Title
Data Preprocessing Method and Fault Diagnosis Based on Evaluation Function of Information Contribution Degree
Abstract
Neural network is a data-driven algorithm; the process established by the network model requires a large amount of training data, resulting in a significant amount of time spent in parameter training of the model. However, the system modal update occurs from time to time. Prediction using the original model parameters will cause the output of the model to deviate greatly from the true value. Traditional methods such as gradient descent and least squares methods are all centralized, making it difficult to adaptively update model parameters according to system changes. Firstly, in order to adaptively update the network parameters, this paper introduces the evaluation function and gives a new method to evaluate the parameters of the function. The new method without changing other parameters of the model updates some parameters in the model in real time to ensure the accuracy of the model. Then, based on the evaluation function, the Mean Impact Value (MIV) algorithm is used to calculate the weight of the feature, and the weighted data is brought into the established fault diagnosis model for fault diagnosis. Finally, the validity of this algorithm is verified by the example of UCI-Combined Cycle Power Plant (UCI-ccpp) simulation of standard data set.
Year
DOI
Venue
2018
10.1155/2018/6565737
JOURNAL OF CONTROL SCIENCE AND ENGINEERING
Field
DocType
Volume
Least squares,Training set,Gradient descent,Control theory,Data pre-processing,Algorithm,Evaluation function,Artificial neural network,Network model,Modal,Mathematics
Journal
2018
ISSN
Citations 
PageRank 
1687-5249
0
0.34
References 
Authors
11
2
Name
Order
Citations
PageRank
Siyu Ji100.68
Chenglin Wen217942.72