PERBANDINGAN ALGORITMA SUPERVISED MACHINE LEARNING UNTUK SISTEM PENGHINDARAN HALANGAN PADA ROBOT ASSISTANT UDAYANA 02 (RATNA02)

Yohanes Andre Setiawan, Y. Divayana, W. Widiadha
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引用次数: 1

Abstract

Supervised Machine Learning can make robots smarter by making decisions automatically. This study compares various Supervised Machine Learning algorithms to determine the best algorithm that can be used on Robot Assistant Udayana 02 (RATNA02). The algorithms to be compared are Artificial Neural Network (ANN), Support Vector Machine (SVM), Decision Tree (DT), Random Forest (RF), Naïve Bayesian (NB), and K-Nearest Neighbor (KNN). Models were created using the TensorFlow and SKLearn libraries. The model is trained using 100.000 data of left sensor, right sensor, front sensor, robot offset, and data label. Data preprocessing is done using MinMaxScalar and LabelEncoder. The comparisons that will be measured are accuracy, training duration, and file size of the model. DT and RF algorithms get 100% accuracy followed by ANN, KNN and SVM with 99.87%, 97.42% and 98.52% respectively, and NB with 87.34%. Fastest training duration was achieved by NB for 0.03 seconds, followed by DT for 0.08 seconds, while other algorithms took more than one second. The smallest file size is owned by NB with a size of 2kb and DT ranks second with 4kb, other algorithms have a file size of more than 25kb. Decision Tree Algorithm is the best because the duration of the model training is relatively fast, the file size is small, and the accuracy is high.
监督式机器学习可以通过自动决策使机器人更聪明。本研究比较了各种监督式机器学习算法,以确定可用于Robot Assistant Udayana 02 (RATNA02)的最佳算法。比较的算法有人工神经网络(ANN)、支持向量机(SVM)、决策树(DT)、随机森林(RF)、Naïve贝叶斯(NB)和k近邻(KNN)。使用TensorFlow和SKLearn库创建模型。该模型使用100000个左传感器、右传感器、前传感器、机器人偏移量和数据标签数据进行训练。数据预处理使用MinMaxScalar和LabelEncoder完成。要测量的比较是模型的准确性、训练持续时间和文件大小。DT和RF算法准确率为100%,其次是ANN、KNN和SVM,准确率分别为99.87%、97.42%和98.52%,NB为87.34%。NB算法的训练时间最快,为0.03秒,DT算法次之,为0.08秒,而其他算法的训练时间都在1秒以上。文件大小最小的是NB,为2kb, DT以4kb排名第二,其他算法的文件大小都在25kb以上。决策树算法是最好的,因为模型训练的时间相对较快,文件大小较小,准确率较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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