The present invention relates to a partial discharge determination apparatus and a partial discharge determination method, and is suitably applied to, for example, a cable degradation monitoring system that monitors degradation of an underground power transmission cable.
In an urban area, a huge power transmission network is laid in the ground, and power generated in a power plant is transmitted to each power consumer via the power transmission network. Since underground power transmission facilities have increased in the high economic growth period, and many of them have been used for 40 years from the start of operation, a technique for diagnosing aged degradation has become important.
A partial discharge measurement method is one of degradation diagnosis techniques for an underground power transmission cable. The underground power transmission cable has a structure in which a conductor through which a current flows is covered with an insulator. In a case where a void is generated in the insulator due to aging degradation, partial discharge occurs in the void, and finally dielectric breakdown occurs. The partial discharge measurement method is for observing such a partial discharge and diagnosing a degree of insulation degradation of an underground power transmission cable based on the observation result, and various companies and research organizations have conducted studies to elucidate a partial discharge generation mechanism and estimate the degree of insulation degradation from the partial discharge property.
For example, NPL 1 discloses a measurement result of the phase angle property of a partial discharge pulse from the start of electric charge application to dielectric breakdown using an experimental electrode, and a degradation diagnosis estimation method to which a pattern recognition method is applied. The phase angle property of the partial discharge pulse is a distribution pattern of the charge quantity and the occurrence phase angle of the partial discharge pulse during a plurality of cycles of the applied voltage. The change in the range of the phase angle region where the partial discharge occurs and the occurrence charge quantity is shown in the five times from the start of the electric charge application to the dielectric breakdown. In the degradation diagnosis estimating method, the phase angle property of the partial discharge is patterned into the standardized charge quantity, the standardized phase angle, and the occurrence frequency, and the similarity between this pattern and the standard pattern according to the degradation degree created in advance is compared.
PTL 1 discloses a partial discharge measurement method capable of determining the presence or absence of a partial discharge using a neural network. Unlike the pattern of NPL 1, the pattern used here is a standardized charge quantity/standardized phase angle that is listed in time series every t cycle. In the technique of NPL 1, since the charge quantity and the phase angle are collectively patterned as the occurrence frequency for a plurality of cycles (600 cycles), there is a problem that time information of the occurrence phase angle is lost and the presence or absence of the partial discharge may be erroneously determined.
Furthermore, PTL 2 discloses an insulation diagnosis system capable of improving diagnosis accuracy by applying a hidden Markov model. Since the neural network used in the insulation diagnosis system in the related art is not possible to include the temporal causal relationship of the feature amount stochastically changing with the lapse of time, there is a problem that the accuracy is low when the neural network is applied to the diagnosis in the insulation state by the partial discharge. In the hidden Markov model, data varying in time series is expressed by a probabilistic model.
PTL 1: JP 10-78471 A
PTL 2: JP 2005-331415 A
NPL 1: KOMORI Fumitaka and three others, “Degradation Diagnosis and Estimation of Residual Life of Insulating Material using Pattern Recognition of Phase Angle Resolved Partial Discharge Pulse Occurrence Distribution”, The Institute of Electrical Engineers of Japan, 1993, Vol. 113-A, No. 8, p. 586-593
Since the technique disclosed in NPL 1 uses the distribution patterns of the charge quantity, the phase angle, and the occurrence frequency of the partial discharge pulses in a plurality of cycles (for example, 600), there is a disadvantage that the information on the temporal change of the partial discharge cannot be included while there is an advantage that the feature of the pattern as a whole appear and are easy to identify.
In addition, since the technique disclosed in PTL 1 uses the distribution patterns of the charge quantity, the phase angle, and the time of the partial discharge pulses in t cycle, and there is a problem that t as the number of measurement cycles cannot be increased as in NPL 1 while there is an advantage that the information on the temporal change of the partial discharge can be included. This is because the scale of the neural network increases. Therefore, the feature of the pattern as a whole is difficult to appear, and determination may be difficult.
Furthermore, according to the technique disclosed in PTL 2, there are a normal state and each insulation degradation state of the insulator, and in each state, a property amount related to insulation is patterned and provided as a parameter, so that there is a possibility that diagnosis accuracy can be improved. On the other hand, in
The present invention has been made in view of the above points, and an object of the present invention is to propose a partial discharge determination apparatus and a partial discharge determination method capable of increasing a feature amount by including temporal information of partial discharge in a distribution pattern of a charge quantity, a phase angle, and an occurrence frequency of a partial discharge pulse, and improving accuracy of partial discharge determination.
In order to solve such a problem, according to the present invention, there is provided a partial discharge determination apparatus that determines a degree of progress of a partial discharge occurring in a power transmission cable, the apparatus including: a distribution pattern generation unit that generates a distribution pattern of a combination of a charge quantity and an occurrence phase angle of each of the partial discharges occurring in one or a plurality of cycle periods of an applied voltage of the power transmission cable; a differential data generation unit that generates differential data including a difference between the numbers of occurrences of the partial discharges for each combination of the charge quantity and the occurrence phase angle in two or more latest distribution patterns generated by the distribution pattern generation unit, respectively; and a determination unit that determines the degree of progress of the partial discharge based on data of the latest distribution patterns and the differential data.
Further, according to the present invention, there is provided a partial discharge determination method executed in a partial discharge determination apparatus that determines a degree of progress of a partial discharge occurring in a power transmission cable, the method including: a first step of generating a distribution pattern of a combination of a charge quantity and an occurrence phase angle of each of the partial discharges occurring in one or a plurality of cycle periods of an applied voltage of the power transmission cable; a second step of generating differential data including a difference between the number of occurrences of the partial discharge for each combination of the charge quantity and the occurrence phase angle in two or more latest distribution patterns; and a third step of determining the degree of progress of the partial discharge based on data of the latest distribution patterns and the differential data.
According to the partial discharge apparatus and the partial discharge method of the present invention, it is possible to determine the degree of progress of partial discharge including temporal information of the partial discharge.
According to the present invention, it is possible to realize a partial discharge determination apparatus and a partial discharge determination method capable of accurately determining the degree of progress of the partial discharge.
Hereinafter, an embodiment of the present invention will be described in detail with reference to the drawings.
In
In the case of an OF (Oil Filled) cable that maintains insulation with kraft paper and oil, the underground power transmission cable 2 is configured by sequentially laminating an insulator 11 made of kraft paper immersed in insulating oil, a metal sheath 12 for enclosing oil, and an anticorrosion layer 13 for corrosion prevention on a conductor 10 through which electricity flows. The metal sheath 12 is grounded via a metal sheath ground line 14, so that when a partial discharge occurs in the underground power transmission cable 2, the partial discharge pulse can be released to the ground via the metal sheath ground line 14.
The clamp type high-frequency CT3 is configured to include a clamp high frequency current sensor, and outputs a partial discharge pulse signal including a pulse that rises to a voltage level corresponding to the charge quantity of each partial discharge pulse PL flowing through the metal sheath ground line 14 to the partial discharge determination apparatus 4. In the following description, the pulse included in the partial discharge pulse signal is referred to as a partial discharge pulse PL for easy understanding.
The partial discharge determination apparatus 4 is equipped with a partial discharge determination function of determining a degree of progress of partial discharge in the target underground power transmission cable (hereinafter, this is referred to as a target underground power transmission cable) 2 based on a partial discharge pulse signal given from the clamp type high-frequency CT3. The partial discharge determination apparatus 4 executes a partial discharge determination process of determining a degree of progress of the partial discharge based on the partial discharge determination function, and transmits a processing result as a partial discharge determination signal to the cable degradation monitoring apparatus 5 via the network 6.
The cable degradation monitoring apparatus 5 includes, for example, a computer device such as a personal computer or a workstation, records necessary information included in a partial discharge determination signal given from the partial discharge determination apparatus 4, estimates a degradation degree of the underground power transmission cable 2 by combining a determination result of the partial discharge with a time change, and displays the estimation result.
The CPU 20 is a processor that controls the entire operation of the partial discharge determination apparatus 4. The memory 21 includes a volatile semiconductor memory and the like, and is used as a work memory of the CPU 20. Programs such as a distribution pattern generation program 30, a differential data generation program 31, an artificial intelligence (AI) program 32, and a transmission frame generation program 33 to be described later are loaded from the storage device 22 and held in the memory 21.
The storage device 22 includes a nonvolatile large-capacity storage device such as a hard disk device, a solid state drive (SDD), or a flash memory, and stores various programs, data to be stored for a long period of time, and the like. The storage device 22 also stores and hold partial discharge data 34, standardized distribution pattern data 35, and data of the neural network 36, which will be described later.
The A/D converter 23 is configured to include a general-purpose A/D converter. The data registration unit 24 is configured to include a field programmable gate array (FPGA). A function of the data registration unit 24 will be described later. The transmitter 25 is configured to include, for example, a network interface card (NIC), and transmits the determination result of the partial discharge determination by the partial discharge determination apparatus 4 to the cable degradation monitoring apparatus 5 (
As illustrated in
A partial discharge pulse signal SG2 including each partial discharge pulse PL generated in the underground power transmission cable 2 as illustrated in the uppermost stage of
The data registration unit 24 extracts each partial discharge pulse PL included in the partial discharge pulse signal SG2, and acquires a digital value of each partial discharge pulse PL as a charge quantity of the partial discharge pulse PL. For each partial discharge pulse PL, the data registration unit 24 acquires a phase angle (hereinafter, this is referred to as a phase angle or an occurrence phase angle of the partial discharge pulse PL) of the applied voltage signal SG1 at a time point when the partial discharge pulse PL is generated. As will be described later, the phase angle of the partial discharge pulse PL acquired by the data registration unit 24 at this time is a phase angle (hereinafter, this is referred to as a standardized phase angle) obtained by standardizing 0 degrees to 360 degrees to an integer value of 0 to 15. Then, the data registration unit 24 stores the charge quantity and the standardized phase angle of each partial discharge pulse PL acquired in this manner in the storage device 22 (
Based on the partial discharge data 34 of each partial discharge pulse PL stored in the storage device 22, the distribution pattern generation unit 40 sequentially generates a standardized phase-resolved partial discharge pattern T′ to be described later with respect to
The standardized distribution pattern data 35 of the current standardized phase-resolved partial discharge pattern T′ stored in the storage device 22 is then read by the AI unit 42. Furthermore, at this time, the differential data generation unit 41 reads the standardized distribution pattern data 35 of the current standardized phase-resolved partial discharge pattern T′ and the standardized distribution pattern data 35 of the previous standardized phase-resolved partial discharge pattern T′ stored in the storage device 22, generates differential data representing a difference between the previous and current standardized phase-resolved partial discharge patterns T′ based on these two pieces of standardized distribution pattern data 35, and outputs the generated differential data to the AI unit 42.
Based on the standardized distribution pattern data of the current standardized phase-resolved partial discharge pattern T′ and the differential data of the previous and current standardized phase-resolved partial discharge patterns T′, the AI unit 42 performs machine learning to determine whether a degree of the progress of the partial discharge of the current target underground power transmission cable 2 belongs to the category at the start of the partial discharge, the middle stage of the partial discharge, or immediately before the dielectric breakdown.
Here,
As described above, the phase-resolved partial discharge pattern T gradually changes from the initial stage of the partial discharge to immediately before the dielectric breakdown. Specifically, as the degradation of the underground power transmission cable 2 due to the partial discharge progresses, the number of places where the partial discharge occurs increases as described above, and the charge quantity of the partial discharge also increases.
Therefore, it is considered that the temporal variation of the partial discharge occurring in the target underground power transmission cable 2 can be detected based on the difference between the plurality of phase-resolved partial discharge patterns T acquired continuously in time, and the determination accuracy of the partial discharge determination can be improved by using the variation amount as one of the determination elements of the degree of progress of the partial discharge.
Therefore, in the present embodiment, as described above, based on the standardized distribution pattern data of the current standardized phase-resolved partial discharge pattern T′ and the differential data of the previous and current standardized phase-resolved partial discharge patterns T′, the machine learning to the degree of the progress of the partial discharge of the current target underground power transmission cable 2. In addition, the AI unit 42 determines the degree of progress of the partial discharge in the target underground power transmission cable 2 using the neural network 36 obtained by the machine learning, and outputs the determination result to the transmission frame generation unit 43.
The transmission frame generation unit 43 generates a transmission frame in a predetermined format storing the determination result given from the AI unit 42, and outputs the generated frame to the transmitter 25. Thus, the transmitter 25 transmits the transmission frame provided from the transmission frame generation unit 43 as a partial discharge determination signal to the cable degradation monitoring apparatus 5 (
Specifically, the distribution pattern generation unit 40 first sets a range (hereinafter, this is referred to as a window) 50 including all the points representing the partial discharge pulse PL in
Next, the distribution pattern generation unit 40 equally divides each of the longitudinal direction and the lateral direction of the window 50 in
In the lateral direction of
Next, the distribution pattern generation unit 40 standardizes the charge quantity of each target partial discharge pulse PL to an integer value of 0 to 15. Then, for each partial discharge pulse PL, the distribution pattern generation unit 40 counts up a partial discharge pulse counter of the cell 51 corresponding to a combination of the standardized charge quantity (standardized charge quantity) and the standardized phase angle generated by the distribution pattern generation unit 40. As a result, the number (hereinafter, this is referred to as the number of partial discharge pulses) sqc of the corresponding partial discharge pulses PL is counted for each cell 51.
In
The charge quantity of the partial discharge pulse PL can be standardized as follows.
[Equation 1]
qmax=max(pqmax, −nqmax) (1); and
the following equation:
[Equation 2]
sq=int(16×(q+qmax)/(2×qmax)) (2).
Equation (1) represents that the larger one of the absolute values of the maximum value pqmax of the positive charge quantity of the partial discharge pulse PL and the maximum value nqmax of the negative charge quantity is referred to as qmax. In addition, Equation (2) represents that the charge quantity q is converted so as to always have a positive value by adding qmax to the charge quantity q of the partial discharge pulse PL, the addition result is then divided by twice qmax (that is, the vertical length of the window in
On the other hand,
The distribution (hereinafter, this is referred to as a partial discharge occurrence number difference absolute value distribution) 52 of the partial discharge occurrence number difference absolute value between the previous and current standardized phase-resolved partial discharge patterns T1′ and T2′ calculated in this way represents a difference between the previous standardized phase-resolved partial discharge pattern T1′ and the current standardized phase-resolved partial discharge pattern T2′. The difference between the charge quantities in the two phase-resolved partial discharge patterns T is reflected in the value of the cell 53 in the vertical direction, and the difference between the phase angles is reflected in the value of the cell 53 in the horizontal direction. As a result, the degree of variation in the charge quantity of the partial discharge pulse PL and the degree of variation in the occurrence phase angle can be recognized based on the standardized partial discharge occurrence number difference absolute value distribution patterns T1′ and T2′.
In the neural network 36, a first unit 60A corresponding to each cell 51 of the standardized partial discharge occurrence number difference absolute value distribution pattern T′ described above with reference to
In the neural network 36, a first unit 60B corresponding to each cell 53 (refer to
The hidden layer is provided with a smaller number of second units 61 than the total number of first units 60A and 60B in the input layer. The value input to each of the first units 60A and 60B of the input layer is weighted by the weight set between each of the first units 60A and 60B and each of the second units 61, and is output to each of the second units 61. Each second unit 61 calculates a sum of input values from each of the first units 60A and 60B.
The output layer is provided with a smaller number of third units 62 than the total number of second units 61. The sum of the input values to the second unit calculated in each of the second units 61 of the hidden layer is weighted by the weight set between the second unit 61 and each of the third units 62 and is output to each of the third units 62. Each of the third units 62 calculates a sum of input values from each of the second units 61, and outputs a calculation result.
Note that, in the present embodiment, three third units 62 of the output layer are provided, and thereby inputs to the input layer are classified into three categories and output from the neural network 36. Then, the output of the neural network 36 is transmitted as a partial discharge determination signal to the cable degradation monitoring apparatus 5 (
Next, specific processing contents of various types of processes executed in the partial discharge determination apparatus 4 based on the partial discharge determination function will be described.
When the partial discharge determination apparatus 4 is activated, the data registration unit 24 starts the process of registering the partial discharge pulse information as illustrated in
Subsequently, the data registration unit 24 determines whether the applied voltage of the electricity flowing through the underground power transmission cable 2 has changed from negative to positive based on the applied voltage signal SG1 (
On the other hand, when an affirmative result is obtained in the determination in step S2, the data registration unit 24 determines whether the count value cc of the cycle counter is less than 50 (S3). Then, when an affirmative result is obtained in this determination, the data registration unit 24 increments the counter value cc of the cycle counter (increments by 1), and clears (resets) a timer (not illustrated) that counts a clock of 1 MHz used as a counter (hereinafter, this is referred to as a phase angle counter) of the occurrence phase angle of the partial discharge pulse PL (S4).
Next, the data registration unit 24 monitors the partial discharge pulse signal SG2 (
Specifically, in step S6, the data registration unit 24 first acquires the value of the timer at the moment when the partial discharge pulse PL is detected as the count value dc of the phase angle counter, and increments the count value qc of the partial discharge pulse counter. Thereafter, the data registration unit 24 acquires a digital value of the partial discharge pulse signal SG2 provided from the A/D converter 23 (
Thereafter, the data registration unit 24 returns to step S1, and thereafter, repeats the processes after step S1 in the same manner as described above.
In practice, the distribution pattern generation unit 40 starts the process of standardizing the partial discharge pulse charge quantity at the timing when a negative result is obtained in step S3 of
Subsequently, the distribution pattern generation unit 40 increments the count value i of the loop counter, substitutes the absolute value of the charge quantity q [i] of the i-th detected partial discharge pulse PL in the target partial discharge pulse group (an aggregate of the partial discharge pulses detected in the previous process of registering the partial discharge pulse information, hereinafter, referred to as a target partial discharge pulse group) at that time into the charge quantity q0 (S11), and determines whether or not the value of the charge quantity q0 at this time is larger than the current charge quantity maximum absolute value qmax (S12).
If a negative result is obtained in this determination, the distribution pattern generation unit 40 proceeds to step S14. On the other hand, when obtaining an affirmative result in the determination of step S12, the distribution pattern generation unit 40 updates the value of the maximum absolute value of the charge quantity to the value of the charge quantity q0 (S13).
Thereafter, the distribution pattern generation unit 40 determines whether or not the value of the count value i of the loop counter has become the count value qc of the partial discharge pulse counter finally obtained in step S6 of
Then, when a negative result is obtained in this determination, the distribution pattern generation unit 40 returns to step S12, and thereafter, repeats the processes of steps S12 to S14 until an affirmative result is obtained in step S14. By this repetitive processing, the charge quantity of the partial discharge pulse PL having the largest absolute value of the charge quantity among the partial discharge pulses PL constituting the target partial discharge pulse group is set to the value of the maximum absolute value qmax of the charge quantity.
Then, when obtaining the affirmative result in step S14 by finishing the processes in steps S12 to S13 for all the partial discharge pulses PL constituting the target partial discharge pulse group in due course, the distribution pattern generation unit 40 resets the count value i of the loop counter (S15).
Subsequently, after incrementing the count value i of the loop counter, the distribution pattern generation unit 40 calculates a standardized charge quantity sq [i] obtained by standardizing the charge quantity q [i] of the i-th detected partial discharge pulse PL in the target partial discharge pulse group by the above-described Equation (2) (S16).
Next, the distribution pattern generation unit 40 determines whether or not the count value i of the loop counter has become the count value qc of the partial discharge pulse counter finally obtained in step S6 of
When a negative result is obtained in this determination, the distribution pattern generation unit 40 returns to step S16, and thereafter repeats a loop of steps S16-S17-S16 until an affirmative result is obtained in step S17. By this repetitive processing, the standardized charge quantity sq of each partial discharge pulse PL constituting the target partial discharge pulse group is calculated.
Then, when obtaining the affirmative result in step S17 by finishing the calculation of the standardized charge quantity sq of all the partial discharge pulses PL constituting the target partial discharge pulse group in due course, the distribution pattern generation unit 40 finishes the process of standardizing the partial discharge pulse charge quantity.
In practice, when starting the process of initializing the counter, the distribution pattern generation unit 40 first resets (sets to 0) the count value i of the first loop counter associated with the standardized charge quantity (standardized charge quantity sq) (S20), and resets the count value j of the second loop counter associated with the standardized phase angle (standardized phase angle sd) (S21).
Subsequently, the distribution pattern generation unit 40 resets the value of the count value sqc of the partial discharge pulse counter of the cell 51 in which the value of the standardized charge quantity sq matches the count value i of the first loop counter at that time and the value of the standardized phase angle sd matches the count value j of the second loop counter at that time to 0, and increments the count value j of the second loop counter (S22).
Next, the distribution pattern generation unit 40 determines whether or not the value of the count value j of the second loop counter is less than 15 (S23). When the affirmative result is obtained in this determination, the distribution pattern generation unit 40 returns to step S22, and then repeats the loop of steps S22-S23-S22.
When obtaining the negative result in step S23 by finishing resetting the count values sqc of the partial discharge pulse counters of all the cells 51 in which the value of the standardized phase angle sd is 0 in due course, the distribution pattern generation unit 40 increments the count value i of the first loop counter (S24), and thereafter, determines whether or not the count value i is less than 15 (S25).
When the affirmative result is obtained in this determination, the distribution pattern generation unit 40 returns to step S21, and then repeats the loop of steps S21 to S25. Then, when obtaining the negative result in step S25 by finishing resetting the count value sqc of the partial discharge pulse counter of all the cells 51 in due course, the distribution pattern generation unit 50 finishes the process of initializing counter.
In practice, the distribution pattern generation unit 40 first resets the value of the count value i of the loop counter (S30), then increments the value of the count value i, and substitutes the standardized charge quantity sq [i] of the i-th detected partial discharge pulse PL among the partial discharge pulses PL constituting the target partial discharge pulse group into the standardized charge quantity sq0 (S31).
Subsequently, the distribution pattern generation unit 40 determines whether or not the value of the standardized charge quantity sq0 is 16 (S32). If a negative result is obtained in this determination, the distribution pattern generation unit 40 proceeds to step S34. On the other hand, when the affirmative result is obtained in the determination of step S32, the distribution pattern generation unit 40 changes the value of the standardized charge quantity sq0 to 15 (S33).
Next, the distribution pattern generation unit 40 substitutes the standardized phase angle sd[i] of the i-th detected partial discharge pulse PL among the partial discharge pulses PL constituting the target partial discharge pulse group into the standardized phase angle sd0, and increments the count values sqc [sq0] [sd0] of the partial discharge pulse counter of the cell 51 (
Next, the distribution pattern generation unit 40 determines whether or not the count value i of the loop counter matches the count value qc of the partial discharge pulse counter finally obtained in step S6 of
When a negative result is obtained in this determination, the distribution pattern generation unit 40 returns to step S31, and thereafter, repeats the processes of steps S31 to S35 until an affirmative result is obtained in step S35. By this repetitive processing, the count value sqc of the standardized partial discharge pulse number counter of the cell 51 for each partial discharge pulse PL constituting the target partial discharge pulse group is counted up.
When obtaining the affirmative result in step S35 by finishing the process in step S34 for all the partial discharge pulses PL constituting the target partial discharge pulse group in due course, the distribution pattern generation unit 40 finishes the process of aggregating partial discharge pulse.
As described above, in the partial discharge determination apparatus 4 of the present embodiment, the current standardized phase-resolved partial discharge pattern T′ is classified into the category according to the degree of progress of the partial discharge in the underground power transmission cable 2 using the differential data between the previous and current standardized phase-resolved partial discharge patterns T′ in addition to the data of the current phase-resolved partial discharge pattern T.
Therefore, according to the present partial discharge determination apparatus 4, the information indicating the variation in the charge quantity and the occurrence phase angle of the partial discharge is included as the determination element, the current standardized phase-resolved partial discharge pattern T′ can be classified into the category according to the degree of progress of the partial discharge of the underground power transmission cable 2, and based on this, the degradation diagnosis of the underground power transmission cable 2 can be performed. Therefore, the diagnosis can be performed with higher accuracy as compared with the case of performing the diagnosis based only on the distribution pattern of the charge quantity and the phase angle of the partial discharge pulse PL.
In
A differential data generation unit 70 according to the present embodiment is different from the differential data generation unit 41 according to the first embodiment in that differential data is calculated using not only the previous and current standardized phase-resolved partial discharge patterns T1′ and T2′ but also a next-to-last standardized phase-resolved partial discharge pattern T0′.
In practice, the differential data generation unit 70 of the present embodiment calculates the partial discharge occurrence number difference absolute value for each of the cells 51 in the next-to-last and previous standardized phase-resolved partial discharge patterns T0′ and T1′, thereby acquiring the distribution (hereinafter, this is referred to as a first partial discharge occurrence number difference absolute value distribution) 71A of the partial discharge occurrence number difference absolute value between the next-to-last and previous standardized phase-resolved partial discharge patterns T0′ and T1′.
In addition, the differential data generation unit 70 of the present embodiment calculates the standardized partial discharge occurrence number difference absolute value for each of the cells 51 in the previous and current standardized phase-resolved partial discharge patterns T1′ and T2′, thereby acquiring the distribution (hereinafter, this is referred to as a second partial discharge occurrence number difference absolute value distribution) 71B of the partial discharge occurrence number difference absolute value between the previous and current standardized phase-resolved partial discharge patterns T1′ and T2′.
Then, the differential data generation unit 70 adds the partial discharge occurrence number difference absolute value of each cell 72A in the first partial discharge occurrence number difference absolute value distribution 71A acquired as described above and the partial discharge occurrence number difference absolute value of each cell 72B in the second standardized partial discharge occurrence number difference absolute value distribution 71B for each of the corresponding cells 72A and 72B to generate one partial discharge occurrence number difference absolute value distribution 73, and outputs data of the generated partial discharge occurrence number difference absolute value distribution 73 to the neural network 36 described above with reference to
By using such a differential data generation unit 70 of the present embodiment, it is possible to obtain the partial discharge occurrence number difference absolute value distribution 73 in which the temporal variation of the partial discharge is more emphasized as compared with the partial discharge occurrence number difference absolute value distribution 52 of the first embodiment described above with reference to
In
The differential data generation unit 80 is different from the differential data generation unit 41 of the first embodiment in that the sum of the partial discharge occurrence number for each standardized charge quantity and for each standardized phase angle of the partial discharge occurrence number difference absolute value distribution 52 obtained based on the previous and current standardized phase-resolved partial discharge patterns T1′ and T2′ is calculated.
In practice, similarly to the differential data generation unit 41 of the first embodiment, the differential data generation unit 80 of the present embodiment calculates the partial discharge occurrence number difference absolute value for each of the cells 51 in the previous and current standardized phase-resolved partial discharge patterns T1′ and T2′, thereby acquiring the distribution (standardized partial discharge occurrence number difference absolute value distribution) 52 of the partial discharge occurrence number difference absolute value between the previous and current standardized phase-resolved partial discharge patterns T1′ and T2′.
Then, the differential data generation unit 80 performs sum calculation of adding all the partial discharge occurrence number difference absolute values of the respective cells 53 (all the cells 53 of the row) of the standardized charge quantity for each of the same standardized charge quantities (that is, for each of the same rows) of the partial discharge occurrence number difference absolute value distribution 52 (block of “sum calculation by charge quantity” in
In addition, the differential data generation unit 80 performs sum calculation of adding all the partial discharge occurrence number difference absolute values of the respective cells 53 (all the cells 53 of the column) of the standardized phase angle for each of the same standardized phase angles (that is, for each of the same columns) of the partial discharge occurrence number difference absolute value distribution 52 (block of “sum calculation by phase angle” in
On the other hand,
In the neural network 81, the first unit 82A corresponding to each cell 53 (
In the input layer of the neural network 81, first units 82B each corresponding to the standardized charge quantity are also provided in the input layer, and the sum SUM1 of partial discharge occurrence number difference absolute values for each charge quantity of the corresponding standardized charge quantity is input to these first units 82B. In addition, in the input layer of the neural network 81, first units 82C each corresponding to the standardized phase angle are also provided in the input layer, and the sum SUM2 of partial discharge occurrence number difference absolute values for each phase angle of the corresponding standardized phase angle is input to these first units 82C.
The hidden layer is provided with a smaller number of second units 83 than the total number of first units 82A and 82C in the input layer. The value input to each of the first units 82A to 82C of the input layer is weighted by a preset weight on a line connecting each of the first units 82A to 82C and the corresponding second unit 83 of the hidden layer, and is output to the second unit 83. Each second unit 83 calculates a sum of input values from each first units 82A to 82C.
The output layer is provided with a smaller number of third units 84 than the total number of second units 83. The sum of the input values to that second unit 83 respectively calculated in each second unit 83 of the hidden layer is weighted by a preset weight on a line connecting that second unit 83 and the corresponding third unit 84 of the output layer, and is output to the third unit 84. Each of the third units 84 calculates a sum of input values from each of the second units 83, and outputs a calculation result.
Note that, in the present embodiment, three third units 84 of the output layer are provided, and thereby inputs to the input layer are classified into three categories and output from the neural network 81. Then, the output of the neural network 81 is transmitted as a partial discharge determination signal to the cable degradation monitoring apparatus 5 (
According to the partial discharge determination apparatus of the present embodiment using the differential data generation unit 70 and the neural network 81 described above, the amount of computation of the differential data generation unit 70 can be reduced as compared with the partial discharge determination apparatus 4 according to the first embodiment. Therefore, in addition to the effect obtained by the first embodiment, it is possible to obtain an effect that the processing time can be shortened.
In
The differential data generation unit 90 is different from the differential data generation unit 70 of the second embodiment in that the sum of the partial discharge occurrence number for each standardized charge quantity (standardized charge quantity) and for each standardized phase angle (standardized phase angle) of the partial discharge occurrence number difference absolute value distribution 73 obtained based on three of the next-to-last, previous, and current standardized phase-resolved partial discharge patterns T0′ to T2′ is calculated.
In practice, the differential data generation unit 90 of the present embodiment calculates the partial discharge occurrence number difference absolute value for each of the cells 51 in the next-to-last and previous standardized phase-resolved partial discharge patterns T0′ and T1′, thereby acquiring the distribution (first standardized partial discharge occurrence number difference absolute value distribution) 71A of the partial discharge occurrence number difference absolute value between the next-to-last and previous standardized phase-resolved partial discharge patterns T0′ and T1′.
In addition, the differential data generation unit 90 of the present embodiment calculates the partial discharge occurrence number difference absolute value for each of the cells 51 in the previous and current standardized phase-resolved partial discharge patterns T1′ and T2′, thereby acquiring the distribution (second standardized partial discharge occurrence number difference absolute value distribution) 71B of the partial discharge occurrence number difference absolute value between the previous and current standardized phase-resolved partial discharge patterns T1′ and T2′.
Then, the differential data generation unit 90 adds the partial discharge occurrence number difference absolute value of each cell 72A in the first partial discharge occurrence number difference absolute value distribution 71A acquired as described above and the partial discharge occurrence number difference absolute value of each cell 72B in the second partial discharge occurrence number difference absolute value distribution 71B for each of the corresponding cells 72A and 72B to generate one partial discharge occurrence number difference absolute value distribution 73.
In addition, the differential data generation unit 80 performs sum calculation of adding all the partial discharge occurrence number difference absolute values of the respective cells 53 (all the cells 53 of the row) of the standardized charge quantity for each of the same standardized charge quantities (that is, for each of the same rows) of the partial discharge occurrence number difference absolute value distribution 52 (block of “sum calculation by charge quantity” in
Further, the differential data generation unit 80 performs sum calculation of adding all the partial discharge occurrence number difference absolute values of the respective cells 53 (all the cells 53 of the column) of the standardized phase angle for each of the same standardized phase angles (that is, for each of the same columns) of the partial discharge occurrence number difference absolute value distribution 52 (block of “sum calculation by phase angle” in
Note that the configuration of the neural network according to the present embodiment is similar to that of the neural network 81 according to the third embodiment described above with reference to
According to the partial discharge determination apparatus of the present embodiment using the differential data generation unit 90 and the neural network 81 described above, in addition to the effects obtained by the first and second embodiments, it is possible to obtain an effect of shortening the processing time as in the third embodiment.
In the first to fourth embodiments, the case where the present invention is applied to the partial discharge determination apparatus 4 in which the determination target of the degree of progress of the partial discharge is the underground power transmission cable 2 has been described; however, the present invention is not limited thereto, and can be widely applied to various partial determination apparatuses that determine the degree of progress of the partial discharge of the power transmission cable other than the underground power transmission cable 2.
In the first to fourth embodiments described above, the case where the data registration unit 24 is configured by the FPGA has been described; however, the present invention is not limited thereto, and the data registration unit 24 may be configured as a functional unit of a software configuration embodied by the CPU 20 executing a corresponding program.
Furthermore, in the first to fourth embodiments described above, the case where the charge quantity and the occurrence phase angle are standardized using the data of the partial discharge pulse PL occurring in the period of 50 cycles of the applied voltage of the target underground power transmission cable 2 as one lump has been described; however, the present invention is not limited thereto, and the charge quantity and the occurrence phase angle may be standardized using the data of the partial discharge pulse PL occurring in one or a plurality of cycle periods other than the period of 50 cycles as one lump.
In the first to fourth embodiments, the case where the partial discharge occurrence number difference absolute value distributions 52 and 73 are generated based on the latest two or three standardized phase-resolved partial discharge patterns T′ has been described; however, the present invention is not limited thereto, and the partial discharge occurrence number difference absolute value distributions 52 and 73 may be generated based on the latest four or more standardized phase-resolved partial discharge patterns T′.
Furthermore, in the first to fourth embodiments described above, the case where the AI unit 42 performs machine learning as to whether or not the current degree of progress of the partial discharge of the target underground power transmission cable 2 belongs to a category at the start of the partial discharge, the middle stage of the partial discharge, or immediately before the dielectric breakdown, and determines the degree of progress of the partial discharge in the target underground power transmission cable 2 using the neural networks 36 and 81 obtained by the learning has been described; however, the present invention is not limited thereto, and the neural networks 36 and 81 already created by the machine learning may be provided to the AI unit 42, and the AI unit 42 may determine the degree of progress of the partial discharge in the target underground power transmission cable 2 using the neural networks 36 and 81.
The present invention can be widely applied to various partial discharge determination apparatus that determine a degree of progress of partial discharge occurring in a power transmission cable.
Number | Date | Country | Kind |
---|---|---|---|
2019-158281 | Aug 2019 | JP | national |
Filing Document | Filing Date | Country | Kind |
---|---|---|---|
PCT/JP2020/017567 | 4/23/2020 | WO | 00 |