The present invention concerns a method and a device for detecting an electrical arcing phenomenon on an electrical cable, for example a cable forming part of a bundle of electrical cables.
It is known that an electrical arcing phenomenon is the result of slow deterioration of the insulation of cables used to distribute alternating current or direct current electrical energy caused by an aggressive environment (moisture in the air, mildew, rubbing, vibration of the connecting terminals, varying temperatures, shear, etc.).
The electrical arcing phenomenon is divided into four successive phases of increasing energy:
Apart from deterioration of the insulation of an electrical cable, a loosened connection and abrasion of a cable are also propitious to the appearance of electrical arcs.
An object of the present invention is to detect an electrical arcing phenomenon in order to be able to avoid the harmful consequences thereof cited above.
There are known in the art protection devices called thermal cut-outs that provide what is called “overcurrent” protection. However, the usual thermal cut-outs, which protect power supply cables if the energy consumed by the connected load exceeds its nominal value, are unsuitable for protection against arcing phenomena because of the low intensity at which the arc discharge phenomena occur and propagate over an electrical network, that low intensity being insufficient to trigger said thermal cut-outs.
An object of the present invention is to remedy these drawbacks. The present invention concerns a method of detecting an electrical arcing phenomenon on at least one electrical cable, for example a cable forming part of a bundle of electrical cables, as soon as possible and in a particularly efficacious manner.
To this end, according to the invention, said method is noteworthy in that:
Accordingly, thanks to the invention, it is possible to detect efficaciously an electrical arcing phenomenon occurring on any type of electrical cable or bundle of electrical cables and in particular a cable or a bundle of cables installed on an aircraft, for example an airliner.
Moreover, by detecting a corona discharge phase, it is possible to detect an electrical arcing phenomenon as soon as it arises (as indicated above, the corona discharge phase corresponds to the onset of the electrical arcing phenomenon), so that it is possible to take in good time all the measures necessary to prevent arc tracking and the harmful consequences thereof cited above.
It will further be noted that the protection provided by the invention may be provided in conjunction with the usual “overcurrent” thermal protection.
The corona discharge phase that the present invention takes into account is characterized by:
The detection of a corona discharge phase is complex, in particular because of its random characteristics. Moreover, in an aeronautical environment, i.e. when the cables under surveillance are installed on an aircraft, they are subjected to many kinds of high-intensity external electromagnetic attack (e.g. lightning) and low-intensity electromagnetic attack (e.g. radar). As the corona discharge phenomenon is of low intensity, electromagnetic attack could degrade detection quality and reliability and generate false triggering. Moreover, each electrical cable supplies a non-linear load generating distortions and creating high-frequency harmonics (computer, landing lights, etc.) that could also potentially pollute the detection process. However, thanks to the invention, it is possible to eliminate these risks by taking account of classes to which the phenomena (in particular electromagnetic phenomena and loads) that are liable to interfere with the detection process belong, and by discriminating between the corona discharges to be detected and these disturbing phenomena.
In one particular embodiment:
In a preferred embodiment, in the step B.b.β there are determined probabilities of said shape vector belonging to respective classes of said database and in the step B.b.γ it is concluded that an electrical arcing phenomenon exists if at least the following condition is satisfied: the probability of belonging to said first class is higher than the probabilities thus determined.
In this case, the probabilities are determined advantageously with the aid of a Bayesian decision.
Moreover, in the step B.b.γ it is advantageously concluded that an electrical arcing phenomenon exists if the following conditions are also satisfied:
Moreover, in the step B.b.β it is advantageous if:
Moreover, said database is advantageously formed by a training process in said preliminary step. Said database is advantageously formed from measurements carried out on electrical cables subject to phenomena for which it is required to constitute classes by implementation of at least said steps B.a.α, B.a.β, B.a.γ and B.b.α.
The present invention also concerns a device for detecting an electrical arcing phenomenon on at least one electrical cable,
Furthermore, in one particular embodiment, said device further includes:
The device conforming to the invention has numerous advantages. In particular:
The figures of the appended drawings show how the invention may be reduced to practice. In these figures, identical reference numbers designate similar items.
The device 1 of the invention shown schematically in
Said electrical cable 2 that is being monitored is used to connect a load 3 of the usual kind to an electrical current generator 4 in the usual way.
According to the invention, said device 1 includes:
The corona discharge phase taken into account by the present invention is characterized by:
As shown in
In one particular embodiment:
Moreover, as represented in
More precisely:
As indicated above, the digitized data is recovered and processed segment by segment. The device 1 therefore has two periodic measurement segments (one for the current and one for the voltage). Said device 1 determines if a corona discharge or corona discharge phase is present from the mathematical combination of these two segments. The mathematical approach consists in effecting a classification of the current and voltage measurements for the phase under scrutiny. The general idea is to extract the maximum information from the physical phenomenon in order to be able to characterize it in amplitude, frequency and time. Several mathematical algorithms are used to dissect the physical signal on the basis of the measurement segments. Each algorithm has its own transfer function. The means 23 use the combination of all these results for shape recognition (see below).
Said means 23 function as classification means. To this end they use said shape vector characterizing the voltage and the current of the phase under scrutiny and said database 10 representing the phenomena to be detected. The shape vector is projected into a subspace in order to reduce the number of main components of the shape vector. The point at the reduced coordinates obtained in this way is then projected into shape spaces representing said classes C1, C2 and C3 of the database 10.
It will be noted that a main component analysis (reducing the total number of components) calculates the degree of redundancy between variables describing the behavior of a phenomenon. An analysis of this kind changes from a space with “m” dimensions to a space with “p” dimensions, where “m”>“p”. A study of the degree of redundancy between variables enables the components (variables) to be sorted into size order. After processing, the analysis supplies a matrix for passing between the space with “m” dimensions and the space with “p” dimensions. For example, at the beginning of the analysis there are six components (or variables) describing the three phenomena cited above (corona discharges, electromagnetic interference, loads).
Said means 23 determine the probabilities of belong to a class cited above with the aid of a Bayesian decision.
The Bayesian decision is based on a normal probability law, i.e. each class is modeled by a Gaussian distribution whose culminating point (epicenter) corresponds to the mean of the shape vectors. The measuring point that is projected into the plane of the database is subject to the following calculations:
This kind of measurement is called a Mahalanobis distance measurement. When all the distances have been calculated, Bayes' theorem is used to determine the a posteriori probability of belong to each of the classes C1, C2, C3. Only the maximum a posteriori probability is acted on.
This Bayesian decision is based on the following characteristics:
A/ calculation of the a posteriori Bayes' probability:
where:
B/ measurement probability density:
where:
C/ general Bayesian condition:
Thus n a posteriori probabilities are obtained whose sum is equal to 1.
If a signal that does not belong to any of the classes C1, C2 and C3 considered is injected at the input, the preceding equation will falsify the calculation since by definition the sum is equal to 1 and consequently the signal will be assigned a class anyway. Also, to avoid this kind of problem, the means 23 employ a rejection strategy that refines the decision and therefore refines overall performance. An object of the rejection strategy is to fix boundaries at the decision space of the database 10 that is five-dimensional, for example. This amounts to creating a volume around the class C1. Bayes' theory gives a posteriori probabilities of which only the maximum probability is taken into account. If that maximum probability corresponds to said class C1 (corona discharge), said rejection strategy is applied, as the estimate may be false.
To be more precise, thanks to this rejection strategy, for the means 23 to assign a shape vector (representative of the measurements carried out on the cable 2) to the corona discharge class C1, it is necessary for all the following conditions to be satisfied:
Said means 23 also apply a thresholding procedure to the corona discharge class C1. If the point considered belongs to the space (or volume) corresponding to the criteria of belonging to the class C1, the means 25 take an appropriate decision. That decision can take several forms, as a function in particular of the degree of progress in time of the phenomenon.
Said means 25 can transmit this decision over a connection 27 to information means 28, for example a visual indicator (lamp), audio indicator or display screen adapted where applicable to inform an operator of the detection of an arcing phenomenon.
Said means 25 can also command a switch 29 automatically over a connection 30 to break automatically the current supplied by said electrical cable 2 that is being monitored to said load 3 in the event of detection of an electrical arcing phenomenon at the level of said electrical cable 2.
Said device 1 further includes electrical power supply means 31 connected by the connection 7 to said electrical cable 2 that is being monitored and supplied with electrical power thereby. The device 1 is therefore supplied with electrical power directly by the electrical cable 2 that is being monitored.
It will further be noted that said database 10 is formed by a training process from measurements carried out on electrical cables subject to different phenomena for which it is required to constitute classes using at least the functions cited above of the acquisition unit 5 and the means 22 and 23.
To constitute said database 10, recordings are effected in the laboratory in order to obtain a set of measurements sufficiently representative of the different classes C1, C2 and C3 considered. The records are subjected to the same mathematical processing as the future measurements for which that database 10 will be used (see above).
The device 1 of the invention uses a classification and rejection mechanism based on a statistic of the signal that can discriminate the electrical arcing phenomenon from external interference. This device 1 has numerous advantages. In particular:
Moreover, said device 1 works for direct current and alternating current electrical networks, independently of the frequency of those electrical networks. Said device 1 is also independent of the type of load connected to the network that is being monitored.
Number | Date | Country | Kind |
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04 10384 | Oct 2004 | FR | national |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/FR2005/002394 | 9/28/2005 | WO | 00 | 3/28/2007 |
Publishing Document | Publishing Date | Country | Kind |
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WO2006/037874 | 4/13/2006 | WO | A |
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