Ongoing risks from climate change have impacted the livelihood of global nomadic communities, and are likely to lead to increased migratory movements in coming years. As a result, mobility considerations are becoming increasingly important in energy systems planning, particularly to achieve energy access in developing countries. Advanced Plug and Play control strategies have been recently developed with such a decentralized framework in mind, more easily allowing for the interconnection of nomadic communities, both to each other and to the main grid. In light of the above, the design and planning strategy of a mobile multi-energy supply system for a nomadic community is investigated in this work. Motivated by the scale and dimensionality of the associated uncertainties, impacting all major design and decision variables over the 30-year planning horizon, Deep Reinforcement Learning (DRL) is implemented for the design and planning problem tackled. DRL based solutions are benchmarked against several rigid baseline design options to compare expected performance under uncertainty. The results on a case study for ger communities in Mongolia suggest that mobile nomadic energy systems can be both technically and economically feasible, particularly when considering flexibility, although the degree of spatial dispersion among households is an important limiting factor. Key economic, sustainability and resilience indicators such as Cost, Equivalent Emissions and Total Unmet Load are measured, suggesting potential improvements compared to available baselines of up to 25%, 67% and 76%, respectively. Finally, the decomposition of values of flexibility and plug and play operation is presented using a variation of real options theory, with important implications for both nomadic communities and policymakers focused on enabling their energy access.
翻译:气候变化的当前风险影响了全球游牧社区的生计,并有可能在未来数年内导致更多的移徙流动。因此,流动因素在能源系统规划中越来越重要,特别是在发展中国家实现能源获取方面。最近制定了先进的插头和游戏控制战略,考虑到这种分散的框架,更容易地使游牧社区彼此之间以及与主电网相互连接。根据上述情况,对游牧社区流动多能源供应系统的设计和规划战略进行了调查,在这项工作中调查了游牧社区流动多能源供应系统的设计和规划战略。受相关不确定性的规模和范围的影响,影响到30年规划期的所有主要设计和决策变量,从而影响到发展中国家实现能源获取。为所处理的设计和规划问题实施了深强化学习(DRL)。基于DRL的解决方案以若干僵硬的基准设计选项为基准,以比较不确定性下的预期业绩。蒙古热量社区的案例研究结果表明,流动游牧能源系统在技术上和经济上都是可行的,特别是在考虑灵活性时,但住户之间的空间分散程度是一个重要的限制因素,在30年规划期内影响所有主要设计和决策变量。 衡量实际、可持续性和复原力指标,如成本、Equal 等,最终衡量了成本、可持续性和弹性指标。