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Forecasting by general type-2 fuzzy logic systems optimized with QPSO algorithms

机译:通过QPSO算法优化的一般类型-2模糊逻辑系统预测

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摘要

With the development of alpha-planes representation result of general type-2 fuzzy sets, the optimization and application of general type-2 fuzzy logic systems (GT2 FLSs) based on general type-2 fuzzy sets (GT2 FSs) has become a hot topic in current academic research. The efficient and energy conserving permanent magnetic drive (PMD) presents relatively high uncertainty as an emerging technology. The paper studies on forecasting problems based the data of torque and revolutions per minute (rpm) of PMD. In the proposed GT2 FLSs design, the antecedent, input measurement primary membership functions of GT2 FSs are chosen as Gaussian type-2 membership functions with uncertain standard deviation. While the consequent parameters are selected as deterministic values. Quantum particle swarm optimization (QPSO) algorithms are used to optimize all the parameters of the suggested GT2 FLSs. The torque and rpm data of PMD are used to train and test the proposed advanced FLSs forecasting methods. Simulation studies and convergence analysis show the effectiveness of the proposed GT2 FLSs methods compared with their type-1 (T1) and interval type-2 (IT2) methods for forecasting.
机译:随着普通型-2模糊集的alpha-planes表示结果,基于一般类型-2模糊集(GT2 FSS)的一般类型-2模糊逻辑系统(GT2FLS)的优化和应用已成为一个热门话题在目前的学术研究中。高效和节能的永磁驱动(PMD)呈现出相对高的不确定性作为新兴技术。基于PMD扭矩数据和扭矩扭转数据(rpm)的预测问题的论文研究。在提议的GT2 FLS设计中,GT2 FSS的先行输入测量主要隶属函数被选为高斯类型-2隶属函数,具有不确定的标准偏差。虽然后果参数被选为确定性值。量子粒子群优化(QPSO)算法用于优化所提出的GT2氟的所有参数。 PMD的扭矩和RPM数据用于训练和测试所提出的先进的FLS预测方法。仿真研究和收敛分析表明,所提出的GT2 FLSS方法的有效性与其1(T1)和间隔类型-2(IT2)方法进行预测。

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