Luo B, Maqsood I, Huang G H, Yin Y Y, Han D J
Environmental Systems Engineering Program, Faculty of Engineering, University of Regina, Regina, Saskatchewan, Canada S4S 0A2.
Sci Total Environ. 2005 Jul 15;347(1-3):21-34. doi: 10.1016/j.scitotenv.2004.12.040. Epub 2005 Mar 5.
Reduction of nonpoint source (NPS) pollution from agricultural lands is a major concern in most countries. One method to reduce NPS pollution is through land retirement programs. This method, however, may result in enormous economic costs especially when large sums of croplands need to be retired. To reduce the cost, effluent trading can be employed to couple with land retirement programs. However, the trading efforts can also become inefficient due to various uncertainties existing in stochastic, interval, and fuzzy formats in agricultural systems. Thus, it is desired to develop improved methods to effectively quantify the efficiency of potential trading efforts by considering those uncertainties. In this respect, this paper presents an inexact fuzzy two-stage stochastic programming model to tackle such problems. The proposed model can facilitate decision-making to implement trading efforts for agricultural NPS pollution reduction through land retirement programs. The applicability of the model is demonstrated through a hypothetical effluent trading program within a subcatchment of the Lake Tai Basin in China. The study results indicate that the efficiency of the trading program is significantly influenced by precipitation amount, agricultural activities, and level of discharge limits of pollutants. The results also show that the trading program will be more effective for low precipitation years and with stricter discharge limits.
减少农田非点源(NPS)污染是大多数国家主要关注的问题。减少NPS污染的一种方法是通过土地休耕计划。然而,这种方法可能会导致巨大的经济成本,尤其是当需要休耕大量农田时。为了降低成本,可以采用污水排放权交易与土地休耕计划相结合的方式。然而,由于农业系统中存在随机、区间和模糊形式的各种不确定性,交易努力也可能变得低效。因此,期望开发改进的方法,通过考虑这些不确定性来有效量化潜在交易努力的效率。在这方面,本文提出了一个非精确模糊两阶段随机规划模型来解决此类问题。所提出的模型有助于通过土地休耕计划为减少农业NPS污染实施交易努力的决策。通过中国太湖流域一个子流域内的一个假设污水排放权交易计划,证明了该模型的适用性。研究结果表明,交易计划的效率受到降水量、农业活动和污染物排放限值水平的显著影响。结果还表明,交易计划在降水较少的年份和排放限值更严格的情况下将更有效。