• 中文核心期刊
  • 中国科技核心期刊
  • RCCSE中国核心学术期刊
  • Scopus, DOAJ, CA, AJ, JST收录期刊
高级检索

基于GA-PSO-BP混合优化算法的矿井CO气体监测系统设计

Design of downhole CO gas monitoring system based on GA-PSO-BP hybrid optimization algorithm

  • 摘要: 针对井下工作面复杂多变的温湿度环境及悬浮煤尘对矿井内CO气体监测精度的不利影响,提出了一种基于GA-PSO-BP混合优化算法的井下CO气体监测系统设计方案。该系统设计有9个样本采样节点,各节点感知端选用红外气体传感器,决策端通过基于遗传算法和粒子群算法混合优化的BP神经网络算法对感知端进行复杂多变条件下的温湿度补偿。多次实验结果表明:相比应用广泛的BP神经网络算法和粒子群优化BP神经网络算法,使用混合优化BP神经网络(GA-PSO-BP)算法后9个测试样本节点返回监测中心的CO气体浓度最大误差不超过1.30%,满足井下气体监测精度需求。

     

    Abstract: Based on the complex and changeable temperature and humidity environment of underground working face and the negative influence of suspended coal dust on the monitoring accuracy of CO gas in mine, a scheme of underground CO gas monitoring system based on GA-PSO-BP hybrid optimization algorithm was proposed, this system was designed with 9 sample sampling nodes, the sensing end of each node used infrared gas sensors. The BP Neural Network based on Genetic Algorithms and Particle Swarm Optimization was used in the decision-making end to compensate the temperature and humidity of the sensing segment under complex and variable conditions. Multiple experimental results show that, compared with the widely used BP neural network algorithm and the particle swarm optimization BP neural network algorithm, the maximum error of CO gas concentration returned to the monitoring center by 9 test sample nodes after using the hybrid optimized BP neural network (GA-PSO-BP) algorithm is no more than 1.30%, which meets the requirements of downhole gas monitoring accuracy.

     

/

返回文章
返回