Predictive modeling of die filling of the pharmaceutical granules using the flexible neural tree
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Václav Snásel | Ajith Abraham | Varun Kumar Ojha | Chuan-Yu Wu | Serena Schiano | A. Abraham | Varun Ojha | Chuan-Yu Wu | S. Schiano | V. Snás̃el
[1] Chuan-Yu Wu,et al. A novel use of friability testing for characterising ribbon milling behaviour. , 2016, European journal of pharmaceutics and biopharmaceutics : official journal of Arbeitsgemeinschaft fur Pharmazeutische Verfahrenstechnik e.V.
[2] Colin Thornton,et al. A coupled DEM/CFD analysis of the effect of air on powder flow during die filling , 2009 .
[3] Chun-Yin Wu,et al. Optimal Shape Design of an Extrusion–Forging Die Using a Polynomial Network and a Genetic Algorithm , 2002 .
[4] Zhang Bing,et al. Modeling of Cement Decomposing Furnace Production Process Based on Flexible Neural Tree , 2008, 2008 International Conference on Information Management, Innovation Management and Industrial Engineering.
[5] Luiza Dihoru,et al. The flow of powder into simple and stepped dies , 2003 .
[6] Rainer Storn,et al. Differential Evolution – A Simple and Efficient Heuristic for global Optimization over Continuous Spaces , 1997, J. Glob. Optim..
[7] G. Bocchini,et al. Influence of Small Die Width on Filling and Compacting Densities , 1987 .
[8] I. C. Sinka,et al. Effect of particle size and density on the die fill of powders. , 2013, European journal of pharmaceutics and biopharmaceutics : official journal of Arbeitsgemeinschaft fur Pharmazeutische Verfahrenstechnik e.V.
[9] Simon Haykin,et al. Neural Networks and Learning Machines , 2010 .
[10] J. Beddow,et al. Some effects of vibration upon powder segregation during die filling , 1968 .
[11] Ian H. Witten,et al. The WEKA data mining software: an update , 2009, SKDD.
[12] Václav Snásel,et al. Ensemble of Heterogeneous Flexible Neural Tree for the Approximation and Feature-Selection of Poly (Lactic-co-glycolic Acid) Micro- and Nanoparticle , 2015, AECIA.
[13] Riccardo Poli,et al. A Field Guide to Genetic Programming , 2008 .
[14] Jiwen Dong,et al. Nonlinear System Modelling Via Optimal Design Of Neural Trees , 2004, Int. J. Neural Syst..
[15] Chunlei Pei,et al. The application of terahertz pulsed imaging in characterising density distribution of roll-compacted ribbons. , 2016, European journal of pharmaceutics and biopharmaceutics : official journal of Arbeitsgemeinschaft fur Pharmazeutische Verfahrenstechnik e.V.
[16] Carl E. Rasmussen,et al. Gaussian processes for machine learning , 2005, Adaptive computation and machine learning.
[17] I. C. Sinka,et al. Characterisation of the flow behaviour of pharmaceutical powders using a model die–shoe filling system , 2007 .
[18] Rafael Méndez,et al. Powder hydrophobicity and flow properties: Effect of feed frame design and operating parameters , 2012 .
[19] Jin Li,et al. Flexible neural trees based early stage identification for IP traffic , 2017, Soft Comput..
[20] Chuan-Yu Wu,et al. Experimental and numerical study of die filling, powder transfer and die compaction , 2005 .
[21] Ron Kohavi,et al. Data mining tasks and methods: Classification: decision-tree discovery , 2002 .
[22] Yuehui Chen,et al. Reverse engineering of gene regulatory networks using flexible neural tree models , 2013, Neurocomputing.
[23] Martin A. Riedmiller,et al. A direct adaptive method for faster backpropagation learning: the RPROP algorithm , 1993, IEEE International Conference on Neural Networks.
[24] Hung T. Nguyen,et al. Computational Intelligence and Its Applications:Evolutionary Computation, Fuzzy Logic, Neural Network and Support Vector Machine Techniques , 2012 .
[25] Jiwen Dong,et al. Time-series forecasting using flexible neural tree model , 2005, Inf. Sci..
[26] J. Tengzelius,et al. Die Filling Characteristics of Metal Powders , 1986 .
[27] Chuan-Yu Wu,et al. Flow behaviour of powders during die filling , 2004 .
[28] I. C. Sinka,et al. The effect of suction during die fill on a rotary tablet press. , 2007, European journal of pharmaceutics and biopharmaceutics : official journal of Arbeitsgemeinschaft fur Pharmazeutische Verfahrenstechnik e.V.
[29] Peng Wu,et al. Foreign Exchange Rate Forecasting Using Higher Order Flexible Neural Tree , 2009 .
[30] D. J. Kim,et al. Application of neural network and FEM for metal forming processes , 2000 .
[31] Colin Thornton,et al. The effects of air and particle density difference on segregation of powder mixtures during die filling , 2011 .
[32] Chuan-Yu Wu,et al. DEM simulations of die filling during pharmaceutical tabletting , 2008 .
[33] H Schmidli,et al. Advantages of Artificial Neural Networks (ANNs) as alternative modelling technique for data sets showing non-linear relationships using data from a galenical study on a solid dosage form. , 1998, European journal of pharmaceutical sciences : official journal of the European Federation for Pharmaceutical Sciences.
[34] Gintaras V. Reklaitis,et al. Toward intelligent decision support for pharmaceutical product development , 2006, Journal of Pharmaceutical Innovation.
[35] X. Yao. Evolving Artificial Neural Networks , 1999 .