sewer pipe inflow and infiltration diagnosis method based on distributed fiber-optic temperature measurement system
20230408345 ยท 2023-12-21
Assignee
Inventors
Cpc classification
G01K11/32
PHYSICS
F16L2101/30
MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
F16L55/28
MECHANICAL ENGINEERING; LIGHTING; HEATING; WEAPONS; BLASTING
Y02A20/20
GENERAL TAGGING OF NEW TECHNOLOGICAL DEVELOPMENTS; GENERAL TAGGING OF CROSS-SECTIONAL TECHNOLOGIES SPANNING OVER SEVERAL SECTIONS OF THE IPC; TECHNICAL SUBJECTS COVERED BY FORMER USPC CROSS-REFERENCE ART COLLECTIONS [XRACs] AND DIGESTS
International classification
Abstract
A sewer pipe inflow and infiltration diagnosis method based on a distributed fiber-optic temperature measurement system is provided. The inflow and infiltration diagnosis method includes the following steps: S1: transmitting, by an optical time-domain reflectometer, an original optical signal to a temperature sensing fiber-optic cable provided in a sewer pipe; S2: feeding back, by the temperature sensing fiber-optic cable, a modulated optical signal to the optical time-domain reflectometer due to a temperature effect; S3: subjecting the modulated optical signal to photoelectric conversion, so as to acquire binary information; S4: converting the binary information into decimal information; S5: drawing a spatiotemporal map of a water temperature; and S6: eliminating a background noise value, identifying an abnormal water temperature point, determining an inflow and infiltration point of the sewer pipe, and determining an abnormal inflow and infiltration point of the sewer pipe.
Claims
1. A sewer pipe inflow and infiltration diagnosis method based on a distributed fiber-optic temperature measurement system, wherein the distributed fiber-optic temperature measurement system comprises an optical time-domain reflectometer, a data interpretation module, a temperature sensing fiber-optic cable, and a distributed fiber-optic temperature measurement instrument, wherein the method comprises the following steps: S1: transmitting, by the optical time-domain reflectometer, an original optical signal to the temperature sensing fiber-optic cable provided in a sewer pipe; S2: feeding back, by the temperature sensing fiber-optic cable, a modulated optical signal to the optical time-domain reflectometer due to a temperature effect; S3: subjecting, by the distributed fiber-optic temperature measurement instrument, the modulated optical signal to photoelectric conversion to acquire binary information characterizing a measurement time, a measured temperature, and a fiber location; S4: converting, by the data interpretation module, the binary information into decimal information; S5: drawing a spatiotemporal map of a water temperature inside the sewer pipe based on the decimal information; and S6: eliminating a background noise value in the spatiotemporal map of the water temperature, identifying an abnormal water temperature point, and determining an inflow and infiltration point of the sewer pipe; wherein in step S6, the method of eliminating the background noise value in the spatiotemporal map of the water temperature comprises: setting a positive background noise value a C. (a>0), and eliminating the positive background noise value according to a positive background noise value elimination equation below:
2. The sewer pipe inflow and infiltration diagnosis method based on the distributed fiber-optic temperature measurement system according to claim 1, wherein the decimal information comprises the measurement time denoted by t, the measured temperature denoted by T, and the fiber location denoted by l; and step S5 comprises: drawing the measured temperature T in different colors in a coordinate system with the measurement time t as a vertical axis and the fiber location l as a horizontal axis to form the spatiotemporal map of the water temperature inside the sewer pipe.
3. (canceled)
4. The sewer pipe inflow and infiltration diagnosis method based on the distributed fiber-optic temperature measurement system according to claim 1, wherein step S6 comprises: determining the positive background noise value and the negative background noise value based on a temperature variation amplitude.
5. The sewer pipe inflow and infiltration diagnosis method based on the distributed fiber-optic temperature measurement system according to claim 4, wherein the positive background noise value and the negative background noise value are expressed as follows:
a=|
b=|
6. The sewer pipe inflow and infiltration diagnosis method based on the distributed fiber-optic temperature measurement system according to claim 1, wherein step S6 comprises: determining the positive background noise value and the negative background noise value based on a probability distribution of a water temperature difference between two adjacent temperature measurement points in space.
7. The sewer pipe inflow and infiltration diagnosis method based on the distributed fiber-optic temperature measurement system according to claim 6, wherein the positive background noise value and the negative background noise value are expressed as follows:
a=
b= where, denotes a preset background noise value with a probability distribution proportion P.sub. greater than a set distribution proportion P.sup.set, that is, P.sub.P.sup.set.
8. The sewer pipe inflow and infiltration diagnosis method based on the distributed fiber-optic temperature measurement system according to claim 7, wherein the probability distribution proportion of the preset background noise value is expressed as follows:
9. The sewer pipe inflow and infiltration diagnosis method based on the distributed fiber-optic temperature measurement system according to claim 1, wherein the optical time-domain reflectometer comprises an optical signal transmitting module and an optical signal receiving module; the optical signal transmission module is configured to generate and transmit the original optical signal to the temperature sensing fiber-optic cable; and the optical signal receiving module is configured to receive the modulated optical signal from the temperature sensing fiber-optic cable.
10. The sewer pipe inflow and infiltration diagnosis method based on the distributed fiber-optic temperature measurement system according to claim 1, wherein the sewer pipe comprises a storm pipe, a sewage pipe, and a storm and sewage combined pipe.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
[0034]
[0035]
[0036]
[0037]
[0038]
[0039]
[0040]
DETAILED DESCRIPTION OF THE EMBODIMENTS
[0041] The present disclosure will be described in detail below with reference to the drawings and specific embodiments. It should be noted that the description of following implementations is merely a substantial example, and the present disclosure is neither intended to limit its application or use, nor being limited to the following implementations.
EMBODIMENT
[0042] The embodiment of the present disclosure provides a sewer pipe inflow and infiltration diagnosis method based on a distributed fiber-optic temperature measurement system. Considering a water temperature difference between external water and water inside a sewer pipe, the present disclosure provides a fiber-optic cable inside the sewer pipe to monitor an abnormal temperature point, and identifies the abnormal temperature point as storm and sewage combined point or a damage point. The distributed fiber-optic temperature measurement system includes an optical time-domain reflectometer, a data interpretation module, a temperature sensing fiber-optic cable, and a distributed fiber-optic temperature measurement instrument. The optical time-domain reflectometer includes an optical signal transmitting module and an optical signal receiving module. The optical signal transmission module is configured to generate and transmit the original optical signal to the temperature sensing fiber-optic cable. The optical signal receiving module is configured to receive the modulated optical signal from the temperature sensing fiber-optic cable. The temperature sensing fiber-optic cable is provided in the sewer pipe, and is able to sensitively respond to a water temperature variation inside the sewer pipe. The distributed fiber-optic temperature measurement instrument is configured to subject the modulated optical signal to photoelectric conversion, so as to acquire binary information characterizing a real-time spatiotemporal water temperature variation inside the sewer pipe. The data interpretation module is configured to convert the binary information into decimal information for subsequent drawing of a spatiotemporal map of a water temperature inside the sewer pipe and determination of an inflow and infiltration point.
[0043] The sewer pipe includes a storm pipe, a sewage pipe, and a storm and sewage combined pipe. The shape of the sewer pipe is not limited, and the sewer pipe can be a circular pipe, a square culvert, or an elliptical pipe. The temperature sensing fiber-optic cable can be installed between two inspection wells of the sewer pipe along an extended direction of the sewer pipe. When the temperature sensing fiber-optic cable is installed on the sewer pipe, it is not necessary to lower the water level in the sewer pipe. In this embodiment, as shown in
[0044] The inflow and infiltration diagnosis method includes: continuous measurement of the water temperature inside the sewer pipe based on the distributed fiber-optic temperature measurement system, interpretation of a water temperature signal, drawing of a spatiotemporal map of the water temperature inside the sewer pipe, and identification of an inflow and infiltration point of the sewer pipe. The inflow and infiltration diagnosis method specifically includes the following steps. [0045] S1. The optical time-domain reflectometer transmits an original optical signal to the temperature sensing fiber-optic cable provided in a sewer pipe. [0046] S2. The temperature sensing fiber-optic cable feeds back a modulated optical signal to the optical time-domain reflectometer due to a temperature effect.
[0047] Specifically, in this embodiment, the continuous measurement of the water temperature inside the sewer pipe is completed through steps S1 and S2. The temperature sensing fiber-optic cable is installed along the extended direction of the sewer pipe. When the temperature sensing fiber-optic cable is installed, the temperature sensing fiber-optic cable should avoid bending as much as possible. A continuous measurement time of the water temperature inside the sewer pipe should not be less than 48 hours. [0048] S3. The distributed fiber-optic temperature measurement instrument subjects the modulated optical signal to photoelectric conversion, so as to acquire binary information characterizing a measurement time, a measured temperature, and a fiber location.
[0049] The distributed fiber-optic temperature measurement instrument is configured to subject the modulated optical signal to photoelectric conversion, so as to acquire binary information characterizing a measurement time, a measured temperature, and a fiber location. [0050] S4. The data interpretation module converts the binary information into decimal information.
[0051] The decimal information includes measured temperature T, fiber location l, and measurement time t. [0052] S5. A spatiotemporal map of a water temperature inside the sewer pipe is drawn based on the decimal information.
[0053] Specifically, in step S5, the measured temperature T is drawn in different colors in a coordinate system with the measurement time t as a vertical axis and the fiber location l as a horizontal axis, so as to form the spatiotemporal map of the water temperature inside the sewer pipe. A water temperature matrix corresponding to the spatiotemporal map of the water temperature is as follows:
[0058] In step S6, the background noise value in the spatiotemporal map of the water temperature is eliminated as follows:
[0059] A positive background noise value is set as a C. (a>0), and is eliminated according to a positive background noise value elimination equation below:
[0061] A negative background noise value is set as b C. (b<0), and is eliminated according to a negative background noise value elimination equation below:
[0062] where, X(t,l) denotes a negative response event matrix with elements 0 and 1.
[0063] The spatiotemporal map of the water temperature is expressed by 0, 1, and 1 after eliminating the positive signal background noise value according to the positive signal background noise value elimination equation and the negative signal background noise value according to the negative signal background noise value elimination equation, where 1 and 1 denote the abnormal water temperature point and an abnormal discharge time, respectively.
[0064] In step S6, there are two methods for determining the positive background noise value and the negative background noise value. In a first method, the positive background noise value and the negative background noise value are determined based on a temperature variation amplitude.
a=|
b=|
[0066] In a second method, the positive background noise value and the negative background noise value are determined based on a probability distribution of a water temperature difference between two adjacent points in space.
a=
b= [0067] where, denotes a preset background noise value with probability distribution proportion P.sub. greater than set distribution proportion P.sup.set that is, P.sub.P.sup.set.
[0068] The probability distribution proportion of the preset background noise value is expressed as follows:
[0070] In this embodiment,
[0071]
[0072] In the embodiment of the present disclosure, pipe segment l.sub.2-l.sub.4 has inflow and infiltration during t.sub.1-t.sub.3. During t.sub.1-t.sub.2, the pipe segment l.sub.2-l.sub.4 has high-temperature inflow and infiltration. There are positive and negative response events occurring in this region, with the positive response event occurring in pipe segment l.sub.2-l.sub.3 and the negative response event occurring in pipe segment l.sub.3-l.sub.4. Therefore, it is determined that the inflow and infiltration location is at a junction of the positive and negative response events (values 1 and 1 of the matrix X(t,l)), i.e. l.sub.3, which is an indicative of a peak water temperature. As the inflow and infiltration event continues to intensify, the radiation range of the positive and negative response events expands to adjacent locations (l.sub.2-l.sub.1 and l.sub.4-l.sub.5) during t.sub.2-t.sub.3. Expansion boundary l.sub.1 is defined by a transition point of values 0 and 1 of matrix X(t,l), and expansion boundary l.sub.s is defined by a transition point of values 1 and 0 of matrix X(t,l). According to the spatiotemporal map shown in
[0073] The above implementations are merely described as examples, and are not intended to limit the scope of the present disclosure. These implementations can also be implemented in various other ways, and various omissions, substitutions, and changes can be made without departing from the technical thought of the present disclosure.