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[1]. Li MS, Huang XY, Liu HS, Liu BX, Wu Y, Prediction of the gas solubility in polymers by a radial basis function neural network based on chaotic self-adaptive particle swarm optimization and a clustering method, Journal Of Applied Polymer Science, 2013; 130: 3825-3832. https://doi.org/10.1002/app.39525.
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