Fuzzy Intuitionistic Alpha-cut Interpolation Rational Bézier Curve Modeling for Shoreline Island Data

IF 0.8 Q3 MULTIDISCIPLINARY SCIENCES
Siti Nasyitah Jaman, R. Zakaria, I. Ismail
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引用次数: 0

Abstract

The problem of uncertain data cannot be solved by conventional methods, which results in inaccurate data analysis and prediction. During the data collecting phase, ambiguous data are often collected, but they cannot be used immediately to generate geometric models. In this case, the new approaches to intuitionistic fuzzy sets will be used to determine the alpha cut value for uncertainty data sets. To solve the uncertainty data and build the mathematical model, this study applied fuzzy set theory, intuitionistic fuzzy sets, and rational Bézier curve geometric modelling. There are three main methods in this study. The triangular fuzzy number is used to define the uncertainty data in the first place. The alpha value can then be found using a centre of mass alpha-cut. The intuitionistic alpha-cut can then be applied to both membership and non-membership data. This procedure, also called fuzzification, is defined as fuzzy intuitionistic into alpha-cut values. The data set will then undergo the defuzzification procedure to get single value data. For the purpose of analysis and conclusion-making, the modeling data for each process will be visualised using an interpolation rational Bézier curve. The findings demonstrate that using the intuitionistic fuzzy set for the alpha-cut value was more effective than the previous method without considering both membership and non-membership values.
针对海岸线岛屿数据的模糊直觉阿尔法切插值有理贝塞尔曲线建模
常规方法无法解决数据的不确定性问题,导致数据分析和预测不准确。在数据收集阶段,经常会收集到模棱两可的数据,但这些数据不能立即用于生成几何模型。在这种情况下,直觉模糊集的新方法将用于确定不确定性数据集的α切值。为了解决不确定性数据,建立数学模型,本研究应用模糊集理论、直觉模糊集和理性bassazier曲线几何建模。本研究主要采用三种方法。首先用三角模糊数来定义不确定性数据。然后可以使用质量中心的alpha-cut来找到alpha值。直观的alpha-cut可以同时应用于隶属和非隶属数据。这个过程,也被称为模糊化,被定义为对α -切值的模糊直觉。然后对数据集进行去模糊化处理,得到单值数据。为了分析和得出结论,每个过程的建模数据将使用插值有理bsamzier曲线进行可视化。研究结果表明,使用直觉模糊集来确定alpha-cut值比不考虑隶属度和非隶属度的方法更有效。
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来源期刊
CiteScore
1.40
自引率
0.00%
发文量
45
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