This application claims priority under 35 USC § 119 and the Paris Convention to Great Britian Patent Application 1917061.2 filed on Nov. 22, 2019.
The disclosure relates to the field of measuring soot, for example in a diesel particulate filter, using radio frequency (RF) sensing.
It is known to use a radio frequency sensor to infer soot loading in a diesel particulate filter. Such arrangements make use of a radio frequency sensor that comprises a radio frequency transmitter and a radio frequency receiver. Radio frequency waves are transmitted across a frequency sweep by the transmitter into the diesel particulate filter. The receiver receives the radio frequency waves once influenced by passage through the diesel particulate filter. Soot in the diesel particulate filter influences the radio frequency waves during their passage through the diesel particulate filter. The radio frequency waves received by the receiver are then interpreted to determine an extent of soot loading within the diesel particulate filter.
Generally, a processor—potentially a constituent of an engine management system—receives radio frequency data from the sensor and interprets that data in order to infer soot loading within the diesel particulate filter.
The sensor may determine an attenuation value for each of a plurality of radio frequencies between a minimum radio frequency value and a maximum frequency value. The sensor may also provide an average attenuation value of the attenuation values for the plurality of radio frequencies. The sensor may further provide standard deviation data in relation to the average attenuation value.
The processor that receives data from the sensor may use the average attenuation value and the standard deviation data received from the sensor as part of a calculation by which the soot loading may be inferred. In this way, the amount of data provided by the sensor is significantly less than the complete data set of all attenuation values, one for each of the plurality of radio frequencies between a minimum radio frequency value and a maximum frequency value. This may save considerable bandwidth in the transfer of data between the sensor and the processor as well as considerable processing capacity in the processor.
The inference of soot loading from radio frequency attenuation data may require other variables to be sensed. For example, temperature of the diesel particulate filter may also influence radio frequency attenuation. As such, inferring soot loading may also require temperature data to be collected. It is known from empirical analysis that an amount of soot within a diesel particulate filter may be inferred from the mean attenuation value and the temperature of the diesel particulate filter.
A complexity arises because the nature of the system is such that, for certain radio frequencies, there may be resonant affects that result in significant attenuation. This significant attenuation at certain frequencies may influence the average attenuation value to an extent that means the capacity for inferring the soot loading in the diesel particulate filter may be compromised.
The disclosure provides techniques for addressing this complexity.
It is also known empirically that determining a change in soot load may be more straightforward and more accurate than determining an absolute amount of soot load. As such, it is known to use derivative models to infer from mean attenuation and temperature a change in soot load relative to a previous soot load.
One complexity surrounding the implementation of a derivative model is determining an accurate initial inference for soot load. This may be particularly complicated at start of life of the diesel particulate filter because it has been shown that mean attenuation values vary most widely where soot load is low.
Furthermore, since, in a derivative model, the next value is based on a change relative to the previous value, incorrect inferences perpetuate and have a potentially significant impact without inherent means for detection and correction.
The disclosure provides techniques for addressing this complexity.
Against this background there is provided a method of calibrating a soot load estimating function for a diesel particulate filter, the method comprising:
In this way, it is possible to calibrate a soot loading calculation function by receiving data in relation to temperature, mean attenuation and standard deviation attenuation.
A hardware arrangement of an engine assembly 100 comprising an internal combustion engine 200 and an aftertreatment apparatus 300 comprising a radio frequency soot sensor 350 for use in accordance with the method of the disclosure is shown in
In addition to the internal combustion engine and the aftertreatment apparatus, the engine assembly 100 may further comprise a turbocharger 400, and an exhaust gas recirculation circuit 500.
The exhaust gas recirculation circuit comprises an EGR pre-cooler 510, and EGR valve 520, an EGR cooler 530 and an EGR mixer 540.
The internal combustion engine 200 may comprise a combustion chamber in which fuel may combust with air in order to generate kinetic energy. Air may be provided to the combustion chamber via an air cleaner (filter) 430, a compressor 410 of the turbocharger 400, an air cooler 440 and the exhaust gas recirculation mixer 540 of the exhaust gas recirculation circuit 500.
Exhaust gas resulting from combustion in the combustion chamber may, at least in part, be recirculated via the exhaust gas recirculation circuit 500 to the exhaust gas recirculation mixer 510 such that it may be passed back through the combustion chamber in combination with air from compressor 410 of the turbocharger 400. The exhaust gas recirculation valve 520 may control flow through the exhaust gas recirculation circuit 500.
A second portion of the exhaust gas resulting from combustion in the combustion chamber may pass through the turbine of the turbocharger 420. An electronic wastegate 430 may control a bypass route by which flow may selectively bypass the turbocharger turbine 420. An exhaust backpressure valve 440 may be located downstream of the turbine 420.
The aftertreatment apparatus 300 may comprise a diesel oxidation catalyst module 310 comprising a diesel oxidation catalyst, a diesel particulate filter module 320 comprising a diesel particulate filter and a selective catalytic reduction module 330 comprising a selective reduction catalyst. An injector 340 may be located upstream of the selective reduction catalyst module 330 to provide a reductant to facilitate appropriate reactions with oxides of nitrogen (NOx). NOx sensors 331, 332 may be provided both upstream of and downstream of the selective catalytic reduction module.
Of particular relevance to the method of the present disclosure is the radio frequency soot sensor 350 that is associated with the diesel particulate filter module 320. The radio frequency soot sensor 350 may comprise an antenna and a receiver. The antenna and the receiver may be located with a gap therebetween. The gap may be between an upstream end and a downstream end of the diesel particulate filter 320 or may be between opposite sides of a diesel particulate filter 320. The relative location of the antenna and receiver may influence the data provided by the radio frequency soot sensor 350, including in the absence of soot within the diesel particulate filter 320. Data provided by the radio frequency soot sensor 350 may also be influenced by the geometry of the diesel particulate filter 320.
In some embodiments, further sensors may be provided. For example, there may be provided: a diesel oxidation catalyst module inlet temperature sensor 333; a diesel particulate filter inlet temperature sensor 334; and a selective catalytic reduction module inlet temperature sensor 335. Other sensors may also be provided.
In one arrangement, the radio frequency soot sensor may transmitting a plurality of radio frequencies into a first end of the diesel particulate filter and sense the plurality of radio frequencies received at a second end of the diesel particulate filter. The plurality of radio frequencies comprises between 100 and 300 discrete frequencies, such as for example 200 discrete frequencies or approximately 200 discrete frequencies.
The transmission may comprise a radio frequency sweep which may be performed at set time interval. The data received at each time interval may include mean attenuation value and standard deviation attenuation value.
Standard deviation may be particularly high for low soot loads. This is believed to be a consequence of radio frequency resonance.
In accordance with the present disclosure there is provided a model for using the mean and standard deviation attenuation data to infer soot load. Inferring soot load means calculating an estimate of soot load.
Determination of the model for inferring soot load in accordance with the present disclosure first involves obtaining empirical data regarding the relationship between soot load and mean attenuation for a variety of diesel particulate filters, having different sizes and geometries.
It can be seen from
It has also been determined empirically that for higher levels of the relationship between mean attenuation and soot load is substantially linear across a range of temperatures. The temperature affects the gradient of that relationship. It may be that the linear relationship is reliable only once a minimum threshold temperature is exceeded. The minimum temperature threshold may be between 125° C. and 175° C., or between 140° C. and 160° C., and 150° C. or approximately 150° C.
The model of the present invention exploits the linear region of this relationship.
The next stage is to seek to eliminate the non-linear (less predictable) parts of the relationship between mean attenuation and soot load.
These two peaks in standard deviation correspond with the non-linear parts of the
Accordingly, development of the model of the present disclosure has involved eliminating from the
A standard deviation threshold below which data are eliminated may be between 2.1 dB and 2.7 dB, or between 2.3 dB and 2.5 dB, or 2.4 dB or approximately 2.4 dB.
Having eliminated the mean RF attenuation data associated with a high standard deviation (e.g. the peaks of
The variation between different diesel particulate filters (even those that only differ within manufacturing tolerances) is what gives rise to the offset between the various parallel lines in the
Having established the relationships set out here, these relationships can then be used as part of the model by which soot load is inferred from mean attenuation for a wider variety of different diesel particulate filters.
The relationships may be stored as part of a data library.
The four parallel straight lines in the
The only straight line in the
The value for the linear offset in the case of a particular line may be determined using the following equation:
Offset_lin=Grad_StdDev*(XdB)+Offset_StdDev−Grad_Lin*(XdB)
where X dB is the mean attenuation value derived from the soot sensor in the particular diesel particulate filter in question.
Having used this formula to establish what the value is for Offset_Lin, for a particular diesel particulate filter at a particular temperature, the particular linear calculation line for that diesel particulate filter at that temperature is known.
It has been determined empirically that the offset is constant with temperature, while the gradient of the line changes with temperature.
In one example diesel particulate filter, the Offset_Lin value is determined by this method to be −5 dB. Having established this, a further range gradients—each indicative of a different temperature—may be determined wherein all of them intercept the y-axis at an attenuation value of −5 dB. These relationships are shown in
Having established these relationships, it is now possible to use temperature to determine the appropriate gradient line of the
It may be that the linear relationship is less reliable at low temperatures. It may therefore be the case that data obtained at low temperatures is disregarded. For example, data obtained for temperatures below 125° C., or 140° C., or 150° C. or 160° C. or 175° C. may be disregarded.
While the approach set out herein gives rise to the possibility of inferring absolute soot loading at any time once the standard deviation has fallen below the standard deviation threshold, since the behaviour is largely linear it may be that once an absolute soot loading value has been inferred, a derivative model may be used to infer changes to soot loading.
One issue with a derivative model, however, is that, where inferences are incorrect, the effect of errors can propagate quickly and have a lasting effect.
Accordingly, it may be that measures are put in place to determine soot level inferences whose accuracy is deemed to be questionable such that a recalibration can be implemented using the previously described model.
Furthermore, such calibration may be employed at the start of life of a diesel particulate filter albeit that when soot is absent or low (when the standard deviation will be high).
In this way, it may be possible to calculate an inferred value for soot load with increased accuracy. Moreover, it may be possible to trigger a recalibration of the model in an event that a current soot load estimate falls outside an expected envelope. For example, a modest creep may arise over time which may be corrected by repeating the recalibration.
The model may also be employed across a wide range of different diesel particulate filters using a generic radio frequency sensor. Thus, not only variation between nominally identical diesel particulate filters coming from the same production line but also variation between diesel particulate filters of different designs and geometries can be accounted for by use of the one soot load inferring model disclosed herein.
Accordingly, increase accuracy in estimating soot load may be achieved across a wide range of diesel particulate filters.
Number | Date | Country | Kind |
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1917061 | Nov 2019 | GB | national |
Number | Name | Date | Kind |
---|---|---|---|
8131495 | Krafthefer et al. | Mar 2012 | B2 |
8283930 | Davenport et al. | Oct 2012 | B2 |
8384397 | Bromberg et al. | Feb 2013 | B2 |
9400297 | Bromberg et al. | Jul 2016 | B2 |
10358965 | Lauritano | Jul 2019 | B2 |
20070101705 | Knitt | May 2007 | A1 |
20080018442 | Knitt | Jan 2008 | A1 |
20120159930 | Snopko et al. | Jun 2012 | A1 |
20150358091 | Sappok | Dec 2015 | A1 |
20160131069 | Wackerle | May 2016 | A1 |
20190353066 | Paukner | Nov 2019 | A1 |
Entry |
---|
Great Britain Search Report related to Application No. 1917061.2; dated Apr. 20, 2020. |
Number | Date | Country | |
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20210156327 A1 | May 2021 | US |