Cuingnet Remi, Ladegaillerie Yannik, Jossent Jérôme, Maitrot Aude, Chedal-Anglay Julien, Richard Williams, Bernard Marine, Woolfenden Jake, Birot Emmanuel, Chenu Damien
Veolia Scientific & Technical Expertise Department, Maisons-Laffitte, France.
Veolia Scientific & Technical Expertise Department, Maisons-Laffitte, France.
Waste Manag. 2022 Aug 1;150:267-279. doi: 10.1016/j.wasman.2022.05.021. Epub 2022 Jul 20.
In Material Recovery Facilities (MRFs), recyclable municipal solid waste is turned into a precious commodity. However, effective recycling relies on effective waste sorting, which is still a challenge to sustainable development of our society. To help the operations improve and optimise their process, this paper describes PortiK, a solution for automatic waste analysis. Based on image analysis and object recognition, it allows for continuous, real-time, non-intrusive measurements of mass composition of waste streams. The end-to-end solution is detailed with all the steps necessary for the system to operate, from hardware specifications and data collection to supervisory information obtained by deep learning and statistical analysis. The overall system was tested and validated in an operational environment in a material recovery facility. PortiK monitored an aluminium can stream to estimate its purity. Aluminium cans were detected with 91.2% precision and 90.3% recall, respectively, resulting in an underestimation of the number of cans by less than 1%. Regarding contaminants (i.e. other types of waste), precision and recall were 80.2% and 78.4%, respectively, giving an 2.2% underestimation. Based on five sample analyses where pieces of waste were counted and weighed per batch, the detection results were used to estimate purity and its confidence level. The estimation error was calculated to be within ±7% after 5 minutes of monitoring and ±5% after 8 hours. These results have demonstrated the feasibility and the relevance of the proposed solution for online quality control of aluminium can stream.
在材料回收设施(MRF)中,可回收的城市固体废物被转化为珍贵的商品。然而,有效的回收依赖于有效的垃圾分类,这对我们社会的可持续发展仍然是一个挑战。为了帮助运营改进和优化其流程,本文介绍了PortiK,一种自动废物分析解决方案。基于图像分析和目标识别,它允许对废物流的质量组成进行连续、实时、非侵入式测量。该端到端解决方案详细介绍了系统运行所需的所有步骤,从硬件规格和数据收集到通过深度学习和统计分析获得的监控信息。整个系统在材料回收设施的运营环境中进行了测试和验证。PortiK监测一条铝罐流以估计其纯度。铝罐的检测精度分别为91.2%,召回率为90.3%,导致铝罐数量的低估不到1%。对于污染物(即其他类型的废物),精度和召回率分别为80.2%和78.4%,低估率为2.2%。基于五个样本分析,其中每批对废物碎片进行计数和称重,检测结果用于估计纯度及其置信水平。监测5分钟后计算出估计误差在±7%以内,8小时后在±5%以内。这些结果证明了所提出的解决方案用于铝罐流在线质量控制的可行性和相关性。