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首页> 外文期刊>IEE Proceedings. Part D >Neurofuzzy network model construction using Bezier-Bernstein polynomial functions
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Neurofuzzy network model construction using Bezier-Bernstein polynomial functions

机译:使用Bezier-Bernstein多项式函数的神经模糊网络模型构建

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Neurofuzzy modelling systems combine fuzzy logic with quantitative artificial neural networks via a concept of fuzzification by using a fuzzy membership function usually based on B-splines and algebraic operators for inference, etc. The paper introduces a new neurofuzzy model construction algorithm using Bezier-Bernstein polynomial functions as basis functions. The new network maintains most of the properties of the B-spline expansion based neurofuzzy system, such as the non-negativity of the basis functions, and unity of support but with the additional advantages of structural parsimony and Delaunay input space partitioning, avoiding the inherent computational problems of lattice networks. This new modelling network is based on the idea that an input vector can be mapped into barycentric co-ordinates with respect to a set of predetermined knots as vertices of a polygon (a set of tiled Delaunay triangles) over the input space. The network is expressed as the Bezier-Bernstein polynomial function of barycentric co-ordinates of the input vector A new inverse de Casteljau procedure using backpropagation is developed to obtain the input vector's barycentric co-ordinates that form the basis functions, Extension of the Bezier- Bernstein neurofuzzy algorithm to n-dimensional inputs is discussed followed by numerical examples to demonstrate the effectiveness of this new data based modelling approach.
机译:神经模糊建模系统通过使用通常基于B样条的模糊隶属函数和代数运算符进行推理等方法,通过模糊化的概念将模糊逻辑与定量人工神经网络相结合。本文介绍了一种新的基于Bezier-Bernstein多项式的神经模糊模型构建算法。作为基础功能。新网络保留了基于B样条展开的神经模糊系统的大多数属性,例如基本功能的非负性和支持的统一性,但具有结构简约和Delaunay输入空间分区的其他优点,避免了固有的晶格网络的计算问题。这个新的建模网络基于这样的思想,即可以将输入矢量相对于一组预定结作为输入空间上多边形的顶点(一组平铺的Delaunay三角形)映射到重心坐标中。该网络表示为输入矢量的重心坐标的Bezier-Bernstein多项式函数。利用反向传播,开发了一种新的逆de Casteljau逆过程,以获取输入矢量的重心坐标,这些坐标形成了基础函数,即Bezier-讨论了对n维输入的Bernstein神经模糊算法,然后通过数值示例来证明这种基于数据的新建模方法的有效性。

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