论文标题
随机环境中的协调充电站搜索:多代理方法
Coordinated Charging Station Search in Stochastic Environments: A Multi-Agent Approach
论文作者
论文摘要
范围和充电焦虑仍然是更快的电动汽车市场扩散的基本障碍。为此,快速而可靠地找到合适的充电站可以通过减轻驾驶员的焦虑来促进电动汽车的吸收。在这里,现有的商业服务可帮助驾驶员根据实时可用性数据找到可用的站点,但由于传统的车辆阻止了进入公共充电站的访问,例如数据不准确,例如,由于数据不准确。在这种情况下,最近的作品研究了随机搜索方法,以说明可用性不确定性,以最大程度地减少驾驶员的绕道,直到到达可用的充电站。到目前为止,实用和理论方法都忽略了通过收集要求集中或共享数据的驱动程序协调,例如共享充电站的可用性的观察或驾驶员之间的访问意图。在此背景下,我们研究了协调的随机搜索算法,这些算法有助于减少车站访问冲突并改善驾驶员的充电体验。我们将多代理随机充电站搜索问题建模为有限的马尔可夫决策过程,并引入适用于静态和动态策略的在线解决方案框架。与静态策略相反,动态政策在政策计划和执行过程中说明了信息更新。我们提出了单一启发式启发式决策的单一启发式化的层次结构实施,以及用于集中决策的推出算法。广泛的数值研究表明,与不协调的环境相比,分散的环境和访问量的共享降低了26%的成本,这几乎与在集中式环境中所取得的28%成本下降一样好,并节省了驾驶员搜索时间的23%,同时增加了她的搜索可靠性。
Range and charge anxiety remain essential barriers to a faster electric vehicle market diffusion. To this end, quickly and reliably finding suitable charging stations may foster an electric vehicle uptake by mitigating drivers' anxieties. Here, existing commercial services help drivers to find available stations based on real-time availability data but struggle with data inaccuracy, e.g., due to conventional vehicles blocking the access to public charging stations. In this context, recent works have studied stochastic search methods to account for availability uncertainty in order to minimize a driver's detour until reaching an available charging station. So far, both practical and theoretical approaches ignore driver coordination enabled by charging requests centralization or sharing of data, e.g., sharing observations of charging stations' availability or visit intentions between drivers. Against this background, we study coordinated stochastic search algorithms, which help to reduce station visit conflicts and improve the drivers' charging experience. We model a multi-agent stochastic charging station search problem as a finite-horizon Markov decision process and introduce an online solution framework applicable to static and dynamic policies. In contrast to static policies, dynamic policies account for information updates during policy planning and execution. We present a hierarchical implementation of a single-agent heuristic for decentralized decision making and a rollout algorithm for centralized decision making. Extensive numerical studies show that compared to an uncoordinated setting, a decentralized setting with visit-intentions sharing decreases the system cost by 26%, which is nearly as good as the 28% cost decrease achieved in a centralized setting, and saves up to 23% of a driver's search time while increasing her search reliability.