Adaptive Mechanism for GA-NN to Enhance Prediction Model
This research presents a hybrid Genetic Algorithm Neural Network (GA-NN) model to replace the physical tests procedures of Medium Density Fiberboard (MDF). Emphasis is on applying an adaptive mechanism on GA to enhance model performance. Data included in the model is MDF properties and its fiber cha...
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my.unikl.ir-97152015-03-30T03:05:20Z Adaptive Mechanism for GA-NN to Enhance Prediction Model Faridah Sh Ismail Nordin Abu Bakar (UniKL MIIT) neural network genetic algorithm; adaptive prediction hybrid model MDF This research presents a hybrid Genetic Algorithm Neural Network (GA-NN) model to replace the physical tests procedures of Medium Density Fiberboard (MDF). Emphasis is on applying an adaptive mechanism on GA to enhance model performance. Data included in the model is MDF properties and its fiber characteristics. The focus of this study is the Multilayer Perceptron NN model, which is reliable to learn from seven inputs fed to the network to produce prediction of three targets. In order to avoid result from local optimum scenario, GA optimizes synaptic weights of the network towards reducing prediction error. The research used a fixed probability rates for crossover and mutation for hybrid GA-NN model. GA-NN model is further improved using adaptive mechanism to help identify the most suitable operator probability rates. The fitness value refers to Sum of Squared Error. Performance comparisons are between hybrid GA-NN and hybrid GA-NN with adaptive mechanism. Results show the hybrid GA-NN model with adaptive mechanism perform better than the ordinary hybrid model. The reliable model is able to simulate the testing procedure and therefore able to reduce the testing time required as well as to reduce the cost. Adaptive mechanism in GA helps increase capability to converge at zero sooner than the ordinary GA 2015-03-30T03:05:20Z 2015-03-30T03:05:20Z 2015-01 Faridah Sh Ismail and Nordin Abu Bakar. 2015. Adaptive mechanism for GA-NN to enhance prediction model. In Proceedings of the 9th International Conference on Ubiquitous Information Management and Communication (IMCOM '15). ACM, New York, NY, USA, , Article 101 , 5 pages. DOI=10.1145/2701126.2701168 http://doi.acm.org/10.1145/2701126.270116 978-1-4503-3377-1 http://localhost/xmlui/handle/123456789/9715 ACM |
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neural network genetic algorithm; adaptive prediction hybrid model MDF Faridah Sh Ismail Nordin Abu Bakar (UniKL MIIT) Adaptive Mechanism for GA-NN to Enhance Prediction Model |
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This research presents a hybrid Genetic Algorithm Neural Network (GA-NN) model to replace the physical tests procedures of Medium Density Fiberboard (MDF). Emphasis is on applying an adaptive mechanism on GA to enhance model performance. Data included in the model is MDF properties and its fiber characteristics. The focus of this study is the Multilayer Perceptron NN model, which is reliable to learn from seven inputs fed to the network to produce prediction of three targets. In order to avoid result from local optimum scenario, GA optimizes synaptic weights of the network towards reducing prediction error. The research used a fixed probability rates for crossover and mutation for hybrid GA-NN model. GA-NN model is further improved using adaptive mechanism to help identify the most suitable operator probability rates. The fitness value refers to Sum of Squared Error. Performance comparisons are between hybrid GA-NN and hybrid GA-NN with adaptive mechanism. Results show the hybrid GA-NN model with adaptive mechanism perform better than the ordinary hybrid model. The reliable model is able to simulate the testing procedure and therefore able to reduce the testing time required as well as to reduce the cost. Adaptive mechanism in GA helps increase capability to converge at zero sooner than the ordinary GA |
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author |
Faridah Sh Ismail Nordin Abu Bakar (UniKL MIIT) |
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Faridah Sh Ismail Nordin Abu Bakar (UniKL MIIT) |
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Faridah Sh Ismail |
title |
Adaptive Mechanism for GA-NN to Enhance Prediction Model |
title_short |
Adaptive Mechanism for GA-NN to Enhance Prediction Model |
title_full |
Adaptive Mechanism for GA-NN to Enhance Prediction Model |
title_fullStr |
Adaptive Mechanism for GA-NN to Enhance Prediction Model |
title_full_unstemmed |
Adaptive Mechanism for GA-NN to Enhance Prediction Model |
title_sort |
adaptive mechanism for ga-nn to enhance prediction model |
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ACM |
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2015 |
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http://localhost/xmlui/handle/123456789/9715 |
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