Claims
- 1. A method for indirect gas species monitoring for monitoring a gas sample of a combustion process for burning a combustible comprising, in combination:
using an on-line, analytical technique to measure gas species in the sample of a combustion process, the gas species being selected from species that are detectable by the on-line, analytical technique and that correlate to at least one process parameter to be predicted; developing a software sensor; and coupling the gas species measurement with the software sensor to predict the process parameter to be predicted.
- 2. The method described in claim 1, wherein the on-line analytical technique comprises optical absorption techniques.
- 3. The method described in claim 1, wherein the gas species is selected from the group consisting of O2, CO, CO2 and H2O.
- 4. The method described in claim 3, wherein the process parameter to be predicted is the H2 level present.
- 5. The method described in claim 4, further comprising adjusting the ratio of O2 to the combustible to better achieve a stoichiometric balance.
- 6. The method described in claim 1, further comprising developing the software sensor by analyzing process data using manipulated inputs to obtain desired outputs to generate data for software sensor development;
verifying the compatibility of the initial correlation; applying off-line filters and statistical analyses as necessary to reduce measurement noise, outliers and offsets from the data; determining a neural-network based software sensor; determining the network structure; and training the neural network by determining the values of the weights and biases of the network.
- 7. A method for indirect gas species monitoring for monitoring a gas sample of a combustion process for burning a combustible comprising, in combination:
using optical absorption techniques to measure gas species in the sample of a combustion process, the gas species being selected from the group consisting of O2, CO, CO2 and H2O; analyzing process data using manipulated inputs to obtain desired outputs to generate data for software sensor development; measuring the H2 level present using a temporary measuring technique; verifying the compatibility of the initial correlation between the measured gas species data and measured H2 data; applying off-line filters and statistical analyses as necessary to reduce measurement noise, outliers and offsets from the data; determining a neural-network based software sensor; determining the network structure; training the neural network by determining the values of the weights and biases of the network; coupling the gas species measurement with the software sensor to predict the H2 level present.
- 8. The method described in claim 7, further comprising adjusting the ratio of O2 to the combustible to better achieve a stoichiometric balance.
- 9. A method for indirect gas species monitoring for monitoring an off-gas of a combustion process for burning a combustible comprising, in combination:
obtaining an off-gas sample of a combustion process to be monitored, the off-gas sample containing at least one compound selected from the group consisting of O2, CO, CO2 and H2O; launching a beam from a launch module housing optic components constructed and arranged to shape the beam to a desired geometry; shaping the beam to a desired geometry; transporting the beam through a first shielding pipe and intersecting the beam with the off-gas sample as the beam exits the first shielding pipe; receiving the beam with a second shielding pipe and transporting it to a detector module housing a detection system; generating an absorption signal from the module; directing the absorption signal to an optical unit housing a data acquisition system; developing a software sensor; and coupling the gas species measurement with the software sensor to predict the H2 level present.
- 10. A method for indirect gas species monitoring for monitoring an off-gas of a combustion process for burning a combustible comprising, in combination:
obtaining an off-gas sample of a combustion process to be monitored, the off-gas sample containing at least one compound selected from the group consisting of O2, CO, CO2 and H2O; launching a beam from a launch module housing optic components constructed and arranged to shape the beam to a desired geometry; shaping the beam to a desired geometry; transporting the beam through a first shielding pipe and intersecting the beam with the off-gas sample as the beam exits the first shielding pipe; receiving the beam with a second shielding pipe and transporting it to a detector module housing a detection system; generating an absorption signal from the module; directing the absorption signal to an optical unit housing a data acquisition system; analyzing process data using manipulated inputs to obtain desired outputs to generate data for software sensor development; measuring the H2 level present using a temporary measuring technique; verifying the compatibility of the initial correlation between the measured gas species data and measured H2 data; applying off-line filters and statistical analyses as necessary to reduce measurement noise, outliers and offsets from the data; determining a neural-network based software sensor; determining the network structure; training the neural network by determining the values of the weights and biases of the network; and coupling the gas species measurement with the software sensor to predict the H2 level present.
- 11. The method described in claim 10, further comprising adjusting the ratio of O2 to the combustible to better achieve a stoichiometric balance.
CROSS REFERENCE TO RELATED APPLICATION
[0001] This application claims the benefit of U.S. Provisional Application No. 60/356,107, filed Feb. 11, 2002.
Provisional Applications (1)
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Number |
Date |
Country |
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60356107 |
Feb 2002 |
US |