Topological Twin for Mobility Support Robots

Fernando Ardilla, Azhar Aulia Saputra, A. Besari, Naoki Doteguchi, Kohei Oshio, T. Obo, N. Kubota
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Abstract

Recently, the concept of Cyber-physical Systems has been extended with the technological development on the Internet of Things and Machine Learning. Furthermore, Cyber-physical Systems have been successfully applied to Mobility as a Service (MaaS) and Robotics as a Service (RaaS). Especially, we have to improve the performance of human behavior prediction to deal with the safety of people and the performance of systems simultaneously in both MaaS and RaaS. However, the computational cost is very expensive to estimate and predict human behaviors. In order to reduce the computational cost, we have proposed various methods based on the concept of Topological Twin. In this paper, we discuss the methodology on topological twin for mobility support robots shared in the research on both MaaS and RaaS. First, we explain the concept of topological twin and its related methods on growing neural gas. Next, we show several preliminary experimental results. Finally, we discuss the applicability of topological twin to mobility support robots from the viewpoints of MaaS and RaaS
移动支持机器人的拓扑孪生
近年来,随着物联网和机器学习技术的发展,信息物理系统的概念得到了扩展。此外,网络物理系统已成功应用于移动即服务(MaaS)和机器人即服务(RaaS)。特别是,在MaaS和RaaS中,我们必须提高人类行为预测的性能,以同时处理人员的安全和系统的性能。然而,估计和预测人类行为的计算成本非常昂贵。为了降低计算成本,我们基于拓扑孪生的概念提出了各种方法。在本文中,我们讨论了在MaaS和RaaS研究中共享的移动支持机器人拓扑孪生方法。首先,我们解释了拓扑孪生的概念及其在神经气体生长中的相关方法。接下来,我们展示了几个初步的实验结果。最后,我们从MaaS和RaaS的角度讨论了拓扑孪生在移动支持机器人中的适用性
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