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Improved Eliminate Particle Swarm Optimization on Support Vector Machine for Freshwater Fish Classification

机译:支持向量机在淡水鱼分类中的改进消除粒子群算法

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Freshwater fish is a type of fish for consumption to substitute saltwater fish in areas far from the sea. Freshwater fish production is not as much as saltwater fish because the selection of freshwater fish is not suitable in the cultivation process. Therefore, a classification method to determine the type of freshwater fish that is good for aquaculture is proposed, one of the classification methods that can be used is the Support Vector Machine (SVM). SVM is used to process the classification of freshwater fish that have the potential to be cultivated. SVM has weaknesses in the classification process, so SVM requires an optimization method that can overcome it's weaknesses, one optimization method that can be used is Improved Eliminate Particle Swarm Optimization (IEPSO). IEPSO is used to optimize features and parameters in the SVM method. The data used in the research came from the Fish and Livestock Breeding Center of Nganjuk Regency with a percentage of 90% of training data and 10% of test data. The results of the study using SVM-IEPSO using feature selection and parameter optimization obtained 88% accuracy in the classification process to determine the type of freshwater fish. The classification results will be more optimal if there are more types of freshwater fish species used in the training process, because this study only uses data on freshwater fish species that are only found in Livestock Breeding Center of Nganjuk Regency.
机译:淡水鱼是一种食用鱼,可替代远海地区的咸水鱼。淡水鱼的产量不及咸水鱼,因为淡水鱼的选择不适合养殖过程。因此,提出了一种确定适合水产养殖的淡水鱼类型的分类方法,可以使用的分类方法之一是支持向量机(SVM)。支持向量机用于处理具有养殖潜力的淡水鱼的分类。 SVM在分类过程中存在弱点,因此SVM需要一种可以克服其弱点的优化方法,可以使用的一种优化方法是“改进的消除粒子群算法(IEPSO)”。 IEPSO用于优化SVM方法中的功能和参数。研究中使用的数据来自Nganjuk摄政区鱼类和畜牧繁育中心,其中90%的培训数据和10%的测试数据占百分比。使用特征选择和参数优化的SVM-IEPSO进行的研究结果在确定淡水鱼类型的分类过程中获得了88%的准确性。如果在训练过程中使用更多类型的淡水鱼种类,分类结果将是最佳的,因为该研究仅使用仅在Nganjuk摄政中心畜牧繁殖中心发现的淡水鱼种类数据。

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