The flock-guidance problem enjoys a challenging structure where multiple optimization objectives are solved simultaneously. This usually necessitates different control approaches to tackle various objectives, such as guidance, collision avoidance, and cohesion. The guidance schemes, in particular, have long suffered from complex tracking-error dynamics. Furthermore, techniques that are based on linear feedback strategies obtained at equilibrium conditions either may not hold or degrade when applied to uncertain dynamic environments. Pre-tuned fuzzy inference architectures lack robustness under such unmodeled conditions. This work introduces an adaptive distributed technique for the autonomous control of flock systems. Its relatively flexible structure is based on online fuzzy reinforcement learning schemes which simultaneously target a number of objectives; namely, following a leader, avoiding collision, and reaching a flock velocity consensus. In addition to its resilience in the face of dynamic disturbances, the algorithm does not require more than the agent position as a feedback signal. The effectiveness of the proposed method is validated with two simulation scenarios and benchmarked against a similar technique from the literature.
翻译:-
群集引导问题具有挑战性的结构,需要同时解决多个优化目标。这通常需要不同的控制方法来处理各种目标,例如引导、避障和凝聚。尤其是引导方案长期以来一直受到复杂的跟踪误差动态的困扰。此外,基于平衡条件获得的线性反馈策略的技术在应用于不确定的动态环境时可能不可用或退化。预调的模糊推理架构在这种未建模条件下缺乏鲁棒性。本文介绍一种自适应分布式技术,用于群集系统的自主控制。它的相对灵活的结构是基于同时针对许多目标的在线模糊强化学习方案,即跟随领导者、避免碰撞和到达群集速度共识。除了在动态干扰下的弹性外,该算法不需要更多反馈信号,只需要代理位置。所提出的方法的有效性通过两种模拟场景验证,并与文学中的类似技术进行基准测试。