1 Department of Civil and Environmental Engineering, University of Sharjah, Sharjah, UAE.
2 Department of Civil and Environmental Engineering, United Arab Emirates University, Al Ain, UAE.
Waste Manag Res. 2019 Aug;37(8):793-802. doi: 10.1177/0734242X19833152. Epub 2019 Mar 8.
Smart waste collection strategies have been developed to replace conventional fixed routes with dynamic systems that respond to the actual fill-level of waste bins. The variation in waste generation patterns, which is the main driver for the profit of smart systems, is exacerbated in the United Arab Emirates (UAE) due to a high expatriate ratio. This leads to significant changes in waste generation during breaks and seasonal occasions. The present study aimed to evaluate a geographic information system (GIS)-based smart collection system (SCS) compared to conventional practices in terms of time, pollution, and cost. Different scenarios were tested on a local residential district based on variable bin filling rates. The input data were obtained from a field survey on different types of households. A knowledge-based decision-making algorithm was developed to select the bins that require collection based on historical data. The simulation included a regular SCS scenario based on actual filling rates, as well as sub-scenarios to study the impact of reducing the waste generation rates. An operation cost reduction of 19% was achieved with SCS compared to the conventional scenario. Moreover, SCS outperformed the conventional system by lowering carbon-dioxide emissions by between 5 and 22% for various scenarios. The operation costs were non-linearly reduced with the incremental drops in waste generation. Furthermore, the smart system was validated using actual waste generation data of the study area, and it lowered collection trip times by 18 to 42% compared to the conventional service. The present study proposes an integrated SCS architecture, and explores critical considerations of smart systems.
智能垃圾收集策略已经被开发出来,用以取代传统的固定路线,采用动态系统来响应垃圾桶的实际填充水平。由于阿联酋(UAE)的外籍人员比例较高,因此垃圾产生模式的变化(这是智能系统盈利的主要驱动因素)更加严重,这导致垃圾产生在休息时间和季节性期间发生显著变化。本研究旨在评估基于地理信息系统(GIS)的智能收集系统(SCS)与传统实践相比在时间、污染和成本方面的表现。根据可变垃圾桶填充率,在当地居民区测试了不同的场景。输入数据是从对不同类型家庭的实地调查中获得的。开发了基于历史数据的基于知识的决策算法,用于选择需要收集的垃圾桶。模拟包括基于实际填充率的常规 SCS 场景,以及研究降低垃圾产生率影响的子场景。与传统方案相比,SCS 可将运营成本降低 19%。此外,对于各种情况,SCS 通过将二氧化碳排放量降低 5%至 22%,优于传统系统。随着垃圾产生量的逐步减少,运营成本呈非线性下降。此外,该智能系统使用研究区域的实际垃圾产生数据进行了验证,与传统服务相比,它将收集行程时间缩短了 18%至 42%。本研究提出了一种集成的 SCS 架构,并探讨了智能系统的关键考虑因素。