Faculty of Engineering and Applied Science, University of Regina, Regina, Saskatchewan S4S 0A2, Canada.
J Environ Manage. 2010 Sep;91(9):1898-913. doi: 10.1016/j.jenvman.2010.04.005. Epub 2010 May 23.
The existing inexact optimization methods based on interval-parameter linear programming can hardly address problems where coefficients in objective functions are subject to dual uncertainties. In this study, a superiority-inferiority-based inexact fuzzy two-stage mixed-integer linear programming (SI-IFTMILP) model was developed for supporting municipal solid waste management under uncertainty. The developed SI-IFTMILP approach is capable of tackling dual uncertainties presented as fuzzy boundary intervals (FuBIs) in not only constraints, but also objective functions. Uncertainties expressed as a combination of intervals and random variables could also be explicitly reflected. An algorithm with high computational efficiency was provided to solve SI-IFTMILP. SI-IFTMILP was then applied to a long-term waste management case to demonstrate its applicability. Useful interval solutions were obtained. SI-IFTMILP could help generate dynamic facility-expansion and waste-allocation plans, as well as provide corrective actions when anticipated waste management plans are violated. It could also greatly reduce system-violation risk and enhance system robustness through examining two sets of penalties resulting from variations in fuzziness and randomness. Moreover, four possible alternative models were formulated to solve the same problem; solutions from them were then compared with those from SI-IFTMILP. The results indicate that SI-IFTMILP could provide more reliable solutions than the alternatives.
基于区间参数线性规划的现有不精确优化方法很难解决目标函数系数存在双重不确定性的问题。本研究提出了一种基于优势劣势的不精确模糊两阶段混合整数线性规划(SI-IFTMILP)模型,用于支持不确定性下的城市固体废物管理。所提出的 SI-IFTMILP 方法不仅能够处理约束条件中呈现的双重不确定性,还能够处理目标函数中呈现的双重不确定性,其表现形式为模糊边界区间(FuBIs)。还可以明确反映出同时包含区间和随机变量的不确定性。提供了一种具有高计算效率的算法来解决 SI-IFTMILP。然后,将 SI-IFTMILP 应用于长期废物管理案例,以证明其适用性。获得了有用的区间解。SI-IFTMILP 可以帮助生成动态设施扩展和废物分配计划,并在预期的废物管理计划被违反时提供纠正措施。通过检查模糊性和随机性变化导致的两组惩罚,它还可以大大降低系统违规风险并增强系统鲁棒性。此外,还制定了四个可能的替代模型来解决相同的问题;然后将它们的解决方案与 SI-IFTMILP 的解决方案进行比较。结果表明,SI-IFTMILP 可以提供比替代方案更可靠的解决方案。