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Mechanical wear debris feature,detection,and diagnosis:A review

更新时间:2016-07-05

1.Introduction

In a running machine,failure is unavoidable if maintenance is not conducted in time.For crucial or expensive machines,breakdown maintenance could not be allowed because of high safety risk or economic loss,while time-based preventive maintenance may cost much more than the scheme using different strategies to machines in different health conditions.1Therefore,an effective way to have both high reliability and low cost is to perform condition-based maintenance through of fline or online detection.

To identify machine health condition,the failure mechanism should be known.Among failure modes,wear fault is the most common type which is unavoidable.Although different Friction pairs exist in a machine,they are essentially composed of two friction surfaces which move with respect to each other.Their functions are transferring and transforming power so that the machine could achieve a specified movement.During the movement,power is inevitably lost in the movement,which is dissipated as heat and vibration and damages friction surfaces.2By ignoring the running-in period,the wear rate of a friction pair is almost continuously increasing.3In the early stage of this wear process,the friction surface gradually becomes rough caused by debris generation that will increase the mechanical vibration.The friction surface is also heated by the energy released from asperity deformation so the metal performance of the wear surface would be further degraded.These two effects lead to that friction wear becomes more and more severe and finally causes component damage and system failure.

Many centuries ago,people already knew that wear debris is generated with a wear process.4Especially,it was found nearly a century ago that wear debris is strongly related to the condition of friction.5Compared to the other two visible indicators,temperature and vibration,using wear debris as an indicator for machine health has some distinguished advantages such as strong relationship to wear surface pro file,long persistence of information,and strong anti-interference capacity.Due to these reasons,using wear debris to investigate the health conditions of machines has attracted much attention since 1950s.6Many detection methods have been developed in the past few decades that debris information becomes an important indicator for mechanical health status.7Currently,online debris monitoring has been applied in commercial engines,8fighters’engines,9helicopters’gearboxes,10and wind turbines11to increase system reliability and reduce maintenance cost.

3.Dwyer-Joyce R,Williams JA,Roylance BJ.Wear debris and associated wear phenomena—fundamental research and practice.Pro Inst Mech Eng,Part J:J Eng Tribol 2000;214(1):79–105.

阴暗潮湿的长廊像是延伸到世界的另一头,他已经在这里走了24个小时,如果再过这么长的一段时间,他也就不必再选择了,所有的幻境都会崩塌,小伊和他充满传奇又离奇荒诞的18年将会掩埋于此,连同困扰着他的e和E。

2.Wear mechanisms

In a friction pair,the wear mechanism depends on the load,sliding speed,hardness and roughness of the wear surface,lubrication,and so on;meanwhile,the debris feature and wear type are two external manifestations of the wear mechanism.3Therefore,the wear mechanism is a key bond to link the debris feature and wear type.To consider the reasons for debris generation,the wear mechanism can be classi fied into three types:abrasive wear,fatigue wear,and adhesive wear,12as shown in Fig.1.

Fig.1 Three wear mechanisms.

Abrasive wear usually occurs between soft surfaces and hard asperities.In this wear type,an asperity is striped and becomes a debris particle when the asperity is not strong enough,which generally happens in the running-in period,and the debris usually is tiny.Otherwise,the asperity may make scratches on the soft surface and produce a cutting debris when the asperity is solid,and the debris is usually elongated.An early study13indicated that the debris volume is proportional to the load and sliding distance.Further studies14–16used the Archard equation to describe the wear rate shown in Eq.(1).In a stable wear condition,the value of K is constant.The typical value is in the range of 0.005–0.05 in two-body wear and tends to be lower than 0.0005 in three body wear.3However,a complete wear test under a nominally constant condition indicated that the wear rate is variable:the initial and final stages are high and the middle stage is stably low,as shown in Fig.2,which is one of the reasons why the mechanical failure rate is a Bath Curve.

where W is the wear rate,K is the wear coefficient,P is the load on the friction pair,V is the sliding speed,and H is the hardness of the wear surface.

Fig.2 Change of the wear rate.

Fatigue wear generally occurs on periodical contact surfaces such as those of bearings and gears.As a periodical force makes a material fatigue,the wear surface would be broken into many irregularly blocky debris particles and similar to pitting even grooves.In this case,the wear rate is not too high,but the vibration will be rapidly increased when pitting is formed.Therefore,this wear type may easily cause system failure.Studies of rolling fatigue17–19indicted that the fatigue initiation is in 10%–40%of useful life.Furthermore,Leng et al.19studied growth of fatigue cracks,and found that subsurface cracks tend to initiate at non-metallic inclusions and their directions are 20°–30°to the direction of the contact motion.Finally,a lot of debris particles will be generated when the cracks extend to the surface.As friction surfaces in a gear are insufficiently smooth and clear,asperities will raise local stresses and cause surface pits.20,21These pits are 5–25 μm deep and exist on most of the contact area;as a result,a large number of tiny debris particles are generated in this case.22By contrast,friction surfaces in a bearing are so smooth that the oil film could separate motion surfaces,which is why the fatigue damage of a bearing is quite different from a gear’s pitting.The fatigue form of early bearings is subsurface crack because of material quality,but now the fatigue form usually is surface damage caused by debris in lubricant.23,24Different from a stable increase in a gear,debris generation in a bearing suddenly increases when a macro damage is formed.25

Adhesive wear is a dangerous type,in which a lot of asperities bite each other,and the temperature on the friction surface quickly increases so that wear conditions such as material property,and lubrication would further deteriorate.26A four-ball test27,28indicated that metal transfer obviously happens in adhesive wear,which means that pieces of metal are peeled from the friction surface during the wear,and the debris generally is flat.The rate of adhesive wear also follows the Archard equation,but the wear coefficient K is in the rangeof 5× 10-3–5× 10-7.In order to build a model of the wear coefficient,Rabinowicz29analyzed the fracture forms of adhesive junction in a micro scale and described their probabilities based on the stress-strength interference theory to obtain the wear coefficient in a macro scale.Blau30studied temperature effects on adhesive wear in dry sliding contacts,and experimental results indicated that a vicious circle exists between surface temperature and friction wear.Although the rate of adhesive wear is not too high,the component is easy to break down suddenly because of increasing friction caused by adhesion.Therefore,adhesive wear is an omen of component fault.

江苏“非遗”项目传承保护的法制环境也大为改观。2011年6月,国家颁布的《中华人民共和国非物质文化遗产法》明确提出,依法保护非物质文化遗产项目是各级政府的职责。2017年,中共中央办公厅和国务院办公厅联合下发《关于实施中华优秀传统文化传承发展工程的意见》,为从更广泛的社会层面倡导对中华传统文化的传承保护提供了保障。江苏省于2013年颁布了《江苏省非物质文化遗产保护条例》,省内各地市相继出台了有关“非遗”传承保护的地方性法规,国家、省、市三级非遗文化传承保护的法律法规体系基本建成。“非遗”项目传承保护工作走上了依法保护、依法管理、依法利用的良性发展轨道。

Table 1 Relationship between wear features and debris features.

Note:×means related.

Debris feature Wear feature Severity Rate Type Location Concentration × ×Size × × ×Morphology× × ×Composition ×

3.Debris features

Through many studies,31–36engineers found that different wear behaviors apparently show up in four debris features:concentration(number),size,morphology,and composition,as shown in Table 1.Since debris concentration and size both increase by increasing of wear degree,they can re flect wear severity and wear rate.31Meanwhile,debris size can also indicate wear types.34On the other hand,wear severity and type depend on wear condition which also determines debris morphology,so debris morphology is related to wear severity and type even location.35In addition,different materials are applied to specified friction pairs to optimize the useful life for different working conditions36;therefore,wear location could be estimated through debris composition.

Based on some instruments such as particle counters and ferrograph,debris concentration and size can be obtained to demonstrate the wear process.7However,the processes of each component are variable because of differences in individuals and loads;therefore,it is less confident to specify some precise thresholds to divide wear stages.In order to distinguish different wear statuses,Bowen and Anderson systemically studied the relationship between debris size and wear type.34,37They analyzed debris generated from five typical wear types:rubbing,cutting,rolling fatigue,combined rolling and sliding,and severe sliding,as shown in Fig.3.

Fig.3 Five typical debris types.38

The debris features of these five wear types are shown in Table 2.Rubbing debris comes from normal sliding wear,as shown in Fig.3(a).Its equal diameter is 0.5–15 μm,thickness is 0.15–1 μm,and diameter-to-thickness ratio is from 3:1 to 10:1.Cutting debris is from soft friction surface and dug by a hard asperity,as shown in Fig.3(b).The debris is spindly,of which the width is 2–5 μm and the length is 25–100 μm.Rolling fatigue wear is caused by periodical rolling contact(e.g.,bearings),where the debris is blocky and flat as shown in Fig.3(c).The equal diameter is 10–100 μm and the ratio between the diameter and thickness is about 10:1.Combined rolling and sliding wear usually occurs on gear surface,and the diameter-to-thickness ratio of debris is from 4:1 to 10:1 depending on the involute pro file of the gear,as shown in Fig.3(d).In this wear type,big debris has a higher percentage than that of small debris.Severe sliding usually happens in a friction pair with a high load and a low speed,in which debris is bigger than 15 μm and the diameter-to-thickness ratio is about 10:1.In addition,striations and straight edges are apparent marks in this debris morphology,and the ratio of large-to-small debris is related to the limit exceeding of surface stress.This study indicated that debris size could roughly distinguish wear types,and especially,debris above 15 μm is from abnormal wear.

Roylance and Pocock39,40analyzed actual debris in the range of 1–20 μm based on Ferrograph,and they found that the Weibull function is suitable to describe the distribution between debris size and number so that distribution parameters can reflect the wear progress.However,in further studies,Dempsey et al.25monitored operations of gears and bearings by using a Metal SCAN sensor which can online detect oil debris above 125 μm,and they considered that debris distribution in the sensitivity range is difficult to distinguish component statuses between normal and fault.This conclusion conflicts with the studies of Roylance and Pocock,39,40which is probably caused by different detection ranges,but it also indicated that severe wear at the micro level is prior to apparent damage at the macro level.

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Since debris morphology is closely related to wear type and has abundant attributes,engineers have studied it through optical microscopy and scanning electron microscopy,and they considered that a good way to inspect a wear process is to classify wear mechanisms or types through attributes.41Among these attributes,debris thickness42,43and color44,45are two obvious ones,but they are not commonly used because of low cost-effectiveness in their extractions.Conversely,aspect ratio46and roundness factor35are more popular.Since the range of debris sizes overlaps between different debris types,more details of debris outlines need to be utilized for further classification.A sample indicator is the angle definedby three speci fied points on a debris outline.47Moreover,a set of outline sequences is defined as radius differences from the equal circle so that some analytical methods such as Fourier transform can be easily applied in a sequence.41,48,49Based on the fractal theory,a fractal dimension is obtained through measuring the perimeter of a debris outline with different step sizes,which is used to represent the outline feature.50–58In addition,surface texture is also an important morphological attribute,59–63so debris pictures are processed by grey level analysis,642D fast Fourier transform,65fractal dimension,66and pattern recognition.67

Table 2 Debris features of five typical wear types.

Wear type Debris feature Equal diameter(μm) Thickness(μm) Ratio Morphology Rubbing 0.5–15 0.15–1 3:1–10:1 Tiny Cutting 25–100(length) 2–5(width) 12:1–20:1 Spindly Rolling fatigue(bearing) 10–100 1–10 10:1 Blocky and flat Combined rolling and sliding(gear) 4:1–10:1 Irregular Severe sliding >15 10:1 Striations and straight edges

Fig.4 Relationship between debris generation and wear process.69

Through these valuable studies,the relationships between wear type,wear mechanism,and debris feature are roughly known.68Among them,Bhushan69summarized the relationship between debris generation and wear process as shown in Fig.4,which has practical guiding significance.However,because of complicated relationships between these three objects and potential differences on individuals,debris classification could only qualitatively determine wear type and mechanism.Therefore,how to quantify a wear process is still a significant challenge.

4.Detection principles

Throughout debris detection techniques,the development is divided into three stages:of fline weighting,of fline detection based on instruments,and online monitoring based on sensors.In 1950s,engineers regularly collected debris from an oil filter and then weighted the debris mass to know wear severity.15As weighting can only get a little information,specific instruments such as spectrograph and ferrograph have been developed since 1960s.Spectrograph uses the light of debris burning to identify debris compositions and contents.70In order to simplify this instrument,X-ray fluorescence spectrograph was presented,which uses the light excited from debris and is more convenient than the original spectrograph.71–73Ferro graph utilizes a gradient magnetic field to orderly deposit debris particles according to their sizes,and then the distribution and morphology of debris particles can be measured.7Although advanced spectrograph and ferrograph have several advantages such as rich information,quick respond,and high accuracy,they are usually of fline because of complicated structures,so the wear state may not be provided in real time.Consequently,engineers began to study online debris detection since 1980sand expected to timely obtain the wear state without shutting down a machine.8,74As online debris monitoring is a good way to ensure reliable running and achieve condition-based maintenance,it becomes a hots pot in mechanical fault diagnosis.75

According to measurement principles,online debris detection can be classified into four types:optical,inductive,resistive-capacitive,and acoustic methods.

HPLC切换波长法同时测定健脾止泻宁颗粒中盐酸小檗碱和黄芩苷的含量 ……………………………… 黄传俊等(10):1324

The optical method76–79includes a pair of light transmitter and receiver,in which light passes through oil flow as shown in Fig.5.As the light could be blocked by a debris particle,the change of light intensity may reflect the size of the debris particle.This is the most sensitive method at present,which could detect above 5-μm debris in a channel of 1.2 mm by 1.6 mm,but oil transparency and bubbles may seriously affect its result.In addition,such a small channel will cause heavy throttling,so this method is not suitable for big flow conditions,e.g.,above 1 L/min.

Fig.5 Schematic diagram of the optical method.

Fig.6 Schematic diagram of the inductive method.

The inductive method8,9,74,80–89is based on electromagnetic induction,in which debris particles will cause a corresponding inductive voltage and an inductance change in inductive coils when the particles go through the sensor,as shown in Fig.6.In this method,the inductive voltage and inductance change are in proportion to the debris size,and different materials such as ferromagnetic and diamagnetic ones will cause different signature phases.Consequently,the inductive method can provide information about debris sizes and materials.Overall,the advantages of this method are:(a)high throughput,(b)roughly distinguishing debris materials,(c)insensitive to oil quality,and(d)suitable for metal pipes.However,as a magnetic field is passive so that the field is difficult to be concentrated in a specified zone,the sensitivity of the inductive method is relatively poor as detecting 100 μm debris in a pipe with a 12 mm diameter.9

In the resistive-capacitive method,a pair of poles is placed on both sides of oil flow as shown in Fig.7.The electrical field will be disturbed when debris particles pass through the sensor,so debris particles can be detected by measuring resistance90,91or capacitance92–95between the two poles.By contrast to a magnetic field,an electrical field is active so that the field can be easily limited in a small zone to improve the sensitivity,and thus this method can detect 10-μm debris in a channel with a 40 μm height by a 100 μm width.94Because of different permittivity,this method is sensitive to water rather than bubble.Although the sensor structure is very simple,this method is not widely applied because the electrical field would accelerate oil deterioration and oil quality may affect the detection result.

Fig.7 Schematic diagram of the resistive-capacitive method.

Fig.8 Schematic diagram of the acoustic method.

Table 3 Comparison of four detection methods.

Method Detection accuracy Advantage Disadvantage Optical 5 μm in channel of 1.2 mm×1.6 mm High sensitivity,morphological information Affected by bubble and oil transparency,low throughput Inductive 100 μm in channel of 12 mm diameter High throughput,distinguish ferromagnetic and diamagnetic,insensitive to oil quality,suitable for metal pipe Low sensitivity Resistive capacitive 10 μm in channel of 40 μm ×100 μm Simple structure,high sensitivity Affected by water and oil transparency,cause oil deterioration Acoustic 75 μm in channel of 6.5 mm×6.5 mm Distinguish bubble and solid debris Affected by oil viscosity, flow speed and mechanical vibration

(3)Compared to offline debris detection methods,online debris monitoring can provide a detailed process of debris generation rather than rich information of each debris particle.Therefore,how to reveal wear modes based on debris generation behaviors would be a significant study.

A comparison of these four methods is shown in Table 3.

5.Online inductive method

Fig.9 Quantitative debris monitor.8

Fig.10 Debris sensor with electromagnetic collection.74

As unique advantages such as high throughput,distinguishing debris materials,insensitive to oil quality,and suitable for metal pipes would greatly benefit on line debris monitoring,engineers have paid more attention to the online inductive method in past thirty years.As early as 1988,Centers and Price8monitored the bearing of a GE90 engine through a Quantitative Debris Monitor(QDM)shown in Fig.9,which could separate air and debris from oil flow and detect above 250-μm debris.The study showed a significant value of online debris monitoring,but the insufficient sensitivity of this sensor was also exposed.At the same period,Chambers et al.74designed an inductive sensor with an electromagnet for debris collection,as shown in Fig.10(DEMOD:demodulator,ADC:analog to digital converter,F/V Converter:frequency to voltage converter,and PPI:processor peripheral interface).The electromagnet can collect many small debris particles during a period and release them together so that the undetectably small particles could be detected as a big particle.However,the collected proportion is variable depending on magnetic saturation and debris concentration so that a detection result may not truly reflect debris generation.In 1990,Flanagan et al.80presented an evaluation method for debris materials based on different changes in an inductive coil’s resistance and inductance as shown in Fig.11(VFM0:voltage of frequency modulation and VAM0:voltage of amplitude modulation).Moreover,they validated that the method could detect 100 μm ferrous and 200 μm non-ferrous debris within a pipe with a diameter of 6 mm.In the following studies,Gas Tops,a Canadian company,developed a triple-coils sensor called Metal SCAN shown in Fig.12(AC:alternating current),in which an inductive coil is placed between two driven coils so that the magnetic field in the inductive coil would be counteracted by the opposite driven fields.Therefore,an inductive voltage will be generated when debris particles pass through the sensor and disturb the balance.In addition,this sensor can distinguish ferromagnetic and diamagnetic debris through the phase of debris signature.The experiment verified that the sensor could detect above 125 μm ferrous debris within a pipe with a diameter of 1/2 inch.9

Fig.11 An evaluation method for debris materials.80

Fig.12 Schematic diagram of debris sensor Metal SCAN.

32.Yarrow A,Gadd P.The role of ferrography in the monitoring of helicopter assemblies.Proceedings of the international conference on condition monitoring.1984 April;University of Swansea;1984.p.503–24.

对于二胡初学者而言,如果不能及时疏导这样的状态,久而久之,就会产生巨大的压力,从而阻碍演奏者的进一步发展。根据实际情况我们可以看出,有的演奏者本身是科班出身,在二胡演奏练习过程中,很多演奏者显得较为浮躁,缺乏足够的耐心,一些自己不理解的知识和技能也不虚心请教。一旦在正式场合表演就会很容易紧张,紧张就容易出错,导致整个演奏效果大打折扣,杂乱无章。

Fig.13 Two debris sensor structures with high sensitivity.81,82

Fig.14 LC resonance method to improve sensitivity.85

Fig.15 Parallel sensing with multiple channels.88

Fig.16 Debris sensor based on a radial magnetic field.86

Fig.17 A symmetrical structure with permanent magnets.87

Fig.18 Debris identification based on a threshold.98

As the sensitivity of practical detection is related to both sensor performance and environment interference,signal processing is another effective approach to improve sensitivity besides optimizing the structure and parameters.83,98–102Usually,debris signature is similar to a sine wave,and environment interference is composed by random noises and some periodical waveforms caused by mechanical vibration or AC power.Obviously,the sensor output combined with these waveforms is non-stationary,so a simple identification method for debris particles is threshold algorithm as shown in Fig.18(ODM:oil debris monitor),which is widely applied in practical detection.9

电力安全生产中风险随时存在,因此,做好风险管理是为了解决电力生产过程中存在的安全问题,同时,为了电力企业在生产过程中可能存在的安全事故起到防微杜渐的效果。在风险控制过程中,需进行一些科学、合理的分析,能使其在实际应用中获得更好地效果,发挥更大的价值。

Fig.19 Signal extraction method based on the fractional calculus technique.98

Fig.20 A time-invariant wavelet transform combined with Kurtosis analysis.99

6.Debris-based diagnosis

Fig.21 A joint method based on adaptive line enhancement and wavelet threshold de-noising.100

Fig.22 A maximal overlap discrete wavelet transform with an optimal decomposition depth.101

Fig.23 A hybrid method combined with band pass filters and a correlation algorithm.102

In early 1970s,based on of fline measuring oil samples or filters,engineers found that debris size and concentration were apparently increased by increasing of wear severity.6Therefore,mechanical degradation could be known by regular debris inspections so that condition-based maintenance would be performed.Bowen and Anderson et al.studied debris sizes under different wear types,and found that debris size could roughly classify wear types and indicate wear severity,especially,above 15-μm debris particles generally coming from abnormal wear.34,37This study provided an important foundation for debris-based diagnosis.Further,Roylanceand Pocock39analyzed 1–20 μm debris in different wear situations,and proposed Weibull function to describe the debris distribution so that the wear progress can be revealed through the distribution parameter. As research continued, many studies3,7,68,69indicated that the relationships between wear type,wear mechanism,and debris feature are complicated.In practical wear,several wear mechanisms may occur at the same time,and several debris types would be generated.Therefore,it is difficult to know current wear progress through classifying current debris,i.e.,the debris classification result may not determine whether a machine is normal or not.

Fig.24 Quantitative debris monitor vs of fline debris detection.8

By contrast,online debris detection not only provides debris size and number at a moment,but also shows their dynamic processes.8,76,77This advantage can increase confidence in diagnosing by specified criteria.In 1980s,Centers and Price8compared a quantitative debris monitor(QDM)to offline debris detection as shown in Fig.24,which indicated that the sensor can monitor debris generation through accumulated debris counts.In 2000,Miller and Kitaljevich9investigated the bearing fault of an F119 engine by using a MetalSCAN sensor and achieved fault alarm through setting a limit of accumulated debris counts,as shown in Fig.25.After that,Dempsey used a Metal SCAN sensor to monitor the wear processes of gears103and bearings104respectively shown in Figs.26 and 27.The experiment results indicated that the accumulated debris mass can also reflect the wear progress.As debris sizes are variable,the accumulated mass is more real than accumulated counts to measure friction damage.Nevertheless,further studies10,104indicated that it is still difficult to determine a threshold of the accumulated mass to distinguish fault components from normal ones because of an inconsistent initial state and a variable running condition,even their distributions are very similar as shown in Fig.28.In addition,the underlying reason is the cumulant of debris is little related to the physical running status.

Fig.25 Debris monitoring for an F119’s bearing based on a MetalSCAN sensor.9

Fig.26 Debris monitoring for gears based on a MetalSCAN sensor103

Fig.27 Debris monitoring for bearings based on a MetalSCAN sensor104

Fig.28 Debris distribution comparison.25

Fig.29 A simple linear model to predict the remaining useful life(RUL).

Fig.30 Definition of the damage limit.11

Fig.31 Definitions of the maximum and minimum damage levels.10

Fig.32 Positive feedback model for debris generation.106

As debris generation is irreversible,the remaining useful life predicted through debris information has a good convergence.A typical debris generation behavior commonly exists in the degradation of gears and bearings9,10,25,103–105:a few debris particles are generated in the early and middle stages of a component’s useful life,and the generation rate will rapidly increase and tend to be a stable value in the late stage.Therefore,the remaining useful life can be roughly predicted by a simple linear model when an accumulated debris amount is defined as the end of useful life,10as shown in Fig.29.However,in a complicated machine such as a wind turbine,there are many friction pairs,and their working loads may frequently change in a large range so that the debris generation rate is variable;as a result,a simple linear model is no longer applicable.Thus,Dupuis presented a model with combined average generation rates of both long term and short term to predict the remaining useful life of a wind turbine.11The model is shown in Eqs.(2)–(4),where MASis the short-term moving average,MALis the long-term moving average,MAWis the weighted moving average,C is the daily accumulated count,and n is the current day.L is the number of days of long term while S is the number of days of short term.For the definition of damage limit,the total mass of the expected damage area is usually defined as the end of useful life as shown in Fig.30.Nevertheless,Dempsey et al.found that the ratio of total mass to damage area is variable,so they considered a compromise to define the maximum and minimum damage levels for the remaining useful life,10as shown in Fig.31,where cups 27,33,35,and 36 are four bearing cups among experimental samples.In order to explain the sudden change of the debris generation rate,Hong et al.106presented a positive feedback mechanism to describe the behavior of debris generation as shown in Fig.32,and they proposed a certain level of sudden change of the generation rate as the end of useful life.Based on this idea,they developed a prediction model for remaining useful life as shown in Eq.(5),where η is the remaining useful life,ξRis the working condition factor,Ra0is the initial surface roughness,and t is the running time.The predicted result for a wind turbine indicated that the remaining useful life can be effectively predicted in the early and middle stages of the whole life,as shown in Fig.33,where MAM is the moving average model,PFM is the positive feedback model,and FLD is the full life data.This study differs from traditional debris classification to reveal wear behavior and is a new trial form time series of debris generation.

7.Discussion

This paper has summarized research progresses on mechanical wear debris related fields such as wear mechanisms,debris features,detection methods,signal processing,and fault diagnosis.The following conclusions can be obtained.Because of its close relationship with friction wear,wear debris provides powerful information for mechanical diagnosis.The related studies indicate that wear mechanisms and types can be roughly identified through debris features,but debris classification may not be able to determine the wear progress because several wear mechanisms may simultaneously exist in a practical wearing process.With the maturity of online inductive debris sensors,online debris monitoring becomes popular and shows excellent performance on mechanical wear tracking.As new indicators,accumulated debris mass and number can effectively alarm mechanical fault and predict remaining useful life.However,the accumulation may not reflect the current wear status,so diagnosis results based on these indicators would be seriously affected by individual varieties.In order to promote wider applications of debris techniques,the authors feel that the following issues are worth further studies.

Fig.33 Predicted results of the moving average model and the positive feedback model.106

(1)As existing debris features such as size and distribution are difficult to determine wear progress,debris features with time attributes,e.g.,debris accumulation and generation rate,should be further investigated to reveal wear behavior.

(2)Debris information obtained from current online detection is limited to size,number,and material type,so enhancing online detection by including debris morphology and composition will contribute to online fault diagnosis.

The acoustic method84,92,96,97is composed of an acoustic transmitter and an acoustic receiver,which are placed in oil so that acoustic wave can penetrate through oil flow,as shown in Fig.8.A debris particle would distort a part of transmitted waves and generate some re flex waves when the particle moves into the sensor.Therefore,the strengths of both transmitted waves and re flex waves could reflect the debris size.Based on this method,75 μm debris could be detected in a channel of 6.5 mm by 6.5 mm,and bubbles could be distinguished from solid debris by the phase of a received wave.84However,this method is difficult to be applied in real systems because oil viscosity, flow speed,and mechanical vibration all may affect its performance.

(4)There may exist several friction surfaces in a single machine,but with only one lubrication system,debris generated from different friction surfaces will be mixed together,and abnormal wear might be hidden,causing a severe catastrophe to the machine.Therefore,how to distinguish different debris sources and track wear processes would also be an interesting topic.

Acknowledgements

This study was supported by the National Natural Science Foundation of China(Nos.51620105010 and 51575019),the National Basic Research Program of China (No.2014CB046402),and Singapore Energy Innovation Research Programme(Gas Technology Grant No.NRF2014EWTEIRP003-014).

References

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两词表频度最高10字相同率80%,而前100字两者的相同率为83%,即83个字共同出现在两表中。其中各有17字为对方所缺。

2.Amiri M,Khonsari MM.On the thermodynamics of friction and wear–a review.Entropy 2010;12(5):1021.

As many factors such as wear mechanism,debris feature,detection method,and signal processing and diagnosis technique affect the accuracy and reliability of debris-based diagnosis,it is,therefore,beneficiary to have an overall review on the research progresses and discuss the key problems and solutions.In this paper,we will provide an overview on these issues and summarize their connections.The remaining sections of this paper are organized as follows.In Section 2,different wear mechanisms for debris generation are investigated.Section 3 summarizes the relationship between debris features and wear types.Section 4 introduces the principles of debris detection.The developments of online inductive methods and signal processing are reviewed in Section 5.Section 6 presents the research progresses of debris-based diagnosis.Finally,some notable problems are discussed in Section 7.

4.Dowson D.History of tribology.2nd ed.New Jersey:Wiley;1998.

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隐喻既是一种修辞手法,又是一种认知手段,表达效果良好及修辞功能强大是隐喻的最大特征。新闻英语中较多的运用这种手法,使新闻简洁明朗。

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严格教学组织管理,扩大互动交流机会 教师要对上课禁止使用手机做出严格规定,要求学生将手机关机,或将手机放入收纳袋、回收箱中,课堂上要对未按规定执行的学生进行批评教育,要求立即改正,规范学生上课行为,使学生养成上课不使用手机的良好习惯。另外,目前高校班额较大现象仍然存在,学校应积极推动小班化教学,一方面,教师可以开展个性化教学,扩大师生互动频次;另一方面,教师可以对教学组织管理进入精细化,不会顾此失彼,逐步养成学生上课不使用手机的良好习惯。教师通过设置课前预习汇报、师生互评、随机提问等多种形式的教学环节,来扩大与学生互动机会,提高学生学习积极性,减少上课使用手机的行为。

However,the performance of a threshold algorithm seriously depends on signal quality,i.e.,smaller debris could be detected under a higher signal-to-noise ratio.Therefore,how to increase the signal-to-noise ratio is the key point.Hong and Liang presented an extraction method for debris signature based on the fractional calculus technique as shown in Fig.19,of which the variables and algorithms are explained in Ref.98Fan et al.99considered that Kurtosis is a good indicator to distinguish non-periodical debris signature from stationary interference,so they presented a time-invariant wavelet transform combined with Kurtosis analysis as shown in Fig.20(TIWT:time-invariant wavelet transform,σj:standard deviation of the coefficients on the scale j,and N:length of sample data).In order to eliminate random noise and the interference caused by vibration,Bozchalooi and Liang100presented a joint method based on adaptive line enhancement and wavelet threshold de-noising as shown in Fig.21(ALE:adaptive line enhancement and IVE:iterative noise variance estimation).As the decomposition depth is an important parameter in the wavelet transform and directly affects the performance,Li et al.presented a maximal overlap discrete wavelet transform with an optimal decomposition depth as shown in Fig.22,of which the detail is explained in Ref.101With a novel idea of de-noising,Hong et al.102presented a hybrid method combined with band pass filters and a correlation algorithm as shown in Fig.23(x(t)is the data sampled from Sensor X,y(t)is the data sampled from Sensor Y,and Rxyis the correlation result between x(t)and y(t)),in which two signals come from two same sensors connected in series in a pipe.The experiment result indicated that this method can improve sensitivity to 2.63 times,i.e.,the volume of minimum detectable debris is reduced to 38%of that from previous detection.

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[58] Andrew P. Cortell and James W.Davis, “Understanding the Domestic Impact of International Norms: A Research Agenda”, International Studies Review, Vol. 2, No. 1 (2010), pp. 75-77.

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模拟桩59-X30井在不同注水等级下的生产情况(表1,图1),对油井的累积产油量、采收率及油井见水时间进行分析。

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However,the related studies3,68,77indicated that the debris size is between 1 and 20 μm in normal wear and between 50 and 100 μm in abnormal wear.Especially,debris particles above 200 μm are probably generated in the late stage of the mechanical useful life.8In order to increase confidence for diagnosis results and schedule maintenance leisurely,the sensitivity of the inductive method should be improved.For this goal,Du et al.81,82analyzed the magnetic field generated by a coil with different ratios of length to diameter,and they proposed that a low length-to-diameter ratio could benefit sensitivity,so they presented two sensor structures shown in Fig.13(LCR Meter:inductance-capacitance resistance meter,PDMS:polydimethylsiloxane,H:height of the flow channel,and L:length of the flow channel).The experiment indicated that their sensors could detect above 50 μm debris within a channel with a 250 μm height by a 500-μm width or a pipe with a diameter of 1.2 mm.Soon later,they used the LC resonance method to improve sensitivity as shown in Fig.14(Cp:capacitance)so that 20-μm ferromagnetic debris and 55 μm diamag-netic debris can be detected in the previous pipe.85However,the flow capacity of this method is only 3 mL/min,which may not satisfy online debris detection.Therefore,Zhe’s research group used parallel sensing in multiple channels to promote the flow capacity as shown in Fig.1583,88(1.signal input/output,2.control signal A1,3.control signal A2,4.control signal A3,5.control signal A4,6.multiplexer power inlet(DC,13.0 V),7.MUX2,8.multiplexer channel enable voltage(DC,3.6 V),9.MUX1,10.oil inlet,11. flow divider,12.sensing channel,13.reservoir,and 14.oil outlet).In their latest study,89the flow capacity was improved to 460 mL/min through a 3×3 sensor array.In order to improve sensitivity in big flow conditions,Hong et al.analyzed axial and radial magnetic fields for debris detection,and found the radial field has a higher strength and uniformity than those of the axial field in the same excitation condition.Then,they presented a sensor structure based on a radial magnetic field as shown in Fig.16,which could detect 200 μm debris within a pipe with a diameter of 20 mm.86After that,they designed a symmetrical structure with permanent magnets to further optimize strength and uniformity,as shown in Fig.17.Through this improvement,83-μm debris could be detected within a pipe with a diameter of 12 mm under a flow rate of about 20 L/min,87which is valuable for practical applications.

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Peter Lodrup,“Challenges to an Established Paternity - Radical Changes in Norwegian Law”,International Survey of Family Law,353,2003,p.357.

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耦合是物理学的基本概念,是指两个或两个以上的系统或运动方式之间相互依赖、相互协调、相互促进的动态关联关系[13],耦合的实质是系统及其运动方式之间的共生互动[14]。耦合理论广泛应用于教育、管理等领域研究中。本研究旨在对校友与校企合作工作的耦合关系及其体系建设进行研究,首先对其耦合基础进行探讨。

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Wei HONG,Wenjian CAIa,Shaoping WANGb,c,*,Mileta M.TOMOVICd
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