Computer-vision-based self-adaptive control method for belt conveyor for coal wharf

A belt conveyor and computer vision technology, applied in the direction of conveyor control devices, conveyors, conveyor objects, etc., can solve problems such as economic loss, safety accidents, high cost, and large number of sensors

Active Publication Date: 2019-02-05
ANHUI UNIV OF SCI & TECH
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Problems solved by technology

[0004] In addition, because the conveyor belt on the belt conveyor often inevitably produces abnormal states such as "deviation", "tearing", "scratching", "cutting edges" and "potholes" during transportation and use, these If the abnormal state cannot be found and repaired in time, it will seriously affect the service life of the conveyor belt, causing serious economic losses and safety accidents
Some existing scholars and experts are more designed for some solutions to the longitudinal tear of the conveyor belt. There are few studies on simultaneous detection of abnormal states of "potholes". Different detection equipment needs to be installed for different types of damage detection, which results in a large number of sensors used, cumbersome installation, high system complexity, huge cost, and low effect. not ideal

Method used

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  • Computer-vision-based self-adaptive control method for belt conveyor for coal wharf
  • Computer-vision-based self-adaptive control method for belt conveyor for coal wharf
  • Computer-vision-based self-adaptive control method for belt conveyor for coal wharf

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Embodiment Construction

[0061] Such as figure 1 As shown, the overall process of the adaptive control method of the coal terminal belt conveyor based on computer vision is as follows:

[0062] The method includes an off-line pre-training stage and an online monitoring stage: the off-line pre-training stage includes making a delivery amount training data set and a delivery amount test data set, training a belt conveyor delivery amount detection model, making an abnormal training data set and Abnormal state test data set, training belt conveyor abnormal state detection model; the function of the online monitoring stage is to use the trained conveying capacity detection model and abnormal state detection model to carry out real-time online conveying capacity detection and abnormal State detection, adaptively control the transmission speed of the belt conveyor according to the size of the conveying volume of the belt conveyor and whether there is an abnormal state;

[0063] Such as figure 2 Shown, the...

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Abstract

The invention discloses a computer-vision-based self-adaptive control method for a belt conveyor for a coal wharf. The computer-vision-based self-adaptive control method for the belt conveyor for thecoal wharf comprises the steps of during the off-line pre-training stage, through recording a running video of a conveyor belt, extracting an image, making a conveying capacity training data set, a conveying capacity test data set, an abnormal state training data set and an abnormal state testing data set, and training a belt conveyor conveying capacity detection model and a belt conveyor abnormalstate detection model based on a convolutional neural network; during the on-line monitoring stage, using the trained belt conveyor conveying capacity detection model and the trained belt conveyor abnormal state detection model for monitoring the conveyor belt in real time, self-adaptively controlling the conveying speed of the belt conveyor according to the conveying capacity of the belt conveyor, detecting multiple abnormal states of the conveyor belt at the same time, immediately stopping running after the abnormal states are found, and sending an alarm corresponding to the abnormal state.The operation cost of the belt conveyor is greatly reduced, the overhaul and maintenance efficiency of the belt conveyor are improved, the maintenance cost is reduced, the safety is improved, the detection models are built by using the convolutional neural network, the detection accuracy is improved, and the recognition error rate is reduced.

Description

technical field [0001] The invention relates to a method for self-adaptive control of a computer vision-based belt conveyor used in a coal wharf according to conveying volume and abnormal state conditions. Background technique [0002] Belt conveyor is an important tool for coal production and transportation in my country. Its advantages are that it can carry out long-distance transmission and transportation, with large transportation volume and fast transportation speed, and it can carry out continuous operation for a long time in a relatively harsh environment. Therefore, It is widely used in coal mine production and coal transportation. Since the operation of the belt conveyor is mainly driven by a high-power motor, the power consumption is huge, and the belt conveyors in most coal mines in my country run at a constant speed with the maximum load, but the production of coal mines cannot achieve the maximum load of coal. Therefore, it is inevitable that the belt conveyor wi...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): B65G43/08B65G43/02B65G43/06G06K9/00G06K9/62
CPCB65G43/02B65G43/06B65G43/08B65G2203/0275B65G2203/0291G06V20/41G06F18/214
Inventor 韩涛黄友锐陈亮徐善永凌六一唐超礼
Owner ANHUI UNIV OF SCI & TECH
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