Raw Material Flow Rate Measurement on Belt Conveyor System Using Visual Data

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied System Innovation Pub Date : 2023-09-30 DOI:10.3390/asi6050088
Muhammad Sabih, Muhammad Shahid Farid, Mahnoor Ejaz, Muhammad Husam, Muhammad Hassan Khan, Umar Farooq
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Abstract

Industries are rapidly moving toward mitigating errors and manual interventions by automating their process. The same motivation is carried out in this research which targets to study a conveyor system installed in soda ash manufacturing plants. Our aim is to automate the determination of optimal parameters, which are chosen by identifying the flow rate of the materials available on the conveyor belt for maintaining the ratio between raw materials being carried. The ratio is essential to produce 40% pure carbon dioxide gas needed for soda ash production. A visual sensor mounted on the conveyor belt is used to estimate the flow rate of the raw materials. After selecting the region of interest, a segmentation algorithm is defined based on a voting-based technique to segment the most confident region. Moments and contour features are extracted and passed to machine learning algorithms to estimate the flow rate of different experiments. An in-depth analysis is completed on various techniques and convincing results are achieved on the final data split with the best parameters using the Bagging regressor. Each step of the process is made resilient enough to work in a challenging environment even if the belt is placed in an outdoor environment. The proposed solution caters to the current challenges and serves as a practical solution for estimating material flow without manual intervention.
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带式输送机系统中物料流量的可视化测量
行业正在迅速转向通过自动化流程来减少错误和人工干预。同样的动机,本研究的目标是研究安装在纯碱制造厂的输送系统。我们的目标是自动确定最佳参数,这些参数是通过确定传送带上可用物料的流量来选择的,以保持所携带的原材料之间的比例。这个比例对于生产纯碱所需的40%纯二氧化碳气体至关重要。安装在传送带上的视觉传感器用于估计原料的流量。选择感兴趣的区域后,定义基于投票技术的分割算法,分割出最自信的区域。提取矩和轮廓特征并传递给机器学习算法来估计不同实验的流量。对各种技术进行了深入分析,并在使用Bagging回归器的最佳参数的最终数据分割上取得了令人信服的结果。该过程的每一步都具有足够的弹性,即使皮带放置在室外环境中,也可以在具有挑战性的环境中工作。提出的解决方案迎合了当前的挑战,并作为无需人工干预估算物料流的实用解决方案。
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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