Wang Lei, Liu Danping, Wang Jun
School of Advanced Manufacturing Engineering, Hefei University, Hefei, China.
Front Neurorobot. 2024 Oct 22;18:1488337. doi: 10.3389/fnbot.2024.1488337. eCollection 2024.
Ensuring representativeness of collected samples is the most critical requirement of water sampling. Unmanned surface vehicles (USVs) have been widely adopted in water sampling, but current USV sampling path planning tend to overemphasize path optimization, neglecting the representative samples collection. This study proposed a modified A* algorithm that combined remote sensing technique while considering both path length and the representativeness of collected samples. Water quality parameters were initially retrieved using satellite remote sensing imagery and a deep belief network model, with the parameter value incorporated as coefficient in the heuristic function of A* algorithm. The adjustment coefficient was then introduced into the coefficient to optimize the trade-off between sampling representativeness and path length. To evaluate the effectiveness of this algorithm, Chlorophyll-a concentration (Chl-a) was employed as the test parameter, with Chaohu Lake as the study area. Results showed that the algorithm was effective in collecting more representative samples in real-world conditions. As the coefficient increased, the representativeness of collected samples enhanced, indicated by the Chl-a closely approximating the overall mean Chl-a and exhibiting a gradient distribution. This enhancement was also associated with increased path length. This study is significant in USV water sampling and water environment protection.
确保所采集样本的代表性是水样采集的最关键要求。无人水面航行器(USV)已在水样采集中广泛应用,但目前的无人水面航行器采样路径规划往往过于强调路径优化,而忽视了代表性样本的采集。本研究提出了一种改进的A算法,该算法结合了遥感技术,同时兼顾了路径长度和所采集样本的代表性。首先利用卫星遥感影像和深度信念网络模型反演水质参数,并将参数值作为系数纳入A算法的启发函数中。然后将调整系数引入该系数,以优化采样代表性和路径长度之间的权衡。为评估该算法的有效性,以叶绿素a浓度(Chl-a)为测试参数,以巢湖为研究区域。结果表明,该算法在实际条件下能够有效地采集到更具代表性的样本。随着系数的增加,所采集样本的代表性增强,表现为Chl-a与总体平均Chl-a紧密接近并呈现梯度分布。这种增强也与路径长度的增加有关。本研究在无人水面航行器水样采集和水环境保护方面具有重要意义。