Graduate School of Engineering Science, Osaka University, 1-2 Machikaneyama-cho, Toyonaka-ku, Osaka 560-0043, Japan.
Department of Systems and Control Engineering, Tokyo Institute of Technology, 2-12-1 Ookayama, Meguro-ku, Tokyo 152-8552, Japan.
Sensors (Basel). 2023 Jan 28;23(3):1475. doi: 10.3390/s23031475.
Odor-source localization, by which one finds the source of an odor by detecting the odor itself, is an important ability to possess in order to search for leaking gases, explosives, and disaster survivors. Although many animals possess this ability, research on implementing olfaction in robotics is still developing. We developed a novel algorithm that enables a robot to localize an odor source indoors and outdoors by taking inspiration from the adult male silk moth, which we used as the target organism. We measured the female-localization behavior of the silk moth by using a virtual reality (VR) system to obtain the relationship between multiple sensory stimuli and behavior during the localization behavior. The results showed that there were two types of search active and inactive depending on the direction of odor and wind detection. In an active search, the silk moth moved faster as the odor-detection frequency increased, whereas in the inactive search, they always moved slower under all odor-detection frequencies. This phenomenon was constructed as a robust moth-inspired (RMI) algorithm and implemented on a ground-running robot. Experiments on odor-source localization in three environments with different degrees of environmental complexity showed that the RMI algorithm has the best localization performance among conventional moth-inspired algorithms. Analysis of the trajectories showed that the robot could move smoothly through the odor plume even when the environment became more complex. This indicates that switching and modulating behavior based on the direction of odor and wind detection contributes to the adaptability and robustness of odor-source localization.
气味源定位是指通过检测气味本身来找到气味源的能力,这是一种在搜索泄漏气体、爆炸物和灾难幸存者时非常重要的能力。尽管许多动物都具有这种能力,但在机器人嗅觉方面的研究仍在不断发展。我们受成年雄性蚕蛾的启发,开发了一种新的算法,使机器人能够在室内和室外定位气味源。我们使用虚拟现实(VR)系统来测量蚕蛾的雌性定位行为,以获得在定位行为期间多个感官刺激与行为之间的关系。结果表明,根据气味和风向的检测方向,存在两种搜索模式:主动搜索和被动搜索。在主动搜索中,随着气味检测频率的增加,蚕蛾的移动速度会加快,而在被动搜索中,无论气味检测频率如何,它们总是移动得更慢。这种现象被构建为一种稳健的蛾启发式(RMI)算法,并在地面机器人上实现。在三种具有不同环境复杂度的环境中进行的气味源定位实验表明,RMI 算法在传统的蛾启发式算法中具有最佳的定位性能。轨迹分析表明,即使环境变得更加复杂,机器人也可以通过气味羽流平稳移动。这表明基于气味和风向检测方向的切换和调制行为有助于气味源定位的适应性和鲁棒性。