UV radiation has been used as a disinfection strategy to deactivate a wide range of pathogens, but existing irradiation strategies do not ensure sufficient exposure of all environmental surfaces and/or require long disinfection times. We present a near-optimal coverage planner for mobile UV disinfection robots. The formulation optimizes the irradiation time efficiency, while ensuring that a sufficient dosage of radiation is received by each surface. The trajectory and dosage plan are optimized taking collision and light occlusion constraints into account. We propose a two-stage scheme to approximate the solution of the induced NP-hard optimization, and, for efficiency, perform key irradiance and occlusion calculations on a GPU. Empirical results show that our technique achieves more coverage for the same exposure time as strategies for existing UV robots, can be used to compare UV robot designs, and produces near-optimal plans. This is an extended version of the paper originally contributed to ICRA2021.
翻译:紫外线辐射一直被用作消毒战略,以解除广泛的病原体,但现有的辐照战略并不能确保充分暴露所有环境表面和/或需要较长的消毒时间。我们为流动紫外线消毒机器人提供了一个近最佳的覆盖规划仪。配方优化了辐照时间效率,同时确保每个表面都能收到足够的辐射剂量。轨迹和剂量计划优化,考虑到碰撞和光分解的限制。我们提出了一个两阶段计划,以近似引致NP硬优化的解决方案,并为了提高效率,在GPU上进行关键的辐照和隔离计算。经验性结果显示,我们的技术在与现有紫外线机器人战略相同的接触时间实现更大的覆盖,可以用来比较紫外线机器人的设计,并产生近于最佳的计划。这是最初为ICRA2021提供的文件的扩展版。