Implementation Internet of Things for Feeding Catfish Water Quality Analysis Using Linear Regression and K-Nearest Neighbor

Cultivation of catfish (Clarias Gariepinus) is a promising business field and also a very productive activity because public interest in catfish is high. This factor is observed by market demand for catfish which is increasing from year to year. In catfish farming, you must pay attention to the acid...

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Main Authors: Yaddarabullah Yaddarabullah, Egie Hermawan
Format: Article
Language:English
Published: Program Studi Teknik Informatika Universitas Trilogi 2022-12-01
Series:JISA (Jurnal Informatika dan Sains)
Subjects:
Online Access:https://trilogi.ac.id/journal/ks/index.php/JISA/article/view/1431
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author Yaddarabullah Yaddarabullah
Egie Hermawan
author_facet Yaddarabullah Yaddarabullah
Egie Hermawan
author_sort Yaddarabullah Yaddarabullah
collection DOAJ
description Cultivation of catfish (Clarias Gariepinus) is a promising business field and also a very productive activity because public interest in catfish is high. This factor is observed by market demand for catfish which is increasing from year to year. In catfish farming, you must pay attention to the acidity of the water (pH), temperature, and oxygen levels, which can change if too much feed is given. This can cause catfish seedlings to die and affect the catfish harvest. Catfish farmers often provide excessive food which causes many catfish seeds to die. This research will conduct a study on an Internet Of Things technology that can be used to monitor the acidity level in water pH, temperature, and oxygen levels as well as feed fish. The Internet of Things is very influential for monitoring the quality of catfish ponds by distributing information data resulting from sensor monitoring. The data obtained will be predicted for water quality in the pond by implementing a Linear Regression method. Furthermore, the acquisition of data from the predictions that have been carried out will be processed again to go to the next phase, namely classifying with the K-Nearest Neighbor algorithm method to carry out the identification phase of water types based on the nearest neighbors. This prediction is used to anticipate and notify catfish farmers through applications if there is a water acidity level (pH), temperature, and oxygen and feed levels that have run out
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spelling doaj.art-286878c2bc2f4ffc92d183135d3f21882022-12-27T02:41:51ZengProgram Studi Teknik Informatika Universitas TrilogiJISA (Jurnal Informatika dan Sains)2776-32342614-84042022-12-015215916410.31326/jisa.v5i2.1431767Implementation Internet of Things for Feeding Catfish Water Quality Analysis Using Linear Regression and K-Nearest NeighborYaddarabullah Yaddarabullah0Egie Hermawan1Universitas TrilogiUniversitas TrilogiCultivation of catfish (Clarias Gariepinus) is a promising business field and also a very productive activity because public interest in catfish is high. This factor is observed by market demand for catfish which is increasing from year to year. In catfish farming, you must pay attention to the acidity of the water (pH), temperature, and oxygen levels, which can change if too much feed is given. This can cause catfish seedlings to die and affect the catfish harvest. Catfish farmers often provide excessive food which causes many catfish seeds to die. This research will conduct a study on an Internet Of Things technology that can be used to monitor the acidity level in water pH, temperature, and oxygen levels as well as feed fish. The Internet of Things is very influential for monitoring the quality of catfish ponds by distributing information data resulting from sensor monitoring. The data obtained will be predicted for water quality in the pond by implementing a Linear Regression method. Furthermore, the acquisition of data from the predictions that have been carried out will be processed again to go to the next phase, namely classifying with the K-Nearest Neighbor algorithm method to carry out the identification phase of water types based on the nearest neighbors. This prediction is used to anticipate and notify catfish farmers through applications if there is a water acidity level (pH), temperature, and oxygen and feed levels that have run outhttps://trilogi.ac.id/journal/ks/index.php/JISA/article/view/1431water quality analysis, internet of things, k-nearest neighbor
spellingShingle Yaddarabullah Yaddarabullah
Egie Hermawan
Implementation Internet of Things for Feeding Catfish Water Quality Analysis Using Linear Regression and K-Nearest Neighbor
JISA (Jurnal Informatika dan Sains)
water quality analysis, internet of things, k-nearest neighbor
title Implementation Internet of Things for Feeding Catfish Water Quality Analysis Using Linear Regression and K-Nearest Neighbor
title_full Implementation Internet of Things for Feeding Catfish Water Quality Analysis Using Linear Regression and K-Nearest Neighbor
title_fullStr Implementation Internet of Things for Feeding Catfish Water Quality Analysis Using Linear Regression and K-Nearest Neighbor
title_full_unstemmed Implementation Internet of Things for Feeding Catfish Water Quality Analysis Using Linear Regression and K-Nearest Neighbor
title_short Implementation Internet of Things for Feeding Catfish Water Quality Analysis Using Linear Regression and K-Nearest Neighbor
title_sort implementation internet of things for feeding catfish water quality analysis using linear regression and k nearest neighbor
topic water quality analysis, internet of things, k-nearest neighbor
url https://trilogi.ac.id/journal/ks/index.php/JISA/article/view/1431
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