The invention relates to a method of measuring the thickness profile of a film that has been produced in a blow film line having a rotatable pull-off rig (14), wherein
A method of this type is known form EP 1 207 368 A2.
In the production of blown films, the film bubble that has been extruded from an annular extrusion die and has been inflated with internal air does not show a completely uniform thickness profile on its circumference, because irregularities of the extrusion die and/or the cooling system lead to a certain distribution of thickened and thinned areas. When then, after having solidified, the film bubble is flattened to form a tube and is wound on a coil, if no countermeasures are taken, thickened areas would superpose thickened areas and thinned areas would superpose thinned areas, so that the thickness deviations would accumulate undesirably. For this reason, the film tube is flattened by means of a pull-off rig that can rotate relative to the film bubble. By varying the angular position of the pull-off rig, for example, by oscillation or rotation of the latter, it can be achieved that the thickened areas and the thinned areas are always displaced relative to one another in the flattened tube, so that a more uniform film belt is obtained on the coil.
In addition, one will of course always attempt to control the thickness profile by adjusting the extrusion die or the cooling system, so that the thickness deviations are reduced to minimum. To that end, it is necessary to continuously monitor the actual profile of the film.
In order to measure the thickness profile, a measuring head can be used which revolves around the film bubble before the latter is flattened, so that the measuring head will always measure a only single layer of the film. This, however, has the drawback that the measuring head can only be arranged on the external side of the film bubble and must therefore be capable of performing a thickness measurement from only a single side of the film. More exact thickness measurements can be obtained with measuring heads that comprise two parts that are arranged on opposite sides of the film.
In the method that has been described in the document cited above, a measuring head of the last-mentioned type is used. Then, the measurement is performed by scanning the film tube after it has been flattened. This, however, incurs the problem that the thickness measurement does not directly provide the thickness profile of the film, because it is only the sum of two film segments that are superposed one upon the other at the measurement position, that is measured in each measurement. When n individual measurements are performed in one scan of the film tube, this defines 2n segments of the film tube, for which the respectively associated thickness P(j) have to be determined. When 2n individual measurements are made, one obtains a system of equations with 2n equations and 2n unknowns. This system of equations can however not be solved exactly, because the individual equations are not linearly independent from one another.
This is why, in the known method, a significantly larger number of measurements is made, so that one obtains a correspondingly larger number of equations and hence an overconstrained system of equations which can then be solved approximately by the method of least square deviations.
It is important for an exact and stable control of the film profile that as little time as possible passes between the extrusion of a section of the film tube and the measurement of the thickness profile of this section, so that thickness deviations can be corrected with least possible delay.
It is an object of the invention to provide an alternative method of measuring the film thickness and an apparatus for carrying this method.
According to the invention, this object is achieved with the features indicated in the independent claims. According to the basic idea of the invention, the thickness profile is calculated by means of a neural network.
It turned out that even a neural network which has a relatively simple structure and is therefore fast and cheap and can be trained such that a robust and exact detection of the thickness profile on the basis of a relatively small number of measured values becomes possible. As an additional advantage, the neural network can also be used for correcting systematic errors of the measuring equipment when the network has been trained for a specific measuring equipment.
Useful details and further developments of the invention are indicated in the dependent claims.
An embodiment example will now be explained in detail in conjunction with the drawings, wherein:
The measurement results obtained in the measuring station 22 are supplied to a neural network 26 which is used for calculating the thickness profile P(j) of the film bubble. The neural network 26 can be formed by dedicated hardware or by a suitably programmed multi-purpose data processing system, preferably with parallel architecture.
The requested thickness profile P(j) is then represented by the thickness values for each of the 2n segments 28 of the tube.
In the configuration shown in
In repeated scans, wherein the measuring head 24 is for example moved alternatingly towards the right and towards the left over the width of the film tube, one obtains a sequence of measured values that respectively indicate the sum of the thicknesses of two segments. In practice, the time TM that is needed for one scan, i. e. a complete movement of the scanning head 24 over the width of the film tube (i. e. for n measurements), will be significantly smaller than the time TF which the pull-off rig 14 needs for one turn or, as the case may be, one half oscillation cycle. Thus, the configuration of the film tube may be considered as constant during a sequence of individual measurements directly succeeding one upon the other, e. g. during a scan or a part thereof. In successive scans, however, the segments of the film tube will gradually be displaced relative to one another, so that one obtains measurement results for different pairs of film segments. In practice, TM will for example amount to 20 to 30 s, and TF will be 300 to 3000 s, for example. These figures and the number 2n of the segments of the film tube should preferably be coordinated such that the superposed segments of the film tube are shifted relative to one another by at least one segment during one scan, i. e. in the time TM.
It is now the purpose of the neural network 26 to derive, from these measured values which will include measured values for different configurations of the film tube and hence for different pairings of segments, the values for the thicknesses P(j) of the individual segments and hence the thickness profile of a the film with highest possible accuracy.
A second layer of the neural network is a so-called hidden layer and is formed by neurons 32, and the third layer is formed by output neurons 34. In the example shown, the hidden layer has only a single neuron 32, and the third layer has only a single output neuron 34. Consequently, this network can deliver as a result only a single value (the value of the output neuron 34) which represents the thickness of a single segment of the film tube. Consequently, 2n neural networks of the type shown in
In
If ui (i=1 . . . 2n) is a set of measured values that are supplied to the input neurons 30, then the value v of the neuron 32 is calculated in accordance with the following formula:
v=g
1(Σw1,i ui+bi) (1)
In this formula, g1 is a so-called activation function, and b1 are so-called threshold values, and i is the summation index.
An example of a suitable activation function is a hyperbolic tangent function, the graph of which has been shown in
In the general case of a neural network, i. e. a network having a plurality of neurons in the hidden layer, the value of each of the hidden neurons 32 is determined by a formula of the same type as the formula (1), but with different weights (the totality of the weights w, will then form a matrix). The value P(j) of each output neuron is calculated according to a formula that is analogous to the formula (1). Since, however, in the example that has been considered here, there is only a single hidden neuron 32 and a single output neuron 34, the formula for the value of the output neuron 34 reduces to:
P(j)=g2(w2 v+b2) (2)
Here, g2 is again an activation function, and b2 is a threshold value. In this case, the activation function g2 may also be a linear function (a first order polynomial).
As is commonly known in the theory of neural networks, the weights w1,i, w2 and the threshold values b1,i and b2 must be determined by training the neural network on the basis of known results. In the present case, a number of known (real or fictitious) thickness profiles are needed for training the network. Then, for each of these profiles, the measuring process illustrated in
In the simulation, the value P(j) that is indicated by the thickness profile, is assigned to each of the 2n segments of the film tube, and the sum of the thicknesses of the two superposed segments is calculated and supplied to the neural network as a fictitious measured value ui for each position i of the a measuring head 24. In this process, it is also taken into account that the segments are shifted relative to one another in the course of the successive measurements, as illustrated in
Then, the weights and the threshold values have to be calculated such that for each of the thickness profiles that have been used for the training, the network delivers at each output neuron 34 as exactly as possible the thickness P(j) of the segment j associated with this neuron, when the corresponding fictitious measured values ui are supplied to the input neurons 30. Several algorithms for calculating the weights and the threshold values are known in the theory of neural networks. These algorithms shall not be discussed here in detail.
It will be understood that, in place of the relatively simple neural network that has been described here, more complex networks may also be used, e. g. networks having several neurons in the hidden layer or networks having two or more hidden layers.
In principle, the method of training the neural network that has been described above is independent from the specific measuring equipment. It is therefore sufficient to provide one trained network which then can be used for all measurement equipments that are operated with the same values for TM, TF and n.
However, it is also possible that, for training the neural network, real measured values are used which are measured with the measuring head 24 at a real film tube, in conjunction with profiles which have been measured at the single-layer film after the film tube has been cut. Then, when the neural network is employed for a measurement equipment that has also been used for obtaining the training data, the neural network will also eliminate systematic errors of the measuring equipment.
In practice, it will frequently be necessary, depending upon the type of film blowing process, dimensions and composition of the film tube, and desired accuracy, to perform the measurement of the thickness profile with different scanning speeds of the measuring head 24 and with different reversal or rotation frequencies of the pull-off rig 14, so that the duration TF of the reversal and the duration TM of a scan must be treated as variable parameters. In principle, it is possible to train a specific neural network, i. e. to determine a specific set of weights and threshold values, for each combination of these parameters. Then, depending on the desired accuracy, the number of possible combinations of parameters may however become relatively large.
It is also possible to train, for all possible parameters and combinations of parameters, a unique network wherein a corresponding input neuron is provided for each parameter.
A possibility to train a robust network with relatively low complexity will now be described.
At first, it should be noted that it is neither the duration TF of the reversal process as such nor the duration TM of the scan as such that is relevant for a suitable training of the neural network, but rather the ratio r=TM/TF. This ratio is equal to the ratio of scanning speed/reversal speed and shall therefore be termed speed ratio r in what follows. This speed ratio may in practice assume different values within an interval [rmin, rmax], as shown in
Now, for training the neural networks for the individual sub-intervals A, B, . . . , it is possible for example to use measured values ui which are respectively measured or simulated for the value r in the center of the respective interval.
In this way, one obtains a training database, consisting of thickness profiles and associated measured values us, in which a certain fluctuation of the speed ratio r within the sub-interval B is already “built in”. Then, the neural network 26 that has been trained with this training database is relatively insensitive to fluctuations of the speed ratio r within the sub-interval B. Thus, when the speed ratio r is within the sub-interval B during the blow film production process and the feedback control of the thickness profile, one obtains relatively good results with the neural network 26 trained in this way.
The same is done for the other sub-intervals A, etc., so that, finally, a suitable neural network is available for each speed ratio r of practical relevance.
In a blow film line wherein the pull-off rig 14 is a reversing rig, i. e. the rig is alternatingly rotated in opposite directions through an angle of 360° or less, the result obtained by means of the neural network may also depend upon the direction in which the pull-off rig 14 moves. This can be taken into account by providing separate neural networks for the two opposite directions of rotation of the pull-off rig.
Number | Date | Country | Kind |
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08 009 910.4 | May 2008 | EP | regional |