Mamdani fuzzy inference system for mapping water quality level of biofloc ponds in catfish cultivation

Herryawan Pujiharsono, D. Kurnianto
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Abstract

The government has launched a program to increase the production of catfish by using biofloc ponds. The biofloc ponds can maintain the quality of water biologically to maximize the growth of fish. However, the level of water quality monitoring is generally only divided into good or bad categories so that it cannot represent the condition of fish growth. Therefore, this study aims to get the level of water quality (0–100 %) using the Mamdani fuzzy inference system (FIS) algorithm based on pH, temperature, and dissolved oxygen (DO). The level of water quality was correlated based on catfish growth conditions. The results showed that the range of values of the water quality level for each condition of catfish growth was 100 % for normal-living fish, 83–99 % for stunted fish growth, and < 83% for threatened fish. The FIS algorithm had 89.92 % of accuracy.
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用于绘制鲶鱼养殖生物絮团池塘水质级别图的马姆达尼模糊推理系统
政府已启动一项计划,利用生物絮凝池提高鲶鱼产量。生物絮团池塘可以从生物角度保持水质,最大限度地促进鱼类生长。然而,水质监测水平一般只分为好坏两类,无法代表鱼类的生长状况。因此,本研究旨在使用基于 pH 值、温度和溶解氧(DO)的马姆达尼模糊推理系统(FIS)算法来获得水质水平(0-100%)。水质水平与鲶鱼的生长条件相关联。结果表明,鲶鱼生长的各种条件下的水质水平值范围是:正常生活的鱼类为 100%,生长迟缓的鱼类为 83-99%,受威胁的鱼类为小于 83%。FIS 算法的准确率为 89.92%。
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审稿时长
6 weeks
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