An FSV Analysis Approach to verify the Robustness of The Triple-Correlation Analysis Theoretical Framework for Developing a Gas Warning System

Author:

Wu Robert. M.X1,Zhang Zhongwu2,Wang Yongwen3,Shafiabady Niusha4,Yan Wanjun3,Gou Jinwen5,Ma Yanyun5,Gide Ergun1,He Kaimin5,Fan Jianfeng2,Zhao Haijun5,Shi Fangfang5,Wang Ya6,Zhang Huan2

Affiliation:

1. Central Queensland University

2. Shanxi Normal University

3. Shanxi Fenxi Mining Industry (Group) Co. Ltd

4. Charles Darwin University

5. Shanxi Fenxi Mining Zhongxing Coal Industry Co. Ltd

6. Shanxi Kailain Technology Co. Ltd

Abstract

Abstract This research aims to use a proposed verification analysis approach -First-round – Second-round – Verification round (FSV) analysis approach to verify the robustness of the Trip-Correlation Analysis Theoretical Framework for developing a gas warning system. A mixed qualitative and quantitative research methodology is adopted, including a case study and correlational research. Our previous work found strong correlations between gas, temperature, and wind in the gas morning system. This research verifies the robustness of the Triple-Correlation Analysis Theoretical Framework, which integrating data on temperature and wind into the gas can improve warning systems’ sensitivity and reduce the incidence of explosions. The outcomes imply that Trip-Correlation Analysis Theoretical Framework is potentially valuable for developing other warning systems. The proposed FSV approach could be adopted for exploring data patterns insightfully to offer new perspectives to develop warning systems for different industry applications.

Publisher

Research Square Platform LLC

Reference20 articles.

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3. Research of synergy warning system for gas outburst based on Entropy-Weight Bayesian;Zhang JY;International Journal of Computational Intelligence Systems,2021

4. Machine learning-based traffic prediction models for intelligent transportation systems;Boukerche A;Computer Networks,2020

5. X.et al. A Correlational Research on Developing an Innovative Integrated Gas Warning System: A Case Study in ZhongXing, China;Wu RM;Geomatics, Natural Hazards and Risk,2021

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