Center for Urban Science and Progress, New York University, New York, NY 11201, United States; Warwick Institute for the Science of Cities, University of Warwick, Coventry CV47AL, United Kingdom.
Center for Urban Science and Progress, New York University, New York, NY 11201, United States.
Waste Manag. 2017 Apr;62:3-11. doi: 10.1016/j.wasman.2017.01.037. Epub 2017 Feb 16.
Historical municipal solid waste (MSW) collection data supplied by the New York City Department of Sanitation (DSNY) was used in conjunction with other datasets related to New York City to forecast municipal solid waste generation across the city. Spatiotemporal tonnage data from the DSNY was combined with external data sets, including the Longitudinal Employer Household Dynamics data, the American Community Survey, the New York City Department of Finance's Primary Land Use and Tax Lot Output data, and historical weather data to build a Gradient Boosting Regression Model. The model was trained on historical data from 2005 to 2011 and validation was performed both temporally and spatially. With this model, we are able to accurately (R2>0.88) forecast weekly MSW generation tonnages for each of the 232 geographic sections in NYC across three waste streams of refuse, paper and metal/glass/plastic. Importantly, the model identifies regularity of urban waste generation and is also able to capture very short timescale fluctuations associated to holidays, special events, seasonal variations, and weather related events. This research shows New York City's waste generation trends and the importance of comprehensive data collection (especially weather patterns) in order to accurately predict waste generation.
历史城市固体废物(MSW)收集数据由纽约市卫生局(DSNY)提供,结合了与纽约市有关的其他数据集,以预测整个城市的城市固体废物产生量。DSNY 的时空吨位数据与外部数据集相结合,包括纵向雇主家庭动态数据、美国社区调查、纽约市财政局的主要土地利用和税收地段产出数据以及历史气象数据,以构建梯度提升回归模型。该模型在 2005 年至 2011 年的历史数据上进行了训练,并进行了时间和空间上的验证。通过该模型,我们能够准确(R2>0.88)预测纽约市 232 个地理区域中每个区域的三个废物流(垃圾、纸张和金属/玻璃/塑料)的每周 MSW 产生量。重要的是,该模型确定了城市废物产生的规律性,并且还能够捕捉到与假期、特殊事件、季节性变化和与天气相关的事件相关的非常短的时间尺度波动。这项研究表明了纽约市的废物产生趋势以及全面数据收集(特别是天气模式)的重要性,以便准确预测废物产生。