Indonesian Waste Database: Smart Mechatronics System

H. I. K. Fathurrahman, Ahmad Azhari, T. Sutikno, Li-yi Chin, Prasetya Murdaka Putra, Isro Dwian Yunandha, Gralo Yopa Rahmat Pratama, B. Purnomo
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引用次数: 0

Abstract

Waste management is an essential component of urban management. As a waste solution, waste management is critical. The goal of this research is to develop a waste management database that is coupled with a mechatronic robot system. Compiling and gathering data on the sorts of garbage found in Indonesia is the starting point for this research. Indonesian waste is classified into six groups: cardboard, paper, metal, plastic, medical, and organic. The total images of the six groups are estimated at 1880 pictures. According to this picture database, Artificial Intelligence (AI) training was used to create the classification system. In the final AI process, the test method was performed using DenseNet121, DenseNet169, and DenseNet201. Testing using artificial intelligence DenseNet201 across 40 epochs yields the best 92,7% accuracy rate. Simultaneously with Artificial Intelligence testing, a mechatronic system is created as a direct implementation of the Artificial Intelligence output model. A four-servo arm robot with dc motor wheel mobility is included in the mechatronic system. According to these findings, the Indonesian waste database can be categorized correctly using Artificial Intelligence and the mechatronics system. This higher accuracy of the artificial intelligence model may be used to create a waste-sorting robot prototype.
印度尼西亚废物数据库:智能机电一体化系统
废物管理是城市管理的重要组成部分。作为废物解决方案,废物管理至关重要。本研究的目标是开发一个与机电一体化机器人系统相结合的废物管理数据库。汇编和收集在印度尼西亚发现的各种垃圾的数据是本研究的起点。印尼的垃圾分为六类:硬纸板、纸张、金属、塑料、医疗和有机垃圾。这六组照片的总数估计为1880张。根据该图片数据库,使用人工智能(AI)训练来创建分类系统。在最后的AI过程中,使用DenseNet121、DenseNet169和DenseNet201进行测试方法。使用人工智能DenseNet201在40个时代进行测试,准确率最高为92.7%。在人工智能测试的同时,创建了一个机电一体化系统,作为人工智能输出模型的直接实现。采用直流电机驱动的四伺服手臂机器人组成了机电一体化系统。根据这些发现,印尼废物数据库可以使用人工智能和机电一体化系统进行正确分类。这种精度较高的人工智能模型可用于制造垃圾分类机器人原型。
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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