A New Weakly Supervised Learning Approach for Real-time Iron Ore Feed
Load Estimation
- URL: http://arxiv.org/abs/2110.04063v1
- Date: Wed, 6 Oct 2021 11:24:47 GMT
- Title: A New Weakly Supervised Learning Approach for Real-time Iron Ore Feed
Load Estimation
- Authors: Li Guo, Yonghong Peng, Rui Qin, Bingyu Liu
- Abstract summary: Iron ore feed load control is one of the most critical settings in a mineral grinding process.
This paper presents our work using deep learning models for direct ore feed load estimation from ore pellet images.
- Score: 5.964163785417882
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: Iron ore feed load control is one of the most critical settings in a mineral
grinding process, directly impacting the quality of final products. The setting
of the feed load is mainly determined by the characteristics of the ore
pellets. However, the characterisation of ore is challenging to acquire in many
production environments, leading to poor feed load settings and inefficient
production processes. This paper presents our work using deep learning models
for direct ore feed load estimation from ore pellet images. To address the
challenges caused by the large size of a full ore pellets image and the
shortage of accurately annotated data, we treat the whole modelling process as
a weakly supervised learning problem. A two-stage model training algorithm and
two neural network architectures are proposed. The experiment results show
competitive model performance, and the trained models can be used for real-time
feed load estimation for grind process optimisation.
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