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An Incremental Radial Basis Function Network Based on Information Granules and Its Application

机译:基于信息颗粒及其应用的增量径向基函数网络

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This paper is concerned with the design of an Incremental Radial Basis Function Network (IRBFN) by combining Linear Regression (LR) and local RBFN for the prediction of heating load and cooling load in residential buildings. Here the proposed IRBFN is designed by building a collection of information granules through Context-based Fuzzy C-Means (CFCM) clustering algorithm that is guided by the distribution of error of the linear part of the LR model. After adopting a construct of a LR as global model, refine it through local RBFN that captures remaining and more localized nonlinearities of the system to be considered. The experiments are performed on the estimation of energy performance of 768 diverse residential buildings. The experimental results revealed that the proposed IRBFN showed good performance in comparison to LR, the standard RBFN, RBFN with information granules, and Linguistic Model (LM).
机译:本文涉及通过组合线性回归(LR)和局部RBFN来设计增量径向基函数网络(IRBFN)来预测住宅建筑中的加热负荷和冷却负荷。 这里,通过基于上下文的模糊C-MENCLING算法构建信息颗粒的集合来设计所提出的IRBFN,该算法通过LR模型的线性部分的误差分布来指导。 在采用作为全局模型作为全局模型的构造之后,通过局部RBFN优化它,该局部RBFN捕获要考虑的系统的剩余和更局部化的非线性。 该实验是对768多种住宅建筑的能量性能估计进行的实验。 实验结果表明,与LR,标准RBFN,RBFN和语言模型(LM)相比,所提出的IRBFN显示出良好的性能。

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