CN107733089A - A kind of transformer station's disconnecting link secondary circuit failure Forecasting Methodology based on SVM - Google Patents

A kind of transformer station's disconnecting link secondary circuit failure Forecasting Methodology based on SVM Download PDF

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CN107733089A
CN107733089A CN201711103650.9A CN201711103650A CN107733089A CN 107733089 A CN107733089 A CN 107733089A CN 201711103650 A CN201711103650 A CN 201711103650A CN 107733089 A CN107733089 A CN 107733089A
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mrow
msub
data
svm
disconnecting link
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陈晶腾
陈帅
卓文兴
蒋雷震
刘烁洁
肖颂勇
林啸
蔡方伟
陈敏
陈芳
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State Grid Fujian Electric Power Co Ltd
Putian Power Supply Co of State Grid Fujian Electric Power Co Ltd
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State Grid Corp of China SGCC
State Grid Fujian Electric Power Co Ltd
Putian Power Supply Co of State Grid Fujian Electric Power Co Ltd
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Publication of CN107733089A publication Critical patent/CN107733089A/en
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    • H02J13/0003
    • H02J13/0006
    • YGENERAL 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
    • Y02TECHNOLOGIES OR APPLICATIONS FOR MITIGATION OR ADAPTATION AGAINST CLIMATE CHANGE
    • Y02EREDUCTION OF GREENHOUSE GAS [GHG] EMISSIONS, RELATED TO ENERGY GENERATION, TRANSMISSION OR DISTRIBUTION
    • Y02E60/00Enabling technologies; Technologies with a potential or indirect contribution to GHG emissions mitigation
    • YGENERAL 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
    • Y04INFORMATION OR COMMUNICATION TECHNOLOGIES HAVING AN IMPACT ON OTHER TECHNOLOGY AREAS
    • Y04SSYSTEMS INTEGRATING TECHNOLOGIES RELATED TO POWER NETWORK OPERATION, COMMUNICATION OR INFORMATION TECHNOLOGIES FOR IMPROVING THE ELECTRICAL POWER GENERATION, TRANSMISSION, DISTRIBUTION, MANAGEMENT OR USAGE, i.e. SMART GRIDS
    • Y04S10/00Systems supporting electrical power generation, transmission or distribution
    • Y04S10/16Electric power substations

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Abstract

The invention provides a kind of transformer station's disconnecting link secondary circuit failure Forecasting Methodology based on SVM, comprise the following steps:Step 1:Arrange data source;Step 2:Pretreatment is carried out to above-mentioned data source and obtains consistent monotonicity, and normalizing makes number range be in [0,1];Step 3:After obtaining normalized numerical value by step 2, with reference to the training sample (x of historical data compositioni,yi), training sample (xi,yi) pass through the calculating of function train svm in SVM tool boxes, you can deviation b and Lagrange coefficient α are obtained, draws forecast model:Step 5:The forecast model trained with historical data carries out disconnecting link secondary circuit failure prediction, exports and thinks normal operation for 1, if output thinks failure be present for+1, you can carry out malfunction elimination in advance with reference to power failure plan.

Description

A kind of transformer station's disconnecting link secondary circuit failure Forecasting Methodology based on SVM
Technical field
The present invention relates to automation mechanized operation field, more particularly to spreader bar automation paper feeding.
Background technology
Disconnecting switch in power system is disconnecting link, is the important electrical equipment of power system.Once generation transformer station knife Lock secondary circuit failure, it will there is disconnecting link and refuse to close, refuse phenomenon of grading, produce critical defect, not only influence to stop power transmission efficiency, The security risk of work is also add, porcelain vase may be caused to produce crack, or even fracture what is more, cause equipment fault to be tripped Serious consequence, influence power network normal operation.
However, because each component deterioration process of different disconnecting links is different, periodic inspection, periodic maintenance except increase safeguard into This, can not fundamentally solve outside maintenance workload and predict disconnecting link secondary circuit whether failure.At present, for becoming The disconnecting link secondary circuit failure that power station is widely used lacks a kind of effective Forecasting Methodology.
The content of the invention
It is a primary object of the present invention to overcome drawbacks described above of the prior art, a kind of transformer station based on SVM is proposed Disconnecting link secondary circuit failure Forecasting Methodology, its method is simply clear, is easy to calculate, it is easy to accomplish.
In order to solve above-mentioned technical problem, the invention provides a kind of transformer station's disconnecting link secondary circuit event based on SVM Hinder Forecasting Methodology, comprise the following steps:
Step 1:Arrange the 1. installation producer of disconnecting link account in export PMS account systems, 2. run the time limit, 3. maintenance time Number, 4. running environment, 5. power distribution equipment pattern, six big major influence factors of load condition are 6. undertaken as data source;
Step 2:To 1. installed in above-mentioned data source producer, 4. running environment, 5. power distribution equipment pattern pre-processes Consistent monotonicity is obtained, and normalizing makes number range be in [0,1];
Installation producer is pre-processed and normalization refers to:The actual event in this area under one's jurisdiction power network according to the installation producer Hinder quantity gi, with reference to related installation plant equipment sum C in PMS account systemsi, define producer health degree ηi
I=1 in formula, 2 ..., m, m be that equipment the installation producer quantity of failure occurred, and provide not occurring temporarily therefore The installation producer health degree of barrier is 0;
Pretreatment is carried out to running environment to refer to:The situation that equipment operates in outdoor environment is 1, operates in indoor environment Situation be 0;
Pretreatment is carried out to power distribution equipment pattern to refer to:It is 1 to provide AIS equipment, GIS device 0;
1. installation producer, 4. running environment, 5. power distribution equipment pattern obtains consistent dullness after above-mentioned pretreatment Property, numerical value is bigger, and fault rate is higher, and each data, which are normalized, further according to formula (2) makes number range be in [0,1];
I=1 in formula, 2 ..., n, i-th group of data is represented, j=1,2 ..., 6, represents jth dimension data, Iij、Ii'jRespectively Represent each influence factor numerical value and the numerical value after normalization after pretreatment;
Step 3:Selection uses radial direction base RBF functionsAs kernel function;
Step 4:After obtaining normalized numerical value by step 2, with reference to the training sample (x of historical data compositioni, yi), i=1,2 ..., n, represent i-th group of data, wherein yi∈ {+1, -1 };Training sample (xi,yi) by SVM tool boxes Function train-svm calculating, you can deviation b and Lagrange coefficient α are obtained, so as to draw the forecast model such as following formula:
X in formulaiFor training data, i=1,2 ..., n, n be training data group number, x is data to be predicted, and K is core letter Number,And training data and prediction data are 6 dimension data types;Adjusting parameter σ in formula It is set to 64.290;
Step 5:The forecast model trained with historical data carries out disconnecting link secondary circuit failure prediction, exports and recognizes for -1 For normal operation, think failure be present if exporting for+1, you can carry out malfunction elimination in advance with reference to power failure plan.
In a preferred embodiment:In step 4,
, will by hyperplane equation wx+b=0:Training sample (xi,yi) it is divided into two classes:
In above formula, w is vector, and the optimal hyperlane of SVMs is one and causes the maximum hyperplane of classifying edge, I.e. so thatMaximum, so solving optimal hyperlane, i.e. object function is
Above formula should meet constraints:yi(w·xi+ b) -1 >=0, i=1,2 ..., n.
According to Lagrange duality principle, above-mentioned object function equivalency transform is
α is Lagrange multiplier in formula, and T is matrix rotor, and it has following relation with w:
It is trained using above-mentioned training sample data.
Compared to prior art, technical scheme possesses following beneficial effect
A kind of transformer station's disconnecting link secondary circuit failure Forecasting Methodology based on SVM proposed by the present invention, can predict knife in advance Whether is lock secondary circuit health, and malfunction elimination is carried out in advance with reference to power failure plan, reduces disconnecting link catastrophic discontinuityfailure to grid switching operation Influence and the potential safety hazard come to the person, power network, equipment belt, greatly improve the safety operation level of power supply enterprise, improve and supply Electric reliability, there is huge Social benefit and economic benefit.
Embodiment
Below by way of embodiment, the invention will be further described.Specifically comprise the following steps:
1) the 1. installation producer of export disconnecting link account first, is arranged from PMS account systems, the time limit is 2. run, 3. overhauls Number, 4. running environment, 5. power distribution equipment pattern, six big major influence factors of load condition are 6. undertaken as training and test Data;
2) due to 1. install producer, 4. running environment, 5. there is particularity in the data of power distribution equipment pattern, need to carry out such as Lower pretreatment:
(1) producer is installed:According to the installation producer in this area under one's jurisdiction power network physical fault quantity gi, with reference to PMS accounts system Related installation plant equipment sum C in systemi, define producer health degree ηi
I=1 in formula, 2 ..., m, m be that equipment the installation producer quantity of failure occurred, and provide not occurring temporarily therefore The installation producer health degree of barrier is 0.It is apparent that health degree more levels off to 1, illustrate that fault rate is higher.
(2) running environment:Present invention provide that the situation of equipment operation out of doors is 1, situation indoors is 0, through endless Full statistics, the equipment failure rate run out of doors are relatively high;
(3) power distribution equipment pattern:Present invention provide that AIS equipment is 1, GIS device 0, through incomplete statistics, AIS equipment Fault rate is relatively high;
Consistent monotonicity is obtained after above-mentioned pretreatment, numerical value is bigger, and fault rate is higher, further according to formula (2) Each data, which are normalized, makes number range be in [0,1];
I=1 in formula, 2 ..., n, i-th group of data is represented, j=1,2 ..., 6, represents jth dimension data, Iij、Ii'jRespectively Represent each influence factor numerical value and the numerical value after normalization after pretreatment.
3) radial direction base RBF functions are used by experience and repeatedly test, selection for the selected of model parameter, the present invention As kernel function,
Adjusting parameter σ is set to 64.290 in formula;
4) it is understood that, SVMs be based on Statistical Learning Theory structure typical neutral net, it is by building Found an optimal separating hyper plane so that the distance between two class samples of the plane both sides maximize, so as to classification problem Good generalization ability is provided.After obtaining normalized numerical value by step 2), with reference to the training sample of historical data composition (xi,yi), i=1,2 ..., n, represent i-th group of data, wherein yi∈ {+1, -1 }.Then, hyperplane equation wx+b is passed through =0, sample is divided into two classes:
W is vector, and the optimal hyperlane of SVMs is one and causes the maximum hyperplane of classifying edge, that is, causesMaximum, so solving optimal hyperlane, i.e. object function is
Above formula should meet constraints:yi(w·xi+ b) -1 >=0, i=1,2 ..., n.
According to Lagrange duality principle, above-mentioned object function equivalency transform is
T is matrix rotor in formula, and α is Lagrange multiplier, and it has following relation with w:
It is trained using above-mentioned training sample data, passes through the calculating of function train-svm in SVM tool boxes, you can Deviation b and Lagrange coefficient α are obtained, and according to formula (7), w is obtained, so as to draw the forecast model such as following formula:
X in formulaiFor training data, i=1,2 ..., n, x be data to be predicted, K is kernel function, the present inventionAnd training data and prediction data are 6 dimension data types.
5) the forecast model formula (8) trained according to historical data, by letter in forecast sample data input SVM tool boxes Number predict-svm is calculated, and is completed the failure predication to disconnecting link secondary circuit, is exported and think normal operation for -1, if defeated It has and thinks failure be present for+1, you can carries out malfunction elimination in advance with reference to power failure plan.
Applicating example
According to certain districts and cities' corporate history running situation, 300 groups of training samples of export, 30 groups of test samples are arranged.Train sample 260 groups of normal condition in this, 40 groups of malfunction;25 groups of normal condition in test sample, 5 groups of malfunction.
The present invention is first according to step 1) -4) by above-mentioned training sample composing training collection it is { (x1,y1),(x2, y2),...,(x300,y300), wherein, xi∈R6,yi={ 1, -1 }, works as yiWhen=1, it is secondary to represent that i-th of sample has disconnecting link Loop fault, work as yiWhen=- 1, represent that i-th of sample disconnecting link secondary circuit is normal.Then, function in SVM tool boxes is passed through Forecast model traindata.model is calculated in train-svm, finally, combines forecast model according to step 5), will predict Function predict-svm calculates prediction result in sample data input SVM tool boxes, as shown in table 1 below.
The disconnecting link secondary circuit failure prediction result of table 1
Overall accuracy is the correct sample number of prediction and the ratio of total forecast sample number in upper table.And as shown in Table 1, should The accuracy that invention is predicted disconnecting link secondary circuit failure up to more than 90%, therefore to disconnecting link secondary circuit failure prediction be It is feasible, efficient.
The foregoing is only a preferred embodiment of the present invention, but protection scope of the present invention be not limited to This, any one skilled in the art the invention discloses technical scope in, the change that can readily occur in or replace Change, should all be included within the scope of the present invention.Therefore, protection scope of the present invention should be with the protection of claim Scope is defined.

Claims (2)

1. a kind of transformer station's disconnecting link secondary circuit failure Forecasting Methodology based on SVM, it is characterised in that comprise the following steps:
Step 1:The 1. installation producer of disconnecting link account in export PMS account systems is arranged, the time limit is 2. run, 3. overhauls number, 4. Running environment, 5. power distribution equipment pattern, six big major influence factors of load condition are 6. undertaken as data source;
Step 2:To 1. installed in above-mentioned data source producer, 4. running environment, 5. power distribution equipment pattern carry out pretreatment obtain one The monotonicity of cause, and normalizing makes number range be in [0,1];
Installation producer is pre-processed and normalization refers to:According to the installation producer in this area under one's jurisdiction power network physical fault quantity gi, with reference to related installation plant equipment sum C in PMS account systemsi, define producer health degree ηi
<mrow> <msub> <mi>&amp;eta;</mi> <mi>i</mi> </msub> <mo>=</mo> <mfrac> <msub> <mi>g</mi> <mi>i</mi> </msub> <msub> <mi>C</mi> <mi>i</mi> </msub> </mfrac> <mo>-</mo> <mo>-</mo> <mo>-</mo> <mrow> <mo>(</mo> <mn>1</mn> <mo>)</mo> </mrow> </mrow>
I=1 in formula, 2 ..., m, m be that equipment the installation producer quantity of failure occurred, and provide temporarily do not occurred the peace of failure It is 0 to fill producer's health degree;
Pretreatment is carried out to running environment to refer to:The situation that equipment operates in outdoor environment is 1, operates in the situation of indoor environment For 0;
Pretreatment is carried out to power distribution equipment pattern to refer to:It is 1 to provide AIS equipment, GIS device 0;
1. installation producer, 4. running environment, 5. power distribution equipment pattern obtains consistent monotonicity after above-mentioned pretreatment, number Value is bigger, and fault rate is higher, and each data, which are normalized, further according to formula (2) makes number range be in [0,1];
<mrow> <msubsup> <mi>I</mi> <mrow> <mi>i</mi> <mi>j</mi> </mrow> <mo>&amp;prime;</mo> </msubsup> <mo>=</mo> <mfrac> <mrow> <msub> <mi>I</mi> <mrow> <mi>i</mi> <mi>j</mi> </mrow> </msub> <mo>-</mo> <mi>min</mi> <mi> </mi> <msub> <mi>I</mi> <mi>j</mi> </msub> </mrow> <mrow> <mi>max</mi> <mi> </mi> <msub> <mi>I</mi> <mi>j</mi> </msub> <mo>-</mo> <mi>min</mi> <mi> </mi> <msub> <mi>I</mi> <mi>j</mi> </msub> </mrow> </mfrac> <mo>-</mo> <mo>-</mo> <mo>-</mo> <mrow> <mo>(</mo> <mn>2</mn> <mo>)</mo> </mrow> </mrow>
I=1 in formula, 2 ..., n, i-th group of data is represented, j=1,2 ..., 6, represents jth dimension data, Iij、I′ijRepresent respectively Each influence factor numerical value and the numerical value after normalization after pretreatment;
Step 3:Selection uses radial direction base RBF functionsAs kernel function, wherein adjustment ginseng Number σ is set to 64.290;
Step 4:After obtaining normalized numerical value by step 2, with reference to the training sample (x of historical data compositioni,yi), i= 1,2 ..., n, represent i-th group of data, wherein yi∈ {+1, -1 };Training sample (xi,yi) pass through function in SVM tool boxes Train-svm calculating, you can deviation b and Lagrange coefficient α are obtained, so as to draw the forecast model such as following formula:
<mrow> <mi>y</mi> <mrow> <mo>(</mo> <mi>x</mi> <mo>)</mo> </mrow> <mo>=</mo> <munderover> <mo>&amp;Sigma;</mo> <mrow> <mi>i</mi> <mo>=</mo> <mn>1</mn> </mrow> <mi>n</mi> </munderover> <msub> <mi>&amp;alpha;</mi> <mi>i</mi> </msub> <mi>K</mi> <mrow> <mo>(</mo> <mi>x</mi> <mo>,</mo> <msub> <mi>x</mi> <mi>i</mi> </msub> <mo>)</mo> </mrow> <mo>+</mo> <mi>b</mi> <mo>-</mo> <mo>-</mo> <mo>-</mo> <mrow> <mo>(</mo> <mn>3</mn> <mo>)</mo> </mrow> </mrow>
X in formulaiFor training data, i=1,2 ..., n, n be training data group number, x is data to be predicted, and K is kernel function,And training data and prediction data are 6 dimension data types;
Step 5:The forecast model trained with historical data carries out disconnecting link secondary circuit failure prediction, exports and thinks just for -1 Often operation, if output thinks failure be present for+1, you can carry out malfunction elimination in advance with reference to power failure plan.
2. a kind of transformer station's disconnecting link secondary circuit failure Forecasting Methodology based on SVM according to claim 1, its feature exist In:In step 4,
, will by hyperplane equation wx+b=0:Training sample (xi,yi) it is divided into two classes:
<mrow> <mfenced open = "{" close = ""> <mtable> <mtr> <mtd> <mrow> <mi>w</mi> <mo>&amp;CenterDot;</mo> <mi>x</mi> <mo>+</mo> <mi>b</mi> <mo>&amp;GreaterEqual;</mo> <mn>0</mn> <mo>,</mo> <mrow> <mo>(</mo> <mi>y</mi> <mo>=</mo> <mo>+</mo> <mn>1</mn> <mo>)</mo> </mrow> </mrow> </mtd> </mtr> <mtr> <mtd> <mrow> <mi>w</mi> <mo>&amp;CenterDot;</mo> <mi>x</mi> <mo>+</mo> <mi>b</mi> <mo>&amp;le;</mo> <mn>0</mn> <mo>,</mo> <mrow> <mo>(</mo> <mi>y</mi> <mo>=</mo> <mo>-</mo> <mn>1</mn> <mo>)</mo> </mrow> </mrow> </mtd> </mtr> </mtable> </mfenced> <mo>-</mo> <mo>-</mo> <mo>-</mo> <mrow> <mo>(</mo> <mn>4</mn> <mo>)</mo> </mrow> </mrow>
In above formula, w is vector;The optimal hyperlane of SVMs is a hyperplane for causing classifying edge maximum, even if Maximum, so solving optimal hyperlane, i.e. object function is
<mrow> <mi>m</mi> <mi>i</mi> <mi>n</mi> <mi>&amp;phi;</mi> <mrow> <mo>(</mo> <mi>w</mi> <mo>)</mo> </mrow> <mo>=</mo> <mfrac> <mn>1</mn> <mn>2</mn> </mfrac> <mo>|</mo> <mo>|</mo> <mi>w</mi> <mo>|</mo> <msup> <mo>|</mo> <mn>2</mn> </msup> <mo>-</mo> <mo>-</mo> <mo>-</mo> <mrow> <mo>(</mo> <mn>5</mn> <mo>)</mo> </mrow> </mrow>
Above formula should meet constraints:yi(w·xi+ b) -1 >=0, i=1,2 ..., n.
According to Lagrange duality principle, above-mentioned object function equivalency transform is
<mrow> <mi>m</mi> <mi>a</mi> <mi>x</mi> <mi>&amp;Gamma;</mi> <mrow> <mo>(</mo> <mi>w</mi> <mo>,</mo> <mi>b</mi> <mo>,</mo> <mi>&amp;alpha;</mi> <mo>)</mo> </mrow> <mo>=</mo> <mfrac> <mn>1</mn> <mn>2</mn> </mfrac> <mo>|</mo> <mo>|</mo> <mi>w</mi> <mo>|</mo> <msup> <mo>|</mo> <mn>2</mn> </msup> <mo>-</mo> <munderover> <mo>&amp;Sigma;</mo> <mrow> <mi>i</mi> <mo>=</mo> <mn>1</mn> </mrow> <mi>n</mi> </munderover> <msub> <mi>&amp;alpha;</mi> <mi>i</mi> </msub> <mrow> <mo>(</mo> <msub> <mi>y</mi> <mi>i</mi> </msub> <mo>(</mo> <mrow> <msup> <mi>w</mi> <mi>T</mi> </msup> <msub> <mi>x</mi> <mi>i</mi> </msub> <mo>+</mo> <mi>b</mi> </mrow> <mo>)</mo> <mo>-</mo> <mn>1</mn> <mo>)</mo> </mrow> <mo>-</mo> <mo>-</mo> <mo>-</mo> <mrow> <mo>(</mo> <mn>6</mn> <mo>)</mo> </mrow> </mrow>
α is Lagrange multiplier in formula, and T refers to matrix rotor, and it has following relation with w:
<mrow> <mi>w</mi> <mo>=</mo> <munderover> <mo>&amp;Sigma;</mo> <mrow> <mi>i</mi> <mo>=</mo> <mn>1</mn> </mrow> <mi>n</mi> </munderover> <mi>y</mi> <mrow> <mo>(</mo> <msub> <mi>x</mi> <mi>i</mi> </msub> <mo>)</mo> </mrow> <msub> <mi>x</mi> <mi>i</mi> </msub> <mo>-</mo> <mo>-</mo> <mo>-</mo> <mrow> <mo>(</mo> <mn>7</mn> <mo>)</mo> </mrow> </mrow>
It is trained using above-mentioned training sample data.
CN201711103650.9A 2017-11-10 2017-11-10 A kind of transformer station's disconnecting link secondary circuit failure Forecasting Methodology based on SVM Pending CN107733089A (en)

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CN110649597A (en) * 2019-09-06 2020-01-03 国网山东省电力公司寿光市供电公司 RBF neural network-based power distribution network feeder automation control method

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