NOx Virtual Sensor Based on Structure Identification and Global Optimization
in SAE Transactions, Journal of Engines, Vol. 14, no. 3, pp. 126-134, 2005
Author(s): | del Re L., Langthaler P., Furtmüller C., Winkler S., Affenzeller M. |
Year: | 2005 |
Month: | 4 |
Abstract: | On-line measurement of engine NOx emissions is the
object of a substantial effort, as it would strongly improve
the control of CI engines. Many efforts have been
directed towards hardware solutions, in particular to
physical sensors, which have already reached a certain
degree of maturity.
In this paper, we are concerned with an alternative
approach, a virtual sensor, which is essentially a
software code able to estimate the correct value of an
unmeasured variable, thus including in some sense an
input/output model of the process. Most virtual sensors
are either derived by fitting data to a generic structure
(like an artificial neural network, ANN) or by physical
principles. In both cases, the quality of the sensor tends
to be poor outside the measured values. In this paper,
we present a new approach: the data are screened for
hidden analytical structures, combining structure
identification and evolutionary algorithms, and these
structures are then used to develop the sensor
presented. While the computational time for the sensor
design can be significant (e.g. 1 or more hours), the
resulting formula is very compact and proves able to
predict the behaviour of the system at other operating
points.
The method has been validated with NOx data from a
production engine measured with a Horiba Mexa 7000.
The approach is able to yield a good prediction
behaviour over a whole cycle. The results are consistent
with physical knowledge. |