SCR denitration system bad data identification method based on Elman neural network
A neural network and bad data technology, applied in neural learning methods, biological neural network models, neural architectures, etc., can solve the problems of validity verification and bad data, SCR denitrification system bad data identification method, unusable and other problems, and achieve strong prediction and recognition ability, avoiding misjudgment, and improving accuracy
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Embodiment 1
[0039] Denitration system based on bad data identification method of Elman neural network SCR, such as figure 1 and figure 2 , The specific embodiment the steps of:
[0040] Step 1, to obtain accurate sample data from the original system of SCR total 300 groups, each group including sample SCR DeNOx catalyst service time, the amount of flue gas, an inlet NO x Concentration of exports NO x Concentration, denitration efficiency, ejection amount of ammonia, the ammonia-air ratio, temperature of flue gas, ammonia ratio, the SCR denitration catalyst activity of a total of 10 parameters, take the first nine parameters as neural network input parameters, the last parameter as a neural network output parameter, from original sample 5 randomly selected set of samples, the value artificially added error of 10%, after treatment of the samples were normalized according to the following equation (1);
[0041]
[0042] In: Z ni It is normalized parameters Z i , Z i ParametersZ First i Values,...
Embodiment 2
[0056] Denitration system based on bad data identification method of Elman neural network SCR, such as figure 1 and figure 2 , The specific embodiment the steps of:
[0057] Step 1, to obtain accurate sample data from the original system of SCR total 300 groups, each group including sample SCR DeNOx catalyst service time, the amount of flue gas, an inlet NO x Concentration of exports NO x Concentration, denitration efficiency, ejection amount of ammonia, the ammonia-air ratio, temperature of flue gas, ammonia ratio, the SCR denitration catalyst activity of a total of 10 parameters, take the first nine parameters as neural network input parameters, the last parameter as a neural network output parameter, from original sample 5 randomly selected set of samples, the value artificially added error of 10%, after treatment of the samples were normalized according to the following equation (1);
[0058]
[0059] In: Z ni It is normalized parameters Z i , Z i Parameters Z First i Values...
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