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Developing and Evaluating a Neuro-Fuzzy Expert System for Improved Food and Nutrition in Nigeria

机译:尼日利亚改善食品和营养的神经模糊专家系统开发和评估

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Protein is a class of food needed daily by humans and even animals. Protein is rated as 20% to 30% of daily food requirements making it a very significant part of daily needs in compliance with the International Labour Organization (ILO) order on food. This class of food from animals has been threatened and carries a lot of health risks unlike protein from plant sources. The need for an alternative to plant protein led to this work. A neuro-fuzzy expert system for detection of leghemoglobin in legumes was developed and evaluated. Knowledge acquisition was done by oral interview of prominent biochemists and botanists that provided key technical facts on leghemoglobin and visits to botanical gardens of Society for Underutilized Legumes (SUL) in Nigeria. Production rule-base technique and forward-chaining mechanisms with linguistic antecedent conditions were used. MATLAB platform was employed for the development of the system. Confusion matrix was employed for the performance evaluation of the developed system. The result is a neuro-fuzzy expert system with gaussian membership functions with accuracy of 100% as against 99.56% for triangular, trapezoidal and gaussian combination functions, precision of 100% for all the membership functions evaluated and recall of 100% for gaussian membership functions and 99.53% for triangular, trapezoidal and Gaussian combination functions.
机译:蛋白质是人类甚至动物每天需要的一类食物。蛋白质被评为20%至30%的日常食品要求,使其符合国际劳工组织(ILO)订单的每日需求的一部分是一项非常重要的部分。这类来自动物的食物受到了威胁,并与来自植物来源的蛋白质不同的健康风险。需要替代植物蛋白质的工作。开发并评估了一种神经模糊专家系统,用于检测豆类中Leghemoglobin的leghemoglobin。知识获取是通过口头采访突出的生物化学家和植物学家来完成的,这些论点为Leghemoglobin提供了关键的技术事实,并访问了尼日利亚未利用的豆类(SUL)的社会植物园。使用具有语言前一种疾病的生产规则基础技术和前进的制剂机制。 MATLAB平台用于制定系统的发展。混淆矩阵用于发达系统的性能评估。其结果是一个神经模糊专家系统与具有100%的准确度作为对99.56%为三角形,梯形和高斯组合功能,100%的所有精密高斯隶属函数的隶属函数评价为100%召回为高斯隶属函数三角形,梯形和高斯组合功能的99.53%。

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