Zhou Min, Tan Shukui, Guo Mingjing, Zhang Lu
Non-traditional Security Center of Huazhong University of Science and Technology, Wuhan, China; College of Public Administration, Huazhong University of Science and Technology, Wuhan, China.
School of Economics and Management, China University of Geosciences, Wuhan, China.
PLoS One. 2015 Apr 30;10(4):e0125348. doi: 10.1371/journal.pone.0125348. eCollection 2015.
Industrial pollution has remained as one of the most daunting challenges for many regions around the world. Characterizing the determinants of industrial pollution should provide important management implications. Unfortunately, due to the absence of high-quality data, rather few studies have systematically examined the locational determinants using a geographical approach. This paper aimed to fill the gap by accessing the pollution source census dataset, which recorded the quantity of discharged wastes (waste water and solid waste) from 717 pollution-intensive firms within Huzhou City, China. Spatial exploratory analysis was applied to analyze the spatial dependency and local clusters of waste emissions. Results demonstrated that waste emissions presented significantly positive autocorrelation in space. The high-high hotspots generally concentrated towards the city boundary, while the low-low clusters approached the Taihu Lake. Their locational determinants were identified by spatial regression. In particular, firms near the city boundary and county road were prone to discharge more wastes. Lower waste emissions were more likely to be observed from firms with high proximity to freight transfer stations or the Taihu Lake. Dense populous districts saw more likelihood of solid waste emissions. Firms in the neighborhood of rivers exhibited higher waste water emissions. Besides, the control variables (firm size, ownership, operation time and industrial type) also exerted significant influence. The present methodology can be applicable to other areas, and further inform the industrial pollution control practices. Our study advanced the knowledge of determinants of emissions from pollution-intensive firms in urban areas.
工业污染一直是世界上许多地区面临的最严峻挑战之一。确定工业污染的决定因素应能提供重要的管理启示。遗憾的是,由于缺乏高质量数据,很少有研究使用地理方法系统地研究区位决定因素。本文旨在通过获取污染源普查数据集来填补这一空白,该数据集记录了中国湖州市717家污染密集型企业的废弃物(废水和固体废弃物)排放量。应用空间探索性分析来分析废弃物排放的空间依赖性和局部聚类情况。结果表明,废弃物排放在空间上呈现出显著的正自相关。高高热点地区通常集中在城市边界附近,而低低聚类地区则靠近太湖。通过空间回归确定了它们的区位决定因素。具体而言,靠近城市边界和县道的企业更容易排放更多废弃物。距离货运中转站或太湖较近的企业排放的废弃物较少。人口密集地区固体废弃物排放的可能性更大。靠近河流的企业废水排放量更高。此外,控制变量(企业规模、所有权、运营时间和产业类型)也有显著影响。本方法可应用于其他地区,并为工业污染控制实践提供进一步参考。我们的研究增进了对城市地区污染密集型企业排放决定因素的认识。