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Estimation of optimal physico-chemical characteristics of nano-sized inorganic blue pigment by combined artificial neural network and response surface methodology

机译:人工神经网络和响应面法相结合的纳米无机蓝色颜料最佳理化特性估算

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摘要

The application of response surface methodology combined with artificial neural network was used to estimate the optimal characteristics of nano-sized cobalt based pigment. Firstly, the nano-sized blue powder was synthesized by stoichiometric contents of cobalt and aluminum nitrates using autoignition technique. The study was conducted over a wide range of operating conditions, designed by response surface methodology, in terms of pH, fuel ratio and calcination temperature. The crystallite size, specific surface area, color behavior and crystallinity of powders were determined according to the standard methods. Secondly, several artificial neural networks were designed and then examined for prediction of pigment characteristics. The appropriate model was obtained to achieve better prediction and then the response surface methodology was applied to screen the artificial neural network output data for optimizing synthesis condition. It was concluded that the trained artificial neural network combined with response surface methodology can provide the synergetic pigment synthesis conditions. The additional validations were performed and the results showed acceptable error between the predicted and experimental data. The application of presented algorithm can be important tool for reliable synthesis nano-sized blue powder.
机译:应用响应面方法结合人工神经网络来估计纳米钴基颜料的最佳性能。首先,利用自燃技术,通过化学计量的钴和硝酸铝含量合成了纳米级蓝色粉末。通过pH值,燃料比和煅烧温度,通过响应面方法设计,该研究在广泛的操作条件下进行。根据标准方法测定粉末的微晶尺寸,比表面积,颜色行为和结晶度。其次,设计了几个人工神经网络,然后检查它们对色素特性的预测。获得适当的模型以实现更好的预测,然后应用响应面方法筛选人工神经网络输出数据以优化合成条件。结论是训练有素的人工神经网络结合响应面方法可以提供协同色素合成条件。进行了额外的验证,结果表明预测数据和实验数据之间的可接受误差。所提出的算法的应用可能是可靠合成纳米级蓝色粉末的重要工具。

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