Neural Prediction Model for Extraction of Germanium from Zinc Oxide Dust by Microwave Alkaline Roasting-Water Leaching

The Minerals, Metals and Materials Society
Wankun Wang Fuchun Wang
Organization:
The Minerals, Metals and Materials Society
Pages:
7
File Size:
196 KB
Publication Date:
Mar 1, 2018

Abstract

Based on the study of artificial neural network, the neural model was established for the prediction of germanium extraction from zinc oxide dust by microwave alkaline roasting-water leaching. Alkali-material mass ratio, microwave heating temperature, liquid-solid ratio, aging time, leaching time and leaching temperature were the significant factors for the process. The results indicated that the neural network prediction model was reliable, and the forecast values fitted well with the actual experimental values. The model could be used to predict the regeneration experiments with high credibility and practical significance. The accuracy of convergence of the model reached 10−5.
Citation

APA: Wankun Wang Fuchun Wang  (2018)  Neural Prediction Model for Extraction of Germanium from Zinc Oxide Dust by Microwave Alkaline Roasting-Water Leaching

MLA: Wankun Wang Fuchun Wang Neural Prediction Model for Extraction of Germanium from Zinc Oxide Dust by Microwave Alkaline Roasting-Water Leaching. The Minerals, Metals and Materials Society, 2018.

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