Center for Agricultural Water Research in China, College of Water Resources and Civil Engineering, China Agricultural University, Beijing 100083, China.
Department of Agricultural and Biological Engineering, Purdue University, West Lafayette, IN 47907, USA.
Sci Total Environ. 2019 Mar 20;657:73-86. doi: 10.1016/j.scitotenv.2018.11.463. Epub 2018 Dec 4.
This study presents an inexact joint-probabilistic double-sided stochastic chance-constrained programming (IJDSCCP) model for sustainable water resources planning and pollution control in water quality management systems under uncertainty. Techniques of interval parameter programming (IPP), joint-probabilistic programming (JPP) and double-sided stochastic chance-constrained programming (DSCCP) are incorporated into a modeling framework. The IJDSCCP can not only address uncertainties presented as interval parameters and double-sided randomness (i.e. both left-hand and right-hand sides) that are characterized as normal distributions, but also examine the reliability level of satisfying the entire system constraints. It further improves upon conventional stochastic chance-constrained programming for handing random uncertainties in the left-hand and right-hand sides of constraints. Moreover, a non-equivalent but sufficient linearization form of the IJDSCCP is presented to solve such a problem. Then, the model is applied to a representative case for water resources planning and pollution control. The results including water resources planning solutions, pollution control plans and system benefits under the combinations of different joint and individual probability levels will be obtained. The solutions are expressed as combinations of deterministic, interval and distributional information, which can facilitate analysis of different forms of uncertainties. After investigating and comparing the variations of results, it is found that an increasing joint probability level can lead to higher system benefits, i.e., [13,841.68, 21,801.81] × 10 Yuan (p = 0.01, p = 0.0033, p = 0.0033 and p = 0.0033), [14,150.26, 22,260.06] × 10 Yuan (p = 0.05, p = 0.0166, p = 0.0166 and p = 0.0166) and [14,280.55, 22,415.52] × 10 Yuan (p = 0.10, p = 0.033, p = 0.033 and p = 0.033). A set of decreased individual probability levels gives rise to the maximum system benefits at the same joint probability level. Furthermore, the results of the IJDSCCP are compared with a general interval-based optimization framework as well. Therefore, the results from the IJDSCCP are valuable for assisting managers in generating and identifying decision alternatives under different scenarios.
本研究提出了一种不确定条件下水质管理系统中可持续水资源规划和污染控制的不精确联合概率双边随机机会约束规划(IJDSCCP)模型。区间参数规划(IPP)、联合概率规划(JPP)和双边随机机会约束规划(DSCCP)技术被纳入建模框架中。IJDSCCP 不仅可以处理以区间参数和双边随机性(即左右两侧)表示的不确定性,这些不确定性被描述为正态分布,还可以检查满足整个系统约束的可靠性水平。它进一步改进了传统的随机机会约束规划,以处理约束左右两侧的随机不确定性。此外,还提出了 IJDSCCP 的一种非等效但充分的线性化形式来解决这个问题。然后,该模型应用于一个具有代表性的水资源规划和污染控制案例。将获得不同联合和个体概率水平组合下的水资源规划解决方案、污染控制计划和系统效益。解决方案表示为确定性、区间和分布信息的组合,这有利于分析不同形式的不确定性。在调查和比较结果的变化后,发现联合概率水平的增加会导致更高的系统效益,即[13,841.68,21,801.81]×10 元(p=0.01,p=0.0033,p=0.0033 和 p=0.0033)、[14,150.26,22,260.06]×10 元(p=0.05,p=0.0166,p=0.0166 和 p=0.0166)和[14,280.55,22,415.52]×10 元(p=0.10,p=0.033,p=0.033 和 p=0.033)。一组降低的个体概率水平在相同的联合概率水平下产生最大的系统效益。此外,还将 IJDSCCP 的结果与一般的基于区间的优化框架进行了比较。因此,IJDSCCP 的结果对于帮助管理者在不同情景下生成和识别决策方案非常有价值。