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A Novel Adjustment Method for Shearer Traction Speed through Integration of T-S Cloud Inference Network and Improved PSO

机译:T-S云推理网络与改进PSO相集成的采煤机牵引速度调整新方法

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摘要

In order to efficiently and accurately adjust the shearer traction speed, a novel approach based on Takagi-Sugeno (T-S) cloud inference network (CIN) and improved particle swarm optimization (IPSO) is proposed. The T-S CIN is built through the combination of cloud model and T-S fuzzy neural network. Moreover, the IPSO algorithm employs parameter automation adjustment strategy and velocity resetting to significantly improve the performance of basic PSO algorithm in global search and fine-tuning of the solutions, and the flowchart of proposed approach is designed. Furthermore, some simulation examples are carried out and comparison results indicate that the proposed method is feasible, efficient, and is outperforming others. Finally, an industrial application example of coal mining face is demonstrated to specify the effect of proposed system.
机译:为了有效,准确地调节采煤机的牵引速度,提出了一种基于高木-Sugeno(T-S)云推理网络(CIN)和改进的粒子群算法(IPSO)的新方法。 T-S CIN是通过云模型和T-S模糊神经网络相结合而构建的。此外,IPSO算法采用参数自动调整策略和速度重置来显着提高基本PSO算法在全局搜索和解决方案微调方面的性能,并设计了该方法的流程图。此外,进行了一些仿真实例,比较结果表明该方法是可行,高效的,并且优于其他方法。最后,以煤矿采掘工作面的工业应用实例为例,说明所提出系统的效果。

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