Engineering Product Development, Singapore University of Technology and Design, Singapore 487372, Singapore.
Sensors (Basel). 2022 Jul 16;22(14):5317. doi: 10.3390/s22145317.
Robot-aided cleaning auditing is pioneering research that uses autonomous robots to assess a region's cleanliness level by analyzing the dirt samples collected from various locations. Since the dirt sample gathering process is more challenging, adapting a coverage planning strategy from a similar domain for cleaning is non-viable. Alternatively, a path planning approach to gathering dirt samples selectively at locations with a high likelihood of dirt accumulation is more feasible. This work presents a first-of-its-kind dirt sample gathering strategy for the cleaning auditing robots by combining the geometrical feature extraction and swarm algorithms. This combined approach generates an efficient optimal path covering all the identified dirt locations for efficient cleaning auditing. Besides being the foundational effort for cleaning audit, a path planning approach considering the geometric signatures that contribute to the dirt accumulation of a region has not been device so far. The proposed approach is validated systematically through experiment trials. The geometrical feature extraction-based dirt location identification method successfully identified dirt accumulated locations in our post-cleaning analysis as part of the experiment trials. The path generation strategies are validated in a real-world environment using an in-house developed cleaning auditing robot BELUGA. From the experiments conducted, the ant colony optimization algorithm generated the best cleaning auditing path with less travel distance, exploration time, and energy usage.
机器人辅助清洁审计是一项开创性的研究,它使用自主机器人通过分析从不同位置收集的污垢样本来评估一个区域的清洁水平。由于污垢样本采集过程更具挑战性,因此无法将类似领域的覆盖规划策略应用于清洁。相比之下,选择在污垢积聚可能性较高的位置有选择地采集污垢样本的路径规划方法更可行。本工作通过结合几何特征提取和群体算法,为清洁审计机器人提出了一种全新的污垢样本采集策略。这种组合方法生成了一条高效的最优路径,覆盖了所有识别出的污垢位置,实现了高效的清洁审计。除了是清洁审计的基础工作外,到目前为止,还没有考虑到导致区域污垢积聚的几何特征的路径规划方法。该方法通过实验进行了系统验证。基于几何特征提取的污垢位置识别方法成功地在我们的清洁后分析中识别出了污垢积聚的位置,这是实验的一部分。路径生成策略在使用内部开发的清洁审计机器人 BELUGA 的真实环境中进行了验证。通过进行的实验,蚁群优化算法生成了具有最短行驶距离、最短探索时间和最低能耗的最佳清洁审计路径。