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Abstract

The paper presents a construction of a system for measurements of pH, concentration of calcium ions and concentration of heavy metal ions in water. Three fiber optic sensors in flow configuration were designed and tested. The system is fully automatic and can be used for water quality monitoring.

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Authors and Affiliations

A. Dybko
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Abstract

The absolute positions of shearers on advancing coal faces are requisite for providing references for adaptive mining combined with geological models. Common coalmine localization techniques (e.g. UWB, INS, etc.) are not fully applicable to adaptive mining due to their drifting error or the messy environment. The gyro robotic total station (RTS) is versatile and precise in measuring coordinates in coal mines, while its conventional usage is of low automation and poor timeliness, impeding its application on mining faces. This article proposed an automated gyro RTS system for real-time absolute positioning on fully mechanised coal faces. The measuring process was changed to fit mining requirements, and a new state-transferring model was used to automate it. Programs were developed and installed in available instruments, forming a prototype. Field experiments were carried out on a simulative working face, verifying the system’s accuracy and applicability. Results show that the relative positioning error is better than 2.6143×10-4, which meets the demand of advancing faces. The error of the gyro is estimated at 55.5187”, justifying its nominal indicators. To sum up, the automated gyro RTS system proposed in this paper can offer real-time and accurate absolute positions of equipment on working faces, supporting adaptive mining combined with the geological model.
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Authors and Affiliations

Ben Li
1
ORCID: ORCID
Shanjun Mao
1
ORCID: ORCID
Haoyuan Zhang
1
ORCID: ORCID
Xinchao Li
2
ORCID: ORCID
Huazhou Chen
2
ORCID: ORCID

  1. Peking University, Institute of Remote Sensing and Geographic Informat ion System, Beijing 100871, China
  2. Beijing Longruan Technologies Co., Ltd., Beijing 100871, China

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