Department of Environmental Engineering, National Chung Hsing University, 145 Xingda Rd., Taichung 402, Taiwan; Environmental Education and Sustainable Technology Research and Development Center, National Chung Hsing University, 145 Xingda Rd., Taichung 402, Taiwan.
Department of Electrical Engineering, National Yunlin University of Science and Technology, 123 University Road, Section 3, Douliou, Yunlin 64002, Taiwan.
Waste Manag. 2024 Feb 15;174:597-604. doi: 10.1016/j.wasman.2023.12.040. Epub 2023 Dec 24.
Sorting Municipal Solid Waste (MSW) has helped promote the awareness of sustainable development of environment. A robot equipped with an intelligent deep learning (DL) detection algorithm have been proposed to improve the sorting task. But most of the related studies aimed to better the DL algorithms on MSW detection, and few studies integrated the DL algorithms with a robot to identify the dominated factors to Intelligent MSW Sorter (IMSWS). Therefore, this study is to develop IMSWS prototype to better sort MSW, based on the pick-and-place process, and preliminarily evaluate the dominated factors. First, the delta robot prototype was manufactured, and IMSWS was performed with a camera to acquire the RGB image and the height of a MSW in the conveyor belt. The DL algorithm, YOLOv3 or YOLOv4, detected the type and plane location of the MSWs in the conveyor belt. Next, the sequence program transferred the valid MSW data to the delta robot. After the calculation of the absorbed location of the target MSW was made, the arm of this delta robot moved to absorb and then transfer the MSW to the bin. Results showed that the IMSWS prototype could sort the multi-object MSWs in the MSW stream. Both YOLOv3 and YOLOv4 reached high detection accuracy on the MSW image dataset. However, the improvement should be made in the actually moving MSW stream even though the YOLOv4 performed the acceptable detection accuracy. The gripping stability of the arm mainly dominated the performance of IMSWS, and this should be improved first.
对城市固体废物(MSW)进行分类有助于提高人们对环境可持续发展的认识。已经提出了一种配备智能深度学习(DL)检测算法的机器人,以提高分类任务的效率。但是,大多数相关研究旨在改进 MSW 检测的 DL 算法,而很少有研究将 DL 算法与机器人集成以识别智能 MSW 分拣器(IMSWS)的主要因素。因此,本研究旨在开发基于拾取和放置过程的 IMSWS 原型,以更好地对 MSW 进行分类,并初步评估主要因素。首先,制造了 delta 机器人原型,并使用相机进行 IMSWS,以获取传送带上 MSW 的 RGB 图像和高度。DL 算法,YOLOv3 或 YOLOv4,检测传送带上 MSW 的类型和平面位置。接下来,顺序程序将有效的 MSW 数据传输到 delta 机器人。在计算出目标 MSW 的吸收位置后,该 delta 机器人的手臂移动以吸收 MSW 并将其转移到垃圾箱中。结果表明,IMSWS 原型可以对 MSW 流中的多目标 MSW 进行分类。YOLOv3 和 YOLOv4 在 MSW 图像数据集上均达到了较高的检测精度。然而,即使 YOLOv4 达到了可接受的检测精度,在实际移动的 MSW 流中仍需要改进。手臂的夹持稳定性主要决定了 IMSWS 的性能,因此应首先进行改进。