operating mode and adjusts then execution in step 5;
Step 4, provide leakage alarms;
Step 5, end.
2. the flow circuit leakage detection method based on generalized fuzzy hyperbolic model according to claim 1 is characterized in that: it is as follows to utilize generalized fuzzy hyperbolic model that sorting technique is carried out in suction wave source in the described step 2:
1), the model output value is 1 o'clock, representative is leaked and is taken place, suction wave derives from leakage;
2), the model output value is 0.5 o'clock, represents suction wave to derive from the pressure overreach;
3), the model output value is 0 o'clock, represents suction wave to derive from the operating mode adjustment;
The form of generalized fuzzy hyperbolic model l bar fuzzy rule is:
R l : IF ( x 1 - d 11 ) is F x 11 and ( x 1 - d 12 ) is F x 12 and . . . and ( x 1 - d 1 w 1 ) is F x 1 w 1 and
( x 2 - d 21 ) is F x 21 and ( x 2 - d 22 ) if F x 22 and . . . and ( x 2 - d 2 w 2 ) is F x 2 w 2 and . . .
and ( x n - d n 1 ) is F x n 1 and ( x n - d n 2 ) is F x n 2 and . . . and ( x n - d nw n ) is F x n w n
THEN y l = c F 11 + c F 12 + . . . c F 1 w 1 + c F 21 + c F 22 + . . . c F 2 w 2 + . . .
+ c F n 1 + c F n 2 + . . . c F n w n - - - ( 3 )
In the formula, w iFor with x iThe number of linear transformation, i=1 ..., n; d IjBe x iThe linear transformation point, i=1 ..., n; J=1 ... w i
Figure FDA0000070256410000026
For with
Figure FDA0000070256410000027
Corresponding fuzzy subset comprises two language values of positive P and negative N, when
Figure FDA0000070256410000028
During for positive P,
Figure FDA0000070256410000029
For
Figure FDA00000702564100000210
When During for negative N,
Figure FDA00000702564100000212
For
Figure FDA00000702564100000213
Figure FDA00000702564100000214
Be with
Figure FDA00000702564100000215
Corresponding output constant, among the IF among input variable and the THEN output constant item all be optionally, but output item With input variable be one to one, if promptly partly comprise at IF
Figure FDA00000702564100000217
Then should comprise in the THEN part
Figure FDA00000702564100000218
; On the contrary, if IF part do not comprise
Figure FDA00000702564100000219
Then do not comprise in the THEN part yet
Figure FDA00000702564100000220
;
Given one group of broad sense hyperbolic tangential type fuzzy rule base, definition broad sense input variable
x i=x z-d zj (4)
d ZjBe x zThe linear transformation point, j=1 ..., w zIf
Figure FDA00000702564100000221
W in the formula zFor with x zThe number of linear transformation, z=1 wherein ... .., n gets the fuzzy set of broad sense input variable correspondence
Figure FDA00000702564100000222
With
Figure FDA00000702564100000223
Membership function be
Figure FDA00000702564100000224
With
Figure FDA00000702564100000225
μ P x i ( x i ) = e - 1 2 ( x i - k x i ) 2 μ N x i ( x i ) = e - 1 2 ( x i + k x i ) 2 - - - ( 5 )
In the formula,
Figure FDA0000070256410000031
Be constant, will
Figure FDA0000070256410000032
Be abbreviated as
Figure FDA0000070256410000033
Figure FDA0000070256410000034
Be abbreviated as
Figure FDA0000070256410000035
Figure FDA0000070256410000036
Be abbreviated as k i, draw as generalized fuzzy hyperbolic model according to the fuzzy rule base:
f ( x ) = Σ i = 1 m c P i e k i x i + c N i e - k i x i e k i x i + e - k i x i - - - ( 6 )
In the formula,
Figure FDA0000070256410000038
Be the regular number that adds up to,
Figure FDA0000070256410000039
Be with Corresponding output constant,
Figure FDA00000702564100000311
With
Figure FDA00000702564100000312
Corresponding output constant;
x 1, Λ, x nBe the data that collection from pipeline comes, the change amount of the state of pressure, flow, temperature, valve opening, pump etc., f (x) is model output, judges suction wave source in the pipe network according to f (x).
CN 201110169827 2011-06-22 2011-06-22 Oil transportation pipeline network leakage detection method based on generalized fuzzy hyperbolic model Expired - Fee Related CN102242872B (en)

Priority Applications (1)

Application Number Priority Date Filing Date Title
CN 201110169827 CN102242872B (en) 2011-06-22 2011-06-22 Oil transportation pipeline network leakage detection method based on generalized fuzzy hyperbolic model

Applications Claiming Priority (1)

Application Number Priority Date Filing Date Title
CN 201110169827 CN102242872B (en) 2011-06-22 2011-06-22 Oil transportation pipeline network leakage detection method based on generalized fuzzy hyperbolic model

Publications (2)

Publication Number Publication Date
CN102242872A true CN102242872A (en) 2011-11-16
CN102242872B CN102242872B (en) 2013-01-30

Family

ID=44961057

Family Applications (1)

Application Number Title Priority Date Filing Date
CN 201110169827 Expired - Fee Related CN102242872B (en) 2011-06-22 2011-06-22 Oil transportation pipeline network leakage detection method based on generalized fuzzy hyperbolic model

Country Status (1)

Country Link
CN (1) CN102242872B (en)

Cited By (7)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN102537670A (en) * 2012-03-05 2012-07-04 北京化工大学 Pipeline leakage diagnosis method
CN103322416A (en) * 2013-06-24 2013-09-25 东北大学 Pipeline weak leakage detecting device and detecting method based on fuzzy hyperbolic chaos model
CN103994333A (en) * 2014-05-09 2014-08-20 东北大学 Oil gas pipe network leak detection method based on two-dimensional information fusion
CN104329569A (en) * 2014-08-29 2015-02-04 中国石油大学(北京) Method and device for diagnosing pipeline leakage based on state coupling analysis of pump unit
CN108019622A (en) * 2018-02-05 2018-05-11 吉林大学 A kind of computational methods of the pipeline leakage positioning based on pressure differential
CN110196144A (en) * 2019-06-13 2019-09-03 中国海洋石油集团有限公司 Deep water umbilical cables based on virtual instrument leak characteristic intelligent monitor system
CN113639209A (en) * 2020-05-11 2021-11-12 中国石油天然气股份有限公司 Intermittent oil pipeline detection system and method

Citations (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US3851521A (en) * 1973-01-19 1974-12-03 M & J Valve Co System and method for locating breaks in liquid pipelines
JP2560978B2 (en) * 1992-10-16 1996-12-04 日本鋼管株式会社 Pipeline monitoring method and its monitoring device
CN101196872A (en) * 2007-11-19 2008-06-11 清华大学 Leakage detecting and locating method based on pressure and sound wave information amalgamation
CN101968162A (en) * 2010-09-30 2011-02-09 东北大学 Pipeline leakage positioning system and method based on collaborative detection with negative pressure wave and sound wave

Patent Citations (4)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
US3851521A (en) * 1973-01-19 1974-12-03 M & J Valve Co System and method for locating breaks in liquid pipelines
JP2560978B2 (en) * 1992-10-16 1996-12-04 日本鋼管株式会社 Pipeline monitoring method and its monitoring device
CN101196872A (en) * 2007-11-19 2008-06-11 清华大学 Leakage detecting and locating method based on pressure and sound wave information amalgamation
CN101968162A (en) * 2010-09-30 2011-02-09 东北大学 Pipeline leakage positioning system and method based on collaborative detection with negative pressure wave and sound wave

Non-Patent Citations (3)

* Cited by examiner, † Cited by third party
Title
冯健等: "管道泄漏计算机在线检测系统及其算法实现", 《控制与决策》, vol. 19, no. 4, 30 April 2004 (2004-04-30), pages 377 - 382 *
刘金海等: "基于模糊分类的流体管道泄漏故障智能检测方法研究", 《仪器仪表学报》, vol. 32, no. 1, 15 January 2011 (2011-01-15), pages 26 - 32 *
王占山等: "长距离流体输送管道泄漏检测与定位技术的现状与展望", 《化工自动化及仪表》, vol. 30, 30 October 2003 (2003-10-30), pages 5 - 10 *

Cited By (10)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN102537670A (en) * 2012-03-05 2012-07-04 北京化工大学 Pipeline leakage diagnosis method
CN102537670B (en) * 2012-03-05 2013-05-29 北京化工大学 Pipeline leakage diagnosis method
CN103322416A (en) * 2013-06-24 2013-09-25 东北大学 Pipeline weak leakage detecting device and detecting method based on fuzzy hyperbolic chaos model
CN103994333A (en) * 2014-05-09 2014-08-20 东北大学 Oil gas pipe network leak detection method based on two-dimensional information fusion
CN103994333B (en) * 2014-05-09 2016-09-28 东北大学 A kind of oil gas pipe network leakage detection method merged based on two-dimensional signal
CN104329569A (en) * 2014-08-29 2015-02-04 中国石油大学(北京) Method and device for diagnosing pipeline leakage based on state coupling analysis of pump unit
CN108019622A (en) * 2018-02-05 2018-05-11 吉林大学 A kind of computational methods of the pipeline leakage positioning based on pressure differential
CN110196144A (en) * 2019-06-13 2019-09-03 中国海洋石油集团有限公司 Deep water umbilical cables based on virtual instrument leak characteristic intelligent monitor system
CN110196144B (en) * 2019-06-13 2021-10-01 中国海洋石油集团有限公司 Intelligent monitoring system for leakage characteristic data of deep water umbilical cable based on virtual instrument
CN113639209A (en) * 2020-05-11 2021-11-12 中国石油天然气股份有限公司 Intermittent oil pipeline detection system and method

Also Published As

Publication number Publication date
CN102242872B (en) 2013-01-30

Similar Documents

Publication Publication Date Title
CN102242872B (en) Oil transportation pipeline network leakage detection method based on generalized fuzzy hyperbolic model
CN109854953B (en) Crude oil conveying pipeline leakage detection system and method under special working condition
CN103486443B (en) A kind of oil and gas leakage detects experimental system for simulating
CN106352246B (en) Pipeline leakage detection positioning experiment system and detection method thereof
CN100552668C (en) Leakage detecting and locating method based on pressure and sound wave information fusion
CN202074237U (en) Pipeline leakage monitoring and negative pressure protecting device
CN101718396B (en) Method and device for detecting leakage of fluid conveying pipeline based on wavelet and mode identification
CN101413628A (en) Method for performing gas pipeline leakage position by using instant change on-line diagnosis coupling excitation frequency response
CN104819107A (en) Diagnostic method and system for abnormal shift of wind turbine generator power curve
CN205090197U (en) Leak detection system and monitoring facilities of pipeline
CN112377817B (en) Municipal pipe network pipe burst monitoring system and method
CN105156905A (en) Leakage monitoring system, method and device for pipeline and server
CN107906375B (en) Pipeline leakage detection method and system based on weighted permutation entropy
CN105388884A (en) Alarm system for detecting leakage fault of heat supply network based on identification algorithm driven by data and method
CN110285330A (en) A kind of water utilities net pipe burst detection method based on the local factor that peels off
CN103032626A (en) System and method for diagnosing fault of adjusting valve
CN104504274B (en) Pipeline index determining method and device
CN207162143U (en) Pipeline Leak point detects alignment system
CN102494247B (en) Gas leakage detection method based on voice frequency characteristic recognition
CN207455197U (en) Pipeline leakage detection positioning experiment system
CN114444663A (en) Water supply pipe network leakage detection and positioning method based on time convolution network
CN116608420B (en) Dynamic tracking and monitoring method and system for natural gas components
CN111317953B (en) Intelligent algorithm-based water pipe network water leakage monitoring method for fire fighting
CN1266409C (en) Leakage monitoring and positioning device and procedure for crude oil pipeline at stop status
CN113670536B (en) Power plant electricity water monitoring and informationized management method

Legal Events

Date Code Title Description
C06 Publication
PB01 Publication
C10 Entry into substantive examination
SE01 Entry into force of request for substantive examination
C14 Grant of patent or utility model
GR01 Patent grant
CF01 Termination of patent right due to non-payment of annual fee

Granted publication date: 20130130

Termination date: 20140622

EXPY Termination of patent right or utility model