Development of a fuzzy logical model of Sugeno for the classification of grain varieties

Dilnoz Mukhamedieva, Shakhzod Bakhtiyorov, Kamal Alimbaev, Behzod Salohiddinov
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Abstract

Ambiguity and fuzziness are characteristic of many real-life situations, including the classification of objects based on their characteristics. In this context, fuzzy logic is a powerful tool for modeling uncertainty and making decisions under fuzzy conditions. The Sugeno model, a subset of fuzzy logic, offers a simple and effective approach to constructing rule-based control and classification systems based on linguistic variables. This paper explores the application of the Sugeno model to classify grain varieties based on their characteristics. For this purpose, a data set containing information about the parameters of grains from three different varieties of wheat is used. The study develops a fuzzy logic model that can effectively and accurately classify grain varieties based on their size and shape. To build the model, the scikit-fuzzy library is used, which provides tools for working with fuzzy logic in the Python programming language. Experiments are conducted with different variants of classification rules, optimizing the model to achieve the highest classification accuracy and reliability. The results obtained allow us to evaluate the effectiveness and applicability of the Sugeno model for the classification problems of grain varieties. The developed model can be useful for agronomists and agricultural specialists to automate the process of identifying wheat varieties based on their characteristics.
开发用于谷物品种分类的 Sugeno 模糊逻辑模型
模糊性和模糊性是现实生活中许多情况的特征,包括根据物体的特征对其进行分类。在这种情况下,模糊逻辑是模拟不确定性和在模糊条件下做出决策的有力工具。Sugeno 模型是模糊逻辑的一个子集,它为构建基于语言变量的规则控制和分类系统提供了一种简单而有效的方法。本文探讨了如何应用 Sugeno 模型,根据谷物的特性对谷物品种进行分类。为此,本文使用了一个数据集,其中包含三个不同小麦品种的谷物参数信息。该研究建立了一个模糊逻辑模型,可以根据谷物的大小和形状有效、准确地对谷物品种进行分类。为了建立该模型,使用了 scikit-fuzzy 库,该库提供了在 Python 编程语言中处理模糊逻辑的工具。实验中使用了不同的分类规则变体,对模型进行了优化,以达到最高的分类准确性和可靠性。根据所获得的结果,我们可以评估 Sugeno 模型在谷物品种分类问题上的有效性和适用性。所开发的模型可帮助农学家和农业专家根据小麦的特性自动识别小麦品种。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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