2014
DOI: 10.1155/2014/547947
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Study on the Extraction Method of Deformation Influence Factors of Flexible Material Processing Based on Information Entropy

Abstract: Through analyzing the flexible material processing (FMP) deformation factors, it is pointed out that without a choice of deformation influence quantity would increase the compensation control predict model system input. In order to reduce the count of spatial dimensions of knowledge, we proposed the method by taking the use of FMP deformation compensation control knowledge extraction, which is based on decision table (DT) attribute reduction, deriving the algorithm that is based on information entropy attribut… Show more

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Cited by 6 publications
(4 citation statements)
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References 12 publications
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“…After constructing the network membership function and fuzzy rule adaptation of T-S, The formula will be based on the steepest descent method of learning neural network learning algorithm [4,5] through error iterative iteration operation. In the figure, the first layer of the latter network directly transfers the input to the second layer, if the node activation function is f x , the first layer of the first i node and the second layer of the j node between the weights of w , the second layer hidden layer input is g ∑ w x , the output ish f ∑ w x ; the weight between the j node of the second layer and the k node of the third layer is w , the output of the third layer is …”
Section: Vibration Compensation Ets-fnn Model Before and After The Comentioning
confidence: 99%
“…After constructing the network membership function and fuzzy rule adaptation of T-S, The formula will be based on the steepest descent method of learning neural network learning algorithm [4,5] through error iterative iteration operation. In the figure, the first layer of the latter network directly transfers the input to the second layer, if the node activation function is f x , the first layer of the first i node and the second layer of the j node between the weights of w , the second layer hidden layer input is g ∑ w x , the output ish f ∑ w x ; the weight between the j node of the second layer and the k node of the third layer is w , the output of the third layer is …”
Section: Vibration Compensation Ets-fnn Model Before and After The Comentioning
confidence: 99%
“…(1) Species diversity measure based on information entropy Entropy is used to represent a kind of energy distribution degree of disorder in space [25]. Introducing the concept of entropy to swarm intelligence optimization problem and proposing a new measurement method of population diversity is conducive for solving problems that involve premature convergence in the early stage of the algorithm.…”
Section: Enhanced Gravitational Search Algorithmmentioning
confidence: 99%
“…The and axis of bending displacement distribution curve is respectively represent the length and width of workpiece, the axis is represent the bending deflection . All the units are mm [13].…”
Section: Simulation Experimentsmentioning
confidence: 99%