Klasifikasi Tingkat Kemurnian Bahan Bakar Minyak Berdasarkan Cepat Rambat Gelombang Menggunakan Algoritma K-Nearest Neighbor

R. Wijaya, A. Rouf, Tri Wahyu Supardi
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Abstract

The need for fuel oil has increased along with the increase of population, the number of vehicles and industries. An increase in demand for fuel oil is used by some people to make a profit by selling mixed fuel oil at the same price as the price set by the government. The purpose of this study is to create a prototype device that can characterize the type of fuel oil and create a classification system to determine the level of fuel purity with 40 kHz ultrasonic waves based on the parameters of wave velocity using the K-Nearest Neighbor (KNN) algorithm.This device works by using a 40 kHz ultrasonic wave that is connected to an ultrasonic transmitter. The propagated wave will be received by the ultrasonic receiver. The wave received by the receiver will be amplified and connected to the comparator circuit so that it can be processed by a microcontroller. Data obtained using this tool are wave travel time, wave velocity, density, and attenuation. The data used for classification systems using the KNN algorithm is wave velocity.Classification using the KNN algorithm can identify the level of fuel purity based on the parameters of the wave velocity obtained from ultrasonic wave gauges with an accuracy of 72.50%. Wave velocity which is measured using ultrasonic waves is directly proportional to the actual speed with the largest percentage of deviations that is 0.34%.
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基于速度波长的K-近邻算法的燃油纯度分类
随着人口、车辆和工业的增加,对燃料油的需求也在增加。一些人利用燃料油需求的增加,以与政府制定的价格相同的价格出售混合燃料油来获利。本研究的目的是创建一个原型装置,该装置可以表征燃料油的类型,并创建一个分类系统,以使用K近邻(KNN)算法基于波速参数,使用40kHz超声波确定燃料纯度水平。该设备通过使用连接到超声波发射器的40kHz超声波来工作。传播的波将被超声波接收器接收。接收器接收到的波将被放大并连接到比较器电路,从而可以由微控制器进行处理。使用该工具获得的数据包括波传播时间、波速度、密度和衰减。用于使用KNN算法的分类系统的数据是波速。使用KNN算法进行分类可以根据超声波测量仪获得的波速参数来识别燃料纯度水平,精度为72.50%。使用超声波测量的波速与实际速度成正比,最大偏差百分比为0.34%。
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