Method of Predicting Ammonia in Flue Gas of Baked Sheets Based on Robust Regression Modeling
A robust regression and flue gas technology, applied in the direction of measuring devices, instruments, scientific instruments, etc., can solve the problems of high cost, laborious, time-consuming, etc., to achieve the effect of ensuring robustness, reducing detection cost, and improving detection efficiency
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Embodiment 1
[0050] (1) Compare the physical and chemical data of the known baked sheet with the flue gas NH 3 The data is listed correspondingly, and a data sample set is established, in which the physical and chemical data include total sugar, reducing sugar, nicotine, total volatile alkali, total nitrogen, nicotine nitrogen, protein, Schmuck value, nitrogen-alkali ratio, chlorine, potassium, sugar Alkali ratio and ammonia base, as shown in the table below:
[0051]
[0052] (2) Calculate the column vector x of each physical and chemical data in the data sample set obtained in step (1) 1 ~x n and flue gas NH 3 The column vector y of the data, the physical and chemical data and the flue gas NH are calculated respectively by the following formula 3 The linear correlation coefficient r:
[0053] (1)
[0054] In the formula: x is a column vector of some physical and chemical data, y is flue gas NH 3 The column vector of the data; get the physical and chemical data and flue gas NH ...
Embodiment 2
[0098] Same as steps (1) to (3) of Example 1, only replace other roasted slices to be tested, step (4) is as follows:
[0099] According to the characteristic index items selected in step (2), the corresponding physical and chemical data of the baked slices to be tested, that is, total sugar = 25.94, reducing sugar = 22.43, total volatile alkali = 0.28, total nitrogen = 1.9, protein = 9.43, Shimu Ke Value = 2.75, nitrogen-alkaline ratio = 0.84, and ammonia-alkali = 0.04 are applied as input variables to the prediction model in step (3), and the NH in the flue gas of the roasted sheet to be tested can be calculated and calculated. 3 The model predicted value Y=-30.08507-0.22834*total sugar+0.66854*reducing sugar+185.12201*total volatile base-77.63949*total nitrogen+13.16111*protein-0.26502*Shimuke value+11.63123*nitrogen-alkaline ratio-183.04849*ammonia State base=9.135. In order to verify the reliability of the model prediction results, the traditional detection method was us...
Embodiment 3
[0101] Same as steps (1) to (3) of Example 1, only replace other roasted slices to be tested, step (4) is as follows:
[0102] According to the characteristic index items selected in step (2), the corresponding physical and chemical data of the baked slices to be tested, that is, total sugar = 28.01, reducing sugar = 24.86, total volatile alkali = 0.29, total nitrogen = 1.8, protein = 8.66, Shimu Ke Value = 3.24, nitrogen-alkali ratio = 0.75, and ammonia-alkali = 0.04 are applied as input variables to the prediction model in step (3), and the NH in the flue gas of the roasted sheet to be tested can be calculated and calculated. 3The model predicted value Y=-30.08507-0.22834*total sugar+0.66854*reducing sugar+185.12201*total volatile base-77.63949*total nitrogen+13.16111*protein-0.26502*Shimuke value+11.63123*nitrogen-alkaline ratio-183.04849*ammonia State base=8,591. In order to verify the reliability of the model prediction results, the traditional detection method was used ...
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