论文标题
机器学习方法可以分析造船厂不规则移动的叉车车辆的状态
Machine-Learning Approach to Analyze the Status of Forklift Vehicles with Irregular Movement in a Shipyard
论文作者
论文摘要
在大型造船厂中,用于建造各种船舶的设备管理至关重要。由于订单每年变化,因此需要造船厂经理来确定充分利用其有限资源的方法。由于造船厂的性质和大小而出现的一个特殊困难是行驶车辆的管理。近年来,造船公司试图使用全球定位系统(GPS)模块来管理和跟踪车辆的位置和运动。但是,由于某些车辆(例如叉车)在院子里不规则地漫游,因此很难确定其工作状态而不现场。单独的位置信息不足以确定车辆是否正在工作,移动,等待或休息。这项研究提出了一种基于机器学习的方法,以确定每个叉车的工作状态。我们使用DBSCAN和K-均值算法来识别特定叉车正在运行的区域及其执行的工作类型。我们开发了一个商业智能系统,以从配备GPS和物联网(IoT)设备的叉车中收集信息。该系统提供有关单个叉车状态的视觉信息,并有助于在大型造船厂内有效地管理其运动。
In large shipyards, the management of equipment, which are used for building a variety of ships, is critical. Because orders vary year to year, shipyard managers are required to determine methods to make the most of their limited resources. A particular difficulty that arises because of the nature and size of shipyards is the management of moving vehicles. In recent years, shipbuilding companies have attempted to manage and track the locations and movements of vehicles using Global Positioning System (GPS) modules. However, because certain vehicles, such as forklifts, roam irregularly around a yard, identifying their working status without being onsite is difficult. Location information alone is not sufficient to determine whether a vehicle is working, moving, waiting, or resting. This study proposes an approach based on machine learning to identify the work status of each forklift. We use the DBSCAN and k-means algorithms to identify the area in which a particular forklift is operating and the type of work it is performing. We developed a business intelligence system to collect information from forklifts equipped with GPS and Internet of Things (IoT) devices. The system provides visual information on the status of individual forklifts and helps in the efficient management of their movements within large shipyards.