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Data-Driven Optimization of SIRMs Connected Neural-Fuzzy System with Application to Cooling and Heating Loads Prediction

机译:SIRMs神经模糊系统的数据驱动优化及其在冷热负荷预测中的应用

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In modeling, prediction and control applications, the single-input-rule-modules (SIRMs) connected fuzzy inference method can efficiently tackle the rule explosion problem that conventional fuzzy systems always face. In this paper, to improve the learning performance of the SIRMs method, a neural structure is presented. Then, based on the least square method, a novel parameter learning algorithm is proposed for the optimization of the SIRMs connected neural-fuzzy system. Further, the proposed neural-fuzzy system is applied to the cooling and heating loads prediction which is a popular multi-variable problem in the research domain of intelligent buildings. Simulation and comparison results are also given to demonstrate the effectiveness and superiority of the proposed method.
机译:在建模,预测和控制应用中,单输入规则模块(SIRM)连接的模糊推理方法可以有效解决常规模糊系统始终面临的规则爆炸问题。在本文中,为了提高SIRMs方法的学习性能,提出了一种神经结构。然后,基于最小二乘法,提出了一种新的参数学习算法,用于SIRM连接神经模糊系统的优化。进一步地,将所提出的神经模糊系统应用于冷热负荷预测中,这是智能建筑研究领域中流行的多变量问题。仿真和比较结果也证明了该方法的有效性和优越性。

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