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A mine main fans switchover system with lower air flow volatility based on improved particle swarm optimization algorithm:

机译:基于改进的粒子群算法的低风量矿井主风机切换系统:

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A reliable ventilation system is essential for maintaining a comfortable working environment and ensuring safety production in an underground coal mine. The automated fan switchover technique was developed for changing the main fan for maintenance with lower air flow volatility of underground mine in the switchover process. This article established the optimization model in the main fans switchover process, used the improved particle swarm optimization algorithm to solve the model, and achieved minimum air flow volatility in the fans switchover process. Compared to previous studies, computer simulations have shown that the proposed algorithm can effectively find the global optimal solution with less initial parameters and achieved lower air flow volatility in underground mine. The particle swarm optimization solution, searching diversity, prevents it from confining to local optimal solutions and enhances convergence. The reasonable step length is beneficial to reduce the air flow volatility and main fans ...
机译:可靠的通风系统对于维持舒适的工作环境并确保地下煤矿的安全生产至关重要。开发了自动风扇切换技术,用于在切换过程中更换主风扇进行维护,以降低地下矿井的气流波动。本文在主风机切换过程中建立了优化模型,并使用改进的粒子群算法对模型进行了求解,在风机切换过程中实现了最小的气流波动。与以往的研究相比,计算机仿真表明,该算法可以有效地找到初始参数较少的全局最优解,并实现较低的井下气流波动性。搜索多样性的粒子群优化解决方案可防止其局限于局部最优解并增强收敛性。合理的步长有利于减少气流的波动和主风扇。

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