A mobile robot's precise location information is critical for navigation and task processing, especially for a multi-robot system (MRS) to collaborate and collect valuable data from the field. However, a robot in situations where it does not have access to GPS signals, such as in an environmentally controlled, indoor, or underground environment, finds it difficult to locate using its sensor alone. As a result, robots sharing their local information to improve their localization estimates benefit the entire MRS team. There have been several attempts to model-based multi-robot localization using Radio Signal Strength Indicator (RSSI) as a source to calculate bearing information. We also utilize the RSSI for wireless networks generated through the communication of multiple robots in a system and aim to localize agents with high accuracy and efficiency in a dynamic environment for shared information fusion to refine the localization estimation. This estimator structure reduces one source of measurement correlation while appropriately incorporating others. This paper proposes a decentralized Multi-robot Synergistic Localization System (MRSL) for a dense and dynamic environment. Robots update their position estimation whenever new information receives from their neighbors. When the system senses the presence of other robots in the region, it exchanges position estimates and merges the received data to improve its localization accuracy. Our approach uses Bayesian rule-based integration, which has shown to be computationally efficient and applicable to asynchronous robotics communication. We have performed extensive simulation experiments with a varying number of robots to analyze the algorithm. MRSL's localization accuracy with RSSI outperformed other algorithms from the literature, showing a significant promise for future development.
翻译:移动机器人的精确位置信息对于导航和任务处理至关重要,特别是对于多机器人系统(MRSS)进行协作和从实地收集有价值的数据来说,对于多机器人系统(MRSS)进行协作和收集有价值的数据来说尤其如此。然而,如果机器人无法在环境控制、室内或地下环境中获得全球定位系统信号,则很难单独使用传感器定位。因此,机器人共享其本地信息以改善其本地化估计有助于整个MRS团队。曾几次尝试利用无线电信号系统(RISS)进行基于模型的多机器人本地化,作为计算信息的来源。我们还利用SISI对通过系统多机器人通信通信生成的无线网络进行承诺,目的是在动态环境中将具有高度准确性和效率的代理机构进行本地化定位,用于改进本地化估计。因此,这种估算结构会减少一个测量相关性的来源,同时适当地纳入其他数据。本文建议采用分散的多机器人同步本地化本地化系统(MRSL),用于密度和动态环境。每当从邻居那里收到新的信息时,机器就更新其位置。当我们从本地的市级数据转换到市级数据时,则使用其他的市级的市级计算方法。