CN201698745U - Mining multi-wave self-adaptive active noise control device - Google Patents

Mining multi-wave self-adaptive active noise control device Download PDF

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CN201698745U
CN201698745U CN2010202442687U CN201020244268U CN201698745U CN 201698745 U CN201698745 U CN 201698745U CN 2010202442687 U CN2010202442687 U CN 2010202442687U CN 201020244268 U CN201020244268 U CN 201020244268U CN 201698745 U CN201698745 U CN 201698745U
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noise
active noise
controlling device
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田子建
张立亚
明艳杰
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China University of Mining and Technology Beijing CUMTB
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Abstract

The utility model discloses a mining many wave self-adaptation initiative noise control device, the device comprises following several modules: the system comprises a primary sensor array 9, an error sensor array 10, a loudspeaker array 1, a power amplification circuit module 2, a low-pass filter 3, an A/D conversion module 8, a D/A conversion module 4, an ANC controller 13, a Field Programmable Gate Array (FPGA)7, a wireless transmission module 5, an explosion-proof shell 14, a standby battery circuit 11 and a main power supply circuit 12, wherein an input noise signal is firstly converted into a digital signal through the A/D conversion module 8, data processing, self-adaptive filtering, time delay and phase inversion are carried out through the ANC controller 13, then the digital signal is converted through the D/A conversion module 4, the low-pass filter 3 and the power amplification circuit module 2 are output by the loudspeaker array 1, sound waves with the same frequency and the opposite phase with main noise are output by the loudspeaker array 1 and used for offsetting the primary noise, and residual error signals are processed through the power amplification circuit module 2 and the A/D conversion module 8, the error signal is fed back to the ANC controller 13, the weight coefficients of the adaptive filter are adjusted by the error signal, and the secondary signal is changed according to the change of the weight coefficients to minimize the error signal.

Description

Mining multi-wave self-adaptive active noise controlling device
Technical field
The utility model belongs to a kind of mining active noise controlling device, specifically is applied to the colliery, adopts many ripples, self-adaptation, ACTIVE CONTROL mode to reduce the device of noise.
Background technology
Various device under the coal mine such as coalcutter, jackdrill, ventilation blower etc. have produced very big noise.The coal miner long term exposure in high intensity noise, coal mine operation narrow space, sealing in addition, sound wave is difficult to disperse.Tunnel wall acoustical absorptivity is poor simultaneously, is easy to form acoustic reflection, has further aggravated the harm of noise to the workman.High-intensity noise not only influences the physical and mental health of coal miner, and often covers the downhole safety alarm signal and cause the accident, so the Research of Noise Reduction under the coal mine is of great significance.
Traditional passive noise control technique generally adopts sound absorption, sound insulating material.But this mode is comparatively effective for the inhibition of high-frequency noises, and is undesirable for the noise reduction of low-frequency noise.In order to obtain good noise reduction, have only by increasing the thickness or the quality of material, cause volume too huge, be unfavorable for borehole operation, and increased the cost of enterprise.
The ultimate principle of noise ACTIVE CONTROL is that artificial one of generation and noise source frequency, amplitude equates, the secondary noise that phase place is opposite, and after secondary noise and the stack of former noise, sound wave interferes, thereby reaches the purpose of eliminating noise.Compare with traditional passive noise control technique, the active noise control technique tool has an enormous advantage and development prospect.
Many ripples active noise controlling device has better wideband noise reduction than single ripple active noise controlling device.Simultaneously, because the position of noise source is not fixed in the mine, noise circumstance is constantly changing in the time of many, and the design of many ripples can solve the error that the counter productives such as mistake coupling of single ripple microphone are brought.
Noise mainly concentrates on low-frequency range in the mine, wavelength is longer, the coal mine operation narrow space, sealing, acoustic reflection is serious, a reference sensor, single ripple active noise controlling device of a secondary sound source and an error pick-up composition is very bad in down-hole restriceted envelope result of use, in order to enlarge the noise reduction space, the utility model adopts a plurality of reference sensors, a plurality of secondary sound sources and a plurality of error pick-up, simultaneously, because many ripples active noise controlling device has speed of convergence faster than single ripple active noise controlling device, mine laneway is longer, noise source is uncertain, noise source, distance is far away between secondary sound source, speed of convergence is had relatively high expectations, otherwise noise reduction is difficult to guarantee.
Chinese patent application numbers 200710304314.0, open day 2008.07.30, a kind of active noise controlling system and noise control method that utilizes sound wave interference mode disclosed, loudspeaker is installed facing to the noise source engine by this system in pilothouse, microphone is placed on driver's head position, loudspeaker and microphone are connected respectively in the sef-adapting filter of controller, upgrade the feature battle array of wave filter, and the module RLS of RLS algorithm, noise control method is generation and the anti-phase control sound of noise that continues in closed-loop system,, and revise and make the error minimum reducing noise with both mutual interference effects.
Chinese patent application numbers 200810003675.6, open day 2009.01.28, a kind of active noise controlling system is disclosed, the undesirable noise signal of listening to the place, place that this system utilizes reference signal to come ACTIVE CONTROL to be sent by noise source, described reference signal is sheltered by undesirable noise signal and the desired signal of listening to the existence of place, place, so that adapt to time dependent secondary path, make that the user can not feel to be disturbed by additional man made noise source in real-time mode.
At present, existing active noise controlling equipment can not satisfy the singularity of working environment under the coal mine, and mine active noise controlling device need have following characteristics:
(1) the controller speed of convergence is very fast.The ANC controller of existing active noise controlling equipment is based on RLS algorithm and lowest mean square (LMS) algorithm, the poor-performing of these algorithms aspect speed of convergence, and in the space of the long and narrow sealing in down-hole, noise signal can not be eliminated in time.
(2) electric apparatus for explosive gas.Unfavorable factors such as mine dust, high temperature, gas are arranged under the coal mine, therefore will adopt the good explosion precaution of security performance, the active noise controlling device in colliery must have mining product safety sign card, conformity certificate of protection.
(3) wireless monitor.The wireless outstation that is sent to of the working condition of active noise controlling device in the mine.Be convenient to the active noise controlling device is monitored in real time.The noise situations and the de-noising situation in outstation record colliery.
In order to satisfy the controller fast convergence rate of active noise controlling equipment under the mine, the requirement that has electric apparatus for explosive gas and have wireless monitor, the utility model provides a kind of mining multi-wave self-adaptive active noise controlling device.
Summary of the invention
The utility model mainly concentrates on the characteristics of low-frequency range at noise in the mine, adopts one of active control technology design based on the multi-wave self-adaptive active noise controlling device that improves the FXLMS algorithm.The utility model is compared with adaptive controller in the past, has adopted the design of aspects such as many ripples, the speed of convergence that improves controller, wireless monitor, flameproof enclosure, is suitable for the serious occasion of the long and narrow sealing echo of mine interference.This device can be eliminated the noise pollution of mine effectively.
Below method of the present utility model is discussed.
Based on the multi-wave self-adaptive active noise controlling device that improves the FXLMS algorithm, mainly form: primary sensor array by following module, the error pick-up array, loudspeaker array, the power amplification circuit module, low-pass filter, the A/D modular converter, the D/A modular converter, the ANC controller, field programmable gate array (FPGA), wireless transport module, flameproof enclosure, the reserve battery circuit, main feed circuit, the noise signal of input at first converts digital signal to through the A/D modular converter, carry out data processing by the ANC controller, auto adapted filtering, time-delay, paraphase, change through the D/A modular converter again, export by loudspeaker array after low-pass filter and the power amplification circuit module, loudspeaker array output is used for offsetting elementary noise with the sound wave of main noise with same frequency and reversed-phase, after the processing of residual error signal through power amplification circuit module and A/D modular converter, feed back to the ANC controller, utilize error signal to regulate the weight coefficient of sef-adapting filter, variation according to weight coefficient changes secondary signal, makes error signal reduce to minimum.
Described active noise controlling device adopts based on the many ripples ANC controller that improves the FXLMS algorithm.
Described active noise controlling device, the chip that the ANC controller is selected for use is TMS320C240.
Described active noise controlling device can be monitored the working condition of installing in the mine in real time by wireless transmission.
Described active noise controlling device, wireless transport module adopt and meet the MC13192 of IEEE 802.15.4 standard as rf chip.
Described active noise controlling device, sensor adopts the laying method that reduces flow disturbance.
Described active noise controlling device uses electric apparatus for explosive gas, satisfies the requirement of electrical equipment safety technique in the explosive gas atmospheres such as containing gas under the mine.
Described active noise controlling device is furnished with reserve battery, can operate as normal in power failure or powering-off state lower device.
Described active noise controlling device, the chip that adopts in the A/D modular converter are AD7656.
Described active noise controlling device, the chip that adopts in the D/A modular converter are DAC3282.
Compared with prior art, advantage of the present utility model is:
1. by adopting many ripples designs, primary sensor array, error pick-up array, loudspeaker array are applicable to and the space of mine three-dimensional can gather and eliminate noise in the mine exactly.
2. by improving the FXLMS algorithm, reduced in the weight coefficient change procedure of sef-adapting filter the influence of system has been improved the speed of convergence of system.
3. by the design of wireless transport module, be convenient to the staff by the active noise controlling device is monitored.
4. by adopt reducing the laying method of sensor stream disturbance, the influence of the hydrodynamic noise that produces when reducing by air through sensor surface has increased correlativity, and sensor is placed on the outside and also is convenient to safeguard.
5. by the design of main feed circuit and battery module, battery is in charged state under the normal condition, and equipment carries out powered operation by main circuit.When main circuit generation abnormal electrical power supply, reserve battery is powered, and sends the abnormal electrical power supply signal to main control room simultaneously, so that maintenance in time.
Mining multi-wave self-adaptive active noise controlling device has been realized noise in the real-time monitoring mine, and eliminates the function of noise.Meet mining specific environment for use, satisfy explosive gas atmosphere electrical installation requirement under the coal mine.
Figure of description
Fig. 1 is mining active noise controlling device composition frame chart
Fig. 2 is mining active noise controlling device workflow diagram
Fig. 3 is many ripples FXLMS algorithmic system block diagram
Fig. 4 is that many ripples improve FXLMS algorithmic system block diagram
Fig. 5 is the comparison diagram of device input and loudspeaker output
Fig. 6 is the phantom error curve map of device
Fig. 7 is ANC controller chip TMS320C240 figure
Fig. 8 is the Interface design block diagram of DSP and FPGA
Fig. 9 is the wireless transport module design frame chart
Figure 10 is mining linear DC power supply theory diagram
Figure 11 is the microphone laying method figure that reduces flow disturbance
Figure 12 is the design drawing of mining active noise controlling device flameproof enclosure
Among the figure, 1, loudspeaker array; 2, power amplification circuit module; 3, low-pass filter; 4, D/A modular converter; 5, wireless transport module; 6, ANC controller; 7, field programmable gate array (FPGA); 8, A/D modular converter; 9, primary sensor array; 10, error pick-up array; 11, reserve battery circuit; 12, main feed circuit; 13, ANC controller; 14, flameproof enclosure; 15, mine noise; 16, serial ports; 17, GB60; 18, SPI mouth; 19, MC13192; 20-1, antenna; 20-2, antenna; 21, AC power; 22, transformer; 23, rectification circuit; 24, filtering circuit; 25, current limiting pressure-limiting circuit; 26, explosion-proof direct supply; 27, sensor.
Embodiment
Following embodiment will further specify the utility model, and embodiment should not be regarded as limiting scope of the present utility model.Below in conjunction with accompanying drawing working method of the present utility model is elaborated.
As shown in Figure 1, mining multi-wave self-adaptive active noise controlling device of the present utility model comprises primary sensor array 9, error pick-up array 10, loudspeaker array 1, power amplification circuit module 2, low-pass filter 3, A/D modular converter 8, D/A modular converter 4, ANC controller 13, field programmable gate array (FPGA) 7, wireless transport module 5, flameproof enclosure 14, reserve battery circuit 11, main feed circuit 12.
The device workflow is as follows:
As shown in Figure 2, primary sensor array 9 is converted to electric signal with voice signal after detecting mine noise 15, and 2 pairs of these electric signal of power amplification circuit module amplify, and the simulating signal dress is changed to digital signal through A/D modular converter 8, send into ANC controller 13 and handle.
X in the ANC controller 13 (n) is a noise signal, k 1(n) be the feedforward control part, k 2(n) be the FEEDBACK CONTROL part.E (n) is an error signal, and y (n) is the secondary sound source signal, and s (z) is the transport function of secondary channels.
After the processing by ANC controller 13, produce one and noise source frequency, amplitude equates, phase place is opposite secondary sound source signal y (n).The secondary sound source signal is converted to simulating signal through D/A modular converter 4, amplifies by power amplification circuit module 2 pairs of voltages, electric currents, to drive loudspeaker array 1.Noise source frequency of loudspeaker array 1 generation, the secondary noise signal that amplitude equates, phase place is opposite are by superposeing to offset noise with former noise.
The noise residue signal that error pick-up array 10 detects after offsetting, residue signal amplifies through power amplification circuit module 2, produces noise cancellation signal through sending into ANC controller 13 behind the A/D modular converter 8. K1(n), k 2(n) weight coefficient is brought in constant renewal in according to the variation of noise signal x (n), error signal e (n), so just can change real-time generation and the equivalent anti-phase secondary sound source signal of noise signal according to noise, offsets noise.
As shown in Figure 3, be many ripples FXLMS algorithmic system block diagram.
Supposing the system has P reference sensor, a Q secondary sound source and R error pick-up, and sef-adapting filter length is L, and secondary sound source transport function length is M.
Elementary acoustic path transport function is P (Z), and secondary acoustic path transport function is S (Z), and it is estimated as
Figure BSA00000170875400061
Many ripples FXLMS algorithm is derived as follows:
If the reference vector matrix is X (n)=[x (1)(n), x (2)(n) ..., x (P)(n)] T
Then p reference sensor in n output signal constantly is
x (p)(n)=[x (p)(n),x (p)(n-1),…,x (p)(n-L+1)] T p=1,2,…,P
x (p)′(n)=[x (p)(n),x (p)(n-1),…,x (p)(n-M+1)] T
Q secondary sound source in n output signal constantly is
y (q)(n)=[y (q)(n),y (q)(n-1),…,y (q)(n-M+1)] T
N r elementary noise signal constantly is expressed as d (r)(n).
N constantly r error pick-up place error signal of picking up is expressed as e (r)(n).
The sef-adapting filter weight vector is expressed as
w (p,q)(n)=[w (p,q)0(n),w (p,q) 1(n),…w (p,q) L-1(n)] T
Q sub loudspeaker to the unit impact response vector of r error microphone is
s ( q , r ) ( n ) = [ s 0 ( q , r ) ( n ) , s 1 ( q , r ) ( n ) , . . . , s M - 1 ( q , r ) ( n ) ] T
The filtering reference signal is r (p, q, r)(n)=[r (p, q, r)(n), r (p, q, r)(n-1) ..., r (p, q, r)(n-L+1)] T
Then, from Fig. 3, can draw, be through the output signal behind the ANC controller:
y ( q ) ( n ) = Σ p = 1 p ( w ( p , q ) ( n ) ) T x p ( n ) = Σ p = 1 P Σ p = 0 L - 1 w l ( p , q ) ( n ) x ( p ) ( n - l ) l=0,1,…L
Can draw from Fig. 3, the filtering reference signal is:
r ( p , q , r ) ( n ) = s ^ ( q , r ) ( n ) x ( p ) ′ ( n )
Can draw from Fig. 3, the computing formula of sef-adapting filter weight vector is:
w ( p , q ) ( n + 1 ) = w ( p , q ) ( n ) - μ Σ r = 1 R r ( p , q , r ) ( n ) e ( r ) ( n ) (wherein, μ is a step factor)
Can draw from Fig. 3, error signal is the residual signal after elementary noise source and the secondary sound source stack, and the computing formula of error signal is:
e ( r ) ( n ) = d ( r ) ( n ) + Σ q = 1 Q s ( q , r ) T ( n ) y q ( n )
On this basis, many ripples FXLMS algorithm is improved.As shown in Figure 4, be that many ripples improve FXLMS algorithmic system block diagram.
Elementary noise signal d (r)(n) and error signal e (r)(n) subtract each other the correction that obtains elementary noise signal
Figure BSA00000170875400076
That is:
Figure BSA00000170875400077
Utilization obtains
Figure BSA00000170875400078
Produce the error signal of revising
Figure BSA00000170875400079
For:
e ^ ( r ) ( n ) = d ^ ( r ) ( n ) + Σ p = 1 P Σ q = 1 Q s ( q , r ) T ( n ) y q ( n )
The computing formula of sef-adapting filter weight vector is:
w ( p , q ) ( n + 1 ) = w ( p , q ) ( n ) - μ Σ r = 1 R r ( p , q , r ) ( n ) e ^ ( r ) ( n )
With the error signal formula
Figure BSA00000170875400082
Correction formula with elementary noise signal
Figure BSA00000170875400083
Substitution In, the error signal of the correction that obtains in theory Go to zero.Like this, the secondary acoustic path weight coefficient that just can improve sef-adapting filter upgrades pace of change, reduces the influence of the variation of weight coefficient to system.Since when step factor μ hour, speed of convergence is slower, this correction makes algorithm can choose bigger step factor μ, has improved speed of convergence.The every renewal of secondary acoustic path weight coefficient of sef-adapting filter once all is copied in the sef-adapting filter, is used for noise signal is carried out filtering.
Above-mentioned multi-wave self-adaptive active noise controlling algorithm is carried out emulation on computers by MATLAB.Because noise mainly concentrates on low-frequency range in the mine, suppose that input signal is made up of gaussian random series.If P=Q=R=10, sample frequency is 5KHZ, sampling number N=1000, and the length L of wave filter=16, secondary sound source transport function length is M=16, convergence coefficient gets 0.0001.In programming procedure, adopted the algorithm of matrix and vector, to improve the travelling speed of MATLAB.
As shown in Figure 5, be the contrast of device input and loudspeaker output.
Can see that by contrast among the figure it is equifrequency basically that device input and loudspeaker are exported, anti-phase waveform, the design that many ripples are described can be eliminated the noise signal in the space effectively.In engineering design, note choosing of step factor μ.Step factor has determined the speed of convergence of sef-adapting filter.When step factor was big, speed of convergence was very fast, and filter effect is relatively poor; When step factor hour, speed of convergence is slower, filter effect is better.Therefore, suitable step factor be chosen, just more stable filter effect can be obtained.
As shown in Figure 6, be the phantom error curve of device.
As can be seen, the error of desired output and actual output mainly fluctuates between 0.1 to 0.01 from the result of graph of errors.Preceding 30 nodes are as training sequence, and device is unstable, and the node of the relative back of error of former 30 nodes of institute is bigger than normal.
As shown in Figure 7, the chip that the ANC controller is selected for use is the TMS320C240 of TI company, it has at a high speed, flexibly, characteristics such as low consumption, the hardware configuration of optimization is applicable to Adaptive Signal Processing.The TMS320C240 instruction execution cycle is 50nS, and can carry out many instructions simultaneously in the monocycle.The XC3S200-4TQG144C that field programmable gate array (FPGA) adopts Xilinx company to produce controls controller.It is the DSP external storage that the inner register space that is provided with of FPGA is used as.DATA15-DATA0 represents the data bus of DSP, and ADDRESS13-ADDRESS0 represents the address bus of DSP.CE3-CE0 represents the address at the place, visit data space that determines.The DSP external interrupt pin that INT4-INT0 represents can interrupt to the DSP application by its peripheral hardware.
As shown in Figure 8, be the Interface design of DSP and FPGA.
Data transfer procedure between them is: DSP and FPGA carry out data by the mode of external interrupt and transmit, after data enter FPGA, FPGA at first sends interrupt request singal to DSP, if DSP responds interruption, then send address signal, then by data bus DATA15-DATA0 reading of data by address bus ADDRESS13-ADDRESS0.
As shown in Figure 9, be the wireless transport module design.
What rf chip adopted is MC13192 (19).It meets IEEE 802.15.4 standard, and the frequency of operation of selection is 2.405~2.480GHz, and message transmission rate is 250kbps, adopts the O-QPSK debud mode.MC13192 (19) is the Zigbee radio frequency chip of inner integrated MAC (medium Access Layer), PHY (Physical layer) hardware logic.MC13192 radiofrequency signal in the circuit design adopts the method for difference input and output.Processor is selected the GB60 (17) that meets the Zigbee technology for use, and it is 8 MCU of HCS08 series.Whole protocol stack resides on the main control chip GB60 (17).
The serial data that receives is sent to the MC13192 (19) by SPI mouth 18 from GB60 (17), launches from antenna 20-1 by transtation mission circuit after process spread spectrum O-QPSK is modulated to carrier wave again.The radiofrequency signal that receives from antenna 20-2 is sent to the MC13192 (19), obtains original data through demodulation, despreading, is sent to GB60 (17) through SPI mouth 18 again, is converted into serial data and sends.
As shown in figure 10, be mining linear DC power supply.
Mining linear DC power supply generally is made up of transformer 22, rectification circuit 23, filtering circuit 24, dual current limiting pressure-limiting circuit 25.Transformer 22 has step-down and electromagnetic isolation function, to guarantee the performance of intrinsic safe explosion-proof.Rectification circuit 23 is a direct current with exchange conversion.Alternating component in the output of filtering circuit 24 filtering rectification circuits.Dual current limiting pressure-limiting circuit 25 can be used as voltage stabilizing or constant-current circuit, guarantees explosion-proof direct supply 26 output voltage stabilizing or constant-current supplies.Produce 1.5V and VCC (3.3v) voltage supply FPGA by the linear DC power supply, 1.6V and VDD (3.3v) voltage is supplied with DSP.
As shown in figure 11, be the microphone laying method that reduces flow disturbance.
Owing to all hydrodynamic noise can be arranged in the noise that primary sensor and error pick-up are accepted, oneself produce when being air process sensor 27 surfaces.Therefore, the sound pressure variations of the hydrodynamic noise at sensor 27 places and disturbance has limited the effect of noise cancellation.Sensor 27 is placed in the external disturbance small container that links to each other with passage by little otch, can increases correlativity, and sensor 27 also can be protected corresponding device and be convenient to maintenance when being placed in the external container.
As shown in figure 12, be to satisfy to have the mine explosion-suppression shell that damp uses under the coal mine.
The principle of flameproof enclosure is: the live part of electrical equipment is placed in the special shell, and this shell has the effect that explosive mixture outside the spark of electric component generation in the shell and electric arc and the shell is kept apart.The shape of flameproof enclosure adopts the strong rectangle structure of anti-quick-fried ability.Therefore the volume of flameproof enclosure and shell implode pressure independent, satisfying under the service condition, reduce the volume of flameproof enclosure as far as possible.The flame proof protected mode that explosion suppresion surface adopts flange to connect, plane-shaped structure is adopted in flame proof faying face gap.After FL flange length was determined, the design alternative of flange thickness will guarantee that under the effect of explosion pressure, the deformation extent of flange can not influence the size in flame proof gap.
The flameproof joint structural parameters should meet the requirement of following table.L represents composition surface width, L 1The expression bolt is to the width at edge, composition surface, and W represents the maximal clearance corresponding with shell volume V.
Figure BSA00000170875400101

Claims (10)

1. mining multi-wave self-adaptive active noise controlling device, it is characterized in that described device is made up of following module: primary sensor array, the error pick-up array, loudspeaker array, the power amplification circuit module, low-pass filter, the A/D modular converter, the D/A modular converter, the ANC controller, field programmable gate array (FPGA), wireless transport module, flameproof enclosure, the reserve battery circuit, main feed circuit, the noise signal of input at first converts digital signal to through the A/D modular converter, carry out data processing by the ANC controller, auto adapted filtering, time-delay, paraphase, change through the D/A modular converter again, export by loudspeaker array after low-pass filter and the power amplification circuit module, loudspeaker array output is used for offsetting elementary noise with the sound wave of main noise with same frequency and reversed-phase, after the processing of residual error signal through power amplification circuit module and A/D modular converter, feed back to the ANC controller, utilize error signal to regulate the weight coefficient of sef-adapting filter, variation according to weight coefficient changes secondary signal, makes error signal reduce to minimum.
2. multi-wave self-adaptive active noise controlling device according to claim 1 is characterized in that adopting the many ripples ANC controller based on improving the FXLMS algorithm.
3. multi-wave self-adaptive active noise controlling device according to claim 2 is characterized in that the chip that the ANC controller is selected for use is TMS320C240.
4. multi-wave self-adaptive active noise controlling device according to claim 1 is characterized in that and can monitor the working condition of installing in the mine in real time by wireless transmission.
5. multi-wave self-adaptive active noise controlling device according to claim 4 is characterized in that the wireless transport module employing meets the MC13192 of IEEE 802.15.4 standard as rf chip.
6. multi-wave self-adaptive active noise controlling device according to claim 1 is characterized in that sensor adopts the laying method that reduces flow disturbance.
7. multi-wave self-adaptive active noise controlling device according to claim 1 is characterized in that using electric apparatus for explosive gas, satisfies the requirement of electrical equipment safety technique in the explosive gas atmospheres such as containing gas under the mine.
8. multi-wave self-adaptive active noise controlling device according to claim 1 is characterized in that being furnished with reserve battery, can operate as normal in power failure or powering-off state lower device.
9. multi-wave self-adaptive active noise controlling device according to claim 1 is characterized in that the chip that adopts in the A/D modular converter is AD7656.
10. multi-wave self-adaptive active noise controlling device according to claim 1 is characterized in that the chip that adopts in the D/A modular converter is DAC3282.
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Cited By (6)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN101930731A (en) * 2010-07-01 2010-12-29 中国矿业大学(北京) Mining multi-wave self-adaptive active noise control system
CN105318490A (en) * 2014-07-10 2016-02-10 珠海格力电器股份有限公司 Control method and device for noise reduction of air conditioner
CN107025910A (en) * 2015-12-17 2017-08-08 哈曼贝克自动***股份有限公司 Pass through the Active noise control of auto adapted noise filtering
CN104064177B (en) * 2014-05-05 2017-09-08 浙江银江研究院有限公司 Active noise controlling method based on quantum particle swarm optimization
CN108470562A (en) * 2017-02-23 2018-08-31 2236008安大略有限公司 The active noise controlling adjusted using variable step size
CN109036368A (en) * 2018-10-17 2018-12-18 广州市纳能环保技术开发有限公司 A kind of external device for actively eliminating noise

Cited By (8)

* Cited by examiner, † Cited by third party
Publication number Priority date Publication date Assignee Title
CN101930731A (en) * 2010-07-01 2010-12-29 中国矿业大学(北京) Mining multi-wave self-adaptive active noise control system
CN104064177B (en) * 2014-05-05 2017-09-08 浙江银江研究院有限公司 Active noise controlling method based on quantum particle swarm optimization
CN105318490A (en) * 2014-07-10 2016-02-10 珠海格力电器股份有限公司 Control method and device for noise reduction of air conditioner
CN107025910A (en) * 2015-12-17 2017-08-08 哈曼贝克自动***股份有限公司 Pass through the Active noise control of auto adapted noise filtering
CN107025910B (en) * 2015-12-17 2021-12-07 哈曼贝克自动***股份有限公司 Active noise control by adaptive noise filtering
CN108470562A (en) * 2017-02-23 2018-08-31 2236008安大略有限公司 The active noise controlling adjusted using variable step size
CN108470562B (en) * 2017-02-23 2023-04-25 黑莓有限公司 Active noise control using variable step size adjustment
CN109036368A (en) * 2018-10-17 2018-12-18 广州市纳能环保技术开发有限公司 A kind of external device for actively eliminating noise

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