Modeling a robust control system with a precise GPS-based state estimation capability in simulation can be useful in field navigation applications as it allows for testing and validation in a controlled environment. This testing process would enable navigation systems to be developed and optimized in simulation with direct transferability to real-world scenarios. The multi-physics simulation engine Chrono allows for the creation of scenarios that may be difficult or dangerous to replicate in the field, such as extreme weather or terrain conditions. Autonomy Research Testbed (ART), a specialized robotics algorithm testbed, is operated in conjunction with Chrono to develop an MPC control policy as well as an EKF state estimator. This platform enables users to easily integrate custom algorithms in the autonomy stack. This model is initially developed and used in simulation and then tested on a twin vehicle model in reality, to demonstrate the transferability between simulation and reality (also known as Sim2Real).
翻译:在仿真中建立具有精确基于 GPS 的状态估计能力的强鲁棒控制系统,对于场地导航应用而言非常有用,因为它可以在受控环境下进行测试和验证。这个测试过程可用于在仿真中开发和优化导航系统,之后直接将其转移到现实世界中。多物理仿真引擎 Chrono 可以创建一些在现场难以重复或危险的场景,例如极端的天气或地形条件。使用 Chrono 和专用的机器人算法测试平台 ART,可以开发 MPC 控制策略和 EKF 状态估计器。该平台使用户可以轻松地在自主堆栈中集成自定义算法。该模型最初在仿真环境中开发和使用,然后在真实的双车模型上进行测试,以证明仿真和现实之间的可转移性(也称为 Sim2Real)。