CN105116850A - Pellet fuel consumption control method and device - Google Patents

Pellet fuel consumption control method and device Download PDF

Info

Publication number
CN105116850A
CN105116850A CN201510423408.4A CN201510423408A CN105116850A CN 105116850 A CN105116850 A CN 105116850A CN 201510423408 A CN201510423408 A CN 201510423408A CN 105116850 A CN105116850 A CN 105116850A
Authority
CN
China
Prior art keywords
weight
parameter preset
parameter
matrix
sigma
Prior art date
Legal status (The legal status is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the status listed.)
Granted
Application number
CN201510423408.4A
Other languages
Chinese (zh)
Other versions
CN105116850B (en
Inventor
曾辉
胡兵
李宗平
Current Assignee (The listed assignees may be inaccurate. Google has not performed a legal analysis and makes no representation or warranty as to the accuracy of the list.)
Zhongye Changtian International Engineering Co Ltd
Original Assignee
Zhongye Changtian International Engineering Co Ltd
Priority date (The priority date is an assumption and is not a legal conclusion. Google has not performed a legal analysis and makes no representation as to the accuracy of the date listed.)
Filing date
Publication date
Application filed by Zhongye Changtian International Engineering Co Ltd filed Critical Zhongye Changtian International Engineering Co Ltd
Priority to CN201510423408.4A priority Critical patent/CN105116850B/en
Publication of CN105116850A publication Critical patent/CN105116850A/en
Application granted granted Critical
Publication of CN105116850B publication Critical patent/CN105116850B/en
Active legal-status Critical Current
Anticipated expiration legal-status Critical

Links

Classifications

    • GPHYSICS
    • G05CONTROLLING; REGULATING
    • G05BCONTROL OR REGULATING SYSTEMS IN GENERAL; FUNCTIONAL ELEMENTS OF SUCH SYSTEMS; MONITORING OR TESTING ARRANGEMENTS FOR SUCH SYSTEMS OR ELEMENTS
    • G05B19/00Programme-control systems
    • G05B19/02Programme-control systems electric
    • G05B19/418Total factory control, i.e. centrally controlling a plurality of machines, e.g. direct or distributed numerical control [DNC], flexible manufacturing systems [FMS], integrated manufacturing systems [IMS] or computer integrated manufacturing [CIM]
    • G05B19/41875Total factory control, i.e. centrally controlling a plurality of machines, e.g. direct or distributed numerical control [DNC], flexible manufacturing systems [FMS], integrated manufacturing systems [IMS] or computer integrated manufacturing [CIM] characterised by quality surveillance of production
    • 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
    • Y02PCLIMATE CHANGE MITIGATION TECHNOLOGIES IN THE PRODUCTION OR PROCESSING OF GOODS
    • Y02P80/00Climate change mitigation technologies for sector-wide applications
    • Y02P80/10Efficient use of energy, e.g. using compressed air or pressurized fluid as energy carrier
    • 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
    • Y02PCLIMATE CHANGE MITIGATION TECHNOLOGIES IN THE PRODUCTION OR PROCESSING OF GOODS
    • Y02P90/00Enabling technologies with a potential contribution to greenhouse gas [GHG] emissions mitigation
    • Y02P90/02Total factory control, e.g. smart factories, flexible manufacturing systems [FMS] or integrated manufacturing systems [IMS]

Landscapes

  • Engineering & Computer Science (AREA)
  • General Engineering & Computer Science (AREA)
  • Manufacturing & Machinery (AREA)
  • Quality & Reliability (AREA)
  • Physics & Mathematics (AREA)
  • General Physics & Mathematics (AREA)
  • Automation & Control Theory (AREA)
  • Monitoring And Testing Of Nuclear Reactors (AREA)

Abstract

Embodiments of the invention provide a pellet fuel consumption control method and device. The method comprises selecting n parameters from pellet production process parameters, taking the n parameters as preset parameters, acquiring parameter values of the n preset parameters in real time, inputting the parameter values of the n preset parameters into a preset calculation model to obtain a needed fuel value, and adjusting a fuel usage amount in real time according to the needed fuel value. Through the preset established calculation model, effective control for pellet fuel consumption by means of adjustments of the some parameters is achieved, pellet production is optimized, and the energy consumption level is reduced.

Description

A kind of pelletizing burnup control method and device
Technical field
The present invention relates to acid pellet technology, particularly relate to a kind of pelletizing burnup control method and device.
Background technology
In steel and iron industry, iron ore acid pellet production technology is the developing direction of current optimization Bf Burden.The pelletizing produced needs when burning to consume the fuel such as a large amount of coal dusts or rock gas, in today that cost idea becomes more and more popular, reduces the problem needing to solve of standing in the breach that energy resource consumption has become each big steel company cost efficiency.
Usually, the production run of pelletizing determines the combustion process of pelletizing, but the pelletizing production procedure parameter affecting pelletizing fuel consumption is a lot, such as there are pelletizing production scale, operating rate, bentonite consumption, finished ball nodulizing FeO content, pelletizing finished product ore deposit basicity, pelletizing crushing strength etc., not yet have a kind of prior art that pelletizing production procedure parameter can be utilized effectively to control pelletizing fuel consumption at present.
Summary of the invention
For overcoming problems of the prior art, the invention provides a kind of pelletizing burnup control method and device, to realize utilizing pelletizing production procedure parameter to control effectively to pelletizing fuel consumption.
According to the first aspect of the embodiment of the present invention, provide a kind of pelletizing burnup control method, described method comprises:
Choose from pelletizing production procedure parameter wherein n parameter as parameter preset;
The parameter value of the parameter preset of n described in Real-time Collection;
The parameter value of a described n parameter preset is input in default computation model, obtains required fuel value;
According to the described required real-time fuel metering use amount of fuel value;
Wherein, described computation model is:
y = Σ j = 1 n w j y j
Y is described required fuel value, y jfor the relationship equation of a jth parameter preset and fuel consumption, w jfor y jweight.
Optionally, described w is obtained in the following way j:
Obtain m sample data of each parameter preset, form m * n matrix;
The first weight is obtained from described matrix according to compositive power coefficient method and entropy assessment;
The second weight is obtained according to the input of user;
Determine the scale-up factor of described first weight and the second weight;
Described first weight and described second weight are obtained w according to described scale-up factor addition j, j=1,2...n.
Optionally, w is obtained especially by such as under type j:
Obtain each parameter preset x im sample data, form m * n matrix X=(x ij) m × n, wherein x ij(i=1,2,3 ..., m; J=1,2,3 ..., n) be parameter preset x ia jth sample data;
Described matrix is changed according to following rule:
x i j = x i j j ∈ I 1 x j max - x i j j ∈ I 2 | x i j - x j * | j ∈ I 3
Wherein I 1={ requiring the smaller the better parameter preset }, I 2={ parameter preset that requirement is the bigger the better }, I 3={ requirement is stabilized in the parameter preset of ideal value };
Unify the order of magnitude of parameter preset and eliminate dimension, described matrix is carried out as down conversion:
x ij=100×(x ij-x jmin)/(x jmax-x jmin)(i=1,2,...,m;j=1,2,...,n)
Again described entry of a matrix element is calculated as follows:
x i j = x i j / Σ i = 1 m x i j
Pass through
h j = - ( ln m ) - 1 Σ i = 1 m x i j lnx i j
β j = ( 1 - h j ) / Σ k = 1 n ( 1 - h k )
Obtain the first weight beta=(β 1, β 2..., β n) t, wherein
The second weight α=(α is determined according to the input of user 1, α 2..., α n) t, wherein
Determine the scale-up factor μ of described first weight and the second weight, wherein 0≤μ < 1;
Pass through
w j=μα j+(1-μ)β j(j=1,2,...,n)
Obtain w j, wherein &Sigma; j = 1 n w j = 1 , w j &GreaterEqual; 0 ( j = 1 , 2 , ... , n ) .
Optionally, described y jobtain in the following way:
Correlation analysis is carried out to a jth parameter preset and fuel consumption, draws described relationship equation y by the method for curve j, j=1,2...n.
According to the second aspect of the embodiment of the present invention, provide a kind of pelletizing burn-up control assembly, described device comprises:
Select module, for choose from pelletizing production procedure parameter wherein n parameter as parameter preset;
Acquisition module, for the parameter value of the parameter preset of n described in Real-time Collection;
Computing module, for being input in default computation model by the parameter value of a described n parameter preset, obtains required fuel value;
Control module, for according to the described required real-time fuel metering use amount of fuel value;
Wherein, described computation model is:
y = &Sigma; j = 1 n w j y j
Y is described required fuel value, y jfor the relationship equation of a jth parameter preset and fuel consumption, w jfor y jweight.
Optionally, described w is obtained in the following way j:
Obtain m sample data of each parameter preset, form m * n matrix;
The first weight is obtained from described matrix according to compositive power coefficient method and entropy assessment;
The second weight is obtained according to the input of user;
Determine the scale-up factor of described first weight and the second weight;
Described first weight and described second weight are obtained w according to described scale-up factor addition j, j=1,2...n.
Optionally, w is obtained especially by such as under type j:
Obtain each parameter preset x im sample data, form m * n matrix X=(x ij) m × n, wherein x ij(i=1,2,3 ..., m; J=1,2,3 ..., n) be parameter preset x ia jth sample data;
Described matrix is changed according to following rule:
x i j = x i j j &Element; I 1 x j max - x i j j &Element; I 2 | x i j - x j * | j &Element; I 3
Wherein I 1={ requiring the smaller the better parameter preset }, I 2={ parameter preset that requirement is the bigger the better }, I 3={ requirement is stabilized in the parameter preset of ideal value };
Unify the order of magnitude of parameter preset and eliminate dimension, described matrix is carried out as down conversion:
x ij=100×(x ij-x jmin)/(x jmax-x jmin)(i=1,2,...,m;j=1,2,...,n)
Again described entry of a matrix element is calculated as follows:
x i j = x i j / &Sigma; i = 1 m x i j
Pass through
h j = - ( ln m ) - 1 &Sigma; i = 1 m x i j lnx i j
&beta; j = ( 1 - h j ) / &Sigma; k = 1 n ( 1 - h k )
Obtain the first weight beta=(β 1, β 2..., β n) t, wherein
The second weight α=(α is determined according to the input of user 1, α 2..., α n) t, wherein
Determine the scale-up factor μ of described first weight and the second weight, wherein 0≤μ < 1;
Pass through
w j=μα j+(1-μ)β j(j=1,2,...,n)
Obtain w j, wherein &Sigma; j = 1 n w j = 1 , w j &GreaterEqual; 0 ( j = 1 , 2 , ... , n ) .
Optionally, described y jobtain in the following way:
Correlation analysis is carried out to a jth parameter preset and fuel consumption, draws described relationship equation y by the device of curve j, j=1,2...n.
The technical scheme that embodiments of the invention provide can comprise following beneficial effect:
In embodiments of the present invention, by the computation model set up in advance, achieve and by some parameters of adjustment, pelletizing fuel consumption is control effectively, optimize pelletizing production, reduce energy consumption level.
Should be understood that, it is only exemplary and explanatory that above general description and details hereinafter describe, and can not limit the present invention.
Accompanying drawing explanation
Accompanying drawing to be herein merged in instructions and to form the part of this instructions, shows embodiment according to the invention, and is used from instructions one and explains principle of the present invention.
Fig. 1 is the process flow diagram of a kind of pelletizing burnup control method according to an exemplary embodiment;
Fig. 2 is the systematic schematic diagram according to an exemplary embodiment;
Fig. 3 is the process flow diagram of a kind of pelletizing burnup control method according to an exemplary embodiment;
Fig. 4 is the schematic diagram of a kind of pelletizing burn-up control assembly according to an exemplary embodiment.
Embodiment
Here will be described exemplary embodiment in detail, its sample table shows in the accompanying drawings.When description below relates to accompanying drawing, unless otherwise indicated, the same numbers in different accompanying drawing represents same or analogous key element.Embodiment described in following exemplary embodiment does not represent all embodiments consistent with the present invention.On the contrary, they only with as in appended claims describe in detail, the example of apparatus and method that aspects more of the present invention are consistent.
Fig. 1 is the process flow diagram of a kind of pelletizing burnup control method according to an exemplary embodiment.Shown in Figure 1, the method comprises:
S101, choose from pelletizing production procedure parameter wherein n parameter as parameter preset.Wherein n is natural number.
The parameter value of S102, n described in a Real-time Collection parameter preset.
S103, is input in default computation model by the parameter value of a described n parameter preset, obtains required fuel value.
S104, according to the described required real-time fuel metering use amount of fuel value.
Wherein, described computation model is:
y = &Sigma; j = 1 n w j y j
Y is described required fuel value, y jfor the relationship equation of a jth parameter preset and fuel consumption, w jfor y jweight.
Exemplarily, described y jcan obtain in the following way:
Correlation analysis is carried out to a jth parameter preset and fuel consumption, draws described relationship equation y by the method for curve j, j=1,2...n.
Pelletizing production procedure parameter (hereinafter referred to as candidate parameter) may have a lot, such as, have pelletizing production scale, operating rate, bentonite consumption, finished ball nodulizing FeO content, pelletizing finished product ore deposit basicity, pelletizing crushing strength etc.In order to screen, correlation research analysis can be carried out respectively to these candidate parameter and pelletizing fuel consumption, draw the relationship equation that each candidate parameter affects pelletizing fuel consumption.
If find that certain candidate parameter on the impact of pelletizing fuel consumption significantly, then join the row of parameter preset, and record the relationship equation y of this parameter and fuel consumption by this parameter jotherwise, then this candidate parameter is got rid of.
Fig. 2 is the systematic schematic diagram according to an exemplary embodiment.Shown in Figure 2:
Sampling unit: be responsible for the sampling to candidate parameter, for dependency analysis unit and model computing unit;
Dependency analysis unit: the sampled data reading each candidate parameter from database, candidate parameter and pelletizing fuel consumption are carried out correlation analysis, judged whether impact, whether impact is remarkable, according to influence degree, selected candidate parameter passed to Modeling Calculation unit as parameter preset;
Modeling Calculation unit: the sampled data reading each parameter preset from database, by compositive power coefficient method the parameter preset that dependency analysis unit is determined calculated and set up optimized mathematical model, model and model parameter are exported to Optimized model unit, Modeling Calculation unit constantly calculates sampled data, constantly update the model parameter in Optimized model, model is once set up, to not change, just according to the sampled data upgraded, recalculate model parameter, and upgrade Optimized model parameter;
Optimized model unit: model and model parameter calculate from Modeling Calculation unit, after model is set up, according to the tracking of Real-time Production Process parameter, calculating, assessment, according to calculate pelletizing fuel consumption y value, provide pelletizing fuel optimization standard, export to control module;
Control module: be responsible for the regulating and controlling to pelletizing fuel, pelletizing fuel optimization standard passed to controller, to complete the control to pelletizing injecting coal quantity and jet amount.
Shown in Figure 3, in the present embodiment or the present invention's some other embodiments, described w can be obtained in the following way j:
S301, obtains m sample data of each parameter preset, forms m * n matrix;
S302, obtains the first weight according to compositive power coefficient method and entropy assessment from described matrix;
S303, obtains the second weight according to the input of user;
S304, determines the scale-up factor of described first weight and the second weight;
S305, obtains w by described first weight and described second weight according to described scale-up factor addition j, j=1,2...n.
Further, in the present embodiment or the present invention's some other embodiments, specifically can as follows 1) ~ 8) obtain w j:
1) each parameter preset x is obtained im sample data, form m * n matrix X=(x ij) m × n, wherein x ij(i=1,2,3 ..., m; J=1,2,3 ..., n) be parameter preset x ia jth sample data.
Exemplarily, under certain scene, parameter preset comprises (i.e. x 1, x 2, x 3, x 4, x 5, x 6):
Tag_QTSCGM: (ten thousand t) for pelletizing plant's production scale;
Tag_ZYL: pelletizing plant's operating rate (%);
Tag_PRTYL: bentonitic clay use amount (kg/t pellet);
Tag_FeO: pelletizing finished product ore deposit FeO content (%);
Tag_R: pelletizing finished product ore deposit basicity (doubly);
Tag_KYQD: pelletizing crushing strength (N/).
The sample collected is as shown in table 1 below:
Table 1
The matrix then set up is
X = 75 48.01 9.57 0.28 0.05 2673 15.5 240 87.23 14.48 0.33 0.05 2683 15.3 158 73.07 18.6 1.4 0.19 2494 16.5 27 89.75 24.9 2.83 0.13 2088 44.1 111 87.72 23.25 2.35 0.09 2743 28.04 500 95.86 18.92 0.23 0.21 2584 26.5
2) described matrix is changed according to following rule:
x i j = x i j j &Element; I 1 x j max - x i j j &Element; I 2 | x i j - x j * | j &Element; I 3
Wherein I 1={ requiring the smaller the better parameter preset }, I 2={ parameter preset that requirement is the bigger the better }, I 3={ requirement is stabilized in the parameter preset of ideal value }.x jmin=min{x ij|j=1,2,...,n},x jmax=max{x ij|j=1,2,...,n}。
Example in undertaking, the matrix after conversion becomes
X = 425 47.85 9.57 0.28 0.12 70 15.5 260 8.63 14.48 0.33 0.12 60 15.3 342 22.79 18.6 1.4 0.02 249 16.5 473 6.11 24.9 2.83 0.04 655 44.1 389 8.14 23.25 2.35 0.08 0 28.04 0 0 18.92 0.23 0.04 159 26.5
3) unify the order of magnitude of parameter preset and eliminate dimension, described matrix is carried out as down conversion:
x ij=100×(x ij-x jmin)/(x jmax-x jmin)(i=1,2,...,m;j=1,2,...,n)。
Example in undertaking, the matrix after conversion becomes
X = 89.85 100.00 0.00 1.92 100.00 10.69 0.69 54.97 18.04 32.03 3.85 100.00 9.16 0.00 72.30 47.63 58.90 45.00 0.00 38.02 4.17 100.00 12.77 100.00 100.00 20.00 100.00 100.00 82.24 17.01 89.24 81.54 60.00 0.00 44.24 0.00 0.00 60.99 0.00 20.00 24.27 38.89
4) described entry of a matrix element is calculated as follows:
x i j = x i j / &Sigma; i = 1 m x i j .
Example in undertaking, is obtained by formula above
X = 0.22 0.51 0.00 0.01 0.33 0.06 0.00 0.14 0.09 0.09 0.02 0.33 0.05 0.00 0.18 0.24 0.17 0.19 0.00 0.21 0.02 0.25 0.07 0.29 0.43 0.07 0.55 0.53 0.21 0.09 0.26 0.35 0.20 0.00 0.24 0.00 0.00 0.18 0.00 0.07 0.13 0.21
5) pass through
h j = - ( l n m ) - 1 &Sigma; i = 1 m x i j lnx i j
&beta; j = ( 1 - h j ) / &Sigma; k = 1 n ( 1 - h k )
Obtain the first weight beta=(β 1, β 2..., β n) t, wherein
Note working as x ijwhen=0, regulation x ijlnx ij=0 (i=1,2 ..., m; J=1,2 ..., n).
First weight also can be described as objective weight.
In undertaking, example, can obtain
β=(0.0630.1550.0780.1990.1180.1720.215) T
6) the second weight α=(α is determined according to the input of user 1, α 2..., α n) t, wherein
Second weight also can be described as subjective weight, and the determination of subjective weight can get according to the data mining of pelletizing production Process History and analysis.
Example in undertaking, user determines
α=(0.10.050.10.150.10.20.3) T
7) the scale-up factor μ of described first weight and the second weight is determined, wherein 0≤μ < 1.
Scale-up factor μ also can be described as preference coefficient, it reflects the different attention degrees of analyst to subjective weight and objective weight, sets according to specific needs.
8) pass through
w j=μα j+(1-μ)β j(j=1,2,...,n)
Obtain w j, wherein &Sigma; j = 1 n w j = 1 , w j &GreaterEqual; 0 ( j = 1 , 2 , ... , n ) .
Wj can be described as comprehensive weight again.
In undertaking, example, if μ=0.6, then can obtain
w=(0.0850.0920.0910.1700.1070.1890.266) T
Like this, after obtaining w, by w and each y isubstitute into finally computation model can be obtained.
Such as, suppose that the relationship equation simulated under another scene is y 1=0.0006x 2-0.25x+46.4, y 2=-4.5x 2+ 27.5x+6.6, and calculate to obtain w 1=0.17, w 2=0.83, then can obtain computation model
y=w 1y 1+w 2y 2=0.17(0.0006x 2-0.25x+46.4)+0.83(-4.5x 2+27.5x+6.6)
Fig. 4 is the schematic diagram of a kind of pelletizing burn-up control assembly according to an exemplary embodiment.Shown in Figure 4, device 400 can comprise:
Select module 401, for choose from pelletizing production procedure parameter wherein n parameter as parameter preset;
Acquisition module 402, for the parameter value of the parameter preset of n described in Real-time Collection;
Computing module 403, for being input in default computation model by the parameter value of a described n parameter preset, obtains required fuel value;
Control module 404, for according to the described required real-time fuel metering use amount of fuel value;
Wherein, described computation model is:
y = &Sigma; j = 1 n w j y j
Y is described required fuel value, y jfor the relationship equation of a jth parameter preset and fuel consumption, w jfor y jweight.
In the present embodiment or the present invention's some other embodiments, described w can be obtained in the following way j:
Obtain m sample data of each parameter preset, form m * n matrix;
The first weight is obtained from described matrix according to compositive power coefficient method and entropy assessment;
The second weight is obtained according to the input of user;
Determine the scale-up factor of described first weight and the second weight;
Described first weight and described second weight are obtained w according to described scale-up factor addition j, j=1,2...n.
In the present embodiment or the present invention's some other embodiments, specifically can obtain w in the following way j:
Obtain each parameter preset x im sample data, form m * n matrix X=(x ij) m × n, wherein x ij(i=1,2,3 ..., m; J=1,2,3 ..., n) be parameter preset x ia jth sample data;
Described matrix is changed according to following rule:
x i j = x i j j &Element; I 1 x j max - x i j j &Element; I 2 | x i j - x j * | j &Element; I 3
Wherein I 1={ requiring the smaller the better parameter preset }, I 2={ parameter preset that requirement is the bigger the better }, I 3={ requirement is stabilized in the parameter preset of ideal value };
Unify the order of magnitude of parameter preset and eliminate dimension, described matrix is carried out as down conversion:
x ij=100×(x ij-x jmin)/(x jmax-x jmin)(i=1,2,...,m;j=1,2,...,n)
Again described entry of a matrix element is calculated as follows:
x i j = x i j / &Sigma; i = 1 m x i j
Pass through
h j = - ( ln m ) - 1 &Sigma; i = 1 m x i j lnx i j
&beta; j = ( 1 - h j ) / &Sigma; k = 1 n ( 1 - h k )
Obtain the first weight beta=(β 1, β 2..., β n) t, wherein
The second weight α=(α is determined according to the input of user 1, α 2..., α n) t, wherein
Determine the scale-up factor μ of described first weight and the second weight, wherein 0≤μ < 1;
Pass through
w j=μα j+(1-μ)β j(j=1,2,...,n)
Obtain w j, wherein &Sigma; j = 1 n w j = 1 , w j &GreaterEqual; 0 ( j = 1 , 2 , ... , n ) .
In the present embodiment or the present invention's some other embodiments, described y jobtain in the following way:
Correlation analysis is carried out to a jth parameter preset and fuel consumption, draws described relationship equation y by the device of curve j, j=1,2...n.
About the device in above-described embodiment, wherein the concrete mode of modules executable operations has been described in detail in about the embodiment of the method, will not elaborate explanation herein.
Those skilled in the art, at consideration instructions and after putting into practice invention disclosed herein, will easily expect other embodiment of the present invention.The application is intended to contain any modification of the present invention, purposes or adaptations, and these modification, purposes or adaptations are followed general principle of the present invention and comprised the undocumented common practise in the art of the present invention or conventional techniques means.Instructions and embodiment are only regarded as exemplary, and true scope of the present invention and spirit are pointed out by appended claim.
Should be understood that, the present invention is not limited to precision architecture described above and illustrated in the accompanying drawings, and can carry out various amendment and change not departing from its scope.Scope of the present invention is only limited by appended claim.

Claims (8)

1. a pelletizing burnup control method, is characterized in that, described method comprises:
Choose from pelletizing production procedure parameter wherein n parameter as parameter preset;
The parameter value of the parameter preset of n described in Real-time Collection;
The parameter value of a described n parameter preset is input in default computation model, obtains required fuel value;
According to the described required real-time fuel metering use amount of fuel value;
Wherein, described computation model is:
y = &Sigma; j = 1 n w j y j
Y is described required fuel value, y jfor the relationship equation of a jth parameter preset and fuel consumption, w jfor y jweight.
2. method according to claim 1, is characterized in that, obtains described w in the following way j:
Obtain m sample data of each parameter preset, form m * n matrix;
The first weight is obtained from described matrix according to compositive power coefficient method and entropy assessment;
The second weight is obtained according to the input of user;
Determine the scale-up factor of described first weight and the second weight;
Described first weight and described second weight are obtained w according to described scale-up factor addition j, j=1,2...n.
3. method according to claim 2, is characterized in that, obtains w especially by such as under type j:
Obtain each parameter preset x im sample data, form m * n matrix X=(x ij) m × n, wherein x ij(i=1,2,3 ..., m; J=1,2,3 ..., n) be parameter preset x ia jth sample data;
Described matrix is changed according to following rule:
x i j = x i j j &Element; I 1 x j max - x i j j &Element; I 2 | x i j - x j * | j &Element; I 3
Wherein I 1={ requiring the smaller the better parameter preset }, I 2={ parameter preset that requirement is the bigger the better }, I 3={ requirement is stabilized in the parameter preset of ideal value };
Unify the order of magnitude of parameter preset and eliminate dimension, described matrix is carried out as down conversion:
x ij=100×(x ij-x jmin)/(x jmax-x jmin)(i=1,2,...,m;j=1,2,...,n)
Again described entry of a matrix element is calculated as follows:
x i j = x i j / &Sigma; i = 1 m x i j
Pass through
h j = - ( ln m ) - 1 &Sigma; i = 1 m x i j lnx i j
&beta; j = ( 1 - h j ) / &Sigma; k = 1 n ( 1 - h k )
Obtain the first weight beta=(β 1, β 2..., β n) t, wherein
The second weight α=(α is determined according to the input of user 1, α 2..., α n) t, wherein
Determine the scale-up factor μ of described first weight and the second weight, wherein 0≤μ < 1;
Pass through
w j=μα j+(1-μ)β j(j=1,2,...,n)
Obtain w j, wherein &Sigma; j = 1 n w j = 1 , w j &GreaterEqual; 0 , ( j = 1 , 2 , ... , n ) .
4. method according to claim 1, is characterized in that, described y jobtain in the following way:
Correlation analysis is carried out to a jth parameter preset and fuel consumption, draws described relationship equation y by the method for curve j, j=1,2...n.
5. a pelletizing burn-up control assembly, is characterized in that, described device comprises:
Select module, for choose from pelletizing production procedure parameter wherein n parameter as parameter preset;
Acquisition module, for the parameter value of the parameter preset of n described in Real-time Collection;
Computing module, for being input in default computation model by the parameter value of a described n parameter preset, obtains required fuel value;
Control module, for according to the described required real-time fuel metering use amount of fuel value;
Wherein, described computation model is:
y = &Sigma; j = 1 n w j y j
Y is described required fuel value, y jfor the relationship equation of a jth parameter preset and fuel consumption, w jfor y jweight.
6. device according to claim 5, is characterized in that, obtains described w in the following way j:
Obtain m sample data of each parameter preset, form m * n matrix;
The first weight is obtained from described matrix according to compositive power coefficient method and entropy assessment;
The second weight is obtained according to the input of user;
Determine the scale-up factor of described first weight and the second weight;
Described first weight and described second weight are obtained w according to described scale-up factor addition j, j=1,2...n.
7. device according to claim 6, is characterized in that, obtains w especially by such as under type j:
Obtain each parameter preset x im sample data, form m * n matrix X=(x ij) m × n, wherein x ij(i=1,2,3 ..., m; J=1,2,3 ..., n) be parameter preset x ia jth sample data;
Described matrix is changed according to following rule:
x i j = x i j j &Element; I 1 x j max - x i j j &Element; I 2 | x i j - x j * | j &Element; I 3
Wherein I 1={ requiring the smaller the better parameter preset }, I 2={ parameter preset that requirement is the bigger the better }, I 3={ requirement is stabilized in the parameter preset of ideal value };
Unify the order of magnitude of parameter preset and eliminate dimension, described matrix is carried out as down conversion:
x ij=100×(x ij-x jmin)/(x jmax-x jmin)(i=1,2,...,m;j=1,2,...,n)
Again described entry of a matrix element is calculated as follows:
x i j = x i j / &Sigma; i = 1 m x i j
Pass through
h j = - ( ln m ) - 1 &Sigma; i = 1 m x i j lnx i j
&beta; j = ( 1 - h j ) / &Sigma; k = 1 n ( 1 - h k )
Obtain the first weight beta=(β 1, β 2..., β n) t, wherein
The second weight α=(α is determined according to the input of user 1, α 2..., α n) t, wherein
Determine the scale-up factor μ of described first weight and the second weight, wherein 0≤μ < 1;
Pass through
w j=μα j+(1-μ)β j(j=1,2,...,n)
Obtain w j, wherein &Sigma; j = 1 n w j = 1 , w j &GreaterEqual; 0 ( j = 1 , 2 , ... , n ) .
8. device according to claim 5, is characterized in that, described y jobtain in the following way:
Correlation analysis is carried out to a jth parameter preset and fuel consumption, draws described relationship equation y by the device of curve j, j=1,2...n.
CN201510423408.4A 2015-07-17 2015-07-17 A kind of pelletizing burnup control method and device Active CN105116850B (en)

Priority Applications (1)

Application Number Priority Date Filing Date Title
CN201510423408.4A CN105116850B (en) 2015-07-17 2015-07-17 A kind of pelletizing burnup control method and device

Applications Claiming Priority (1)

Application Number Priority Date Filing Date Title
CN201510423408.4A CN105116850B (en) 2015-07-17 2015-07-17 A kind of pelletizing burnup control method and device

Publications (2)

Publication Number Publication Date
CN105116850A true CN105116850A (en) 2015-12-02
CN105116850B CN105116850B (en) 2017-08-22

Family

ID=54664868

Family Applications (1)

Application Number Title Priority Date Filing Date
CN201510423408.4A Active CN105116850B (en) 2015-07-17 2015-07-17 A kind of pelletizing burnup control method and device

Country Status (1)

Country Link
CN (1) CN105116850B (en)

Cited By (1)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN107037787A (en) * 2016-02-03 2017-08-11 中冶长天国际工程有限责任公司 A kind of grate-kiln pelletizing burnup control method and device

Citations (8)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP2048553A1 (en) * 2007-10-12 2009-04-15 Powitec Intelligent Technologies GmbH Control circuit for regulating a process, in particular a combustion process
CN101561148A (en) * 2009-05-08 2009-10-21 上海颖科计算机科技有限公司 Boiler combustion control system and method
CN102252343A (en) * 2011-05-05 2011-11-23 浙江宜景环保科技有限公司 Method for optimizing combustion of porous medium combustor
CN102261671A (en) * 2010-05-28 2011-11-30 王荣虎 Boiler combustion multi-constraint and multi-object optimization expert system and optimization method thereof
CN103672948A (en) * 2013-12-13 2014-03-26 聚光科技(杭州)股份有限公司 Combustion control system and method of industrial furnace
JP5577568B2 (en) * 2008-01-17 2014-08-27 Jfeスチール株式会社 Impeller desulfurization control apparatus and method
CN104313306A (en) * 2014-10-15 2015-01-28 中冶长天国际工程有限责任公司 Method and device for measuring specific consumption of sintering ore solid fuel
CN104328276A (en) * 2014-10-15 2015-02-04 中冶长天国际工程有限责任公司 Method of controlling solid fuel in sintering process, device and system

Patent Citations (8)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
EP2048553A1 (en) * 2007-10-12 2009-04-15 Powitec Intelligent Technologies GmbH Control circuit for regulating a process, in particular a combustion process
JP5577568B2 (en) * 2008-01-17 2014-08-27 Jfeスチール株式会社 Impeller desulfurization control apparatus and method
CN101561148A (en) * 2009-05-08 2009-10-21 上海颖科计算机科技有限公司 Boiler combustion control system and method
CN102261671A (en) * 2010-05-28 2011-11-30 王荣虎 Boiler combustion multi-constraint and multi-object optimization expert system and optimization method thereof
CN102252343A (en) * 2011-05-05 2011-11-23 浙江宜景环保科技有限公司 Method for optimizing combustion of porous medium combustor
CN103672948A (en) * 2013-12-13 2014-03-26 聚光科技(杭州)股份有限公司 Combustion control system and method of industrial furnace
CN104313306A (en) * 2014-10-15 2015-01-28 中冶长天国际工程有限责任公司 Method and device for measuring specific consumption of sintering ore solid fuel
CN104328276A (en) * 2014-10-15 2015-02-04 中冶长天国际工程有限责任公司 Method of controlling solid fuel in sintering process, device and system

Non-Patent Citations (1)

* Cited by examiner, † Cited by third party
Title
任秀东: "基于多源异构信息融合的回转窑球团焙烧过程操作模式优化", 《中国优秀硕士学位论文全文数据库工程科技I辑》 *

Cited By (2)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN107037787A (en) * 2016-02-03 2017-08-11 中冶长天国际工程有限责任公司 A kind of grate-kiln pelletizing burnup control method and device
CN107037787B (en) * 2016-02-03 2019-01-25 中冶长天国际工程有限责任公司 A kind of grate-kiln pelletizing burnup control method and device

Also Published As

Publication number Publication date
CN105116850B (en) 2017-08-22

Similar Documents

Publication Publication Date Title
Wen et al. Estimates of the potential for energy conservation and CO2 emissions mitigation based on Asian-Pacific Integrated Model (AIM): the case of the iron and steel industry in China
Geyer et al. Microbial carbon use efficiency: accounting for population, community, and ecosystem-scale controls over the fate of metabolized organic matter
US11651117B2 (en) System and method for anaerobic digestion process assessment, optimization and/or control
Wu et al. Sectoral changing patterns of China’s green GDP considering climate change: An investigation based on the economic input-output life cycle assessment model
Liu et al. System dynamics analysis on characteristics of iron-flow in sintering process
CN102021007B (en) Low-cost coking coal blending system
Zhou et al. A technical framework for integrating carbon emission peaking factors into the industrial green transformation planning of a city cluster in China
CN104975118A (en) Method for optimizing ratio of raw materials before iron making
Ding et al. An optimization method for energy structures based on life cycle assessment and its application to the power grid in China
Cheng et al. Evolutionary game simulation on government incentive strategies of prefabricated construction: a system dynamics approach
Perpiñán et al. CO2 recycling in the iron and steel industry via power-to-gas and oxy-fuel combustion
CN106843171A (en) A kind of operating and optimization control method based on data-driven version
Malone et al. Industrial ecosystems and food webs: An ecological-based mass flow analysis to model the progress of steel manufacturing in China
Hashimoto et al. Online prediction of hot metal temperature using transient model and moving horizon estimation
CN106295132A (en) A kind of air separation plant varying duty optimization method based on mould plate technique
CN102252342A (en) Model updating method for online combustion optimization of porous medium combustor
CN105116850A (en) Pellet fuel consumption control method and device
Zhou et al. An improved metabolism grey model for predicting small samples with a singular datum and its application to sulfur dioxide emissions in China
Zhang et al. Supply and demand forecasting of blast furnace gas based on artificial neural network in iron and steel works
Vujic et al. Fuzzy linear model for production optimization of mining systems with multiple entities
Zhang et al. A Habitable Earth and Carbon Neutrality: Mission and Challenges Facing Resources and the Environment in China—An Overview
Rozman et al. Sugar beet production: A system dynamics model and economic analysis
Clavreul LCA of waste management systems: Development of tools for modeling and uncertainty analysis
Hijbeek et al. Benchmarking crop nitrogen requirements, nitrogen-use efficiencies and associated greenhouse gas mitigation potential: Methodology exploration for cereal production in sub-Saharan Africa
Kiessling et al. The bio steel cycle: 7 steps to net-zero CO2 emissions steel production

Legal Events

Date Code Title Description
C06 Publication
PB01 Publication
C10 Entry into substantive examination
SE01 Entry into force of request for substantive examination
GR01 Patent grant
GR01 Patent grant