Method for assessing corroded pipeline defect growth from partial inspection data and devices thereof
09933353 ยท 2018-04-03
Assignee
Inventors
Cpc classification
G01N17/00
PHYSICS
International classification
Abstract
The technique relates to a system and method for assessing corroded pipeline defect growth rate from partial defect growth rate information. The method involves obtaining a plurality of observed defect growth rates from the inspection data collected at different time intervals then determining at least one unobserved defect growth rate on the basis of distribution pattern of the plurality of observed defect growth rates thereafter simulating condition of at least one hyper parameter on the inspection data based on prior information of the at least one hyper parameter then simulating the plurality of observed defect growth rates and the at least one unobserved defect growth rate based on the simulated hyper parameters and finally obtaining defect growth rate point estimate from the simulated growth rate data. The method also involves determining a probability of failure of a defect from the defect growth rate point estimates.
Claims
1. A method for assessing a corroded pipeline defect, the method comprising: obtaining, by a pipeline analysis computing device, a plurality of observed defect growth rates from inspection data collected at different time intervals, wherein the inspection data comprises partial defect growth rate information; determining, by the pipeline analysis computing device, at least one unobserved defect growth rate on the basis of distribution pattern of the plurality of observed defect growth rates; simulating, by the pipeline analysis computing device, a condition of at least one hyper parameter on the inspection data based on prior information of the at least one hyper parameter; simulating, by the pipeline analysis computing device, the plurality of observed defect growth rates and the at least one unobserved defect growth rate based on the simulated hyper parameters; obtaining, by the pipeline analysis computing device, a defect growth rate point estimate from the simulated growth rate data; and obtaining, by the pipeline analysis computing device, a probability of failure of a defect from the defect growth rate point estimates; and scheduling, by the pipeline analysis computing device, an inspection of the defect based on the obtained probability of failure.
2. The method as claimed in claim 1 further comprising updating, by the pipeline analysis computing device, a new defect growth rate data in at least one cluster of defect growth rate.
3. The method as claimed in claim 1, wherein the hyper parameters, the plurality of observed defect growth rates, and the at least one unobserved defect growth rate are simulated by one or more Markov Chain Monte Carlo Methods.
4. The method as claimed in claim 1, wherein the unobserved defect growth rate is determined by a Hierarchical Bayesian method.
5. A pipeline analysis computing device comprising a processor and a memory coupled to the processor which is configured to be capable of executing programmed instructions comprising and stored in the memory to: obtain a plurality of observed defect growth rates from inspection data collected at different time intervals, wherein the inspection data comprises partial defect growth rate information; determine at least one unobserved defect growth rate on the basis of a distribution pattern of the plurality of observed defect growth rates; simulate a condition of at least one hyper parameter on the inspection data based on prior information of the at least one hyper parameter; simulate the plurality of observed defect growth rates and the at least one unobserved defect growth rate based on the simulated hyper parameters; and obtain a defect growth rate point estimate from the simulated growth rate data; obtain a probability of failure of a defect from the defect growth rate point estimates; and schedule an inspection of the defect based on the obtained probability of failure.
6. The device as claimed in claim 5, wherein the processor coupled to the memory is further configured to be capable of executing at least one additional programmed instruction comprising and stored in the memory to update a new defect growth rate data in at least one cluster of defect growth rate.
7. The device as claimed in claim 5, wherein the hyper parameters, the plurality of observed defect growth rates, and the at least one unobserved defect growth rate are simulated by one or more Markov Chain Monte Carlo Methods.
8. The device as claimed in claim 1, wherein the unobserved defect growth rate is determined by a Hierarchical Bayesian method.
9. A non-transitory computer readable medium having stored thereon instructions for assessing corroded pipeline defect growth rate comprising machine executable code which when executed by at least one processor, causes the at least one processor to perform steps comprising: obtaining a plurality of observed defect growth rates from the inspection data collected at different time intervals, wherein the inspection data comprises partial defect growth rate information; determining at least one unobserved defect growth rate on the basis of distribution pattern of the plurality of observed defect growth rates; simulating a condition of at least one hyper parameter on the inspection data based on prior information of the at least one hyper parameter; simulating the plurality of observed defect growth rates and the at least one unobserved defect growth rate based on the simulated hyper parameters; and obtaining a defect growth rate point estimate from the simulated growth rate data; obtaining a probability of failure of a defect from the defect growth rate point estimates; and scheduling an inspection of the defect based on the obtained probability of failure.
10. The non-transitory computer readable medium as claimed in claim 9 further having stored thereon at least one additional instruction that when executed by the processor cause the processor to perform at least one additional step comprising updating a new defect growth rate data in at least one cluster of defect growth rate.
11. The non-transitory computer readable medium as claimed in claim 9, wherein the hyper parameters, the plurality of observed defect growth rates, and the at least one unobserved defect growth rate are simulated by one or more Markov Chain Monte Carlo Methods.
12. The non-transitory computer readable medium as claimed in claim 9, wherein the unobserved defect growth rate is determined by a Hierarchical Bayesian method.
Description
BRIEF DESCRIPTION OF THE DRAWINGS
(1) Various embodiments of the invention will, hereinafter, be described in conjunction with the appended drawings provided to illustrate, and not to limit the invention, wherein like designations denote like elements, and in which:
(2)
(3)
(4)
DETAILED DESCRIPTION
(5) The foregoing has broadly outlined the features and technical advantages of the present disclosure in order that the detailed description of the disclosure that follows may be better understood. Additional features and advantages of the disclosure will be described hereinafter which form the subject of the claims of the disclosure. It should be appreciated by those skilled in the art that the conception and specific embodiment disclosed may be readily utilized as a basis for modifying or designing other structures for carrying out the same purposes of the present disclosure. It should also be realized by those skilled in the art that such equivalent constructions do not depart from the spirit and scope of the disclosure as set forth in the appended claims. The novel features which are believed to be characteristic of the disclosure, both as to its organization and method of operation, together with further objects and advantages will be better understood from the following description when considered in connection with the accompanying figures. It is to be expressly understood, however, that each of the figures is provided for the purpose of illustration and description only and is not intended as a definition of the limits of the present disclosure.
(6)
(7) With reference to
(8)
(9) According to an embodiment of the invention the method also involves obtaining a probability of failure of a defect from the defect growth rate point estimates. According to further embodiment of the invention the invention involves updating new defect growth rate data in at least one clusters of defect growth rate so that whenever new defect growths data arises by external inspection/new inspection defect data all defects growths belongs to that cluster would be updated using Hierarchical Bayesian method. It helps the pipeline operators in identifying the major defects and their growth rate and scheduling the inspection of those defects.
(10) According to an exemplary embodiment of the invention if inspection data of few years having different independent defects D1, D2, - - - Dn of n defects as represented in Table 1 where
(11) indicates the observed defect growth
(12) xindicates the unobserved defect growth
(13) TABLE-US-00001 TABLE 1 Inspection data of different defects Inspection Time in Years Defects 1 2 3 4 5 6 7 D1 x x x D2 x x x D3 x x x . . x x x . Dn
(14) In order to determine unobserved defect growth rate over a period of time based on the observed defect growth rate using Hierarchical Bayesian method assumed that the defects grow independently with respect to time and consider the modeling of defect depth growth using Hierarchical Bayesian method and it is explained below.
(15) Defect depth Growth rate: Let Y=(Y.sub.1, Y.sub.2, . . . , Y.sub.n) be the defect depth growth rate and assumed that n defects is present each defect grows independently in depth. Each defect has mean growth rate .sub.1i, and variance .sub.1i.sup.2 for i=1, 2, . . . , n
(16)
(17) For given .sub.1, for illustrative purpose assumed that defect depth growth rate follows multivariate normal distribution such as
(18) For a given .sub.2, of unknown hyper parameters which is a function of uncertainties such as temperature or stress etc. the parameters .sub.1 drawn from the multivariate normal distribution with mean .sub.2, and variance .sub.2.sup.2.
(19)
(20) Here are .sub.1.sup.2, .sub.2.sup.2 known positive definite matrices.
(21) Here .sub.2 are the hyper parameters and the prior information about the hyper parameters is known and it has the following distribution
(22) U(a, b) where a, b are fixed constants.
(23) Further, in order to estimate the parameters of the depth growth rate even though the growth rates are independent but they are related by the hyper parameters and if the prior information of the hyper parameters are known. (i.e) If any of defect growth rate particular inspection time is known then the unobserved defect growth rate by using observed defect growth rates can be estimated
(24) Hence posterior distribution is obtained P(.sub.1|Y, .sub.2, .sub.1.sup.2, .sub.2.sup.2)
(25) Now considering Bayes theorem, P(.sub.1|Y)P(Y|.sub.1)P(.sub.1).
(26) From Bayes theorem the posterior distribution of defect growth rate distribution follows N(Bb, B).
Where B=(.sub.1.sup.2+.sub.2.sup.2) and b=(.sub.1.sup.2Y+.sub.2.sup.2.sub.2)
(27) The estimates of the each defect growth rate mean is given by {circumflex over ()}.sub.1i
(28)
(29) If the growth rate of any defect at time t (.sub.2i for some i) is known then the growth rate of other defects at time t can be computed by using the posterior distribution .sub.1i|.sub.2i, Y.sub.i. Even though the defects depths are independent but they related by its hyper parameters for .sub.2i=.sub.2j for ij; i,j=1, 2, . . . , n
(30) Here the close form of the defect growth rate estimates are obtained analytically since the defect growth rates follows the multivariate normal distribution. There are cases when the defect growth rates are not normal and it follows the gamma distributions or Weibull distribution etc. then closed form expression for defect growth estimates is not obtained easily and hence need to simulate the data in two steps.
(31) Step 1: Simulate the hyper parameters from the marginal posterior density of the hyper parameters conditional on the inspection data which is given by
h(.sub.2|Y)=.sub.i=1.sup.n.sub..sub.
where P(.sub.2) is the prior distribution of the hyper parameters.
(32) In the case of normal distribution, (Y.sub.i/.sub.2) is the probability density function of normal distribution with mean .sub.2 and variance .sub.2.sup.2.
(33) Step 2: Simulate the defect growth rates .sub.1 conditioning on the simulated hyper parameters and inspection data. The posterior distribution of the defect growth rate parameters is given by
P(.sub.1|Y)P(Y|.sub.1)P(.sub.1).
(34) In the case of normal distribution the estimates obtained as shown above.
(35) Simulation Approach: According to another exemplary embodiment of the invention Hybrid Monte Carlo (Hamiltonian Monte Carlo) is used to simulate the parameters. The Hamiltonian is constructed as potential term (x)=log((x)) plus a kinetic energy term which is given by
(36)
(37) The above example shows the exemplary method for assessing corroded pipeline defect growth rate from partial inspection data.
(38)
(39) The above mentioned description is presented to enable a person of ordinary skill in the art to make and use the invention and is provided in the context of the requirement for obtaining a patent. Various modifications to the preferred embodiment will be readily apparent to those skilled in the art and the generic principles of the present invention may be applied to other embodiments, and some features of the present invention may be used without the corresponding use of other features. Accordingly, the present invention is not intended to be limited to the embodiment shown but is to be accorded the widest scope consistent with the principles and features described herein.