The present invention relates to a method for controlling an arc welding equipment used in a welding operation and adjustable by varying at least one welding parameter value, which method comprises the steps of: determining said at least one welding parameter value while using a theoretical model of the welding process associated with the welding operation and controlling the operation of the welding equipment and the welding process associated therewith by using said at least one welding parameter value for adjusting the welding equipment, to a method for simulating an arc welding process which method comprises the steps of: inputting data into a theoretical model representing the welding process and determining at least one welding parameter value of the welding process while using the theoretical model and the data input, with the purpose to simulate the welding process, and to a method for predicting the quality of a weld obtained from an arc welding operation which method comprises the steps of: inputting data into a theoretical model representing the welding process associated with the welding operation and determining at least one property of the weld related to at least one welding parameter of the welding process while using the theoretical model and the data input.
The invention also relates to a device comprising an arc welding equipment used in a welding operation and adjustable by varying at least one welding parameter and an arrangement for controlling the operation of the arc welding equipment, said control arrangement including a means adapted to determine the value of said at least one welding parameter while using a theoretical model of the welding process, and a member adapted to control the operation of the welding equipment and the welding process associated therewith by using said at least one welding parameter for adjusting the welding equipment.
Furthermore, the invention relates to uses of the methods and to computer program products according to claims enclosed.
When work pieces are joined by arc welding the quality of the welded joints is strongly dependent upon the parameters set during the arc welding operation. Examples of these welding parameters are welding current, supply voltage, type of shielding gas, shielding gas flow rate, welding speed, torch angle, electrode (wire) extension, wire feed rate, and other properties of the wire and of the work piece, such as dimensions and materials. These welding parameters interact with each other in the welding process in a complex manner and influence the properties, i.e. the geometry or type of weld, metallurgy and the mechanical strength of the weld resulting from the welding operation. More precisely, the quality of a weld joint depends strongly on the metal transfer mode present during the welding. In other words, the way metal is transferred from the wire tip (for example the anode) to the work piece (for example the cathode) during the welding has a very strong effect on the final properties and the quality of the weld joint.
There is of course a need to know how different sets of the adjustable parameters will effect the properties of the weld joint, so that the parameters may be adjusted in a way resulting in the weld desired. One way is to attempt to predict the metal transfer mode based on the knowledge about the influence of the different parameters. However, according to the state of art the metal transfer mode is mainly determined through empirical methods. The metal transfer mode may be identified through the noise generated by the welding process by people with a very long experience in arc welding. Inspection of the weld joint after finishing the welding operation may also give clues to which metal transfer mode that was present during the welding operation. Thus, at present, the settings of important welding process parameters used in robotic arc welding are found out experimentally by trial and error for every single welding task or welding condition, which is both time consuming and costly. For example, in case of using parameters resulting in an undesired metal transfer mode the welded joint may be of a poor quality and the work piece may be destroyed.
One reason to the lack of knowledge about how the welding parameters effect the welding process in general, and particularly the arc, and about the relations between the welding parameters used and the quality of the weld joint, is the difficulty in making measurements of the arc, or in the vicinity of the arc, and in the near to arc regions close to the wire and the work piece. Thus, as an undesired consequence it is very difficult to design a control system based upon direct measurements of the arc parameters for controlling an arc welding equipment. The fact is that automated or robotic arc welding are used in quite few of the arc welding applications performed throughout the world today, since the difficulty in predicting the result of the welding operation and the properties of welding process associated thereto for a given set of welding parameters, together with proportionately small series of work pieces, makes it more cost efficient to perform the work manually by workers skilled in welding.
A first object of the invention is to provide a method for controlling an arc welding equipment, which method enabling that the arc welding equipment may be controlled during a welding operation by adjusting at least one welding parameter determined without the need of measurements of the welding process or repeated welding experiments prior to welding.
The first object is obtained according to the invention by providing such a method, referred to in the introduction, which comprises the steps of:
By such a method it is possible to determine at least one welding parameter value, such as the welding current or voltage supply, wire feed rate, wire extension etc., and to use this welding parameter value for controlling the arc welding equipment in accordance with the present conditions to obtain a weld with the properties desired.
A second object of the invention is to provide a method for simulating an arc welding process without the need of measurements of the corresponding real welding process or repeated welding experiments.
The second object is obtained according to the invention by providing such a method, referred to in the introduction, which comprises the steps of:
By this simulation method it is possible to obtain at least one welding parameter value, and/or the present metal transfer mode, for a given set of other welding parameters in the simulation, and for example this simulation method may be used for understanding and designing of real welding processes and for default setting of welding parameters of arc welding equipment in different arc welding operations.
A third object of the invention is to provide a method for predicting the quality of a weld obtained from an arc welding operation without the need of repeated welding experiments.
The third object is obtained according to the invention by providing such a method, referred to in the introduction, which comprises the steps of:
By such a method it is possible to predict one or more mechanical properties of a weld resulting from an arc welding operation by determining one or more welding parameters required for the quality desired and use this information in real arc welding operations. It is possible to use the method for predicting the quality of a weld for a given set of welding parameters as well as for determining one or more welding parameters required for obtaining certain mechanical properties of the weld.
According to a preferred embodiment of the invention one or more of said methods comprise the step of:
According to another preferred embodiment of the invention one or more of said methods comprise the step of:
According to another preferred embodiment of the invention one or more of said methods comprise the step of:
According to another preferred embodiment of the invention one or more of said methods comprise the step of:
According to another preferred embodiment of the invention one or more of said methods comprise the step of:
According to another preferred embodiment of the invention said methods comprise the step of:
According to another preferred embodiment of the invention said methods comprise the step of:
A fourth object of the invention is to provide a device which has an arrangement for controlling the arc welding equipment during a welding operation by adjusting at least one welding parameter determined without the need of measurements of the welding process or repeated welding experiments prior to welding.
The fourth object is obtained according to the invention by providing such a device, referred to in the introduction, in which the means included in the control arrangement is adapted to use said theoretical model comprising at least two separate parts, of which at least one part represents the arc or a portion thereof, corresponding to different parts of the welding process, each model part being represented by a model component, said model components together with a model power source being included in an electric circuit model, and adapted to calculate at least one electric circuit model parameter related to said at least one welding parameter from the electric circuit model for said control by said member. Thus, by the means according to the invention it is possible to determine how to set at least one welding parameter value, such as the welding current or supply voltage, wire feed rate, wire extension etc., with the purpose of optimizing the welding process under the present conditions, and use this welding parameter value by said member for adjusting the arc welding equipment in accordance with the present conditions to obtain a weld with the properties desired.
According to a preferred embodiment of the invention said means is adapted to use said theoretical model having the arc-wire interaction region part of the welding process separately represented by one of said model components in the electric circuit model. By such a device, together with a suitable physical model, important information is obtained because it is possible to take important factors in the welding process, such as the voltage drop over the region near to anode and the heat flux from arc to anode, into consideration in determining said at least one welding parameter value. In the arc-wire interaction region of the welding process, high gradients of different quantities such as temperature and concentration of particles are present, and the voltage drop in this region is very high. Thus, this region gives an important contribution to the characteristics of the welding process.
According to another preferred embodiment of the invention said means is adapted to use said theoretical model having the arc-work piece interaction region part of the welding process separately represented by one of said model components in the electric circuit model. By such a device, together with a suitable physical model, important information is obtained because it is possible to take important factors in the welding process, such as the voltage drop over the region near to cathode and the heat flux from arc to cathode, into consideration in determining said at least one welding parameter value. In the arc-work piece interaction region of the welding process, high gradients of different quantities such as temperature and concentration of particles are present, and the voltage drop in this region is very high. Thus, this region gives an important contribution to the characteristics of the welding process.
According to another preferred embodiment of the invention said means is adapted to use said theoretical model having the arc region part of the welding process separately represented by one of said model components in the electric circuit model. By such a device, and particularly together with an embodiment of the invention in which the means is adapted to use said theoretical model having information obtained through calculations from a physical model of the arc column region part of the welding process to be used in determining said model component representing the arc region part, important information is obtained such as arc mean temperature, temperature near to wire, temperature near to work piece, arc radius and arc current-voltage characteristics, and it is also possible to take the thermo-physical properties of a shielding gas present in the arc region into consideration in determining said at least one welding parameter. According to another preferred embodiment of the invention said means is adapted to use said theoretical model having information obtained through calculations from a physical model of the arc-wire interaction region part and/or of the arc-work piece interaction region part of the welding process to be used in determining said model component representing the arc region part, important information is obtained because it is possible to take important factors in the welding process, such as the voltage drop over the region near to anode/cathode and the heat flux from arc to anode/cathode, into consideration in determining said at least one welding parameter value. In the arc-wire interaction region and in the arc-work piece interaction region of the welding process, high gradients of different quantities such as temperature and concentration of particles are present, and the voltage drop in these regions is very high. Thus, these regions give an important contribution to the characteristics of the welding process.
According to another preferred embodiment of the invention in which said means is adapted to use said model component determined by means of said physical model describing the arc by at least one equation independent of the extension in space of the arc, and particularly together with an embodiment of the invention in which said means is adapted to use said model component determined by means of said physical model describing the arc by said at least one equation only dependent on the time, the model component and thus said at least one welding parameter value, may be determined fast and with proportionally short computational time, which makes the device very suitable to be used in controlling the arc welding equipment on line.
According to another preferred embodiment of the invention said means is adapted to use said theoretical model having the arc column region part of the welding process separately represented by one of said model components in the electric circuit model. By such a device, together with a suitable physical model, important information is obtained such as arc mean temperature, temperature near to wire, temperature near to work piece, arc radius and arc current-voltage characteristics, and it is also possible to take the thermo-physical properties of a shielding gas present in the arc column region into consideration in determining said at least one welding parameter.
According to another preferred embodiment of the invention said means is adapted to use said theoretical model having the wire part of the welding process separately represented by one of said model components. By such a device, together with a suitable physical model, important information is obtained such as metal transfer mode, dipping frequency etc, and it is also possible to take material properties of the wire into consideration in determining the value of said at least one welding parameter.
According to another preferred embodiment of the invention said means is adapted to use said theoretical model having the work piece part of the welding process separately represented by one of said model components. By such a device, together with a suitable physical model, important information is obtained about quality features such as weld joint profile, penetration profile etc, and it is also possible to take material properties of the work piece into consideration in determining the value of said at least one welding parameter.
The invention also relates to computer program products according to the claims enclosed. It is obvious that the methods according to the invention defined in the sets of method claims enclosed are well suited to be performed through program instructions from a processor which may be effected by a computer program.
Further advantages of and features of the methods and the device, the computer program products, and the uses of the methods appear from the following detailed description and the other claims enclosed herein.
With reference to the appended drawings, below follows a description of preferred embodiments of the invention cited as examples.
In the drawings:
In this application the wording “welding process” is used as a generic term of the main parts included in an arc welding operation and of the physical processes associated therewith which take place when an electric arc is generated between a wire (anode) and a work piece (cathode).
In
The welding process may be divided in the following main parts: wire part 5, arc region part 6 and work piece part 7. Furthermore, the arc region part 6 may be divided in subparts, namely an arc-wire interaction region part 8, an arc column region part 9 and an arc-work piece interaction region part 10. All these parts contribute to the characteristics of the welding process and to a certain voltage drop in the electric circuit.
However, in the electrode regions, i.e. in the arc-wire interaction region part 8 and the arc-work piece interaction region part 10 of the welding process, the voltage drop is very high compared to the voltage drop in the central part of the arc, i.e. in the arc column region part 9. In
Furthermore, the voltage distribution in the gap is very difficult to determine by direct measuring of the arc whereas the voltage drops due to the resistances and inductances of the conduits 11 in the circuit and of the power source 1 itself are easily determined by conventional measurements. Thus, there is a need of a physical model for describing the phenomena of the arc to predict the behaviour of the welding process. However, as already indicated the wire 2 and work piece 3 strongly interact with the arc 4 and influence the welding process. Thus, good physical models of these parts are also needed to describe the welding process in its entirety.
The main idea of the invention is to obtain the value of at least one welding parameter by means of a theoretical model and use said at least one welding parameter in operating an arc welding equipment and/or in simulating an arc welding process and/or in predicting the quality of a weld obtained from an arc welding operation. This is performed by dividing the welding process into parts in a theoretical model and letting each of these welding process parts and the welding parameters associated therewith be represented by a model component. The components are then put in an electric circuit model together with a model power source with the purpose of calculating at least one electric circuit model parameter related to said at least one welding parameter from the electric circuit model. The components may be resistive and/or inductive components, but also other electric elements than pure resistors and inductors may be included in the electric circuit model. Furthermore, the model components may be connected in series and/or in parallel.
In
Although the electric circuit model 12 illustrated in
However, it is also possible to use different physical models representing subparts of a part of the welding process, the arc region part 6 for instance, which are based on the different characteristics of the part in different regions, for example the arc-wire interaction region 8, the arc column region 9 and/or the arc-work piece interaction region 10, resulting in one common model component such as a resistance Ra. In this way different parts of the welding process may be described without using a separate model component 13 for each part. In addition it is also possible to use input values from other parts of the welding process when the model component is calculated.
By using Kirchoff's Voltage Laws at least one electric circuit model parameter may be calculated from the electric circuit model 12. For example, if the voltage supply 14 and the other components 13 are known, the current may be calculated or vice versa for a given current an unknown model component may be calculated. The model components Rw, Ra and Rwp in
In
As indicated in
Furthermore, said means 23 and/or the control arrangement 22 may be used in performing any of the methods described herein.
In
In
In
The methods may be used for different objects such as for predicting the metal droplet formation in an arc welding operation for a given set of welding parameters, for predicting the metal transfer mode in an arc welding operation for a given set of welding parameters, for calculating at least one welding parameter value required for obtaining a particular metal transfer mode in a welding operation and/or for calculating at least one default setting value to be used for adjusting an automatic arc welding equipment prior to welding. The prediction of quality may be used for example for prediction of any mechanical property of a weld joint for a given input, i.e. set of welding parameters, or in the reverse direction for determining one or more welding parameter values for a given input, i.e. any mechanical property of a weld joint. An important application of the methods and the device according to the invention is the prediction of the characteristics of a certain welding process, and as mentioned above the prediction of the metal transfer mode present during an arc welding operation, which makes it possible to predict the transfer mode as a function of a certain welding parameter, such as wire feed speed or current, and thus to predict the transition region between so called short arc and spray arc mode.
In different embodiments of the methods the step of dividing the welding process may include dividing of the welding process so that the arc-wire interaction region part and/or the arc region part and/or the arc column region part and/or the wire part and/or the work piece part is separately represented by one of said model components 13 in the electric circuit model 12. In embodiments of the methods using an electric circuit model 12 according to
Furthermore, in a preferred embodiment described more in detail below, said model component, Ra, representing the arc region part is determined by means of information obtained through calculation from physical models of the arc column region part 9, the arc-wire interaction region part 8, and the arc-work piece interaction region part 10.
In
In
PHYSICAL MODELS
Arc Model
As already mentioned the welding process may be divided into different parts and the arc region part may be divided in subparts, namely an arc-wire interaction region part, an arc column region part and an arc-work piece interaction region part. The arc column, described in this chapter, occupies most of the space between the wire and the work piece. In this region, gradients of thermodynamic variables, such as temperature and pressure, are not too high and the system is in local thermodynamic equilibrium.
The arc model suggested here is based on energy, mass and momentum equations. The arc current generates Lorentz forces which have an important role in the welding process. The arc is usually constricted towards the wire tip. This rises the axial component of the Lorentz force. Plasma is therefore accelerated towards the work piece. The electromagnetic forces in the welding process are important both for the stabilization of the arc and for material transfer to the work piece. To be able to predict some phenomena of welding arcs, thermo-physical properties of shielding gas in the temperature range 300-30000 Kelvin are required. Due to arc-wire and arc-work piece interactions, the shielding gas is usually contaminated by metallic vapours, which strongly influence the physical properties of the arc.
The structure for the arc model proposed herein is shown in
According to the state of art, a detailed two-dimensional simulation of the arc is known today. However, such a simulation requires long computational time. This makes it difficult to use such a tool for controlling and monitoring the arc welding process.
In this application instead a fast arc model with the structure illustrated in
The energy balance of the arc is given below:
where L is the arc length, I denotes the electric current, σ refers to the electric conductivity, A is the cross section area of the arc column, Van and Vca are the voltage drops in the near to anode (wire) region and in the near to cathode (work piece) region, respectively. ρ is the gas density, h and h0 are the specific enthalpies of the arc and the surroundings, and Urad is the mean radiation density, which all are functions of the arc temperature. ν denotes the mean gas velocity. The heat transfer terms for arc-anode QA-A and arc-cathode QA-C are obtained from detailed physical models of the arc-cathode and arc-anode interactions.
Using Ampere's law and integration of Navier-Stokes equations for an incompressible flow in the expansion zone a simple equation for the mean velocity can be deduced as
where Rarc and Rwire are the radii of the arc column and wire, respectively, and μ0 is the magnetic field constant. Constants Ca and Cb depend on the current density profiles on the anode wire and will be derived with the help of CFD simulations and simple experiments.
The equations above together with the minimization of the power loss provide all necessary information such as arc mean temperature, arc radius and arc current-voltage characteristics.
The benefits of the proposed arc model are:
Near the electrodes, high gradients of temperature and concentration of particles are present. These lead to deviations from thermal and chemical equilibrium. It is well known that the voltage. drops in the near to wire region and in the near to work piece region are very high and dependent on electrode materials and arc column plasma properties. Therefore, it is important to take physical properties of the near electrodes phenomena for prediction of an arc welding process into consideration. In this section the model for the interaction between the arc and the work piece is presented. The model is based on the following:
The inputs to the arc-work piece interaction region model are the work piece material and the plasma properties in the arc column region (e.g. temperature and pressure). The outputs of the model are the voltage drop over the arc-work piece interaction region and the heat flux from work piece to arc due to charged particles. Furthermore, there is a conductive heat flux due to neutral particles. These data are needed in the global energy balance of the arc column. The model is adapted in a way so that it may easily be coupled to the arc model described above.
The benefits of the proposed arc-work piece interaction model are:
For illustrating the influence of the work piece material on the arc welding process, a summary of the physics is presented in the following.
The energy flux from the plasma to the work piece is given by:
where Je, Jem and Ji are the plasma back-dffused electrons current density, the emitted electrons current density and the ion current density, respectively. Tw, Te and Ti indicate the temperature of the cathode wall, electrons and ions. φc and Ei are the voltage drop in the space charge zone and the ionization energy of gas. φeff is the effective work function, which is defined as the difference between the mean energy of electrons inside the metal and the mean energy of the emitted electrons just outside the metal. qvap is the energy flux carried away by vaporization.
The energy balance in the ionization zone may be summarized as shown in
According to earlier investigations of the ionization zone, the main losses of electronic energy is due to ionization. Based on these results, the energy losses due to elastic collisions can be neglected. The energy balance is simplified by integration over the zone:
Jem(2kTw+eφc)+Joule_effect=Je(2kTe+eφc)+eJiE+3.2/kTe
The first term on the left hand side is the flux of the electrons brought into the ionization zone by the emitted electrons accelerated in the space charge zone. The second term of the left hand side presents the work of the electric field over the electrons inside the ionization zone. The first term on the right hand side is the energy flux carried away by the electrons leaving the ionization for the space charge zone. eJiE is the losses of the electron energy due to ionization. Finally, the last term on the right hand side is the energy flux carried away by electrons leaving the ionization zone for the arc column.
To be able to predict the cathode region behaviour, the current densities Je, Jem and Ji are required. These current densities are obtained by detailed kinetics of particles in the space charge zone. Here only the results are given.
The ion current density and the back-diffused electron current density are given by
According to the thermionic field emission mechanism, the emitted electron current density is given by Richardson-Dushman equation with the Schottky correction.
In the above equation, h and me are the Planck's constant and the electron mass, respectively. The effective work function is connected to the electric field according to:
where Φ0, ∈ and EC are the work function of the work piece material, the dielectric constant and the electric field strength at the cathode wall.
The electron and ion densities at the edge of the space charge zone can be calculated with good approximation as:
Di0 and kr are the ion-neutral diffusion coefficient at the top of the equilibrium limit and the recombination rate.
The set of equation presented is closed and can be solved easily to predict cathode region properties or arc-work piece interaction region properties in the arc welding process.
Arc-wire Interaction Region Model
In this section the model for the interaction between the arc and the wire (anode region) is presented. The model is based on the following:
The inputs to the arc-wire interaction region model are the wire material and the plasma properties in the arc column region (e.g. temperature and pressure). The outputs of the model are the voltage drop over the arc-wire interaction region and the heat flux from arc to wire due to charged particles. These data are needed in the global energy balance of the arc column. The model is adapted in a way so that it may easily be coupled to the arc model described above.
The benefits of the proposed arc-wire interaction model are:
For illustrating the influence of the wire on the arc welding process, a summary of the physics is presented in the following.
The total energy flux from the plasma to the wire is given by the losses from the arc due to charged particles, thermal conduction and radiation minus the heat power utilized for evaporation and radiation of the wire tip surface
For the energy flux of charged particles, electrons are considered only, since the ion current density flux in the arc-wire interaction region is low compared to the electron current density flux
There is energy flux due to thermal energy of electrons, kinetic energy of electrons resulting from acceleration in electric field and potential energy of electrons after phase transformation on the wire surface (free to bound). je is the current density of the electrons and Te is the electron temperature in the arc-wire interaction region. The electron temperature is taken as the mean arc core temperature provided by the arc model. φ is the nominal work function of the wire surface (known), and Van is the voltage drop over the anode region, which consists mainly of the voltage drop in the space charge zone
Van=φan
where je is obtained from kinetics
je=je(ne,φan)
where ne is the electron density in the anode region and is calculated using the equation of state, thermodynamic equilibrium laws and the thermodynamic properties of the arc (temperature, pressure).
For obtaining the voltage drop over the arc-wire interaction region the ion current density ji is taken into account. The following relation can be derived from kinetics
ji=ji(ni,φan)
where ni is the ion density in the ionization zone, which is equivalent to the electron density ne. Knowing the total current density j
j=je+ji
the voltage drop over the arc-wire interaction region can be obtained.
Thermal conduction from the arc results from the temperature gradient in the anode region acting on ions, and the heat fluxes due to the kinetic energy of ions and electrons in the arc-wire interaction region
where vi and ve are the velocities of ions and electrons, respectively, which are given by kinetics at thermodynamic equilibrium.
The radiation power from the arc is the fraction of the power totally radiated by the arc that reaches the wire tip surface
{dot over (Q)}rad=∈effσTarc4
where ∈eff is an effective emission coefficient of the arc, which can be estimated from the emission coefficient of the arc column, assuming a cylinder, times the fraction of cylinder surface directed towards the wire.
The energy flux due to evaporation of the wire tip surface is given by the product of evaporation rate and latent heat of the wire material
{dot over (Q)}ev,wire={dot over (m)}Δh
where the evaporation rates may be expressed as a function of arc column pressure and wire tip surface temperature
{dot over (m)}={dot over (m)}(P,Tans)
The energy flux due to radiation from the wire tip surface is given by
{dot over (Q)}rad,wire=∈σTans4
The only unknown remaining is the wire tip surface temperature Tans. This temperature can be obtained from the wire model. A simple estimation is that it is equal to the melting temperature of the wire material.
The set of equations presented above is closed and can be solved to predict the anode region properties or arc-wire interaction region properties in the arc welding process.
Wire Model
In the arc welding process, heat transfer from the arc to the wire causes rapid formation of droplets at the wire tip. Impact of detached and transferred droplets through the arc to the work piece may result in volume deformations and alteration of the mechanical properties of the weld. In the following, a model is suggested for prediction of the mass, heat and momentum transfer from dripping droplets into the work piece.
The shape of melt metal at wire tip is influenced by time-dependent forces such as gravity, inertia, surface tension, electromagnetic force, the effect of arc pressure, viscous drag by the gas flow. An extensive description of thermophysical phenomena involved in mechanisms of formation of droplets may be formulated accurately with 2-D computer tools based on a detailed analysis of the plasma-electrode interactions in conditions of local thermodynamic equilibrium of the plasma and laminar flow in the calculation domain. However, calculations required for these operations may be time-consuming and not acceptable in a user interface software to be used for controlling and/or monitoring the quality of a weld in an welding operation.
A simplified approach to the problem can be to consider the one-dimensional energy balance of a wire dominated by the effects of evaporation, metal transfer from the wire, ohmic heating in the wire by the arc current and current transfer from the plasma. In a quasisteady state mode, the total energy balance of the wire can be written as:
Ev+Em=Eoh+Ec
when the heat transfer processes for integrated values over the total volume of the wire stick-out are defined as:
due to the evaporation from the surface to the tip of the wire;
the heat losses due to metal transfer in the form of droplets detaching from the wire tips;
the heating in the wire by the arc current, and
the heat transferred from the plasma to the droplet at the tip of the wire. In the above relations, Vw is the total volume of the wire stick-out, S is the total external surface of wire, and Sc=πr2 is the cross-sectional area of the wire at the end of the wire at z=0 (T=300 K) and r is its radius. The quantities Cp, κ and ρ are the specific heat, the thermal conductivity and density of the wire material at the local wire temperature, respectively. Tmean is the average droplet temperature at the time of detachment, and v0 is the wire feed speed. The evaporation rate in g.s−1 at the wire tip is denoted as qev=Pevma/4(makbTa/3)0.5 where Pev and ma are the vapour pressure and theatomic mass of the wire, respectively, while kb is the Boltzmann constant and Ta the temperature of the wire surface. Other symbols are the following: L, the latent heat of evaporation of the wire material, e, the elementary charge, ji the ion current density from the plasma, je the electron current density from the plasma; the total current density is denoted j; Tp is the temperature immediately in front of the wire, φ is the nominal work function of the wire surface; σ represents the electrical conductivity, Vi is the first ionization potential of the plasma gas and Vs the voltage drop across the sheath in the wire region.
In this approximation, conventional heat conduction from the plasma through neutral particles, conduction through the end of the wire and black body radiation are neglected since their effect can theoretically be shown to be small compared to Ev, Em, Eoh and Ee.
Heat transferred from the plasma to the wire may be expressed
By solving the time-dependent energy conservation equation at small time steps,
where F is a term referring to the heat input Sa, from the plasma, the temperature profile of the wire can be obtained, and therefore the molten length at the wire tip can be estimated as a function of time.
Metal transfer in the form of a droplet will occur when the molten wire reaches a critical length Lcrit for a given set of welding parameters. Estimation of the volume of droplet can be deduced from a dynamic treatment in the wire region using simplified expressions of surface tensions, electromagnetic forces, gravity, arc pressure and viscous drag force around the molten metal at the tip of the wire at each time step.
The initial shape of the electrode at a time t=0 can be taken as cylindrical with diameter equal to that of the wire covered by about a 0.1 cm thick layer of molten liquid at the tip of the wire. Initial conditions are to correspond to an arc operating with continuously moving wire of undeformed cylindrical shape.
The inputs required for the wire model are the arc current, the wire feed speed, the wire diameter, the initial interelectrode separation distance, the torch angle and the characteristics of the arc. The latter may be supplied into the model by outputs from the arc model.
The outputs include the detachment frequency, the volume of a detached droplet of molten metal, the average temperature in a droplet and the acceleration supported by the droplet in the axis of the arc column at detachment. This result will provide information for evaluation of reinforcement of joint for a given gas arc welding process and work piece geometry. Also available from the model will be the wire stick-out length and resistance, which allow a more accurate calculation of the arc length than from the simplified model described below.
As a first step a simplified model for the wire has been used. The arc length is obtained from a balance between wire feed rate wfr and wire melting rate
where τ is a time constant that delays the change of arc length from change of heat input. The resistance of the wire stickout Ran is calculated assuming a constant stickout temperature
where ζ is the electrical resistivity of the wire, Aw the wire cross-section area, D the distance between the nozzle and the work piece. L is the arc length, which is the output of this model.
The power input considers both Ohmic heating of the wire stickout and energy transfer from arc to wire. The wire melting rate is obtained by relating the power input to the wire enthalpy per unit length δH. The latter accounts for energy release due to electron absorption in anode and thermal energy carried by electrons
where φan is the work function of the anode material, kB is the Boltzmann's constant, Te is the electron temperature and e is the electron charge.
Work Piece Model
As part of multivariable processes, automated arc welding may be defined by so called indirect welding parameters (IWPs), acting upon a set of material parameters (MPs) with a resulting set of direct welding parameters (DWPs). IWPs should be chosen appropriately for given MPs. DWPs are to be explicitly fixed by specifications of e.g. optimal weld bead width, penetration and appearance.
A basic issue to be considered regarding control for arc welding is to determine what is to be controlled and which parameters are accessible to control actions in the process. See
Quality control functionalities to be implemented in the proposed software could consist of:
One work piece model is illustrated in
Solidification of melt during GMA welding process depends on heat transfer conditions in the weld pool, see
Shape and mechanical properties of welds can strongly be affected by electromagnetic forces, buoyancy forces and surface tension forces that induce flow of molten metal in the weld pool possibly affected by impacts of droplets, vaporization, arc pressure and molecular contamination. Accurate enough predictions of weld quality by analytical model of those phenomena can be difficult to provide as they call for detailed computation and optimized calculation routines including appropriate numerical methods for moving boundary systems.
Neural networks are powerful parameterised non-linear regression models for which no fundamental knowledge of the system to be modelled is required. They can be generally described as series of weighted variables (input parameters xi)
yj=Σiwi(1)xi+θ(1)
to form arguments of non-linear regression transfer functions (hidden variables).
Example: hj=tanh yi
Since a one hidden-unit model (hj=h, y=W(2)H+θ(2) output parameter) may not be sufficiently flexible, further degrees of non-linearity can be introduced by combining several non-linear regression transfer functions (output parameter y)
yj=Σjwj(2)hj+θ(2)
hence permitting neural networks to capture almost arbitrarily non-linear relationships. The capability of neural networks to handle complexity is much related to the number of regression transfer functions, i.e. the number of hidden layers. An important component in the elaboration of a neural network is the control of the characteristic magnitudes of the weights (wi(j)) of input quantities. This operation requires that the network is preliminary trained from a set of known outputs when the weights are systematically changed until a best-fit description of the network is obtained as a function of the inputs. Numerical procedures can be developed to avoid overfitting difficulties. In some cases, error estimates can also be calculated to define fitting uncertainty by considering probability distributions of sets of weights instead of using a unique one.
A neural network may be produced to model effects of heat and mass transfers on weld geometry as part of an Arc Welding End-user Software. However, as already mentioned, many experimental parameters can influence an arc welding process (for example wire properties, shielding gas properties, power supply, wire feed speed, welding speed, electrode extension, etc.—see figure). A systematic investigation of merely 10 parameters at only three levels of variation would result in 310, i.e. about 59.103 possible combinations to explore. Theoretical knowledge of the arc suggests that the arc current, the welding speed and material properties are mainly responsible for heat and mass transfer into the workpiece. A GMAW process can be decomposed into separate interdependent modules for, respectively, the electrical circuit, the wire (anode), the arc, for the interactions between the arc and the wire (i.e. droplet formation), the interactions between the arc and the workpiece, and the workpiece itself (cathode). The amount of welds to be produced for making a neural network model of the workpiece can hence be reduced to a reasonably small number by successively comparing model results for the diverse modules to a few relevant experimental test cases characteristic of the functionality of the module tested, all critical parameters of other modules being fixed in other respects. In this aim, intern resistances, inductances and resistances on the welding equipment to be used for experiments should be measured beforehand and recording of process signals during welding (e.g. arc current and voltage, encoding signal form wire feeding system, etc.) should be carried out with an acquisition unit. Validation of module for electrical circuit can be achieved by comparing measured arc current and voltage with predicted values of these quantities at different wire feed speeds and supply voltages for different welding modes (short arc, spray, rapid-arc), all other parameters being kept constant and identical between models and experiments in other respects. Validation of the wire model for simulation of mass transfer mode (i.e. droplet dripping) can be achieved in a similar way by further measuring the average mass transfer rate from for several dimensions of wire diameter. Validation of the arc model can be achieved by varying supply voltage and electrode extension for different shielding gases and wire diameters, all other parameters being kept constant. Adjustments of each model may have to be implemented stepwise during validation of each module. Eventually, experiments to be carried out for modelling of complete effects of mass and heat transfer into workpiece simply concern the influence of torch and push/drag angles, welding speed, plate thickness, plate material and joint configuration, all other aspects being supposedly encompassed in the previously validated other routines. For maximum applicability of the software, experiments shall be carried out on different joints (for example overlap, T-joint) made e.g. in horizontal-vertical configuration of gravity configuration or other, depending on targeted market for the software.
As input from the arc-dependent models to a neural network model of the workpiece, temperature distributions of electrons and ions, current intensity due to both species and evaporation rate at the workpiece surface will be accessible from a pre-calculated matrix established with the validated models. Mass, heat and speed of transferring droplets will also be referenced as inputs of the neural network from predictions obtained with the validated model for wire.
The output of the neural network should enable a determination of the weld quality as defined either by geometry or mechanical properties. A complete version of the software is to include all possible aspects of quality. When quality is associated to weld shape, the outputs will consist of geometrical dimensions of welds. A sketch of predicted weld geometry will be displayed or dimensions according to the standard EN-25817 will be listed on end-user interface. When quality is associated to mechanical properties, the outputs will consist of predicted values of e.g. yield strength, ultimate tensile strength, Charpy toughness and temper embrittlement.
Number | Date | Country | Kind |
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0101163-4 | Apr 2001 | SE | national |
Filing Document | Filing Date | Country | Kind | 371c Date |
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PCT/SE02/00648 | 3/28/2002 | WO | 3/7/2005 |