1. Field of the Invention
The present invention relates to thermal imaging processes and, more particularly, to techniques for estimating the temperature of thermal print head elements during thermal imaging processes.
2. Related Art
Thermal printers typically contain thermal print head (TPH) having a linear array of heating elements (also referred to herein as “print head elements”) that print on an output medium by, for example, transferring pigment from a donor sheet to the output medium or by initiating a color-forming reaction in the output medium. The output medium is typically a porous receiver receptive to the transferred pigment, or a paper coated with the color-forming chemistry. Each of the print head elements, when activated, forms color on the medium passing underneath the print head element, creating a spot having a particular density. Regions with larger or denser spots are perceived as darker than regions with smaller or less dense spots. Digital images are rendered as two-dimensional arrays of very small and closely-spaced spots.
A thermal print head element is activated by providing it with energy. Providing energy to the print head element increases the temperature of the print head element, causing either the transfer of colorant to the output medium or the formation of color in the output medium. The density of the output produced by the print head element in this manner is a function of the amount of energy provided to the print head element. The amount of energy provided to the print head element may be varied by, for example, varying the amount of power provided to the print head element within a particular time interval or by providing power to the print head element for a longer time interval.
One problem with conventional thermal printers results from the fact that their print head elements retain heat after the conclusion of each print head cycle. This retention of heat can be problematic because, in some thermal printers, the amount of energy that is delivered to a particular print head element during a particular print head cycle is calculated based on an assumption that the temperature of the print head element at the beginning of the print head cycle is a known fixed temperature. Since, in reality, the temperature of the print head element at the beginning of a print head cycle depends on (among other things) the amount of energy delivered to the print head element during previous print head cycles, the actual temperature achieved by the print head element during a print head cycle may differ from the calibrated temperature, thereby resulting in a higher or lower output density than is desired. Further complications are similarly caused by the fact that the current temperature of a particular print head element is influenced not only by its own previous temperatures—referred to herein as its “thermal history”—but by the ambient (room) temperature and the thermal histories of other print head elements in the print head.
As may be inferred from the discussion above, in some conventional thermal printers, the average temperature of each particular thermal print head element tends to gradually rise during the printing of a digital image due to retention of heat by the print head element and the over-provision of energy to the print head element in light of such heat retention. This gradual temperature increase results in a corresponding gradual increase in density of the output produced by the print head element, which is perceived as increased darkness in the printed image. This phenomenon is referred to herein as “density shift.”
Furthermore, conventional thermal printers typically have difficulty accurately reproducing sharp density gradients between adjacent pixels in both the fast scan and slow scan direction. For example, if a print head element is to print a white pixel following a black pixel, the ideally sharp edge between the two pixels will typically be blurred when printed. This problem results from the amount of time that is required to raise the temperature of the print head element to print the black pixel after printing the white pixel. More generally, this characteristic of conventional thermal printers results in less than ideal sharpness when printing images having regions of high density gradient.
Various improved techniques exist for controlling the temperature of print head elements in a thermal printer to more accurately render digital images. Examples of such techniques have been described in U.S. Pat. No. 6,819,347 and in co-pending U.S. patent application Ser. No. 10/910,880, filed Aug. 4, 2004 (published as U.S. Pat. App. Pub. No. US 2005/0007438) and U.S. patent application Ser. No. 10/988,896, filed Nov. 15, 2004 (published as U.S. Pat. App. Pub. No. US 2005/0068404).
Although such techniques have been effective to provide improved thermal images, nevertheless further improvements would be desirable, particularly in the thermal history control parameters. What is needed are techniques for estimating the unknown temperature of thermal print head elements during the imaging processes using the thermal print head.
A method estimates the temperature of a thermal print head element. In one embodiment, the temperature is estimated using the resistance of the thermal print head element, which typically changes with the print head element temperature. The change in resistance of the print head element is exploited to indirectly estimate the temperature of the print head element.
The method employs a model for the temperature rise when energy is applied to the thermal print head element in conjunction with a model for mapping the resistance to temperature. The parameters of the model are obtained directly from the resistance measurements using a maximum likelihood estimator. It has been found that the MLE for jointly estimating the temperature model and resistance-temperature mapping tends to be biased. The factors which contribute to this bias have been identified and an analytical expression for the bias has been derived.
The resistance-temperature mapping of the thermal print head elements is estimated from resistance measurements made over a limited range of thermal print head heat sink temperatures. This model-based approach is capable of providing the functional relationship between the resistance of a thermal print head element and its temperature for temperatures much higher than those to which the heat sink can be heated without damaging the thermal print head.
In one aspect of the invention there is provided a method for estimating the temperature of a thermal print head element which includes collecting data and estimating parameters. The data collection may include setting an oven or other insulated chamber containing the thermal print head to a desired temperature, allowing the print head to thermally equilibrate with the oven temperature, applying energy to the thermal print head element to heat it (such as by turning on current to the print head element for a fixed duration and at a fixed power level), applying a probing pulse to the thermal print head element to obtain resistance measurements, and repeating these steps for different oven temperatures and applied powers.
The parameter estimation may include estimating a parameter A of the temperature model, and estimating the resistance-temperature mapping f(·) by minimizing the weighted mean square temperature error between the two models, and repeating and refining these estimations by using the estimate of f(·) to recompute the weights.
The estimated temperature model parameter A represents the temperature rise in the thermal print head element when unity power is applied to the print head element for a fixed duration. Manufacturing tolerances in the different coatings of the thermal print head may result in different temperature rises between print heads for the same applied power. These differences may lead to varying print head responses and need to be calibrated out to ensure consistent image quality across printers. The estimated A may be utilized to achieve this compensation. For example, the power P applied to the print head element may be set such that PA remains constant from print head to print head, or from print head element to print head element.
The normalized resistance-temperature mapping is a characteristic of the material used to construct the print head elements. Once estimated for a single print head, it may be used on other print heads to infer the temperature of the heating elements by measuring their electrical resistance. Such a measurement may be conducted on-line while printing to compensate for the temperature rise of the print head or off-line to learn the parameters of a thermal history compensation algorithm.
In one aspect of the invention, a method is provided for identifying an estimate {circumflex over (f)}(·) of a function Th=f(Rh) relating resistance Rh of a thermal print head element in a thermal print head of a thermal printer to temperature Th of the thermal print head element. The method includes: (A) selecting a plurality N of initial temperatures Tsi; (B) heating an insulated chamber containing the thermal print head to the plurality of initial temperatures Tsi; (C) providing the thermal print head element with a plurality N of input energies Pi; (D) measuring a plurality N of resistances Rhi resulting from application of the plurality of input powers Pi; and (E) identifying the estimate {circumflex over (F)}(·) based on the plurality of initial temperatures Tsi, the plurality of resistances Rhi, and the plurality of input powers Pi.
In another aspect of the present invention, a method is provided which includes: (A) identifying a first plurality of estimates of a parameter A for a first plurality of print head elements in a first thermal print head, wherein the equation Th=Ts+AP relates thermal print head element temperature Th to a heat sink temperature T and input power P; (B) identifying a first average value of the first plurality of estimates; (C) identifying a second plurality of estimates of the parameter A for a second plurality of print head elements in a second thermal print head; (D) identifying a second average value of the second plurality of estimates; and (E) adjusting a first input energy provided to the first thermal print head and a second input energy provided to the second thermal print head based on a function of the first average value and the second average value.
In yet another aspect of the present invention, a method is provided which includes: (A) identifying a first estimate of a parameter A for a first print head element in a first thermal print head, wherein the equation Th=Ts+AP relates thermal print head element temperature Th to a heat sink temperature Ts and input power P; (B) identifying a second estimate of the parameter A for a second print head element in the first thermal print head; and (C) adjusting a first input energy provided to the first thermal print head element and a second input energy provided to the second thermal print head element based on a function of the first estimate and the second estimate.
In still a further aspect of the present invention, a method is provided for estimating a temperature Th of a print head element in a thermal print head. The method includes: (A) identifying an estimate {circumflex over (f)}(·) of a function Th=f(Rh) relating print head element resistance Rh to print head element temperature Th; (B) identifying a resistance Rh of the print head element; and (C) estimating the temperature Th of the print head element based on the estimate {circumflex over (f)}(·) and the resistance Rh.
Other features and advantages of various aspects and embodiments of the present invention will become apparent from the following description and from the claims.
Before describing particular embodiments of the present invention, the operation of conventional thermal printers will be described by way of background. Referring to
The thermal print head 100 typically produces output on an output medium 104 (such as plain paper) as follows. For purposes of illustration, only a portion of the output medium 104 is shown in
A printer controller (not shown) inside the thermal printer is capable of selectively delivering power to any combination of the print head elements 102a-d at any particular time. Printer controllers in conventional thermal printers divide time into equal intervals of duration Tc, each of which is referred to herein as a “print head cycle.”
Referring to
Having described prior art techniques for use by thermal printers, aspects of embodiments of the present invention will now be described. The resistivity of the material chosen for fabricating the heating elements 102a-d of the thermal print head (TPH) 100 typically exhibits some temperature dependence. This property has been used to actively control the heating element to maintain a desired temperature. Other applications include an offline calibration procedure to remove TPH-TPH variability, and estimation of the thermal model parameters for improved thermal history control.
All of these applications require the resistance-temperature mapping of the thermal print head element in its operating temperature range, which is much higher than the maximum allowable heat sink temperature. Techniques are disclosed herein for estimating this mapping based on measurements of thermal print head element resistance made over a limited range of TPH heat sink temperatures. Such estimation may use a model for predicting the TPH element temperature as a function of applied power in conjunction with a model for the resistance-temperature mapping. This model-based approach is capable of learning the functional relationship between the TPH element's resistance and its temperature for temperatures much higher than the maximum allowable heat sink temperature.
For example, referring to
The resistance Rhi of the print head element is measured at the end of the predetermined time period (step 212). The resistance-power-temperature triplet (Rhi, Pi, Tsi) is recorded (step 214). Steps 206-214 are repeated for the remaining heat sink temperatures (step 216). The same techniques may be applied to other print head elements in the print head to produce additional sets of measurement triplets.
Referring to
The op-amp 306 is chosen to have a high gain-bandwidth product (>400 MHz), and low noise, to allow for high-speed measurements of the instantaneous resistance (the final system settling time is ≈0.5 μs). The op-amp's gain (G) and input offset (Voff) as well as the exact values of R1 and R2 are carefully calibrated using fixed, precision resistors in place of the thermal print head. To eliminate the effects of temperature drift on the resistors 302a-b and 304 and the op-amp 306, the entire circuit board is kept in an insulated box maintained at a constant temperature (±0.5 degrees C.).
The output of the op-amp (Vout) is recorded on a digitizing oscilloscope for analysis. Also recorded is the input voltage Vin. The instantaneous resistance is computed using Equation 1:
As described above with respect to
Let Th=f(Rh) denote the unknown function that maps the resistance Rh of a print head element to its temperature Th. The function f(·) is a characteristic of the material used to construct the print head elements. An estimate {circumflex over (f)}(·) of the function f(·) may be obtained based on the resistance, power, and temperature measurements {Rhi, Pi, Tsi} described above (
Examples of techniques for providing the estimate {circumflex over (f)}(·) will now be described in more detail. Referring to
As described above with respect to steps 206-208 of
First consider the case where the measurements are always made after the heating element is turned on for a fixed time interval. Input power
may be applied to the thermal print head element for a fixed duration. Although the applied power may actually vary during the heating element on-time because Rh varies as the heating element heats up, a typical thermal print head has a large Rh and a small
As a result, the percent change in power during the on-time is negligible and may be ignored.
In the case where the input power P is applied for a fixed on-time, the rise in the temperature Th of the heating element relative to the heat-sink temperature Ts is proportional to the input power P, as given by Equation 2. In Equation 2, A is a temperature model parameter that converts the applied power P to temperature.
T
h
=T
s
+AP, Equation 2
Equation 2 may be used to relate the resistance measurements Rh to the heat-sink temperatures Ts and applied power P, as given by Equation 3.
f(Rh)=Ts+AP Equation 3
Recall that the measurement triplet is denoted as {Rhi, Tsi, Pi}, where the subscript i ranges from 1 to the number of measurements N. Using Equation 3 and assuming the measurements are corrupted by Gaussian noise, the estimate {circumflex over (f)}(·) may be obtained using a maximum likelihood estimator given by Equation 4 (
In Equation 4, σi is the standard deviation of the noise on the print head element temperature arising from noise in the measurement triplet. In practice, the noise on the resistance measurements (σR) dominates and σi may be approximated by Equation 5, in which f′(·) is the first derivative of f(Rhi) with respect to Rhi.
σi=f′(Rhi)σR Equation 5
Therefore, in another embodiment, the estimate {circumflex over (f)}(·) may be obtained using a maximum likelihood estimator to produce estimates for the function f(·) and A by substituting Equation 5 into Equation 4, resulting in Equation 6 (
As described above, Equation 4 or Equation 6 may be used to provide the estimate {circumflex over (f)}(·) in step 218 of
Equation 7 illustrates a pth order polynomial representation for f(·), where xj, j=0, . . . , p are the polynomial coefficients.
f(R)=xpRhpxp-1Rhp-1+ . . . +x0, Equation 7
Equation 8 shows matrices and vectors (denoted by bold letters) that may be constructed from the measurements and unknown variables. Referring to
The solution to Equation 4 is given by Equation 9 (step 506), where W is a diagonal weight matrix defined by Equation 10 (step 504), and where D is a matrix defined by Equation 11. An estimate {circumflex over (f)}(·) is obtained using the estimated coefficients x and Equation 7 (step 508).
In one embodiment, Equation 6 is solved as follows. Note that in Equation 6 the weight matrix W depends on the derivative of a function that is being estimated. In one embodiment, Equation 6 is solved by estimating the parameters iteratively using Equation 9. At each iteration, the weight matrix is recomputed by Equation 12, using the function {circumflex over (f)}(·) estimated in the previous iteration.
For example, referring to
Steps 606-612 may be repeated as many times as desired. For example, the current value of {circumflex over (f)}(·) may be compared to the value of {circumflex over (f)}(·) from the previous iteration of steps 606-612. If the difference is greater than some predetermined threshold value (step 614), steps 606-612 may be repeated. Otherwise, the method shown in
It has been found that a global polynomial is not optimal in fitting local features of the function f(·). Increasing the order of the polynomial to improve the fit usually results in the numerical instability. Alternatively, a number of lower order polynomials may be fit locally. Typically, a piecewise linear approximation is sufficient. Examples of techniques for providing a piecewise polynomial (e.g., linear) approximation for f(·) will now be described.
Let the domain of interest for the function f(·) be divided into M regions. Let m=I(Rh) denote the index of the region that Rh falls into. All the matrices and vectors defined in Equation 8 are now denoted with a subscript m. For example, the matrix Rhmp is constructed using only the resistance measurements Rhi such that I(Rh) is equal to m. Similarly, Pm and Tsm contain all the power and heat-sink temperature measurements that corresponds to the resistance measurements in Rhmp. There are now M sets of polynomial coefficients, each denoted by the vector Xm. Referring to
The method then obtains estimates for A and the coefficients x1 . . . xm using Equation 13, which provides the solution to Equation 4 (step 708). An estimate {circumflex over (f)}(·) is obtained using the estimated coefficients {circumflex over (x)} and Equation 15 (step 710). In Equation 13, the matrix D is defined by Equation 14, and W is a diagonal weight matrix constructed as
where Wm is computed from Equation 10 for the region m. The function {circumflex over (f)}(Rh) estimated by this method is given by Equation 15.
The iterative solution to Equation 6 may be performed in a fashion similar to that described above with respect to
An estimate {circumflex over (f)}′(·) of the derivative of f(·) is initialized to one (step 808). The diagonal weight matrix W is constructed as
where Wm is computed using the estimate of {circumflex over (f)}′(·) (Equation 12) for the region m (step 810). Estimates for A and the coefficients x1 . . . xm are obtained using Equation 13 (step 812). An estimate {circumflex over (f)}(·) is obtained using the estimated coefficients {circumflex over (x)}1 . . . {circumflex over (x)}m and Equation 15 (step 814). A new estimate {circumflex over (f)}′(·) is computed based on {circumflex over (f)}(·) (step 816).
Steps 810-816 may be repeated as many times as desired. For example, the current value of {circumflex over (f)}(·) may be compared to the value of {circumflex over (f)}(·) from the previous iteration of steps 810-816. If the difference is greater than some predetermined threshold value (step 818), steps 810-816 may be repeated. Otherwise, the method shown in
The function estimated by this method will probably be discontinuous at the region boundaries because continuity constraints have not been imposed on the polynomial coefficients. It should be noted that the technique is not restricted to having non-overlapping regions. In the embodiment where the regions overlap, the estimated function is better behaved and has smaller discontinuities. In this case, a measurement has multiple region indices associated with it. Therefore a single measurement is replicated multiple times in the matrix D and the heat-sink temperature vector Ts.
The estimation of the temperature model parameter  simplifies the optimization consideration posed in Equation 4. The preliminary piece-wise polynomial fit may be refined by fitting a spline to minimize the error metric given by Equation 16. This may be performed, for example, in step 508 in
Note that if Equation 16 is used to estimate {circumflex over (f)}(·), the estimated coefficients of the model {circumflex over (x)} are discarded and only  is used.
A disadvantage of the piecewise polynomial approximation is that continuity between the different polynomial pieces estimated in Equation 13 is not guaranteed. The subsequent step given by Equation 16 of employing a spline to ensure continuity of {circumflex over (f)}(·) may be suboptimal as A is not jointly estimated in this step.
An optimal solution may be obtained by incorporating the continuity constraints directly in the joint estimation of A and f(·) by employing a spline model such as that described by M. Unser, “Splines-A perfect fit for signal and image processing,” IEEE Signal Proc. Magazine 16, pp. 22-38, November 1999, given by Equation 17, where Bmp(·|km, . . . , km+p) is the mth B-spline of order p for the knot sequence k1≦k2≦ . . . ≦kM+p.
As shown by the method 900 of
Referring to
A loop is then entered in which the weight matrix W is constructed using Equation 12 (step 1012). Steps 1014 and 1016 are performed in the same manner as steps 912 and 914 of the method 900 illustrated in
Steps 1012-1018 may be repeated as many times as desired. For example, the current value of {circumflex over (f)}(·) may be compared to the value of {circumflex over (f)}(·) from the previous iteration of steps 1012-1018. If the difference is greater than some predetermined threshold value (step 1020), steps 1012-1018 may be repeated. Otherwise, the method shown in
The joint estimation of f(·) and A tends to bias the temperature scale. The bias in the parameter estimates given by Equation 4 is difficult to compute directly since the estimated function {circumflex over (f)}(·) can take on an arbitrary shape. This can be simplified by assuming that our estimates of {circumflex over (f)}(·) and A differ from their true values by an unknown scalar s as given by Equation 19 and Equation 20. In Equation 20,
Â=sA Equation 19
{circumflex over (f)}(Rh)=s(f(Rh)−
The maximum likelihood estimate for s is given by Equation 22, where ΔTsi=Tsi−
Let ni, defined by Equation 24, denote the noise arising due to measurement noise in the triplet {Rhi, Tsi, Pi}.
n
i
=f(Rhi)−Tsi−APi Equation 24
Assume that E[ni]=0 and E[ni2]=σi2, where E[·]=0 is the expectation operator. Substituting Equation 24 into Equation 23 obtains Equation 25.
The last step in Equation 25 assumes the number of measurements N is large, such that
and
We interpret the quantity SNR (Equation 26) as the average signal-to-noise ratio. The signal in this case is ΔTsi because it carries the primary source of information for the temperature model.
The expected value of  is computed using Equation 25 as given by Equation 27. The bias in  is given by Equation 28.
The result of Equation 28 implies that as SNR→∞, E[Â]→A and the bias in the estimated value of A disappears. Conversely, as the SNR decreases, the values of  are increasingly biased lower. The reason for this phenomenon is directly related to the choice of the estimation criterion. As seen from Equation 4, A and f(·) are chosen such that the fitting error is minimized. The optimizer finds that it can lower the overall fitting error by choosing slightly lower values for A. This is because A amplifies the temperature, and by reducing the gain the fitting errors are reduced in magnitude. The amount by which the optimal value of A is lower than the true value depends on the spread of the heat-sink temperatures. For a large spread, any deviation from the true value results in a mismatch with the temperature model and drives up the fitting error. The biased parameters estimates are therefore accompanied by a biased estimate of the noise given by the fitting error. For small SNR s, the noise is underestimated as well. For example, in the extreme case of SNR=0, which occurs when ΔTsi=0, ∀i, the fitting error becomes 0 for Â=0 and {circumflex over (f)}(Rh)=
Consider an alternative method of parameter estimation where the fitting error, instead of being minimized, is set equal to the expected noise. There are two problems with this alternative method. First, the amount of measurement noise may not be known. Second, even if the amount of measurement noise is known, the fitting error has an additional unknown component: the mismatch between the model for f(·) and the true f(·).
Given this uncertainty, in one embodiment, the bias in the estimated parameters is reduced by maximizing the average SNR as defined by Equation 26. In addition to minimizing the measurement noise variance, the variance of the heat-sink temperatures is maximized. Since the uniform distribution, among the class of uniform distributions, has the largest variance among all distributions, the maximum SNR for a given minimum and maximum heat-sink temperature is obtained by distributing the intermediate temperatures uniformly within the specified range.
All of the previous discussion has focused on a single on-time; i.e., the heating element is turned on for a fixed period of time at the end of which a single resistance measurement is taken. However, it may also be advantageous to make measurements using multiple on-times of varying duration. The reason is that for each distinct power measurement, it is desirable to wait for the thermal print head to come to thermal equilibrium to the control temperature before the measurement is made. These wait times can substantially increase the data acquisition time. On the other hand, the measurements for distinct on-times may be taken in one run; the heating element in this case is turned on and left in that state for the longest on-time that is desired. In step 212 of the method 200 shown in
This increases the number of parameters to estimate by one as τ is now an additional unknown. Since the temperature model depends non-linearly on the time constant τ, a closed form solution to Equation 4 is no longer possible. However, Equation 29 may be linearized by performing a first order Taylor series expansion about the current estimate of τ (τ0), as shown in Equation 30.
Rewriting Equation 29 with the approximation of Equation 30 gives Equation 31.
If we let B=Aτ, then the solution to the global polynomial method is given by Equation 32, where D is given by Equation 33 and the vectors PA and PB are given by Equation 34.
Note that Δti denotes the time power Pi is applied to the print head element. The weight matrix W (Equation 10) and vector Ts (Equation 8) are the same as defined for the global polynomial method.
An updated value of the time constant is obtained as given by Equation 35. The procedure may be iterated by recomputing the vectors PA and PB for the new value of τ until the estimates converge.
The iterative version of the global polynomial method as well as the solution to the piece-wise polynomial and the spline method follows along the same lines as presented above and should be straightforward for someone having ordinary skill in the art to derive.
Now consider the case when the on-times Δt are very short compared to the time constant τ of the print head. Therefore, Δt/τ is small. As a result, 1−e−Δt/τ may be approximated by Δt/τ. In this case, Equation 29 is equivalent to Equation 2, with A/τ substituted for A, and with PΔt substituted for P. Therefore, Equation 29 may be solved by using the techniques applied above to Equation 2, but with a new variable B=A/τ substituted for A, and with PΔt substituted for P.
Another alternative is to employ a different value of A for each of the different on-times. The temperature model is then given by Equation 36.
T
h
=T
s
+A
Δt
P. Equation 36
Since the model is linear in the different AΔt parameters, the solutions presented above with respect to Equation 7—Equation 18 are directly applicable with only minor modifications, which will be apparent to those having ordinary skill in the art. For a limited number of on-times, the increase in the number of parameters is modest as compared to the model of Equation 29.
Having described various techniques for producing the estimate {circumflex over (f)}(·), examples of techniques will now be described for using the estimate {circumflex over (f)}(·), with reference to the method 1800 of
Therefore, in one embodiment we define {circumflex over (f)}T
An estimate {circumflex over (R)}T
Measurement of the base resistance {circumflex over (R)}T
If, however, the current is not small or if more accuracy is desired, the method 1900 illustrated in
If, however, {circumflex over (R)}T
The techniques disclosed above may be used to eliminate or reduce print head element to print head element variability, or print head to print head variability. For example, an estimate of A may be obtained for a first print head element, and a separate estimate of A may be obtained for a second print head element. The input energy provided to the first and second print head elements may be adjusted based on a function of the first and second estimates to reduce or eliminate variability between the print head elements. For example, the energies may be adjusted based on a ratio of the first and second estimates.
Similarly, a first plurality of estimates of A may be obtained for a first plurality of print head elements. The first plurality of estimates may be averaged to obtain a first estimate of A. A second plurality of estimates of A may be obtained for a second plurality of print head elements. The second plurality of estimates may be averaged to obtain a second estimate of A. The input energy provided to the first thermal print head element and the input energy provided to the second thermal print head element may be adjusted based on a function of the first and second averages to reduce or eliminate variability between the print head elements. In either case, the energy may, for example, be adjusted by adjusting the input power and/or the on-time of the thermal print head elements. Those having ordinary skill in the art will appreciate how to apply similar techniques to reduce or eliminate variability between print heads rather than print head elements.
Consider first a synthetic example in which we have access to the true model parameters, so that we can assess the estimation accuracy of the different techniques disclosed herein.
In the first iteration of the solution given by Equation 13 (shown in
was approximately 2.5° C. The gives an SNR of approximately 130 and a bias of 1% in Â.
It has been shown that the simultaneous estimation of the temperature scale and resistance-temperature mapping is biased for the MLE. The bias may be reduced by lowering the measurement noise and/or increasing the range of the heat-sink temperatures for the resistance measurements. The piece-wise polynomial or the spline method may be used to reduce the model mismatch and bias since it can conform to any local feature of the resistance-temperature mapping. The model-based approach successfully estimates this mapping for temperatures much higher than the maximum heat-sink temperature used in the measurements.
A parametric model for the resistance change with temperature derived from the underlying physics of semiconductors (N. W. Ashcroft and N. D. Mermin, Solid State Physics, Saunders College Publishing, 1976) may be used for f(·). If the model accurately describes the heating elements material characteristics, it has the advantage of reducing the number of parameters that need to be estimated. Consequently, fewer measurements will be required to achieve the same accuracy as that of the non-parametric methods.
It is to be understood that although the invention has been described above in terms of particular embodiments, the foregoing embodiments are provided as illustrative only, and do not limit or define the scope of the invention. Various other embodiments, including but not limited to the following, are also within the scope of the claims. For example, elements and components described herein may be further divided into additional components or joined together to form fewer components for performing the same functions.
The techniques described above may be implemented, for example, in hardware, software, firmware, or any combination thereof. The techniques described above may be implemented in one or more computer programs executing on a programmable computer including a processor, a storage medium readable by the processor (including, for example, volatile and non-volatile memory and/or storage elements), at least one input device, and at least one output device. Program code may be applied to input entered using the input device to perform the functions described and to generate output. The output may be provided to one or more output devices.
Each computer program within the scope of the claims below may be implemented in any programming language, such as assembly language, machine language, a high-level procedural programming language, or an object-oriented programming language. The programming language may, for example, be a compiled or interpreted programming language.
Each such computer program may be implemented in a computer program product tangibly embodied in a machine-readable storage device for execution by a computer processor. Method steps of the invention may be performed by a computer processor executing a program tangibly embodied on a computer-readable medium to perform functions of the invention by operating on input and generating output. Suitable processors include, by way of example, both general and special purpose microprocessors. Generally, the processor receives instructions and data from a read-only memory and/or a random access memory. Storage devices suitable for tangibly embodying computer program instructions include, for example, all forms of non-volatile memory, such as semiconductor memory devices, including EPROM, EEPROM, and flash memory devices; magnetic disks such as internal hard disks and removable disks; magneto-optical disks; and CD-ROMs. Any of the foregoing may be supplemented by, or incorporated in, specially-designed ASICs (application-specific integrated circuits) or FPGAs (Field-Programmable Gate Arrays). A computer can generally also receive programs and data from a storage medium such as an internal disk (not shown) or a removable disk. These elements will also be found in a conventional desktop or workstation computer as well as other computers suitable for executing computer programs implementing the methods described herein, which may be used in conjunction with any digital print engine or marking engine, display monitor, or other raster output device capable of producing color or gray scale pixels on paper, film, display screen, or other output medium.
This application is a divisional of U.S. patent application Ser. No. 11/524,476, filed on Sep. 20, 2006, entitled “Thermal Print Head Temperature Estimation System,” which claims the benefit of U.S. Provisional Patent Application Ser. No. 60/718,859, filed on Sep. 20, 2005, entitled “Thermal Print Head Temperature Estimation System,” both of which are hereby incorporated by reference.
Number | Date | Country | |
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60718859 | Sep 2005 | US |
Number | Date | Country | |
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Parent | 11524476 | Sep 2006 | US |
Child | 11957650 | US |