用机器学习方法模拟三水铝石连续结晶过程

V. Golubev
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引用次数: 0

摘要

连续种子结晶的特点是粒度分布(PSD)和白酒生产率的振荡。由于过程的非线性和缓慢响应,用解析方法描述这些振荡是一项复杂的任务。本文采用统计方法准备初始数据,确定重要因素,并根据这些因素对晶体种群发展动态的影响对这些因素进行排序。分析了各种机器学习方法,以开发能够预测最终溶液粒度分布和组成的时间序列的模型。本文建议使用深度学习方法来预测按等级和白酒产量的晶体分布。这种方法以前从未用于这些目的。研究表明,与其他多层神经网络相比,基于长短期记忆(LSTM)细胞的模型在可训练参数较少的情况下提供了更好的准确性。使用在运行的氧化铝精炼厂的水合物结晶区收集的历史数据对模型进行训练并对其质量进行评估
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Approach to Simulation of Continuous Seeded Crystallization of Gibbsite
Continuous seeded crystallization is characterized by oscillations of particle size distribution (PSD) and liquor productivity. To describe these oscillations using analytical methods is a complicated task due to non-linearity and slow response of the process. This paper uses a statistical approach to the preparation of initial data, determination of the significant factors and arrangement of the said factors by their impact on the dynamics of crystal population development. Various methods of machine learning were analyzed to develop a model capable of forecasting the time series of particle size distribution and composition of the final solution. The paper proposes to use deep learning methods for predicting the distribution of crystals by grades and liquor productivity. Such approach has never been used for these purposes before. The study shows that models based on long short-term memory (LSTM) cells provide for better accuracy with less trainable parameters as compared with other multilayer neural networks. Training of the models and the assessment of their quality are performed using the historical data collected in the hydrate crystallization area at the operating alumina refinery
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