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A Generic Interval of Linguistic Variable based Genetic Fuzzy Inference System; A utility in Forestry Application

机译:基于语言变量的遗传模糊推理系统的一般区间;林业应用中的实用程序

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A standard fuzzy rule relates variables with different linguistic labels where each linguistic label is defined through a membership function having membership value in a range from 0-1. The research presented in this paper extends this concept by associating each linguistic variable with intervals within the scope of its membership value to different classes. Thus, making a fuzzy rule more comprehensive and complete. The introduction of this concept has resulted in achieving better and at least comparable results with the standard fuzzy rule generation systems. The real task in implementing the proposed algorithm has been to determine these intervals. The present paper proposes the use of genetic algorithm with extended chromosome encoding to determine the interval of linguistic variables automatically. One of the main applications in which the proposed algorithm has been tested, is the forest inventory management and estimation. The forest inventory measurement includes vegetation cover, deforestation rate, crop degradation rate or vegetation index calculation. The key measurement in this regard is the amount of vegetation present. Generally, expensive equipment such as LIDAR and multispectral cameras are employed. With the use of the proposed approach vegetation estimation has been achieved using simple RGB cameras that are much cheaper. The proposed algorithm is not just limited to vegetation segmentation problem but is generic enough to be applied to datasets of different types and complexities. In order to establish this claim multiple datasets from UCI machine learning repository have been used to evaluate the proposed algorithm.
机译:标准模糊规则将变量与具有不同语言标签的变量相关联,其中,每个语言标签都是通过隶属度函数定义的,该隶属度函数的隶属度值为0-1。本文提出的研究通过将每个语言变量的隶属度值范围内的间隔与每个类别相关联,从而扩展了这一概念。因此,使模糊规则更加全面和完整。该概念的引入已导致与标准模糊规则生成系统取得更好的结果,并且至少具有可比性。实现所提出算法的真正任务是确定这些间隔。本文提出使用遗传算法和扩展染色体编码来自动确定语言变量的间隔。对该算法进行了测试的主要应用之一是森林资源管理和估算。森林清单测量包括植被覆盖率,森林砍伐率,农作物退化率或植被指数计算。在这方面,关键的衡量标准是存在的植被数量。通常,使用昂贵的设备,例如激光雷达和多光谱相机。通过使用所提出的方法,已经使用便宜得多的简单RGB相机实现了植被估计。所提出的算法不仅限于植被分割问题,而且具有足够的通用性,可以应用于不同类型和复杂性的数据集。为了确定这一要求,已使用来自UCI机器学习存储库的多个数据集来评估所提出的算法。

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